基于深度神经网络的电子健康记录药物不良反应发现。

Wei Zhang, Peggy Peissig, Zhaobin Kuang, David Page
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引用次数: 7

摘要

药物不良反应(adr)是由于药物摄入而引起的有害的、意想不到的临床事件。电子健康记录(EHRs)等大量纵向事件数据的可用性不断增加,将ADR发现重新定义为一个大数据分析问题,由于数据丰富,需要大量数据的深度神经网络特别适合。为此,我们引入了神经自控制病例序列(NSCCS),这是一种用于从电子病历中发现不良反应的深度学习框架。NSCCS严格遵循自我控制的病例系列设计,以隐式和有效地调整个体异质性。通过这种方式,NSCCS对时不变混淆问题具有鲁棒性,因此更有能力识别反映各种药物和不良状况之间潜在机制的关联。我们将NSCCS应用于大规模的真实EHR数据集,并通过对基准ADR发现任务的综合实验实证证明了其优越的性能。
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Adverse Drug Reaction Discovery from Electronic Health Records with Deep Neural Networks.

Adverse drug reactions (ADRs) are detrimental and unexpected clinical incidents caused by drug intake. The increasing availability of massive quantities of longitudinal event data such as electronic health records (EHRs) has redefined ADR discovery as a big data analytics problem, where data-hungry deep neural networks are especially suitable because of the abundance of the data. To this end, we introduce neural self-controlled case series (NSCCS), a deep learning framework for ADR discovery from EHRs. NSCCS rigorously follows a self-controlled case series design to adjust implicitly and efficiently for individual heterogeneity. In this way, NSCCS is robust to time-invariant confounding issues and thus more capable of identifying associations that reflect the underlying mechanism between various types of drugs and adverse conditions. We apply NSCCS to a large-scale, real-world EHR dataset and empirically demonstrate its superior performance with comprehensive experiments on a benchmark ADR discovery task.

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