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Using Frequent Item Set Mining and Feature Selection Methods to Identify Interacted Risk Factors - The Atrial Fibrillation Case Study

机译:使用频繁的项目设置挖掘和特征选择方法来识别互动风险因素 - 心房颤动案例研究

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Disease risk prediction is highly important for early intervention and treatment, and identification of predictive risk factors is the key point to achieve accurate prediction. In addition to original independent features in a dataset, some interacted features, such as comorbidities and combination therapies, may have non-additive influence on the disease outcome and can also be used in risk prediction to improve the prediction performance. However, it is usually difficult to manually identify the possible interacted risk factors due to the combination explosion of features. In this paper, we propose an automatic approach to identify predictive risk factors with interactions using frequent item set mining and feature selection methods. The proposed approach was applied in the real world case study of predicting ischemic stroke and thromboembolism for atrial fibrillation patients on the Chinese atrial fibrillation registry dataset, and the results show that our approach can not only improve the prediction performance, but also identify the comorbidities and combination therapies that have potential influences on TE occurrence for AF.
机译:疾病风险预测对于早期干预和治疗非常重要,并且预测危险因素的识别是实现准确预测的关键点。除了在数据集中的原始独立特征之外,一些互动特征,例如合并症和组合疗法,可能对疾病结果具有非添加性影响,并且也可以用于风险预测以改善预测性能。然而,由于特征的组合爆炸,通常难以手动识别可能的互动的危险因素。在本文中,我们提出了一种自动方法来识别使用频繁项目设置挖掘和特征选择方法的交互的预测危险因素。拟议的方法是在真实的世界案例研究中应用了预测缺血性卒中和心房颤动患者的血肿性脑卒中患者的血栓栓塞,结果表明,我们的方法不仅可以改善预测性能,还可以识别合并症和对AF的TE发生潜在影响的组合疗法。

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