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Coalescent-Based Association Mapping and Fine Mapping of Complex Trait Loci

机译:基于聚结的关联映射和复杂性状位点的精细映射

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摘要

We outline a general coalescent framework for using genotype data in linkage disequilibrium-based mapping studies. Our approach unifies two main goals of gene mapping that have generally been treated separately in the past: detecting association (i.e., significance testing) and estimating the location of the causative variation. To tackle the problem, we separate the inference into two stages. First, we use Markov chain Monte Carlo to sample from the posterior distribution of coalescent genealogies of all the sampled chromosomes without regard to phenotype. Then, averaging across genealogies, we estimate the likelihood of the phenotype data under various models for mutation and penetrance at an unobserved disease locus. The essential signal that these models look for is that in the presence of disease susceptibility variants in a region, there is nonrandom clustering of the chromosomes on the tree according to phenotype. The extent of nonrandom clustering is captured by the likelihood and can be used to construct significance tests or Bayesian posterior distributions for location. A novelty of our framework is that it can naturally accommodate quantitative data. We describe applications of the method to simulated data and to data from a Mendelian locus (CFTR, responsible for cystic fibrosis) and from a proposed complex trait locus (calpain-10, implicated in type 2 diabetes).
机译:我们概述了在基于连锁不平衡的作图研究中使用基因型数据的通用合并框架。我们的方法统一了过去通常单独处理过的两个主要基因定位目标:检测关联(即显着性检验)和估计致病性变异的位置。为了解决这个问题,我们将推理分为两个阶段。首先,我们使用马尔可夫链蒙特卡罗(Markov chain Monte Carlo)从所有采样染色体的合并族谱的后验分布中进行采样,而无需考虑表型。然后,平均每个家谱,我们估计在未观察到的疾病位点的各种突变和渗透率模型下的表型数据的可能性。这些模型寻找的基本信号是,在某个区域中存在疾病易感性变异时,根据表型,树上的染色体存在非随机聚类。非随机聚类的程度由似然性捕获,可用于构造显着性检验或贝叶斯后验分布。我们框架的新颖之处在于它可以自然地容纳定量数据。我们描述了该方法在模拟数据以及孟德尔基因座(CFTR,负责囊性纤维化)和拟议的复杂性状基因座(钙蛋白酶10,涉及2型糖尿病)中的应用。

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