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SHEIB-AGM: A Novel Stochastic Approach for Detecting High-Order Epistatic Interactions Using Bioinformation With Automatic Gene Matrix in Genome-Wide Association Studies

机译:Shein-AGM:一种新型的随机方法,用于在基因组 - 宽协会研究中使用生物信息学用生物信息学检测高阶认识性相互作用

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摘要

Detecting epistatic interactions in GWAS (genome-wide association studies) data is of great significance in studying common and complex diseases; however, the ability to detect high-order epistatic interactions in GWAS data is still insufficient. Existing methods are usually used to identify two-order interactions, and they cannot detect a large number of interactions. In this article, we propose a novel stochastic approach named SHEIB-AGM (stochastic approach for detecting high-order epistatic interactions using bioinformation with automatic gene matrix). SHEIB-AGM utilizes bioinformation to construct a gene matrix. In each iteration, it randomly generate a high-order SNP combination based on the gene matrix. SHEIB-AGM utilizes k2 (the Bayesian network scoring criterion) and G-test to detect epistasis in the generated combination and automatically update the gene matrix. We have compared SHEIB-AGM with six other methods, i.e., DECMDR, SNPHarvester, MACOED, AntEpiSeeker, HS-MMGKG and SEE, on simulated data including 108 epistatic models and 17,600 files. The results demonstrate that SHEIB-AGM greatly outperforms the above methods in terms of F-measure and power. We utilized SHEIB-AGM (with and without bioinformation) to analyze a real GWAS dataset from the Wellcome Trust Case Control Consortium. The results indicate that SHEIB-AGM with bioinformation can detect 33.94 & x007E;3069.40-times more epistatic interactions. We have found numerous genes and gene pairs that may play an important role in seven complex diseases. Some of them have been found in the CTD database (the Comparative Toxicogenomics Database).
机译:检测GWAS(基因组关联研究)数据的认识互动在研究常见和复杂的疾病方面具有重要意义;但是,检测GWAS数据中的高阶背景相互作用的能力仍然不足。现有方法通常用于识别两个阶的交互,并且它们无法检测到大量的交互。在本文中,我们提出了一种名为Sheib-AGM的新型随机方法(随机方法,用于使用自动基因矩阵使用生物信息检测高阶认识相互作用)。 Sheib-AGM利用生物信息来构建基因基质。在每次迭代中,它基于基因矩阵随机生成高阶SNP组合。 Sheib-AGM利用K2(贝叶斯网络评分标准)和G检验来检测生成的组合中的超声,并自动更新基因矩阵。我们将Sheib-AGM与六种其他方法进行比较,即DECMDR,Snpharvester,Macoed,Antepiseeker,HS-MMGKG,并参见模拟数据,包括108个外观模型和17,600个文件。结果表明,在F测量和功率方面,Sheib-AGM大大优于上述方法。我们利用Sheib-AGM(有没有生物信息)来分析来自Wellcome Trust Cate控制联盟的真正的GWAS数据集。结果表明,具有生物信息的Sheib-AGM可以检测33.94&X007E; 3069.40倍更多的认证互动。我们发现了许多基因和基因对,可在七种复杂疾病中发挥重要作用。其中一些已在CTD数据库中发现(比较毒性组织数据库)。

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