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Prediction of inherited genomic susceptibility to 20 common cancer types by a supervised machine-learning method

机译:有监督的机器学习方法预测对20种常见癌症的遗传基因组敏感性

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摘要

Prevention and early intervention are the most effective ways of avoiding or minimizing psychological, physical, and financial suffering from cancer. However, such proactive action requires the ability to predict the individual’s susceptibility to cancer with a measure of probability. Of the triad of cancer-causing factors (inherited genomic susceptibility, environmental factors, and lifestyle factors), the inherited genomic component may be derivable from the recent public availability of a large body of whole-genome variation data. However, genome-wide association studies have so far showed limited success in predicting the inherited susceptibility to common cancers. We present here a multiple classification approach for predicting individuals’ inherited genomic susceptibility to acquire the most likely phenotype among a panel of 20 major common cancer types plus 1 “healthy” type by application of a supervised machine-learning method under competing conditions among the cohorts of the 21 types. This approach suggests that, depending on the phenotypes of 5,919 individuals of “white” ethnic population in this study, (i) the portion of the cohort of a cancer type who acquired the observed type due to mostly inherited genomic susceptibility factors ranges from about 33 to 88% (or its corollary: the portion due to mostly environmental and lifestyle factors ranges from 12 to 67%), and (ii) on an individual level, the method also predicts individuals’ inherited genomic susceptibility to acquire the other types ranked with associated probabilities. These probabilities may provide practical information for individuals, heath professionals, and health policymakers related to prevention and/or early intervention of cancer.
机译:预防和早期干预是避免或最大程度减少癌症的心理,生理和财务痛苦的最有效方法。但是,这样的主动行动需要能够通过概率来预测个人对癌症的敏感性。在三大致癌因素(遗传的基因组易感性,环境因素和生活方式因素)中,遗传的基因组成分可能来自最近公开的大量全基因组变异数据。然而,迄今为止,全基因组关联研究表明,在预测常见癌症的遗传易感性方面取得的成功有限。我们在这里提出了一种多分类方法,通过应用有监督的机器学习方法在人群之间的竞争条件下,预测个体的遗传基因组易感性,以在20种主要的常见癌症类型和1种“健康”类型的面板中获得最可能的表型在21种类型中这种方法表明,根据这项研究中“白人”人群的5,919名个体的表型,(i)由于大多数遗传的基因组易感性因素而获得观察到的癌症类型的那部分人群的范围约为33到88%(或其推论:主要由环境和生活方式因素引起的比例在12%到67%之间),并且(ii)在个体层面上,该方法还预测了个体的遗传基因组易感性,从而获得了相关概率。这些概率可以为个人,健康专业人员和健康决策者提供与癌症的预防和/或早期干预有关的实用信息。

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