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Fine-scale mapping of disease susceptibility locus with Bayesian partition model

机译:贝叶斯划分模型的疾病易感性位点的精细标测

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The causal relationship between genes and diseases has been investigated with the development of DNA sequence. Polymorphisms incorporated in the HapMap Project have enabled fine mapping with linkage disequilibrium (LD) and prior clustering of the haplotypes on the basis of a similarity measure has often been performed in an attempt to capture coalescent events because they can reduce the amount of computation. However an inappropriate choice of similarity measure can lead to wrong conclusions and wepropose a new hap-lotype-based clustering algorithm for fine-scale mapping by using a Bayesian partition model. To handle phase-unknown genotypes, we propose a new algorithm based on a Metropolized Gibbs sampler and it is implemented in C++. Our simulation studies found that the proposed method improves the accuracy of the estimator for the disease susceptibility locus. We illustrated the practical implication of the new analysis method by an application to fine-scale mapping of CYP2D6 in drug metabolism.
机译:随着DNA序列的发展,已经研究了基因与疾病之间的因果关系。 HapMap项目中包含的多态性使得能够通过连锁不平衡(LD)进行精细映射,并且基于相似性度量的单倍型先前聚类经常试图捕获聚结事件,因为它们可以减少计算量。然而,相似性度量的不当选择可能导致错误的结论,我们提出了一种新的基于单倍型的聚类算法,该算法使用贝叶斯划分模型进行精细比例映射。为了处理相位未知的基因型,我们提出了一种基于Metropolized Gibbs采样器的新算法,该算法在C ++中实现。我们的仿真研究发现,所提出的方法提高了疾病易感性位点估计器的准确性。我们通过对CYP2D6在药物代谢中的精细定位作了说明,说明了新分析方法的实际意义。

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