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Grammatical Evolution Decision Trees for Detecting Gene-Gene Interactions

机译:用于检测基因-基因相互作用的语法进化决策树

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摘要

A fundamental goal of human genetics is the discovery of polymorphisms that predict common, complex diseases. It is hypothesized that complex diseases are due to a myriad of factors including environmental exposures and complex genetic risk models, including gene-gene interactions. Such interactive models present an important analytical challenge, requiring that methods perform both variable selection and statistical modeling to generate testable genetic model hypotheses. Decision trees are a highly successful, easily interpretable data-mining method that are typically optimized with a hierarchical model building approach, which limits their potential to identify interactive effects. To overcome this limitation, we utilize evolutionary computation, specifically grammatical evolution, to build decision trees to detect and model gene-gene interactions. Currently, we introduce the Grammatical Evolution Decision Trees (GEDT) method, and demonstrate that GEDT has power to detect interactive models in a range of simulated data, revealing GEDT to be a promising new approach for human genetics.
机译:人类遗传学的基本目标是发现预测常见,复杂疾病的多态性。据推测,复杂的疾病是由多种因素引起的,包括环境暴露和复杂的遗传风险模型,包括基因-基因相互作用。这种交互式模型提出了重要的分析挑战,要求方法同时执行变量选择和统计建模以生成可检验的遗传模型假设。决策树是一种非常成功,易于解释的数据挖掘方法,通常通过分层模型构建方法进行优化,这限制了它们识别交互效果的潜力。为了克服此限制,我们利用进化计算,特别是语法进化,来构建决策树以检测和建模基因-基因相互作用。当前,我们介绍了语法进化决策树(GEDT)方法,并证明GEDT有能力检测一系列模拟数据中的交互模型,这表明GEDT是一种有前途的人类遗传学新方法。

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