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Explaining the Genetic Causality for Complex Phenotype via Deep Association Kernel Learning

机译:通过深度协会核心学习解释复杂表型的遗传因果关系

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摘要

The genetic effect explains the causality from genetic mutations to the development of complex diseases. Existing genome-wide association study (GWAS) approaches are always built under a linear assumption, restricting their generalization in dissecting complicated causality such as the recessive genetic effect. Therefore, a sophisticated and general GWAS model that can work with different types of genetic effects is highly desired. Here, we introduce a deep association kernel learning (DAK) model to enable automatic causal genotype encoding for GWAS at pathway level. DAK can detect both common and rare variants with complicated genetic effects where existing approaches fail. When applied to four real-world GWAS datasets including cancers and schizophrenia, our DAK discovered potential casual pathways, including the association between dilated cardiomyopathy pathway and schizophrenia.
机译:遗传效应解释了基因突变对复杂疾病的发展的因果关系。现有的基因组关联研究(GWAS)方法始终在线性假设下构建,限制其在解剖复杂的因果关系中的概括,例如隐性遗传效应。因此,强烈需要一种可以使用不同类型的遗传效应的复杂和一般的GWAS模型。在这里,我们介绍了一个深度协会内核学习(DAK)模型,以便在路径上为GWA进行自动因果基因型编码。达克可以检测常见和罕见的变体,具有复杂的遗传效果,其中现有方法失败。当应用到包括癌症和精神分裂症的四个现实世界GWAS数据集时,我们的达克发现了潜在的休闲途径,包括扩张心肌病途径和精神分裂症之间的关联。

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