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Prognostic impact of invariant natural killer T cells in solid and hematological tumors; systematic review and meta-analysis

Abstract

BACKGROUND:

Invariant natural killer T (iNKT) cells are an immune subset that purportedly link the adaptive and the innate arms of the immune system. Importantly, iNKT cells contribute to anti-cancer immunity in different types of hematological and solid malignancies by secreting pro-inflammatory cytokines. Therefore, using such cells in treating different type of tumors would be an ideal candidate for cancer immunotherapy.

OBJECTIVE:

To assess the prognostic effect of iNKT cells across different types of solid and hematological tumors.

METHODS:

In systematic review and meta-analysis, articles assessed the prognostic effect of iNKT cells were systemically searched using the scientific databases including Google Scholar, ScienceDirect, PubMed, Cochrane Central, and Scopus.

RESULTS:

Strikingly, the analysis showed the positive impact of intratumoral or circulating iNKT cells on the survival rate in patients with all studied tumors with overall effect of a pooled hazard ratio of 0.89 (95% CI 0.81 to 0.98; p= 0.01). A highly statistical heterogeneity was noted between studied tumor with I2 = 87%; p= 0.00001.

CONCLUSIONS:

Taken together, this study would present a new insight into the impact of iNKT cells correlate with caner patients’ survival rate and how such cells would be used as a therapeutic target in these patients.

1.Introduction

Invariant natural killer T (iNKT) cell is a unique population of lymphocytes with shared properties of natural killer cells (NK) and T lymphocytes [1]. iNKT cells are distinct from conventional αβ T cells as they express a semi-invariant T cell recptor that can recognize certain glycolipids when presented by CD1d, non-polymorphic MHC I-like molecule [1, 2, 3]. Indeed, iNKT cells can recognize different glycolipid structures which have distinct immune responses and cytokines production [4]. The most common glycolipid that stimulate iNKT cells is a-galactosyl ceramide (a-GalCer) [5, 6].

iNKT cells known to secrete plethora of cytokines that play a crucial role in inflammatory diseases and maintain immune homeostasis [3]. iNKT cells have a well-known role in anti-tumor immunity. For example, iNKT cells are remodeling the tumor microenvironment through producing cytokines such as IFN-γ which inhibit angiogenesis [7, 8]. Furthermore, iNKT cells eliminate tumor associated macrophages (TAMs) as well as strengthen the responses of CD8 and CD4 T cells that are specific to tumor associated antigen (TAA) [9, 10, 11]. iNKT cells are also contributed in tumor cells elimination in blood-related cancers through a CD1d-dependent recognition mechanism [12, 13, 14, 15, 16]. For instance, iNKT cells can also promote the maturation of CD1d+ dendritic cells which ultimately activate CD4 and CD8 T cells that contribute to elimination of cancerous cells [17, 18]. Taken together, iNKT cells reshape the tumor microenvironment and have a crucial role in regulating tumors [19].

Importantly, a decrease of iNKT cell counts are associated with worse outcomes in squamous carcinoma and chronic lymphocytic leukemia (CLL), possibly as a result of persistent activation by CLL cells that express CD1d [20, 21]. Notably, myeloma cells decrease CD1d expression as the disease progresses, hence iNKT cell frequency is inextricably linked to cancer progression [13, 15, 22, 23, 24]. Additionally, antigen-presenting cells (APCs) loaded with α-GalCer stimulate activated iNKT cells, resulting in a substantial increase in IFN-γ production in solid tumors, thus enhance the ability of iNKT cells to identify and target tumor cells [25, 26].

Therefore, in this systematic review and meta-analysis, we aimed to assess the prognostic effect of iNKT cells across different types of solid and hematological tumors. Hence, iNKT cells were correlated with patient survival rates. We then explored the factors related to iNKT cells variation in tumors, such as gender, smoking status, number of intratumoral or peripheral iNKT cells and combination therapy with IFN-γ.

2.Materials and methods

2.1Search strategy and selection criteria

We systematically searched the scientific databases including Google Scholar, ScienceDirect, PubMed, Cochrane Central, and Scopus to select potential studies for this systematic review and meta-analysis. Different key words were used to identify the relevant articles including invariant natural killer T cells (iNKT), clinical application of iNKT, iNKT in immunotherapy as well as iNKT cells in cancer prognosis. Additionally, we were looking in the relevant database for a combination of iNKT cells with cancer key words such as tumor, malignancy, carcinoma, adenocarcinoma, squamous cell carcinoma, sarcoma, myeloma, lymphoma and leukemia. The potential 1017 articles related to iNKT cells and cancer were found in the time span from (2000–2023).

2.2Inclusion and exclusion criteria

In the systematic review and meta-analysis, all studies provided information about association of iNKT cells frequencies either in periphery or at tumor sites and their relationship to cancer prognosis were included. Studies included in this analysis must been published as an original and primary article and assess human subjects as well as published in English language. Articles evaluating the association of either tumor infiltrating iNKT cells or circulating iNKT cells with clinical features of cancer patients such as overall survival (OS), disease free survival (DFS), recurrence free survival (RFS) and relapse free survival (RFS) were included. The eligibility of each study was assessed independently by at least two investigators (AA, FA, RAA, RTA, SA, ZA). Animal studies, in vitro studies using cell lines, interventional studies, using engineered iNKT cells as cellular therapy in cancer, reports published as conference abstracts and letters, and studies reported insufficient data of survival rates were excluded.

2.3Data extraction and assessment

Table 1

Newcastle-ottawa quality assessment

Study IDSelectionComparabilityOutcomeScoring
Metelitsa et al. [42]******Fair quality
Tachibana et al. [29]*******Good quality
Molling et al. [43]*****Fair quality
Najera et al. [44]********Good quality
Xiao et al. [28]*****Fair quality
Hishiki et al. [45]*******Good quality
Dockry et al. [30]********Good quality
Melo et al. [46]******Fair quality

The data from included studies was extracted independently by two investigators (RMA, AA, FA, RAA, RTA, SA, ZA). Both of two investigators assessed each study according to the authors’ names, year of publication, sample size, type of study, type of cancer, and iNKT identification (in peripheral blood or intratumoral tissue). The Newcastle-Ottawa quality assessment scale (NOS) was used to assess each study included in this analysis individually by two investigators. The scored of total 8 studies ranged from good quality to fair quality, according to the evaluation criteria detailed in Table 1.

2.4Statistical analysis

All statistical analysis and graphical representation were analysed and generated using RevMan software version 5.4 version (Cochrane Collaboration, Oxford, United Kingdom). The hazard ratio (HR) and its 95% confidence interval (CI) were extracted from the selected studies in the meta-analysis to assess the association of iNKT cells and patients’ prognosis. A fixed model effect was used to sum up all outcomes from the selected reports. Standard of error (SE) were calculated from given HR and 95% CI. Further, heterogeneity between studies was calculated, where I2 value of 25%, 50% and 75% corresponded to low, moderate, and high degree of heterogeneity. P values less than 0.05 were considered significant.

3.Results

3.1Study characteristics

Figure 1.

Flow chart of searching and study selection (PRISMA).

Flow chart of searching and study selection (PRISMA).

Initially, a total 1017 relevant articles were systematically identified through the scientific database, however 897 articles were excluded on the first pass based on the title and abstract (Fig. 1). The remaining 120 articles were given a more detailed assessment with evaluating association of iNKT cells with cancer prognosis. Following that, 81 studies were comprehensively assessed against inclusion criteria, however, only 14 articles were eligible studies and met the inclusion criteria. Yet, 5 studies out of 14 eligible articles were excluded as these studies did not report sufficient data to estimate the hazard ratio. Moreover, one study was assessing the NK/iNKT ratio. The final 8 datasets were included in the systematic review and meta-analysis encompassed different types of malignancies, including colorectal cancer, hepatocellular carcinoma, acute myeloid leukemia, head and neck squamous cell carcinoma, neuroblastoma, upper gastrointestinal cancers, and lung cancers.

3.2The prognostic effect of either tumor infiltrating or circulating iNKT cell on overall survival and recurrence free survival

Table 2

The basic characteristics for studies included in meta-analysis

Study IDYear of publicationType of cancerSample sizeMethod for iNKT detectionOS P valueRFS P valueMedian duration of follow up (years)
Metelitsa et al. [42]2004Neuroblastoma    98RT-PCR (Intratumoral iNKT cells)0.007    –5 years
Tachibana et al. [29]2005Colorectal carcinoma  103Immunohistochemistry (Intratumoral iNKT cells)0.00060.0181914 days (5 years and 3 months)
Molling et al. [43]2007Head and neck squamous cell carcinoma    47Flow cytometry (Circulating iNKT cells)0.0220.01931 months (2 years and 7 months)
Najera et al. [44]2012Acute myeloid leukemia    28Flow cytometry (Circulating iNKT cells)0.0331 year
Xiao et al. [28]2013Hepatocellular carcinoma  224RT-PCR (Intratumoral iNKT cells)0.0020.01828 months (2 years and 4 months)
Hishiki et al. [45]2017Neuroblastoma  107RT-PCR (Intratumoral iNKT cells)0.0089224 months (18 years and 7 months)
Dockry et al. [30]2018Lung cancer1926RT-PCR (Intratumoral CD1d expression)0.0013    –57 months (7 years and 7 months)
Melo et al. [46]2020Upper gastrointestinal cancers  139Flow Cytometry (Circulating iNKT cells)0.021    –

All studies included in the meta-analysis detailed in Table 2 and classified based on of the date of publication from the oldest to newest, type of cancer and p value of the overall survival (OS) and recurrence free survival (RFS). Importantly, the association of iNKT cells with cancer prognosis in intratumoral tissues or in the circulation were detected by several different techniques including flow cytometry, immunohistochemistry, and real time polymerase chain reaction (RT-PCR) (Table 2). The median duration of the follow up varied from different types of cancer, 18 years in neuroblastoma to 1 year in acute myeloid leukaemia. Interestingly, high infiltration of iNKT cells in the tumor sites or in the circulation were associated with significantly improved overall survival in all the studied cancer types (Table 2).

Figure 2.

Forest plot of overall survival sorted by year of study.

Forest plot of overall survival sorted by year of study.

All the studies reported a significant impact of tumor infiltrating or circulating iNKT cells in patients with distinct types of malignancies on overall survival (Table 2). Of note, high density of infiltrating iNKT cells was found to be associated with an improved overall survival in patients with non-small lung cancer, oesophageal cancer and colorectal cancer compared to hepatocellular carcinoma, acute myeloid leukaemia and head and neck squamous cell carcinoma (Fig. 2).

Figure 3.

Funnel plot to detect the presence of publication bias in the meta-analysis of overall survival.

Funnel plot to detect the presence of publication bias in the meta-analysis of overall survival.

Indeed, the forest plot evaluating the hazard ratio in all studied tumors showed that the positive effect of iNKT cells on the survival rate with a pooled hazard ratio of 0.89 (95% CI 0.81 to 0.98; p= 0.01; Fig. 2). A highly statistical heterogeneity was observed between the studied tumors with I2= 87% and p= 0.00001 (Fig. 2). Moreover, the funnel plot demonstrated in Fig. 3 showed the overall effect line in a symmetrical manner indicating the absence of publication bias in this meta-analysis.

Figure 4.

Forest plot of recurrence free survival sorted by year of study.

Forest plot of recurrence free survival sorted by year of study.

Figure 5.

Funnel plot to detect the presence of publication bias in the meta-analysis of recurrence free survival.

Funnel plot to detect the presence of publication bias in the meta-analysis of recurrence free survival.

The recurrence-free survival (RFS) was reported only in three studies which had a negatively correlation with hazard ratio of 1.61 (95% CI 1.12 to 2.32) and p= 0.010 (Fig. 4). Having said that two of these studies were associated with shorter survival rate of hazard ratio 15 (95% CI 1.56 to 144.18) and 1.6 (95% CI 1.09 to 2.36) in head and neck cancer and hepatocellular carcinoma, respectively (Fig. 4). A highly statistical heterogeneity was observed between the studied tumors of RFS with I2= 87% and p= 0.0006 (Fig. 4). Furthermore, the funnel plot demonstrated in Fig. 5 showed the overall effect line in a symmetrical manner indicating the absence of publication bias in the meta-analysis, however, the total number of included studies were relatively low.

3.3Factors affect the significant impact of iNKT cells on overall survival

Table 3

Subgroup analysis of iNKT cells impact on different types of cancer

Type of cancerNumber of patientsHR (95% CI) of OSOS (p Value)HR (95% CI) of RFSRFS (p Value)
Non-small cell lung carcinoma (NSCLC) [30]
Gender
 1. Male1100  0.8 (0.68–0.94)0.0057
 2. Female7150.89 (0.7–1.11)0.29
Smoking status
 1. Smoker820  0.8 (0.65–0.99)0.037
 2. Non-smoker2051.03 (0.59 – 1.79)0.92
Hepatocellular carcinoma [28]
1. Low Intratumoral iNKT & Low IFN-γ79I vs. III 2.784 (1.603–4.835)I vs. III 3.141 (1.882–5.242)
2. High intratumoral iNKT & low IFN-γ or      low intratumoral iNKT & high IFN-γ83II vs. III 2.481 (1.410–4.366)II vs. III 0.002II vs. III 2.139 (1.263–3.620)II vs. III 0.016
3. High Intratumoral iNKT & high IFN-γ62I vs. II vs. II 0.001I vs. II vs. II 0.001
Head and neck squamous cell carcinoma (HNSCC) [43]
iNKT cells/ml depend on health status (age matched)
 1. HNSCC patients (103 iNKT cells/ml)470.0092
 2. Healthy controls (373 iNKT cells/ml)33
Levels of iNKT/106 T cells
 1. Low iNKT (< 48)22Low v Intermediate < 0.015Low v Intermediate < 0.005
 2. Intermediate iNKT (48 to 242)11Low v High < 0.019Low v High < 0.022
 3. High iNKT (> 242)12

Several factors might have a potential effect on iNKT cells frequencies within tumor microenvironment. For example, male patients with non-small cell lung carcinoma (NSCLC) had high expression of CD1d molecules which associated with significantly improved of overall survival compared to female patients with p value < 0.0057 (Table 3). Interestingly, smoker patients with NSCLC were found to have a better overall survival with high density of iNKT cells with p< 0.037 (Table 3). Collectively, gender and smoking status in NSCLC patients might have a potential impact on intratumoral iNKT cells and their effect on survival rate.

Interferon γ (IFN-γ) is a pro-inflammatory cytokine that strongly associated with anti-tumor effect [27]. iNKT cells secret plethora of cytokines including IFN-γ that have a potential effect on survival rate in patients with hepatocellular carcinoma [28]. Indeed, high intratumoral iNKT cells and high expression of IFN-γ were significantly improved overall survival and recurrence-free survival in patients suffering from hepatocellular carcinoma (Table 3). The combination of both IFN-γ and intratumoral iNKT cells within tumor microenvironment corelated with positive outcome in these patients. Moreover, patients with head and neck squamous cell carcinoma (HNSCC) had a low number of circulating iNKT cells compared to healthy donors which associated with poor clinical outcomes (Table 3). Hence, the circulating or intratumoral iNKT cells have been linked to the improved overall survival rate in patients suffering from invasive malignancies such as colorectal cancer, non-small cell lung carcinoma and hepatocellular carcinoma [28, 29, 30]. This would raise a question whether administrating such cells would be used as a new treatment that might improve the clinical outcomes in cancer patients.

4.Discussion

The systematic review and meta-analysis were set out to assess the prognostic effect of iNKT cells across different types of solid and hematological tumors and correlate it with patients’ overall survival (OS).This study suggested that iNKT cells have a positive impact on the overall survival rate in different types of cancer including colorectal cancer, oesophageal cancer and lung cancer. This finding is supported by a number of clinical trials showed the potency of iNKT cells to be used as immunotherapeutic agent by increasing the overall survival rate and enhancing anti-tumor activity [31, 32, 33, 34, 35, 36]. For example, activating iNKT cells by administrating α-GalCer pulsed antigen-presenting cells (APCs)into patients with either lung cancers or head and neck cancer showed an improved overall survival in these patients by enhancing infiltration of iNKT cells into tumor microenvironment [31, 32, 33, 34]. Furthermore, using autologous in vitro expanded iNKT cells was a treatment of choice in different types of cancer such as advanced hepatocellular carcinoma (HCC) and melanoma which show a positive outcome in these patients [35, 36].

However, combination therapy of administration of α-GalCer pulsed APCs and infusion of activated iNKT cells appeared to induce iNKT cell-specific anti-tumor activities in cancer tissues [37]. This would rise a question whether activating iNKT cells by either administrating α-GalCer pulsed APCs or adoptively transfer of autologous iNKT cells or a combination of both would improve the anti-tumor activity therefore prolong the overall survival. Taken together, the results of these studies are supportive of what we have found in this study that iNKT cells have a positive impact on patients’ survival rate on several cancer types.

In line with our observation that iNKT had different impact according to types of cancer, many studies demonstrated the influences of these cells depends on the site of cancer. For instance, there was an increase in peripheral iNKT cells number in benign ovarian cancer compared to advanced stage of ovarian cancer [38]. However, intratumoral iNKT cells showed an increase number compared to peripheral iNKT cells in the same cancer patients [38]. Therefore, the overall survival rate or recurrence-free survival may depend on the methods of iNKT cells detection and whether such cell was detected at tumor site or periphery. Having said that, the studies included in this meta-analysis were using different detection methods at different sites which might affect the consistency and accuracy of the study.

In this meta-analysis, the methods of detection varied between immunohistochemistry, real time polymerase chain reaction (RT-PCR) and flow cytometry which might impact on the overall effect. Importantly, different detection techniques would have different sensitivity and specificity. For example, RT-PCR is considered a gold stander for detection a certain type of cell or marker [39]. However, a recent study has been conducted comparing the accuracy of flow cytometry and RT-PCR in children with acute lymphoplastic leukemia [40]. Interestingly, the study showed the feasibility of both methods to be used in diagnosis as well as disease mentoring with no noticeable differences [40].

Other factor might have a noted impact on iNKT cells functionality in tumor microenvironment is their response to either endogenous or exogenous glycolipids such as α-GalCer. Patients with oral squamous cell carcinoma (OSCC) were found to have a decrease number of circulating iNKT cells which they had impaired proliferative response to α-GalCer-pulsed dendritic cells [41]. This observation would raise a question whether the tumor microenvironment would deactivate iNKT cells leading to elucidate the potent immune response against malignant cells. In all studies included in this systematic review and meta-analysis, there were not a proper in vitro evaluation of iNKT cells response to either endogenous or exogenous glycolipids [28, 29, 30, 42, 43, 44, 45, 46].

To our knowledge, this meta-analysis is the first study to demonstrate the prognostic impact of iNKT cells across different types of both hematological and solid tumors. However, there was a number of limitations associated with this study. First, the number of the studies that have been included and have met our criteria was limited which affect the overall effect and accuracy of this study. Notably, this study was using only observational study where it would be useful to compare the impact of iNKT cells on both observational and interventional studies. However, in all clinical trials were searching, there was a lack of information which limited the use of these studies. More meta-analysis should be done to evaluated different factors might affect the influence of iNKT cells in different sort of cancers.

In conclusion, either circulating or tumor infiltrating iNKT cells have been linked to improved overall survival rate in patients suffering from invasive malignancies such as NSCLC and hepatocellular carcinoma. Therefore, iNKT cells have been found to be a perfect candidate for cancer immunotherapy. However, a number of questions are needed to be answered in order to fully evaluated the use of such cells as a new treatment that might improve the clinical outcomes of cancer patients.

Author contributions

Conception: RMA.

Interpretation or analysis of data: All authors contributed to the interpretation or analysis of data Preparation of the manuscript: All authors contributed to preparation of the manuscript.

Revision for important intellectual content: RMA, NA, YA and HE.

Supervision: RMA.

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