Modeling long-term dependencies and short-term correlations in patient journey data with temporal attention networks for health prediction

Yuxi Liu, Zhenhao Zhang, A. Yepes, Flora D. Salim
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引用次数: 4

Abstract

Building models for health prediction based on Electronic Health Records (EHR) has become an active research area. EHR patient journey data consists of patient time-ordered clinical events/visits from patients. Most existing studies focus on modeling long-term dependencies between visits, without explicitly taking short-term correlations between consecutive visits into account, where irregular time intervals, incorporated as auxiliary information, are fed into health prediction models to capture latent progressive patterns of patient journeys. We present a novel deep neural network with four modules to take into account the contributions of various variables for health prediction: i) the Stacked Attention module strengthens the deep semantics in clinical events within each patient journey and generates visit embeddings, ii) the Short-Term Temporal Attention module models short-term correlations between consecutive visit embeddings while capturing the impact of time intervals within those visit embeddings, iii) the Long-Term Temporal Attention module models long-term dependencies between visit embeddings while capturing the impact of time intervals within those visit embeddings, iv) and finally, the Coupled Attention module adaptively aggregates the outputs of Short-Term Temporal Attention and Long-Term Temporal Attention modules to make health predictions. Experimental results on MIMIC-III demonstrate superior predictive accuracy of our model compared to existing state-of-the-art methods, as well as the interpretability and robustness of this approach. Furthermore, we found that modeling short-term correlations contributes to local priors generation, leading to improved predictive modeling of patient journeys.
用时间注意力网络对病人旅程数据进行长期依赖关系和短期相关性建模,用于健康预测
基于电子健康档案(EHR)建立健康预测模型已成为一个活跃的研究领域。EHR患者行程数据包括患者按时间排序的临床事件/患者就诊。大多数现有研究侧重于建立就诊之间的长期依赖关系模型,而没有明确考虑连续就诊之间的短期相关性,其中不规则的时间间隔作为辅助信息被纳入健康预测模型,以捕捉患者就诊的潜在进展模式。我们提出了一种新的深度神经网络,它包含四个模块,以考虑各种变量对健康预测的贡献:i)堆叠注意模块加强了每个患者旅程中临床事件的深层语义,并生成了访问嵌入;ii)短期时间注意模块对连续访问嵌入之间的短期相关性进行建模,同时捕获了这些访问嵌入中时间间隔的影响;iii)长期时间注意模块对访问嵌入之间的长期依赖关系进行建模,同时捕捉访问嵌入中时间间隔的影响;iv)最后,耦合注意模块自适应地汇总短期时间注意和长期时间注意模块的输出,以进行健康预测。在MIMIC-III上的实验结果表明,与现有的最先进的方法相比,我们的模型具有优越的预测准确性,以及该方法的可解释性和鲁棒性。此外,我们发现建模短期相关性有助于局部先验的生成,从而改进了患者旅程的预测建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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