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Discovery of multivariate phenotypes using association rule mining and their application to genome-wide association studies

机译:利用关联规则挖掘发现多变量表型及其在基因组 - 范围协会研究中的应用

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Genome-wide association studies (GWAS) have served crucial roles in investigating disease susceptible loci for single traits. On the other hand, the GWAS have been limited in measuring genetic risk factors for multivariate phenotypes from pleiotropic genetic effects of genetic loci. This work reports a data mining approach to discover patterns of multivariate phenotypes expressed as association rules, and present an analytical scheme for GWAS of those multivariate phenotypes as defining new phenotypes. We identified 13 SNPs for four genes (CSMD1, NFE2L1, CBX1, and SKAP1) associated with low levels of low density lipoprotein cholesterol (LDL-C ≤ 100 mg/dl) and high levels of triglycerides (TG ≥ 180 mg/dl) as a multivariate phenotype. Compared with a traditional approach to GWAS, the use of discovered multivariate phenotypes can be advantageous in identifying genetic risk factors, accounting for pleiotropic genetic effects when the multivariate phenotypes have a common etiologic pathway.
机译:基因组 - 范围的协会研究(GWAs)在调查单一性状的调查易感位点方面是至关重要的作用。另一方面,GWAS在测量遗传基因座的抗性遗传效应中测量多元表型的遗传危险因素。这项工作报告了一种数据采矿方法,以发现作为关联规则表示的多变量表型模式,并提出了这些多变量表型的GWA的分析方案,如确定新表型。我们鉴定了13个基因(CSMD1,NFE2L1,CBX1和SKAP1)的13个SNP,与低密度的低密度脂蛋白胆固醇(LDL-C≤100mg/ dL)和高水平的甘油三酯(Tg≥180mg/ dL)相关联。多变量表型。与传统的GWA方法相比,发现多变量表型的使用可能是有利的,鉴定遗传危险因素,当多元表型具有常见的病因途径时,患有脂肪钙遗传效应。

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