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A Genomic Data Fusion Framework to Exploit Rare and Common Variants for Association Discovery

机译:利用基因组数据融合框架开发稀有和常见变体进行关联发现

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Collapsing methods are used in association studies to exploit the effect of genetic rare variants in diseases. In this work we model an enriched collapsing approach by including genes, protein domains, pathways and protein-protein interactions data. We applied the collapsing technique to a data set of epileptic (85 cases) and healthy (61 controls) subjects. The method retrieved 4 genes, 5 domains, 33 gene interactions and 14 pathways showing a significant association with the disease. Collapsed data have been also used as features for prediction models. We found that the use of protein-protein interactions as model features increases the area under ROC curve (+1.5%) if compared to the solely gene-based approach.
机译:折叠方法用于关联研究中,以利用遗传稀有变体在疾病中的作用。在这项工作中,我们通过包含基因,蛋白质结构域,途径和蛋白质-蛋白质相互作用数据来模拟丰富的折叠方法。我们将折叠技术应用于癫痫(85例)和健康(61例)受试者的数据集。该方法检索了4个基因,5个域,33个基因相互作用和14条途径,显示出与疾病的显着相关性。崩溃的数据也已用作预测模型的特征。我们发现,与仅基于基因的方法相比,使用蛋白质-蛋白质相互作用作为模型特征会增加ROC曲线下的面积(+ 1.5%)。

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