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BMC Cancer logoLink to BMC Cancer
. 2013 Oct 30;13:510. doi: 10.1186/1471-2407-13-510

Common low-penetrance risk variants associated with breast cancer in Polish women

Joanna K Ledwoń 1, Ewa E Hennig 1,2,, Natalia Maryan 1, Krzysztof Goryca 2, Dorota Nowakowska 3, Anna Niwińska 4, Jerzy Ostrowski 1,2
PMCID: PMC4228440  PMID: 24171766

Abstract

Background

Breast cancer is the most common type of cancer and the second leading cause of cancer-death among women in Poland. The known high-risk mutations account for 25% of familial aggregation cases and 5% of total breast cancer predisposition. Genome-wide association studies have identified a number of common low-penetrance genetic variants, but their contribution to disease risk differs between populations.

Methods

To verify selected associations with breast cancer susceptibility among Polish women, the replication study was performed, included 1424 women with breast cancer and 1788 healthy persons. Sixteen single-nucleotide polymorphisms (SNPs) were analyzed using TaqMan SNP Genotyping Assays. Allele frequency differences were tested using chi2-test implemented in PLINK v1.07 and Cochran-Armitage trend test was performed using R software.

Results

Significant differences (Bonferroni corrected p-valuecor ≤ 0.0197) in the frequency of alleles distribution between all cancer and control subjects were observed for four (rs2736098, rs13281615, rs1219648, rs2981582) out of 16 SNPs. The same result was obtained for group of patients without high-risk BRCA1/2 mutations. The rs1219648 (p-valuecor ≤ 6.73E-03) and rs2981582 (p-valuecor ≤ 6.48E-03) SNPs showed significant association with both familial and sporadic cancers. Additionally, rs2736098 (p-valuecor ≤ 0.0234) was associated with only sporadic cancers; also in group without carriers of high-risk mutation. All these associations revealed their significance also in Cochran-Armitage trend test. Opposite to other SNPs, rs2736098 was associated with a decreased risk of breast cancer.

Conclusion

The association of four known susceptibility SNPs, representing three individual loci, with breast cancer risk in Polish women was confirmed. One of them (rs2736098) seems to be specific for the Polish population. Due to the population differences in allele frequencies, identification of general genetic risk factors requires sets of association studies conducted on different populations.

Keywords: Breast cancer, Cancer susceptibility, Single nucleotide polymorphism, Genetic associations

Background

Breast cancer is the most commonly occurring cancer among women worldwide [1]. In Poland it accounts for over 20% of all malignant tumors and is the second most frequent cause of cancer-related death [2]. Although the majority of breast cancer cases are sporadic, a noticeable portion results from highly penetrating inherited mutation in susceptibility genes and family history remains the best predictor of their individual risk [3]. Among known predisposition genes, deleterious mutations in BRCA1 and BRCA2 confer the strongest effect on disease susceptibility and are associated with a lifetime risk of breast cancer of up to 85% for such mutation carriers [4,5].

Even though the impact of high-risk gene mutations is noticeable, they account for only about 25% of the familial risk and less than 5% of total breast cancer predisposition, as their frequencies in general population are very low [6]. It is suggested that remaining risk may result from a combination of multiple common variants, each conferring a small effect on breast cancer risk, with odds ratio (OR) usually between 1.2 and 1.5 [7,8]. According to the polygenic model, a large number of low-penetrance variants may have cumulative effect on both the overall risk of disease [9] and an early disease onset [10,11].

A number of common single-nucleotide polymorphisms (SNPs) associated with slightly modified risk of different cancers have been identified through genome-wide association studies (GWAS). By far, at least 22 GWAS were conducted for breast cancer on different populations revealing over 36 susceptibility loci[12]. Fifteen of them were consistently confirmed in other GWAS or large replication studies and meta-analyses [11,13-24].

Conducting analyses on different populations increases the chance for generalization of conclusions and identification of causal variants [25]. For its apparently high level of genetic homogeneity [26,27], the Polish population seems to be relevant for determining risk variants with relatively small, although significant, effect on cancer prevalence. In this study we focus on verification of selected associations with breast cancer risk among Polish women. Eleven SNPs were chosen for replication as commonly reported in different studies. Additional five variants were selected for evaluation based on data provided by Genetic Counseling of Cancer Center-Institute of Oncology in Warsaw as frequently observed in patients treated in Cancer Center. To our knowledge, by now only two of these SNPs were investigated for association with breast cancer susceptibility in Poland.

Methods

Studied population

The study was conducted at the Cancer Center-Institute of Oncology in Warsaw and blood samples were collected between 2003–2010. In total, 3212 women were included: 1424 with newly-diagnosed breast cancer (992 of less than 50 years of age at diagnosis) and 1788 healthy individuals. The personal and familial cancer history was acquired by comprehensive interviews for all patients. Cases representing families with at least one breast or ovarian cancer diagnosis in a first- or second-degree relative were considered as familial breast cancer. Patients with less than 50 years of age at the moment of diagnosis were considered as early-onset cases. The detailed study groups statistics are presented in Table 1.

Table 1.

Group statistics of study cohorts

  High risk mutation carriers * No BRCA1/2 mutation carriers Total Median age
Familial BCa (with family history)
168
617
785
43 (29–65)
Sporadic BCa (without family history)
75
564
639
45 (17–62)
All BCa cases
243
1181
1424
44 (17–65)
Controls - - 1788 58 (26–79)

* Women with any of BRCA1 mutations presented in Table 2. None of patients carried any of selected BRCA2 mutations.

All patients were tested for selected pathogenic mutations in BRCA1 and BRCA2 chosen as the most frequently occurred among Polish women with breast cancer [26,28]. For BRCA1, the whole sequence of exons 2, 5 and 20, and a part of exon 11 (nucleotides 2893 to 3502 from the beginning of this exon) were analyzed. The sequences of primers used for amplification of relevant fragments are listed in Additional file 1: Table S1. All identified mutations are presented in Table 2; women with at least one of these mutations were further considered as high-risk mutation carriers. For BRCA2, selected 11 mutations (G1408T, 5467insT, 6174delT, 6192delAT, 6675delTA, 8138del5, 9152delT, 9182-2A>G, 9326insA, C9610T, 9631delC) were directly sequenced and none of included patients carried any of these mutations. Healthy women were recruited primarily from the National Colorectal Cancer Screening Program, which enrolls healthy persons from the general population aged 50 years and older. All women exhibited no known history of cancer and normal results of mammography and screening colonoscopy. All patients and control subjects were Polish Caucasians recruited from two urban populations, Warsaw and Szczecin. The study was approved by the local ethics committee (Medical Center for Postgraduate Education and Cancer Center-Institute of Oncology, Warsaw, Poland) and all participants provided written informed consent. The study protocol conforms to the ethical guidelines of the 1975 Declaration of Helsinki.

Table 2.

Mutations detected in the selected regions of BRCA1 gene among study participants

Exon 2 Exon 5 Exon 11 – part * Exon 20
185delAG
T300G
3819del5
G5332A
 
 
3875del4
C5370T
 
 
4153delA
5382insC
 
 
4160delAG
 
    4184del4  

*Nucleotides 2893 to 3502 from the beginning of the exon 11 of BRCA1 gene.

SNP selection

Sixteen SNPs were selected for replication among Polish women (Table 3); 11 SNPs were chosen from the literature as consistently shown to be associated with breast cancer risk in various studies (8 SNPs from GWAS and 3 from candidate gene studies) [8,29-35]. Additional five SNPs were selected based on data provided by Genetic Counseling of Cancer Center-Institute of Oncology in Warsaw, Poland, as relatively frequent among coming forward patients. All five are missense variants in three genes: BRCA2 (3 SNPs), PALB2 and CDKN2A. One of these SNPs (rs1799944 in BRCA2) was previously reported to be associated with breast cancer in Cyprus [36]. For rs3731249 in CDKN2A, contribution to early onset breast cancer in Poland was suggested [37]. Remaining four SNPs have not, so far, been studied for association with breast cancer risk among Polish women.

Table 3.

SNPs selected for analysis

NCBI SNP Reference Cytogenetic Band Gene a Reference
rs17468277
2q33.1
ALS2CR12 (synonymous) (CASP8)b
[35]
rs13387042
2q35
intergenic
[32,33]
rs889312
5q11.2
MAP3K1 (upstream)
[8,33]
rs10941679
5p12
intergenic
[8,34]
rs2736098
5p15.33
TERT (synonymous)
[31]
rs13281615
8q24.21
intergenic
[8,33]
rs3731249
9p21.3
CDKN2A (missense; A148T)
[37], CO-Ic
rs1219648
10q26
FGFR2 (intron)
[30]
rs2981582
10q26
FGFR2 (intron)
[8,33]
rs3817198
11p15.5
LSP1 (intron)
[8]
rs766173
13q13.1
BRCA2 (missense; N289H)
CO-I
rs1799944
13q13.1
BRCA2 (missense; N991D)
[36], CO-I
rs28897710
13q13.1
BRCA2 (missense; T598A)
CO-I
rs3803662
16q12.1
TOX3/LOC643714 (between)
[8,32,33]
rs243865
16q13-q21
MMP2 (promoter)
[29]
rs152451 16p12.2 PALB2 (missense; Q559R) CO-I

a/NCBI ID of genes localized in proximity to the SNPs of interest (source: HapMap).

b/SNP rs17468277 is in strong LD (r2 = 1) with rs1045485 in CASP8 (D302H).

c/SNP selected based on the date provided by Genetic Counseling of Cancer Center and Institute of Oncology (CO-I) in Warsaw.

Genotyping

Genomic DNA was extracted from whole blood treated with EDTA using the QIAamp DNA mini Kit (Qiagen, Gernamy), following the manufacturer’s protocol. DNA samples quantity and quality were evaluated using a NanoDrop 1000 spectrophotometer (Thermo Fisher Scientific Inc., USA). The samples which passed quality control were adjusted to a final concentration of 50 ng/μl in Tris–EDTA buffer (pH = 8), with concentrations of Tris and EDTA not exceeding limits of 10 and 0.1 mM, respectively. Individual genotyping was performed using TaqMan SNP Genotyping Assays (Life Technologies, USA), SensiMix™ II Probe Kit (Bioline Ltd, United Kingdom) and a 7900HT Real-Time PCR system (Life Technologies, USA) in 384-well format.

Statistical analyses

Quality control of TaqMan genotyping results included: thresholds for maximum individual missingness for each of the SNPs < 0.05, maximum genotype missingness for each of the individuals < 0.05 and the Hardy-Weinberg disequilibrium < 0.001 for the control group. Associations were examined using allelic chi2-test implemented in PLINK v1.07 software (http://pngu.mgh.harvard.edu/purcell/plink/). Furthermore, the Cochran-Armitage trend test was performed using R software (http://www.r-project.org/), "coin" library. OR 95% confidence interval (CI) was estimated by normal approximation implemented in "epitools" package. The Bonferroni correction was used for multiple comparisons and p-valuecor < 0.05 was considered significant. The study sample size calculations were conducted with tools supported in "pwr" library, assuming equal sizes of groups and baseline allele frequency equal to frequency observed in control group. Calculations were performed for power equal 0.8 and significance threshold equal 0.05. Results of sample size calculations are presented in Additional file 2: Table S2.

Results

The vast majority of 1424 women with breast cancer included in this study were non high-risk BRCA1 or BRCA2 mutation carriers: only 243 (17.1%) patients had one of BRCA1 mutations indicated in Table 2 and none of them had any of 11 genotyped mutations in BRCA2. The number of patients with family cancer history was similar to the number of sporadic tumor cases (785 vs. 639), as shown in Table 1. The median age at diagnosis was 44, ranging from 17 to 85.

The differences (p-value ≤ 0.0314) were observed for seven out of 16 SNPs when allele frequencies between all cases and control subjects were assessed with the chi2-test and four of them (rs2736098, rs13281615, rs1219648, rs2981582) remained significantly associated after multiple testing adjustment (p-valuecor ≤ 0.0197) (Table 4 and Additional file 3: Table S3 for all results). The same four SNPs show significant association (p-valuecor ≤ 0.0116) with breast cancer susceptibility in group of patients tested negative for the high-risk mutations. The strongest association was observed for rs1219648 and rs2981582 (p-valuecor of 1.62E-05 and 1.46E-05, respectively). Both are located in intron 2 of FGFR2 encoding the fibroblast growth factor receptor 2 protein. The minor allele of rs2736098 located in TERT gene was associated (p-valuecor of 9.30E-04) with a decreased risk of breast cancer. Fourth SNP (rs13281615) was located in 8q24 locus, known as multicancer susceptibility region [38]. None of the 16 SNPs showed association after Bonferroni correction in the group of BRCA1 mutation carriers.

Table 4.

The significant SNP associations with breast cancer considering allelic and Cochran-Armitage trend tests

dbSNP ID a Region Gene b MA G1 vs G2 OR (95% CI) Allelic
Cochran-Armitage
p -value p -value cor p -value p -value cor
rs10941679
5p12
 
0.24
C vs N
1.14 (1.01-1.28)
2.97E-02
4.75E-01
2.71E-02
4.34E-01
 
 
 
 
C noMut vs N
1.15 (1.02-1.30)
2.29E-02
3.66E-01
2.04E-02
3.27E-01
 
 
 
 
S vs N
1.17 (1.01-1.35)
4.25E-02
6.80E-01
3.94E-02
6.31E-01
 
 
 
 
S noMut vs N
1.20 (1.03-1.40)
2.06E-02
3.29E-01
1.87E-02
2.99E-01
rs2736098
5p15.33
TERT
0.36
C vs N
0.77 (0.68-0.88)
5.81E-05
9.30E-04
5.51E-05
8.82E-04
 
 
 
 
C noMut vs N
0.78 (0.69-0.89)
2.37E-04
3.78E-03
2.25E-04
3.60E-03
 
 
 
 
C with Mut vs N
0.74 (0.57-0.94)
1.70E-02
2.73E-01
1.55E-02
2.48E-01
 
 
 
 
F vs N
0.81 (0.69-0.93)
4.68E-03
7.49E-02
4.56E-03
7.30E-02
 
 
 
 
F noMut vs N
0.80 (0.68-0.94)
8.63E-03
1.38E-01
8.25E-03
1.32E-01
 
 
 
 
S vs N
0.74 (0.63-0.87)
2.61E-04
4.17E-03
2.38E-04
3.80E-03
 
 
 
 
S noMut vs N
0.76 (0.64-0.90)
1.46E-03
2.34E-02
1.36E-03
2.18E-02
rs13281615
8q24.21
 
0.45
C vs N
1.19 (1.07-1.32)
1.23E-03
1.97E-02
1.17E-03
1.88E-02
 
 
 
 
C noMut vs N
1.21 (1.08-1.35)
7.23E-04
1.16E-02
6.77E-04
1.08E-02
 
 
 
 
F vs N
1.20 (1.06-1.35)
5.19E-03
8.31E-02
5.24E-03
8.39E-02
 
 
 
 
F noMut vs N
1.22 (1.06-1.39)
4.60E-03
7.36E-02
4.53E-03
7.25E-02
 
 
 
 
S vs N
1.18 (1.03-1.35)
1.61E-02
2.57E-01
1.42E-02
2.27E-01
 
 
 
 
S noMut vs N
1.20 (1.04-1.38)
1.09E-02
1.74E-01
9.61E-03
1.54E-01
rs1219648
10q26
FGFR2
0.41
C vs N
1.30 (1.17-1.45)
1.01E-06
1.62E-05
1.13E-06
1.81E-05
 
 
 
 
C noMut vs N
1.36 (1.22-1.52)
7.20E-08
1.15E-06
7.95E-08
1.27E-06
 
 
 
 
F vs N
1.26 (1.11-1.43)
4.21E-04
6.73E-03
3.76E-04
6.01E-03
 
 
 
 
F noMut vs N
1.33 (1.16-1.53)
4.02E-05
6.43E-04
3.24E-05
5.18E-04
 
 
 
 
S vs N
1.36 (1.19-1.56)
7.32E-06
1.17E-04
8.53E-06
1.36E-04
 
 
 
 
S noMut vs N
1.39 (1.20-1.59)
5.58E-06
8.92E-05
6.76E-06
1.08E-04
rs2981582
10q26
FGFR2
0.41
C vs N
1.31 (1.17-1.45)
9.10E-07
1.46E-05
1.17E-06
1.88E-05
 
 
 
 
C noMut vs N
1.35 (1.21-1.51)
1.20E-07
1.91E-06
1.54E-07
2.46E-06
 
 
 
 
F vs N
1.26 (1.11-1.43)
4.05E-04
6.48E-03
4.09E-04
6.54E-03
 
 
 
 
F noMut vs N
1.32 (1.15-1.51)
6.49E-05
1.04E-03
6.11E-05
9.77E-04
 
 
 
 
S vs N
1.37 (1.19-1.56)
5.70E-06
9.12E-05
7.67E-06
1.23E-04
 
 
 
 
S noMut vs N
1.38 (1.20-1.59)
5.69E-06
9.11E-05
7.97E-06
1.27E-04
rs3817198
11p15.5
LSP1
0.34
F vs N
1.16 (1.02-1.32)
2.45E-02
3.92E-01
2.36E-02
3.78E-01
 
 
 
 
F noMut vs N
1.16 (1.00-1.33)
4.46E-02
7.14E-01
4.34E-02
6.94E-01
rs3803662
16q12.1
TOX3
0.30
C vs N
1.13 (1.01-1.27)
3.14E-02
5.02E-01
3.22E-02
5.15E-01
 
 
 
 
C noMut vs N
1.16 (1.03-1.31)
1.30E-02
2.08E-01
1.35E-02
2.16E-01
 
 
 
 
F noMut vs N
1.16 (1.00-1.34)
4.45E-02
7.11E-01
4.53E-02
7.25E-01
        S noMut vs N 1.16 (1.00-1.35) 4.75E-02 7.61E-01 4.82E-02 7.71E-01

Bold denotes significant association after multiple testing adjustment (p-valuecor < 0.05). G1 vs. G2; compared groups of cases and controls, respectively, MA; minor allele (+) strand frequency, OR; odds ratio, CI; confidence interval, N; control, C; cancer (all cases), F; familial cancer, S; sporadic cancer, noMut; non-mutation carriers.

a/SNP identifier based on NCBI SNP database;

b/NCBI ID of genes localized in proximity to the SNPs of interest (source: HapMap).

SNPs rs2981582 and rs766173 are in the same linkage disequilibrium (LD) blocks with rs1219648 (r2 = 0,967) and rs1799944 (r2 = 1), respectively [39]. Consistent with expectations, both pairs indicate similar associations.

To further explore associations with breast cancer, we performed analyses separately in groups of familial and sporadic cases, with additional stratification based on mutations in high-risk genes. Two SNPs in FGFR2 show significant association with both familial and sporadic cases (p-valuecor ≤ 6.73E-03) (Table 4). Additionally, rs2736098 (TERT) was associated with sporadic cancers only (p-valuecor ≤ 0.0234). Results for both types of breast cancer did not change when carriers of high-risk mutation were excluded. All significant associations obtained in the chi2-test were confirmed by the Cochran-Armitage trend test analysis (Table 4).

Discussion

Several association studies support the polygenic inheritance model of breast cancer, showing increasing risk of disease when many predisposition variants of low effect size were combined [11,40]. However, strong bias of the association results, by highly penetrant genetic determinants, such as deleterious mutation in BRCA1 or BRCA2 gene, should be taken into account. Also, significant modification of breast cancer risk in BRCA1/2 mutation carriers was observed in association with selected low-penetrant risk alleles [41].

In this replication study, association of selected susceptibility SNPs with both familial and sporadic breast cancers was analyzed. Among studied patients, at least one from nine different BRCA1 mutations was shown in over 11% of sporadic cases and 21% of familial cancers, which is in agreement with previous findings for women in Poland [28].

From 16 susceptibility variants selected for analysis, four SNPs, representing three different loci, significantly associated (p-valuecor < 0.05) with breast cancer risk, both in group of all cases as in sporadic and familial cancer subgroups, and after exclusion of BRCA1 mutation carriers (Table 4). Two SNPs (rs1219648 and rs2981582) lie within intron 2 of FGFR2 gene, encoding a receptor tyrosine kinase which participates in activation of signaling pathways engaged in tumor induction and progression [42] and mediates breast cancer cell proliferation through D-type cyclins [43]. Amplification or overexpression of FGFR2 was observed in 5-10% of breast tumors [44] and breast cancer cell lines [45].

The association of FGFR2 variants with breast cancer risk was reported in several studies and is very well documented, with the strongest association observed for rs2981582 [8,30]. Minor allele of rs2981582 was found to correlate with positive family history of breast cancer [46-48] and early-onset of non-familial breast cancer [47]. Data provided by The Consortium of Investigators of Modifiers of BRCA1/2 (CIMBA) indicated that the FGFR2 locus associated with breast cancer in BRCA2 mutation carriers but not in BRCA1 mutation carriers [49,50]. This finding may reflect the differences in the distribution of tumor subtype. Rs2981582 is consistently most strongly associated with the estrogen receptor (ER)-positive/low grade tumors [23], which are more typical for BRCA2 mutation carriers and general population not selected for carrier status [51]. Consistently, our findings indicated higher OR and stronger association of both FGFR2 variants in groups of patients without BRCA1 mutations (Table 4). Possible correlation of FGFR2 risk alleles with gene expression was suggested, as intron 2 contains several putative transcription-factor binding sites [52]. However, relationship of risk allele rs2981582 with increased expression of FGFR2 has not been clarified yet [52,53].

SNP rs13281615 is located in a ‘gene desert’ on chromosome 8q24, where five independent cancer susceptibility loci were identified so far [54]. One loci, termed ‘region 2’ (stretched from 128.35-128.51 Mb), is specific for breast cancer only and tagged by rs13281615 [38]. Gene desert at 8q24 is located few hundred kilo bases telomeric to the proto-oncogene Myc. As multiple enhancer elements were identified in this region, it was suggested that they can regulate the transcription of Myc. One such element was shown to physically interact with Myc promoter via Tcf-4 transcription factor binding and this interaction affected c-Myc expression in an allele specific manner [55]. Overexpression of c-Myc was observed in breast cancer tissue [56]; its reduction inhibited breast tumor cells growth [57]. In agreement with our findings, SNP rs13281615 was associated with increased risk of breast cancer among people at higher risk (who have positive family cancer history or BRCA1/BRCA2 mutation) [17,48]. It was also shown that the association of rs13281615 was stronger for ER-positive disease, with no evidence of an association for ER-negative disease [58], although, no association with either BRCA1 or BRCA2 carriers was observed [19].

In recent years, the association of rs2736098 (5p15) with cancer risk at different locations was reported, especially for lung and bladder cancers [59-61]. For breast cancer, the reported findings have been controversial [31,60,62]. Haiman et al. [62] observed positive association of 5p15 locus with increased risk of breast cancer. In turn, Savage et al. [31] suggested protective effect of three correlated SNPs in this region, including rs2736098, among Polish women with positive family history. Similarly, in our study, rs2736098 minor allele was associated with reduced overall and sporadic breast cancer risk. For familial cancers, association was also observed, although not statistically significant after Bonferroni adjustment.

Rs2736098 is located in coding sequence of TERT gene, therefore it has been considered as a putative cancer susceptibility gene. TERT encodes the catalytic subunit of telomerase, which is crucial in cellular proliferation because counteracts telomere-dependent replicative aging [63]. In many types of cancer, TERT shows a high-level of expression, which possibly induces excessive cell growth and carcinogenesis [64]. Although rs2736098 is a synonymous polymorphism, it has been shown to be correlated with telomere length, however not with TERT expression [59]. On the other hand, rs2853669, which is in LD with rs2736098 (r2 = 0.79), was shown to be involved in allele specific regulation of telomerase activity in non-small cell lung cancer [65]. Therefore, rs2736098 might be just a tagging SNP of causal variant.

To our knowledge, this is the first such comprehensive study examining association of several potential low-penetrance breast cancer susceptibility loci among women in Poland. Beside rs2736098 in TERT, only the association of rs3731249 in CDKN2A was analyzed previously and significant correlation was identified for early-onset breast cancers [37]. Our study do not confirm this association in any of analyzed models. One of possible explanations of this discrepancy is that more invasive and aggressive types of cancers might have been included in previous study. Also, correction of significance for multiple testing was not conducted in that study, comparing with ours. However, lack of this SNP association, similarly like in case of studied BRCA1 variants, could be also explained by insufficient study sample size to detect such association (Additional file 2: Table S2) or SNP effect size lower than expected. The rs2736098 in TERT locus shows protective effect in both studies and it seems to be specific for the Polish women, indicating the benefit of studying small, homogenous populations for low-penetrance risk variants associations.

Conclusions

We confirmed the association of four SNPs representing three previously reported susceptibility loci with breast cancer risk among Polish women: FGFR2 (rs1219648 and rs2981582), TERT (rs2736098) and 8q24 (rs13281615). Noteworthy is that the minor allele of rs2736098, the synonymous polymorphism in TERT gene, was associated with a decreased risk of overall breast cancer, which by now was observed only among women in Poland. Due to the population differences in allele frequencies, identification of general genetic risk factors requires sets of association studies conducted on different populations. Our study confirmed some benefits of studying small and homogenous populations.

Abbreviations

OR: Odds ratio; SNP: Single-nucleotide polymorphism; GWAS: Genome-wide association studies; CI: Confidence interval; LD: Linkage disequilibrium; ER: Estrogen receptor.

Competing interests

The authors declare that they have no competing interests.

Authors’ contributions

Conceived and designed the experiments: JO and EH. Enrolled the patients and performed the experiments: JKL, NM, DN and AN. Analyzed the data: KG, JKL and EH. Wrote the manuscript: JKL and EH. All authors read and approved the final manuscript.

Pre-publication history

The pre-publication history for this paper can be accessed here:

http://www.biomedcentral.com/1471-2407/13/510/prepub

Supplementary Material

Additional file 1: Table S1

Primers used for amplification of relevant BRCA1 and BRCA2 fragments.

Click here for file (40KB, xls)
Additional file 2: Table S2

The calculation of sample size necessary for given effect detection with study power equal 0.8.

Click here for file (40KB, xls)
Additional file 3: Table S3

SNP associations according to allele frequency test and Cochran-Armitage trend test. Data for all 16 tested SNPs.

Click here for file (40KB, xls)

Contributor Information

Joanna K Ledwoń, Email: joanna.ledwon@gmail.com.

Ewa E Hennig, Email: hennige@coi.waw.pl.

Natalia Maryan, Email: natalia@maryan.pl.

Krzysztof Goryca, Email: kgoryca@gmail.com.

Dorota Nowakowska, Email: donow@coi.waw.pl.

Anna Niwińska, Email: annaniwinska@gmail.com.

Jerzy Ostrowski, Email: jostrowski@warman.com.pl.

Acknowledgments

This work was supported by PBZ-MNiSW-05/I/2007/01 grant from Polish Ministry of Science and Higher Education and 2011/01/B/NZ2/05374 grant from Polish National Center of Science.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Additional file 1: Table S1

Primers used for amplification of relevant BRCA1 and BRCA2 fragments.

Click here for file (40KB, xls)
Additional file 2: Table S2

The calculation of sample size necessary for given effect detection with study power equal 0.8.

Click here for file (40KB, xls)
Additional file 3: Table S3

SNP associations according to allele frequency test and Cochran-Armitage trend test. Data for all 16 tested SNPs.

Click here for file (40KB, xls)

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