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How does fear of COVID-19 affect the mental well-being of waiters in Turkey

Abstract

BACKGROUND:

Empirical findings are needed to determine how the fear of COVID-19 might change in the context of different individuals.

OBJECTIVE:

This study aims to determine the moderating role of fatalism and psychological resilience on the effect of fear of COVID-19 on general mental health.

METHODS:

This study makes use of qualitative research methods that involved collecting data from 355 full-time waiters via questionnaires on online platforms.

RESULT:

The collected data suggests that the fear of COVID-19 has a significant negative impact on mental well-being. Morever, the data gathered for this study also indicates that the fear of COVID-19 infection differs significantly according to the fatalistic belief and psychological resilience levels of the waiters.

CONCLUSIONS:

Findings of this study indicate that the psychological effects of infectious diseases on individuals are not universal, but rather depend on the personal characteristics of individuals. It is hoped that the results of this study will contribute to the reduction of negative effects associated with the general anxiety of pandemic that individuals experience.

1Introduction

The potential spread of COVID-19 virus system undoubtedly generated individual concerns and worries [1]. Beyond all other fears associated with the pandemic, it appeared that people had the most worry at the spread of the infection itself, proliferating through droplets from a person’s cough or sneeze [2]. From this perspective, studies have shown that individuals are worried about contracting COVID-19 due to its high risk of infection and mortality rates [3]. As frontline employees of the tourism and hotel industry, waiters were in direct contact with different customers from various nations. Due to working in areas with such direct contact, waiters are often at a high risk of infecting COVID-19 [4]. A noteworthy example, at this point, would be a single asymptomatic COVID-19 case, infecting eight people, who were sitting two tables away in a restaurant [5]. A study conducted in Ethiopia, on the other hand, determined that more than half of the waiters had high levels of perceived risk with respect to contracting the disease [6]. Because the risk of contracting an infectious disease increases in such working conditions, the mental well-being of employees is naturally impacted negatively. All in all, it is undeniable that the fear of contracting COVID-19 has had a negative effect on the mental health of waiters and beyond.

Mental well-being is of critical importance in terms of relieving the negative effects on mental health overall. Likewise, mental well-being is a means to improve the working conditions of waiters in their professional lives [2]. Considering that it would be impossible for a hotel to provide services to its customers without mentally, as well as physically, healthy employees, frontline workers have become even more essential during times of outbreaks [4]. While a number of researchers have found that the fear of contracting COVID-19 causes psychological distress, depression, anxiety and general low quality of life, [3], other studies have reached the conclusion that there are substantial differences between individuals’ reactions towards the pandemic, despite the accounts they give concerning their anxiety at being infected with COVID-19 [7, 8]. In order to understand the impact on the COVID-19 outbreak on people overall, individuals’ personal characteristics and the role they play in having anxiety must be investigated. To that end, this study approaches the effect of COVID-19 fear on mental well-being by utilizing the moderating variables of fatalism and psychological resilience within the scope of personal characteristics.

According to the conservation of resources theory (COR) [9], psychological resilience is an important resource for individuals in managing stressful, risky and challenging situations. Such resilience varies from person to person. Factors such as anxiety of becoming infected, social distance rules and isolation measures during COVID-19, represent a threat for personal mental health resources. While individuals with high levels of psychological resilience can adapt to such circumstances, those with low levels of psychological resilience may exhaust their resources under this kind of strain [10]. Studies conducted in this context have revealed that the fear of being infected by COVID-19 decreases as the level of individuals’ psychological resilience increases [7, 10, 11]. Fatalism, on the other hand, refers to a person’s belief that they do not have the power to intervene with what will come to pass in both the short and long term. Fatalism has a major impact on human behavior in the professional world and within society at large [12]. When faced with a significant negative event, Individuals with high levels of fatalistic belief tend to search for the underlying reason of the event outside of their control. From this perspective, fatalism heavily influences the severity of psychological distress and reduces the individual’s ability to participate in those behaviors that can have a positive impact on one’s mental well-being. Individuals with high levels of fatalism tend to have weaker probabilities of dealing with stress and are at higher risks of contracting the disease due to their lack of adopting protective measures. Research studies reveal that COVID-19 is not only a risk for physical health, but also a heavy burden to bear for individuals’ mental health [13]. However, very little is currently known concerning the ways in which fear of contracting COVID-19 might have a negative impact on the psychological health and mental well-being of waiters. From this point of view, it is critical to determine the possible consequences of the fear of contracting COVID-19 on the mental health of individuals and to determine the role by waiters. Furthermore, the results of the research reveal that although people express a certain level of fear and anxiety about COVID-19, their responses to the pandemic differ among individuals [8, 14]. Individual differences play important roles in this situation. With this in mind, research questions were formed as follows: (1) Does the fear of contracting COVID-19 impact the mental well-being of waiters? (2) Do the effects of the fear of infection of COVID-19 on mental well-being change in response to fatalism and the psychological resilience levels of individuals? This study seeks to contribute to the ways in which we understand the role that individual characteristics play in handling the stress of a pandemic. Moreover, this study aims to add to our theoretical understanding of the ways in which a fear of COVID-19 can impact mental well-being by waiters. By focusing on the significance of individual characteristics, we can help supervisors to find ways to protect the psychological well-being of their employees in similar crises.

1.1Literature review and hypothesis development

1.1.1The effect of COVID-19 fear on mental well-being

Service quality is among the critical success factors of accommodation businesses and is closely related to the job performance of its employees. In other words, the job performance of its employees determines the quality of service quality. Naturally, employees play a critical role in the success and competitive advantage of tourism establishments. Job performance and positive contribution of employees is closely linked with the mental well-being of employees.

Mental well-being is defined by the World Health Organization [15] as being aware of one’s own abilities, overcoming the stress in life, being productive and beneficial in business life, and contributing to society in line with their abilities. As stated by the World Health Organization, the high degree of mental well-being of the employees has positive results for the business in many ways. Individuals with higher levels of mental well-being have stronger immune systems, establish positive interpersonal relationships and work productively. Beyond this, psychological well-being encompasses individuals’ pursuit of meaning and purpose in their lives, accepting themselves as they are. By and large, studies assert that individuals with high levels of mental well-being maintain both their mental and physical health at high levels, improving success, productivity and service quality. In the context of these explanations, the high degree of mental well-being of the employees of tourism enterprises will directly contribute to the success of the business. Therefore, investigating the factors affecting the mental well-being of employees is important both in terms of business efficiency and occupational health. The hospitality industry is listed among the most vulnerable sectors in the face of crises such as outbreaks or natural disasters. Such crises lower the level of well-being of employees, negatively affecting employees’ performance and mental health [16]. Despite the fact that mortality rates in COVID-19 have not been as drastic as that of the Ebola virus, the present outbreak has damaged the tourism and hotel sector in a more destructive way than any other disasters or outbreaks on account of its global scale. COVID-19 is a very contagious disease that is contracted with droplets when individuals are in close contact [2]. At the same time, the COVID-19 virus can be contracted via contact with an infected surface. Surfaces with the infection such as tables or chairs specifically increase the risk of exposure to the virus for employees. This phenomenon renders the restaurant industry one of the most heavily impacted sectors by the COVID-19 pandemic [16]. That is because waiters are often in close contact with infected persons or with infected surfaces. The increase in perceived risk causes servers to experience psychosocial disorders such as agitation, anxiety disorders, depression disorders, insomnia or anger. These disorders often result in the disruption of the mental well-being of waiters [11, 17]. Moving on from these theoretical and empirical conclusions, we predict that the fear of infection of COVID-19 has a negative impact on mental well-being. The first hypothesis of this study is that:

Hypothesis H1: The fear of contamination by COVID-19 has a negative effect on mental well-being.

1.1.2Psychological resilience and fatalism as a moderator between the fear of COVID-19 and mental well-being

Human life never continues positively in a linear way. Everyone encounters traumatic events in life such as difficulties, obstacles, losses, accidents and illnesses. While some people cannot get rid of the effects of negative events for a long time, others overcome these difficulties easily and quickly and learn to adapt to the events that affect their lives. This adaptation process is closely related to psychological resilience. Psychological resilience is defined as a person’s recovery after a traumatic experience. It can take the form of worry, fear or anxiety, and the ability to return to life before the experience. In other words, psychological resilience is defined as the ability to protect, maintain, manage and adapt to psychological and physiological health in the face of negative, life-threatening and destructive situations [19]. Masten et al. [19]. link psychological resilience with three basic notions: acting competently when facing a threat, recovering from traumas, and acquiring positive results despite high-risk situations. Accordingly, risk and fear can be expressed as prerequisites for the formation of psychological resilience. One of the most important precursors of events to which there is a response of fear and anxiety is contagious disease [1]. As a matter of fact, facing the threat of contracting an infectious disease and not knowing how to protect oneself may cause individuals to experience intense stress and anxiety. This is especially true in the case of restaurants, which have continued to be open during the pandemic. Frequenting restaurants during the pandemic has caused myriad uncertainties in the lives of individuals such ambiguous situations, when perceived to be threatening, may cause individuals to experience anxiety, the results of which are negative reactions. In fact, many studies posited that many people have responded to the COVID-19 pandemic with increased anxiety, agitation, stress, depression and trauma [20]. It is likely that the COVID-19 pandemic has had a negative influence on the psychological states of waiters. Studies have also shown that psychological resilience negatively influences exhaustion, and the fear of COVID-19 decreases as the levels of psychological resilience increase [10, 11]. In line with these statements, the second hypothesis of the study is posited as follows:

Hypothesis H2: Psychological resilience has a moderating effect between the fear of COVID-19 and mental well-being.

Another factor having an impact on the mental well-being of individuals is the perception of fatalism. Fatalism is the belief that an individual’s health is predetermined by fate. A person has no power whatsoever to alter their predetermined fate. Individuals with high levels of perceived fatalism believe that accidents are inevitable. By and large, this belief makes individuals less willing to adopt protective behavior [21]. Studies have shown that individuals with perceived fatalism do not take into consideration safety measures and are more prone to take risks that have an impact on their health [22]. Waiters with high levels of fatalism can be assumed to be less willing to adopt measures to protect themselves from the outbreak. The output of such behavior, on the other hand, may lead them to be exposed to the virus. In this case, the type and level of perceived fatalism can be deemed important between the psychological processes, occurring within the scope of being infected, and mental well-being. High levels of perceived fatalism have significant links to depression and hopelessness. Another factor that is influential in the mentality of fatalism, on the other hand, is locus of control. Locus of control has to do with the individuals’ experienced reinforcers. In other words: that to which their recurring behaviors are attributed [23]. If the individual established a link between their behavior and acquired reinforcers, then they might have internal locus of control. Individuals who think reinforcers that are acquired as a result of their behaviors are controlled by an external power have an external locus of control [23]. Rotter [23] accepts that individuals with an internal locus of control can significantly control their destinies. Those with an external locus of control, on the other hand, believe that their destinies are predetermined by pure luck or some kind of external power. Therefore, the concept of an external locus of control is a useful theoretical tool by which we can understand the perception of fatalism and the fear of contracting COVID-19. The investigation of fatalism within the effect of the fear of infection by COVID-19 on mental well-being is thought to be important. On the basis of this, we propose the third hypothesis of the research study below:

Hypothesis H3. Fatalism has a moderating effect between the fear of COVID-19 and mental well-being.

2Research methodology

2.1Sample and procedure

This research study was conducted within five-star hotels in the city of Antalya, one of the most popular tourist destinations in Turkey. Having been conducted with quantitative research methods, this study collected data from online platforms via questionnaires. Following the social distancing mandates within Turkey, research data was collected with convenience and “snowball sampling” methods to avoid close contact with third parties. Researchers also conducted preliminary interviews with human resources and F&B managers of the hotels in the area, and provided information about the nature of the research. Hotel managers deemed it suitable for data to be collected online, in order to reduce the risk of infection, since the outbreak was ongoing during the time of the research. The questionnaire, prepared on Google Forms, was sent via e-mail and the communication application WhatsApp to F&B and human resources managers. The data collection process started in February 2021 and ended in the last week of June 2021. In a period of two months, 372 questionnaire forms were returned. 17 questionnaire forms were excluded from the data set because they were ineligible. Data was collected from full-time service staff at various five-star hotels. No incentives were offered to respondents. In order to avoid method bias, the recommendations of Podsakoff et al. [24] were followed. Scale items were rearranged randomly without an order and attention checks questions were added to ensure data quality. The research model created in line with the purpose and hypotheses of the study is presented in Fig. 1.

Fig. 1

Research model.

Research model.

2.2Measurements

This study is designed to investigate the moderating role of fatalism and psychological resilience on the relationship between the fear of infection by COVID-19 and mental well-being of waiters. The leves of fear of contraction of COVID-19 of service staff were measured with the scale developed by Aharsu et al. [3]. This scale consists of seven propositions. The validity and reliability of the scale was carried out in Turkey by Satici et al. [25]. The scale has a single factor structure and the questions are asked with 5-point Likert statements (1 = I strongly disagree; 5 = I strongly agree). High scores from the scale indicate that the fear of infection of COVID-19 is high. To measure the mental well-being level of the participants, Warwick-Edinburgh Mental Well-Being Scale (WEMWBS) was used. This scale was developed by Tennant et al. [26]. to measure the mental well-being levels of individuals living in the United Kingdom. WEMWBS consists of 14 items and deals with individuals’ positive mental health by including psychological well-being and subjective well-being. All of the questionnaires were applied in a 5-point Likert system as in their original forms. In order to measure the psychological resilience of individuals, we used the Brief Psychological Resilience Scale (BPRS) developed by Smith et al. [27]. Doğan tested the validity and reliability of this scale in Turkey [28]. BPRS is a self-check measurement scale with six 5-point Likert items. After the items in the scale were translated and were coded in reverse [unsure of what “reverse coding” means here], high scores indicate high levels of psychological resilience. The fatalistic tendencies of the respondents, on the other hand, were measured with a 6 item fatalism scale, developed by Esperza et al. [29]. It is the homonymous scale of the more comprehensive ‘Multidimensional Fatalism Measure’ (also including scales e.g. on divine control, luck, internality), developed by these authors. The scale is single factor with 5-point Likert questions. The Fatalism scale was translated into Turkish via the back-translation translation method [30]. The questionnaire was translated into Turkish by two independent researchers and these translations were later evaluated to yield one common Turkish version. Later, the questionnaire was translated from Turkish into English by a different academic with near-native level fluency in English. A pilot study was conducted to control the understandability of the scale and all questions were observed to be understandable. A high score from the scale indicates high levels of fatalistic belief.

2.3Data analysis

This study is designed to test the additive multiple moderation research model. As a result of the preliminary data assessment, two surveys were detected and excluded from the analysis due to inconsistencies in attention checks questions. Later, Mahalanobis distance was examined and data exclusion was not deemed necessary, since the acquired Mahalanobis values did not find any outlier values. Later, kurtosis-skewnness coefficients were investigated to check whether or not normal distribution hypothesis is provided. The measurement model was then tested with confirmatory factor analysis (CFA) and findings were acquired regarding the validity of the measurement. Additive multiple moderation analysis was tested with SPSS macro PROCESS, developed by Hayes [31].

3Findings

3.1Demographic findings

Information considering the demographics of the respondents within the scope of the research study can be found in Table 1. The majority of the respondents (85%) are men, while 54% are married and 46% are single. A large portion of the respondents are between the ages 18 and 29, comprising of young employees and high school graduates. One fourth of the respondents were newly employed at the time, whereas overall, 80% have been working at the same establishment for over a decade. Despite the fact that the respondents have a younger profile, 15% reported chronic diseases.

Table 1

Participants’ profile (n = 355).

n%
Gender
  Male5214.6
  Famale30385.4
Maritial Status
  Married19354.4
  Single16245.6
Age
  18–239827.6
  24–2912336.4
  30–357621.4
  36–413610.1
  42 and over226.2
Education Level
  Primary9025.4
  Secondary18752.7
  Associate degree5114.4
  Under graduate277.6
Organizational tenure
  Less than 18824.8
  1–3 year(s)13738.6
  4–6 years6016.9
  7–9 years3911.0
  10 years and over318.7
Chronic disease
  Yes5415.2
  No30184.8

3.2Measurement model

The application of the structural model employs the two step approach, proposed by Anderson and Gerbing [32]. The measurement model was tested via confirmatory factor analysis (CFA) in the first step and findings regarding the validity of the measurements regarding the structures in the model were acquired. Then, analysis of the research model was carried out in step two. Table 1 illustrates the results of CFA, acquired via maximum likelihood method. According to the CFA results in Table 2, all standardized factor load values for scale items are over 0.70. All scale items have high t-values and are loaded to the corresponding latent variable in a statistically significant way (p < 0.05). Overall, the goodness-of-fit indices for the model (χ2 [487, n = 355] = 821,82; p < 0.05; χ2/df = 1,68; RMSEA = 0,044; SRMR = 0,033; CFI = 0,97; NFI = 0,93) indicate that the measurement model is an acceptable one. At the same time, the forecasted structures of the scales were tested with alternating models strategy to determine whether or not they support the collected data. According to the values, illustrated in Table 3, the best fit for the data (χ2 [487, n = 355] = 821,82; p < 0.05; χ2/df = 1,68; RMSEA = 0,044; SRMR = 0,033; CFI = 0,97; NFI = 0,93) is four-factor research model.

Table 2

Results of the measurement model

DimentionItemsStd. fac. load.t valuesSkewKurtosis
COVID-19 fearMy heart races or palpitates when I think about contracting COVID-190.908Fixed0.145–1.12
I cannot sleep because I’m worrying about contracting COVID-190.89927.090.115–1.18
When watching news and stories about COVID-19 on social media. I become nervous or anxious0.85523.940.226–1.09
I am afraid of losing my life because of COVID-190.83723.000.145–1.22
My hands become clammy when I think about COVID-190.87725.510.223–1.20
It makes me uncomfortable to think about COVID-190.82622.300.353–1.38
I am most afraid of COVID-190.90027.210.092–1.14
FatalismPeople die when it is their time to die and there is not much that can be done about it0.898Fixed0.056–0.927
Life is very unpredictable. and there is nothing one can do to change the future0.90927.14–0.037–1.15
There is no sense in planning a lot; if something good is going to happen, it will0.86924.340.114–0.889
If bad things happen. it is because they were meant to happen0.91727.71–0.029–0.865
If something bad is going to happen to me. it will happen no matter what I do0.87524.910.009–0.975
I have learned that what is going to happen will happen0.88925.430.119–0.912
Psychlogical resillianceI tend to take a long time to get over set-backs in my life (–)0.919Fixed0.060–0.908
I usually come through difficult times with little trouble0.88026.37–0.010–0.878
It is hard for me to snap back when something bad happens (–)0.88726.83–0.105–0.823
It does not take me long to recover from a stressful event0.83523.24–0.084–0.708
I have a hard time making it through stressful events (–)0.84723.75–0.137–0.807
I tend to bounce back quickly after hard times0.83522.94–0.189–0.717
Mental well-beingI’ve been feeling optimistic about the future0.779Fixed–0.186–0.645
I’ve been feeling useful0.80116.85–0.140–0.658
I’ve been feeling relaxed0.81917.41–0.184–0.703
I’ve been feeling interested in other people0.79316.68–0.091–0.654
I’ve had energy to spare0.81617.37–0.331–0.498
I’ve been dealing with problems well0.86218.65–0.179–0.534
I’ve been thinking clearly0.83417.83–0.343–0.661
I’ve been feeling good about myself0.86418.67–0.320–0.537
I’ve been feeling close to other people0.82417.540.198–1.23
I’ve been feeling confident0.87719.050.115–1.25
I’ve been able to make up my own mind about things0.87118.890.281–1.08
I’ve been feeling loved0.90920.020.253–1.06
I’ve been interested in new things0.91320.160.276–1.03
I’ve been feeling cheerful0.93120.730.351–0.986
Table 3

Goodness of fit values with models (n = 355)

ModelsX2dfX2/dfCFINFISRMRRMSEAModel comparison
ΔX2Δdfp (ΔX2)
Four factors modela821.824871.680.970.930.0330.044
Three factors modelb3064.444906.250.790.770.2070.1222 vs. 12242.6230.000
Two factors modelc5184.2449210.530.630.610.2410.1643 vs. 14362.4250.000
One factor modeld6740.0849413.640.510.490.2100.1894 vs. 15918.2670.000

a = Fatalism; Psychlogical Resilliance; COVID-19 Fear; Mental Well-being, b = (Fatalism + Psychlogical Resilliance); (COVID-19 Fear); (Mental Well-being), c = (Fatalism; Psychlogical Resilliance) + (COVİD-19 Fear; Well-being), d = Fatalism + Psychlogical Resilliance + COVİD-19 Fear + Well-being.

Convergent validity and discriminant validity were also analyzed to test the structural validity and reliability of the scales, in addition to the goodness-of-fit indices. As can be observed in Table 4, AVE values are greater than 0.50 and CR values are greater than 0.70, while AVE values are smaller than CR values, which shows that factors have convergent validity. AVE values of factors being greater than MSV and ASV values and AVE square root values of factors being greater than the correlation between factors indicate the existence of discriminant validity. Results of the correlations between the variables within the scope of the research study can be seen in Table 4. A negative and significant relation was found between mental well-being and COVID-19 fear (r2 = –0.44, p < .001) and fatalism (r2 = –0.34, p < .001), while a positive relation was found with psychological resilience (r2 = 0.55, p < .001). A positive and low relation between COVID-19 fear and psychological resilience (r2 = –0.34, p < .001), while there is no significant relation with fatalism (r2 = –0.06, p > .005).

Table 4

Results of the convergent validity and discriminant validity

(1)(2)(3)(4) αAVECRMSVASV
(1) COVFER0.87a0.950.760.950.190.07
(2) WLBING–0.44**0.85a0.970.720.970.300.20
(3) FTLSM–0.06–0,34**0.89a0.960.790.950.120.04
(4) PYSRES0.12*0.55**–0,010.87a0.940.750.940.300.11

*p < 0.05, ** p < 0.01, COVFER = COVID-19 Fear, WLBING = Mental Well Being, FTLSM = Fatalism, PYSRES = Psychological Resilliance, α=Cronbach, a = The square root of the AVE = Average Variance Extracted, MSV = Maximum Shared Variance, ASV = Average Shared Squared Variance.

Certain measures were taken before the research portion of the study in order to prevent the issue of common method variance (CMV) [24]. Spaces for names were not included on the questionnaire form to prevent social likeability, questionnaire forms were delivered with sealed envelopes and were taken back from the respondents with a second sealed envelope with the questionnaire form inside. Respondents were informed about the scientific purposes of the study and explicated that there were no right or wrong answers for the questions, the responses were to be kept confidential and under no circumstances to be shared with any persons or institutions. Furthermore, scale items were randomized and distributed with mixed orders to prevent any order effects. In order to check whether or not CMV existed, Harman’s one single factor was applied to the collected data along with the procedures [33]. According to the main assumption of Harman’s one single factor test, the appearance of a single factor or a factor’s total variance explained rate appearing to be 50% or more, the existence of a CMV issue is assumed. As per the results of the factor analysis, four factors, the eigenvalue of which are greater than 1, were found, while the total of factor load square roots calculated from the first factor was found to be 42%. Results show that CMV is not a significant issue.

3.3Hypothesis testing

A moderating variable is mainly expressed as the variable, affecting the strength or direction of the relation between a dependent and an independent variable. A regression analysis, taking bootstrap method as its basis, was conducted in this study to test the moderating roles of fatalism beliefs and psychological resilience of waiters, who work in hospitality establishments, on the effect of COVID-19 fear on their mental well-being. An additive multiple moderation model 2 of Hayes’ PROCESS macro [31]

Table 5

Collinearity assessment

CoefficientaToleranceVIF
COVFER0.9821.019
FTLSM0.9961.004
PYSRES0.9861.014

a = Dependent variable: Mental Well-being, VIF = the variance inflation factor, COVFER = COVID-19 Fear, FTLSM = Fatalism, PYSRES = Psychological Resilliance.

was used to investigate whether or not the relationship between COVID-19 fear and mental well-being was moderated by fatalism and psychological resilience. An analysis using 5000 bootstrap samples with 95% confidence levels of the confidence interval (CIs) was performed. According to the results of the regression analysis in Table 6, all variables that are included in the regression analysis are observed to generate significant effects on psychological well-being (R2 = 0.80, p < 0.01). COVID-19 fear (β= –0.47, t(349) = –21,86, % 95 CI [–0.50; –0.42], p < 0.001) and fatalism beliefs (β= –0.30, t(349) = –16,05, % 95 CI [–0.33; –0.26], p < 0.001) have a negative effect on the mental well-being of waiters, while psychological resilience (β  = 0.51, t(349)  = 25,91, % 95 CI [0.46; 0.54], p < 0.01) has a positive effect. At the same time, the interaction effects of fatalism (X×W) (β= 0.21, t(349)  = 12,57, % 95 CI [0.17; 0.24], p < 0.01) and psychological resilience (X×Z) (β  = 0.06, t(349)  = 3,40, % 95 CI [0.02; 0.10], p < 0.001) were found to be significant. Both are statistically different from zero, meaning both fatalism beliefs and psychological resilience moderate the effect of COVID-19 fear on mental well-being. The moderation of the effect of COVID-19 fear by fatalism (W) uniquely accounts for 8.88% of the variance [F(1; 349)  = 158,17, p < .001], whereas the moderation by psychological resilience (Z) uniquely accounts for 0.64 % of the variance, F(1; 349)  = 11,56; p < 0.01). These results show that fatalistic beliefs have a greater conditional effect on the effect of COVID-19 fear on mental well-being. The effects of moderating variables were shown in a diagram via the conducted slope analysis, which can be observed in Fig. 2. As can be seen in Fig. 2, the effect of COVID-19 fear on mental well-being differs in statistically significant ways according to the waiters’ levels of fatalistic belief and psychological resilience. As the conditional effects are examined in detail, it was observed that the effect of COVID-19 fear on mental well-being (β= –0.75, t(349) = –23,76, % 95 CI [–0.81; –0.69], p < 0.01) reaches maximum levels in waiters, who have low levels of fatalistic beliefs and psychological resilience. For waiters with higher levels of fatalistic beliefs and psychological resilience, COVID-19 fear does not represent a statistically significant effect on mental well-being (β= –0.04, t(349) = –0,92, % 95 CI [-0.13; 0.04], p = 0.354). In respondents with low levels of fatalistic belief and high levels of psychological resilience, on the other hand, the effect of COVID-19 fear on mental well-being is greater (β= –0.59, t(349) = –14,50, % 95 CI [–0.67; –0.51], p < 0.01) than that in those with high levels of fatalistic beliefs and low levels of psychological resilience (β= –0.20, t(349) = –5,23, % 95 CI [–0.27; –0.12], p < 0.01).

Table 6

Results of the multiple additive moderation model

Model 1 βSEtpLLCIULCI
Constant3.240.03884.710.0003.163.31
COVID-19 fear (X)–0.410.036–11.320.000–0.48–0.33
Fatalism (W)–0.310.032–9.460.000–0.36–0.24
COVID-19 fear× fatalism (X×W)0.210.0287.430.0000.150.26
Dependent variable: Mental well-beingR2 = 0.43, F(3;351) = 86,728, p < 0.01
Model 2 βSETpLLCIULCI
Constant3.210.03297.850.0003.143.27
COVID-19 fear–0.450.03114.470.000–0.51–0.39
Psychlogical resilliance0.510.02817.790.0000.450.56
COVID-19 fear× pychlogical Resilliance0.070.0272.660.0000.010.12
Dependent variable: Mental well-beingR2 = 0.58, F(3;351) = 162,548, p < 0.01
Model 3 βSEtpLLCIULCI
Constant3.230.022143,750.0003,183.27
COVID-19 fear (X)–0.470.021–21.860.000–0,50–0.42
Fatalism (W)–0.300.018–16.050.000–0,33–0.26
COVID-19 fear×fatalism (X×W)0.210.01612.570.0000,170.24
Psychlogical resilliance (Z)0.510.01925.910.0000.460.54
COVID-19 fear×psychlogical Resilliance (X×Z)0.060.0183.400.0000.020.10
Dependent variable: Mental well-beingR2 = 0.80, F(5;349) = 289,563, p < 0.01
Fig. 2

The effects of moderating variables.

The effects of moderating variables.

4Discussion

This research study selected as its sample waiters with high risks of being infected due to working in areas with higher chances of direct contact. Consequent to the research study, it was found that COVID-19 fear has a negative and significant effect on mental well-being. This finding indicates that the increasing fear of COVID-19 among individuals results in a decrease in mental well-being, which eventually leads to psychosocial disorders in waiters. Moreover, this finding is supported with previous studies as well [11, 17]. On the other hand, information concerning the negative effect of COVID-19 fear on mental well-being with respect to individual precursors and consequences is scarce [34]. From this perspective, this study uses two moderators; psychological resilience and perceived fatalism. The reason as to why fatalism is chosen as a moderator is due to the decrease in anxiety and fear with the idea that even in highly threatening situations, struggling against them is idle. Evaluated as a personality trait, on the other hand, psychological resilience minimizes COVID-19 fear individuals experience, as they struggle to protect themselves from infectious diseases. It is assumed that in both cases, the type and level of decline in mental well-being are to change. In this sense, findings acquired within the scope of this study can be expressed to carry noteworthy qualities.

The study concludes that the effect of COVID-19 fear on mental well-being significantly differs according to waiters’ levels of fatalistic belief and psychological resilience. This result reveals that the psychological effects of infectious diseases on people also depend on the individual’s characteristics. It was found in the study that the effect of COVID-19 fear on mental well-being for waiters with high levels of psychological resilience and low levels of fatalistic belief is higher than those with high levels of fatalistic belief and low levels of psychological resilience. The finding that the negative effect of COVID-19 fear on mental well-being is lower in waiters with high levels of fatalistic belief can be explained with self-control. Fatalistic individuals believe that they have no control over the things that happen to them and argue that personal measures or precautions cannot change the potential outcome of events. Fatalistic people, when faced with a negative event, tend to search for the reasons of said event outside of their controls. Naturally, highly fatalistic individuals predominantly believe that individuals also have no control over health and diseases. Research studies, conducted in the field of health, report that those with highly fatalistic belief, do not follow health promoting behaviors for they do not believe that they will help prevent diseases. Therefore, the effect of COVID-19 fear on mental well-being may have been lower due to the lack of willingness of highly fatalistic waiters in terms of following the protective measures to protect them from the pandemic and their belief that taking measures will not change the outcome of the events. The finding that negative attitudes of highly fatalistic individuals towards the acceptance of safe working practices against the pandemic represent a barrier before healthy and safe work environments [12]. carries importance in terms of ensuring a safe working space under such conditions. That is because highly fatalistic employees may infect others, since their behavior to abide by the measures against the outbreak will be at a minimum. Employees with lower levels of fatalistic belief, on the other hand, tend to believe that they do, in fact, have control over their own lives and they can protect themselves from outbreaks via the measures they adopt. That being the case, mental well-being of employees with low levels of fatalistic belief are affected even more negatively. Another finding, acquired within the scope of this research study, is the moderating role of psychological resilience on shaping the effect of COVID-19 fear on mental well-being. While the strongest effect of COVID-19 fear on mental well-being was observed in waiters with low levels of both fatalistic belief and psychological resilience, COVID-19 fear did not generate any statistically significant effects on mental well-being in waiters with high levels of fatalistic belief and psychological resilience.

4.1Contribution

The findings of this study provide valuable theoretical and practical implications The results with respect to psychological resilience contribute to the COR theory [9]. Psychological resilience is an important personal resource in diminishing the effects of stressful and troubling events on individuals. According to COR theory, psychological resilience is one of the personal resources and individuals in possession of more resources are more resilient against the loss of a resource, whereas those with less resources are less resilient [9]. From this perspective, findings relating to fatalism contribute to the theory of locus of control. Another contribution of the study is its help in understand individual beliefs and characteristics with respect to the psychological impact of infectious diseases. Studies have shown that participation in trainings regarding COVID-19 significantly reduces COVID-19 fear [35]. At this point, it can be assumed that organizing regular trainings for employees may improve compliance to both the pandemic rules and the job itself.

Perceived as a troubling sensation that is triggered with perceived threats in the face of uncertainty, fear is a subject that is widely discussed in many fields. Fear that emerges from infectious diseases has been covered in many disciplines, yet very little of these studies have focused on the aspect of the change in fear with respect to mental health. This situation points to the theoretical gap in the individual processes between fear of COVID-19 and mental well-being. Furthermore, studies have shown that while many people report fears concerning COVID-19 on various levels, their reactions towards the pandemic alter [7, 8]. Some individuals develop psychopathologies with COVID-19 fear, whereas some manage to preserve their psychological balance and adapt to the situation at hand [8]. Thus, this study was designed with the aim of identifying the potential consequences of COVID-19 fear on mental well-being and the moderating role of individual variables. The acquired results will contribute to the reduction of negative effects the fear of pandemic creates in individuals.

5Conclusion

In this study, the moderator role of fatalism and psychological resilience in the effect of fear of COVID-19 on mental well-being was tested. The research was conducted on a sample of waiters who were at risk for COVID-19 infection because of their work in a high-contact environment. The data were obtained from waiters working in five-star hotels through online questionnaires. As a result of the research, it was found that the fear of COVID-19 has a negative effect on mental well-being. An important finding in the study was that the effect of COVID-19 fear on mental well-being was significantly differentiated according to the fatalistic belief and psychological resilience levels of the participants. The negative impact of fear of COVID-19 on mental well-being is much stronger in participants with low fatalistic beliefs. Therewithal, as the psychological resilience of individuals decreased, the negative effect of fear of COVID-19 on mental well-being increased. In the study, it was concluded that the strongest effect of fear of COVID-19 on mental well-being occurred on participants with low fatalistic beliefs and low psychological resilience. The results of the research contribute to the understanding of the role of individual beliefs and characteristics in the protection of mental health in times of crisis such as epidemics.

5.1Limitations and future directions for research

This study has certain limitations. First of all, it employs a cross-sectional research design. Thus, longitudinal studies are recommended to fully assess the relations between variables. Another limitation for the study is that the data was conducted during the pandemic; therefore, only the waiters, who work full time, were included. Since the research was carried out in the pandemic process and conditions, convenience and snowball sampling methods were preferred as a sampling method. Therefore, it must be cautious in generalizing these results. Two out of every three restaurant employee has lost their jobs because of COVID-19 pandemic [36]. According to the Sector Job Quality Index, it is predicted that approximately 10.8 million employees will lose their jobs [37]. The National Restaurant Association of America, on the other hand, reported that the cost for the restaurant industry to survive is almost 242 billion dollars. Considering the wearing effects of the fear of unemployment on individuals [38]. Future studies, aimed at the evaluation of mental well-being of waiters, whose workplaces are closed due to the pandemic, who cannot find employment despite seeking, will potentially contribute to the better understanding of the consequences of COVID-19. This research study focuses on the waiters, who only work in the frontlines of hospitality establishments. Approaching the effects of the pandemic in a way that includes employees in other departments may be of use for managers to develop employee policies. Culture is one of the most important factors, influencing individuals’ approach towards fatalism [8]. Internal locus of control is more common in individualistic western societies, whereas external locus of control is common in highly collective, eastern societies [39]. From this perspective, the effects of COVID-19 pandemic and sensitivity in following recommended measures are recommended to be studied in cultural contexts.

Author contributions

All authors have contributed significantly to the work, have read the manuscript, attest to the validity and legitimacy of the data and its interpretation, and agreed to its submission to WORK.

Conflict of interest

The authors declare no conflicts of interest.

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