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Genomic Analysis Using Regularized Regression in High-Grade Serous Ovarian Cancer

机译:使用正态回归的高级别浆液性卵巢癌基因组分析。

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High-grade serous ovarian cancer (HGSOC) is a complex disease in which initiation and progression have been associated with copy number alterations, epigenetic processes, and, to a lesser extent, germline variation. We hypothesized that, when summarized at the gene level, tumor methylation and germline genetic variation, alone or in combination, influence tumor gene expression in HGSOC. We used Elastic Net (ENET) penalized regression method to evaluate these associations and adjust for somatic copy number in 3 independent data sets comprising tumors from more than 470 patients. Penalized regression models of germline variation, with or without methylation, did not reveal a role in HGSOC gene expression. However, we observed significant association between regional methylation and expression of 5 genes ( WDPCP, KRT6C, BRCA2, EFCAB13 , and ZNF283 ). CpGs retained in ENET model for BRCA2 and ZNF283 appeared enriched in several regulatory elements, suggesting that regularized regression may provide a novel utility for integrative genomic analysis.
机译:高度浆液性卵巢癌(HGSOC)是一种复杂的疾病,其中起始和进展与拷贝数改变,表观遗传过程以及种系变异(在较小程度上)相关。我们假设,在基因水平上总结时,单独或组合使用的肿瘤甲基化和种系遗传变异会影响HGSOC中的肿瘤基因表达。我们使用弹性网(ENET)惩罚回归方法评估了这些关联,并调整了3个独立数据集(包括来自470多例患者的肿瘤)中的体细胞拷贝数。带有或不带有甲基化的生殖系变异的惩罚性回归模型均未揭示HGSOC基因表达中的作用。但是,我们观察到区域甲基化与5个基因(WDPCP,KRT6C,BRCA2,EFCAB13和ZNF283)的表达之间存在显着关联。保留在ENET模型中的BRCA2和ZNF283的CpG似乎富含一些调控元素,这表明正则回归可能为整合基因组分析提供一种新颖的工具。

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