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Association analysis of genetic variants in the ghrelin and tumor necrosis factor α genes and the risk for non-Hodgkin’s lymphoma in Kuwaitis

Abstract

BACKGROUND:

Non-Hodgkin’s lymphoma (NHL) is the most common hematological malignancy in the world. Many etiologic factors have been implicated in the risk of developing NHL, including genetic susceptibility and obesity. Single-nucleotide polymorphisms (SNPs) in Ghrelin (GHRL), an anti-inflammatory hormone, and tumor necrosis factor α (TNF-α), an inflammatory cytokine, have been independently associated with the risk for obesity and NHL.

OBJECTIVE:

To investigate the association between SNPs in GHRL and TNF-α and the risk for NHL and obesity in Kuwaitis.

METHODS:

We recruited 154 Kuwaiti NHL patients and 217 controls. Genotyping was performed for rs1629816 (GHRL promoter region), rs35684 (GHRL 3’ untranslated region), and rs1800629 (TNF-α promoter region). Logistic regression analysis was performed to assess the association of the investigated SNPs with NHL and the relationship between the selected SNPs with BMI in each group separately.

RESULTS:

We show that rs1629816 GG was associated with an increased risk for NHL in our sample (p= 0.0003, OR 1.82; CI: 1.31–2.54). None of the investigated SNPs were associated with obesity, nor was obesity found to be associated with the risk for NHL.

CONCLUSIONS:

Our study demonstrates an association between rs1629816, a SNP in the GHRL regulatory region, and NHL in Kuwaitis.

1.Introduction

Non-Hodgkin’s lymphoma (NHL) is the most common hematological malignancy in the world [14]. In Kuwait and the Gulf Council Countries (GCC), NHL is the fifth most common cancer in both males and females [14]. The NHL incidence rate in Kuwait has increased at least 1.5 times in the last 33 years [12].

Various etiologic factors contribute to the risk of NHL, the major ones being genetic susceptibility, chronic inflammation and lifestyle factors, such as obesity [2, 11, 13]. Genetic association studies have shown associations between NHL and specific polymorphisms, especially in genes that have been implicated in inflammatory processes [45].

Studies have reported conflicting results on the link between NHL and obesity, with some studies showing a positive association while others showing no association [22, 28, 47]. Kuwait has one of the highest obesity rates in the world. The prevalence of overweight and obesity in the Kuwaiti population are 80.4% and 47.5%, respectively, and are higher in females, 81.9% and 53%, compared to males, 78% and 39.2% [1]. Obesity is associated with chronic low-grade inflammation because adipocytes produce and secrete several proinflammatory cytokines, including tumor necrosis factor alpha (TNF-α) [46]. The TNF-α single-nucleotide polymorphism (SNP) rs1800629 (TNF-α-308G/A), is a polymorphism that leads to increased production of TNF-α [48]. The association of rs1800629 with obesity is inconsistent and varies based on ethnicity and sex [35]. On the other hand, this SNP has been associated with an increased risk for numerous cancers [7, 18, 29, 32, 36]. In the International Lymphoma Epidemiology Consortium study, rs1800629 was found to be significantly associated with the risk for NHL [42]. Other studies found that this association might be population-specific; the risk of NHL in carriers of the rs1800629 variant allele was found to be either significantly increased [19, 53], decreased or absent depending on the population studied [51].

TNF-α inhibits ghrelin (GHRL), an anti-inflammatory hormone and a growth hormone (GH) secretagogue that is released mainly during caloric restriction and weight loss [17], and GHRL inhibits proinflammatory cytokine production, including TNF-α [25, 33]. TNF-α is inversely related to GHRL’s expression and activity, and reduced levels of GHRL have been observed with increased circulating levels of TNF-α, such as in the chronic inflammation state of obese individuals [39, 43]. It has been reported that obese individuals have lower levels of GHRL in their plasma compared with individuals with a normal body mass index (BMI) [6, 8]. A reduction in the GHRL level is associated with increased inflammation during obesity, and increased GHRL level induced by caloric restriction is associated with decreased inflammation [8]. Several studies have investigated the association of polymorphisms in the GHRL gene with BMI and reported contradictory results, with most studies reaching the conclusion that they are not associated [10, 30, 44].

Recent studies have shown that GHRL stimulates cancer cell proliferation and metastasis and is highly expressed in several cancers, including NHL [26, 41]. However, meta-analysis studies have been inconclusive about whether SNPs in GHRL were associated with cancer, including NHL [9, 37]. One study showed that two GHRL SNPs, rs1629816 (GHRL-4427G>A) in the promoter region and rs35684 (GHRL+5179A>G) in the 3’ untranslated region, were associated with a significantly decreased risk for NHL [44]. Interestingly, neither SNP causes a change in the amino acid that it encodes, and therefore, both are considered synonymous SNPs (sSNPs) [31, 44].

Since polymorphisms of the GHRL and TNF-α genes have been associated with obesity and NHL risk in different populations and since this association has never been investigated in the Kuwaiti population, we aimed to determine the genotypic and allelic frequencies of GHRL rs1629816 and rs35684, and the TNF-α rs1800629 in a sample of healthy Kuwaiti individuals and NHL patients and to investigate the potential association of these polymorphisms with the risk of developing NHL. We also examined whether these polymorphisms were associated with obesity in our cohort and whether obesity was associated with NHL.

2.Materials and methods

2.1Study cohorts

We recruited a total of 217 controls and 154 NHL patients for this study. The controls were cancer-free individuals recruited from polyclinics and matching as well as possible the patient group for sex and age. The NHL patients were diagnosed and recruited at the Kuwait Cancer Care Center (KCCC). Upon arrival at the clinic, a blood sample was collected (5 ml) into a sterile EDTA vacutainer and stored at 4C until further processing for DNA extraction. Clinical data collected from the patients consisted of an in-clinic interview and review of the patient medical records when needed. Sex, age, weight, and height were recorded (Table 1). Out of the 154 patients, 139 patients were included in the study. The exclusion criteria were patients who did not provide informed consent or a blood sample at the time of the interview and those who were non-Kuwaitis.

Table 1

Demographics and clinical features of the study groups

Characteristics of the study sampleControls (n= 217)NHL Patients (n= 139) p
BMI28.8 ± 6.727.8 ± 7.50.19
Male, n (%)123 (56.7%)67 (48.2%)0.47
Age, y50.7± 15.653.9 ± 150.79
Age of onset, y51.5 ± 14.9
Treatment regimen for NHL patients
Chemotherapy95 (68.3%)
Radiotherapy1 (0.7%)
Chemotherapy + radiotherapy21 (15.1%)
Bone marrow transplant2 (1.4%)
No treatment11 (7.9%)
No information9 (6.5%)

Values given are the mean ± standard deviation or number of patients (N) (%). Body mass index (BMI), non-Hodgkin’s lymphoma (NHL).

2.2Ethical approval and informed consent

Ethical approval for this study was obtained in 2012 from the Joint Committee for The Protection of Human Subjects in Research of the Health Sciences Center (HSC) and the Kuwait Institute of Medical Specialization (KIMS)-Ministry of Health-Kuwait, following the guidelines set by the The Code of Ethics of the World Medical Association (Declaration of Helsinki, 1964). All patients who participated in the study provided an informed consent.

2.3Genotyping

Total genomic DNA was extracted from blood samples using the Gentra® Puregene® DNA extraction Kit according to the manufacturer’s instructions (Qiagen Hilden, Germany). Genotyping by allelic discrimination using real-time PCR was performed on all samples for all three investigated SNPs (Table 2) on the ABI PRISM 7900HT Fast Real-Time PCR System (Life Technologies Co. Carlsbad CA, USA). Initial optimization of genotyping assays for the various SNP loci was performed by employing custom-designed or published primers that are annotated in the GenBank database reference sequence NG_007462.1 [20, 40, 42, 44]. The protocol conditions used were those described and published for Taqman® genotyping assays. Samples were genotyped for each polymorphism as homozygous or heterozygous.

Table 2

Location and reference numbers of SNPs included in this study

rs numberGenePolymorphismSNP location
rs1800629TNF-α-308G>APromoter
rs35684 GHRL 5179A>G3’ UTR region
rs1629816 GHRL -4427G>APromoter

RefSNP (rs) numbers represent the SNP’s accession number in the SNP database (dbSNP). Untranslated region (UTR).

2.4Quality assurance of SNP detection

Quality assurance was performed as described previously [3]. In brief, SNP sites were sequenced to verify the accuracy of the real-time PCR allele calling using custom primers that were designed in the lab using NCBI Primer-Blast and Primer 3 software. For each locus, samples were randomly selected (10 samples per SNP), and the target regions (flanking sequences of the variant sites not exceeding 500 bp) were sequenced for confirmation by Sanger sequencing on the ABI Gene Analyzer 3130xl using the Big Dye Terminator Kit v3.1 with conditions according to the manufacturer’s instructions (Applied Biosystems, Life Technologies, CA, USA). Confirmed samples were then used as positive controls in RT-PCR reactions. Sequences for rs35684 and rs1800629 were submitted to GenBank under accession numbers KP339513 and KP339511, respectively.

2.5Statistical analysis

Hardy-Weinberg equilibrium for each SNP was tested using a web-based Pearson’s chi-square test calculator. Statistical analysis was performed to assess the relationship of each SNP with susceptibility to developing NHL using logistic regression. The results are reported as odds ratios (ORs) and 95% confidence intervals (CIs). In addition, linear regression analysis was performed to assess the relationship between the selected SNPs and BMI in each group separately. Age, sex and BMI were controlled for in the regression analysis. Data were analyzed using SPSS (Version 25; SPSS, Inc., an IBM Company, Chicago, Illinois). Demographic data and characteristics are represented as the mean ± standard deviation (SD) and percentage, as appropriate. Statistical significance was accepted at p< 0.05.

3.Results

3.1Demographics and clinical characteristics

Two hundred seventeen healthy controls (123 males, 94 females) and 139 NHL patients (67 males, 72 females) were recruited for this study. The mean age of the controls and the patients was 50.7 ± 15.6 and 53.9 ± 15 years, respectively. There were no significant differences between healthy controls and NHL patients in terms of BMI, sex or age (Table 1).

Table 3

Genotypic and allelic frequency of the TNF-α SNP rs1800629 and the GHRL SNPs rs35684 and rs1629816 in controls (n= 217) vs. patients (n= 139)

SNPControl N (%)NHL patients N (%) p
TNF-α
rs1800629
 GG162 (74.5%)98 (70.5%)0.671
 GA44 (20%)32 (23%)
 AA11 (5.5%)9 (6.5%)
Ghrelin
rs35684
 AA106 (49%)76 (54.5%)0.562
 AC95 (44%)54 (39%)
 CC16 (7%)9 (6.5%)
rs1629816
 GG62 (28.5%)56 (40.3%) 0.002
 GA97 (45%)66 (47.5%)
 AA58 (26.5%)17 (12.2%)

Values given are the number of individuals (N) (%).

Table 4

HWE for the TNF-α SNP rs1800629 and the GHRL SNPs rs35684 and rs1629816 in controls (n= 217) vs. patients (n= 139)

SNPHWENon-HWE
RS 1629816
Control (p= 0.11)
 Patient(p= 0.72)
RS 35684
 Control(p= 0.40)
 Patient(p= 0.89)
RS 1800629
 Control(p= 0.002)
 Patient(p= 0.01)

Hardy-Weinberg Equilibrium (HWE): if p< 0.05, then the SNP is not in HWE.

3.2Genotype distributions and allele frequencies

The investigated SNPs and their locations in their respective genes are presented in Table 2. The allelic and genotypic frequencies of the three SNPs are summarized in Table 3. The allelic frequencies for the various genotypes (Table 4) were found to be in Hardy-Weinberg equilibrium (HWE), except for rs1800629 in patients, controls and the whole sample (p< 0.05). Of the alleles, the most frequent wild-type allele expressed in both the controls and patients was that of rs1800610, while the most frequent variant allele expressed was that of rs1629816 (Table 3). There was a significant difference in the genotype frequency between the control and the patients for rs1629816 (p= 0.002), but not for rs1800629 (p= 0.671) or rs35684 (p= 0.562). All investigated genotypic variants were observed in both the control and patient samples (Table 3). Only one of the investigated SNPs, rs1629816, showed a significant difference in its allelic and genotypic distribution between the patients and the control samples.

3.3Association of rs1629816 with NHL

Analysis by logistic regression showed a strong association of rs1629816 GG genotype with the risk of developing NHL in our sample (p= 0.0003, OR, 1.82; 95% CI, 1.31–2.54, Table 5). All associations were controlled for age, sex and body mass index (BMI). We also analyzed the association of nongenetic parameters with NHL. We found that in our study cohort, age, obesity or sex showed no association with the risk for NHL (Table 5, p> 0.05). Finally, we analyzed the association of the investigated SNPs with BMI but found no association in the controls or the patients (data not shown, p> 0.05).

Table 5

Multivariate analysis to predict variables associated with developing NHL in the patient (n= 139) cohort

VariableOR (95% CI) p
Gender (female)1.15 (0.73–1.83)0.53
Age (+1 year)1.01 (0.99–1.02)0.166
BMI (kg/m2)0.97 (0.94–1)0.122
GHRL rs16298161.82 (1.31–2.54) 0.0003

Table 6

Distribution of TNF-α rs1800629 genotypes in different populations

Kuwait (%)Asian (%)Non Hispanic (%)Persian (%)Egypt (%)
Control
GG 74.5GG 85.3GG 71GG 81.3GG 67
GA 20.0GA 14GA 17.1GA 17.1GA 27
AA 5.5AA 0.7AA 1.6AA 1.6AA 6
NHL
GG 70.5GG 88.1GG 68GG 85.3GG 44.8
GA 23GA 11.4GA 28GA 13.2GA 25
AA 6.5AA 0.5AA 4AA 1.5AA 26.2

4.Discussion

In our study, we have investigated the association of SNPs in the GHRL and TNF-α genes with the risk for NHL in a group of Kuwaiti individuals. We also looked into whether these SNPs were associated with obesity and whether obesity was associated with an increased risk for NHL in our study cohort. We found that rs1629816, a SNP in the GHRL promoter, was associated with an increased risk for NHL in carriers of the GG genotype (p= 0.0003, OR, 1.82; 95% CI, 1.31–2.54, Table 5), which is consistent with what was previously reported [44]. The association of GHRL polymorphism with NHL is plausible for several reasons. GHRL is an anti-inflammatory hormone that has been found to have an association with many cancers, including NHL. It is thought to give cells a growth advantage because of its effect on GH and therefore cell proliferation. GHRL has also been found to inhibit apoptosis through the extracellular signal-regulated kinase 1/2 (ERK1/2) and phosphatidylinositol-4,5-bisphosphate 3-kinase (PI3K)/Akt protein kinase B (PKB) pathways [49, 50, 54]. The ERK1/2 and PI3K/Akt pathways are staple oncogenic pathways that have been established to be upregulated in several cancers. Increased cell proliferation and inhibition of apoptosis are both hallmarks of the process of carcinogenesis [16]. Therefore, it is no surprise that GHRL has been found to be abnormally expressed in many cancers. The most accepted reason for the association between GHRL SNPs and the risk for NHL is that variation in GHRL alters its expression and/or function, thereby increasing its effect on cell proliferation and/or inhibiting apoptosis, which in turn may stimulate lymphomagenesis, leading to an increased risk of developing NHL [43]. The SNP associated with NHL risk in our sample, rs1629816, is a sSNP in GHRL. sSNPs can occur in coding and noncoding regions of a gene. Studies show that sSNPs affect protein expression, conformation and function and thereby may lead to altered disease susceptibilities [23, 31]. This has been shown to be true in various diseases, including hematological and nonhematological malignancies [31]. rs1629816 might affect GHRL expression, conformation or function, leading to an increase in its effect on cancer cell proliferation and therefore an individual’s susceptibility to various malignancies, including NHL. However, further studies are needed to elucidate the effect of this sSNP on GHRL and the molecular mechanism by which it might be increasing the risk for NHL.

We also looked into the TNF-α SNP rs1800629 and found no difference in the genotypic distribution of this SNP between controls and NHL patients in our sample (p= 0.671); therefore, there was no link between rs1800629 and the risk of NHL in our sample. This is consistent with a previous meta-analysis in which the TNF-α SNP rs1800629 GG was associated with an increased risk for NHL in Caucasians, decreased risk in Asians, but no association when the populations were combined [51].

In our sample, none of the investigated SNPs were associated with an obese BMI (p> 0.05, data not shown), nor was BMI associated with the risk for NHL (p= 0.122, OR 0.97 95% CI, 0.94–1, Table 5). Studies associating NHL with overweight or obesity have had conflicting results. A study in Canada that included more than 20,000 individuals with 19 different cancers found a 46% increase in the risk for NHL in people with a BMI above 30 kg/m2 [5]. Conversely, a study of 37,931 women in Iowa found no association between BMI and NHL [5, 38].

All tested SNPs were in HWE except for rs1800629. This SNP is of particular importance since it has been shown to be associated with an increased risk for several chronic conditions, such as asthma, chronic obstructive pulmonary disease (in Asian but not Caucasian populations), and several cancers [4, 15, 24, 27, 52]. Several studies on rs1800629 and the risk for NHL in different populations found it to deviate from HWE: in controls in Seattle, in a combined sample of controls and patients in the UK, and in the control groups, the patient groups, and the whole samples in Spain and at the University of California–San Francisco [42]. Quality control testing showed no genotyping errors in these studies, and other SNPs tested in the same populations were consistently found to be in HWE. The same applies for our sample; stringent quality control measures, sequencing of SNPs and random replication of the genotyping test for already tested samples were applied to our samples and confirmed the accuracy of our genotyping. In addition, other SNPs tested in this study and a previous one were always in HWE [3]. This precludes the possibility of genotyping error and warrants further investigation into the pattern of this SNP’s distribution across different populations. We found that the allelic frequency of this SNP has differed among different populations (Table 5); the frequency of the A allele was found to be highest in Egyptians (0.2), followed by non-Hispanic whites and Kuwaitis (0.16), Persians (0.1) and finally Asians (0.08) [19, 21, 34, 42]. The association of the risk of NHL with rs1800629 was highest in Egypt, followed by non-Hispanic whites, while no risk was reported for Persians or Kuwaitis (this study), and a negative association was reported for Asians [19, 21, 34, 42]. Interestingly, we noticed that the degree of risk association might correlate with the frequency of the A allele in a population, although no conclusions can be drawn until additional studies investigate this observation.

Although larger than some previous case-control studies, a limitation of our study is the sample size. This is a common limitation in genetic studies due to the difficulties surrounding the availability of samples. Although NHL is the top hematological malignancy in Kuwait, collecting a sufficient number of samples remains a significant challenge since a very small number of samples are available for collection due to the small population size. Increasing the sample size might give us better insight into the relationship of the risk of NHL with the TNF-α SNP rs1800629.

In conclusion, our study shows that rs1629810, a SNP in GHRL promoter area, was highly associated with the risk of NHL in our study cohort. None of the SNPs investigated were associated with obesity, and obesity was also not associated with the risk of developing NHL. Future studies including a higher number of subjects and from different populations are necessary to validate this association. Studies are also needed to identify genes whose SNPs are associated with NHL to help predict individuals who are at risk and therefore offer the benefit of early detection or even to apply preventative measures where appropriate. Finally, relating our population to other populations in terms of SNP genotype and allele frequency will be helpful for taking advantage of future pharmacogenomic applications that are based on individual and population genotypes.

Acknowledgments

The authors would like to acknowledge the support of Kuwait University Research Sector (Grant SL02/11) and the General Facility Project (GS 01/02) for the use of the ABI 3130xl Gene Analyzer. The authors extend their deepest appreciation and gratitude to all of the participants in this study, as well as the staff at Shiekha Badriya Alsabah Medical Oncology and Stem Cell Transplant Centre, Kuwait Cancer Control Centre, Kuwait City, Kuwait, for their assistance with the blood collection. The PI would also like to thank Miss Rubina Fatima for her technical assistance in organizing the collected data.

Conflict of interest

The authors declare no conflicts of interest.

Author contributions

Conception: M.H. Alrashid, S.H. Alshemmari, S.A. Al-Bustan.

Interpretation or analysis of data: M.H. Alrashid, A. Al-Serri, J.A. Geo, S.A. Al-Bustan.

Preparation of the manuscript: M.H. Alrashid, A. Al-Serri, S.A. Al-Bustan.

Revision for important intellectual content: M.H. Alrashid, A. Al-Serri, S.H. Alshemmari, J.A. Geo, S.A. Al-Bustan.

Supervision: M.H. Alrashid, S.A. Al-Bustan.

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