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Bayesian Detection of Expression Quantitative Trait Loci Hot Spots

机译:表达定量性状基因座热点的贝叶斯检测

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摘要

High-throughput genomics allows genome-wide quantification of gene expression levels in tissues and cell types and, when combined with sequence variation data, permits the identification of genetic control points of expression (expression QTL or eQTL). Clusters of eQTL influenced by single genetic polymorphisms can inform on hotspots of regulation of pathways and networks, although very few hotspots have been robustly detected, replicated, or experimentally verified. Here we present a novel modeling strategy to estimate the propensity of a genetic marker to influence several expression traits at the same time, based on a hierarchical formulation of related regressions. We implement this hierarchical regression model in a Bayesian framework using a stochastic search algorithm, HESS, that efficiently probes sparse subsets of genetic markers in a high-dimensional data matrix to identify hotspots and to pinpoint the individual genetic effects (eQTL). Simulating complex regulatory scenarios, we demonstrate that our method outperforms current state-of-the-art approaches, in particular when the number of transcripts is large. We also illustrate the applicability of HESS to diverse real-case data sets, in mouse and human genetic settings, and show that it provides new insights into regulatory hotspots that were not detected by conventional methods. The results suggest that the combination of our modeling strategy and algorithmic implementation provides significant advantages for the identification of functional eQTL hotspots, revealing key regulators underlying pathways.
机译:高通量基因组学可以对组织和细胞类型中的基因表达水平进行全基因组定量,并且与序列变异数据结合使用时,可以鉴定表达的遗传控制点(表达QTL或eQTL)。受单个遗传多态性影响的eQTL簇可以告知途径和网络调控的热点,尽管很少有热点被可靠地检测,复制或通过实验验证。在这里,我们根据相关回归的层次结构表示法,提出了一种新颖的建模策略,可用来估计遗传标记同时影响多个表达特征的倾向。我们使用随机搜索算法HESS在贝叶斯框架中实现此层次回归模型,该算法可以有效地探测高维数据矩阵中稀疏的遗传标记子集,以识别热点并查明单个遗传效应(eQTL)。通过模拟复杂的监管场景,我们证明了我们的方法优于当前的最新方法,尤其是在笔录数量很大的情况下。我们还说明了HESS在小鼠和人类遗传环境中对各种实际案例数据集的适用性,并表明它为常规方法未检测到的调节热点提供了新见解。结果表明,我们的建模策略和算法实现的结合为功能性eQTL热点的识别提供了显着优势,揭示了潜在的关键调控因子。

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