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Feature Selection in Predictive Modeling: A Systematic Study on Drug Response Heterogeneity for Type II Diabetic Patients

机译:预测模型中的特征选择:II型糖尿病患者药物反应异质性的系统研究

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摘要

With the rapid development of computer hardware and software technologies, more and more electronic health data from insurance claims, clinical trials and hospitals are becoming readily available. These data provide a rich resource for developing various healthcare analytics algorithms, among which predictive modeling is of key importance in many real health problems. One important issue for data-driven predictive modeling is high dimensionality, and feature selection is one effective strategy to reduce the number of independent variables and control the confounding factors. However, most of the existing studies just pick one feature selection approach without comprehensive investigations. In this paper, we investigate the issue of drug response heterogeneity for type II diabetes mellitus (T2DM) patients using a large scale clinical trial data. Our goal is to find out the important factors that may lead to the response heterogeneity for three popular T2DM drugs, Metformin, Rosiglitazone and Glimepiride. We implemented 8 different feature selection approaches and compared their performances with various measures including prediction error and the consistency of the identified important factors. Finally, we ensemble all factor lists picked by different algorithms and obtain a final set of factors that contribute to the drug response heterogeneities and verified them through existing literature.
机译:随着计算机硬件和软件技术的飞速发展,越来越多的来自保险索赔,临床试验和医院的电子健康数据变得可用。这些数据为开发各种医疗分析算法提供了丰富的资源,其中预测模型在许多实际健康问题中至关重要。数据驱动的预测建模的一个重要问题是高维,而特征选择是减少自变量数量并控制混杂因素的一种有效策略。但是,大多数现有研究只是选择一种特征选择方法,而没有进行全面调查。在本文中,我们使用大规模的临床试验数据来调查II型糖尿病(T2DM)患者的药物反应异质性问题。我们的目标是找出可能导致三种流行的T2DM药物二甲双胍,罗格列酮和格列美脲反应异质性的重要因素。我们实施了8种不同的特征选择方法,并将它们的性能与各种方法进行了比较,包括预测误差和已识别的重要因素的一致性。最后,我们整合了由不同算法选择的所有因素列表,并获得了有助于药物反应异质性的最终因素集,并通过现有文献对其进行了验证。

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