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Identification of Causality Among Gene Mutations Through Local Causal Association Rule Discovery

机译:通过局部因果关系规则发现鉴定基因突变中的因果关系

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Detecting the interaction among gene mutations is still an open problem on genetic research. Among various types of interaction, the causality among the gene mutations provides deep insight of the gene mutation and evolution, is the focus of the current research. Different from the global causal network reconstruction method, we propose a local causal discovery method by exploring the causal concept under the association rule discovery framework. Firstly we propose a V-Structure Measure (VSM) to evaluate the causal significance of the local SNPs structures. Secondly, we develop a method called ASymmetric Causal Association Rule Discovery (ASCARD) to mine the reliable causal association rules considering the conflicts among the candidate structures. Finally, the experiments on the synthetic data and WTCCC (Wellcome Trust Case Control Consortium) SNPs dataset shows the effectiveness of the proposed method. Some interesting biological discoveries also show the potential of the real world applications.
机译:检测基因突变之间的相互作用仍然是遗传研究的开放问题。在各种类型的相互作用中,基因突变中的因果关系提供了对基因突变和进化的深刻洞察力,是目前研究的重点。与全球因果网络重建方法不同,我们通过在关联规则发现框架下探索因果概念提出了局部因果解析方法。首先,我们提出了V结构测量(VSM)来评估局部SNPS结构的因果意义。其次,我们开发一种称为非对称因果关系规则发现(亚址)的方法,以考虑候选结构中的冲突的可靠因果关系规则。最后,对合成数据和WTCCC(Wellcome Trust Case Control Consortium)SNP数据集的实验显示了所提出的方法的有效性。一些有趣的生物发现也表现出现实世界应用的潜力。

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