Laboratory of Biomedical Genomics and Oncogenetics, Institut Pasteur de Tunis, University of Tunis El Manar, Tunis, Tunisia.
Department of Genetic Medicine, Weill Cornell Medicine, New York, New York, United States of America.
PLoS One. 2022 Mar 25;17(3):e0265638. doi: 10.1371/journal.pone.0265638. eCollection 2022.
Significant advances have been made to understand the genetic basis of breast cancer. High, moderate and low penetrance variants have been identified with inter-ethnic variability in mutation frequency and spectrum. Genome wide association studies (GWAS) are widely used to identify disease-associated SNPs. Understanding the functional impact of these risk-SNPs will help the translation of GWAS findings into clinical interventions. Here we aim to characterize the genetic patterns of high and moderate penetrance breast cancer susceptibility genes and to assess the functional impact of non-coding SNPs. We analyzed BRCA1/2, PTEN, STK11, TP53, ATM, BRIP1, CHEK2 and PALB2 genotype data obtained from 135 healthy participants genotyped using Affymetrix Genome-Wide Human SNP-Array 6.0. Haplotype analysis was performed using Haploview.V4.2 and PHASE.V2.1. Population structure and genetic differentiation were assessed using principal component analysis (PCA) and fixation index (FST). Functional annotation was performed using In Silico web-based tools including RegulomeDB and VARAdb. Haplotype analysis showed distinct LD patterns with high levels of recombination and haplotype blocks of moderate to small size. Our findings revealed also that the Tunisian population tends to have a mixed origin with European, South Asian and Mexican footprints. Functional annotation allowed the selection of 28 putative regulatory variants. Of special interest were BRCA1_ rs8176318 predicted to alter the binding sites of a tumor suppressor miRNA hsa-miR-149 and PALB2_ rs120963 located in tumorigenesis-associated enhancer and predicted to strongly affect the binding of P53. Significant differences in allele frequencies were observed with populations of African and European ancestries for rs8176318 and rs120963 respectively. Our findings will help to better understand the genetic basis of breast cancer by guiding upcoming genome wide studies in the Tunisian population. Putative functional SNPs may be used to develop an efficient polygenic risk score to predict breast cancer risk leading to better disease prevention and management.
在理解乳腺癌的遗传基础方面已经取得了重大进展。已经确定了具有不同种族间突变频率和谱的高、中、低外显率变体。全基因组关联研究(GWAS)广泛用于识别与疾病相关的 SNP。了解这些风险 SNP 的功能影响将有助于将 GWAS 发现转化为临床干预措施。在这里,我们旨在描述高外显率和中外显率乳腺癌易感性基因的遗传模式,并评估非编码 SNP 的功能影响。我们分析了 135 名健康参与者的 BRCA1/2、PTEN、STK11、TP53、ATM、BRIP1、CHEK2 和 PALB2 基因型数据,这些数据是使用 Affymetrix Genome-Wide Human SNP-Array 6.0 获得的。使用 Haploview.V4.2 和 PHASE.V2.1 进行单倍型分析。使用主成分分析(PCA)和固定指数(FST)评估种群结构和遗传分化。使用 In Silico 基于网络的工具(包括 RegulomeDB 和 VARAdb)进行功能注释。单倍型分析显示出与高水平重组和中等至小大小单倍型块的不同 LD 模式。我们的研究结果还表明,突尼斯人口具有混合起源,具有欧洲、南亚和墨西哥的足迹。功能注释允许选择 28 个假定的调节变体。特别值得关注的是 BRCA1_ rs8176318,它被预测会改变肿瘤抑制 miRNA hsa-miR-149 的结合位点,而 PALB2_ rs120963 位于肿瘤发生相关增强子中,并且被预测会强烈影响 P53 的结合。rs8176318 和 rs120963 分别在非洲和欧洲血统的人群中观察到等位基因频率的显著差异。我们的研究结果将通过指导突尼斯人群的全基因组研究,帮助更好地理解乳腺癌的遗传基础。假定的功能 SNP 可用于开发有效的多基因风险评分,以预测乳腺癌风险,从而更好地进行疾病预防和管理。