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Detecting disease-associated genomic outcomes using constrained mixture of Bayesian hierarchical models for paired data

机译:使用贝叶斯分层模型的受约束混合来检测与疾病相关的基因组结果以配对数据

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摘要

Detecting disease-associated genomic outcomes is one of the key steps in precision medicine research. Cutting-edge high-throughput technologies enable researchers to unbiasedly test if genomic outcomes are associated with disease of interest. However, these technologies also include the challenges associated with the analysis of genome-wide data. Two big challenges are (1) how to reduce the effects of technical noise; and (2) how to handle the curse of dimensionality (i.e., number of variables are way larger than the number of samples). To tackle these challenges, we propose a constrained mixture of Bayesian hierarchical models (MBHM) for detecting disease-associated genomic outcomes for data obtained from paired/matched designs. Paired/matched designs can effectively reduce effects of confounding factors. MBHM does not involve multiple testing, hence does not have the problem of the curse of dimensionality. It also could borrow information across genes so that it can be used for whole genome data with small sample sizes.
机译:检测与疾病相关的基因组结果是精密医学研究的关键步骤之一。前沿的高通量技术使研究人员能够公正地测试基因组结果是否与目标疾病有关。但是,这些技术还包括与全基因组数据分析相关的挑战。两个主要挑战是(1)如何减少技术噪音的影响; (2)如何处理维数的诅咒(即变量数量远大于样本数量)。为了解决这些挑战,我们提出了一种受约束的贝叶斯层次模型(MBHM)混合物,用于检测从配对/匹配设计获得的数据的与疾病相关的基因组结果。配对/匹配设计可以有效地减少混杂因素的影响。 MBHM不涉及多次测试,因此不存在维度诅咒的问题。它还可以借用跨基因的信息,以便将其用于样本量较小的整个基因组数据。

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