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Identification of multiple rare variants associated with a disease

机译:鉴定与疾病相关的多种罕见变体

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Identifying rare variants that are responsible for complex disease has been promoted by advances in sequencing technologies. However, statistical methods that can handle the vast amount of data generated and that can interpret the complicated relationship between disease and these variants have lagged. We apply a zero-inflated Poisson regression model to take into account the excess of zeros caused by the extremely low frequency of the 24,487 exonic variants in the Genetic Analysis Workshop 17 data. We grouped the 697 subjects in the data set as Europeans, Asians, and Africans based on principal components analysis and found the total number of rare variants per gene for each individual. We then analyzed these collapsed variants based on the assumption that rare variants are enriched in a group of people affected by a disease compared to a group of unaffected people. We also tested the hypothesis with quantitative traits Q1, Q2, and Q4. Analyses performed on the combined 697 individuals and on each ethnic group yielded different results. For the combined population analysis, we found that UGT1A1 , which was not part of the simulation model, was associated with disease liability and that FLT1 , which was a causal locus in the simulation model, was associated with Q1. Of the causal loci in the simulation models, FLT1 and KDR were associated with Q1 and VNN1 was correlated with Q2. No significant genes were associated with Q4. These results show the feasibility and capability of our new statistical model to detect multiple rare variants influencing disease risk.
机译:测序技术的进步促进了鉴定造成复杂疾病的稀有变异。但是,可以处理所生成的大量数据并可以解释疾病与这些变异之间复杂关系的统计方法已经滞后。我们应用零膨胀的Poisson回归模型来考虑遗传分析研讨会17数据中24,487个外显子变体的极低频率所导致的零过量。我们根据主成分分析将数据集中的697个受试者分为欧洲人,亚洲人和非洲人,并发现每个基因每个基因的罕见变体总数。然后,我们基于以下假设对这些折叠的变体进行了分析:与一组未受影响的人群相比,在受疾病影响的人群中稀有变体更为丰富。我们还用定量特征Q1,Q2和Q4检验了该假设。对总共697名个体和每个种族进行的分析得出不同的结果。对于组合人口分析,我们发现不是仿真模型的一部分的UGT1A1与疾病责任相关,而在仿真模型中是因果关系的FLT1与Q1相关。在仿真模型的因果位点中,FLT1和KDR与Q1相关,而VNN1与Q2相关。没有明显的基因与Q4相关。这些结果表明了我们新的统计模型检测多种影响疾病风险的罕见变体的可行性和能力。

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