基于深度生成建模的医疗情境关注网络的诊断预测

Wonsung Lee, Sungrae Park, Weonyoung Joo, Il-Chul Moon
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引用次数: 29

摘要

利用历史电子病历预测患者的临床预后是医学信息学的一个基础研究领域。虽然电子病历包含与每个患者相关的各种记录,但现有的工作主要是通过使用具有简单注意机制的递归神经网络(rnn)来处理诊断代码。这种类型的序列建模往往忽略了电子病历的异质性。换句话说,它只考虑历史诊断,而不将患者人口统计数据(与临床基本背景相对应)纳入序列建模。为了解决这个问题,我们的目标是研究一种针对医学背景的注意力机制的使用,以预测未来的诊断。本文提出了一种基于医疗上下文注意(MCA)的RNN,该RNN由基于注意的RNN和条件深度生成模型组成。这种新的注意机制利用了从条件变分自编码器(CVAEs)中获得的个体患者信息。CVAE对患者嵌入的条件分布及其人口统计数据进行建模,以提供患者因疾病引起的表型差异的测量。实验结果表明了该模型的有效性。
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Diagnosis Prediction via Medical Context Attention Networks Using Deep Generative Modeling
Predicting the clinical outcome of patients from the historical electronic health records (EHRs) is a fundamental research area in medical informatics. Although EHRs contain various records associated with each patient, the existing work mainly dealt with the diagnosis codes by employing recurrent neural networks (RNNs) with a simple attention mechanism. This type of sequence modeling often ignores the heterogeneity of EHRs. In other words, it only considers historical diagnoses and does not incorporate patient demographics, which correspond to clinically essential context, into the sequence modeling. To address the issue, we aim at investigating the use of an attention mechanism that is tailored to medical context to predict a future diagnosis. We propose a medical context attention (MCA)-based RNN that is composed of an attention-based RNN and a conditional deep generative model. The novel attention mechanism utilizes the derived individual patient information from conditional variational autoencoders (CVAEs). The CVAE models a conditional distribution of patient embeddings and his/her demographics to provide the measurement of patient's phenotypic difference due to illness. Experimental results showed the effectiveness of the proposed model.
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