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A method for improving the reliability of causal inference from large-scale data in biomedicine

机译:一种提高生物医学中大规模数据因果推理可靠性的方法

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Causal inference is an essential problem in the field of drug discovery. Most existing methods depend on hypothesis testing with the analysis of drug-disease or drug-target-disease relations. However, a remaining challenge is how to choose a significance level for conditional independence tests to achieve the most reliable causal relation result. In this paper, we propose a constraint-based causal discovery method to achieve more reliable causal relations. An independence test reliability (ITR) is adopted to measure the reliability of each independence test result, and an aggregated causal relation reliability (ACRR) is introduced to evaluate the global reliability of a causal discovery. A drug-target-disease dataset is established by collecting information from the literature in PubMed using data mining techniques. The result of our experiments on different datasets shows that our proposed method obtains more stable causal relations than the existing approaches.
机译:因果推理是药物发现领域中的一个基本问题。现有的大多数方法都依赖于假设检验以及对药物-疾病或药物-靶标-疾病关系的分析。然而,剩下的挑战是如何为条件独立性测试选择显着性水平,以获得最可靠的因果关系结果。在本文中,我们提出了一种基于约束的因果发现方法,以实现更可靠的因果关系。采用独立性测试可靠性(ITR)来度量每个独立性测试结果的可靠性,并引入汇总的因果关系可靠性(ACRR)来评估因果发现的整体可靠性。通过使用数据挖掘技术从PubMed中的文献中收集信息来建立药物靶标疾病数据集。我们在不同数据集上进行的实验结果表明,与现有方法相比,我们提出的方法获得了更稳定的因果关系。

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