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Predicting Cancer Risks By A Constraint-Based Causal Network

机译:通过基于约束的因果网络预测癌症风险

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A key challenge in cancer risk prediction is selecting representative features, with each being responsible for cancer diagnosis. This leads us to define a constraint-based approach that employs causal Markov property to discover local causal dependencies between features and cancer risk types. Our approach introduces a causal network generated from an identified network skeleton to explicitly characterize these unique causal configurations of a particular cancer risk as a variable number of nodes and links. It can be analytically shown that the resulting causal network satisfies the causal Markov property, and as a result, all local cause-effect dependencies can be retained and are globally consistent. An additional node selection estimator is introduced to choose the most representative features. Empirical evaluations on four cancer risk datasets suggest our approach significantly outperforms the state-of-the-art methods.
机译:癌症风险预测中的关键挑战是选择代表性特征,每个特征都负责癌症诊断。这使我们定义了一种基于约束的方法,该方法利用因果马尔可夫性质来发现特征与癌症风险类型之间的局部因果依存关系。我们的方法引入了一个由确定的网络框架生成的因果网络,以将特定癌症风险的这些独特因果结构特征化为可变数量的节点和链接。可以分析地表明,所得的因果网络满足因果的马尔可夫性质,因此,可以保留所有局部因果关系,并且在全局范围内是一致的。引入了额外的节点选择估计器,以选择最具代表性的功能。对四个癌症风险数据集的经验评估表明,我们的方法明显优于最新方法。

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