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Mutation-profile-based methods for understanding selection forces in cancer somatic mutations: a comparative analysis

机译:基于突变谱的理解体细胞突变选择力的方法:比较分析

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摘要

Human genes exhibit different effects on fitness in cancer and normal cells. Here, we present an evolutionary approach to measure the selection pressure on human genes, using the well-known ratio of the nonsynonymous to synonymous substitution rate in both cancer genomes (CN/CS) and normal populations (pN/pS). A new mutation-profile-based method that adopts sample-specific mutation rate profiles instead of conventional substitution models was developed. We found that cancer-specific selection pressure is quite different from the selection pressure at the species and population levels. Both the relaxation of purifying selection on passenger mutations and the positive selection of driver mutations may contribute to the increased CN/CS values of human genes in cancer genomes compared with the pN/pS values in human populations. The CN/CS values also contribute to the improved classification of cancer genes and a better understanding of the onco-functionalization of cancer genes during oncogenesis. The use of our computational pipeline to identify cancer-specific positively and negatively selected genes may provide useful information for understanding the evolution of cancers and identifying possible targets for therapeutic intervention.
机译:人类基因对癌症和正常细胞的适应性表现出不同的影响。在这里,我们提出一种进化的方法来测量人类基因的选择压力,使用癌症基因组(CN / CS)和正常人群(pN / pS)中非同义与同义替代率的众所周知的比率。开发了一种新的基于突变图谱的方法,该方法采用了样本特定的突变率图谱而不是传统的替代模型。我们发现,针对癌症的选择压力与物种和种群水平上的选择压力大不相同。与人类群体中的pN / pS值相比,放宽对乘客突变的纯化选择和对驱动子突变的正向选择都可能有助于增加人类基因组中人类基因的CN / CS值。 CN / CS值也有助于改善癌症基因的分类,并更好地理解癌发生过程中癌症基因的癌功能化。使用我们的计算流程来识别特定于癌症的阳性和阴性选择的基因可能会为了解癌症的演变以及确定可能的治疗干预目标提供有用的信息。

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