The relationship between rs3746444 T>C single-nucleotide polymorphism (SNP) in microRNA (mir)-499 and risk of gastric cancer (GC) has been widely investigated. However, the association was still unconfirmed. Here, we first recruited 490 GC patients and 1476 controls, and conducted a case-control study. And we did not find any association between rs3746444 T>C SNP polymorphism and risk of GC. Subsequently, we conducted a meta-analysis to explore the association of mir-499 rs3746444 polymorphism with GC development. Two authors searched the PubMed and EMBASE databases up to October 15, 2019 independently. Finally, nine literatures involving 12 independent studies were included. In total, 3954 GC cases and 9745 controls were recruited for meta-analysis. The results suggested that allele model, homozygote model and recessive model could increase the risk of overall GC (P = 0.002, 0.009 and 0.013, respectively). When we excluded the studies violated HWE, this association was also found in allele model (P = 0.020) and dominant model (P= 0.044). In subgroup analyses, we identified that rs3746444 SNP in mir-499 increased the risk of GC in Asians and gastric cardiac adenocarcinoma (GCA) subgroups. No significant bias of selection was found (all P>0.1). Test of sensitivity analysis indicated that our findings were stable. Additionally, we found that the power value was 0.891 in the allele model, suggesting the reliability of our findings. In summary, our analysis confirmed the association between rs3746444 and the risk of GC, especially in Asians and in patients with GCA.

Gastric cancer (GC), a commonly malignant disease, which ranks the fifth in terms of cancer diagnose but the third in terms of cancer death (almost one in every twelve mortalities globally) [1]. Compared with other cancers, GC poses both higher incidence and more frequent mortality. Generally, there are two subtypes of GC diagnosed involving gastric cardiac adenocarcinoma (GCA) and non-GCA. The underlying etiology in the development of GC involves the potential interaction between environmental and individual’s genetic factors. A number of efforts have been performed before people make a clear knowing of how the hereditary factors could influence the onset of GC.

In human, microRNA- (mir-) has about 22 nucleotide molecules. Recently, many types of mir- have been found. It is established that mir- regulates the expression of the target genes. Accumulating evidences have indicated that mir- is very important for adjusting and controlling the various functions in body. Abnormal expression of mir- may lead to a variety of disorders. Mir-499 is a common mir- and extensively studied its potential role in the development of cancer. More and more evidences have indicated that Mir-499 plays a vital role in growth and migration [2,3], inflammatory response [4], and immune response [5]. A recent study reported that miR-499-5p might facilitate the progress of colorectal carcinoma and could be considered as a therapeutic target for the treatment [2]. The miR-499 signature from the serum was identified to be correlated with prognosis of lung carcinoma [6]. Compared with tubular adenocarcinoma, the miR-499-3p expression was increased in signet-ring cell of GC [7]. In view of these, we concluded that mir-499 could be implicated in carcinoma development.

Single-nucleotide polymorphisms (SNPs) may be the most frequent mutation. Mir-SNPs could affect the normal expression of mir-. Of late, some studies have sought the relationship of loci in mir-499 with cancer. Rs3746444 T>C SNP is located in mir-499 and extensively studied the association of this SNP with cancer risk. Meta-analyses have established the correlation between this SNP and the risk of overall cancer [8–13]. Most of these findings suggested that rs3746444 C-allele carriers appeared to get an increased susceptibility of cancer [8–10,12,13]. The relationship between rs3746444 SNP and GC susceptibility has also been investigated [14–22]. However, the correlation of rs3746444 polymorphism with GC development was still unconfirmed. Additionally, more recent studies with large sample sizes focusing on the relationship between mir-499 rs3746444 SNP and GC risk have been conducted [15,21]. The potential association of mir-499 rs3746444 SNP to GC is more conflicting. On this issue, it is necessary to carried out a more precise assessment. Thus, considering the effect of rs3746444 SNP on the risk of GC, we first recruited 1966 subjects (490 GC patients and 1476 controls), and conducted a case–control study. Subsequently, an updated pooled-analysis was carried out to clarify the role of rs3746444 SNP on the development of GC.

Case–control study

In this investigation, 490 histopathologically confirmed GC cases were enrolled from Union Hospital (Fuzhou city, China) and the No.1 People’s Hospital of Zhenjiang City (Zhenjiang City, China), between May 2013 and June 2016, and 1476 hospital-based controls were also recruited as we mentioned in our previous study [23]. All GC patients were diagnosed as non-GCA cases. Age and sex were full-matched in two groups. The information of the included subjects was summarized in Table 1. Each participant provided an informed consent. The institutional review boards of Jiangsu University approved this study protocol (No. 20150083). Mir-499 rs3746444 SNP was selected to studied. The related information of mir-499 rs3746444 SNP was summarized in Table 2. By using the Promega DNA Purification Kit (Madison, U.S.A.), genomic DNA was carefully extracted from peripheral blood samples. Genotyping was conducted by SNPscan™ methodology (Genesky Biotechologies Inc., Shanghai, China).

Table 1
Distribution of selected demographic variables and risk factors in GC cases and controls
VariableGC Cases (n=490)Controls (n=1476)Pa
n (%)n (%)
Age (years) 60.65 ±11.43 61.30 ±9.60 0.220 
Age (years)   0.597 
  < 61 221(45.10) 686(46.48)  
  ≥61 269(54.90) 790(53.52)  
Sex   0.891 
  Male 331(67.55) 1,002(67.89)  
  Female 159(32.45) 474(32.11)  
Smoking status   0.001 
  Never 309(63.06) 1051(71.21)  
  Ever 181(36.94) 425(28.79)  
Alcohol use   <0.001 
  Never 374(76.33) 1319(89.36)  
  Ever 116(23.67) 157(10.64)  
BMI (kg/m2   
  < 24 356(72.65) 761(51.56) <0.001 
  ≥ 24 134(27.35) 715(48.44)  
VariableGC Cases (n=490)Controls (n=1476)Pa
n (%)n (%)
Age (years) 60.65 ±11.43 61.30 ±9.60 0.220 
Age (years)   0.597 
  < 61 221(45.10) 686(46.48)  
  ≥61 269(54.90) 790(53.52)  
Sex   0.891 
  Male 331(67.55) 1,002(67.89)  
  Female 159(32.45) 474(32.11)  
Smoking status   0.001 
  Never 309(63.06) 1051(71.21)  
  Ever 181(36.94) 425(28.79)  
Alcohol use   <0.001 
  Never 374(76.33) 1319(89.36)  
  Ever 116(23.67) 157(10.64)  
BMI (kg/m2   
  < 24 356(72.65) 761(51.56) <0.001 
  ≥ 24 134(27.35) 715(48.44)  

Bold values are statistically significant (P<0.05).

BMI, body mass index.

*

Two-sided χ2 test and Student’s t test.

Table 2
Primary information for mir-499 rs3746444 T>C polymorphism
Genotyped SNPsmir-499 rs3746444 T>C
Chromosome 20 
Chr Pos (NCBI Build 38) 3499048 
MAF* for Chinese in database 0.15 
MAF in our controls (n=1476) 0.15 
P value for HWE† test in our controls 0.99 
% Genotyping value 99.64% 
Genotyped SNPsmir-499 rs3746444 T>C
Chromosome 20 
Chr Pos (NCBI Build 38) 3499048 
MAF* for Chinese in database 0.15 
MAF in our controls (n=1476) 0.15 
P value for HWE† test in our controls 0.99 
% Genotyping value 99.64% 

*MAF, minor allele frequency.

†HWE, Hardy–Weinberg equilibrium.

The χ2-test was conducted to compare the difference in the distribution of genotype frequencies between two groups. SAS 9.4 software (Cary, NC, U.S.A.) was harnessed to analyze the data. The P value less than 0.05 was considered as statistically significant.

Meta-analysis

This meta-analysis was reported following the guideline of Preferred Reporting Items for Meta-analyses (PRISMA) (Supplementary Table S1. The checklist of PRISMA) [24].

Two authors (G. Rong and S. Zhang) searched the PubMed and EMBASE electronic databases up to October 15, 2019 independently. The strategy of literature searching was presented as following: (microRNA-499 OR mir-499 OR rs3746444) AND (SNP OR mutation OR variant OR polymorphism) AND (cancer OR carcinoma) and (gastric OR stomach OR esophagogastric junction OR gastric cardiac). References in reviews and the included articles were manually searched and checked the potential data. In literature searching process, there was no language limited.

In this meta-analysis, the included investigations should accord with the selecting criteria: (a) done as a retrospective study or a case–control study; (b) evaluated the association of mir-499 rs3746444 SNP with GC; and (c) we could extract the original data from the eligible study to get the pooled odds ratios (ORs) and 95% confidence intervals (CIs). The corresponding criteria of exclusion were: (a) repeated data; (b) genotype data were not presented in publication; (c) only focusing on the prognosis of GC; and (d) comments, review and meta-analysis. Two authors (G. Rong and S. Zhang) performed the procedure of data extraction independently. The following original information was selected and extracted: publication year, first author, race, country, number of subjects, method of polymerase chain reaction, mir-499 rs3746444 genotype data. If any disagreement emerged, the third author (W. Tang) was invited. The final decision was made by a vote during this process.

For mir-499 rs3746444 SNP, rs3746444 C allele was used as the reference. The relationship was evaluated by using STATA software (version 12.0). We used an online calculator (http://ihg.gsf.de/cgi-bin/hw/hwa1.pl) to determine whether the genotype distribution of mir-499 rs3746444 agreed with Hardy–Weinberg equilibrium (HWE) [25]. Since the heterogeneity could influence the assessment of association, we used Q-statistical test and I2 test to study the heterogeneity. When significant heterogeneity (I2>50% or P<0.10) was found, the random-effects model (the DerSimonian–Laird method) was used [26,27]. And when it is out of heterogeneity, fixed-effects model was implemented (the Mantel–Haenszel method) [28,29]. Four major genetic models were harnessed in the present study. The allele model (C vs. T), homozygote model (CC vs. TT), recessive model (CC vs. TT/TC), and dominant model (CC/TC vs. TT) were calculated. Region of GC was defined as gastric cardiac adenocarcinoma (GCA), non-GCA and mixed. Bgger’s Funnel plots and Egger’s test were used to check whether there was an evidence of publication bias. Quality evaluation was carried out with a Newcastle–Ottawa Quality Assessment Scale. The quality of the include study was defined as high quality (scores ≥ 7 stars) and low quality (scores < 7 stars) [30].

Case–control study

In total, 1966 subjects (490 non-GCA patients and 1476 controls) were recruited in the present study. The TT, TC and CC genotype frequencies of mir-499 rs3746444 SNP were 69.82%, 26.69% and 3.49% in 490 non-GCA patients and 71.88%, 25.82% and 2.31% in 1476 hospital-based controls, respectively. As summarized in Table 3, we did not find any association between rs3746444 T>C SNP polymorphism and risk of non-GCA. After an adjustment for the included risk factors, there was no correlation of rs3746444 SNP with the occurrence of non-GCA. The detailed data were summarized in Supplementary Table S2.

Table 3
Logistic regression analyses of associations between mir-499 rs3746444 T>C polymorphism and GC
GenotypeCRC Cases (n=490)Controls (n=1476)Crude OR (95%CI)PAdjusted OR* (95%CI)P
n%n%
mir-499 rs3746444 T>C 
TT 340 69.82 1058 71.88 1.00  1.00  
TC 130 26.69 380 25.82 1.07(0.84–1.35) 0.600 1.04(0.82–1.33) 0.730 
CC 17 3.49 34 2.31 1.56(0.86–2.82) 0.145 1.59(0.86–2.95) 0.141 
CT+TT 147 30.18 414 28.13 1.11(0.88–1.38) 0.384 1.09(0.86–1.37) 0.479 
TT+TC 470 96.51 1,438 97.69 1.00  1.00  
CC 17 3.49 34 2.31 1.53(0.85–2.76) 0.159 1.57(0.85–2.90) 0.149 
C allele 164 16.84 448 15.22     
GenotypeCRC Cases (n=490)Controls (n=1476)Crude OR (95%CI)PAdjusted OR* (95%CI)P
n%n%
mir-499 rs3746444 T>C 
TT 340 69.82 1058 71.88 1.00  1.00  
TC 130 26.69 380 25.82 1.07(0.84–1.35) 0.600 1.04(0.82–1.33) 0.730 
CC 17 3.49 34 2.31 1.56(0.86–2.82) 0.145 1.59(0.86–2.95) 0.141 
CT+TT 147 30.18 414 28.13 1.11(0.88–1.38) 0.384 1.09(0.86–1.37) 0.479 
TT+TC 470 96.51 1,438 97.69 1.00  1.00  
CC 17 3.49 34 2.31 1.53(0.85–2.76) 0.159 1.57(0.85–2.90) 0.149 
C allele 164 16.84 448 15.22     
*

Adjusted for age, sex, smoking status, alcohol use and BMI status.

Meta-analysis results

First, 44 literatures were searched from EMBASE and PubMed databases. As shown in Figure 1, when we reviewed the titles and abstracts, 13 duplicated publications were excluded. With an additional filter, twenty-two articles were excluded (ten were reviews and meta-analyses, four were designed as not case–control study, three were uncorrelated to the relationship of rs3746444 with GC risk, three focused on the prognosis, one was repetitive data and one was Erratum). Finally, after a detailed filtrate, nine literatures and the current case–control study involving twelve independent studies were included [14–22]. In total, we recruited 3954 GC cases and 9745 controls. These contained publications were performed in Asians [14,15,17–20] and Caucasians [16,21,22]. Three independent studies were conducted in GCA [15,16], seven were in non-GCA [14,16,18–20,22], and two were in mixed [17,21]. Other detailed information was presented in Tables 4 and 5. According to Newcastle–Ottawa scale, quality assessment of meta-analysis was performed. The process and results of quality assessment were summarized in Table 6.

Flow diagram of the meta-analysis

Figure 1
Flow diagram of the meta-analysis
Figure 1
Flow diagram of the meta-analysis
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Table 4
Characteristics of the studies in meta-analysis
AuthorsYearCountryEthnicityStudy designNumber cases/controlsRegion of GCGenotyping method
Rogoveanu 2017 Romania Caucasians HB 111/288 Non-GCA Taqman 
Rogoveanu 2017 Romania Caucasians HB 31/288 GCA Taqman 
Poltronieri-Oliveira 2017 Brazil Caucasians HB 150/239 Non-GCA PCR-RFLP 
Cai 2015 China Asians PB 363/969 Non-GCA MassARRAY 
Wu 2013 China Asians HB 200/211 Mixed PCR-RFLP 
Pu 2013 China Asians HB 196/504 Non-GCA PCR-RFLP 
Ahn 2013 Korea Asians HB 461/447 Non-GCA PCR-RFLP 
Okubo 2010 Japan Asians HB 552/697 Non-GCA PCR-RFLP 
Torruella-Loran 2019 Ten European countries Caucasians PB 365/1284 Mixed PCR-RFLP 
Tang 2019 China Asians HB 305/1677 GCA SNPscan 
Tang 2019 China Asians HB 758/1677 GCA SNPscan 
Our study 2020 China Asians HB 490/1476 Non-GCA SNPscan 
AuthorsYearCountryEthnicityStudy designNumber cases/controlsRegion of GCGenotyping method
Rogoveanu 2017 Romania Caucasians HB 111/288 Non-GCA Taqman 
Rogoveanu 2017 Romania Caucasians HB 31/288 GCA Taqman 
Poltronieri-Oliveira 2017 Brazil Caucasians HB 150/239 Non-GCA PCR-RFLP 
Cai 2015 China Asians PB 363/969 Non-GCA MassARRAY 
Wu 2013 China Asians HB 200/211 Mixed PCR-RFLP 
Pu 2013 China Asians HB 196/504 Non-GCA PCR-RFLP 
Ahn 2013 Korea Asians HB 461/447 Non-GCA PCR-RFLP 
Okubo 2010 Japan Asians HB 552/697 Non-GCA PCR-RFLP 
Torruella-Loran 2019 Ten European countries Caucasians PB 365/1284 Mixed PCR-RFLP 
Tang 2019 China Asians HB 305/1677 GCA SNPscan 
Tang 2019 China Asians HB 758/1677 GCA SNPscan 
Our study 2020 China Asians HB 490/1476 Non-GCA SNPscan 

GC: gastric cancer;

GCA: gastric cardiac adenocarcinoma;

H-B: hospital-based;

P-B: population-based;

PCR-RFLP: polymerase chain reaction-restriction fragment length polymorphism.

Table 5
Distribution of miR-499 rs3746444 T>C genotypes and alleles
First authorYearCase TTCase TCCase CCControl TTControl TCControl CCCase CCase TControl CControl THWE
Torruella-Loran 2019 244 99 17 834 396 48 133 587 492 2,064 Yes 
Tang 2019 199 90 1,214 419 41 108 488 501 2,847 Yes 
Tang 2019 496 221 25 1,214 419 41 271 1,213 501 2,847 Yes 
Rogoveanu 2017 65 44 173 107 48 174 123 453 Yes 
Rogoveanu 2017 15 14 173 107 18 44 123 453 Yes 
Poltronieri-Oliveira 2017 97 48 143 90 58 242 102 376 Yes 
Cai 2015 261 89 13 765 179 25 115 611 229 1,709 No 
Wu 2013 149 47 166 42 55 345 48 374 Yes 
Pu 2013 141 50 366 121 17 60 332 155 853 Yes 
Ahn 2013 323 123 15 299 134 14 153 769 162 732 Yes 
Okubo 2010 364 151 37 466 198 33 225 879 264 1,130 No 
Our study 2020 340 130 17 1,058 380 34 164 810 448 2,496 Yes 
First authorYearCase TTCase TCCase CCControl TTControl TCControl CCCase CCase TControl CControl THWE
Torruella-Loran 2019 244 99 17 834 396 48 133 587 492 2,064 Yes 
Tang 2019 199 90 1,214 419 41 108 488 501 2,847 Yes 
Tang 2019 496 221 25 1,214 419 41 271 1,213 501 2,847 Yes 
Rogoveanu 2017 65 44 173 107 48 174 123 453 Yes 
Rogoveanu 2017 15 14 173 107 18 44 123 453 Yes 
Poltronieri-Oliveira 2017 97 48 143 90 58 242 102 376 Yes 
Cai 2015 261 89 13 765 179 25 115 611 229 1,709 No 
Wu 2013 149 47 166 42 55 345 48 374 Yes 
Pu 2013 141 50 366 121 17 60 332 155 853 Yes 
Ahn 2013 323 123 15 299 134 14 153 769 162 732 Yes 
Okubo 2010 364 151 37 466 198 33 225 879 264 1,130 No 
Our study 2020 340 130 17 1,058 380 34 164 810 448 2,496 Yes 

HWE, Hardy–Weinberg equilibrium

Table 6
Quality assessment of the meta-analysis
StudyYearSelectionComparability of the cases and controlsExposureTotal Stars
Adequate case definitionRepresentat- iveness of the casesSelection of the controlsDefinition of ControlsAscertainment of exposureSame ascertainment method for cases and controlsNon- response rate
Rogoveanu 2017 ★ ★ ★ ★★ ★ ★ 
Rogoveanu 2017 ★ ★ ★ ★★ ★ ★ 
Poltronieri-Oliveira 2017 ★ ★ ★  ★ ★ 
Cai 2015 ★ ★  ★  ★ ★ 
Wu 2013 ★ ★ ★ ★★ ★ ★ 
Pu 2013 ★ ★ ★ ★★ ★ ★ 
Ahn 2013 ★ ★ ★ ★★ ★ ★ 
Okubo 2010 ★ ★ ★ ★★ ★ ★ 
Torruella-Loran 2019 ★ ★ ★ ★ ★★ ★ ★ 
Tang 2019 ★ ★ ★ ★★ ★ ★ 
Tang 2019 ★ ★ ★ ★★ ★ ★ 
Our study 2020 ★ ★ ★ ★★ ★ ★ 
StudyYearSelectionComparability of the cases and controlsExposureTotal Stars
Adequate case definitionRepresentat- iveness of the casesSelection of the controlsDefinition of ControlsAscertainment of exposureSame ascertainment method for cases and controlsNon- response rate
Rogoveanu 2017 ★ ★ ★ ★★ ★ ★ 
Rogoveanu 2017 ★ ★ ★ ★★ ★ ★ 
Poltronieri-Oliveira 2017 ★ ★ ★  ★ ★ 
Cai 2015 ★ ★  ★  ★ ★ 
Wu 2013 ★ ★ ★ ★★ ★ ★ 
Pu 2013 ★ ★ ★ ★★ ★ ★ 
Ahn 2013 ★ ★ ★ ★★ ★ ★ 
Okubo 2010 ★ ★ ★ ★★ ★ ★ 
Torruella-Loran 2019 ★ ★ ★ ★ ★★ ★ ★ 
Tang 2019 ★ ★ ★ ★★ ★ ★ 
Tang 2019 ★ ★ ★ ★★ ★ ★ 
Our study 2020 ★ ★ ★ ★★ ★ ★ 

The estimated allele model (P = 0.002, Table 7 and Figure 2), homozygote model (P =0.009), recessive model (P =0.013) and dominant model (P =0.061) suggested that allele, homozygote and recessive genetic models could increase the risk of overall GC, while the dominant model might not confirm the risk to overall GC. If we excluded the studies violated HWE, this SNP was also found to be correlated with GC susceptibility (C vs. T, P = 0.020, CC/TC vs. TT, P = 0.044, Figure 3).

Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different ethnicity (C vs. T, fixed-effects model)

Figure 2
Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different ethnicity (C vs. T, fixed-effects model)
Figure 2
Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different ethnicity (C vs. T, fixed-effects model)
Close modal

Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different HWE (C vs. T, fixed-effects model)

Figure 3
Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different HWE (C vs. T, fixed-effects model)
Figure 3
Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different HWE (C vs. T, fixed-effects model)
Close modal
Table 7
Results of the meta-analysis
No. of studiesC vs. TCC vs. TTCC/TC vs. TTCC vs. TT/TC
OR (95% CI)PI2P (Q-test)OR (95% CI)PI2P (Q-test)OR (95% CI)PI2P (Q-test)OR (95% CI)PI2P (Q-test)
Total 12 1.12(1.05–1.20) 0.002 30.3% 0.150 1.33(1.07–1.64) 0.009 0.0% 0.964 1.11(1.00–1.24) 0.061 39.4% 0.078 1.30(1.06–1.60) 0.013 0.0% 0.983 
HWE 
  Yes 10 1.10(1.02–1.19) 0.020 26.5% 0.200 1.28(1.001.63) 0.054 0.0% 0.917 1.10(1.00–1.21) 0.044 35.9% 0.121 1.26(0.98–1.61) 0.070 0.0% 0.955 
  No 1.23(0.961.57) 0.097 58.6% 0.120 1.46(0.982.18) 0.061 0.0% 0.889 1.23(0.881.71) 0.232 70.5% 0.066 1.43(0.97–2.12) 0.074 0.0% 0.943 
Ethnicity 
  Caucasians 0.98(0.841.15) 0.788 0.0% 0.472 1.21(0.751.93) 0.437 0.0% 0.651 0.94(0.781.13) 0.504 0.0% 0.407 1.25(0.78–1.98) 0.356 0.0% 0.713 
  Asians 1.16(1.07–1.26) <0.001 27,4% 0.209 1.36(1.07–1.72) 0.011 0.0% 0.933 1.17(1.07–1.28) 0.001 35.9% 0.143 1.32(1.04–1.66) 0.020 0.0% 0.955 
Cancer type 
  GAC 1.28(1.12–1.45) <0.001 0.0% 0.848 1.49(1.002.24) 0.053 0.0% 0.703 1.32(1.141.53) <0.001 0.0% 0.872 1.38(0.92–2.07) 0.116 0.0% 0.758 
  Non-GCA 1.08(0.981.19) 0.121 29.1% 0.206 1.28(0.971.69) 0.079 0.0% 0.811 1.06(0.951.19) 0.269 33.4% 0.173 1.27(0.97–1.68) 0.083 0.0% 0.834 
  Mixed 1.01(0.831.21) 0.961 21.3% 0.260 1.24(0.732.12) 0.423 0.0% 0.804 0.97(0.781.20) 0.757 41.0% 0.193 1.29(0.76–2.19) 0.348 0.0% 0.895 
Sample sizes 
  <1000 0.99(0.86-1.15) 0.930 0.0% 0.529 1.03(0.651.63) 0.904 0.0% 0.782 0.98(0.841.16) 0.872 0.0% 0.466 1.04(0.66–1.64) 0.868 0.0% 0.826 
  ≥1000 1.17(1.08–1.27) <0.001 35.7% 0.169 1.42(1.12–1.80) 0.003 0.0% 0.992 1.17(1.02–1.34) 0.027 51.8% 0.066 1.39(1.10–1.75) 0.006 0.0% 0.997 
Source of control 
  H-B 10 1.12(1.05–1.20) 0.004 11.1% 0.340 1.33(1.04–1.68) 0.021 0.0% 0.915 1.12(1.02–1.23) 0.014 20.6% 0.253 1.30(1.02–1.64) 0.031 0.0% 0.945 
  P-B 1.15(0.781.69) 0.474 82.3% 0.017 1.33(0.862.06) 0.204 0.0% 0.613 1.14(0.701.85) 0.597 85.3% 0.009 1.32(0.86–2.04) 0.208 0.0% 0.828 
Quality scores 
  ≥7.0 10 1.11(1.03–1.20) 0.007 16.2% 0.294 1.31(1.05–1.64) 0.018 0.0% 0.909 1.11(1.01–1.21) 0.025 26.7% 0.198 1.29(1.03–1.61) 0.024 0.0% 0.945 
  <7.0 1.14(0.721.79) 0.580 77.2% 0.036 1.44(0.792.62) 0.229 0.0% 0.762 1.12(0.63–1.99) 0.705 80.8% 0.022 1.39(0.77–2.51) 0.281 0.0% 0.948 
No. of studiesC vs. TCC vs. TTCC/TC vs. TTCC vs. TT/TC
OR (95% CI)PI2P (Q-test)OR (95% CI)PI2P (Q-test)OR (95% CI)PI2P (Q-test)OR (95% CI)PI2P (Q-test)
Total 12 1.12(1.05–1.20) 0.002 30.3% 0.150 1.33(1.07–1.64) 0.009 0.0% 0.964 1.11(1.00–1.24) 0.061 39.4% 0.078 1.30(1.06–1.60) 0.013 0.0% 0.983 
HWE 
  Yes 10 1.10(1.02–1.19) 0.020 26.5% 0.200 1.28(1.001.63) 0.054 0.0% 0.917 1.10(1.00–1.21) 0.044 35.9% 0.121 1.26(0.98–1.61) 0.070 0.0% 0.955 
  No 1.23(0.961.57) 0.097 58.6% 0.120 1.46(0.982.18) 0.061 0.0% 0.889 1.23(0.881.71) 0.232 70.5% 0.066 1.43(0.97–2.12) 0.074 0.0% 0.943 
Ethnicity 
  Caucasians 0.98(0.841.15) 0.788 0.0% 0.472 1.21(0.751.93) 0.437 0.0% 0.651 0.94(0.781.13) 0.504 0.0% 0.407 1.25(0.78–1.98) 0.356 0.0% 0.713 
  Asians 1.16(1.07–1.26) <0.001 27,4% 0.209 1.36(1.07–1.72) 0.011 0.0% 0.933 1.17(1.07–1.28) 0.001 35.9% 0.143 1.32(1.04–1.66) 0.020 0.0% 0.955 
Cancer type 
  GAC 1.28(1.12–1.45) <0.001 0.0% 0.848 1.49(1.002.24) 0.053 0.0% 0.703 1.32(1.141.53) <0.001 0.0% 0.872 1.38(0.92–2.07) 0.116 0.0% 0.758 
  Non-GCA 1.08(0.981.19) 0.121 29.1% 0.206 1.28(0.971.69) 0.079 0.0% 0.811 1.06(0.951.19) 0.269 33.4% 0.173 1.27(0.97–1.68) 0.083 0.0% 0.834 
  Mixed 1.01(0.831.21) 0.961 21.3% 0.260 1.24(0.732.12) 0.423 0.0% 0.804 0.97(0.781.20) 0.757 41.0% 0.193 1.29(0.76–2.19) 0.348 0.0% 0.895 
Sample sizes 
  <1000 0.99(0.86-1.15) 0.930 0.0% 0.529 1.03(0.651.63) 0.904 0.0% 0.782 0.98(0.841.16) 0.872 0.0% 0.466 1.04(0.66–1.64) 0.868 0.0% 0.826 
  ≥1000 1.17(1.08–1.27) <0.001 35.7% 0.169 1.42(1.12–1.80) 0.003 0.0% 0.992 1.17(1.02–1.34) 0.027 51.8% 0.066 1.39(1.10–1.75) 0.006 0.0% 0.997 
Source of control 
  H-B 10 1.12(1.05–1.20) 0.004 11.1% 0.340 1.33(1.04–1.68) 0.021 0.0% 0.915 1.12(1.02–1.23) 0.014 20.6% 0.253 1.30(1.02–1.64) 0.031 0.0% 0.945 
  P-B 1.15(0.781.69) 0.474 82.3% 0.017 1.33(0.862.06) 0.204 0.0% 0.613 1.14(0.701.85) 0.597 85.3% 0.009 1.32(0.86–2.04) 0.208 0.0% 0.828 
Quality scores 
  ≥7.0 10 1.11(1.03–1.20) 0.007 16.2% 0.294 1.31(1.05–1.64) 0.018 0.0% 0.909 1.11(1.01–1.21) 0.025 26.7% 0.198 1.29(1.03–1.61) 0.024 0.0% 0.945 
  <7.0 1.14(0.721.79) 0.580 77.2% 0.036 1.44(0.792.62) 0.229 0.0% 0.762 1.12(0.63–1.99) 0.705 80.8% 0.022 1.39(0.77–2.51) 0.281 0.0% 0.948 

GCA, gastric cardiac adenocarcinoma;

H-B, hospital-based;

HWE, Hardy–Weinberg equilibrium;

P-B, population-based.

In a subgroup analysis for ethnicity, we identified that rs3746444 was associated with the risk of GC in Asians (P < 0.05 in all gentic models).

When we conducted a subgroup analysis for region of GC, we found that rs3746444 increased the susceptibility of GCA (C vs. T, P < 0.001 and CC/TC vs. TT, P  < 0.001, Figure 4).

Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different region (C vs. T, fixed-effects model)

Figure 4
Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different region (C vs. T, fixed-effects model)
Figure 4
Meta-analysis of the relationship between miR-499 rs3746444 T>C polymorphism and gastric risk for different region (C vs. T, fixed-effects model)
Close modal

In this meta-analysis, we used Bgger’s funnel plots and Egger’s test to evaluate the potential bias among the included literatures. After viewing Bgger’s funnel plots, symmetrical figure was observed, suggesting no significant bias existing (Figure 5). Egger’s test also indicated that there are no significant bias of selection (all P>0.1, data not shown).

Begg’s funnel plot of meta-analysis (C vs. T, fixed-effects model)

Figure 5
Begg’s funnel plot of meta-analysis (C vs. T, fixed-effects model)
Figure 5
Begg’s funnel plot of meta-analysis (C vs. T, fixed-effects model)
Close modal

In our study, heterogeneity was also evaluated. In dominant model, we identified significant heterogeneity. In order to explore the source of heterogeneity, subgroup analysis were harnessed. In subgroup analysis, we identified an association of the studies violated HWE, Asians, large sample size designed (≥1000 subjects), mixed GC, low quality studies and population-based study subgroups with major heterogeneity.

We conducted a sensitivity analysis to assess the stability of the present findings by omitting each study in turn. We calculated ORs and CIs of remainers to evaluate the influence of each study on the overall results. The findings indicated that no individual study could alter the overall assessment significantly (Figure 6), which validated the credibility of these observations.

Sensitivity analysis of the influence of C vs. T genetic model (fixed-effects model)

Figure 6
Sensitivity analysis of the influence of C vs. T genetic model (fixed-effects model)
Figure 6
Sensitivity analysis of the influence of C vs. T genetic model (fixed-effects model)
Close modal

Power of meta-analysis (α = 0.05)

In the present study, we calculated the power value in the overall comparison. The value was 0.891 in the allele model, 0.766 in the homozygote model and 0.704 in the recessive model.

Mir-499 may play an important role in the initial and progress of cancer. It was reported that mir-499-5p could promote progression of colorectal cancer and might be considered as a therapeutic target [2]. In addition, Qiu et al. identified that the rs3746444 T→C variant might lead to worse survival of lung cancer [31]. And this SNP was a useful cancer biomarker, which was implicated in the development and treatment of lung cancer. The relationship of mir-499 rs3746444 C-allele carriers with an increased susceptibility of cancer have been identified in some meta-analysis [8–10,12,13]. Of late, meta-analyses have tried to determine the correlation between this SNP and the risk of GC [8–13,32,33]. And all of them have obtained the null association, which maybe due to the limited literatures. A more recent study has focused on the correlation of rs3746444 and GC susceptibility with 2740 subjects [15]. And it reported that rs3746444 significantly increased the susceptibility of GCA. In this case–control study, we first recruited 1966 subjects (490 non-GCA patients and 1476 controls), and did not find any association between rs3746444 T>C SNP polymorphism and risk of non-GCA. Thus, the relationship of rs3746444 SNP in mir-499 with GC risk was more conflicting. In this meta-analysis, we included 12 case–control studies with 3954 GC cases and 9745 controls to explore the relationship of rs3746444 with GC risk. We first confirmed that rs3746444 SNP in mir-499 was associate with the susceptibility of overall GC, especially in GCA and Asians subgroups.

In this pooled-analysis, we included 12 independent studies. These literatures were conducted in different races. In view of these studies, the conflicting findings were observed, which made this pooled-analysis interesting and imperative. Cai et al.’s investigation, in eastern China, suggested that the mir-499 rs3746444 C-allele could promote a susceptibility of GC compared with mir-499 rs3746444 T allele [14]. Additionally, an another publication reported that mir-499 rs3746444 C-allele was also associated with the development of GC [15]. However, others could not find any relationship of rs3746444 SNP with GC risk [16–22]. The most vital characteristic of this meta-analysis was that the present study first confirmed the correlation between rs3746444 SNP in miR-499 and GC development. We also found that this potential association was significant, especially in Asians and GCA subgroups. Wang et al. have identified that mir-499, by reducing astrocyte elevated gene-1, plays a tumor-suppressive role in the development of hepatocellular carcinoma [34]. A previous study reported that, compared with the subjects with rs3746444 TT genotypes, individuals with mir-499 rs3746444 TC and CC genotypes have lower expression of miR-499a [35]. It is found that the rs3746444 in mir-499a gene is located on the seed region and affects the arm selection [36]. And as a result, a functional investigation indicated that mir-499 rs3746444 C-allele decrease the expression of the mir [36]. Thus, it is suggested that mir-499 rs3746444 C-allele promotes a susceptibility of GC by inhibiting the expression of the mir-499. It is reported that inclusion of articles violated the HWE may lead to bias. Here, if we excluded these studies, this SNP also conferred a risk to overall GC. It is worth noting that we did not find an association between rs3746444 SNP and non-GCA risk in the current case–control study, which was consistent with the results of meta-analysis in subgroup analyses. The mechanism of GC in different region may be diverse [37–41]. Mir-499 rs3746444 may play a different role in different type of GC. However, for lack of experimental data, we did not take them into account in the present study. In the future, more functional studies are needed to focus on the potential mechanism.

Two significant problems, publication bias and heterogeneity, should be discussed. No significant publication bias was detected in our study, indicating the dependability of these findings. Between publications for mir-499 rs3746444 SNP, we only detected a moderate heterogeneity in dominant genetic model. Subgroup analyses suggested an association of the studies violated HWE, Asians, large sample size designed (≥1000 subjects), mixed GC, low quality studies and population-based study subgroups with major heterogeneity. In addition, the power of the present study (α=0.05) was also evaluated. We found that the power value was 0.891 in the allele model, suggesting the reliability of our findings.

Despite the present study has pooled all publications and explored the association of rs3746444 with GC development, some limitations also should be addressed. First, only 12 independent case–control studies with 3954 GC cases and 9745 controls were eligible. Second, for lack of some important data (e.g. gender, age, the infection of helicobacter pylori, family history of cancer, tobacco using, alcohol consumption and other lifestyles), we only calculated the crude ORs with 95% CIs to determine the relationship of rs3746444 with GC susceptibility. The effect of those factors mentioned above was not taken into account. Thirdly, only the literatures published in English were eligible, which could lead to the bias of selection. Fourth, maybe it would be helpful to validate our findings with an independent cohort. However, due to lack of sufficient data, a cohort study was not performed. Finally, despite we first identified the relationship between rs3746444 and GC development, the function and mechanism of this polymorphism remained unknown.

In summary, our analysis confirmed the association between rs3746444 and the risk of GC, especially in Asians and in patients with GCA. Therefore, more studies are required to explore the potential mechanisms.

Full data are available via an online supplementary material. Supplementary Table S1 summarizes the guideline of Preferred Reporting Items for Meta-analyses. Supplementary Table S2 summarizes the detailed data of genotypes.

The authors declare that there are no competing interests associated with the manuscript.

This study was supported in part by Youth Research Fund Project of Fujian Provincial Health and Family Planning Commission [grant number 2017-1-43].

Conceived and designed the experiments: S.Z. and G.R. Performed the experiments: G.R. and Y.Z. Analyzed the data: G.R., W.T. and H.Q. Contributed reagents/materials/analysis tools: S.Z. Wrote the manuscript: G.R. and Y.Z. Other (please specify): None

We wish to thank Dr Yan Liu (Genesky Biotechologies Inc., Shanghai, China) for technical support.

GC

gastric cancer

GCA

gastric cardiac adenocarcinoma

HWE

Hardy–Weinberg equilibrium

SNP

single-nucleotide polymorphism

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Author notes

*

These authors contributed equally to this work.

This is an open access article published by Portland Press Limited on behalf of the Biochemical Society and distributed under the Creative Commons Attribution License 4.0 (CC BY).

Supplementary data