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Verbal fluency tests: Normative data for the Latin American Spanish speaking adult population

Abstract

OBJECTIVE:

To generate normative data for the Verbal Fluency Tests across 11 countries in Latin America, with country-specific adjustments for gender, age, and education, where appropriate.

METHOD:

The sample consisted of 3,977 healthy adults who were recruited from Argentina, Bolivia, Chile, Cuba, El Salvador, Guatemala, Honduras, Mexico, Paraguay, Peru, and, Puerto Rico. Each subject was administered the Verbal Fluency Test as part of a larger neuropsychological battery. A standardized five-step statistical procedure was used to generate the norms.

RESULTS:

The final multiple linear regression models for the letter F explained 8−30% of the variance, 7−32% for letter A, 8−32% for the letter S, and 16−43% for the animal category in Verbal Fluency Test scores. Although t−tests showed significant differences between men and women on the Verbal Fluency Test, they did not have an effect size larger than 0.3. As a result, gender-adjusted norms were not generated.

CONCLUSIONS:

This is the first normative multicenter study conducted in Latin America aiming to create norms for the Verbal Fluency Test; this study will have important outcomes for the future of neuropsychology in the region.

1Introduction

Verbal fluency tests are used to assess complex cognitive functioning, including executive dysfunction. They are most commonly administered to individuals who have experienced neurological damage, including traumatic brain injury (TBI), brain lesions, multiple sclerosis, schizophrenia, and Parkinson’s (Henry & Crawford, 2004a; Strauss, Sherman, & Spreen, 2006). In healthy individuals, certain areas of the brain are activated when these tasks are attempted, including the left frontal cortex (associated with stimulation of Broca’s area), the dorsolateral prefrontal cortex, the premotor cortex, and the right cerebellum (Cabeza & Nyberg, 2000; Indefrey & Levelt, 2000; McGraw, Mathews, Wang, & Phillips, 2001).

Verbal fluency is defined as “the ability to form and express words in accordance with required criteria” and is essential for communication and functioning (Wysokiński et al., 2010, p. 438). Verbal fluency tasks require individuals to be flexible, organize information, provide effort, and exercise inhibition when necessary. An inability to complete these tasks is suggestive of frontal lobe dysfunction, specifically dysfunction in the left frontal cortex (Gouveia, Brucki, Malheiros, & Bueno, 2007). In phonological fluency tasks, individuals are asked to produce words corresponding with a specific letter of the alphabet (e.g., F), while semantic fluency tasks involve producing words corresponding with a target category of items (e.g., animals; Henry & Crawford, 2004a). They are often examined concurrently, although some studies have focused solely on one component of verbal fluency (Strauss et al., 2006). Additionally, these tasks can be combined to assess phonological and semantic fluency simultaneously in one operation (e.g., fruit that being with A; Heller & Dobbs, 1993).

In the phonological portion of the verbal fluency tests, participants are presented with a letter and asked to produce as many words that begin with that letter as possible. Participants are typically given the letters F, A, and S, one at a time, and then have one minute per letter to complete the task (Strauss et al., 2006). The letters C, F, and L are also occasionally used for this task, and research has shown that these two clusters of letters produce comparable results (Troyer, 2000). In other languages, different combinations of letters are used to assess phonological fluency in more culturally-appropriate ways. For example, one Arabic study tested the use of W, R, and G, and found that these letters are more appropriate for use within an Arabic population (Khalil, 2010). Similarly, a Greek study used X (Chi), Σ (Sigma), and A (Alpha) because these letters followed the same ratios as F, A, and S in the English language and were more relevant to the Greek alphabet and overall culture (Kosmidis, Vlahou, Panagiotaki, & Kiosseoglou, 2004). The result is the number of words produced for each letter, and sometimes the total summed score of words produced across all phonological fluency tasks (Strauss et al., 2006; Wysokiński et al., 2010).

The semantic verbal fluency task requires requires participants to produce items that fall within a given category that is provided (e.g., animals), generally within one minute (Strauss et al., 2006). The most common category is “animals,” although other studies have used fruits, occupations, items from a grocery store, and furniture (da Silva, Petersson, Faisca, Ingvar, & Reis, 2005; Gocer March & Pattison, 2006; Price et al., 2012; Troyer, 2000). The result is the number of words produced for each category, and sometimes the total summed score of words produced across all semantic fluency tasks (Strauss et al., 2006; Wysokiński et al., 2010).

Verbal fluency tests have been administered in a variety of populations, including to patients with various neurological disorders (Strauss et al., 2006). Phonological and semantic fluency have been assessed in individuals with schizophrenia (Costafreda et al., 2011; Henry & Crawford, 2005), cognitive impairment (Price et al., 2012), TBI (Henry & Crawford, 2004a; Raskin & Rearick, 1996), brain lesions (Baldo & Shimamura, 1998), Alzheimer’s disease (Gocer March & Pattison, 2006; Pasquier, Lebert, Grymonprez, & Petit, 1995; Randolph, Braun, Goldberg, & Chase, 1993; Ting, Hameed, Earnest, & Tan, 2012), dementia (Moreno-Martinez & Montoro, 2010; Pasquier et al., 1995), Parkinson’s disease (Henry & Crawford, 2004b; Randolph et al., 1993), Huntington’s disease (Randolph et al., 1993; Weber, Koch, & Reilmann, 2012), clinically isolated syndrome (Anhoque, Biccas-Neto, Domingues, Teixeira, & Domingues, 2013; Till et al., 2013), and multiple sclerosis (Brissart et al., 2013; Till et al., 2013).

Previous studies have identified associations between demographic variables and verbal fluency, both phonological and semantic. Age is associated with phonological fluency, such that scores increase substantially between ages five and seven, continue to increase through early adulthood, and subsequently begin to decline in old age (Strauss et al., 2006). Semantic fluency abilities often level off around age 11 or 12 (Sauzeon, Lestage, Raboutet, N’Kaoua, & Claverie, 2004) and decline around age 20 (Mitrushina, 2005). Education level is related to verbal fluency, such that those with more years of education tend to achieve higher scores on both tasks (Strauss et al., 2006). Moreover, reading level and phonological fluency are moderately correlated, while a smaller correlation has been found between reading level and scores on semantic fluency (Johnson-Selfridge & Zalewski, 2001). Studies have shown differences in verbal fluency based on ethnicity, language, and geographic region. Specifically, Caucasians and non-Hispanics tend to produce more words on phonological and semantic tasks than individuals from other ethnic groups (Strauss et al., 2006). Higher level of intelligence is also related to better phonological and semantic fluency (Diaz-Asper, Schretlen, & Pearlson, 2004). Gender is another demographic variable that has been examined in the context of performance on phonological and semantic fluency tasks. Data on the impact of gender, however, are inconsistent. Gladsjo et al. (1999) conducted a review of reported verbal fluency norms and found that gender is inconsistently associated with phonological fluency and unrelated to semantic fluency.

To date, verbal fluency norms have been established for adults, specifically for the phonological and semantic tasks (Strauss et al., 2006). Metanorms and individual norms studies have been completed for the phonological component of verbal fluency using the cluster of letters F, A, and S, most commonly with English speaking adults in the United States and Canada (Acevedo et al., 2000; Gladsjo et al., 1999; Heaton, 2004; Loonstra, Tarlow, & Sellers, 2001; Mitrushina, 2005; Tombaugh, Kozak, & Rees, 1999). Additionally, norms have been established in the United States for phonological fluency using the letters C, F, and L (Ruff, Light, Parker, & Levin, 1996). Normative data are also available for elderly adults in these regions (Ivnik, Malec, Smith, Tangalos, & Peterson, 1996; Ravdin, Katzen, Agrawal, & Relkin, 2003; Steinberg, Bieliauskas, Smith, & Ivnik, 2005; Stricks, Pittman, Jacobs, Sano, & Stern, 1998). Stricks et al. (2008) collected normative data in Spanish from Spanish-speakers in the United States. Few norms studies on phonological fluency have been conducted in regions outside of the United States and Canada, including Sweden (Tallberg, Ivachova, Jones Tinghag, & Österberg, 2008), Saudi Arabia (Khalil, 2010), and the Netherlands (Van der Elst, Van Boxtel, Van Breukelen, & Jolles, 2006). Semantic fluency norms have also been established for animals, vegetables, fruits, foods, and clothing, primarily from the United States and Canada (Gladsjo et al., 1999; Lucas et al., 1998; Mitrushina, 2005; Tombaugh et al., 1999). Only a select few collected norms for Spanish-speaking individuals, none of which were established in Latin America (Acevedo et al., 2000; Lucas et al., 1998; Stricks et al., 1998).

Normative data are also available for verbal fluency for children and adolescents (Strauss et al., 2006), but they are less frequent. Several studies established norms for F, A, and S on the phonological verbal fluency task (Anderson, Anderson, Northam, Jacobs, & Catroppa, 2001; Delis, Kaplan, & Kramer, 2001). In addition, normative data are available for the following clusters of letters: C, F, L and P, R, W, as well as the sound, “sh” (Barr, 2003; Halperin, Healey, Zeitchik, Ludman, & Weinstein, 1989; Schum, Sivan, & Benton, 1989). Semantic fluency norms have also been established for children and adolescents (Halperin et al., 1989).

Trends in verbal fluency scores and demographic variables have been identified, as have normative data on the phonological and semantic components of verbal fluency (Strauss et al., 2006). Norms from Latin America, however, are non-existent, and as a result, there is a need to establish normative data on verbal fluency in Latin America given the paucity of research in this diverse region.

2Method

2.1Participants

The sample consisted of 3,977 healthy individuals who were recruited from Argentina, Bolivia, Chile, Cuba, El Salvador, Guatemala, Honduras, Mexico, Paraguay, Peru, and, Puerto Rico. The participants were selected according to the following criteria: a) were between 18 to 95 years of age, b) were born and currently lived in the country where the protocol was conducted, c) spoke Spanish as their native language, d) had completed at least one year of formal education, e) were able to read and write at the time of evaluation, f) scored ≥23 on the Mini-Mental State Examination (MMSE, Folstein, Folstein, & McHugh, 1975), g) scored ≤4 on the Patient Health Questionnaire–9 (PHQ-9, Kroenke, Spitzer, & Williams, 2001), and h) scored ≥90 on the Barthel Index (Mahoney & Barthel, 1965).

Participants with self-reported neurologic or psychiatric disorders were excluded due to a potential effect on cognitive performance. Participants were volunteers from the community and signed an informed consent. Nine participants were excluded from the analyses, with a final sample of 3,961 participants. Socio-demographic and participant characteristics for each of the countries’ samples have been reported elsewhere Guárdia-Olmos, Peró-Cebollero, Rivera, & Arango-Lasprilla, (2015). The multi-center study was approved by the Ethics Committee of the coordinating site, the University of Deusto, Spain.

2.2Instrument administration

For the present study, phonological and semantic verbal fluency tests were applied. The aim of each test is to create, within 60 seconds, as many words as participants can that begin with certain letter (F, A, S) or that belong to a particular category (animals). Participants were told to avoid proper names, augmentatives, and diminutives. At the same time, the examiner provided prompts if the participant gave no responses within 10 seconds during each trial. The total score consisted of the total correct answers for each letter or category.

2.3Statistical analyses

The detailed statistical analyses used to generate the normative data for this test are described in Guárdia-Olmos et al. (2015). In summary, the data manipulation process for each country-specific dataset involved five-steps: a) t –tests for independent samples and effect sizes (r) were conducted to determine gender effects. If the effect size was larger than 0.3, gender was included in the model with gender dummy coded and female as the reference group (male = 1 and female = 0). b) A multivariable regression model was used to specify the predictive model including gender (if effect size was larger than 0.3), age as a continuous variable, and education as a dummy coded variable with 1 if the participants had >12 years of education and 0 if participants had 1–12 years of education. If gender, age and/or education were not statistically significant in this multivariate model with an alpha of 0.05, the non-significant variables were removed and the model was re-run. Then a final regression model was conducted that included age (if statistically significant in the multivariate model), dichotomized education (if statistically significant in the multivariate model), and/or gender (if effect size was greater than 0.3) [yˆi=β0+(βAge.Agei)+(βEduc.Educi)+(βGender.Genderi)]; c) residual scores were calculated based on this final model (ei=yi-yˆi); d) using the SD (residual) value provided by the regression model, residuals were standardized: z = e i /SD e , with SD e (residual) = the standard deviation of the residuals in the normative sample; and e) standardized residuals were converted to percentile values (Strauss et al., 2006). Using each country’s dataset, these steps were applied to phonological and semantic verbal fluency scores.

3Results

3.1Phonological fluency - letter F

Regarding the effect of gender on letter F, the t-tests showed significant differences between men and women from Guatemala, however, its effect size was less than 0.3. Table 1 shows the results of the gender analyses by country on letter F. As shown in Table 1, the effect sizes for all countries were less than 0.3, and therefore gender was not taken into account to generate letter F normative data for any of the countries in the study.

The final eleven letter F multivariate linear regression models for each country are shown in Table 2. In all countries, except Argentina, Guatemala, Honduras, and, Paraguay, the letter F score increased for those with more than 12 years of education (see Table 2) and, in all countries except Argentina, Guatemala, Honduras, and, Paraguay, letter F score decreased in a linear fashion as a function of age. The amount of variance explained in letter F scores ranged from 8% (in Cuba) to 30% (in Chile).

3.2Phonological fluency - letter A

Regarding the effect of gender on letter A, the t-tests showed significant differences between men and women in the countries of Chile, Guatemala, and, Paraguay, however, none of these three countries had an effect size larger than 0.3. Table 3 shows the results of the gender analysis by country on letter A. As shown in Table 1, the effect sizes for all countries were less than 0.3, and therefore gender was not taken into account to generate letter A normative data for any of the countries in the study.

The final eleven letter A multivariate linear regression models for each country are shown in Table 4. In all countries, the letter A score increased for those with more than 12 years of education (see Table 4) and decreased in a linear fashion as a function of age except in Argentina, Guatemala and, Paraguay. The amount of variance explained in letter A scores ranged from 7% (in Paraguay) to 32% (in Chile).

3.3Phonological fluency - letter S

Regarding the effect of gender on letter S, the t-tests showed significant differences between men and women from Puerto Rico, however, its effect size was less than 0.3. Table 5 shows the results of the gender analysis by country on letter S. As shown in Table 5, the effect sizes for all countries were less than 0.3, and therefore gender was not taken into account to generate letter S normative data for any of the countries in the study.

The final eleven letter S multivariate linear regression models for each country are shown in Table 6. In all countries, the letter S score increased for those with more than 12 years of education (see Table 6) and decreased in linear fashion as a function of age except in Argentina, Guatemala and, Paraguay. The amount of variance explained in letter S scores ranged from 8% (in Cuba) to 32% (in Chile).

3.4Semantic fluency - animals

Regarding the effect of gender on animals, the t-tests showed significant differences between men and women in Guatemala, however, its effect size was less than 0.3. Table 7 shows the results of the gender analysis by country on animals. As shown in Table 7, the effect sizes for all countries were less than 0.3, and therefore gender was not taken into account to generate animals normative data for any of the countries in the study.

The final eleven animals multivariate linear regression models for each country are shown in Table 8. In all countries, the animals score increased for those with more than 12 years of education (see Table 2) and decreased in a linear fashion as a function of age. The amount of variance explained in animals scores ranged from 16% (in Cuba) to 43% (in Paraguay).

3.5Normative procedure

Norms (e.g., a percentile score) for the verbal fluency different scores were established using the five-step procedure described above. To facilitate the understanding of the procedure to obtain the percentile associated with a score on this test, an example will be given. Suppose you need to find the percentile score for a Mexican woman, who is 50 years old and has 8 years of education. She has a score of 20 on animals. The steps to obtain the percentile for this score are: a) Check Table 7 to determine if the effect size of gender in the country of interest (Mexico) on this test and time point (animals) is greater than 0.3 by country. The column labelled r in Table 7 indicates the effect size. In this example, the effect size is 0.034, which is not greater than 0.3. For Mexicans on this test, gender does not influence scores to a sufficient degree to take it into account when determining the percentile. b) Find Mexico in Table 8, which provides the final regression models by country for animals. Use the B weights to create an equation that will allow you to obtain the predicted animals score. The corresponding B weights are multiplied by the actual age and dichotomized education scores and added to a constant in order to calculate the predicted value. In this case, the predicted animals score would be calculated using the equation [yˆi=21.551+(-0.087·Agei)+(2.043·DichotomizedEducationalLeveli)] (the values have been rounded for presentation in the formula).The subscript notation i indicate the person of interest. The person’s age is 50, but the education variable is not continuous in the model. Years of education is split into either 1 to 12 years (and assigned a 0) or more than 12 years (and assigned a 1) in the model. Since our hypothetical person in the example has 8 years of education, her educational level value is 0. Thus the predicted value is yˆi=21.551+(-0.087.50)+(2.043.0)=21.551-4.350+0=17.201). c) In order to calculate the residual value (indicated with an e in the equation), we subtract the actual value from the predicted value we just calculated (ei=yi-yˆi). In this case, it would be e i  = 20 - 17.201 = 2.80. d) Next, consult the SD e column in Table 8 to obtain the country-specific SD e (residual) value. For Mexico it is 4.673. Using this value, we can transform the residual value to a standardized z score using the equation (e i /SD e ). In this case, we have (2.80)/4.673 = 0.599. This is the standardized z score for a Mexican woman aged 50 and 8 years of education and a score of 20 on animals. e) The last step is to look-up the tables in the statistical reference books (e.g. Strauss et al., 2006) or use a trusted online calculator like the one available at http://www.measuringu.com/pcalcz.php. In the online calculator, you would enter the z score and choose a one-sided test and note the percent of area after hitting the submit button. In this case, the probability of 0.599 corresponds to the 72th percentile. Please remember to use the appropriate tables that correspond to each test (letter vs. animal) when performing these calculations. If the percentile for the others verbal fluency scores is desired, Tables 16 must beused.

3.6User-friendly normative data

The five-step normative procedures explained above can provide more individualized norms. However, this method can be prone to human error due to the number of required computations. To enhance user-friendliness, the authors have completed these steps for a range of raw scores based on small age range groupings (see Guárdia-Olmos et al., 2015) and created tables so that clinicians can more easily use to obtain a percentile range associated with a given raw score on this test. These tables are available by country and type of test in the Appendix. In order to obtain an approximate percentile for the above example (converting a raw score of 20 in animals for a Mexican women who is 50 years old and has 8 years of education using the simplified normative tables provided, the following steps are recommended. (1) First, identify the appropriate table ensuring the specific country and test. In this case, the table for animals scores for Mexico can be found in Table A41. (2) Note if the title of the table indicates that it is only to be used for one specific gender. In this case, gender is not specified. Thus Table A41 is used for both males and females. (3) Next, the table is divided based on educational level (1 to 12 vs. 12 years of education). Since this woman has 8 years of education, she falls into 1–12 years of education category. These data can be found in the top section of the table. (4) Determine the age range most appropriate for the individual. In this case, 50 falls into the column 48–52 years of age. (5) Read down the age range column to find the approximate location of the raw score the person obtained on the test. Reading down the 48–52 column, the score of 20 obtained by this Mexican woman corresponds to an approximate percentile of 70.

The percentile obtained via this user-friendly table method (70th) is slightly different than the more exact one (72th) obtained following the individual conversion steps above because the table method is based on an age range (e.g., individuals aged 48–52) instead of the exact age (individuals aged 50). If the exact score is not listed in the column, you must estimate the percentile value from the listed raw scores.

4Discussion

The purpose of the current study was to generate normative data on the verbal fluency tests across 11 countries in Latin America, with country-specific adjustments for gender, age, and education, where appropriate. The final multiple linear regression models explained between 8–30% of the variance in letter F scores, 7–32% of the variance in letter A scores, 8–32% of the variance in letter S scores, and 16–43% of the variance in animals category scores. There were a number of gender differences across all four verbal fluency test scores in several different countries, but the all effect sizes were small, so gender-adjusted norms were not generated for any country. These findings were in line with the previous literature, which has shown that the impact of gender on phonological fluency and semantic fluency performance is inconsistent or non-existent (Gladsjo et al., 1999). When considering the previous research, the current results suggest that gender-adjustments should not be made when obtaining percentiles for the verbal fluency tests in Latin America.

Verbal fluency test scores increased linearly as a function of education in all countries and tests. This robust pattern is consistent with the previous literature which has found participants with more years of education to score higher on verbal fluency tasks (Strauss et al., 2006). When considering the previous research, it is suggested that neuropsychologists in Latin America use education-adjusted norms for each country when administering the verbal fluency tests in that country. As there are likely large differences in education throughout Latin America, this study’s education adjustments will be important when administering the verbal fluency tests across many different Latin American countries.

Verbal fluency test scores worsened with increasing age in most countries. However, Argentina, Paraguay, Honduras, and Guatemala did not show an effect of age on letter F scores; Argentina, Paraguay, and Guatemala did not show an effect of age on letter A scores; and Argentina, Paraguay, and Guatemala did not show an effect of age on letter S scores. Previous studies have found that higher age is associated with reduced phonological fluency (Strauss et al., 2006) and semantic fluency (Mitrushina, 2005). In consideration of the previous findings, the current study suggests that verbal fluency test corrections for age in Latin America should be made in all countries and tests except for those that showed no age effect in the current study.

4.1Limitations and future directions

The current study has several limitations and directions for future research. First, participants in this study spoke Spanish as a primary language, and no data were collected on bilingualism. Verbal fluency test performance could likely differ among individuals who speak secondary languages, so future research should examine effects of bilingualism on verbal fluency test performance. Participants were recruited in specific cities and regions of the countries in this study as opposed to nationally. Although the current study is the largest verbal fluency test normative study to date in Latin America, or in any global region, it should be seen as a first step toward larger, nationally representative normative studies. Although many participants in this study had fewer than 12 years of education, illiterate individuals did not participate, and the current norms cannot generalize well to illiterate adults. Similarly, participants with a history of neurological conditions and children were excluded, so future normative research should be conducted with these groups.

Second, neuropsychologists need to exercise caution in using the verbal fluency test norms from this study for people in countries outside of those from which data were collected. Researchers need to create verbal fluency test norms in Latin American countries such as Ecuador, Uruguay, Venezuela, and Panama. Despite this limitation, these verbal fluency test norms may be actually more accurate in Latin American countries not a part of this study than current norms in use, but this generalizability needs to be investigated in future studies.

Third, the verbal fluency tests are common neuropsychological instruments in Latin America, but other measures need to be normed using a similar approach to improve their accuracy in this region. Future research should also examine the psychometrics and ecological validity of the verbal fluency tests, and that of other common assessments in Latin America. Researchers need to create instruments within Latin American cultures with good ecological validity, as the verbal fluency tests were created in a Western culture perhaps very different from the diverse cultures in Latin America. Future research can develop assessments within local cultures, not simply translate and norm tests from other countries.

Despite these limitations, limited studies have produced verbal fluency test norms in Spanish-speakers in the United States (Lucas et al., 1998; Stricks et al., 1998; Acevedo et al., 2000). The current study was the first to generate verbal fluency test norms across 11 countries in Latin America with nearly 4,000 participants. As a result, it was the largest, most comprehensive verbal fluency test normative study to date in any global region, and its norms will influence the standard of neuropsychological assessment with the verbal fluency tests in Latin America unlike any study before it.

Appendix:

Table A1

Normative data for the Letter F stratified by education levels for ARGENTINA

Percentile1 to 12 years of education>12 years of education
9518.822.6
9017.321.1
8516.320.1
8015.519.3
7014.217.9
6013.116.8
5012.015.8
4011.014.8
309.913.6
208.512.3
157.711.5
106.710.5
55.29.0
Table A2

Normative data for the Letter F stratified by age and education levels for BOLIVIA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9517.617.417.217.016.716.516.316.015.815.615.415.114.9
9016.516.216.015.815.615.315.114.914.614.414.214.013.7
8515.715.515.215.014.814.514.314.113.913.613.413.212.9
8015.014.814.614.414.113.913.713.413.213.012.812.512.3
7014.013.813.513.313.112.912.612.412.211.911.711.511.3
6013.112.912.712.412.212.011.811.511.311.110.810.610.4
5012.312.111.911.611.411.210.910.710.510.310.09.89.6
4011.511.311.010.810.610.410.19.99.79.49.29.08.8
3010.610.410.29.99.79.59.39.08.88.68.38.17.9
209.69.49.18.98.78.48.28.07.87.57.37.16.8
158.98.78.58.38.07.87.67.37.16.96.66.46.2
108.27.97.77.57.27.06.86.66.36.15.95.65.4
57.06.86.56.36.15.85.65.45.24.94.74.54.2
1 to 12 years of education9515.014.814.614.314.113.913.613.413.213.012.712.512.3
9013.813.613.413.212.912.712.512.212.011.811.611.311.1
8513.112.812.612.412.111.911.711.511.211.010.810.510.3
8012.412.212.011.711.511.311.010.810.610.410.19.99.7
7011.411.110.910.710.510.210.09.89.59.39.18.98.6
6010.510.310.09.89.69.49.18.98.78.48.28.07.8
509.79.59.29.08.88.58.38.17.97.67.47.26.9
408.98.68.48.28.07.77.57.37.06.86.66.46.1
308.07.87.57.37.16.96.66.46.25.95.75.55.3
207.06.76.56.36.05.85.65.45.14.94.74.44.2
156.36.15.85.65.45.24.94.74.54.24.03.83.6
105.55.35.14.84.64.44.23.93.73.53.23.02.8
54.44.13.93.73.43.23.02.82.52.32.11.81.6
Table A3

Normative data for the Letter F stratified by age and education levels for CHILE

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.521.220.920.620.219.919.619.319.018.618.318.017.7
9020.219.919.619.218.918.618.318.017.617.317.016.716.4
8519.319.018.718.418.017.717.417.116.816.416.115.815.5
8018.618.317.917.617.317.016.716.316.015.715.415.114.8
7017.417.116.816.416.115.815.515.214.914.514.213.913.6
6016.416.115.815.515.114.814.514.213.913.513.212.912.6
5015.515.214.914.514.213.913.613.312.912.612.312.011.7
4014.614.313.913.613.313.012.712.312.011.711.411.110.7
3013.613.312.912.612.312.011.711.311.010.710.410.19.8
2012.412.111.811.411.110.810.510.29.99.59.28.98.6
1511.711.311.010.710.410.19.89.49.18.88.58.27.8
1010.810.510.19.89.59.28.98.68.27.97.67.37.0
59.59.18.88.58.27.97.57.26.96.66.36.05.6
1 to 12 years of education9517.517.216.916.616.316.015.615.315.014.714.414.013.7
9016.215.915.615.315.014.614.314.013.713.413.012.712.4
8515.315.014.714.414.113.713.413.112.812.512.211.811.5
8014.614.314.013.713.313.012.712.412.111.711.411.110.8
7013.413.112.812.512.211.811.511.210.910.610.29.99.6
6012.412.111.811.511.210.810.510.29.99.69.38.98.6
5011.511.210.910.610.29.99.69.39.08.78.38.07.7
4010.610.310.09.69.39.08.78.48.17.77.47.16.8
309.69.39.08.78.38.07.77.47.16.76.46.15.8
208.48.17.87.57.26.86.56.25.95.65.24.94.6
157.77.47.16.76.46.15.85.55.24.84.54.23.9
106.86.56.25.95.55.24.94.64.33.93.63.33.0
55.55.24.94.54.23.93.63.32.92.62.32.01.7
Table A4

Normative data for the Letter F stratified by age and education levels for CUBA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9518.918.718.518.318.117.917.717.517.317.116.916.716.5
9017.517.317.116.916.716.516.416.216.015.815.615.415.2
8516.616.416.216.015.815.715.515.315.114.914.714.514.3
8015.915.715.515.315.114.914.714.514.314.113.913.713.5
7014.714.514.314.113.913.713.513.313.112.912.712.512.4
6013.713.513.313.112.912.712.512.312.111.911.711.511.3
5012.712.612.412.212.011.811.611.411.211.010.810.610.4
4011.811.611.411.211.010.810.610.510.310.19.99.79.5
3010.810.610.410.210.09.89.69.49.39.18.98.78.5
209.69.49.29.08.88.68.48.38.17.97.77.57.3
158.98.78.58.38.17.97.77.57.37.16.96.76.5
108.07.87.67.47.27.06.86.66.46.26.05.85.6
56.66.46.26.15.95.75.55.35.14.94.74.54.3
1 to 12 years of education9517.217.016.816.616.416.216.015.815.615.415.215.014.8
9015.815.615.415.215.014.814.714.514.314.113.913.713.5
8514.914.714.514.314.114.013.813.613.413.213.012.812.6
8014.214.013.813.613.413.213.012.812.612.412.212.011.8
7013.012.812.612.412.212.011.811.611.411.211.010.810.6
6012.011.811.611.411.211.010.810.610.410.210.09.89.6
5011.010.910.710.510.310.19.99.79.59.39.18.98.7
4010.19.99.79.59.39.18.98.88.68.48.28.07.8
309.18.98.78.58.38.17.97.77.67.47.27.06.8
207.97.77.57.37.16.96.76.66.46.26.05.85.6
157.27.06.86.66.46.26.05.85.65.45.25.04.8
106.36.15.95.75.55.35.14.94.74.54.34.13.9
54.94.74.54.34.24.03.83.63.43.23.02.82.6
Table A5

Normative data for the Letter F stratified by age and education levels for EL SALVADOR

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9522.522.322.121.921.721.521.221.020.820.620.420.220.0
9020.920.720.520.320.119.919.719.519.319.118.918.618.4
8519.919.719.519.319.118.918.618.418.218.017.817.617.4
8019.018.818.618.418.218.017.817.617.417.216.916.716.5
7017.717.417.217.016.816.616.416.216.015.815.615.415.1
6016.516.316.115.915.715.415.215.014.814.614.414.214.0
5015.415.215.014.814.614.414.213.913.713.513.313.112.9
4014.314.113.913.713.513.313.112.912.712.412.212.011.8
3013.213.012.712.512.312.111.911.711.511.311.110.910.7
2011.811.611.411.210.910.710.510.310.19.99.79.59.3
1510.910.710.510.310.19.99.79.59.29.08.88.68.4
109.99.79.59.39.08.88.68.48.28.07.87.67.4
58.38.17.97.77.57.37.16.96.66.46.26.05.8
1 to 12 years of education9517.317.116.916.716.416.216.015.815.615.415.215.014.8
9015.715.515.315.114.914.714.514.314.113.813.613.413.2
8514.714.514.314.113.813.613.413.213.012.812.612.412.2
8013.813.613.413.213.012.812.612.412.111.911.711.511.3
7012.412.212.011.811.611.411.211.010.810.610.310.19.9
6011.311.110.910.610.410.210.09.89.69.49.29.08.8
5010.210.09.89.69.49.18.98.78.58.38.17.97.7
409.18.98.78.58.38.17.97.67.47.27.06.86.6
307.97.77.57.37.16.96.76.56.36.15.95.65.4
206.66.46.15.95.75.55.35.14.94.74.54.34.1
155.75.55.35.14.94.74.44.24.03.83.63.43.2
104.74.44.24.03.83.63.43.23.02.82.62.42.2
53.12.92.72.52.32.11.81.61.41.21.00.80.6
Table A6

Normative data for the Letter F stratified by education levels for GUATEMALA

Percentile1 to 12 years of education>12 years of education
9517.621.9
9015.820.2
8514.719.0
8013.818.1
7012.216.6
6010.915.3
509.714.1
408.612.9
307.311.6
205.710.1
154.89.1
103.78.0
51.96.3
Table A7

Normative data for the Letter F stratified by education levels for HONDURAS

Percentile1 to 12 years of education>12 years of education
9514.519.6
9013.118.2
8512.117.3
8011.316.5
7010.115.3
609.014.2
508.113.3
407.112.3
306.011.2
204.810.0
154.09.2
103.18.3
51.76.9
Table A8

Normative data for the Letter F stratified by age and education levels for MEXICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9522.622.322.021.821.521.220.920.620.320.019.719.419.1
9021.120.820.520.220.019.719.419.118.818.518.217.917.6
8520.119.819.519.218.918.718.418.117.817.517.216.916.6
8019.319.018.718.418.117.817.517.216.916.716.416.115.8
7017.917.617.317.116.816.516.215.915.615.315.014.714.4
6016.816.516.215.915.615.315.114.814.514.213.913.613.3
5015.715.515.214.914.614.314.013.713.413.112.812.612.3
4014.714.414.113.813.513.213.012.712.412.111.811.511.2
3013.613.313.012.712.412.111.811.511.211.010.710.410.1
2012.211.911.611.311.110.810.510.29.99.69.39.08.7
1511.411.110.810.510.29.99.69.39.18.88.58.27.9
1010.410.19.89.59.28.98.68.38.17.87.57.26.9
58.98.68.38.07.77.47.16.86.56.36.05.75.4
1 to 12 years of education9520.019.719.419.118.818.518.217.917.617.417.116.816.5
9018.518.217.917.617.317.016.716.416.115.815.615.315.0
8517.417.216.916.616.316.015.715.415.114.814.614.314.0
8016.616.316.015.715.515.214.914.614.314.013.713.413.1
7015.315.014.714.414.113.813.513.212.912.712.412.111.8
6014.113.813.613.313.012.712.412.111.811.511.210.910.7
5013.112.812.512.211.911.611.311.110.810.510.29.99.6
4012.011.711.511.210.910.610.310.09.79.49.18.98.6
3010.910.610.310.09.79.59.28.98.68.38.07.77.4
209.69.39.08.78.48.17.87.57.27.06.76.46.1
158.78.48.17.97.67.37.06.76.46.15.85.55.2
107.77.47.16.86.66.36.05.75.45.14.84.54.2
56.25.95.65.35.04.84.54.23.93.63.33.02.7
Table A9

Normative data for the Letter F stratified by education levels for PARAGUAY

Percentile1 to 12 years of education>12 years of education
9512.614.9
9012.014.4
8511.714.0
8011.313.6
7010.813.1
6010.412.7
5010.012.3
409.611.9
309.211.5
208.610.9
158.310.6
107.910.2
57.49.7
Table A10

Normative data for the Letter F stratified by age and education levels for PERU

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.821.721.521.421.221.121.020.820.720.520.420.220.1
9020.420.320.120.019.819.719.519.419.219.119.018.818.7
8519.519.319.219.018.918.718.618.418.318.218.017.917.7
8018.718.518.418.218.118.017.817.717.517.417.217.116.9
7017.417.317.117.016.816.716.516.416.316.116.015.815.7
6016.416.216.115.915.815.615.515.315.215.014.914.814.6
5015.415.215.114.914.814.614.514.414.214.113.913.813.6
4014.414.214.113.913.813.713.513.413.213.112.912.812.6
3013.313.213.012.912.712.612.412.312.212.011.911.711.6
2012.111.911.811.611.511.311.211.010.910.810.610.510.3
1511.311.111.010.810.710.510.410.310.110.09.89.79.5
1010.310.210.09.99.79.69.59.39.29.08.98.78.6
58.98.88.68.58.38.28.07.97.77.67.57.37.2
1 to 12 years of education9518.117.917.817.617.517.317.217.116.916.816.616.516.3
9016.716.516.416.216.115.915.815.615.515.315.215.114.9
8515.715.615.415.315.115.014.814.714.514.414.314.114.0
8014.914.814.614.514.314.214.113.913.813.613.513.313.2
7013.713.513.413.213.112.912.812.612.512.412.212.111.9
6012.612.512.312.212.011.911.711.611.411.311.111.010.9
5011.611.511.311.211.010.910.710.610.510.310.210.09.9
4010.610.510.310.210.09.99.89.69.59.39.29.08.9
309.69.49.39.19.08.88.78.58.48.38.18.07.8
208.38.28.07.97.77.67.47.37.17.06.96.76.6
157.57.47.27.16.96.86.66.56.46.26.15.95.8
106.66.46.36.16.05.85.75.65.45.35.15.04.8
55.25.04.94.74.64.44.34.14.03.83.73.63.4
Table A11

Normative data for the Letter F stratified by age and education levels for PUERTO RICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9518.818.718.518.418.218.017.917.717.617.417.217.116.9
9017.517.317.217.016.816.716.516.416.216.115.915.715.6
8516.616.416.316.115.915.815.615.515.315.215.014.814.7
8015.815.715.515.415.215.014.914.714.614.414.314.113.9
7014.614.514.314.214.013.813.713.513.413.213.112.912.7
6013.613.513.313.213.012.812.712.512.412.212.011.911.7
5012.712.512.412.212.111.911.711.611.411.311.111.010.8
4011.811.611.411.311.111.010.810.710.510.310.210.09.9
3010.710.610.410.310.110.09.89.69.59.39.29.08.9
209.69.49.29.18.98.88.68.48.38.18.07.87.7
158.88.68.58.38.28.07.97.77.57.47.27.16.9
107.97.77.67.47.37.17.06.86.66.56.36.26.0
56.66.46.26.15.95.85.65.55.35.15.04.84.7
1 to 12 years of education9516.616.416.316.116.015.815.615.515.315.215.014.914.7
9015.215.114.914.814.614.514.314.114.013.813.713.513.4
8514.414.214.013.913.713.613.413.213.112.912.812.612.5
8013.613.413.313.113.012.812.712.512.312.212.011.911.7
7012.412.212.111.911.811.611.511.311.111.010.810.710.5
6011.411.211.110.910.810.610.410.310.110.09.89.79.5
5010.510.310.110.09.89.79.59.49.29.08.98.78.6
409.59.49.29.18.98.78.68.48.38.17.97.87.6
308.58.48.28.07.97.77.67.47.37.16.96.86.6
207.37.27.06.86.76.56.46.26.15.95.75.65.4
156.66.46.36.15.95.85.65.55.35.25.04.84.7
105.75.55.45.25.04.94.74.64.44.34.13.93.8
54.34.24.03.93.73.53.43.23.12.92.82.62.4
Table A12

Normative data for the Letter A stratified by education levels for ARGENTINA

Percentile1 to 12 years of education>12 years of education
9517.821.4
9016.520.1
8515.619.2
8014.818.4
7013.617.2
6012.616.2
5011.715.3
4010.814.3
309.713.3
208.512.1
157.811.4
106.910.5
55.69.1
Table A13

Normative data for the Letter A stratified by age and education levels for BOLIVIA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9518.718.518.218.017.717.517.217.016.716.516.215.915.7
9017.517.217.016.716.516.216.015.715.515.215.014.714.5
8516.716.416.215.915.615.415.114.914.614.414.113.913.6
8016.015.715.515.215.014.714.514.214.013.713.413.212.9
7014.914.614.414.113.913.613.413.112.812.612.312.111.8
6013.913.713.413.212.912.712.412.211.911.711.411.210.9
5013.112.812.612.312.111.811.611.311.110.810.610.310.1
4012.212.011.711.511.211.010.710.510.29.99.79.49.2
3011.311.010.810.510.310.09.89.59.39.08.88.58.3
2010.29.99.79.49.28.98.78.48.27.97.77.47.2
159.59.29.08.78.58.28.07.77.57.27.06.76.5
108.78.48.27.97.77.47.26.96.76.46.25.95.6
57.47.26.96.76.46.25.95.75.45.24.94.74.4
1 to 12 years of education9515.315.014.814.514.314.013.813.513.313.012.812.512.3
9014.013.813.513.313.012.812.512.312.011.811.511.311.0
8513.213.012.712.512.212.011.711.511.211.010.710.410.2
8012.512.312.011.811.511.311.010.810.510.310.09.89.5
7011.411.210.910.710.410.29.99.79.49.28.98.78.4
6010.510.310.09.79.59.29.08.78.58.28.07.77.5
509.69.49.18.98.68.48.17.97.67.47.16.96.6
408.88.58.38.07.87.57.37.06.86.56.36.05.8
307.97.67.37.16.86.66.36.15.85.65.35.14.8
206.86.56.26.05.75.55.25.04.74.54.24.03.7
156.15.85.65.35.14.84.64.34.03.83.53.33.0
105.25.04.74.54.24.03.73.53.23.02.72.52.2
54.03.73.53.23.02.72.52.22.01.71.51.21.0
Table a14

Normative data for the Letter A stratified by age and education levels for CHILE

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.721.220.820.420.019.619.218.818.418.017.617.216.8
9020.319.919.519.118.718.317.917.517.016.616.215.815.4
8519.419.018.618.217.817.417.016.616.215.715.314.914.5
8018.718.317.917.417.016.616.215.815.415.014.614.213.8
7017.517.116.716.315.815.415.014.614.213.813.413.012.6
6016.516.115.715.214.814.414.013.613.212.812.412.011.6
5015.515.114.714.313.913.513.112.712.311.911.511.010.6
4014.614.213.813.413.012.612.211.711.310.910.510.19.7
3013.613.212.812.412.011.611.110.710.39.99.59.18.7
2012.412.011.611.210.810.410.09.59.18.78.37.97.5
1511.711.210.810.410.09.69.28.88.48.07.67.26.8
1010.810.39.99.59.18.78.37.97.57.16.76.35.9
59.49.08.68.27.87.47.06.66.15.75.34.94.5
1 to 12 years of education9518.017.617.216.816.416.015.615.214.814.414.013.613.1
9016.716.315.915.515.114.714.313.813.413.012.612.211.8
8515.815.415.014.614.213.813.413.012.512.111.711.310.9
8015.114.714.213.813.413.012.612.211.811.411.010.610.2
7013.913.513.112.612.211.811.411.010.610.29.89.49.0
6012.912.512.011.611.210.810.410.09.69.28.88.48.0
5011.911.511.110.710.39.99.59.18.78.37.87.47.0
4011.010.610.29.89.49.08.58.17.77.36.96.56.1
3010.09.69.28.88.47.97.57.16.76.35.95.55.1
208.88.48.07.67.26.86.35.95.55.14.74.33.9
158.07.67.26.86.46.05.65.24.84.44.03.63.1
107.16.76.35.95.55.14.74.33.93.53.12.72.3
55.85.45.04.64.23.83.42.92.52.11.71.30.9
Table A15

Normative data for the Letter A stratified by age and education levels for CUBA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9519.018.818.618.418.218.017.717.517.317.116.916.716.5
9017.717.517.317.116.916.716.516.316.115.915.615.415.2
8516.916.716.516.316.115.915.615.415.215.014.814.614.4
8016.216.015.815.615.415.214.914.714.514.314.113.913.7
7015.114.914.714.514.214.013.813.613.413.213.012.812.6
6014.113.913.713.513.313.112.912.712.512.212.011.811.6
5013.313.012.812.612.412.212.011.811.611.411.211.010.7
4012.412.212.011.811.511.311.110.910.710.510.310.19.9
3011.411.211.010.810.610.410.210.09.89.59.39.18.9
2010.310.19.99.79.59.39.18.88.68.48.28.07.8
159.69.49.29.08.88.68.48.17.97.77.57.37.1
108.88.68.48.17.97.77.57.37.16.96.76.56.3
57.57.37.16.96.76.56.36.05.85.65.45.25.0
1 to 12 years of education9516.416.216.015.815.515.315.114.914.714.514.314.113.9
9015.114.914.714.514.314.113.913.713.413.213.012.812.6
8514.314.113.913.713.413.213.012.812.612.412.212.011.8
8013.613.413.213.012.712.512.312.111.911.711.511.311.1
7012.512.312.011.811.611.411.211.010.810.610.410.29.9
6011.511.311.110.910.710.510.310.19.89.69.49.29.0
5010.610.410.210.09.89.69.49.29.08.88.58.38.1
409.89.69.39.18.98.78.58.38.17.97.77.57.3
308.88.68.48.28.07.87.67.47.16.96.76.56.3
207.77.57.37.16.96.76.46.26.05.85.65.45.2
157.06.86.66.46.26.05.75.55.35.14.94.74.5
106.25.95.75.55.35.14.94.74.54.34.13.93.6
54.94.74.54.34.13.83.63.43.23.02.82.62.4
Table A16

Normative data for the Letter A stratified by age and education levels for EL SALVADOR

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9523.022.822.622.422.222.021.821.621.421.220.920.720.5
9021.521.321.120.820.620.420.220.019.819.619.419.219.0
8520.420.220.019.819.619.419.219.018.718.518.318.117.9
8019.619.319.118.918.718.518.318.117.917.717.517.217.0
7018.217.917.717.517.317.116.916.716.516.316.115.815.6
6017.016.816.616.316.115.915.715.515.315.114.914.714.5
5015.915.715.515.215.014.814.614.414.214.013.813.613.4
4014.814.614.414.213.913.713.513.313.112.912.712.512.3
3013.613.413.213.012.812.612.312.111.911.711.511.311.1
2012.212.011.811.611.411.210.910.710.510.310.19.99.7
1511.311.110.910.710.510.310.19.99.79.49.29.08.8
1010.310.19.99.79.49.29.08.88.68.48.28.07.8
58.78.58.38.17.97.77.47.27.06.86.66.46.2
1 to 12 years of education9517.116.916.716.516.316.115.815.615.415.215.014.814.6
9015.515.315.114.914.714.514.314.113.913.613.413.213.0
8514.514.314.113.913.613.413.213.012.812.612.412.212.0
8013.613.413.213.012.812.612.312.111.911.711.511.311.1
7012.212.011.811.611.411.210.910.710.510.310.19.99.7
6011.010.810.610.410.210.09.89.69.39.18.98.78.5
509.99.79.59.39.18.98.78.58.38.07.87.67.4
408.88.68.48.28.07.87.67.47.27.06.76.56.3
307.77.57.27.06.86.66.46.26.05.85.65.45.1
206.36.15.85.65.45.25.04.84.64.44.24.03.7
155.45.25.04.84.54.34.13.93.73.53.33.12.9
104.34.13.93.73.53.33.12.92.72.42.22.01.8
52.82.62.32.11.91.71.51.31.10.90.70.50.2
Table A17

Normative data for the Letter A stratified by education levels for GUATEMALA

Percentile1 to 12 years of education>12 years of education
9517.822.5
9016.120.8
8514.919.6
8013.918.6
7012.417.1
6011.115.8
509.914.6
408.713.4
307.412.0
205.810.5
154.89.5
103.78.4
51.96.6
Table A18

Normative data for the Letter A stratified by age and education levels for HONDURAS

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9520.820.620.320.119.919.719.419.219.018.818.518.318.1
9019.319.118.818.618.418.217.917.717.517.317.016.816.6
8518.318.117.817.617.417.216.916.716.516.316.015.815.6
8017.417.217.016.816.516.316.115.915.715.415.215.014.8
7016.115.915.715.415.215.014.814.514.314.113.913.613.4
6015.014.814.514.314.113.913.613.413.213.012.712.512.3
5013.913.713.513.313.012.812.612.412.211.911.711.511.3
4012.912.712.512.212.011.811.611.311.110.910.710.410.2
3011.811.611.311.110.910.710.410.210.09.89.59.39.1
2010.410.210.09.89.59.39.18.98.78.48.28.07.8
159.69.49.28.98.78.58.38.07.87.67.47.16.9
108.68.48.27.97.77.57.37.06.86.66.46.15.9
57.16.96.76.46.26.05.85.55.35.14.94.64.4
1 to 12 years of education9516.416.115.915.715.515.315.014.814.614.414.113.913.7
9014.914.614.414.214.013.813.513.313.112.912.612.412.2
8513.913.613.413.213.012.812.512.312.111.911.611.411.2
8013.012.812.612.412.111.911.711.511.211.010.810.610.4
7011.711.511.311.010.810.610.410.19.99.79.59.29.0
6010.610.410.19.99.79.59.29.08.88.68.38.17.9
509.59.39.18.98.68.48.28.07.77.57.37.16.9
408.58.38.07.87.67.47.26.96.76.56.36.05.8
307.47.16.96.76.56.36.05.85.65.45.14.94.7
206.05.85.65.45.14.94.74.54.24.03.83.63.4
155.25.04.84.54.34.13.93.63.43.23.02.72.5
104.24.03.83.53.33.12.92.62.42.22.01.71.5
52.72.52.32.01.81.61.41.10.90.70.50.20.0
Table A19

Normative data for the Letter A stratified by age and education levels for MEXICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9523.022.722.322.021.721.321.020.620.320.019.619.318.9
9021.521.220.820.520.119.819.519.118.818.418.117.817.4
8520.520.119.819.519.118.818.418.117.817.417.116.716.4
8019.619.319.018.618.317.917.617.316.916.616.215.915.6
7018.317.917.617.316.916.616.215.915.615.214.914.514.2
6017.116.816.516.115.815.415.114.814.414.113.713.413.1
5016.115.715.415.114.714.414.013.713.413.012.712.312.0
4015.014.714.414.013.713.313.012.612.312.011.611.310.9
3013.913.513.212.912.512.211.811.511.210.810.510.19.8
2012.512.211.911.511.210.810.510.29.89.59.18.88.5
1511.711.411.010.710.310.09.69.39.08.68.37.97.6
1010.710.310.09.79.39.08.68.38.07.67.36.96.6
59.28.88.58.17.87.57.16.86.46.15.85.45.1
1 to 12 years of education9519.919.619.218.918.518.217.917.517.216.816.516.215.8
9018.418.017.717.417.016.716.316.015.615.315.014.614.3
8517.417.016.716.316.015.715.315.014.614.314.013.613.3
8016.516.215.815.515.214.814.514.113.813.413.112.812.4
7015.214.814.514.113.813.513.112.812.412.111.811.411.1
6014.013.713.313.012.712.312.011.611.311.010.610.39.9
5013.012.612.311.911.611.310.910.610.29.99.69.28.9
4011.911.611.210.910.510.29.99.59.28.88.58.27.8
3010.810.410.19.79.49.18.78.48.07.77.47.06.7
209.49.18.78.48.07.77.47.06.76.36.05.75.3
158.68.27.97.57.26.96.56.25.85.55.24.84.5
107.67.26.96.56.25.85.55.24.84.54.13.83.5
56.05.75.35.04.74.34.03.63.33.02.62.31.9
Table A20

Normative data for the Letter A stratified by education levels for PARAGUAY

Percentile1 to 12 years of education>12 years of education
9513.715.0
9013.114.3
8512.713.9
8012.313.5
7011.713.0
6011.312.5
5010.812.0
4010.411.6
309.911.1
209.310.5
159.010.2
108.59.7
57.99.1
Table A21

Normative data for the Letter A stratified by age and education levels for PERU

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.821.621.421.321.120.920.720.520.420.220.019.819.6
9020.420.220.019.819.719.519.319.118.918.818.618.418.2
8519.419.319.118.918.718.518.418.218.017.817.617.417.3
8018.618.518.318.117.917.717.617.417.217.016.816.716.5
7017.417.217.016.816.716.516.316.115.915.815.615.415.2
6016.316.115.915.815.615.415.215.014.914.714.514.314.1
5015.315.115.014.814.614.414.214.113.913.713.513.313.2
4014.314.114.013.813.613.413.213.112.912.712.512.312.2
3013.313.112.912.712.512.412.212.011.811.611.511.311.1
2012.011.811.611.511.311.110.910.710.610.410.210.09.8
1511.211.010.810.710.510.310.19.99.89.69.49.29.0
1010.310.19.99.79.59.49.29.08.88.68.48.38.1
58.88.68.58.38.17.97.77.67.47.27.06.86.7
1 to 12 years of education9519.018.818.618.418.218.117.917.717.517.317.217.016.8
9017.517.417.217.016.816.616.516.316.115.915.715.515.4
8516.616.416.216.015.915.715.515.315.115.014.814.614.4
8015.815.615.415.315.114.914.714.514.314.214.013.813.6
7014.514.314.214.013.813.613.413.313.112.912.712.512.4
6013.513.313.112.912.712.612.412.212.011.811.711.511.3
5012.512.312.111.911.711.611.411.211.010.810.710.510.3
4011.511.311.110.910.810.610.410.210.09.99.79.59.3
3010.410.210.19.99.79.59.39.19.08.88.68.48.2
209.19.08.88.68.48.28.17.97.77.57.37.27.0
158.48.28.07.87.67.57.37.16.96.76.56.46.2
107.47.27.06.96.76.56.36.16.05.85.65.45.2
56.05.85.65.45.35.14.94.74.54.44.24.03.8
Table A22

Normative data for the Letter A stratified by age and education levels for PUERTO RICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9520.019.719.519.218.918.618.418.117.817.617.317.016.8
9018.718.418.117.817.617.317.016.816.516.216.015.715.4
8517.817.517.217.016.716.416.115.915.615.315.114.814.5
8017.016.816.516.215.915.715.415.114.914.614.314.113.8
7015.815.615.315.014.814.514.213.913.713.413.112.912.6
6014.814.614.314.013.713.513.212.912.712.412.111.911.6
5013.913.613.413.112.812.512.312.011.711.511.210.910.7
4013.012.712.412.211.911.611.311.110.810.510.310.09.7
3012.011.711.411.110.910.610.310.19.89.59.39.08.7
2010.810.510.210.09.79.49.28.98.68.38.17.87.5
1510.09.89.59.28.98.78.48.17.97.67.37.16.8
109.18.98.68.38.17.87.57.27.06.76.46.25.9
57.87.57.37.06.76.46.25.95.65.45.14.84.6
1 to 12 years of education9518.218.017.717.417.116.916.616.316.115.815.515.315.0
9016.916.616.316.115.815.515.315.014.714.514.213.913.7
8516.015.715.515.214.914.614.414.113.813.613.313.012.8
8015.215.014.714.414.213.913.613.413.112.812.612.312.0
7014.113.813.513.313.012.712.412.211.911.611.411.110.8
6013.112.812.512.212.011.711.411.210.910.610.410.19.8
5012.111.911.611.311.010.810.510.210.09.79.49.28.9
4011.210.910.710.410.19.89.69.39.08.88.58.28.0
3010.29.99.69.49.18.88.68.38.07.87.57.27.0
209.08.78.58.27.97.67.47.16.86.66.36.05.8
158.38.07.77.47.26.96.66.46.15.85.65.35.0
107.47.16.86.66.36.05.75.55.24.94.74.44.1
56.05.85.55.24.94.74.44.13.93.63.33.12.8
Table A23

Normative data for the Letter S stratified by education levels for ARGENTINA

Percentile1 to 12 years of education>12 years of education
9518.421.4
9017.020.0
8516.119.0
8015.318.3
7014.117.0
6013.016.0
5012.115.0
4011.114.1
3010.113.0
208.811.8
158.111.0
107.110.1
55.78.7
Table A24

Normative data for the Letter S stratified by age and education levels for BOLIVIA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9517.517.317.116.816.616.416.115.915.715.415.215.014.7
9016.316.115.815.615.415.114.914.714.414.214.013.813.5
8515.515.215.014.814.614.314.113.913.613.413.212.912.7
8014.814.614.314.113.913.613.413.212.912.712.512.312.0
7013.713.513.213.012.812.512.312.111.911.611.411.210.9
6012.812.612.312.111.911.611.411.210.910.710.510.210.0
5011.911.711.511.211.010.810.510.310.19.99.69.49.2
4011.110.910.610.410.29.99.79.59.29.08.88.58.3
3010.29.99.79.59.29.08.88.58.38.17.97.67.4
209.18.88.68.48.17.97.77.57.27.06.86.56.3
158.48.27.97.77.57.27.06.86.56.36.15.95.6
107.67.37.16.96.76.46.26.05.75.55.35.04.8
56.36.15.95.75.45.25.04.74.54.34.03.83.6
1 to 12 years of education9514.113.913.713.413.213.012.712.512.312.011.811.611.3
9012.912.712.412.212.011.711.511.311.010.810.610.310.1
8512.111.811.611.411.110.910.710.510.210.09.89.59.3
8011.411.210.910.710.510.210.09.89.59.39.18.88.6
7010.310.19.89.69.49.18.98.78.58.28.07.87.5
609.49.18.98.78.58.28.07.87.57.37.16.86.6
508.58.38.17.87.67.47.16.96.76.46.26.05.8
407.77.47.27.06.86.56.36.15.85.65.45.14.9
306.86.56.36.15.85.65.45.14.94.74.44.24.0
205.75.45.25.04.74.54.34.13.83.63.43.12.9
155.04.84.54.34.13.83.63.43.12.92.72.42.2
104.23.93.73.53.23.02.82.62.32.11.91.61.4
52.92.72.52.32.01.81.61.31.10.90.60.40.2
Table A25

Normative data for the Letter S stratified by age and education levels for CHILE

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9520.720.319.919.519.118.718.317.917.517.116.716.315.9
9019.419.018.618.217.817.517.116.716.315.915.515.114.7
8518.618.217.817.417.016.616.215.815.415.014.614.213.8
8017.917.517.116.716.315.915.515.114.714.313.913.513.1
7016.716.315.915.615.214.814.414.013.613.212.812.412.0
6015.815.415.014.614.213.813.413.012.612.211.811.411.0
5014.914.514.113.713.312.912.512.111.711.310.910.510.1
4014.013.613.212.812.412.011.611.210.810.410.09.69.2
3013.112.712.311.911.511.110.710.39.99.59.18.78.3
2011.911.511.110.710.39.99.59.18.78.37.97.57.1
1511.210.810.410.09.69.28.88.48.07.67.26.86.4
1010.410.09.69.28.88.48.07.67.26.86.46.05.6
59.18.78.37.97.57.16.76.35.95.55.14.74.3
1 to 12 years of education9517.316.916.516.115.715.314.914.514.113.813.413.012.6
9016.115.715.314.914.514.113.713.312.912.512.111.711.3
8515.214.814.414.013.613.212.812.412.011.611.210.810.4
8014.514.113.713.312.912.512.111.711.310.910.510.19.7
7013.413.012.612.211.811.411.010.610.29.89.49.08.6
6012.412.011.611.210.810.410.09.69.28.88.48.07.6
5011.511.110.710.39.99.59.18.78.37.97.57.16.7
4010.610.29.89.49.08.68.27.87.47.06.66.35.9
309.79.38.98.58.17.77.36.96.56.15.75.34.9
208.58.17.77.36.96.56.15.85.45.04.64.23.8
157.87.47.06.66.25.85.45.04.64.23.83.43.1
107.06.66.25.85.45.04.64.23.83.43.02.62.2
55.75.34.94.54.13.73.32.92.52.11.71.30.9
Table A26

Normative data for the Letter S stratified by age and education levels for CUBA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9517.717.517.417.217.116.916.716.616.416.316.116.015.8
9016.416.316.116.015.815.615.515.315.215.014.914.714.5
8515.615.415.315.115.014.814.614.514.314.214.013.913.7
8014.914.714.614.414.314.113.913.813.613.513.313.213.0
7013.813.613.513.313.113.012.812.712.512.412.212.011.9
6012.812.712.512.412.212.011.911.711.611.411.311.110.9
5011.911.811.611.511.311.211.010.810.710.510.410.210.1
4011.110.910.810.610.410.310.110.09.89.79.59.39.2
3010.110.09.89.79.59.39.29.08.98.78.68.48.2
209.08.98.78.58.48.28.17.97.87.67.47.37.1
158.38.28.07.87.77.57.47.27.16.96.76.66.4
107.57.37.27.06.86.76.56.46.26.15.95.75.6
56.26.15.95.75.65.45.35.15.04.84.64.54.3
1 to 12 years of education9515.815.715.515.315.215.014.914.714.614.414.214.113.9
9014.614.414.214.113.913.813.613.513.313.113.012.812.7
8513.713.613.413.213.112.912.812.612.512.312.112.011.8
8013.012.912.712.512.412.212.111.911.811.611.411.311.1
7011.911.711.611.411.311.111.010.810.610.510.310.210.0
6011.010.810.610.510.310.210.09.99.79.59.49.29.1
5010.19.99.89.69.49.39.19.08.88.78.58.38.2
409.29.08.98.78.68.48.38.17.97.87.67.57.3
308.38.17.97.87.67.57.37.27.06.86.76.56.4
207.17.06.86.76.56.46.26.05.95.75.65.45.3
156.46.36.16.05.85.75.55.35.25.04.94.74.6
105.65.45.35.15.04.84.74.54.34.24.03.93.7
54.34.24.03.93.73.63.43.23.12.92.82.62.5
Table A27

Normative data for the Letter S stratified by age and education levels for EL SALVADOR

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.521.321.120.920.720.520.320.119.919.719.519.319.1
9020.019.819.619.419.219.018.818.618.418.218.017.817.6
8519.018.818.618.518.318.117.917.717.517.317.116.916.7
8018.218.017.817.617.417.217.016.816.616.516.316.115.9
7016.916.716.516.316.115.915.715.515.315.215.014.814.6
6015.815.615.415.215.014.814.614.414.314.113.913.713.5
5014.814.614.414.214.013.813.613.413.213.012.812.612.4
4013.813.613.413.213.012.812.612.412.212.011.811.611.4
3012.712.512.312.111.911.711.511.311.110.910.710.510.3
2011.411.211.010.810.610.410.210.09.89.69.49.29.0
1510.610.410.210.09.89.69.49.29.08.88.68.48.2
109.69.49.29.08.88.68.48.28.07.87.67.47.2
58.17.97.87.67.47.27.06.86.66.46.26.05.8
1 to 12 years of education9515.615.415.215.014.814.614.414.214.013.813.613.413.2
9014.113.913.713.513.313.113.012.812.612.412.212.011.8
8513.213.012.812.612.412.212.011.811.611.411.211.010.8
8012.312.212.011.811.611.411.211.010.810.610.410.210.0
7011.010.910.710.510.310.19.99.79.59.39.18.98.7
6010.09.89.69.49.29.08.88.68.48.28.07.87.6
508.98.78.58.38.17.97.77.67.47.27.06.86.6
407.97.77.57.37.16.96.76.56.36.15.95.75.5
306.86.66.46.26.05.85.65.45.25.04.84.64.4
205.55.35.14.94.74.54.34.13.93.73.53.33.1
154.74.54.34.13.93.73.53.33.12.92.72.52.3
103.73.53.33.12.92.72.52.32.12.01.81.61.4
52.32.11.91.71.51.31.10.90.70.50.30.10.0
Table A28

Normative data for the Letter S stratified by education levels for GUATEMALA

Percentile1 to 12 years of education>12 years of education
9517.122.3
9015.420.6
8514.319.4
8013.418.5
7011.817.0
6010.615.7
509.414.5
408.213.4
306.912.1
205.410.6
154.59.6
103.48.5
51.76.8
Table A29

Normative data for the Letter S stratified by age and education levels for HONDURAS

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9518.618.518.318.118.017.817.717.517.317.217.016.816.7
9017.217.016.916.716.616.416.216.115.915.715.615.415.3
8516.316.115.915.815.615.515.315.115.014.814.614.514.3
8015.515.315.215.014.814.714.514.314.214.013.913.713.5
7014.214.113.913.713.613.413.213.112.912.812.612.412.3
6013.213.012.812.712.512.312.212.011.911.711.511.411.2
5012.212.011.911.711.511.411.211.010.910.710.610.410.2
4011.211.010.910.710.510.410.210.19.99.79.69.49.2
3010.110.09.89.69.59.39.29.08.88.78.58.38.2
208.98.78.68.48.28.17.97.77.67.47.37.16.9
158.17.97.87.67.47.37.17.06.86.66.56.36.1
107.17.06.86.76.56.36.26.05.85.75.55.45.2
55.75.65.45.25.14.94.84.64.44.34.13.93.8
1 to 12 years of education9514.814.714.514.314.214.013.813.713.513.413.213.012.9
9013.413.213.112.912.712.612.412.312.111.911.811.611.4
8512.512.312.112.011.811.611.511.311.211.010.810.710.5
8011.711.511.311.211.010.910.710.510.410.210.09.99.7
7010.410.210.19.99.89.69.49.39.18.98.88.68.5
609.49.29.08.98.78.58.48.28.07.97.77.67.4
508.48.28.07.97.77.67.47.27.16.96.76.66.4
407.47.27.16.96.76.66.46.26.15.95.85.65.4
306.36.26.05.85.75.55.35.25.04.94.74.54.4
205.14.94.74.64.44.34.13.93.83.63.43.33.1
154.34.14.03.83.63.53.33.13.02.82.72.52.3
103.33.23.02.82.72.52.42.22.01.91.71.51.4
51.91.81.61.41.31.10.90.80.60.50.30.10.0
Table A30

Normative data for the Letter S stratified by age and education levels for MEXICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.421.120.820.620.320.119.819.519.319.018.718.518.2
9019.919.719.419.118.918.618.318.117.817.517.317.016.7
8519.018.718.418.217.917.617.417.116.816.616.316.015.8
8018.117.917.617.417.116.816.616.316.015.815.515.215.0
7016.916.616.316.115.815.515.315.014.714.514.213.913.7
6015.815.515.215.014.714.414.213.913.613.413.112.912.6
5014.814.514.214.013.713.413.212.912.612.412.111.811.6
4013.713.513.213.012.712.412.211.911.611.411.110.810.6
3012.712.412.111.911.611.311.110.810.510.310.09.79.5
2011.411.110.810.610.310.09.89.59.29.08.78.58.2
1510.610.310.09.89.59.29.08.78.48.27.97.67.4
109.69.39.18.88.58.38.07.77.57.26.96.76.4
58.17.97.67.37.16.86.66.36.05.85.55.25.0
1 to 12 years of education9518.818.518.318.017.717.517.216.916.716.416.115.915.6
9017.317.116.816.516.316.015.715.515.215.014.714.414.2
8516.416.115.815.615.315.014.814.514.214.013.713.513.2
8015.615.315.014.814.514.214.013.713.413.212.912.612.4
7014.314.013.713.513.212.912.712.412.111.911.611.411.1
6013.212.912.612.412.111.911.611.311.110.810.510.310.0
5012.211.911.611.411.110.810.610.310.19.89.59.39.0
4011.210.910.610.410.19.89.69.39.08.88.58.28.0
3010.19.89.59.39.08.78.58.28.07.77.47.26.9
208.88.58.38.07.77.57.26.96.76.46.15.95.6
158.07.77.47.26.96.66.46.15.95.65.35.14.8
107.06.76.56.25.95.75.45.24.94.64.44.13.8
55.65.35.04.84.54.24.03.73.43.22.92.62.4
Table A31

Normative data for the Letter S stratified by education levels for PARAGUAY

Percentile1 to 12 years of education>12 years of education
9513.015.6
9012.214.8
8511.814.4
8011.414.0
7010.713.3
6010.212.8
509.712.3
409.211.8
308.711.3
208.110.7
157.710.3
107.29.8
56.59.1
Table A32

Normative data for the Letter S stratified by age and education levels for PERU

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9521.120.920.820.720.620.420.320.220.019.919.819.619.5
9019.719.519.419.319.219.018.918.818.618.518.418.218.1
8518.718.618.518.418.218.118.017.817.717.617.417.317.2
8018.017.817.717.617.417.317.217.116.916.816.716.516.4
7016.716.616.516.316.216.115.915.815.715.515.415.315.2
6015.715.615.415.315.215.014.914.814.614.514.414.214.1
5014.714.614.414.314.214.113.913.813.713.513.413.313.1
4013.713.613.513.313.213.113.012.812.712.612.412.312.2
3012.712.612.412.312.212.011.911.811.611.511.411.211.1
2011.511.311.211.110.910.810.710.510.410.310.110.09.9
1510.710.510.410.310.110.09.99.89.69.59.49.29.1
109.79.69.59.39.29.19.08.88.78.68.48.38.2
58.38.28.18.07.87.77.67.47.37.27.06.96.8
1 to 12 years of education9517.117.016.816.716.616.416.316.216.015.915.815.615.5
9015.715.615.415.315.215.014.914.814.614.514.414.314.1
8514.814.614.514.414.214.114.013.813.713.613.513.313.2
8014.013.913.713.613.513.313.213.112.912.812.712.512.4
7012.712.612.512.412.212.112.011.811.711.611.411.311.2
6011.711.611.411.311.211.010.910.810.610.510.410.310.1
5010.710.610.510.310.210.19.99.89.79.59.49.39.2
409.89.69.59.49.29.19.08.88.78.68.48.38.2
308.78.68.48.38.28.17.97.87.77.57.47.37.1
207.57.37.27.16.96.86.76.56.46.36.26.05.9
156.76.66.46.36.26.05.95.85.65.55.45.25.1
105.85.65.55.45.25.15.04.84.74.64.44.34.2
54.44.24.14.03.83.73.63.43.33.23.02.92.8
Table A33

Normative data for the Letter S stratified by age and education levels for PUERTO RICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9520.219.919.719.419.118.818.618.318.017.717.417.216.9
9018.818.518.217.917.717.417.116.816.516.316.015.715.4
8517.817.517.217.016.716.416.115.815.615.315.014.714.4
8017.016.716.416.115.915.615.315.014.814.514.213.913.6
7015.715.415.114.914.614.314.013.713.513.212.912.612.3
6014.614.314.013.813.513.212.912.612.412.111.811.511.2
5013.613.313.012.712.512.211.911.611.311.110.810.510.2
4012.612.312.011.711.511.210.910.610.310.19.89.59.2
3011.511.210.910.610.410.19.89.59.29.08.78.48.1
2010.29.99.69.39.18.88.58.27.97.77.47.16.8
159.49.18.88.58.38.07.77.47.16.96.66.36.0
108.48.17.87.67.37.06.76.46.25.95.65.35.0
56.96.76.46.15.85.55.35.04.74.44.13.93.6
1 to 12 years of education9518.718.418.117.917.617.317.016.716.516.215.915.615.3
9017.217.016.716.416.115.815.615.315.014.714.414.213.9
8516.316.015.715.415.114.914.614.314.013.813.513.212.9
8015.515.214.914.614.314.113.813.513.212.912.712.412.1
7014.213.913.613.313.012.812.512.211.911.611.411.110.8
6013.112.812.512.211.911.711.411.110.810.610.310.09.7
5012.111.811.511.210.910.710.410.19.89.59.39.08.7
4011.010.810.510.29.99.69.49.18.88.58.28.07.7
309.99.79.49.18.88.68.38.07.77.47.26.96.6
208.78.48.17.87.57.37.06.76.46.15.95.65.3
157.87.67.37.06.76.46.25.95.65.35.04.84.5
106.96.66.36.05.85.55.24.94.64.44.13.83.5
55.45.14.94.64.34.03.73.53.22.92.62.32.1
Table A34

Normative data for the Animals category stratified by age and education levels for ARGENTINA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9529.329.129.028.828.628.428.228.027.827.627.427.227.0
9027.827.627.427.227.026.826.626.426.226.025.925.725.5
8526.726.526.426.226.025.825.625.425.225.024.824.624.4
8025.925.725.525.325.124.924.724.524.324.123.923.823.6
7024.524.324.123.923.723.523.323.122.922.822.622.422.2
6023.323.122.922.722.522.422.222.021.821.621.421.221.0
5022.222.021.821.721.521.321.120.920.720.520.320.119.9
4021.121.020.820.620.420.220.019.819.619.419.219.018.8
3020.019.819.619.419.219.018.818.618.418.218.117.917.7
2018.618.418.218.017.817.617.417.217.116.916.716.516.3
1517.717.517.317.117.016.816.616.416.216.015.815.615.4
1016.716.516.316.115.915.715.515.315.115.014.814.614.4
515.114.914.714.514.414.214.013.813.613.413.213.012.8
1 to 12 years of education9525.825.625.425.225.024.824.624.424.224.123.923.723.5
9024.224.023.823.623.523.323.122.922.722.522.322.121.9
8523.223.022.822.622.422.222.021.821.621.521.321.120.9
8022.322.121.921.721.521.421.221.020.820.620.420.220.0
7020.920.720.520.420.220.019.819.619.419.219.018.818.6
6019.819.619.419.219.018.818.618.418.218.017.817.617.5
5018.718.518.318.117.917.717.517.317.116.916.816.616.4
4017.617.417.217.016.816.616.416.216.115.915.715.515.3
3016.416.216.015.815.715.515.315.114.914.714.514.314.1
2015.014.814.714.514.314.113.913.713.513.313.112.912.7
1514.214.013.813.613.413.213.012.812.612.412.212.111.9
1013.112.912.712.612.412.212.011.811.611.411.211.010.8
511.611.411.211.010.810.610.410.210.09.89.69.59.3
Table A35

Normative data for the Animals category stratified by age and education levels for BOLIVIA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9527.927.426.926.425.925.424.924.423.923.422.922.421.9
9026.225.725.224.724.223.723.222.722.221.821.320.820.3
8525.124.624.223.723.222.722.221.721.220.720.219.719.2
8024.223.723.222.722.221.721.220.720.219.719.218.718.3
7022.822.321.821.320.820.319.819.318.818.317.817.316.8
6021.621.120.620.119.619.118.618.117.617.116.616.115.6
5020.419.919.418.918.417.917.416.916.415.915.414.914.4
4019.318.818.317.817.316.816.315.815.314.814.313.813.3
3018.017.517.016.616.115.615.114.614.113.613.112.612.1
2016.616.115.615.114.614.113.613.112.612.111.611.110.6
1515.715.214.714.213.713.212.712.211.711.210.710.29.7
1014.614.113.613.112.612.111.611.110.610.19.69.18.6
512.912.512.011.511.010.510.09.59.08.58.07.57.0
1 to 12 years of education9523.523.022.522.021.521.020.520.019.519.018.518.017.5
9021.821.320.820.319.819.318.818.417.917.416.916.415.9
8520.820.319.819.318.818.317.817.316.816.315.815.314.8
8019.819.318.818.317.817.316.816.315.815.414.914.413.9
7018.417.917.416.916.415.915.414.914.413.913.412.912.4
6017.216.716.215.715.214.714.213.713.212.712.211.711.2
5016.015.515.014.514.013.513.012.512.011.511.010.510.0
4014.914.413.913.412.912.411.911.410.910.49.99.48.9
3013.613.212.712.211.711.210.710.29.79.28.78.27.7
2012.211.711.210.710.29.79.28.78.27.77.26.76.2
1511.310.810.39.89.38.88.37.87.36.86.35.85.3
1010.29.79.28.78.27.77.26.76.25.75.24.74.2
58.68.17.67.16.66.15.65.14.64.13.63.12.6
Table A36

Normative data for the Animals category stratified by age and education levels for CHILE

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9529.929.328.728.127.526.926.325.725.024.423.823.222.6
9028.427.827.226.626.025.424.724.123.522.922.321.721.1
8527.426.826.225.625.024.323.723.122.521.921.320.720.1
8026.525.925.324.724.123.522.922.321.721.120.519.819.2
7025.224.624.023.422.822.121.520.920.319.719.118.517.9
6024.123.422.822.221.621.020.419.819.218.618.017.416.8
5023.022.421.821.220.620.019.318.718.117.516.916.315.7
4021.921.320.720.119.518.918.317.717.116.515.915.314.6
3020.820.219.619.018.417.817.216.515.915.314.714.113.5
2019.518.818.217.617.016.415.815.214.614.013.412.812.2
1518.618.017.416.816.215.615.014.413.713.112.511.911.3
1017.617.016.415.815.214.613.913.312.712.111.510.910.3
516.115.514.914.313.613.012.411.811.210.610.09.48.8
1 to 12 years of education9525.424.824.223.623.022.421.721.120.519.919.318.718.1
9023.923.322.722.121.420.820.219.619.018.417.817.216.6
8522.922.321.721.020.419.819.218.618.017.416.816.215.6
8022.021.420.820.219.619.018.417.817.216.515.915.314.7
7020.720.119.518.818.217.617.016.415.815.214.614.013.4
6019.518.918.317.717.116.515.915.314.714.113.512.812.2
5018.517.917.316.716.015.414.814.213.613.012.411.811.2
4017.416.816.215.615.014.413.813.212.612.011.310.710.1
3016.315.715.114.513.913.212.612.011.410.810.29.69.0
2014.914.313.713.112.511.911.310.710.19.58.98.27.6
1514.113.512.912.311.711.110.49.89.28.68.07.46.8
1013.112.511.911.310.610.09.48.88.27.67.06.45.8
511.611.010.39.79.18.57.97.36.76.15.54.94.3
Table A37

Normative data for the Animals category stratified by age and education levels for CUBA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9525.425.124.824.424.123.823.423.122.822.522.121.821.5
9024.023.723.323.022.722.322.021.721.421.020.720.420.0
8523.022.722.422.021.721.421.120.720.420.119.719.419.1
8022.221.921.621.220.920.620.319.919.619.318.918.618.3
7021.020.620.320.019.619.319.018.718.318.017.717.317.0
6019.919.619.218.918.618.217.917.617.316.916.616.315.9
5018.918.618.217.917.617.216.916.616.315.915.615.315.0
4017.917.617.216.916.616.315.915.615.314.914.614.314.0
3016.816.516.215.815.515.214.814.514.213.913.513.212.9
2015.515.214.914.614.213.913.613.212.912.612.311.911.6
1514.714.414.113.813.413.112.812.512.111.811.511.110.8
1013.813.513.112.812.512.211.811.511.210.810.510.29.9
512.412.011.711.411.010.710.410.19.79.49.18.88.4
1 to 12 years of education9523.022.622.322.021.621.321.020.720.320.019.719.319.0
9021.521.220.920.520.219.919.619.218.918.618.217.917.6
8520.620.219.919.619.318.918.618.317.917.617.317.016.6
8019.819.419.118.818.518.117.817.517.116.816.516.215.8
7018.518.217.817.517.216.916.516.215.915.515.214.914.6
6017.417.116.816.416.115.815.515.114.814.514.113.813.5
5016.416.115.815.415.114.814.514.113.813.513.112.812.5
4015.415.114.814.414.113.813.513.112.812.512.211.811.5
3014.414.013.713.413.012.712.412.111.711.411.110.810.4
2013.112.812.412.111.811.411.110.810.510.19.89.59.1
1512.312.011.611.311.010.610.310.09.79.39.08.78.4
1011.311.010.710.410.09.79.49.08.78.48.17.77.4
59.99.69.28.98.68.37.97.67.37.06.66.36.0
Table A38

Normative data for the Animals category stratified by age and education levels for EL SALVADOR

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9529.028.528.027.627.126.726.225.725.324.824.423.923.4
9027.226.826.325.925.424.924.524.023.623.122.722.221.7
8526.125.725.224.724.323.823.422.922.422.021.521.120.6
8025.224.724.223.823.322.922.421.921.521.020.620.119.6
7023.623.222.722.321.821.420.920.420.019.519.118.618.1
6022.421.921.521.020.520.119.619.218.718.217.817.316.9
5021.220.720.319.819.318.918.418.017.517.116.616.115.7
4020.019.519.118.618.217.717.216.816.315.915.414.914.5
3018.718.317.817.316.916.416.015.515.014.614.113.713.2
2017.216.716.315.815.414.914.514.013.513.112.612.211.7
1516.315.815.314.914.414.013.513.012.612.111.711.210.7
1015.114.714.213.713.312.812.411.911.411.010.510.19.6
513.413.012.512.011.611.110.710.29.79.38.88.47.9
1 to 12 years of education9523.523.122.622.121.721.220.820.319.819.418.918.518.0
9021.821.420.920.420.019.519.118.618.117.717.216.816.3
8520.720.219.819.318.818.417.917.517.016.516.115.615.2
8019.719.318.818.417.917.417.016.516.115.615.114.714.2
7018.217.817.316.816.415.915.515.014.514.113.613.212.7
6016.916.516.015.615.114.614.213.713.312.812.311.911.4
5015.815.314.814.413.913.513.012.512.111.611.210.710.2
4014.614.113.713.212.712.311.811.410.910.410.09.59.1
3013.312.812.411.911.511.010.510.19.69.28.78.27.8
2011.811.310.910.49.99.59.08.68.17.67.26.76.3
1510.810.49.99.59.08.58.17.67.26.76.25.85.3
109.79.28.88.37.97.46.96.56.05.65.14.64.2
58.07.57.16.66.25.75.24.84.33.93.42.92.5
Table A29

Normative data for the Animals category stratified by age and education levels for GUATEMALA

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9531.931.731.431.130.830.530.229.929.729.429.128.828.5
9030.230.029.729.429.128.828.528.228.027.727.427.126.8
8529.128.828.528.328.027.727.427.126.826.526.326.025.7
8028.227.927.627.327.026.726.526.225.925.625.325.024.7
7026.726.426.125.825.525.224.924.724.424.123.823.523.2
6025.425.124.824.524.224.023.723.423.122.822.522.322.0
5024.223.923.623.323.122.822.522.221.921.621.421.120.8
4023.022.722.422.221.921.621.321.020.720.520.219.919.6
3021.721.521.220.920.620.320.019.819.519.218.918.618.3
2020.219.919.719.419.118.818.518.218.017.717.417.116.8
1519.319.018.718.418.217.917.617.317.016.716.416.215.9
1018.217.917.617.317.016.716.516.215.915.615.315.014.7
516.516.215.915.615.315.014.814.514.213.913.613.313.0
1 to 12 years of education9526.225.925.625.325.124.824.524.223.923.623.423.122.8
9024.524.223.923.623.423.122.822.522.221.921.721.421.1
8523.423.122.822.522.221.921.721.421.120.820.520.220.0
8022.422.121.921.621.321.020.720.420.219.919.619.319.0
7020.920.620.320.119.819.519.218.918.618.418.117.817.5
6019.619.419.118.818.518.217.917.717.417.116.816.516.2
5018.518.217.917.617.317.016.816.516.215.915.615.315.1
4017.317.016.716.416.115.915.615.315.014.714.414.213.9
3016.015.715.415.214.914.614.314.013.713.513.212.912.6
2014.514.213.913.613.413.112.812.512.211.911.711.411.1
1513.613.313.012.712.412.111.811.611.311.010.710.410.1
1012.412.111.911.611.311.010.710.410.19.99.69.39.0
510.710.410.29.99.69.39.08.78.48.27.97.67.3
Table A40

Normative data for the Animals category stratified by age and education levels for HONDURAS

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9528.628.227.827.326.926.426.025.625.124.724.223.823.4
9027.126.726.325.825.424.924.524.123.623.222.722.321.9
8526.125.725.324.824.423.923.523.122.622.221.721.320.9
8025.324.924.424.023.523.122.722.221.821.320.920.520.0
7024.023.523.122.622.221.821.320.920.420.019.619.118.7
6022.822.422.021.521.120.620.219.819.318.918.418.017.5
5021.821.320.920.520.019.619.118.718.317.817.416.916.5
4020.720.319.919.419.018.518.117.717.216.816.315.915.5
3019.619.218.718.317.917.417.016.516.115.615.214.814.3
2018.317.817.417.016.516.115.615.214.814.313.913.413.0
1517.417.016.616.115.715.214.814.413.913.513.012.612.2
1016.416.015.615.114.714.213.813.412.912.512.011.611.1
514.914.514.013.613.212.712.311.811.411.010.510.19.6
1 to 12 years of education9523.823.423.022.522.121.621.220.820.319.919.419.018.6
9022.321.921.521.020.620.119.719.318.818.417.917.517.1
8521.320.920.520.019.619.118.718.317.817.416.916.516.1
8020.520.119.619.218.718.317.917.417.016.516.115.715.2
7019.218.718.317.817.417.016.516.115.615.214.814.313.9
6018.017.617.116.716.315.815.414.914.514.113.613.212.7
5017.016.516.115.715.214.814.313.913.513.012.612.111.7
4015.915.515.114.614.213.713.312.912.412.011.511.110.7
3014.814.413.913.513.012.612.211.711.310.810.410.09.5
2013.513.012.612.111.711.310.810.49.99.59.18.68.2
1512.612.211.811.310.910.410.09.69.18.78.27.87.3
1011.611.210.710.39.99.49.08.58.17.77.26.86.3
510.19.79.28.88.47.97.57.06.66.25.75.34.8
Table A41

Normative data for the Animals category stratified by age and education levels for MEXICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9529.529.128.628.227.827.326.926.526.025.625.124.724.3
9027.827.427.026.526.125.625.224.824.323.923.523.022.6
8526.726.325.825.425.024.524.123.723.222.822.321.921.5
8025.825.324.924.524.023.623.222.722.321.821.421.020.5
7024.323.823.423.022.522.121.721.220.820.319.919.519.0
6023.022.622.121.721.320.820.420.019.519.118.618.217.8
5021.821.421.020.520.119.719.218.818.417.917.517.016.6
4020.720.219.819.418.918.518.117.617.216.716.315.915.4
3019.419.018.518.117.717.216.816.415.915.515.014.614.2
2017.917.517.016.616.215.715.314.914.414.013.613.112.7
1517.016.616.115.715.214.814.413.913.513.112.612.211.7
1015.915.415.014.614.113.713.212.812.411.911.511.110.6
514.213.713.312.912.412.011.611.110.710.39.89.48.9
1 to 12 years of education9527.527.026.626.225.725.324.824.424.023.523.122.722.2
9025.825.324.924.524.023.623.222.722.321.921.421.020.5
8524.724.223.823.422.922.522.021.621.220.720.319.919.4
8023.723.322.922.422.021.521.120.720.219.819.418.918.5
7022.221.821.420.920.520.119.619.218.718.317.917.417.0
6021.020.520.119.719.218.818.417.917.517.016.616.215.7
5019.819.418.918.518.117.617.216.716.315.915.415.014.6
4018.618.217.817.316.916.516.015.615.114.714.313.813.4
3017.416.916.516.115.615.214.814.313.913.413.012.612.1
2015.915.415.014.614.113.713.312.812.411.911.511.110.6
1514.914.514.113.613.212.812.311.911.411.010.610.19.7
1013.813.412.912.512.111.611.210.810.39.99.59.08.6
512.111.711.310.810.410.09.59.18.68.27.87.36.9
Table A42

Normative data for the Animals category stratified by age and education levels for PARAGUAY

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9522.221.921.621.321.020.720.420.119.819.519.218.918.6
9021.321.020.720.420.119.719.419.118.818.518.217.917.6
8520.620.320.019.719.419.118.818.518.217.917.617.317.0
8020.119.819.519.218.918.618.318.017.717.417.116.816.5
7019.319.018.718.418.117.817.517.116.816.516.215.915.6
6018.618.318.017.717.417.016.716.416.115.815.515.214.9
5017.917.617.317.016.716.416.115.815.515.214.914.614.3
4017.317.016.716.316.015.715.415.114.814.514.213.913.6
3016.616.215.915.615.315.014.714.414.113.813.513.212.9
2015.715.415.114.814.514.213.913.613.313.012.712.412.1
1515.214.914.614.314.013.713.413.112.712.412.111.811.5
1014.614.313.913.613.313.012.712.412.111.811.511.210.9
513.613.313.012.712.412.111.811.511.210.910.610.310.0
1 to 12 years of education9517.617.317.016.716.416.115.815.515.214.914.614.314.0
9016.716.416.115.815.515.214.914.614.213.913.613.313.0
8516.115.815.415.114.814.514.213.913.613.313.012.712.4
8015.515.214.914.614.314.013.713.413.112.812.512.211.9
7014.714.414.113.813.513.212.912.612.311.911.611.311.0
6014.013.713.413.112.812.512.211.811.511.210.910.610.3
5013.313.012.712.412.111.811.511.210.910.610.310.09.7
4012.712.412.111.811.511.110.810.510.29.99.69.39.0
3012.011.711.411.010.710.410.19.89.59.28.98.68.3
2011.110.810.510.29.99.69.39.08.78.48.17.87.5
1510.610.310.09.79.49.18.88.58.27.97.67.26.9
1010.09.79.49.18.88.48.17.87.57.26.96.66.3
59.08.78.48.17.87.57.26.96.66.36.05.75.4
Table A43

Normative data for the Animals category stratified by age and education levels for PERU

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9529.529.228.828.528.127.727.427.026.726.326.025.625.3
9027.927.527.226.826.526.125.725.425.024.724.324.023.6
8526.826.426.125.725.425.024.624.323.923.623.222.922.5
8025.925.525.124.824.424.123.723.423.022.722.322.021.6
7024.424.023.723.323.022.622.321.921.621.220.820.520.1
6023.222.822.422.121.721.421.020.720.320.019.619.318.9
5022.021.721.320.920.620.219.919.519.218.818.518.117.8
4020.920.520.219.819.419.118.718.418.017.717.317.016.6
3019.619.318.918.618.217.917.517.116.816.416.115.715.4
2018.217.817.517.116.716.416.015.715.315.014.614.313.9
1517.216.916.516.215.815.515.114.814.414.113.713.413.0
1016.115.815.415.114.714.414.013.713.313.012.612.311.9
514.514.113.813.413.112.712.412.011.711.311.010.610.2
1 to 12 years of education9525.825.525.124.824.424.123.723.423.022.622.321.921.6
9024.223.823.523.122.822.422.121.721.421.020.620.319.9
8523.122.722.422.021.721.321.020.620.319.919.519.218.8
8022.221.821.521.120.820.420.019.719.319.018.618.317.9
7020.720.420.019.619.318.918.618.217.917.517.216.816.5
6019.519.118.818.418.117.717.317.016.616.315.915.615.2
5018.318.017.617.316.916.616.215.815.515.114.814.414.1
4017.216.816.516.115.815.415.114.714.314.013.613.312.9
3015.915.615.214.914.514.213.813.513.112.812.412.011.7
2014.514.113.813.413.112.712.412.011.611.310.910.610.2
1513.613.212.912.512.111.811.411.110.710.410.09.79.3
1012.512.111.811.411.010.710.310.09.69.38.98.68.2
510.810.510.19.89.49.08.78.38.07.67.36.96.6
Table A44

Normative data for the Animals category stratified by age and education levels for PUERTO RICO

Age (Years)
Percentile18– 2223– 2728– 3233– 3738– 4243– 4748– 5253– 5758– 6263– 6768– 7273– 77>77
>12 years of education9527.927.326.726.125.524.924.323.623.022.421.821.220.6
9026.325.725.024.423.823.222.622.021.420.820.219.619.0
8525.224.623.923.322.722.121.520.920.319.719.118.517.9
8024.323.623.022.421.821.220.620.019.418.818.217.617.0
7022.822.221.621.020.419.719.118.517.917.316.716.115.5
6021.620.920.319.719.118.517.917.316.716.115.514.914.3
5020.419.819.218.618.017.416.816.215.514.914.313.713.1
4019.318.718.117.416.816.215.615.014.413.813.212.612.0
3018.017.416.816.215.615.014.413.813.212.612.011.310.7
2016.616.015.414.714.113.512.912.311.711.110.59.99.3
1515.715.014.413.813.212.612.011.410.810.29.69.08.4
1014.614.013.312.712.111.510.910.39.79.18.57.97.3
512.912.311.711.110.59.99.38.78.07.46.86.25.6
1 to 12 years of education9526.726.125.524.924.323.723.122.521.821.220.620.019.4
9025.124.523.923.222.622.021.420.820.219.619.018.417.8
8524.023.422.822.121.520.920.319.719.118.517.917.316.7
8023.122.421.821.220.620.019.418.818.217.617.016.415.8
7021.621.020.419.819.218.617.917.316.716.115.514.914.3
6020.419.819.118.517.917.316.716.115.514.914.313.713.1
5019.218.618.017.416.816.215.615.014.313.713.112.511.9
4018.117.516.916.215.615.014.413.813.212.612.011.410.8
3016.816.215.615.014.413.813.212.612.011.410.810.19.5
2015.414.814.213.612.912.311.711.110.59.99.38.78.1
1514.513.913.212.612.011.410.810.29.69.08.47.87.2
1013.412.812.111.510.910.39.79.18.57.97.36.76.1
511.711.110.59.99.38.78.17.56.96.25.65.04.4

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Figures and Tables

Table 1

Effect of gender in the Letter F

CountryGenderMean (SD) t dfSig. (2-tailed) r
ArgentinaMale13.9 (4.5)–0.443180.6590.025
Female14.1 (4.6)
BoliviaMale8.7 (3.4)0.812710.4210.049
Female8.4 (3.7)
ChileMale10.6 (4.5)1.133180.2580.063
Female10.0 (4.3)
CubaMale10.3 (4.0)0.503030.6180.029
Female10.1 (3.8)
El SalvadorMale10.0 (4.7)0.662540.5080.042
Female9.6 (5.0)
GuatemalaMale10.5 (5.0)–2.222110.027 * 0.151
Female12.1 (5.3)
HondurasMale10.2 (4.7)1.951810.0530.143
Female8.8 (4.3)
MexicoMale11.8 (4.6)–0.201,2970.8390.006
Female11.8 (4.5)
ParaguayMale10.4 (2.0)0.182610.8540.011
Female10.4 (1.7)
PeruMale13.2 (4.0)–0.302430.7660.019
Female13.4 (4.6)
Puerto RicoMale10.3 (4.0)–0.672890.5040.039
Female10.6 (4.0)

 * p <  0.05.

Table 2

Final multiple linear regression models for Letter F

CountryBStd. Error t Sig.R2 SD e (residual)
Argentina(Constant)12.0200.34135.273<0.0010.1714.139
Education3.7700.4658.112<0.001
Bolivia(Constant)10.6000.56418.792<0.0010.1793.248
Age–0.0460.009–5.038<0.001
Education2.6300.5245.024<0.001
Chile(Constant)12.7930.68518.686<0.0010.2983.675
Age–0.0640.011–5.791<0.001
Education3.9680.5007.942<0.001
Cuba(Constant)11.8270.63418.661<0.0010.0793.728
Age–0.0390.011–3.581<0.001
Education1.7020.5053.366<0.001
El Salvador(Constant)11.0260.80513.693<0.0010.2294.321
Age–0.0420.013–3.1840.002
Education5.2180.6667.832<0.001
Guatemala(Constant)9.7500.41623.451<0.0010.1634.765
Education4.3240.6746.414<0.001
Honduras(Constant)8.6050.33224.311<0.0010.2453.900
Education5.1850.6777.664<0.001
Mexico(Constant)14.2450.33941.970<0.0010.1494.195
Age–0.0580.006–10.075<0.001
Education2.6540.2829.418<0.001
Paraguay(Constant)9.9860.10991.277<0.0010.2341.605
Education2.1050.2598.933<0.001
Peru(Constant)12.1950.74216.437<0.0010.2053.939
Age–0.0290.013–2.3220.021
Education3.7570.5386.989<0.001
Puerto Rico(Constant)11.0940.74814.826<0.0010.1213.739
Age–0.0320.012–2.5450.011
Education2.2300.4584.870<0.001
Table 3

Effect of gender in the Letter A

CountryGenderMean (SD) t dfSig. (2-tailed) r
Argentinaa Male13.5 (3.8)–0.35202.30.7250.025
Female13.7 (4.3)
BoliviaMale8.4 (3.9)–0.232710.8180.014
Female8.5 (3.9)
Chilea Male10.6 (4.9)2.01258.40.046 * 0.124
Female9.5 (4.2)
CubaMale9.6 (3.6)–1.113030.2700.063
Female10.1 (3.9)
El SalvadorMale9.4 (5.1)–0.672540.5060.042
Female9.8 (5.1)
GuatemalaMale10.6 (5.0)–2.712110.007 ** 0.184
Female12.5 (5.5)
HondurasMale10.0 (5.2)1.491810.1390.110
Female8.9 (4.4)
MexicoMale11.7 (4.7)1.291,2970.1980.036
Female11.3 (4.7)
ParaguayMale10.7 (2.1)–2.052610.041 * 0.126
Female11.2 (1.7)
PeruMale13.1 (4.0)–0.902430.3660.058
Female13.6 (4.4)
Puerto RicoMale10.9 (3.8)–1.302890.1950.076
Female11.5 (4.1)

aValue of the t-test for independent groups from the different variances with the corresponding correction of Yuen-Welch of degrees of freedom.  * p <  0.05,  ** p <  0.01,  *** p <  0.001.

Table 4

Final multiple linear regression models for Letter A

CountryBStd. Error t Sig.R2 SD e (residual)
Argentina(Constant)11.6960.30837.953<0.0010.1863.743
Education3.5770.4208.511<0.001
Bolivia(Constant)10.6510.59817.823<0.0010.2213.441
Age–0.0500.010–5.242<0.001
Education3.4350.5556.193<0.001
Chile(Constant)13.5580.69519.502<0.0010.3163.732
Age–0.0820.011–7.309<0.001
Education3.6080.5077.111<0.001
Cuba(Constant)11.4800.59619.277<0.0010.1433.503
Age–0.0420.010–4.102<0.001
Education2.6160.4755.507<0.001
El Salvador(Constant)10.7760.81513.227<0.0010.2674.372
Age–0.0420.013–3.1630.002
Education5.9420.6748.816<0.001
Guatemala(Constant)9.8710.42323.357<0.0010.1824.844
Education4.6970.6856.853<0.001
Honduras(Constant)10.4330.93411.173<0.0010.2224.167
Age–0.0450.017–2.6430.009
Education4.4050.7425.936<0.001
Mexico(Constant)14.3240.34241.871<0.0010.1934.228
Age–0.0680.006–11.748<0.001
Education3.1270.28411.011<0.001
Paraguay(Constant)10.8100.12288.656<0.0010.0661.786
Education1.2110.2884.199<0.001
Peru(Constant)13.1910.74517.700<0.0010.1523.957
Age–0.0360.013–2.8690.004
Education2.8490.5405.277<0.001
Puerto Rico(Constant)13.2010.74517.723<0.0010.1393.722
Age–0.0540.012–4.363<0.001
Education1.7700.4563.883<0.001
Table 5

Effect of gender in the Letter S

CountryGenderMean (SD) t dfSig. (2-tailed) r
Argentinaa Male13.4 (3.7)–0.81209.80.4190.056
Female13.8 (4.3)
BoliviaMale7.3 (3.6)–0.642710.5250.039
Female7.6 (3.9)
ChileMale9.9 (4.4)1.333180.1840.074
Female9.3 (4.2)
CubaMale9.3 (3.7)–1.013030.3150.058
Female9.7 (3.6)
El SalvadorMale8.9 (5.1)0.482540.6330.030
Female8.6 (4.6)
GuatemalaMale10.6 (5.2)–1.892110.0600.129
Female12.0 (5.4)
HondurasMale8.7 (4.3)0.771810.4390.057
Female8.2 (4.4)
MexicoMale11.3 (4.3)1.431,2970.1520.040
Female10.9 (4.4)
Paraguaya Male10.0 (2.6)–0.74167.00.4610.057
Female10.3 (1.9)
PeruMale12.4 (4.2)–0.612430.5390.039
Female12.8 (4.5)
Puerto RicoMale10.4 (4.1)–2.132890.034 * 0.124
Female11.5 (4.4)

aValue of the t-test for independent groups from the different variances with the corresponding correction of Yuen-Welch of degrees of freedom.  * p <  0.05,  ** p <  0.01.

Table 6

Final multiple linear regression models for Letter S

CountryBStd. Error t Sig.R2 SD e (residual)
Argentina(Constant)12.0680.31837.960<0.0010.1283.860
Education2.9500.4346.803<0.001
Bolivia(Constant)9.4530.59115.986<0.0010.2103.405
Age–0.0460.010–4.854<0.001
Education3.4040.5496.202<0.001
Chile(Constant)13.1100.66119.842<0.0010.3203.547
Age–0.0800.011–7.502<0.001
Education3.3840.4827.018<0.001
Cuba(Constant)10.7050.59518.001<0.0010.0813.498
Age–0.0310.010–3.0770.002
Education1.8720.4743.947<0.001
El Salvador(Constant)9.7240.75812.836<0.0010.2894.066
Age–0.0400.012–3.2010.002
Education5.8810.6279.382<0.001
Guatemala(Constant)9.3940.41122.840<0.0010.2194.714
Education5.1370.6677.702<0.001
Honduras(Constant)9.0200.88110.240<0.0010.1833.931
Age–0.0330.016–2.0380.043
Education3.8110.7005.445<0.001
Mexico(Constant)13.2290.32740.516<0.0010.1444.035
Age–0.0530.006–9.574<0.001
Education2.5890.2719.550<0.001
Paraguay(Constant)9.7220.13472.295<0.0010.2131.961
Education2.5970.3188.163<0.001
Peru(Constant)11.2560.73115.397<0.0010.2233.881
Age–0.0260.012–2.1320.034
Education3.9830.5307.519<0.001
Puerto Rico(Constant)13.1700.81116.245<0.0010.1114.051
Age–0.0560.013–4.154<0.001
Education1.5290.4963.0830.002
Table 7

Effect of gender in the Animal category

CountryGenderMean (SD) t dfSig. (2-tailed) r
ArgentinaMale19.2 (4.2)–0.883180.3780.049
Female19.8 (5.0)
BoliviaMale13.2 (5.3)0.022720.9870.001
Female13.2 (5.5)
Chilea Male16.0 (5.8)1.91265.10.0570.117
Female14.8 (5.2)
CubaMale15.2 (4.6)1.523030.1300.087
Female14.5 (4.1)
El SalvadorMale13.9 (5.6)0.582540.5620.036
Female13.4 (5.6)
GuatemalaMale17.8 (5.8)–2.162120.032 * 0.147
Female19.5 (5.3)
HondurasMale16.5 (5.1)1.841820.0670.135
Female15.1 (5.0)
MexicoMale17.7 (5.4)1.211,2980.2250.034
Female17.3 (5.0)
ParaguayMale12.5 (3.7)1.322610.1870.082
Female11.9 (3.3)
PeruMale19.0 (5.0)–0.012430.9890.001
Female19.0 (5.3)
Puerto RicoMale15.6 (5.4)–1.332880.1850.078
Female16.4 (5.0)

aValue of the t-test for independent groups from the different variances with the corresponding correction of Yuen-Welch of degrees of freedom.  * p <  0.05.

Table 8

Final multiple linear regression models for Animal category

CountryBStd. Error t Sig.R2 SD e (residual)
Argentina(Constant)19.4420.70727.508<0.0010.1784.333
Age–0.0380.013–3.0520.002
Education3.5540.4927.227<0.001
Bolivia(Constant)18.0130.78722.897<0.0010.2944.552
Age–0.1000.013–7.866<0.001
Education4.3980.7335.999<0.001
Chile(Constant)20.9140.78626.614<0.0010.4074.218
Age–0.1220.013–9.640<0.001
Education4.5160.5737.875<0.001
Cuba(Constant)17.7390.67626.226<0.0010.1573.979
Age–0.0660.012–5.650<0.001
Education2.4580.5394.557<0.001
El Salvador(Constant)17.5960.88219.946<0.0010.2894.735
Age–0.0920.014–6.376<0.001
Education5.4290.7307.438<0.001
Guatemala(Constant)19.5981.07918.161<0.0010.2864.718
Age–0.0570.019–3.0490.003
Education5.7350.6688.580<0.001
Honduras(Constant)18.7450.92920.182<0.0010.3244.184
Age–0.0880.017–5.214<0.001
Education4.8040.7446.461<0.001
Mexico(Constant)21.5510.37856.995<0.0010.1694.673
Age–0.0870.006–13.638<0.001
Education2.0430.3146.509<0.001
Paraguay(Constant)14.5490.69221.021<0.0010.4302.623
Age–0.0610.012–5.087<0.001
Education4.5880.4639.916<0.001
Peru(Constant)19.7400.86322.885<0.0010.2284.580
Age–0.0710.015–4.862<0.001
Education3.6830.6255.893<0.001
Puerto Rico(Constant)21.6510.91523.653<0.0010.2264.571
Age–0.1220.015–8.019<0.001
Education1.1940.5612.1300.034