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Explainable AI in Decision Support Systems : A Case Study: Predicting Hospital Readmission Within 30 Days of Discharge

机译:决策支持系统中可解释的AI:一个案例研究:预测出院30天内的住院率

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Explainable models are a critical requirement for predictive analytics applications in the healthcare domain. In this work we develop a hypothetical clinical decision support system for the classification task of predicting hospital readmission within 30 days of discharge. We compare a baseline logistic regression model with an implementation of the coordinate descent algorithm known as lasso. We choose lasso because it inherently performs variable selection during optimization which leads to an explainable model. Using model evaluation data we achieve an area under the ROC curve score of 0.795 improving on the baseline score of 0.683 without inflating the feature space.
机译:可解释的模型是医疗领域预测分析应用程序的关键要求。在这项工作中,我们为假设出院后30天内住院再入院的分类任务开发了一个假想的临床决策支持系统。我们将基线逻辑回归模型与称为套索的坐标下降算法的实现进行了比较。我们之所以选择套索,是因为它在优化过程中固有地执行变量选择,从而产生了可解释的模型。使用模型评估数据,我们在ROC曲线得分下获得了0.795的面积,而基线得分为0.683有所提高,而不会膨胀特征空间。

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