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Explainable Predictions of Adverse Drug Events from Electronic Health Records Via Oracle Coaching

机译:通过Oracle辅导从电子健康记录中可预测的不良药物事件预测

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Information about drug efficacy and safety is limited despite current research on adverse drug events (ADEs). Electronic health records (EHRs) may be an overcoming medium, however the application and evaluation of predictive models for ADE detection based on EHRs focus primarily on predictive performance with little emphasis on explainability and clinical relevance of the obtained predictions. This paper therefore aims to provide new means for obtaining explainable and clinically relevant predictions and medical pathways underlying ADEs, by deriving sets of rules leading to explainable ADE predictions via oracle coaching and indirect rule induction. This is achieved by mapping opaque random forest models to explainable decision trees without compromising predictive performance. The results suggest that the average performance of decision trees with oracle coaching exceeds that of random forests for all considered metrics for the task of ADE detection. Relationships between many patient features present in the rulesets and the ADEs appear to exist, however not conforming to the causal pathways implied by the models - which emphasises the need for explainable predictions.
机译:尽管目前对不良药物事件(ADE)进行了研究,但有关药物功效和安全性的信息仍然有限。电子健康记录(EHR)可能是一种克服的媒介,但是基于EHR的ADE检测的预测模型的应用和评估主要侧重于预测性能,而很少强调所获得预测的可解释性和临床相关性。因此,本文旨在通过甲骨文教练和间接规则推导得出可导致可解释的ADE预测的规则集,从而为获得可解释的和临床相关的ADE的潜在医学途径提供新的手段。这是通过将不透明的随机森林模型映射到可解释的决策树而实现的,而不会影响预测性能。结果表明,对于所有用于ADE检测任务的度量标准,通过oracle指导的决策树的平均性能都超过了随机森林。规则集中存在的许多患者特征与ADE之间似乎存在关系,但是不符合模型所隐含的因果关系-强调了需要可解释的预测。

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