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DETECTING STATISTICAL INTERACTION BETWEEN SOMATIC MUTATIONAL EVENTS AND GERMLINE VARIATION FROM NEXT-GENERATION SEQUENCE DATA

机译:从下一代序列数据检测体突变事件与种系变化之间的统计相互作用

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The two-hit model of carcinogenesis provides a valuable framework for understanding the role of DNA repair and tumor suppressor genes in cancer development and progression. Under this model, tumor development can initiate from a single somatic mutation in individuals that inherit an inactivating germline variant. Although the two-hit model can be an overgeneralization, the tendency for the pattern of somatic mutations to differ in cancer patients that inherit predisposition alleles is a signal that can be used to identify and validate germline susceptibility variants. Here, we present the Somatic-Germline Interaction (SGI) tool, which is designed to identify statistical interaction between germline variants and somatic mutational events from next-generation sequence data. SGI interfaces with rare-variant association tests and variant classifiers to identify candidate germline susceptibility variants from case-control sequencing data. SGI then analyzes tumor-normal pair next-generation sequence data to evaluate evidence for somatic-germline interaction in each gene or pathway using two tests: the Allelic Imbalance Rank Sum (AIRS) test and the Somatic Mutation Interaction Test (SMIT). AIRS tests for preferential allelic imbalance to evaluate whether somatic mutational events tend to amplify candidate germline variants. SMIT evaluates whether somatic point mutations and small indels occur more or less frequently than expected in the presence of candidate germline variants. Both AIRS and SMIT control for heterogeneity in the mutational process resulting from regional variation in mutation rates and inter-sample variation in background mutation rates. The SGI test combines AIRS and SMIT to provide a single, unified measure of statistical interaction between somatic mutational events and germline variation. We show that the tests implemented in SGI have high power with relatively
机译:两次致癌模型为理解DNA修复和肿瘤抑制基因在癌症发展和进展中的作用提供了有价值的框架。在该模型下,肿瘤发育可以从遗传灭活种系变体的个体中的单个体细胞突变开始。尽管两打击模型可以是过度概括,对于体细胞突变的图案的倾向在癌症患者的不同在于继承易感性等位基因是可以用来识别和确认种系易感性变体的信号。在这里,我们介绍了Somatic-Germline互动(SGI)工具,该工具旨在从下一代序列数据中识别种系变体与体细胞突变事件之间的统计相互作用。 SGI与稀有变体关联测试和变体分类器的界面,以识别来自壳体控制测序数据的候选种系敏感性变体。然后,SGI分析肿瘤正常对下一代序列数据,以评估每种测试中每个基因或途径中的体细胞种相互作用的证据:等位基因不平衡等级(空气)测试和体细胞突变相互作用试验(SMIT)。 AIRS测试优先等位基因不平衡,以评估躯体突变事件是否倾向于扩增候选种系变体。 SMIT评估是否在候选种系变体存在下或多或少地发生体细胞点突变和小型诱导。由于突变率的区域变化和背景突变率的互相变化而导致的突变过程中的空气和SMIT控制。 SGI测试结合了空气和SMIT,以提供体细胞突变事件和种系变异之间的单一统一统计相互作用的统计相互作用。我们表明,在SGI实施的测试具有相对的高功率

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