关联规则发现具有模拟复杂遗传效应的能力。

William S Bush, Tricia A Thornton-Wells, Marylyn D Ritchie
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引用次数: 7

摘要

基因分型技术的巨大进步建立了对快速、灵活的遗传关联研究分析方法的需求。常见的复杂疾病,如帕金森氏症或多发性硬化症,被认为涉及多个基因的相互作用,或独立或共同影响疾病风险。此外,多种潜在的特征,每一个都有自己的遗传基础,可以一起定义为一种疾病。这些效应——性状异质性、基因座异质性和基因-基因相互作用(上位性)——促成了常见遗传疾病的复杂结构。关联规则发现(Association Rule Discovery, ARD)通过搜索频繁项集来识别大规模数据中的基于规则的模式。在本研究中,我们应用Apriori(一种ARD算法)来模拟具有不同复杂程度的遗传数据。以先验信息差作为规则度量的Apriori在简单性状异质性、性状异质性和上位性的模拟情况下检测功能效应的能力较好,在性状异质性和位点异质性的模拟情况下检测功能效应的能力中等。此外,我们还说明了自引导规则归纳过程并不能显著提高检测这些影响的能力。这些结果表明,ARD是一个具有足够灵活性的框架来表征复杂的遗传效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association Rule Discovery Has the Ability to Model Complex Genetic Effects.

Dramatic advances in genotyping technology have established a need for fast, flexible analysis methods for genetic association studies. Common complex diseases, such as Parkinson's disease or multiple sclerosis, are thought to involve an interplay of multiple genes working either independently or together to influence disease risk. Also, multiple underlying traits, each its own genetic basis may be defined together as a single disease. These effects - trait heterogeneity, locus heterogeneity, and gene-gene interactions (epistasis) - contribute to the complex architecture of common genetic diseases. Association Rule Discovery (ARD) searches for frequent itemsets to identify rule-based patterns in large scale data. In this study, we apply Apriori (an ARD algorithm) to simulated genetic data with varying degrees of complexity. Apriori using information difference to prior as a rule measure shows good power to detect functional effects in simulated cases of simple trait heterogeneity, trait heterogeneity and epistasis, and moderate power in cases of trait heterogeneity and locus heterogeneity. Also, we illustrate that bootstrapping the rule induction process does not considerably improve the power to detect these effects. These results show that ARD is a framework with sufficient flexibility to characterize complex genetic effects.

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