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首页> 外文期刊>BMC Bioinformatics >Deep mixed model for marginal epistasis detection and population stratification correction in genome-wide association studies
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Deep mixed model for marginal epistasis detection and population stratification correction in genome-wide association studies

机译:基因组关联研究中的边缘简超探测和人口分层校正深厚混合模型

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BACKGROUND:Genome-wide Association Studies (GWAS) have contributed to unraveling associations between genetic variants in the human genome and complex traits for more than a decade. While many works have been invented as follow-ups to detect interactions between SNPs, epistasis are still yet to be modeled and discovered more thoroughly.RESULTS:In this paper, following the previous study of detecting marginal epistasis signals, and motivated by the universal approximation power of deep learning, we propose a neural network method that can potentially model arbitrary interactions between SNPs in genetic association studies as an extension to the mixed models in correcting confounding factors. Our method, namely Deep Mixed Model, consists of two components: 1) a confounding factor correction component, which is a large-kernel convolution neural network that focuses on calibrating the residual phenotypes by removing factors such as population stratification, and 2) a fixed-effect estimation component, which mainly consists of an Long-short Term Memory (LSTM) model that estimates the association effect size of SNPs with the residual phenotype.CONCLUSIONS:After validating the performance of our method using simulation experiments, we further apply it to Alzheimer's disease data sets. Our results help gain some explorative understandings of the genetic architecture of Alzheimer's disease.
机译:背景:基因组 - 基因组协会研究(GWAs)有助于解开人类基因组中遗传变异与十多年的复杂性状之间的遗传变异之间的关联。虽然许多作品被发明为检测SNP之间的交互的后续行动,但Epissisis仍未更彻底地建模和发现。结果:在上一篇关于检测边缘超越信号的研究之后,通过普遍逼近的研究深度学习的力量,我们提出了一种神经网络方法,可以在遗传结社研究中潜在地模范SNP之间的任意相互作用作为混合模型在校正混杂因子方面的延伸。我们的方法,即深厚的模型,由两个组件组成:1)一个混杂因子校正组件,这是一个大核卷积神经网络,专注于通过去除诸如人口分层等因素来校准残留表型,2)固定-effect估计分量,主要由长短术语存储器(LSTM)模型组成,估计SNP的关联效果大小与残留表型。结论:使用模拟实验验证我们的方法的性能后,我们进一步将其应用于阿尔茨海默病的疾病数据集。我们的结果有助于获得对阿尔茨海默病的遗传建筑探讨。

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