可解释深度学习用于药物不良事件预测的研究

J. Rebane, Isak Karlsson, P. Papapetrou
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引用次数: 8

摘要

为了在医疗记录中检测健康诊断的预测建模,已经开发了各种深度学习架构。有几个模型非常强调时间注意机制和衰减因素,以此作为一种手段,在促进医学代码级别的可解释性的同时,纳入与医疗事件发生的近代性有关的高度时间相关的信息。在这项研究中,我们利用这种模型与一种新的电子病历(EPR)数据集,包括诊断和药物数据,用于药物不良事件(ADE)预测。因此,这项工作的主要贡献是根据ADE预测的客观性能指标对两种最先进的深度学习架构进行实证评估。我们还评估了注意机制在医学代码级别可解释性方面的重要性,这可能有助于对医疗保健领域内ADE发生性质的新见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Investigation of Interpretable Deep Learning for Adverse Drug Event Prediction
A variety of deep learning architectures have been developed for the goal of predictive modelling in regards to detecting health diagnoses in medical records. Several models have placed strong emphases on temporal attention mechanisms and decay factors as a means to include highly temporally relevant information regarding the recency of medical event occurrence while facilitating medical code-level interpretability. In this study we utilise such models with a novel Electronic Patient Record (EPR) data set consisting of both diagnoses and medication data for the purpose of Adverse Drug Event (ADE) prediction. As such, a main contribution of this work is an empirical evaluation of two state-of-the-art deep learning architectures in terms of objective performance metrics for ADE prediction. We also assess the importance of attention mechanisms in regards to their usefulness for medical code-level interpretability, which may facilitate novel insights pertaining to the nature of ADE occurrence within the health care domain.
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