a Epigenetics Unit; Department of Surgery and Cancer; Imperial College London ; UK.
b Department of Histopathology ; Hammersmith Hospital; Imperial College London ; UK.
Epigenetics. 2015;10(12):1121-32. doi: 10.1080/15592294.2015.1111504.
Germline pathogenic mutations in BRCA1 increase risk of developing breast cancer. Screening for mutations in BRCA1 frequently identifies sequence variants of unknown pathogenicity and recent work has aimed to develop methods for determining pathogenicity. We previously observed that tumor DNA methylation can differentiate BRCA1-mutated from BRCA1-wild type tumors. We hypothesized that we could predict pathogenicity of variants based on DNA methylation profiles of tumors that had arisen in carriers of unclassified variants. We selected 150 FFPE breast tumor DNA samples [47 BRCA1 pathogenic mutation carriers, 65 BRCAx (BRCA1-wild type), 38 BRCA1 test variants] and analyzed a subset (n=54) using the Illumina 450K methylation platform, using the remaining samples for bisulphite pyrosequencing validation. Three validated markers (BACH2, C8orf31, and LOC654342) were combined with sequence bioinformatics in a model to predict pathogenicity of 27 variants (independent test set). Predictions were compared with standard multifactorial likelihood analysis. Prediction was consistent for c.5194-12G>A (IVS 19-12 G>A) (P>0.99); 13 variants were considered not pathogenic or likely not pathogenic using both approaches. We conclude that tumor DNA methylation data alone has potential to be used in prediction of BRCA1 variant pathogenicity but is not independent of estrogen receptor status and grade, which are used in current multifactorial models to predict pathogenicity.
胚系致病性突变 BRCA1 增加乳腺癌发病风险。BRCA1 突变的筛查通常会发现致病性未知的序列变异,最近的工作旨在开发确定致病性的方法。我们之前观察到肿瘤 DNA 甲基化可以区分 BRCA1 突变型和 BRCA1 野生型肿瘤。我们假设我们可以根据携带未分类变异体的携带者的肿瘤 DNA 甲基化谱来预测变异体的致病性。我们选择了 150 个 FFPE 乳腺癌肿瘤 DNA 样本[47 个 BRCA1 致病性突变携带者、65 个 BRCAx(BRCA1 野生型)、38 个 BRCA1 测试变体],并使用 Illumina 450K 甲基化平台对其中一部分(n=54)进行了分析,其余样本用于亚硫酸氢盐焦磷酸测序验证。三个经过验证的标志物(BACH2、C8orf31 和 LOC654342)与序列生物信息学相结合,构建了一个模型,用于预测 27 个变体(独立测试集)的致病性。预测结果与标准多因素似然分析进行了比较。对于 c.5194-12G>A(IVS 19-12 G>A)(P>0.99),预测结果是一致的;两种方法都认为 13 个变体没有致病性或可能没有致病性。我们得出结论,肿瘤 DNA 甲基化数据本身有可能用于预测 BRCA1 变体的致病性,但不能独立于雌激素受体状态和分级,这些因素在当前用于预测致病性的多因素模型中被使用。