Literature DB >> 33794810

New insights of the correlation between AXIN2 polymorphism and cancer risk and susceptibility: evidence from 72 studies.

Xi Li1,2,3, Yiming Li1,2,3, Guodong Liu4,5,6, Wei Wu7,8,9.   

Abstract

BACKGROUND: Numerous studies have reported the correlation between AXIN2 polymorphism and cancer risk, but the results seem not consistent. In order to get an overall, accurate and updated results about AXIN2 polymorphism and cancer risk, we conducted this study.
METHODS: An updated analysis was performed to analyze the correlation between AXIN2 polymorphisms and cancer risk. Linkage disequilibrium (LD) analysis was also used to show the associations.
RESULTS: Seventy-two case-control studies were involved in the study, including 22,087 cases and 18,846 controls. The overall results showed rs11079571 had significant association with cancer risk (allele contrast model: OR = 0.539, 95%CI = 0.478-0.609, PAdjust = 0.025; homozygote model: OR = 0.22, 95% CI = 0.164-0.295, PAdjust< 0.001; heterozygote model: OR = 0.292, 95% CI = 0.216-0.394, PAdjust< 0.001; dominant model: OR = 0.249, 95% CI = 0.189-0.33, PAdjust< 0.001). The same results were obtained with rs1133683 in homozygote and recessive models (PAdjust< 0.05), and in rs35285779 in heterozygote and dominant models (PAdjust< 0.05). LD analysis revealed significant correlation between rs7210356 and rs9915936 in the populations of CEU, CHB&CHS, ESN and JPT (CEU: r2 = 0.91; CHB&CHS: r2 = 0.74; ESN: r2 = 0.62, JPT: r2 = 0.57), and a significant correlation between rs9915936 and rs7224837 in the populations of CHB&CHS, ESN and JPT (r2>0.5), between rs7224837 and rs7210356 in the populations of CEU, CHB&CHS, JPT (r2>0.5), between rs35435678 and rs35285779 in the populations of CEU, CHB&CHS and JPT (r2>0.5).
CONCLUSIONS: AXIN2 rs11079571, rs1133683 and rs35285779 polymorphisms have significant correlations with overall cancer risk. What's more, two or more polymorphisms such as rs7210356 and rs9915936, rs9915936 and rs7224837, rs7224837 and rs7210356, rs35435678 and rs35285779 have significant correlation with cancer susceptibility in different populations.

Entities:  

Keywords:  AXIN2; Analysis; Cancer; Correlation; Polymorphism

Year:  2021        PMID: 33794810      PMCID: PMC8017882          DOI: 10.1186/s12885-021-08092-0

Source DB:  PubMed          Journal:  BMC Cancer        ISSN: 1471-2407            Impact factor:   4.430


Background

Cancer is currently one of the most important health problems across the world, and it has been well known as the second most common cause of death in the US. According to reports, the estimated data of Cancer Statistics show that 1,762,450 new cases of cancers will be diagnosed in the US in 2019, and 606,880 deaths will be confirmed [1]. Among which, prostate cancer, lung cancer, bronchus cancer and colorectal cancer will account for the top 4 common types in male cases, and breast, lung and colorectal cancers will be the top 3 most common types in female cases [1]. The data from National Central Cancer Registry of China reported that in 2015, 4292,000 new cancer cases and 2814,000 cancer deaths occurred in China, with lung cancer being the most common incident cancer and the leading cause of cancer death. Stomach, esophageal, and liver cancers were also commonly diagnosed and were identified as leading causes of cancer death [2]. In Europe, there were an estimated 3.91 million new cases of cancer and 1.93 million deaths from cancer in 2018, among which, the female breast, colorectal, lung and prostate cancer were the most common cancer sites [3]. In recent years, many studies have pointed out that genomic types may be closely related to the carcinogenic effects of cancers, one of which is the Axin-related protein, AXIN2 [4-7]. The AXIN2 gene locates at chromosome 17q23–24, which belongs to a heterozygosity region that frequently loss in neuroblastoma, breast cancer, and other cancers [8, 9]. For the biological function, AXIN2 is a critical regulator in Wnt/β-catenin signaling, especially for the stability of β-catenin, which plays an important role in cell growth, genesis of a number of malignancies, tumor progression and so on. For example, Chen et al. [10] reported that miR-183 could regulate bladder cancer cells growth and apoptosis via targeting AXIN2. A recent report by Chen et al. pointed out that down regulating AXIN2 expression could promote human osteosarcoma cell proliferation [11]. Another paper showed that targeting AXIN2 axis could suppress tumor growth and metastasis in colorectal cancer [12]. As the expression or protein structure may be influenced by gene polymorphism, some studies have taken insights in the correlation between AXIN2 and cancer susceptibility. Otero L et al. reported that rs2240308 polymorphism was associated with colorectal cancer (CRC) and the CRC patients who carried this variation in the AXIN2 gene always had a worse prognosis [13]. Zhong et al. showed that the Axin2–148 C/T polymorphism was significantly associated with a decreased risk of cancer, particularly lung cancer, in Asians and population-based controls [14]. Liu et al. showed that rs11655966, rs3923086 and rs7591 of AXIN2 showed significant associations with papillary thyroid carcinoma (PTC) [15]. However the available results remain inconsistent. For example, E•Pinarbasi et al. [16] reported that rs2240308 polymorphism had no significant correlation with the susceptibility of prostate cancer in the Turkish population, whereas Xu et al. [17] revealed that AXIN2 rs2240308 variants may be associated with decreased cancer susceptibility. At the same time, Dai et al. [18] concluded that AXIN2 rs2240308 polymorphism might decrease the susceptibility of lung and prostate cancers. Thus, we designed this meta-analysis to obtain updated and accurate insight to assess the association between AXIN2 polymorphism and cancer susceptibility.

Methods

Literature retrieval strategy and eligibility criteria

Wanfang, CNKI, CBM, EMBASE, Web of Science and PubMed databases were used to search the published papers before July, 2020 by using the keywords and MeSH terms of ‘Axin OR AXIN-2’ AND ‘carcinoma OR cancer OR tumor’ AND ‘SNP OR mutation OR polymorphism OR variant’. All publications in English and Chinese were involved, references were also evaluated manually to get more comprehensive studies. The studies that met the following criteria would be included: (1) case-control studies that were related to the correlation of AXIN-2 polymorphism and cancer susceptibility; (2) English or Chinese publications, and (3) genotype frequency were provided directly or indirectly. Conversely, the studies that met the following criteria would be excluded: (1) meta-analysis, reviews, case reports or duplicate publications; (2) data of genotype frequency was not informed; (3) data from cell lines or animals.

Data extraction

All data were examined by two independent researchers (Li X and Li YM). From which, the first author’s name, published data, total number of participants, subtypes like cancer type, source of control and ethnicity, genotyping method, and genotype frequency of the AXIN2 gene polymorphisms in all cases and controls were labeled and calculated. Any disagreement would be re-examined and discussed by the other researchers (Liu G and Wu W) and, if necessary, the author of the publications would be requested to provide more data.

Statistical analysis

In our study, we used five genetic models to evaluate the correlation of AXIN2 gene polymorphisms and cancer risk, including allele contrast model (B vs. A), homozygote comparison model (BB vs. AA), heterozygote comparison model (BA vs. AA), dominant comparison model (BB + BA vs. AA), and recessive comparison model (BB vs. BA+AA). The strength of the association was checked by OR with 95% CI, and the significant statistics was confirmed by Z-test and adjusted by Bonferroni corrections, P = P * 5 genetic models [19]. Subtypes like ethnicity, type of cancer and source of control were also evaluated by stratified analysis. The χ2-test was assessed to analyze the heterogeneity between studies. P < 0.1 meant a significant heterogeneity, and if so, we used the random effects model (DerSimonian and Laird methods) to summarize the data [20]; if not, the fixed effect model (Mantel-Haenszel method) was selected [21]. Hardy–Weinberg equilibrium (HWE) was performed for sensitivity analysis [22]. Begg’s funnel plots and Egger’s line regression test [23, 24] were performed to assess the potential publication bias. STATA software system v12.0 was used to perform statistical analysis. P ≤ 0.05 was considered as a statistically significant difference.

Linkage disequilibrium (LD) analysis

The data was acquired from 1000 Genomes Project which contains AXIN2 polymorphisms in the present research. Six groups including CEU (Utah residents with Northern and Western European ancestry from the CEPH collection), CHS (southern Han Chinese, China), CHB (Han Chinese in Beijing, China), ESN (Esan in Nigeria), YRI (Yoruba in Ibadan, Nigeria) and JPT (Japanese in Tokyo, Japan) were involved in the program. Haploview software was performed to analyze the data, and LD analysis was performed by r2 statistics.

Results

Details of included studies

Totally, 24 articles were included in this analysis, which contained 72 case-control studies (Fig. 1). Among which, three studies related to the linkage between rs11079571 polymorphism and cancer susceptibility [25-27], six studies focused on rs1133683 [16, 28–32], six studies concerned about rs2240307 [16, 28–30, 33, 34], 20 studies focused on rs2240308 [15, 16, 28–30, 32–44], four studies focused on rs35285779 [16, 28–30], four studies focused on rs35415678 [16, 28–30], five studies focused on rs3923086 [15, 25, 26, 34, 45], five studies focused on rs3923087 [25, 26, 34, 41, 45], three studies focused on rs4072245 [16, 28, 30], five studies focused on rs4791171 [25, 26, 34, 43, 45], four studies focused on rs7219582 [16, 28–30], three studies focused on rs7224837 [34, 41, 46], four studies focused on rs9915936 [16, 28–30]. Table 1 showed all details of the involved studies. Newcastle-Ottawa Scale (NOS) [40] was performed to assess the quality of each included study, and the results were showed in Table S1.
Fig. 1

Flow chart of select methods of the study

Table 1

Characteristics of the enrolled studies on AXIN2 Polymorphism and cancer

PolymorphismFirst authorYearEthnicityGenotyping MethodSource of ControlCancer TypeCasesControls
PAAPABPBBHAAHABHBBHWE
rs11079571Wang et al.2008CaucasionGoldenGatePBBreast Cancer3223353316221606Y
rs11079571Alanazi et al.2013AsianTaqManPBBreast Cancer18219455113745Y
rs11079571Zhang et al.2015AsianPCRPBAcute Leukemia19618020142170189Y
rs1133683Gunes et al.2009AsianPCRPBLung Cancer1722041042508Y
rs1133683Pinarbasi et al.2010AsianPCRHBProstate Cancer724872644488Y
rs1133683Gunes et al.2010AsianPCRHBAstrocytoma703062042508Y
rs1133683Davoodi et al.2015AsianPCR-RFLPPBOvarian Cancer3861210658348Y
rs1133683Rosales-Reynoso et al.2016CaucasionPCR-RFLPPBColorectal Cancer12425219225721Y
rs1133683Bahl et al.2017AsianPCR-RFLPPBLung Cancer19014063710316933N
rs2240307Gunes et al.2009AsianPCRPBLung Cancer96409550Y
rs2240307Pinarbasi et al.2010AsianPCRHBProstate Cancer81309820Y
rs2240307Gunes et al.2010AsianPCRHBAstrocytoma93709550Y
rs2240307Filho et al.2011CaucasionTaqManHBOral CancerPA = 182PB = 194HA = 212HB = 238NA
rs2240307Han et al.2016AsianPCRPBLung Cancer63271279365Y
rs2240307Bahl et al.2017AsianPCR-RFLPPBLung Cancer342340289160Y
rs2240308Kanzaki et al.2006AsianPCR-RFLPPBColorectal Cancer544415425215Y
rs2240308Kanzaki et al.2006AsianPCR-RFLPPBHead and neck Cancer25299425215Y
rs2240308Kanzaki et al.2006AsianPCR-RFLPPBLung Cancer81718425215Y
rs2240308Gunes et al.2009AsianPCRPBLung Cancer45478325216Y
rs2240308Gunes et al.2010AsianPCRHBAstrocytoma394516325216Y
rs2240308Ferna’ndez-Rozadilla et al.2010CaucasionMassARRAYHBColorectal Cancer252423168290442152Y
rs2240308Pinarbasi et al.2010AsianPCRHBProstate Cancer303519344818Y
rs2240308Naghibalhossaini et al.2011AsianPCR-RFLPPBColorectal Cancer345719559826Y
rs2240308Filho et al.2011CaucasionTaqManHBOral CancerPA = 196PB = 180HA = 226HB = 226NA
rs2240308Mostowska et al.2013CaucasionPCR-RFLPHBOvarian Cancer67115467114665Y
rs2240308Liu et al.2014AsianPCRPBLung Cancer2352164721125567Y
rs2240308Ma et al.2014AsianPCRHBProstate Cancer61311139529Y
rs2240308Aristizabal-Pachon et al.2015CaucasionPCR-RFLPPBBreast Cancer20582444553N
rs2240308Yadav et al.2015AsianPCR-RFLPPBGallbladder Cancer9810844192253119N
rs2240308Rosales-Reynoso et al.2016CaucasionPCR-RFLPPBColorectal Cancer2510954225918Y
rs2240308Kim et al.2016AsianGoldenGateHBHepatocellular Carcinoma1241001824619541Y
rs2240308Han et al.2016AsianPCRPBLung Cancer503418674310Y
rs2240308Kim et al.2016AsianDynamic 96.96 ArrayTM AssayPBLung Cancer16914247562436124N
rs2240308Liu et al.2016AsianMassARRAYHBPapillary Thyroid Carcinoma2724217294Y
rs2240308Bahl et al.2017AsianPCR-RFLPPBLung Cancer99150548114480Y
rs35285779Gunes et al.2009AsianPCRPBLung Cancer7720364288Y
rs35285779Pinarbasi et al.2010AsianPCRHBProstate Cancer6915061327Y
rs35285779Gunes et al.2010AsianPCRHBAstrocytoma7025564288Y
rs35285779Bahl et al.2017AsianPCR-RFLPPBLung Cancer255462248552Y
rs35415678Gunes et al.2009AsianPCRPBLung Cancer919086140Y
rs35415678Pinarbasi et al.2010AsianPCRHBProstate Cancer83109910Y
rs35415678Gunes et al.2010AsianPCRHBAstrocytoma8713086140Y
rs35415678Bahl et al.2017AsianPCR-RFLPPBLung Cancer257460261440Y
rs3923086Wang et al.2008CaucasionGoldenGatePBBreast Cancer238395164284419139Y
rs3923086Filho et al.2011CaucasionTaqManHBOral CancerPA = 172PB = 204HA = 212HB = 238NA
rs3923086Alanazi et al.2013AsianTaqManPBBreast Cancer274131164235Y
rs3923086Liu et al.2016AsianMassARRAYHBPapillary Thyroid Carcinoma478034151Y
rs3923086Parine et al.2019AsianTaqManPBColorectal Cancer485221415019Y
rs3923087Wang et al.2008CaucasionGoldenGatePBBreast Cancer4729245839278525Y
rs3923087Filho et al.2011CaucasionTaqManHBOral CancerPA = 70PB = 306HA = 130HB = 320NA
rs3923087Mostowska et al.2013CaucasionPCR-RFLPHBOvarian Cancer10841331497171Y
rs3923087Alanazi et al.2013AsianTaqManPBBreast Cancer453518245019Y
rs3923087Parine et al.2019AsianTaqManPBColorectal Cancer355632375023Y
rs4072245Gunes et al.2009AsianPCRPBLung Cancer7327080200Y
rs4072245Pinarbasi et al.2010AsianPCRHBProstate Cancer7311078220Y
rs4072245Gunes et al.2010AsianPCRHBAstrocytoma8218080200Y
rs4791171Wang et al.2008CaucasionGoldenGatePBBreast Cancer8333238361349433Y
rs4791171Filho et al.2011CaucasionTaqManHBOral CancerPA = 124PB = 252HA = 136HB = 316NA
rs4791171Alanazi et al.2013AsianTaqManPBBreast Cancer344421224417Y
rs4791171Yadav et al.2015AsianPCR-RFLPPBGallbladder Cancer351189788248228Y
rs4791171Parine et al.2019AsianTaqManPBColorectal Cancer405527384824Y
rs7219582Gunes et al.2009AsianPCRPBLung Cancer97309640Y
rs7219582Pinarbasi et al.2010AsianPCRHBProstate Cancer81309550Y
rs7219582Gunes et al.2010AsianPCRHBAstrocytoma91909640Y
rs7219582Bahl et al.2017AsianPCR-RFLPPBLung Cancer8720511422630N
rs7224837Filho et al.2011CaucasionTaqManHBOral Cancer3423440050NA
rs7224837Mostowska et al.2013CaucasionPCR-RFLPHBOvarian Cancer161616203718Y
rs7224837Jeanne et al.2015CaucasioniSelect genotyping arrayHBBladder Cancer646151661616917Y
rs9915936Gunes et al.2009AsianPCRPBLung Cancer919088120Y
rs9915936Pinarbasi et al.2010AsianPCRHBProstate Cancer77709280Y
rs9915936Gunes et al.2010AsianPCRHBAstrocytoma919088120Y
rs9915936Bahl et al.2017AsianPCR-RFLPPBLung Cancer268296249515Y

HB Hospital Based, PB Population Based, HWE Hardy Weinberg Equilibrium, Y polymorphisms conformed to HWE in the control group, N polymorphisms didn’t conform to HWE in the control group, NA not available

Flow chart of select methods of the study Characteristics of the enrolled studies on AXIN2 Polymorphism and cancer HB Hospital Based, PB Population Based, HWE Hardy Weinberg Equilibrium, Y polymorphisms conformed to HWE in the control group, N polymorphisms didn’t conform to HWE in the control group, NA not available

AXIN-2 polymorphism and risk of cancers

Thirteen polymorphisms of AXIN-2 were analyzed in the study. For rs11079571 polymorphism, two studies were related to breast cancer and another was involved in acute leukemia. Among which, two were about Asian population and one was based on Caucasian. The sources of all three controls were population based. All of the three genotype distributions of controls of rs11079571 studies were conformed to HWE, For the rs1133683 polymorphism, six studies met the criteria, including two lung cancers and one prostate cancer, astrocytoma, ovarian cancer and colorectal cancer, respectively. Among them, five studies related to Asian and one study concerned about Caucasion population. As to rs2240307 polymorphism, six studies were involved, three of them were about lung cancer, and the other three were about oral cancer, prostate cancer, astrocytoma, respectively. For the rs2240308 polymorphism, 20 studies were connected, among which, six were about lung cancer, four were about colorectal cancer, two were about prostate cancer, and another eight were about head and neck cancer, astrocytoma, oral cancer, ovarian cancer, breast cancer, gallbladder cancer, papillary thyroid carcinoma and hepatocellular carcinoma, respectively. Fifteen studies were Asian population based and five were Caucasion based. For rs35285779 polymorphism, two studies were about lung cancer, another two were about prostate cancer and astrocytoma, respectively. All the four studies were Asian population based. For rs35415678 polymorphism, two studies were connected to lung cancer and another two were about prostate cancer and astrocytoma, respectively. For rs3923086 polymorphism, five studies were involved, two of which were about breast cancer and another three were oral cancer, papillary thyroid carcinoma and colorectal cancer, respectively. For rs3923087 polymorphism, five studies were involved, two of which were about breast cancer and another three were oral cancer, ovarian cancer and colorectal cancer, respectively. For rs4072245 polymorphism, there studies were about lung cancer, prostate cancer and astrocytoma, respectively. For rs4791171 polymorphism, five studies were involved, two of which were about breast cancer and another three were colorectal cancer, oral cancer and gallbladder cancer, respectively. As to rs7219582 polymorphism, four studies were included, two of which were about lung cancer, and another two were prostate cancer and astrocytoma, respectively. For rs7224837 polymorphism, three studies were about oral cancer, ovarian cancer and bladder cancer, respectively. As to rs9915936 polymorphism, four studies were included, two of which were focused on lung cancer, and another two were about prostate cancer and astrocytoma, respectively. Table 2 and Table S2 showed the results about AXIN-2 polymorphisms and cancer susceptibility. There were significant associations in four genetic models between rs11079571 polymorphism and overall cancer risk, including allelic contrast model (B vs. A: OR = 0.539, 95%CI = 0.478–0.609, PAdjust = 0.025), homozygote comparison model (BB vs. AA: OR = 0.22, 95% CI = 0.164–0.295, PAdjust< 0.001), heterozygote comparison model (BA vs. AA: OR = 0.292, 95% CI = 0.216–0.394, PAdjust< 0.001) and dominant comparison model (BB + BA vs. AA: OR = 0.249, 95% CI = 0.189–0.33, PAdjust< 0.001), whereas, there was no significant association in recessive comparison model (BB vs. BA+AA: OR = 0.619, 95% CI = 0.531–0.723, PAdjust = 0.11). What’s more, the stratification analysis of ethnicity also reflected rs11079571 polymorphism risk to cancers in Asian population in B vs. A, BB vs. AA, BA vs. AA and BB + BA vs. AA models (PAdjust< 0.05). For cancer type analysis, rs11079571 polymorphism showed strong association with risk of breast cancer in BA vs. AA and BB + BA vs. AA models (PAdjust< 0.05) (Table 2, Figure S1). For rs1133683, which had significant association with overall cancer risk in BB vs. AA and BB vs. BA+AA models (PAdjust< 0.05), and with Asian population in BB vs. BA+AA model (PAdjust< 0.05), with population based (PB) source of control in BB vs. AA and BB vs. BA+AA models (PAdjust< 0.05) (Table 2, Figure S2). For rs2240308, which showed significant correlation with risk of Asian population in BA vs. AA and BB + BA vs. AA models (PAdjust< 0.05) (Table 2, Fig. 2). For rs35285779, it was revealed significant association with overall cancer risk in BA vs. AA and BB + BA vs. AA models (PAdjust< 0.05) (Table 2, Figure S4). For rs7219582, it showed significant relationship with lung cancer risk in BA vs. AA and BB + BA vs. AA models (PAdjust< 0.05) (Table 2, Figure S10). For rs9915936, which also informed significant association with risk of PB source and lung cancer in BA vs. AA model (PAdjust< 0.05), respectively (Table 2, Figure S12). As to rs2240307, rs35415678, rs3923086, rs3923087, rs4072245, rs4791171 and rs7224837 polymorphisms, the pooled analysis data didn’t show any correlation with cancers, not only in overall risk, but also in cancer type, ethnicity or source of control (Table S2, Figure S3, S5, S6, S7, S8, S9, S11).
Table 2

Results of pooled analysis for AXIN2 Polymorphism and cancer susceptibility

PolymorphismComparisonSubgroupNPHPZPAdjustOR & 95%CI (Random)OR & 95%CI (Fixed)
rs11079571B vs. AOverall3< 0.0010.0050.025*0.459(0.266–0.794)0.539(0.478–0.609)
rs11079571BB vs. AAOverall30.001< 0.001< 0.001*0.2(0.085–0.469)0.22(0.164–0.295)
rs11079571BA vs. AAOverall30.081< 0.001< 0.001*0.322(0.192–0.54)0.292(0.216–0.394)
rs11079571BB + BA vs. AAOverall30.08< 0.001< 0.001*0.265(0.162–0.433)0.249(0.189–0.33)
rs11079571BB vs. BA+ AAOverall3< 0.0010.0220.110.436(0.215–0.887)0.619(0.531–0.723)
rs11079571B vs. AAsian20.0020.0010.005*0.351(0.191–0.646)0.407(0.345–0.479)
rs11079571BB vs. AAAsian20.007< 0.001< 0.001*0.135(0.045–0.407)0.178(0.127–0.251)
rs11079571BA vs. AAAsian20.416< 0.001< 0.001*0.246(0.174–0.346)0.247(0.175–0.348)
rs11079571BB + BA vs. AAAsian20.575< 0.001< 0.001*0.216(0.157–0.297)0.215(0.156–0.295)
rs11079571BB vs. BA+ AAAsian2< 0.0010.0830.4150.311(0.083–1.166)0.463(0.368–0.582)
rs11079571B vs. ABreast Cancer2< 0.0010.1480.740.446 (0.150–1.332)0.594(0.507–0.697)
rs11079571BB vs. AABreast Cancer2< 0.0010.0560.280.182(0.032–1.047)0.209(0.133–0.329)
rs11079571BA vs. AABreast Cancer20.289< 0.001< 0.001*0.419(0.255–0.689)0.416(0.261–0.662)
rs11079571BB + BA vs. AABreast Cancer20.0410.0090.045*0.294(0.118–0.734)0.285(0.184–0.441)
rs11079571BB vs. BA+ AABreast Cancer2< 0.0010.20210.356(0.073–1.74)0.63(0.52–0.764)
rs1133683B vs. AOverall6< 0.0010.6641.0001.076(0.773–1.498)1.14(1.021–1.273)
rs1133683BB vs. AAOverall6< 0.0010.0050.025*0.258(0.101–0.657)0.391(0.284–0.539)
rs1133683BA vs. AAOverall6< 0.0010.0360.182.079(1.048–4.126)2.298(1.948–2.71)
rs1133683BB + BA vs. AAOverall6< 0.0010.10.51.78(0.895–3.538)1.962(1.673–2.301)
rs1133683BB vs. BA+ AAOverall6< 0.001< 0.001< 0.001*0.162(0.08–0.328)0.206(0.152–0.278)
rs1133683B vs. AAsian5< 0.0010.21.0001.212(0.904–1.625)1.25(1.11–1.408)
rs1133683BB vs. AAAsian5< 0.0010.0260.130.283(0.093–0.858)0.469(0.329–0.67)
rs1133683BA vs. AAAsian5< 0.0010.010.052.51(1.247–5.052)2.627(2.203–3.132)
rs1133683BB + BA vs. AAAsian5< 0.0010.0250.1252.186(1.105–4.322)2.283(1.926–2.707)
rs1133683BB vs. BA+ AAAsian5< 0.001< 0.001< 0.001*0.154(0.062–0.383)0.21(0.15–0.295)
rs1133683B vs. APB4< 0.0010.8281.0001.051(0.67–1.651)1.146(1.01–1.302)
rs1133683BB vs. AAPB40.0060.0010.005*0.256(0.113–0.584)0.349(0.241–0.504)
rs1133683BA vs. AAPB4< 0.0010.1180.592.112(0.827–5.395)2.541(2.093–3.084)
rs1133683BB + BA vs. AAPB4< 0.0010.231.0001.773(0.696–4.515)2.142(1.777–2.582)
rs1133683BB vs. BA+ AAPB40.045< 0.001< 0.001*0.16(0.086–0.297)0.184(0.13–0.259)
rs1133683B vs. AHB20.0040.721.0001.127(0.587–2.163)1.12(0.895–1.401)
rs1133683BB vs. AAHB2< 0.0010.461.0000.265(0.008–8.979)0.556(0.291–1.062)
rs1133683BA vs. AAHB2< 0.0010.2491.0002.001(0.615–6.508)1.788(1.305–2.45)
rs1133683BB + BA vs. AAHB2< 0.0010.3611.0001.782(0.515–6.161)1.572(1.159–2.132)
rs1133683BB vs. BA+ AAHB2< 0.0010.1860.930.166(0.012–2.381)0.297(0.158–0.559)
rs1133683B vs. ALung Cancer20.0160.7671.0001.071(0.68–1.687)1.196(1.023–1.399)
rs1133683BB vs. AALung Cancer20.2280.0080.04*0.491(0.263–0.918)0.53(0.333–0.845)
rs1133683BA vs. AALung Cancer2< 0.0010.3171.0002.143(0.482–9.522)2.695(2.109–3.442)
rs1133683BB + BA vs. AALung Cancer2< 0.0010.3871.0001.888(0.448–7.959)2.36(1.86–2.995)
rs1133683BB vs. BA+ AALung Cancer20.39< 0.001< 0.001*0.21(0.136–0.325)0.212(0.138–0.328)
rs1133683B vs. AY5< 0.0010.8981.0001.028(0.673–1.571)1.036(0.899–1.193)
rs1133683BB vs. AAY5< 0.0010.0080.04*0.211(0.067–0.666)0.293(0.195–0.44)
rs1133683BA vs. AAY5< 0.0010.140.71.767(0.83–3.762)1.753(1.434–2.142)
rs1133683BB + BA vs. AAY5< 0.0010.2871.0001.512(0.706–3.241)1.499(1.236–1.818)
rs1133683BB vs. BA+ AAY5< 0.001< 0.001< 0.001*0.152(0.057–0.405)0.215(0.146–0.315)
rs2240308B vs. AOverall20< 0.0010.4021.0000.949(0.841–1.072)0.962(0.906–1.02)
rs2240308BB vs. AAOverall19< 0.0010.7221.0000.952(0.726–1.248)0.966(0.849–1.1)
rs2240308BA vs. AAOverall190.0160.0890.4450.887(0.773–1.018)0.915(0.834–1.004)
rs2240308BB + BA vs. AAOverall19< 0.0010.1760.880.895(0.763–1.051)0.923(0.846–1.007)
rs2240308BB vs. BA+ AAOverall19< 0.0010.9631.0001.005(0.811–1.246)1.006(0.895–1.13)
rs2240308B vs. AAsian150.010.0170.0850.867(0.772–0.974)0.879(0.815–0.947)
rs2240308BB vs. AAAsian150.0190.0720.360.799(0.626–1.021)0.806(0.686–0.946)
rs2240308BA vs. AAAsian150.2680.0020.01*0.828(0.731–0.939)0.84(0.753–0.937)
rs2240308BB + BA vs. AAAsian150.0660.0040.02*0.811(0.704–0.934)0.835(0.754–0.926)
rs2240308BB vs. BA+ AAAsian150.0530.2731.0000.889(0.721–1.097)0.874(0.754–1.013)
rs2240308B vs. ACaucasian5< 0.0010.1380.691.228(0.936–1.61)1.119(1.016–1.233)
rs2240308BB vs. AACaucasian4< 0.0010.0820.412.069(0.912–4.692)1.375(1.101–1.716)
rs2240308BA vs. AACaucasian40.0440.2241.0001.253(0.871–1.801)1.141(0.957–1.36)
rs2240308BB + BA vs. AACaucasian40.0020.1430.7151.421(0.888–2.274)1.198(1.014–1.414)
rs2240308BB vs. BA+ AACaucasian40.0010.1120.561.6(0.896–2.858)1.277(1.053–1.548)
rs2240308B vs. APB12< 0.0010.8941.0000.987(0.815–1.195)0.944(0.871–1.022)
rs2240308BB vs. AAPB12< 0.0010.9551.0001.012(0.67–1.529)0.919(0.777–1.087)
rs2240308BA vs. AAPB120.0640.3641.0000.924(0.78–1.096)0.913(0.81–1.028)
rs2240308BB + BA vs. AAPB12< 0.0010.6441.0000.949(0.762–1.183)0.911(0.814–1.019)
rs2240308BB vs. BA+ AAPB12< 0.0010.8931.0001.023(0.734–1.425)0.96(0.823–1.119)
rs2240308B vs. AHB80.1140.7191.0000.935(0.822–1.064)0.984(0.901–1.075)
rs2240308BB vs. AAHB70.3760.7051.0001.015(0.812–1.27)1.04(0.849–1.273)
rs2240308BA vs. AAHB70.0470.10.50.839(0.681–1.034)0.919(0.808–1.045)
rs2240308BB + BA vs. AAHB70.0430.1280.640.855(0.699–1.046)0.937(0.828–1.06)
rs2240308BB vs. BA+ AAHB70.6840.4441.0001.075(0.897–1.287)1.073(0.896–1.284)
rs2240308B vs. AColorectal Cancer40.150.0560.281.108(0.918–1.336)1.116(0.997–1.249)
rs2240308BB vs. AAColorectal Cancer40.1920.0310.1551.314(0.903–1.911)1.295(1.024–1.637)
rs2240308BA vs. AAColorectal Cancer40.20.5481.0001.031(0.779–1.363)1.057(0.882–1.266)
rs2240308BB + BA vs. AAColorectal Cancer40.1130.2521.0001.083(0.794–1.478)1.105(0.931–1.312)
rs2240308BB vs. BA+ AAColorectal Cancer40.5630.0360.181.241(1.011–1.524)1.245(1.015–1.527)
rs2240308B vs. AProstate Cancer20.0990.4521.0000.828(0.507–1.353)0.832(0.619–1.119)
rs2240308BB vs. AAProstate Cancer20.5090.9871.0001.004(0.539–1.869)1.005(0.54–1.871)
rs2240308BA vs. AAProstate Cancer20.0880.1270.6350.555(0.26–1.183)0.542(0.35–0.84)
rs2240308BB + BA vs. AAProstate Cancer20.0780.2191.0000.633(0.305–1.313)0.62(0.412–0.934)
rs2240308BB vs. BA+ AAProstate Cancer20.8720.391.0001.284(0.726–2.27)1.284(0.726–2.27)
rs2240308B vs. ALung Cancer6< 0.0010.1760.880.854(0.678–1.074)0.875(0.791–0.967)
rs2240308BB vs. AALung Cancer6< 0.0010.1990.9950.714(0.427–1.194)0.776(0.626–0.962)
rs2240308BA vs. AALung Cancer60.3170.0690.3450.868(0.736–1.023)0.873(0.755–1.01)
rs2240308BB + BA vs. AALung Cancer60.0220.2181.0000.827(0.648–1.056)0.857(0.747–0.983)
rs2240308BB vs. BA+ AALung Cancer60.0020.2721.0000.784(0.508–1.211)0.817(0.669–0.998)
rs2240308B vs. AY16< 0.0010.0990.4950.899(0.792–1.02)0.928(0.866–0.994)
rs2240308BB vs. AAY160.0010.2811.0000.862(0.659–1.129)0.904(0.78–1.048)
rs2240308BA vs. AAY160.0970.0180.090.843(0.732–0.972)0.874(0.786–0.971)
rs2240308BB + BA vs. AAY160.0080.030.150.838(0.714–0.983)0.875(0.792–0.967)
rs2240308BB vs. BA+ AAY160.0110.6041.0000.945(0.761–1.172)0.962(0.843–1.099)
rs2240308B vs. AN4< 0.0010.3471.0001.174(0.84–1.64)1.056(0.944–1.182)
rs2240308BB vs. AAN3< 0.0010.211.0001.961(0.684–5.618)1.199(0.922–1.561)
rs2240308BA vs. AAN30.0220.4681.0001.171(0.765–1.793)1.066(0.88–1.292)
rs2240308BB + BA vs. AAN30.0010.3471.0001.304(0.75–2.265)1.095(0.915–1.31)
rs2240308BB vs. BA+ AAN3< 0.0010.2431.0001.648(0.713–3.81)1.176(0.919–1.504)
rs35285779B vs. AOverall40.0680.0110.0550.603(0.409–0.889)0.632(0.496–0.806)
rs35285779BB vs. AAOverall40.3780.0380.190.43(0.194–0.955)0.368(0.176–0.77)
rs35285779BA vs. AAOverall40.3840.0090.045*0.685(0.513–0.915)0.684(0.514–0.909)
rs35285779BB + BA vs. AAOverall40.1550.0010.005*0.613(0.421–0.893)0.639(0.486–0.839)
rs35285779BB vs. BA+ AAOverall40.4480.0170.0850.473(0.219–1.025)0.408(0.195–0.853)
rs35285779B vs. APB20.1720.0340.170.691(0.442–1.08)0.711(0.519–0.975)
rs35285779BB vs. AAPB20.3520.1450.7250.452(0.147–1.388)0.443(0.148–1.323)
rs35285779BA vs. AAPB20.4340.1020.510.741(0.517–1.062)0.741(0.517–1.062)
rs35285779BB + BA vs. AAPB20.2570.0570.2850.702(0.467–1.054)0.713(0.504–1.01)
rs35285779BB vs. BA+ AAPB20.3930.1970.9850.498(0.163–1.52)0.488(0.164–1.452)
rs35285779B vs. AHB20.0410.1030.5150.508(0.226–1.145)0.535(0.365–0.783)
rs35285779BB vs. AAHB20.1310.0250.1250.262(0.028–2.443)0.317(0.116–0.868)
rs35285779BA vs. AAHB20.1610.0310.1550.592(0.305–1.149)0.598(0.375–0.954)
rs35285779BB + BA vs. AAHB20.0810.1040.520.519(0.236–1.144)0.535(0.344–0.833)
rs35285779BB vs. BA+ AAHB20.160.0430.2150.311(0.041–2.355)0.354(0.13–0.967)
rs35285779B vs. ALung Cancer20.1720.0340.170.691(0.442–1.08)0.711(0.519–0.975)
rs35285779BB vs. AALung Cancer20.3520.1450.7250.452(0.147–1.388)0.443(0.148–1.323)
rs35285779BA vs. AALung Cancer20.4340.1020.510.741(0.517–1.062)0.741(0.517–1.062)
rs35285779BB + BA vs. AALung Cancer20.2570.0570.2850.702(0.467–1.054)0.713(0.504–1.01)
rs35285779BB vs. BA+ AALung Cancer20.3930.1970.9850.498(0.163–1.52)0.488(0.164–1.452)
rs7219582B vs. AOverall40.3860.0770.3850.822(0.645–1.048)0.82(0.659–1.021)
rs7219582BA vs. AAOverall40.0350.5381.0000.75(0.3–1.873)0.491(0.344–0.7)
rs7219582BB + BA vs. AAOverall40.0450.5381.0000.758(0.313–1.833)0.51(0.358–0.727)
rs7219582B vs. ALung Cancer20.9410.0410.2050.789(0.629–0.99)0.789(0.629–0.99)
rs7219582BA vs. AALung Cancer20.399< 0.001< 0.001*0.394(0.265–0.586)0.394(0.265–0.585)
rs7219582BB + BA vs. AALung Cancer20.436< 0.001< 0.001*0.414(0.278–0.614)0.413(0.278–0.614)
rs9915936B vs. AOverall40.8730.0380.190.708(0.51–0.981)0.707(0.51–0.981)
rs9915936BA vs. AAOverall40.6680.0140.070.634(0.44–0.914)0.633(0.44–0.91)
rs9915936BB + BA vs. AAOverall40.7750.0210.1050.662(0.466–0.94)0.661(0.466–0.939)
rs9915936B vs. APB20.8060.0340.170.667(0.459–0.971)0.667(0.459–0.97)
rs9915936BA vs. AAPB20.5480.0090.045*0.567(0.369–0.871)0.566(0.369–0.87)
rs9915936BB + BA vs. AAPB20.6690.0160.080.607(0.404–0.913)0.607(0.404–0.912)
rs9915936B vs. AHB20.6190.6461.0000.855(0.436–1.677)0.854(0.436–1.674)
rs9915936BA vs. AAHB20.6080.6371.0000.848(0.425–1.692)0.847(0.425–1.689)
rs9915936BB + BA vs. AAHB20.6080.6371.0000.848(0.425–1.692)0.847(0.425–1.689)
rs9915936B vs. ALung Cancer20.8060.0340.170.667(0.459–0.971)0.667(0.459–0.97)
rs9915936BA vs. AALung Cancer20.5480.0090.045*0.567(0.369–0.871)0.566(0.369–0.87)
rs9915936BB + BA vs. AALung Cancer20.6690.0160.080.607(0.404–0.913)0.607(0.404–0.912)

P P value of Q test for heterogeneity test, P P value of meta-analysis, P Adjust P value by Bonferroni corrections, P = P * 5, P-B Population based, HWE Hardy Weinberg Equilibrium, Y polymorphisms conformed to HWE in the control group, N polymorphisms didn’t conform to HWE in the control group

* P value less than 0.05 was considered as statistically significant

Fig. 2

Correlation between AXIN2 rs2240308 polymorphism and cancer susceptibility in five genetic models

Results of pooled analysis for AXIN2 Polymorphism and cancer susceptibility P P value of Q test for heterogeneity test, P P value of meta-analysis, P Adjust P value by Bonferroni corrections, P = P * 5, P-B Population based, HWE Hardy Weinberg Equilibrium, Y polymorphisms conformed to HWE in the control group, N polymorphisms didn’t conform to HWE in the control group * P value less than 0.05 was considered as statistically significant Correlation between AXIN2 rs2240308 polymorphism and cancer susceptibility in five genetic models

Sensitivity analysis and publication bias

To check the influence of individual study on overall data, we applied sensitivity analysis, and the results of the pooled analysis proved that the OR value was not influenced by individual study (Fig. 3, S13 and Table S3). At the same time, to evaluate the publication bias, Begg’s funnel plot and Egger’s test were performed, and the results didn’t show asymmetric evidence (Fig. 4, S14 and Table S4).
Fig. 3

Sensitivity analysis of AXIN2 polymorphisms and overall cancers (B vs. A). The results of rs11079571, rs1133683, rs2240308, rs35285779, rs7219582, rs9915936 were presented in this figure. The dotted area represents the 95% confidence interval

Fig. 4

Begg’s plot for publication bias of AXIN2 polymorphisms and overall cancers (B vs. A). The results of rs11079571, rs1133683, rs2240308, rs35285779, rs7219582, rs9915936 were presented in this figure. The x-axis stands for the value of log (OR), and the y-axis stands for the value of natural logarithm of OR. The horizontal line stands for the overall estimated value of log (OR). The two diagonal lines in the figure represent the pseudo 95% confidence limits of the effect estimate

Sensitivity analysis of AXIN2 polymorphisms and overall cancers (B vs. A). The results of rs11079571, rs1133683, rs2240308, rs35285779, rs7219582, rs9915936 were presented in this figure. The dotted area represents the 95% confidence interval Begg’s plot for publication bias of AXIN2 polymorphisms and overall cancers (B vs. A). The results of rs11079571, rs1133683, rs2240308, rs35285779, rs7219582, rs9915936 were presented in this figure. The x-axis stands for the value of log (OR), and the y-axis stands for the value of natural logarithm of OR. The horizontal line stands for the overall estimated value of log (OR). The two diagonal lines in the figure represent the pseudo 95% confidence limits of the effect estimate

Linkage disequilibrium (LD) analysis of AXIN-2 polymorphisms

LD analysis was assessed to evaluate the inner interaction of each AXIN-2 polymorphism and the results were shown in Fig. 5. Obviously, there was significant LD between rs7224837 and rs7210356 in CEU populations (r2 = 0.91), the same as between rs7210356 and rs9915936 (r2 = 0.91), rs1133683 and rs4791171 (r2 = 0.85), rs35415678 and rs35285779 (r2 = 0.84). There was significant LD between rs7224837 and rs9915936 in CHB&CHS populations (r2 = 0.93), the same as between rs1133683 and rs4791171 (r2 = 0.93), rs1133683 and rs3923087 (r2 = 0.83). There was significant LD between rs7224837 and rs9915936 in ESN populations (r2 = 0.62), the same as between rs7210356 and rs9915936 (r2 = 0.62), rs1133683 and rs4791171 (r2 = 0.66). There was significant LD between rs7224837 and rs9915936 in JPT populations (r2 = 0.95), the same as between rs35415678 and rs35285779 (r2 = 0.90), rs1133683 and rs3923087 (r2 = 0.95), rs4791171 and rs3923087 (r2 = 0.95). There was significant LD between rs7210356 and rs7222033 in YRI populations (r2 = 0.67), the same as between rs9915936 and rs7222033 (r2 = 0.54).
Fig. 5

LD analysis for AXIN-2 polymorphisms in different populations acquired from 1000 Genomes Project. The value of r2 is showed in each square, and white colors represent no significant LD between different polymorphisms. CEU: Utah residents with Northern and Western European ancestry from the CEPH collection; CHB: Han Chinese in Beijing, China; CHS: Southern Han Chinese, China; ESN: Esan in Nigeria; JPT: Japanese in Tokyo, Japan; YRI: Yoruba in Ibadan, Nigeria

LD analysis for AXIN-2 polymorphisms in different populations acquired from 1000 Genomes Project. The value of r2 is showed in each square, and white colors represent no significant LD between different polymorphisms. CEU: Utah residents with Northern and Western European ancestry from the CEPH collection; CHB: Han Chinese in Beijing, China; CHS: Southern Han Chinese, China; ESN: Esan in Nigeria; JPT: Japanese in Tokyo, Japan; YRI: Yoruba in Ibadan, Nigeria

Discussion

AXIN2 plays an important role as a negative regulator in regulating β-catenin stability. As β-catenin was well studied as an important gene related to many cancers [47-50], the correlation between AXIN2 and tumor progression and metastasis have also been well reported by many studies in the past few decades. Xie et al. [51] reported AXIN2 can be targeted by miR143HG/miR-1275 to regulate breast cancer progression by modulating the Wnt/β-catenin pathway. Ren et al. [52] revealed that AXIN2 was a target of miR-454-3p and was involved in the activation of Wnt/β-catenin signaling, which can be suppressed by miR-454-3p to promote metastasis and the stemness of breast cancer. Chen et al. [11] demonstrated that AXIN2 could be down-regulated by miR-544, thus to promote human osteosarcoma cell proliferation. Lu et al. [53] reported that AXIN2 was identified to be a functional downstream target of miR-374a, and decreased expression of Axin2 could promote OS cell proliferation. Previous studies have also demonstrated the association between AXIN2 and cancer risk and susceptibility. Liu et al. [15] reported that AXIN2 rs11655966 and rs3923086 polymorphism had significant associations with papillary thyroid carcinoma. Aristizabal-Pachon et al. [42] showed significant association between AXIN2 rs151279728 and rs2240308 polymorphisms and breast cancer susceptibility. Ma et al. [40] concluded that there was a significant correlation between rs2240308 polymorphism and the susceptibility of prostate cancer, while E·Pinarbasi et al. [16] reported that there was no significant correlation between prostate cancer susceptibility and rs2240308 polymorphism in Turkish population. Judge from the studies related to AXIN2 polymorphism and cancer risk and susceptibility, the results seem not consistent. So, we preformed this meta-analysis to the current evidence for AXIN2 polymorphism to cancer risk. As the results showed in Figures and Tables, we concluded that AXIN2 rs11079571 had significant correlation with overall cancers and Asian population subtype. As for other polymorphisms, like rs1133683 and rs35285779 had significant correction with overall cancers in two genetic models (rs1133683, BB vs. AA and BB vs. BA+ AA) (rs35285779, BA vs. AA and BB + BA vs. AA), however, the others had no strong relationship with overall cancer risk. As to subtype cancers, rs11079571 showed significant correlation with breast cancer, rs1133683, rs7219582 and rs9915936 indicated significant correlation with lung cancer. What’s more, the LD analysis showed a significant LD between rs7224837 and rs7210356/rs9915936, as well as between rs9915936 and rs7210356/rs7224837, which means that maybe we should combine two or more polymorphisms to analysis the correlation between AXIN2 and cancer risk and susceptibility in future. At the same time, we must realize the limitations that exist in this study. Firstly, an enlarged numbers of articles that involved are needed in the analysis, especially for AXIN2 rs7224837 polymorphism. Secondly, when we searched the articles, we only involved the studies in English and Chinese, which may also cause bias for not involving other languages. Thirdly, for subtype analysis, we didn’t analyze every cancer for each polymorphism, which may lead to some shortcomings. Fourthly, gene-environment interactions were ignored in this study because of lack necessary data.

Conclusions

In conclusion, our updated study suggests that AXIN2 rs11079571, rs1133683 and rs35285779 polymorphisms are associated with overall cancer susceptibility, which may provide a new insight to understand the correlation between AXIN2 gene and cancer risk. What’s more, the combination of two or more polymorphisms may benefit us to better understand the function of AXIN2 polymorphisms in different populations. Future large scale and well-designed research are required to validate these effects in more detail. Additional file 1 : Table S1. Methodological quality of the included studies according to the Newcastle-Ottawa Scale. Table S2. Results of pooled analysis for AXIN2 Polymorphism and cancer susceptibility. Table S3. Details of the sensitivity analyses for AXIN2 polymorphism and urinary cancer risk. Table S4. P values of the Egger’s test for AXIN2 polymorphism. Additional file 2 : Figure S1. Meta-analysis ofAXIN2-rs11079571 polymorphism and overall cancer risk in 5 genetic models. Additional file 3 : Figure S2. Meta-analysis ofAXIN2-rs1133683 polymorphism and overall cancer risk in 5 genetic models. Additional file 4 : Figure S3. Meta-analysis ofAXIN2-rs2240307 polymorphism and overall cancer risk in 3 genetic models. Additional file 5 : Figure S4. Meta-analysis ofAXIN2-rs35285779 polymorphism and overall cancer risk in 5 genetic models. Additional file 6 : Figure S5. Meta-analysis ofAXIN2-rs35415678 polymorphism and overall cancer risk in 3 genetic models. Additional file 7 : Figure S6. Meta-analysis ofAXIN2-rs3923086 polymorphism and overall cancer risk in 5 genetic models. Additional file 8 : Figure S7. Meta-analysis ofAXIN2-rs3923087 polymorphism and overall cancer risk in 5 genetic models. Additional file 9 : Figure S8. Meta-analysis ofAXIN2-rs4072245 polymorphism and overall cancer risk in 3 genetic models. Additional file 10 : Figure S9. Meta-analysis ofAXIN2-rs4791171 polymorphism and overall cancer risk in 5 genetic models. Additional file 11 : Figure S10. Meta-analysis ofAXIN2-rs7219582 polymorphism and overall cancer risk in 5 genetic models. Additional file 12 : Figure S11. Meta-analysis ofAXIN2-rs7224837 polymorphism and overall cancer risk in 5 genetic models. Additional file 13 : Figure S12. Meta-analysis ofAXIN2-rs9915936 polymorphism and overall cancer risk in 5 genetic models. Additional file 14 : Figure S13. Sensitivity analysis ofAXIN2 polymorphism and overall cancer (Bvs.A). The results of rs2240307, rs35415678, rs3923086, rs3923087, rs4072245, rs4791171, rs7210356, rs7224837 were presented in this figure. The dotted area represents the 95% confidence interval. Additional file 15 : Figure S14. Begg’splot ofAXIN2 polymorphism and overall cancer (Bvs.A). The results of rs2240307, rs35415678, rs3923086, rs3923087, rs4072245, rs4791171, rs7224837 were presented in this figure. The x-axis stands for the value of log (OR), and the y-axis stands for the value of natural logarithm of OR. The horizontal line stands for the overall estimated value of log (OR). The two diagonal lines in the figure represent the pseudo 95% confidence limits of the effect estimate.
  39 in total

1.  miR-3120-5p promotes colon cancer stem cell stemness and invasiveness through targeting Axin2.

Authors:  Li Hongdan; Li Feng
Journal:  Biochem Biophys Res Commun       Date:  2018-01-04       Impact factor: 3.575

2.  TMEPAI/PMEPA1 inhibits Wnt signaling by regulating β-catenin stability and nuclear accumulation in triple negative breast cancer cells.

Authors:  Riezki Amalia; Mohammed Abdelaziz; Meidi Utami Puteri; Jongchan Hwang; Femmi Anwar; Yukihide Watanabe; Mitsuyasu Kato
Journal:  Cell Signal       Date:  2019-03-16       Impact factor: 4.315

3.  Esculetin suppresses tumor growth and metastasis by targeting Axin2/E-cadherin axis in colorectal cancer.

Authors:  Won Kyung Kim; Woong Sub Byun; Hwa-Jin Chung; Jedo Oh; Hyen Joo Park; Jae Sue Choi; Sang Kook Lee
Journal:  Biochem Pharmacol       Date:  2018-03-10       Impact factor: 5.858

4.  Snail and Axin2 expression predict the malignant transformation of oral leukoplakia.

Authors:  Xianglan Zhang; Ki-Yeol Kim; Zhenlong Zheng; Hyun Sil Kim; In Ho Cha; Jong In Yook
Journal:  Oral Oncol       Date:  2017-08-12       Impact factor: 5.337

5.  Cloning of the human homolog of conductin (AXIN2), a gene mapping to chromosome 17q23-q24.

Authors:  M Mai; C Qian; A Yokomizo; D I Smith; W Liu
Journal:  Genomics       Date:  1999-02-01       Impact factor: 5.736

6.  MiR-183 maintains canonical Wnt signaling activity and regulates growth and apoptosis in bladder cancer via targeting AXIN2.

Authors:  D Chen; S-G Li; J-Y Chen; M Xiao
Journal:  Eur Rev Med Pharmacol Sci       Date:  2018-08       Impact factor: 3.507

7.  c-Myb Enhances Breast Cancer Invasion and Metastasis through the Wnt/β-Catenin/Axin2 Pathway.

Authors:  Yihao Li; Ke Jin; Gabi W van Pelt; Hans van Dam; Xiao Yu; Wilma E Mesker; Peter Ten Dijke; Fangfang Zhou; Long Zhang
Journal:  Cancer Res       Date:  2016-04-05       Impact factor: 12.701

8.  Cancer statistics in China, 2015.

Authors:  Wanqing Chen; Rongshou Zheng; Peter D Baade; Siwei Zhang; Hongmei Zeng; Freddie Bray; Ahmedin Jemal; Xue Qin Yu; Jie He
Journal:  CA Cancer J Clin       Date:  2016-01-25       Impact factor: 508.702

9.  Variations in AXIN2 predict risk and prognosis of colorectal cancer.

Authors:  L Otero; E Lacunza; V Vasquez; V Arbelaez; F Cardier; F González
Journal:  BDJ Open       Date:  2019-10-16

10.  microRNA-544 promoted human osteosarcoma cell proliferation by downregulating AXIN2 expression.

Authors:  Ming Chen; Yong-Yi Liu; Min-Qing Zheng; Xin-Liang Wang; Xing-Hua Gao; Lin Chen; Guang-Ming Zhang
Journal:  Oncol Lett       Date:  2018-03-08       Impact factor: 2.967

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  1 in total

1.  Association of AXIN2 s2240308 C>T, rs1133683 C>T, rs7224837 A>G Polymorphisms with Susceptibility to Breast Cancer.

Authors:  Soheila Sayad; Mahdieh Abdi-Gamsae; Jamal Jafari-Nedooshan; Meraj Farbod; Seyed Alireza Dastgheib; Mojgan Karimi-Zarchi; Fatemeh Asadian; Hossein Neamatzadeh
Journal:  Asian Pac J Cancer Prev       Date:  2021-08-01
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