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Novel tree-based method to generate markers from rare variant data

机译:基于树的新颖方法可从稀有变异数据生成标记

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摘要

Existing methods for analyzing rare variant data focus on collapsing a group of rare variants into a single common variant; collapsing is based on an intuitive function of the rare variant genotype information, such as an indicator function or a weighted sum. It is more natural, however, to take into account the single-nucleotide polymorphism (SNP) interactions informed directly by the data. We propose a novel tree-based method that automatically detects SNP interactions and generates candidate markers from the original pool of rare variants. In addition, we utilize the advantage of having 200 phenotype replications in the Genetic Analysis Workshop 17 data to assess the candidate markers by means of repeated logistic regressions. This new approach shows potential in the rare variant analysis. We correctly identify the association between gene FLT1 and phenotype Affect, although there exist other false positives in our results. Our analyses are performed without knowledge of the underlying simulating model.
机译:现有的分析稀有变异数据的方法着重于将一组稀有变异折叠为一个通用变异。折叠基于稀有变异基因型信息的直观功能,例如指标功能或加权和。但是,更自然的是考虑到直接由数据告知的单核苷酸多态性(SNP)相互作用。我们提出了一种新颖的基于树的方法,该方法可自动检测SNP相互作用并从稀有变种的原始库中生成候选标记。此外,我们利用在遗传分析研讨会17数据中具有200个表型重复的优势,通过重复逻辑回归来评估候选标记。这种新方法在稀有变异分析中显示出潜力。尽管我们的结果中还存在其他假阳性结果,但我们可以正确识别基因FLT1与表型影响之间的关联。我们的分析是在不了解底层模拟模型的情况下进行的。

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