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. 2016 Feb 23;9:899–910. doi: 10.2147/OTT.S95258

Association between three exonuclease 1 polymorphisms and cancer risks: a meta-analysis

Zi-Yu Chen 1,2, Si-Rong Zheng 2, Jie-Hui Zhong 1,2, Xiao-Duan Zhuang 1,2, Jue-Yu Zhou 2,
PMCID: PMC4770079  PMID: 26966378

Abstract

To date, the results of studies exploring the relation between exonuclease 1 (Exo1) polymorphisms and cancer risks have differed. In this study, we performed a meta-analysis to investigate the effect of the three most extensively studied Exo1 polymorphisms (Pro757Leu, Glu589Lys, and Glu670Gly) on cancer susceptibility. The related studies published before August 5, 2015, were collected by searching the PubMed and EMBASE databases. We found 16 publications containing studies that were eligible for our study, including 10 studies for Pro757Leu polymorphism (4,093 cases and 3,834 controls), 12 studies for Glu589Lys polymorphism (6,479 cases and 6,550 controls), and 7 studies for Glu670Gly polymorphism (3,700 cases and 3,496 controls). Pooled odds ratios and 95% confidence intervals were used to assess the strength of the associations, and all the statistical analyses were calculated using the software program STATA version 12.0. Our results revealed that the Pro757Leu polymorphism was significantly associated with a reduced cancer risk, whereas an inverse association was found for the Glu589Lys polymorphism. Furthermore, subgroup analysis of smoking status indicated that the Glu589Lys polymorphism was significantly associated with an increased cancer risk in smokers, but not in nonsmokers. However, no evidence was found for an association between the Glu670Gly polymorphism and cancer risk. In conclusion, this meta-analysis suggests that the Pro757Leu polymorphism may provide protective effects against cancer, while the Glu589Lys polymorphism may be a risk factor for cancer. Moreover, the Glu670Gly polymorphism may have no influence on cancer susceptibility. In the future, large-scaled and well-designed studies are needed to achieve a more precise and comprehensive result.

Keywords: exonuclease 1, polymorphism, cancer risks, meta-analysis

Introduction

Cancer, caused by complex factors including genetics and environment, as well as by the interactions between these two factors, is a severe global public-health problem.1,2 DNA damage may lead to human cancer, while DNA repair pathways such as mismatch repair (MMR) in mammals may play a role in repairing such damage.3,4 Genetic variations in DNA repair genes may influence repair efficiency and alter cancer risks.5

The exonuclease 1 (Exo1) gene, belonging to the MMR system and the RAD2/XPG nuclease family, encodes an 846 amino acid protein, which functions in DNA repair, replication, and homologous recombination.69 Exo1 can interact physically with the MMR proteins MLH1 and MSH2 and participate in mismatch-provoked excision repair by forming a ternary complex of Exo1-MLH1-PMS2 or Exo1-MSH2-MSH6.1012

Several nonsynonymous coding polymorphisms in the Exo1 gene have been identified. These polymorphisms may lead to amino acid changes and may affect the interactions between the Exo1 protein and other MMR proteins, resulting in altered DNA repair capacity and influencing cancer risks.13,14 In consideration of the possible influence of the genetic variants on the repair efficiency of the MMR system and cancer susceptibilities, many studies have assessed the relationship between Exo1 polymorphisms and cancer risks.

To date, three single-nucleotide polymorphisms (SNPs) of the Exo1 gene – Pro757Leu (rs9350, C/T) at exon 13, Glu589Lys (rs1047840, G/A), and Glu670Gly (rs1776148, A/G) at exon 11 – have been the most widely investigated in epidemiological studies.1530 Not all of these studies, however, reached the same conclusion, which may be partly due to the limitations of individual studies. Therefore, we carried out this meta-analysis of all eligible case-control studies to draw a more reliable conclusion of the association between Exo1 polymorphisms (Glu589Lys, Pro757Leu, and Glu670Gly) and cancer susceptibility.

Materials and methods

Study identification and inclusion criteria

We searched the PubMed and EMBASE databases for relevant studies (last search was updated on August 5, 2015). Without applying search filters, the following keywords were used for the literature search: (Exo1 or “Exonuclease 1”), (cancer or carcinoma or tumor or neoplasm), and (polymorphism or variant or variation or mutation). Furthermore, the references in the retrieved articles were also manually screened to ensure that no relevant publication was missed.

All studies used in our meta-analysis were carefully examined to meet the following criteria: case–control studies conducted on human subjects, with full text articles that investigated the association between cancer risk and at least one of three Exo1 gene polymorphisms (Pro757Leu, Glu589Lys, or Glu670Gly). Another requirement of these studies was the inclusion of an odds ratio (OR) with 95% confidence intervals (CIs) or the provision of sufficient raw data to calculate these measures. A request letter for the original genotype frequency data was sent to the corresponding author when such data were unavailable in relevant articles. If studies had overlapping data, only the more complete study was used.

Data extraction

Two investigators collected the following items from each eligible study, independently: name of the first author, year of publication, ethnicity, country, cancer types, genotyping method, source of controls, numbers of cases and controls, genotype frequency of cases and controls, and the demographic data – if available – including smoking status.

Statistical analysis

This meta-analysis was performed for a recessive model (aa vs Aa+AA, where “A” was the major allele and “a” was the minor allele), dominant model (aa+Aa vs AA), homozygote comparison (aa vs AA), heterozygote comparison (Aa vs AA), and additive model (a vs A). We used ORs with 95% CIs to evaluate the strength of association between Exo1 polymorphisms and cancer risk, while pooled ORs were obtained by calculating a weighted average of OR from each study.31 Between-study heterogeneity, measured by a Q-statistic test32 and I2 statistic,33 was assessed to determine whether a fixed-effects or random-effects model should be applied. When the Ph value of the Q-test is smaller than 0.05, which indicated a significant heterogeneity among the studies, a random-effects model34 was used to calculate the pooled ORs; otherwise the fixed-effects model35 was used.

Subgroup analyses were performed by ethnicity, source of controls, cancer types, and smoking status to explore the effect of heterogeneity among the studies. Univariate meta-regression analysis was used to further clarify the potential reasons for heterogeneity (P<0.05 was considered significant).36 Studies were split into large sample size or small sample size using the cut-point of 600 participants. By sequentially omitting each study, sensitivity analysis was used to assess the stability of the results. Begg’s funnel plot and Egger’s linear regression test were carried out to estimate the potential publication bias, graphically and statistically, and P<0.05 was considered significant.37

A goodness-of-fit χ2 test with 1 degree of freedom was applied to assess the Hardy–Weinberg equilibrium (HWE) in controls and a value of P<0.05 was considered as a significant disequilibrium. We used the software program STATA (version 12.0; StataCorp LP, College Station, TX, USA) for all the statistical analyses in this meta-analysis.

Results

Extraction process and study characteristics

On the basis of the inclusion criteria, 17 publications were preliminarily identified as eligible.1530,38 Among these, the study conducted by Yoshiya et al38 was excluded because the data were the same as those for the earlier study by Yamamoto et al.15 Thus, 16 articles were included in the final meta-analysis.1530 Table 1 summarizes the main characteristics of the selected studies, while Figure 1 shows the study selection process. The genotyping data in the study by Jin et al19 were only analyzed in the additive genetic model because the data were limited. In addition, the data from Tang et al’s study30 were genome-wide association study data. In the pooled analyses, we included 4,093 cases and 3,834 controls from 10 studies for the Pro757Leu polymorphism, 6,479 cases and 6,550 controls from 12 studies for the Glu589Lys polymorphism, and 3,700 cases and 3,496 controls from 7 studies for the Glu670Gly polymorphism. Of these, six were studies of Caucasians, nine were studies of Asians, and one was a study of mixed population, while four were population based and ten were hospital based. In addition, there were three lung cancer studies,16,19,21 four colorectal cancer studies,15,17,25,29 two cervical cancer studies,24,28 and seven others studies including glioblastoma,18 gastric cancer,20 oral cancer,22 breast cancer,23 melanoma,26 hepatocellular cancer,27 and pancreatic cancer.30 Table 2 lists the genotype distribution and allele frequency of Exo1 polymorphism among cancer cases and controls and the P-value of the HWE in the controls.

Table 1.

Characteristics of studies included in the meta-analysis

Study Ethnicity Region SNPs studied Cancer types Genotyping Control source Cases/controls
Yamamoto et al15 Asian Japan 757 Colorectal PCR-RFLP PB 102/110
Zienolddiny et al16 Caucasian Norway 589 Lung TaqMan PB 256/291
Kim et al17 Asian Korea 757 Colorectal DHPLC HB 268/300
Chang et al18 Caucasian USA 589, 670 Glioblastoma Microarray PB 112/110
Jin et al19 Asian People’s Republic of China 757, 589, 670 Lung Illumina HB 500/517
Bau et al20 Asian Taiwan 757, 589, 670 Gastric PCR-RFLP HB 179/179
Hsu et al21 Asian Taiwan 757, 589, 670 Lung PCR-RFLP HB 358/358
Tsai et al22 Asian Taiwan 757, 589, 670 Oral PCR-RFLP HB 680/680
Wang et al23 Asian Taiwan 757, 589, 670 Breast PCR-RFLP HB 1,272/1,272
Wang et al24 Mixed Costa Rica 757 Cervical TaqMan PB 460/431
Haghighi et al25 Asian Iran 757 Colorectal PCR-RFLP HB 90/98
Ibarrola-Villava et al26 Caucasian Spain 757, 589, 670 Melanoma Sequenom, TaqMan, Sequenom HB 684/406, 599/379, 599/379
Bayram et al27 Caucasian Turkey 589 Hepatocellular PCR-RFLP HB 224/224
Luo et al28 Asian People’s Republic of China 589 Cervical PCR-RFLP HB 126/278
Kabzinski et al29 Caucasian Poland 589 Colorectal TaqMan NA 150/150
Tang et al30 Caucasian Multiple Regions 589 Pancreatic Illumina Mixed 2,023/2,112

Abbreviations: SNP, single nucleotide polymorphism; PCR-RFLP, polymerase chain reaction-restriction fragment length polymorphism; TaqMan, real-time TaqMan analysis; DHPLC, denaturing high-performance liquid chromatography; Sequenom, genotyping was performed using the Sequenom platform; PB, population based; HB, hospital based; NA, not available.

Figure 1.

Figure 1

Studies included in this meta-analysis.

Table 2.

Genotype distribution of Exo1 polymorphisms used in this study

Polymorphism Disease First author Ethnicity Sample size (case/control) Case
Control
HWE MAF
AA Aa aa AA Aa aa
Pro757Leu Colorectal Yamamoto et al15 Asian 102/110 35 53 14 36 47 27 0.143 0.459
Colorectal Kim et al17 Asian 268/300 108 125 35 99 163 38 0.021 0.398
Lung Jin et al19 Asian 500/517 0.409
Gastric Bau et al20 Asian 179/179 62 78 39 56 84 39 0.479 0.453
Lung Hsu et al21 Asian 358/358 124 156 78 112 167 79 0.264 0.454
Oral Tsai et al22 Asian 680/680 235 297 148 214 313 153 0.061 0.455
Breast Wang et al23 Asian 1,272/1,272 433 563 276 402 596 274 0.057 0.450
Cervical Wang et al24 Mixed 460/431 175 214 71 169 217 45 0.042 0.356
Colorectal Haghighi et al25 Asian 90/98 60 28 2 51 37 10 0.402 0.291
Melanoma Ibarrola-Villava et al26 Caucasian 684/406 485 186 13 297 99 10 0.611 0.147
Glu589Lys Lung Zienolddiny et al16 Caucasian 256/291 115 106 35 116 145 30 0.117 0.352
Glioblastoma Chang et al18 Caucasian 112/110 55 42 15 29 59 22 0.419 0.468
Lung Jin et al19 Asian 500/517 304 172 24 355 138 24 0.030 0.180
Gastric Bau et al20 Asian 179/179 103 64 12 125 49 5 0.940 0.165
Lung Hsu et al21 Asian 358/358 214 125 19 251 97 10 0.865 0.163
Oral Tsai et al22 Asian 680/680 391 244 45 482 183 15 0.626 0.157
Breast Wang et al23 Asian 1,272/1,272 794 421 57 898 341 33 0.926 0.160
Melanoma Ibarrola-Villava et al26 Caucasian 599/379 234 282 83 136 175 68 0.373 0.410
Hepatocellular Bayram et al27 Caucasian 224/224 95 94 35 99 108 17 0.089 0.317
Cervical Luo et al28 Asian 126/278 73 48 5 196 77 5 0.412 0.156
Colorectal Kabzinski et al29 Caucasian 150/150 22 95 33 49 62 39 0.038 0.467
Pancreatic Tang et al30 Caucasian 2,023/2,112 827 910 286 815 993 304 0.956 0.379
Glu670Gly Glioblastoma Chang et al18 Caucasian 112/111 44 57 11 46 47 18 0.314 0.374
Lung Jin et al19 Asian 500/517 0.181
Gastric Bau et al20 Asian 179/179 131 39 9 135 36 8 0.011 0.145
Lung Hsu et al21 Asian 358/358 262 78 18 269 73 16 0.000 0.147
Oral Tsai et al22 Asian 680/680 497 148 35 511 138 31 0.000 0.147
Breast Wang et al23 Asian 1,272/1,272 941 267 64 958 255 59 0.000 0.147
Melanoma Ibarrola-Villava et al26 Caucasian 599/379 239 293 67 160 171 48 0.826 0.352

Abbreviations: HWE, Hardy–Weinberg equilibrium; MAF, minor allele frequency; A, the major allele; a, the minor allele.

Meta-analysis results

The main results for the three Exo1 polymorphisms of this meta-analysis are listed in Table 3. Overall, the combined results based on all eligible studies showed a significant association between the Pro757Leu polymorphism and reduced cancer risk (dominant model: OR =0.902, 95% CI =0.821–0.991, P=0.032; and heterozygote comparison: OR =0.894, 95% CI =0.809–0.988, P=0.027; Table 3). Moreover, in the stratified analysis, the results showed that the Pro757Leu polymorphism was associated with a reduced risk of cancer among Asians (dominant model: OR =0.852, 95% CI =0.765–0.949, P=0.004; heterozygote comparison: OR =0.847, 95% CI =0.755–0.951, P=0.005; and additive model: OR =0.932, 95% CI =0.871–0.997, P=0.039; Figure 2), but not among Caucasians. In the subgroup analysis by source of controls, a significant association was found between the Pro757Leu polymorphism and a reduced cancer risk in the dominant model and in the heterozygote comparison in the hospital-based controls (Leu/Leu+Pro/Leu vs Pro/Pro: OR =0.882, 95% CI =0.797–0.977, P=0.016; Pro/Leu vs Pro/Pro: OR =0.878, 95% CI =0.788–0.979, P=0.019; Table 3), but not in the population-based controls. Moreover, the Leu allele of the Pro757Leu polymorphism was significantly associated with a reduced risk of colorectal cancer (dominant model: OR =0.724, 95% CI =0.557–0.942, P=0.016; homozygote comparison: OR =0.633, 95% CI =0.417–0.961, P=0.032; and additive model: OR =0.782, 95% CI =0.648–0.943, P=0.010).

Table 3.

Results of meta-analysis for Exo1 polymorphisms and the risk of cancer

Genetic model
Recessive model
Dominant model
Homozygote
Heterozygote
Additive model
Pro757Leu Number of studies (n of cases/n of controls) Leu/Leu vs Pro/Leu+Pro/Pro
Leu/Leu+Pro/Leu vs Pro/Pro
Leu/Leu vs Pro/Pro
Pro/Leu vs Pro/Pro
Leu vs Pro
OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%)
Total 10 (4,593/4,351) 0.995 (0.883–1.122) 0.098 40.4 0.902 (0.821–0.991) 0.419 1.8 0.920 (0.805–1.053) 0.154 0.894 (0.809–0.988) 0.530 0.0 0.960 (0.902–1.020) 0.188 27.9
Ethnicity
 Asian 8 (3,449/3,514) 0.955 (0.842–1.084) 0.252 23.2 0.852 (0.765–0.949) 0.744 0.0 0.872 (0.755–1.007) 0.410 1.9 0.847 (0.755–0.951) 0.809 0.0 0.932 (0.871–0.997) 0.341 11.4
 Caucasian 1 (684/406) 0.767 (0.333–1.766) 1.118 (0.850–1.471) 0.796 (0.345–1.838) 1.151 (0.867–1.527) 1.068 (0.837–1.362)
 Mixed 1 (460/431) 1.566 (1.050–2.334) 1.050 (0.802–1.376) 1.524 (0.992–2.340) 0.952 (0.717–1.264) 1.141 (0.941–1.383)
CS
 PB 2 (562/540) 0.910 (0.292–2.838) 0.005 87.2 1.028 (0.805–1.312) 0.708 0.0 0.953 (0.343–2.651) 0.023 80.7 0.986 (0.763–1.275) 0.565 0.0 1.056 (0.890–1.255) 0.080 67.5
 HB 8 (4,031/3,811) 0.972 (0.856–1.105) 0.600 0.0 0.882 (0.797–0.977) 0.347 10.8 0.884 (0.766–1.022) 0.592 0.0 0.878 (0.788–0.979) 0.417 0.9 0.946 (0.886–1.010) 0.330 12.8
Cancer
 Colorectal 3 (728/768) 0.717 (0.489–1.050) 0.053 66.0 0.724 (0.557–0.942) 0.435 0 0.633 (0.417–0.961) 0.135 50.2 0.766 (0.581–1.009) 0.315 13.5 0.782 (0.648–0.943) 0.208 36.2
 Lung 2 (858/875) 0.984 (0.690–1.402) 0.859 (0.629–1.174) 0.892 (0.595–1.336) 0.844 (0.603–1.181) 0.988 (0.863–1.130) 0.450 0.0
HWE
 Yes 7 (3,365/3,103) 0.945 (0.830–1.076) 0.240 24.8 0.900 (0.810–0.999) 0.488 0.0 0.872 (0.753–1.010) 0.407 2.4 0.906 (0.810–1.013) 0.532 0.0 0.933 (0.868–1.004) 0.283 19.3
 No 3 (1,228/1,248) 1.331 (0.978–1.812) 0.201 38.8 0.914 (0.739–1.129) 0.102 62.7 1.210 (0.868–1.687) 0.091 64.9 0.847 (0.679–1.058) 0.193 41.0 1.027 (0.916–1.151) 0.207 36.5

Glu589Lys n Lys/Lys vs Glu/Lys+Glu/Glu
Lys/Lys+Glu/Lys vs Glu/Glu
Lys/Lys vs Glu/Glu
Lys/Lys vs Glu/Glu
Lys vs Glu
OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%)

Total 12 (6,479/6,550) 1.320 (0.999–1.744) 0.000 71.6 1.237 (0.995–1.538) 0.000 86.6 1.447 (1.028–2.035) 0.000 79.0 1.208 (0.974–1.498) 0.000 84.8 1.200 (1.014–1.421) 0.000 86.7
Ethnicity
 Asian 6 (3,115/3,214) 1.876 (1.444–2.436) 0.194 32.2 1.555 (1.401–1.726) 0.650 0.0 2.133 (1.639–2.777) 0.161 36.8 1.495 (1.341–1.666) 0.903 0.0 1.487 (1.361–1.625) 0.330 13.3
 Caucasian 6 (3,364/3,266) 1.000 (0.751–1.332) 0.019 62.9 0.936 (0.697–1.257) 0.000 81.0 1.016 (0.701–1.475) 0.002 73.1 0.931 (0.673–1.288) 0.000 82.5 0.954 (0.807–1.128) 0.004 71.0
CS
 PB 2 (368/401) 1.042 (0.687–1.580) 0.076 68.2 0.568 (0.264–1.221) 0.019 81.7 0.674 (0.211–2.151) 0.016 82.6 0.616 (0.453–0.836) 0.058 72.1 0.734 (0.415–1.297) 0.013 83.8
 HB 8 (5,961/5,999) 1.683 (1.097–2.581) 0.000 74.0 1.405 (1.180–1.674) 0.004 66.9 1.848 (1.164–2.934) 0.000 76.5 1.356 (1.161–1.583) 0.033 54.0 1.366 (1.144–1.632) 0.000 78.9
Cancer
 Lung 3 (1,114/1,166) 1.338 (0.948–1.888) 0.436 0.0 1.231 (0.848–1.787) 0.010 78.2 1.346 (0.944–1.921) 0.362 1.5 1.188 (0.777–1.816) 0.004 81.5 1.230 (0.961–1.574) 0.046 67.5
HWE
 Yes 10 (5,829/5,883) 1.444 (1.039–2.005) 0.000 75.7 1.149 (0.908–1.454) 0.000 87.2 1.451 (0.975–2.158) 0.000 82.1 1.104 (0.884–1.378) 0.000 84.0 1.181 (0.971–1.436) 0.000 88.8
 No 2 (650/667) 0.902 (0.610–1.334) 0.525 0.0 1.904 (0.972–3.727) 0.029 78.9 1.434 (0.901–2.282) 0.298 7.8 2.135 (0.930–4.901) 0.011 84.6 1.298 (1.084–1.554) 0.884 0.0

Glu670Gly n Glu/Glu vs Gly/Glu+Gly/Gly
Glu/Glu vs Gly/Glu+Gly/Gly
Glu/Glu vs Gly/Gly
Gly/Glu vs Gly/Gly
Glu vs Gly
OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%) OR (95% CI) Ph I2 (%)

Total 7 (3,700/3,496) 0.989 (0.802–1.219) 0.683 0.0 1.094 (0.978–1.224) 1.000 0.0 1.037 (0.837–1.286) 0.861 0.0 1.104 (0.978–1.245) 0.994 0.0 1.057 (0.971–1.151) 0.982 0.0
Ethnicity
 Asian 5 (2,989/3,006) 1.111 (0.857–1.440) 0.999 0.0 1.093 (0.962–1.241) 0.994 0.0 1.131 (0.871–1.468) 0.998 0.0 1.084 (0.944–1.244) 0.996 0.0 1.078 (0.977–1.189) 0.994 0.0
 Caucasian 2 (711/490) 0.796 (0.559–1.132) 0.341 0.0 1.099 (0.869–1.390) 0.984 0.0 0.867 (0.595–1.263) 0.435 0.0 1.169 (0.913–1.497) 0.755 0.0 0.997 (0.840–1.182) 0.617 0.0
CS
 PB 1 (112/111) 0.563 (0.253–1.254) 1.094 (0.640–1.868) 0.639 (0.271–1.504) 1.268 (0.720–2.232) 0.912 (0.620–1.342)
 HB 6 (3,588/3,385) 1.032 (0.830–1.282) 0.900 0.0 1.094 (0.976–1.227) 0.999 0.0 1.072 (0.859–1.339) 0.963 0.0 1.096 (0.969–1.240) 0.996 0.0 1.065 (0.976–1.162) 0.992 0.0
Cancer
 Lung 2 (858/875) 1.132 (0.568–2.256) 1.107 (0.792–1.548) 1.155 (0.577–2.313) 1.097 (0.764–1.575) 1.062 (0.890–1.267) 0.748 0.0

Notes: Random-effects model was used when P-value for heterogeneity test <0.05; otherwise, fixed-model was used.

Abbreviations: CS, control source; PB, population based; HB, hospital based; Ph, P-values for heterogeneity from Q-test; HWE, Hardy–Weinberg equilibrium; OR, odds ratio; 95% CI, 95% confidence interval; n, number.

Figure 2.

Figure 2

Forest plots of ORs with 95% CI for Exo1 Pro757Leu polymorphism and the risk of cancer observed in subgroup analyses by ethnicity.

Notes: The center of each square represents the OR, the area of the square represents the sample number and thus the weight used in the meta-analysis, and the horizontal line indicates the 95% CI. (A) Dominant model; (B) heterozygote comparison.

Abbreviations: OR, odds ratio; 95% CI, 95% confidence interval.

In terms of the Exo1 Glu589Lys polymorphism, a statistically significant association was found between the Exo1 Glu589Lys polymorphism and the risk of cancer in the homozygote comparison (Lys/Lys vs Glu/Glu: OR =1.447, 95% CI =1.028–2.035, P=0.034) and in the additive model (Lys vs Glu: OR =1.200, 95% CI =1.014–1.421, P=0.034) in the pooled analyses. For Asians, the results showed that the Glu589Lys polymorphism increased the cancer risk (recessive model: OR =1.876, 95% CI =1.444–2.436, P<0.001; dominant model: OR =1.555, 95% CI =1.401–1.726, P<0.001; homozygote comparison: OR =2.133, 95% CI =1.639–2.777, P<0.001; heterozygote comparison: OR =1.495, 95% CI =1.341–1.666, P<0.001; and additive model: OR =1.487, 95% CI =1.361–1.625, P<0.001), while no association was found among Caucasians. When stratified by the source of controls, a significantly elevated cancer risk was found among studies with hospital-based controls (recessive model: OR =1.683, 95% CI =1.097–2.581, P=0.017; dominant model: OR =1.405, 95% CI =1.180–1.674, P<0.001; homozygote comparison: OR =1.848, 95% CI =1.164–2.934, P=0.009; heterozygote comparison: OR =1.356, 95% CI =1.161–1.583, P<0.001; and additive model: OR =1.366, 95% CI =1.144–1.632, P=0.001), while in population-based studies, the results showed that the Glu589Lys polymorphism was associated with a reduced cancer risk only in the heterozygote comparison (OR =0.616, 95% CI =0.453–0.836, P=0.002). In terms of cancer types, no association was found for lung cancer. Furthermore, subgroup analysis was also performed by smoking status. The results showed that the Glu589Lys polymorphism was significantly associated with an increased cancer risk in smokers (dominant model: OR =1.866, 95% CI =1.384–2.515, P<0.001; Table 4, Figure 3), but not in nonsmokers.

Table 4.

Results of stratified analysis by smoking status for Exo1 Glu589Lys polymorphism in dominant model (Lys/Lys+Glu/Lys vs Glu/Glu)

Smoking Number of studies (n of cases/n of controls) Lys/Lys+Glu/Lys vs Glu/Glu
OR (95% CI) Ph I2 (%)
Smokers 4 (1,268/1,151) 1.866 (1.384–2.515) 0.038 64.5
Nonsmokers 4 (449/583) 1.114 (0.862–1.440) 0.148 43.9

Notes: Random-effects model was used when P-value for heterogeneity test <0.05; otherwise, fixed-model was used.

Abbreviations: Ph, P-values for heterogeneity from Q-test; OR, odds ratio; 95% CI, 95% confidence interval; n, number.

Figure 3.

Figure 3

Forest plot of ORs with 95% CI for the Exo1 Glu589Lys polymorphism and the risk of cancer for the dominant model (Lys/Lys+Glu/Lys vs Glu/Glu) in smokers. Notes: The center of each square represents the OR, the area of the square represents the sample number and thus the weight used in the meta-analysis, and the horizontal line indicates the 95% CI. Weights are from random effects analysis.

Abbreviations: OR, odds ratio; 95% CI, 95% confidence interval.

In terms of the Exo1 Glu670Gly polymorphism, no evidence was found for an association between the Glu670Gly polymorphism and cancer risk for all genetic models (Table 3). Furthermore, the results in the subgroup analyses by ethnicity, source of controls, and cancer types revealed no association, either.

Test of heterogeneity

The heterogeneity test showed that no significant heterogeneity was found for the Pro757Leu and Glu670Gly polymorphisms in all comparisons (Table 3). However, there was significant between-study heterogeneity for the Exo1 Glu589Lys polymorphism in all genetic models (Table 3). Subgroup analysis was performed to explore the potential sources of heterogeneity. After patients were stratified by ethnicity, no heterogeneity was found in the Asian population, which indicated that ethnicity may contribute to substantial heterogeneity for the Glu589Lys polymorphism. A series of univariate meta-regression analyses under all genetic models, with the covariates of ethnicity, publication year, sample size, and HWE, showed that only ethnicity had a significant influence on heterogeneity (recessive model: P=0.029; dominant model: P=0.035; homozygote comparison: P=0.032; and additive model: P=0.004; Table 5).

Table 5.

Univariate meta-regression analysis for heterogeneity of Glu589Lys polymorphism

Covariates Recessive model
Dominant model
Homozygote
Heterozygote
Additive model
Coefficient P-value Coefficient P-value Coefficient P-value Coefficient P-value Coefficient P-value
Ethnicity −0.638 0.029 −0.535 0.035 −0.768 0.032 −0.501 0.111 −0.456 0.003
Year −0.044 0.493 0.052 0.408 0.015 0.859 0.063 0.330 0.007 0.867
SS 0.016 0.961 0.087 0.777 0.000 0.999 0.109 0.730 0.082 0.690
HWE −0.464 0.275 0.506 0.205 0.008 0.989 0.636 0.114 0.099 0.718

Abbreviations: SS, sample size; HWE, Hardy–Weinberg equilibrium.

Sensitivity analysis

Sensitivity analysis was performed to assess the influence of each individual study on the pooled ORs. The results showed that the conclusions of this meta-analysis for the Glu670Gly polymorphism were relatively stable and credible because the overall ORs were not influenced excessively by omitting any single study (data not shown). However, the conclusions for the Pro757Leu and Glu589Lys polymorphism were not sufficiently stable. While excluding any one of the three studies,17,22,23 the pooled ORs for the Pro757Leu polymorphism changed and the result became negative in all genetic models, indicating that the results were relatively unstable. In terms of the Glu589Lys polymorphism, when the study by Chang et al18 was excluded, the association between the Exo1 Glu589Lys polymorphism and the risk of cancer became significant in all genetic models (recessive model: OR =1.399, 95% CI =1.048–1.866, P=0.022; dominant model: OR =1.333, 95% CI =1.086–1.637, P=0.006; homozygote comparison: OR =1.601, 95% CI =1.144–2.240, P=0.006; heterozygote comparison: OR =1.294, 95% CI =1.055–1.587, P=0.013; and additive model: OR =1.269, 95% CI =1.079–1.494, P=0.004), suggesting that this study significantly influenced the result.

Publication bias

The publication bias of the literature was assessed by both Begg’s funnel plot and Egger’s test. The shapes of the funnel plots for each polymorphism showed no obvious asymmetry (Figure 4). Evidence of publication bias was not found using Egger’s test for the Pro757Leu polymorphism (recessive model: P=0.188; dominant model: P=0.357; homozygote comparison: P=0.188; heterozygote comparison: P=0.734; and additive model: P=0.178), Glu589Lys polymorphism (recessive model: P=0.093; dominant model: P=0.516; homozygote comparison: P=0.081; heterozygote comparison: P=0.556; and additive model: P=0.310), and Glu670Gly polymorphism (recessive model: P=0.679; dominant model: P=0.193; homozygote comparison: P=0.608; heterozygote comparison: P=0.098; and additive model: P=0.666), respectively.

Figure 4.

Figure 4

Begg’s funnel plots for the Exo1 polymorphisms and the risk of cancer for the publication bias test.

Notes: Each point represents a separate study for the indicated association. Log (OR); natural logarithm of OR. The horizontal line indicates the effect size. (A) Pro757Leu polymorphism; (B) Glu589Lys polymorphism; (C) Glu670Gly polymorphism.

Abbreviation: OR, odds ratio.

Discussion

Our meta-analysis is the first study to investigate the association between Exo1 Pro757Leu and Glu670Gly polymorphisms of Exo1 and cancer susceptibility, and also the largest and most comprehensive assessment of the relationship between the Glu589Lys polymorphism and cancer risk. In our study, we conducted an analysis that included 10 studies relating to the Pro757Leu polymorphism (4,093 cases and 3,834 controls), 12 studies relating to the Glu589Lys polymorphism (6,479 cases and 6,550 controls), and 7 studies relating to the Glu670Gly polymorphism (3,700 cases and 3,496 controls). The final results showed that Pro757Leu conferred a protective effect against cancer, and the Glu589Lys polymorphism was associated with an increased cancer risk, but the Glu670Gly polymorphism was not statistically significantly associated with cancer risk. Interestingly, stratified analysis by ethnicity indicated that, among Asians, the Pro757Leu polymorphism was associated with a reduced risk of cancer under the dominant model, heterozygote comparison, and additive model, whereas the Glu589Lys polymorphism was significantly associated with increased cancer risk under all the genetic models. The differences between Asians and other races may be partly due to the different genetic backgrounds and environments or lifestyles.39 The Leu allele frequency of the Pro757Leu polymorphism among the controls in the Asian population was 43.7% (95% CI =42.5%–44.8%), which was significantly higher than that in the Caucasian population (14.7%, 95% CI =12.2%–17.1%, P<0.001). On the contrary, the Lys and Gly allele frequency of the Glu589Lys and Glu670Gly polymorphisms in Asians was 16.3% (95% CI =15.4%–17.2%) and 15.3% (95% CI =14.3%–16.2%), which was significantly lower than that in Caucasians (38.3%, 95% CI =37.1%–39.5%, P<0.001, and 35.7%, 95% CI =32.7%–38.7%, P<0.001). In subgroup analysis of the different sources of controls, significant associations were found between the Pro757Leu polymorphism and reduced cancer risk, while evidence of an association between the Glu589Lys polymorphism and an increased cancer risk was found in the hospital-based studies, but not in the population-based studies. This may be because the hospital-based controls may have sickness that was connected with the genotypes under investigation, leading to potential biases.40 Furthermore, there was a significantly negative correlation between the Leu allele of the Pro757Leu polymorphism and colorectal cancer risk. However, this result should be interpreted with caution because only three studies (728 cases and 768 controls) were included in the analysis. Moreover, subgroup analysis was also performed under smoking conditions for the Glu589Lys polymorphism. The results showed that the Glu589Lys polymorphism was significantly associated with an increased cancer risk in smokers, but not in nonsmokers, which indicated that cigarette smoking can cause DNA damage and influence the DNA repair activity, which then alters the cancer risk. There was no evidence for an association between the Glu670Gly polymorphism and cancer risk in subgroup analyses based on ethnicity, source of controls, and cancer types. In the future, larger well-designed studies will be needed to validate these associations.

In this study, there was significant heterogeneity between studies relating to the Glu589Lys polymorphism, but not to the other two polymorphisms. To explore the sources of heterogeneity, studies were classified according to ethnicity, source of controls, cancer type, and sample size. The results showed that the heterogeneity was significantly reduced in the Asian population subgroup, which indicated that ethnicity could partly explain the source of heterogeneity. The studies for the Caucasian population yielded different results, with high heterogeneity, revealing the necessity for further study. Likewise, the metaregression analysis identified ethnicity as an important contributor to heterogeneity. Furthermore, the sensitivity analysis showed that the study by Chang et al18 could have an influence on the overall results for Glu589Lys polymorphism because it was the only study to reveal that the Glu589Lys polymorphism was significantly related to reduced cancer risk. Although the three studies by Kim et al,17 Tsai et al,22 and Wang et al23 may affect the overall results for the Pro757Leu polymorphism, none of the studies led to a change in conclusions for the Asian population, indicating that the results for the Asian population were relatively stable and credible. Additionally, the overall results for the Pro757Leu and Glu589Lys polymorphisms were dominated by the conclusions for the Asian population, which indicated that ethnicity was an important factor in Exo1 SNPs and should be carefully considered in future studies.

Many previous studies have investigated the association between the Pro757Leu polymorphism and cancer risk. Studies performed by Yamamoto et al,15 Kim et al,17 and Haghighi et al25 revealed that the Leu/Leu genotype is associated with reduced risk of colorectal cancer in Asians, which concurred with our results of subgroup analysis on ethnicity and cancer types. However, the results of some studies differ from our own results,1922 which may be attributed to the limitation of sample size. Similarly, in terms of the Glu589Lys polymorphism, the studies for the Asian population uniformly showed that individuals with the Glu/Lys or Lys/Lys genotypes had a significantly increased cancer risk, including an increased risk of lung, gastric, breast, oral, and cervical cancer, which concurred with our own conclusion.1923,28 Moreover, some other studies found no statistical association between the Glu589Lys polymorphism and cancer risk in the Caucasian population, which was also in line with our own results for Caucasians.16,26,30 In terms of the Glu670Gly polymorphism, we found no significant association with cancer risk, which was consistent with the results of previous studies.1823,26

Interestingly, Bayram41 and Duan et al42 have conducted meta-analyses to identify whether there was any evidence of a relationship between the Exo1 Glu589Lys polymorphism and cancer susceptibility. Their conclusions could be considered to be inconsistent, which may be partially attributable to the relatively small sample size. The meta-analysis by Bayram41 showed that the Glu589Lys polymorphism was not associated with overall cancer susceptibility, which contrasted with our own results. However, we found that the data reported by Bayram41 from the studies by Wang et al23 and Ibarrola-Villava et al26 were not the same as the original data. Another recent meta-analysis by Duan et al42 concluded that the Glu589Lys polymorphism was significantly associated with increased cancer risk in all genetic models, which differed from our own results. This may be explained by the relatively small sample size. At least four eligible studies16,26,29,30 were not included in the meta-analysis by Duan et al,42 while the study by Jin et al19 was excluded because their controls deviated from the HWE. Compared with the previous study, five additional studies16,19,26,29,30 – with 3,528 cases and 3,449 controls in total – were included in our meta-analysis, from which more solid evidence could be provided on the association between the Glu589Lys polymorphism and cancer risk.

Some limitations of our meta-analysis should also be considered when interpreting the results. First, there was an insufficient number of studies collected in this analysis to explore a true association between Exo1 polymorphisms and cancer risk, especially in terms of the stratified analyses. Second, owing to lack of original data, an evaluation of gene–gene, gene–environment, and different polymorphism loci interactions, which may alter cancer risk, could not be carried out in our study. In fact, the study conducted by Yamamoto et al15 had studied the combined effects of two SNPs of Exo1 on cancer risk. Third, serious confounding bias may exist because we calculated only unadjusted ORs; other risk factors such as age, sex, smoking status, and other variables were not adjusted. A more precise analysis should be conducted if more detailed personal data are available. Fourth, we used only published and English articles, which may bias the results, although the funnel plot and Egger’s test did not indicate remarkable publication bias. Despite the limitations, the advantages of this meta-analysis should also be acknowledged. First, the statistical power was significantly increased. Second, the studies included in this meta-analysis were satisfactory and met the inclusion criteria.

In conclusion, the results from this meta-analysis suggest that the Exo1 Pro757Leu polymorphism contributes to reduced cancer susceptibility, especially in the Asian population, hospital-based studies, and colorectal cancer. However, the Glu589Lys polymorphism was found to be statistically associated with an increased cancer risk in the Asian population, smokers, and hospital-based studies. In addition, no evidence of an association was found between the Glu670Gly polymorphism and cancer risks. In the future, well-designed and population-based studies with larger sample sizes are needed to clarify the association between these polymorphisms and the risk of cancer.

Acknowledgments

This work was supported by the National Natural Science Foundation of China (81201565), Program of the Pearl River Young Talents of Science and Technology in Guangzhou, People’s Republic of China (2013J2200042), Natural Science Foundation of Guangdong Province, People’s Republic of China (2014A030313293), and Specialized Research Fund for the Doctoral Program of Higher Education of China (20124433120001). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

Footnotes

Disclosure

The authors report no conflicts of interest in this work.

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