用于检测基因-基因相互作用的机器学习:综述。

Brett A McKinney, David M Reif, Marylyn D Ritchie, Jason H Moore
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引用次数: 0

摘要

已知基因和环境因素之间的复杂相互作用在常见的人类疾病病因学中起作用。越来越多的证据表明,复杂的相互作用是“常态”,而不是对经典孟德尔遗传学的一个小干扰,相互作用可能是主要的影响。传统的统计方法不适合检测这种相互作用,特别是当数据是高维的(许多属性或自变量)或当两个以上多态性之间发生相互作用时。在这篇综述中,我们讨论了用于识别和表征常见、复杂、多因素人类疾病易感基因的机器学习模型和算法。我们专注于以下已被用于检测基因-基因相互作用的机器学习方法:神经网络、细胞自动机、随机森林和多因素降维。最后,我们对如何将这些方法和其他方法集成到一个全面而灵活的人类遗传学数据挖掘和知识发现框架中提出了一些想法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for detecting gene-gene interactions: a review.

Complex interactions among genes and environmental factors are known to play a role in common human disease aetiology. There is a growing body of evidence to suggest that complex interactions are 'the norm' and, rather than amounting to a small perturbation to classical Mendelian genetics, interactions may be the predominant effect. Traditional statistical methods are not well suited for detecting such interactions, especially when the data are high dimensional (many attributes or independent variables) or when interactions occur between more than two polymorphisms. In this review, we discuss machine-learning models and algorithms for identifying and characterising susceptibility genes in common, complex, multifactorial human diseases. We focus on the following machine-learning methods that have been used to detect gene-gene interactions: neural networks, cellular automata, random forests, and multifactor dimensionality reduction. We conclude with some ideas about how these methods and others can be integrated into a comprehensive and flexible framework for data mining and knowledge discovery in human genetics.

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