Literature DB >> 24039706

The associations of single nucleotide polymorphisms in miR-146a, miR-196a and miR-499 with breast cancer susceptibility.

Ping-Yu Wang1, Zong-Hua Gao, Zhong-Hua Jiang, Xin-Xin Li, Bao-Fa Jiang, Shu-Yang Xie.   

Abstract

BACKGROUND: Previous studies have investigated the association between single nucleotide polymorphisms (SNPs) located in microRNAs (miRNAs) and breast cancer susceptibility; however, because of their limited statistical power, many discrepancies are revealed in these studies. The meta-analysis presented here aimed to identify and characterize the roles of miRNA SNPs in breast cancer risk, and evaluate the associations of polymorphisms in miR-146a rs2910164, miR-196a rs11614913 and miR-499 rs3746444 with breast cancer susceptibility, respectively. METHODOLOGY/PRINCIPAL
FINDINGS: The PubMed and Embases databases were searched updated to 31(st) December, 2012. The complete data of polymorphisms in miR-146a rs2910164, miR-196a rs11614913 and miR-499 rs3746444 from case-control studies for breast cancer were analyzed by odds ratios (ORs) with 95% confidence intervals (CIs) to reveal the associations of SNPs in miRNAs with breast cancer susceptibility. Totally, six studies for rs2910164 in miR-146a, involving 4225 cases and 4469 controls; eight studies for rs11614913 in miR-196a, involving 4110 cases and 5100 controls; and three studies of rs3746444 in miR-499, involving 2588 cases and 3260 controls, were investigated in the meta-analysis. The rs11614913 (TT+CT) genotype of miR-196a2 was revealed to be associated with a decreased breast cancer susceptibility compared with the CC genotypes (OR = 0.906, 95% CI: 0.825-0.995, P = 0.039); however, no significant associations were observed between rs2910164 in miR-146a (or rs3746444 in miR-499) and breast cancer susceptibility.
CONCLUSIONS: This meta-analysis demonstrates the compelling evidence that the rs11614913 CC genotype in miR-196a2 increases breast cancer risk, which provides useful information for the early diagnosis and prevention of breast cancer.

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Year:  2013        PMID: 24039706      PMCID: PMC3767780          DOI: 10.1371/journal.pone.0070656

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

MicroRNAs (miRNAs) are non-coding RNA molecules that can act as tumor suppressor genes or oncogenes [1]. There are more than 1000 miRNA genes in the human genome [2]–[4], which regulate the translation or degradation of human messenger RNA (mRNA) by sequence complementarity [5]–[7]. MiRNAs regulate approximately 30% of human genes [8]. The genetic variants of a miRNA may affect its biogenesis and maturation [9], [10], which are causally linked to the pathogenesis of numerous diseases, including cancer [11], [12]. Several miRNA polymorphisms have been reported to affect miRNA processing or miRNA-mRNA interactions [12], [13]. Single nucleotide polymorphisms (SNPs) in miRNAs can be used as genetic markers to predict breast cancer susceptibility or prognosis. For example, a significant association was identified between polymorphism rs11614913 in miR-196a2 and breast cancer risk [14]. Breast cancer patients with the variant C allele in miR-146a produced higher levels of mature miR-146, which may predispose women to an earlier age of onset of familial breast cancer [15], [16]. The variant genotypes rs3746444 in miR-499 were also reported to be associated with significantly increased risks of breast cancer [17]. The rs6505162 with the CC genotype in miR-423 could reduce the risk of breast cancer development [18]. Nevertheless, some SNPs in miRNAs showed no association with breast cancer risk [19], [20]. Catucci et al. reported that the SNPs rs11614913 in miR-196a2, rs3746444 in mir-499 and rs2910164 in miR-146a were not related to breast cancer risk [19]. Jedlinski's study also did not support the association of polymorphism rs11614913 in miR-196a2 with breast cancer susceptibility [20]. Thus, there are many discrepancies concerning the relationship between SNPs in miRNA (miR-146a, miR-196a2, and miR-499) and breast cancer susceptibility, which may be attributed to sample sizes, different ethnic group and different miRNAs studied. Meta-analysis is statistical methods for contrasting and combining results from different studies, in the hope of identifying sources of disagreement among those results [21]. A meta-analysis allows derivation and statistical testing of overall factors and effect-size parameters, which can identify whether a publication bias exists or whether the results are more varied than what is expected from the sample diversity. Though several meta-analysis studies evaluating the roles of miRNA gene polymorphisms in cancer have been published, few meta-analysis studies have assessed the associations of three SNPs of miR-146a, miR-196a and miR-499 with breast cancer susceptibility. Therefore, we selected these three SNPs in this meta-analysis, according to two basic principles as established in a previous study [22]: first, the minor allele frequency of the SNP was not less than 5%; Secondly, only functional SNPs were selected. This meta-analysis aimed to resolve the discrepancies among the results of the associations of these miRNAs (miR-146a, miR-196a2, and miR-499) with breast cancer susceptibility.

Materials and Methods

Eligible studies and data extraction

PubMed and Embases databases were searched with the following terms: “breast cancer/carcinoma”, “polymorphism/variant”, “miR-146a/rs2910164”, “miR-196a2/rs11614913” or “miR-499/rs3746444”. The searched articles, published in English language updated to 31st December, 2012, were limited to human species, female sex and cancer subjects of adult patients (19+ years). All the titles and abstracts of searched articles were reviewed to exclude clearly irrelevant studies. The full texts of the remaining articles were read, and a manual search of the references from original studies was performed to identify additional articles of the same topic. All the case-control studies were studied according to the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) as a previous report [23]. The specific inclusion criteria as follows: (1) Case-control studies: cases are patients newly diagnosed with breast cancer, and the controls were subjects without breast cancer; (2) Odds ratios (ORs) with their 95% confidence intervals (95% CIs) are calculated from correct and sufficient polymorphism distribution data; (3) Correct statistical analysis. The strict exclusion criteria were: (1) Pure cell studies, non-breast cancer studies; (2) Articles that are not case-control studies; (3) Repeated or overlapped studies; (4) Articles with obvious mistakes. Two reviewers (Zong-Hua Gao and Xin-Xin Li) extracted data independently using standardized forms. The following characteristics were collected from each study if available: (1) publication year; (2) first author's name; (3) country origin; (4) ethnicity were categorized as Caucasian, and non-Caucasian; (5) genotyping methods; (6) total numbers of cases and controls; (7) miR-146a, miR-196a and miR-499 polymorphism distribution data, respectively; (8) P value for Hardy-Weinberg equilibrium (HWE) of controls. In case of disagreement, another reviewer (Zhong-Hua Jiang) resolved these disagreements according to the original data.

Statistical analysis

Deviation in the controls of all studies from HWE tests were carried out online using a web-based program (http://ihg.gsf.de/cgi-bin/hw/hwa1.pl), and P value <0.05 was considered significant. The ORs with their corresponding 95% CIs (homozygote comparison, heterozygote comparison, dominant model and recessive model, respectively) were calculated to analyze the associations of polymorphisms (rs2910164 in miR-146, rs11614913 in miR-196a2 and rs3746444 in miR-499) with breast cancer susceptibility. The significance of the pooled ORs was checked by the Z test, and statistical significance was defined as P value <0.05. Cochran Q test and estimating I test were used to evaluate whether the results from these studies were homogeneous [24], [25]. For Cochran Q test, P value <0.10 suggests heterogeneity among studies. As I test, I value <40% indicates “not important heterogeneity”, while a value >75% shows “considerable heterogeneity”. If presence of heterogeneity, the random effects model (DerSimonian Laird) was chosen. Otherwise, the fixed effects model (Mantel-Haenszel) was appropriately used to calculate the pooled ORs. Publication bias was evaluated using the Begg-Mazumdar adjusted rank correlation test and the Egger regression asymmetry test, P value <0.10 was considered as the representative of statistically significant publication bias [26], [27]. Sensitivity analysis was carried to assess the stability of these results. All Statistical analyses were carried out using STATA 11.0 software (STATA Corp, College Station, TX, USA).

Results

Characteristics of studies

Eligible studies were selected according to the inclusion and exclusion criteria (Figure 1). Thirty-one records were excluded by reviewing article titles and abstracts, including 16 records that did not focus on breast cancer and 15 records that were systematic reviews. Then, 14 full texts and related reference lists were read. Five records were excluded: 2 records were not case-control studies and 3 records were breast cancer diagnosis and therapy studies. The article published by Alshatwi contained discrepancies between the data shown in the tables and the data described in the results section [14]; therefore, after consultation with the author, these data were excluded. In Catucci's [19] and Linhares's [28] studies, the genotype frequencies were presented according to the subjects' country or race, as in previous reports [29], [30]; thus in the present analysis each group was considered as an independent study. Moreover, in some included articles, if two or more miRNA SNPs were investigated in an article, each miRNA SNP was considered as an independent study. Therefore, six studies, involving 4225 cases and 4469 controls, were ultimately analyzed for the SNP (rs2910164) in miR-146a [15], [17], [19], [31], [32]; eight studies, involving 4110 cases and 5100 controls, were performed for rs11614913 in miR-196a [17], [19], [20], [22], [28], [32]; and three studies, involving 2588 cases and 3260 controls, were tested for rs3746444 in miR-499 [17], [19], respectively.
Figure 1

Flow diagram of selection of studies with criteria for inclusion and exclusion.

Characteristics of the included studies were shown in Table 1. These studies were published from year 2009 to 2012. The subjects came from different countries (Australia, Brazil, China, France, Germany, Italy, and USA). Ethnicity was categorized as Caucasians or non-Caucasians population. Genotyping methods included polymerase chain reaction-restriction fragment length polymorphism (PCR-RFLP), TaqMan SNP genotyping assay and MassArray multiplex. Blood samples were used for genotyping in most studies. HWE was assessed by a chi-square test. The distribution of genotypes in the controls agreed with HWE (P>0.05) in most of the studies, but some parts of the data in Catucci's [19] and Linhares's [28] studies significantly departed from HWE (P<0.05). Begg-Mazumdar adjusted rank correlation test and the Egger regression asymmetry test were used to assess the publication bias of the currently available literature.
Table 1

Characteristics of the studies in the meta-analysis.

YearStudyCountryEthnicityGenotyping methodCaseControlCaseControlPHWE
miR-146a rs2910164GGCGCCGGCGCC
2011Garcia et alFranceCaucasianTaqman113059667638866352220240.150
2010Catucci et alGermanyCaucasianTaqman80590445130450536318500.753
2010Catucci et alItalyCaucasianTaqman754124340928659650520730.019
2010Pastrello et alItalyCaucasianTaqman8815553305905960.332
2009Hoffman et alUSACaucasianMassARRAY43947823417629273178270.775
2009Hu et alChinanon-CaucasianPCR-RFLP100910931655153291805513620.221

Main results

The meta-analysis results of the three SNPs in the miRNAs and breast cancer risk were shown in Table 2. There were no significant associations between polymorphisms rs2910164 in miR-146a and breast cancer susceptibility for all genetic models. Because the data for the Italy population group in Catucci's study [19] significantly departed from HWE (P = 0.019), we deleted the data to analyze the associations of rs2910164 in miR-146a with breast cancer susceptibility; no significant risk associations were observed between them.
Table 2

Meta-analysis results for the four polymorphisms and breast cancer risk. (OR, odds ratio; CI, confidence interval.)

Has-mir-146a (rs2910164)No. of studiesSample size (cases/controls)?2P-H I2(%)ModelOR(95%CI)zP-z
C vs G64225/44692.290.8080.0F1.036(0.968–1.108)1.020.308
CC vs GG64225/44692.630.7570.0F1.156(0.980–1.364)1.720.085
CC vs CG64225/44696.260.28220.1F1.103(0.955–1.274)1.330.183
CG+CC vs GG64225/44693.920.5620.0F1.022(0.932–1.120)0.460.644
CC vs GG+CG64225/44694.800.4410.0F1.102(0.960–1.264)1.380.168
has-mir-196a (rs11614913)
T vs C84110/510025.360.00172.5R0.994(0.875,1.129)0.100.924
TT vs CC84110/510025.650.00172.7R0.970(0.738–1.275)0.220.828
CT vs CC84110/51009.970.19029.8F0.970(0.882–1.067)0.630.530
TT vs CT+CC84110/510017.680.01360.4R0.952(0.791–1.147)0.510.609
TT+CT vs CC84110/510017.830.01360.7R0.987(0.836–1.165)0.150.877
has-mir-499 (rs3746444)
G vs A32588/32604.340.11453.9F1.100(0.960–1.260)1.370.171
GG vs AA32588/32604.170.12452.0F1.194(0.931–1.532)1.400.162
AG vs AA32588/32602.240.32710.6F1.090(0.972–1.223)1.480.139
GG vs AA+AG32588/32604.310.11653.5F1.156(0.905–1.477)1.160.247
GG+AG vs AA32588/32602.950.22932.1F1.107(0.992–1.235)1.810.070
When all the studies concerning SNP rs11614913 in miR-196a2 were pooled into this meta-analysis, no significant breast cancer risk was observed for any SNP genotype of miR-196a2. After excluding the Linhares's study [28], in which the distribution of miR-196a2 genotypes in controls deviated from the HWE (P = 0.008) and the included population was mixed, we found that the heterogeneities of the miR-196a2 SNP data were reduced and the genotypic results were more credible. In the comparision of genotypes (TT+CT) vs CC, obvious heterogeneity (Heterogeneity chi-square test = 17.83, P- = 0.013, I = 60.7%) was reduced to little heterogeneity (Heterogeneity chi-square test = 6.70, P- = 0.244, I = 25.3%). Then, the fixed effect model was used and a significant difference was observed between the (TT+CT) genotype and breast cancer susceptibility (OR 0.906, 95% CI: 0.825–0.995, P = 0.039, Figure 2). No significant risk associations with breast cancer susceptibility were demonstrated for the other SNP genotypes.
Figure 2

Forest plot for the association between miR-196a2 polymorphism and breast cancer risk.

(Significant difference was observed for the comparison of miR-196a2 polymorphism (TT+CT) vs. CC using a fixed-effects model. OR, odds ratio; CI, confidence interval.)

Forest plot for the association between miR-196a2 polymorphism and breast cancer risk.

(Significant difference was observed for the comparison of miR-196a2 polymorphism (TT+CT) vs. CC using a fixed-effects model. OR, odds ratio; CI, confidence interval.) Three studies of polymorphism rs3746444 in miR-499 were included in the meta-analysis. No significant risk associations with breast cancer susceptibility were revealed for any SNP of the miR-499 genotypes. No subgroup analysis was performed for the limited studies. Significant heterogeneities in the data of miR-196a2 rs11614913 SNPs were observed in Table 2. Then sources of this heterogeneity were evaluated systematically using meta-regression. The source of heterogeneity was found to be mainly related to the article publication year (t = 4.64, P = 0.004). Because the limit of the published article number, we did not perform the subgroup analysis by publication year. All the results for the three SNPs in the miRNAs obstained from random model or fixed model were similar. No publication bias was found in this meta-analysis using Begg's (P>0.05) and Egger's tests (P>0.05).

Discussion

MiRNAs have been linked to the etiology, progression and prognosis of cancer [33]. The gain or loss of SNPs in miRNA genes often affect the targeting gene function through the transcription [12]. To date, many studies have investigated the roles of SNPs in miRNAs in breast cancer susceptibility [14]–[18], [22], [31], [34], [35]. Among them, SNPs rs2910164 in miR-146a [36]–[38], rs11614913 in miR-196-a2 [14], [17], [29], [39], [40] and rs3746444 in miR-499 [14], [19], [41] are three SNPs that are commonly found in mature miRNA regions, which may contribute to breast cancer susceptibility. However, the results remain contradictory and inconclusive [14], [19], [20], [31]. Therefore, in this meta-analysis, we further explored the associations of these three SNPs (in miR-146a, miR-196-a2 and miR-499) with breast cancer risk. Polymorphism rs2910164 in miR-146a is located in the 3p strand and comprises a G to C change, which results in a change from a G∶U pair to a C∶U mismatch in the stem structure of the miR-146a precursor and alters the expression of mature miR-146a to influence cancer risk [42], [43]. To further explore whether miR-146a rs2910164 is associated with breast cancer susceptibility, 4225 cases and 4469 controls are investigated for miR-146a rs2910164 in this meta-analysis. Our results failed to find an association between polymorphism rs2910164 in miR-146a and breast cancer risk, similar to other studies [37], [38], [44], but is different to Lian's report, which showed that increased risk of breast cancer was associated with the CC genotype of rs2910164 in miR-146a in Europeans [36]. The difference between our study and Lian's study may be attributed to removing or taking the Italy population data in Catucci's study [19]. In our study, we found that the Italy population data in Catucci's study deviated from the HWE (P = 0.019) and removed this data from our meta-analysis. But, this data was calculated in Europeans in Lian's study [36]. Polymorphism rs11614913 in miR-196a2, which is located in the 3′ mature sequence of miR-196a2, may affect pre-miRNA maturation [12], [17]. Li et al. reported that the expression level of miR-196a was significantly higher in hepatocellular carcinoma patients with the CC genotype (or at least one C genotype) than in patients with the TT genotype [45]. Many studies showed that individuals carrying the CC genotype could suffer from significantly elevated the risk of breast cancer, lung cancer, gastric cancer, colorectal cancer and hepatocellular carcinoma compared to those with TT or TT+TC genotypes [44]–[46]. When all eligible studies were pooled into this meta-analysis, no significantly increased breast cancer risk was found. After excluding the data in which genotype distribution in the controls deviated from the HWE, the heterogeneities were reduced, revealing an association of the CC genotype of miR-196a2 SNP with an increased breast cancer risk compared with the TT+CT genotypes, which was consistent with our previous finding [47]. Our results provide the compelling evidence that polymorphism rs11614913 in miR-196a2 plays a crucial role in breast cancer development, and supports the view this SNP in miR-196a2 could be used as a candidate biomarker for the diagnosis of breast cancer risk. Polymorphism rs3746444 in miR-499 involves an A to G nucleotide substitution, which leads to a change from an A∶U pair to a G∶U mismatch in the stem structure of the miR-499 precursor [48]. A number of case-control studies have investigated the association of SNP in miR-499 with cancer risk in multiple types of cancer [46], [48], [49]. However, only a few epidemiological studies focused on the association between polymorphisms rs3746444 in miR-499 and breast cancer risk. Our meta-analysis failed to discover an obvious association between rs3746444 in miR-499 and breast cancer risk. The exact roles of miR-499 SNPs in breast cancer risk require further studies. Sample size is an important parameter for investigating the genetic effect of any SNP. Our meta-analysis provided higher and sufficient numbers of cases and controls than a single study, significantly increasing the statistical power. In addition, we assessed the qualities of the studies in this meta-analysis, which improved the reliability of the results. Although meta-analysis is robust, there are still several limitations in this study. First, our study did not evaluate any potential gene-gene interaction and gene-environment interactions. Second, our analysis was based on English publications, which may have introduced a language bias. Last, a lack of sufficient eligible studies limited further subgroup analyses. In conclusion, this study demonstrates that SNP rs11614913 in miR-196a2 plays a crucial role in the development of breast cancer. We found no significant associations of polymorphisms rs2910164 in miR-146 and rs3746444 in miR499 with breast cancer susceptibility. Well-designed studies with larger sample sizes are needed to confirm the roles of these miRNA polymorphisms in breast cancer risk. PRISMA 2009 Checklist for this Meta-analysis. (DOC) Click here for additional data file.
  48 in total

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Authors:  M Zhang; M Jin; Y Yu; S Zhang; Y Wu; H Liu; H Liu; B Chen; Q Li; X Ma; K Chen
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2.  Single nucleotide polymorphism in hsa-mir-196a-2 and breast cancer risk: a case control study.

Authors:  Dominik J Jedlinski; Plamena N Gabrovska; Stephen R Weinstein; Robert A Smith; Lyn R Griffiths
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3.  Phylogenetic shadowing and computational identification of human microRNA genes.

Authors:  Eugene Berezikov; Victor Guryev; José van de Belt; Erno Wienholds; Ronald H A Plasterk; Edwin Cuppen
Journal:  Cell       Date:  2005-01-14       Impact factor: 41.582

4.  [Strengthening the reporting of observational studies in epidemiology (STROBE): explanation and elaboration].

Authors:  Jan P Vandenbroucke; Erik Von Elm; Douglas G Altman; Peter C Gøtzsche; Cynthia D Mulrow; Stuart J Pocock; Charles Poole; James J Schlesselman; Matthias Egger
Journal:  Gac Sanit       Date:  2009-02-26       Impact factor: 2.139

5.  A genetic variant located in miR-423 is associated with reduced breast cancer risk.

Authors:  Robert A Smith; Dominik J Jedlinski; Plamena N Gabrovska; Stephen R Weinstein; Larisa Haupt; Lyn R Griffiths
Journal:  Cancer Genomics Proteomics       Date:  2012 May-Jun       Impact factor: 4.069

6.  Genetic variations in microRNA-related genes are associated with survival and recurrence in patients with renal cell carcinoma.

Authors:  Jie Lin; Yohei Horikawa; Pheroze Tamboli; Jessica Clague; Christopher G Wood; Xifeng Wu
Journal:  Carcinogenesis       Date:  2010-08-23       Impact factor: 4.944

7.  A variant in microRNA-196a2 is associated with susceptibility to hepatocellular carcinoma in Chinese patients with cirrhosis.

Authors:  Xiao-Dong Li; Zhi-Gao Li; Xian-Xu Song; Chun-Fu Liu
Journal:  Pathology       Date:  2010-12       Impact factor: 5.306

8.  Common genetic variants in pre-microRNAs were associated with increased risk of breast cancer in Chinese women.

Authors:  Zhibin Hu; Jie Liang; Zhanwei Wang; Tian Tian; Xiaoyi Zhou; Jiaping Chen; Ruifen Miao; Yan Wang; Xinru Wang; Hongbing Shen
Journal:  Hum Mutat       Date:  2009-01       Impact factor: 4.878

9.  Hsa-miR-196a2 Rs11614913 polymorphism contributes to cancer susceptibility: evidence from 15 case-control studies.

Authors:  Haiyan Chu; Meilin Wang; Danni Shi; Lan Ma; Zhizhong Zhang; Na Tong; Xinying Huo; Wei Wang; Dewei Luo; Yan Gao; Zhengdong Zhang
Journal:  PLoS One       Date:  2011-03-31       Impact factor: 3.240

10.  Heterogeneity in meta-analyses of genome-wide association investigations.

Authors:  John P A Ioannidis; Nikolaos A Patsopoulos; Evangelos Evangelou
Journal:  PLoS One       Date:  2007-09-05       Impact factor: 3.240

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1.  A functional polymorphism in microRNA-196a2 is associated with increased susceptibility to non-Hodgkin lymphoma.

Authors:  Tao Li; Lijuan Niu; Lili Wu; Xia Gao; Man Li; Wenxuan Liu; Lei Yang; Dianwu Liu
Journal:  Tumour Biol       Date:  2014-12-13

2.  Genetic variants in miR-196a2 and miR-499 are associated with susceptibility to esophageal squamous cell carcinoma in Chinese Han population.

Authors:  Fangyuan Shen; Jiejun Chen; Shicheng Guo; Yinghui Zhou; Yabiao Zheng; Yajun Yang; Junjie Zhang; Xiaofeng Wang; Chenji Wang; Dunmei Zhao; Mengyun Wang; Meiling Zhu; Lixia Fan; Jiaqing Xiang; Yong Xia; Qingyi Wei; Li Jin; Jiucun Wang; Minghua Wang
Journal:  Tumour Biol       Date:  2015-10-30

Review 3.  The role of microRNAs in human breast cancer progression.

Authors:  WenCheng Zhang; Jinbo Liu; Guangshun Wang
Journal:  Tumour Biol       Date:  2014-06-18

Review 4.  Regulation of the mRNA half-life in breast cancer.

Authors:  Paola Griseri; Gilles Pagès
Journal:  World J Clin Oncol       Date:  2014-08-10

5.  Associations of Polymorphisms in mir-196a2, mir-146a and mir-149 with Colorectal Cancer Risk: A Meta-Analysis.

Authors:  Liping Xu; Wenru Tang
Journal:  Pathol Oncol Res       Date:  2015-07-26       Impact factor: 3.201

6.  The miR-196a SNP Rs11614913 but not the miR-499 rs37464444 SNP is a Risk Factor for Non-small Cell Lung Cancer in an Iranian Population.

Authors:  Neda K Dezfuli; Ian M Adcock; Shamila D Alipoor; Babak Salimi; Sharareh Seifi; Mohammad Chehrazi; Mohammad Varahram; Esmaeil Mortaz
Journal:  Tanaffos       Date:  2022-01

7.  Meta-analysis of Hsa-mir-499 polymorphism (rs3746444) for cancer risk: evidence from 31 case-control studies.

Authors:  Chen Chen; Shenglan Yang; Sandip Chaugai; Yan Wang; Dao Wen Wang
Journal:  BMC Med Genet       Date:  2014-11-30       Impact factor: 2.103

8.  Association between three functional microRNA polymorphisms (miR-499 rs3746444, miR-196a rs11614913 and miR-146a rs2910164) and breast cancer risk: a meta-analysis.

Authors:  Hong Zhang; Yafei Zhang; Wanjun Yan; Wen Wang; Xixi Zhao; Xingcong Ma; Xiaoyan Gao; Shuqun Zhang
Journal:  Oncotarget       Date:  2017-01-03

Review 9.  Critical analysis of the potential for microRNA biomarkers in breast cancer management.

Authors:  Carrie R Graveel; Heather M Calderone; Jennifer J Westerhuis; Mary E Winn; Lorenzo F Sempere
Journal:  Breast Cancer (Dove Med Press)       Date:  2015-02-23

10.  The Associations of Single Nucleotide Polymorphisms in miR196a2, miR-499, and miR-608 With Breast Cancer Susceptibility: A STROBE-Compliant Observational Study.

Authors:  Zhi-Ming Dai; Hua-Feng Kang; Wang-Gang Zhang; Hong-Bao Li; Shu-Qun Zhang; Xiao-Bin Ma; Shuai Lin; Meng Wang; Yan-Jing Feng; Kang Liu; Xing-Han Liu; Peng Xu; Zhi-Jun Dai
Journal:  Medicine (Baltimore)       Date:  2016-02       Impact factor: 1.889

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