纵向电子健康记录的时间表型:基于图的框架

Chuanren Liu, Fei Wang, Jianying Hu, Hui Xiong
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引用次数: 141

摘要

医疗保健信息系统的快速发展导致人们对利用患者电子健康记录(EHR)协助疾病诊断和表型的兴趣增加。患者电子病历通常是纵向的,自然地表示为医疗事件序列,其中的事件包括临床记录、问题、药物、生命体征、实验室报告等。纵向和异构特性使得电子病历分析本身就是一个困难的挑战。为了解决这一挑战,在本文中,我们开发了一种新的表示,即时间图,用于此类事件序列。时间图为各种具有挑战性的分析任务(如预测建模)提供了信息,因为它可以捕获每个事件序列中医疗事件的时间关系。通过汇总纵向数据,时间图也具有鲁棒性和抗噪声和不规则观测。在时间图表示的基础上,我们进一步开发了一种时间表型方法,以确定最重要和可解释的图基作为表型。这有助于我们更好地了解疾病的演变模式。此外,通过用表型表达时间图,表达系数可用于个性化医疗,疾病诊断和患者分割等应用。我们的时间表型框架也可以灵活地纳入半监督/监督信息。最后,我们在两个实际任务上验证我们的框架。一个是预测心力衰竭的发病风险。另一项是预测COPD前期患者发生心力衰竭相关住院的风险。结果表明,本文提出的方法可以显著提高这两个任务的诊断性能。此外,我们还说明了从数据中得出的一些有趣的表型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Phenotyping from Longitudinal Electronic Health Records: A Graph Based Framework
The rapid growth in the development of healthcare information systems has led to an increased interest in utilizing the patient Electronic Health Records (EHR) for assisting disease diagnosis and phenotyping. The patient EHRs are generally longitudinal and naturally represented as medical event sequences, where the events include clinical notes, problems, medications, vital signs, laboratory reports, etc. The longitudinal and heterogeneous properties make EHR analysis an inherently difficult challenge. To address this challenge, in this paper, we develop a novel representation, namely the temporal graph, for such event sequences. The temporal graph is informative for a variety of challenging analytic tasks, such as predictive modeling, since it can capture temporal relationships of the medical events in each event sequence. By summarizing the longitudinal data, the temporal graphs are also robust and resistant to noisy and irregular observations. Based on the temporal graph representation, we further develop an approach for temporal phenotyping to identify the most significant and interpretable graph basis as phenotypes. This helps us better understand the disease evolving patterns. Moreover, by expressing the temporal graphs with the phenotypes, the expressing coefficients can be used for applications such as personalized medicine, disease diagnosis, and patient segmentation. Our temporal phenotyping framework is also flexible to incorporate semi-supervised/supervised information. Finally, we validate our framework on two real-world tasks. One is predicting the onset risk of heart failure. Another is predicting the risk of heart failure related hospitalization for patients with COPD pre-condition. Our results show that the diagnosis performance in both tasks can be improved significantly by the proposed approaches. Also, we illustrate some interesting phenotypes derived from the data.
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