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Detection of Quantitative Trait Associated Genes Using Cluster Analysis

机译:利用聚类分析检测与数量性状相关的基因

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Many efforts have been involved in association study of quantitative phenotypes and expressed genes. The key issue is how to efficiently identify phenotype-associated genes using appropriate methods. The limitations for the existing approaches are discussed. We propose a hierarchical mixture model in which the relationship between gene expressions and phenotypic values is described using orthogonal polynomials. Gene specific coefficient, which reflects the strength of association, is assumed to be sampled from a mixture of two normal distributions. The association status for a gene is determined based on which distribution the gene specific coefficient is sampled from. The statistical inferences are made via the posterior mean drawn from a Markov Chain Monte Carlo sample. The new method outperforms the existing methods in simulated study as well as the analysis of a mice data generated for obesity research.
机译:在定量表型和表达基因的关联研究中已经进行了许多努力。关键问题是如何使用适当的方法有效识别与表型相关的基因。讨论了现有方法的局限性。我们提出了一种分层混合模型,其中使用正交多项式描述了基因表达与表型值之间的关系。假设反映关联强度的基因特异性系数是从两种正态分布的混合物中取样的。基于从中采集基因特异性系数的分布来确定基因的关联状态。统计推断是通过从马尔可夫链蒙特卡洛样本中提取的后验均值得出的。新方法优于现有的模拟研究以及对肥胖研究产生的小鼠数据进行分析的方法。

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