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A roadmap to multifactor dimensionality reduction methods

机译:多因素降维方法路线图

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摘要

Complex diseases are defined to be determined by multiple genetic and environmental factors alone as well as in interactions. To analyze interactions in genetic data, many statistical methods have been suggested, with most of them relying on statistical regression models. Given the known limitations of classical methods, approaches from the machine-learning community have also become attractive. From this latter family, a fast-growing collection of methods emerged that are based on the Multifactor Dimensionality Reduction (MDR) approach. Since its first introduction, MDR has enjoyed great popularity in applications and has been extended and modified multiple times. Based on a literature search, we here provide a systematic and comprehensive overview of these suggested methods. The methods are described in detail, and the availability of implementations is listed. Most recent approaches offer to deal with large-scale data sets and rare variants, which is why we expect these methods to even gain in popularity.
机译:复杂疾病的定义是单独由多种遗传和环境因素以及相互作用决定。为了分析遗传数据中的相互作用,已经提出了许多统计方法,其中大多数依赖于统计回归模型。鉴于经典方法的已知局限性,来自机器学习社区的方法也变得有吸引力。从后一个家族中,出现了一种快速增长的方法集合,这些方法基于多因素降维(MDR)方法。自从首次引入以来,MDR在应用程序中已广受欢迎,并且已多次扩展和修改。根据文献搜索,我们在此提供这些建议方法的系统且全面的概述。详细描述了这些方法,并列出了实现的可用性。最新的方法提供了处理大规模数据集和稀有变量的方法,这就是为什么我们希望这些方法会越来越受欢迎。

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