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Analysis of human mini-exome sequencing data from Genetic Analysis Workshop 17 using a Bayesian hierarchical mixture model

机译:使用贝叶斯分层混合模型分析遗传分析工作室17的人类外显子组测序数据

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Next-generation sequencing technologies are rapidly changing the field of genetic epidemiology and enabling exploration of the full allele frequency spectrum underlying complex diseases. Although sequencing technologies have shifted our focus toward rare genetic variants, statistical methods traditionally used in genetic association studies are inadequate for estimating effects of low minor allele frequency variants. Four our study we use the Genetic Analysis Workshop 17 data from 697 unrelated individuals (genotypes for 24,487 autosomal variants from 3,205 genes). We apply a Bayesian hierarchical mixture model to identify genes associated with a simulated binary phenotype using a transformed genotype design matrix weighted by allele frequencies. A Metropolis Hasting algorithm is used to jointly sample each indicator variable and additive genetic effect pair from its conditional posterior distribution, and remaining parameters are sampled by Gibbs sampling. This method identified 58 genes with a posterior probability greater than 0.8 for being associated with the phenotype. One of these 58 genes, PIK3C2B was correctly identified as being associated with affected status based on the simulation process. This project demonstrates the utility of Bayesian hierarchical mixture models using a transformed genotype matrix to detect genes containing rare and common variants associated with a binary phenotype.
机译:下一代测序技术正在迅速改变遗传流行病学的领域,并使得能够探索复杂疾病基础的完整等位基因频谱。尽管测序技术已经将我们的注意力转移到了罕见的遗传变异上,但是遗传关联研究中传统上使用的统计方法不足以估计低等位基因频率变异的影响。我们的四个研究使用了来自697个无关个体的遗传分析研讨会17数据(来自3,205个基因的24,487个常染色体变异的基因型)。我们应用贝叶斯分层混合模型,以使用等位基因频率加权的转化基因型设计矩阵来识别与模拟二进制表型相关的基因。 Metropolis Hasting算法用于根据条件后验分布对每个指标变量和加性遗传效应对进行联合采样,其余参数通过Gibbs采样进行采样。该方法鉴定了与该表型相关的58个后验概率大于0.8的基因。根据仿真过程,正确识别出这58个基因之一PIK3C2B与受影响的状态相关。该项目证明了使用转化基因型矩阵的贝叶斯分层混合模型检测包含与二元表型相关的稀有和常见变体的基因的效用。

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