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Dissecting trait heterogeneity: a comparison of three clustering methods applied to genotypic data

机译:解剖性状异质性:比较三种聚类方法应用于基因型数据

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摘要

BackgroundTrait heterogeneity, which exists when a trait has been defined with insufficient specificity such that it is actually two or more distinct traits, has been implicated as a confounding factor in traditional statistical genetics of complex human disease. In the absence of detailed phenotypic data collected consistently in combination with genetic data, unsupervised computational methodologies offer the potential for discovering underlying trait heterogeneity. The performance of three such methods – Bayesian Classification, Hypergraph-Based Clustering, and Fuzzy k-Modes Clustering – appropriate for categorical data were compared. Also tested was the ability of these methods to detect trait heterogeneity in the presence of locus heterogeneity and/or gene-gene interaction, which are two other complicating factors in discovering genetic models of complex human disease. To determine the efficacy of applying the Bayesian Classification method to real data, the reliability of its internal clustering metrics at finding good clusterings was evaluated using permutation testing.
机译:背景特质异质性被认为是复杂人类疾病的传统统计遗传学中的一个混杂因素,该特质异质性是在特异度不足以定义为实际上是两个或多个不同特质的情况下存在的。在缺乏始终如一的收集与遗传数据相结合的详细表型数据的情况下,无监督的计算方法为发现潜在性状异质性提供了潜力。比较了适用于分类数据的三种此类方法(贝叶斯分类,基于超图的聚类和模糊k模式聚类)的性能。还测试了这些方法在存在基因座异质性和/或基因-基因相互作用的情况下检测性状异质性的能力,这是发现复杂人类疾病遗传模型的两个其他复杂因素。为了确定将贝叶斯分类方法应用于真实数据的功效,使用置换测试评估了其内部聚类指标在寻找良好聚类时的可靠性。

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