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An efficient weighted tag SNP-set analytical method in genome-wide association studies

机译:全基因组关联研究中有效的加权标签SNP集分析方法

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Background Single-nucleotide polymorphism (SNP)-set analysis in Genome-wide association studies (GWAS) has emerged as a research hotspot for identifying genetic variants associated with disease susceptibility. But most existing methods of SNP-set analysis are affected by the quality of SNP-set, and poor quality of SNP-set can lead to low power in GWAS. Results In this research, we propose an efficient weighted tag-SNP-set analytical method to detect the disease associations. In our method, we first design a fast algorithm to select a subset of SNPs (called tag SNP-set) from a given original SNP-set based on the linkage disequilibrium (LD) between SNPs, then assign a proper weight to each of the selected tag SNP respectively and test the joint effect of these weighted tag SNPs. The intensive simulation results show that the power of weighted tag SNP-set-based test is much higher than that of weighted original SNP-set-based test and that of un-weighted tag SNP-set-based test. We also compare the powers of the weighted tag SNP-set-based test based on four types of tag SNP-sets. The simulation results indicate the method of selecting tag SNP-set impacts the power greatly and the power of our proposed method is the highest. Conclusions From the analysis of simulated replicated data sets, we came to a conclusion that weighted tag SNP-set-based test is a powerful SNP-set test in GWAS. We also designed a faster algorithm of selecting tag SNPs which include most of information of original SNP-set, and a better weighted function which can describe the status of each tag SNP in GWAS.
机译:背景技术全基因组关联研究(GWAS)中的单核苷酸多态性(SNP)-设置分析已成为鉴定与疾病易感性相关的遗传变异的研究热点。但是,大多数现有的SNP集分析方法都受SNP集质量的影响,而SNP集质量差会导致GWAS的功耗降低。结果在这项研究中,我们提出了一种有效的加权标签SNP集分析方法来检测疾病的关联。在我们的方法中,我们首先设计一种快速算法,根据SNP之间的连锁不平衡(LD)从给定的原始SNP集中选择SNP的子集(称为标签SNP集),然后为每个SNP分配适当的权重分别选择标签SNP,并测试这些加权标签SNP的联合效果。大量的仿真结果表明,加权标签基于SNP集的测试的功效远高于加权原始基于SNP集的测试和未加权标签基于SNP集的测试。我们还比较了基于标签SNP集的四种类型的加权标签基于SNP集的测试的功效。仿真结果表明,选择标签单核苷酸多态集的方法对功率的影响很大,本文提出的方法的功率最高。结论通过对模拟复制数据集的分析,我们得出结论:基于加权标签SNP集的测试是GWAS中强大的SNP集测试。我们还设计了一种更快的选择标签SNP的算法,该算法包括原始SNP集的大部分信息,以及一个更好的加权函数,可以描述GWAS中每个标签SNP的状态。

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