Patient Subtyping via Time-Aware LSTM Networks

Inci M. Baytas, Cao Xiao, Xi Sheryl Zhang, Fei Wang, Anil K. Jain, Jiayu Zhou
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引用次数: 475

Abstract

In the study of various diseases, heterogeneity among patients usually leads to different progression patterns and may require different types of therapeutic intervention. Therefore, it is important to study patient subtyping, which is grouping of patients into disease characterizing subtypes. Subtyping from complex patient data is challenging because of the information heterogeneity and temporal dynamics. Long-Short Term Memory (LSTM) has been successfully used in many domains for processing sequential data, and recently applied for analyzing longitudinal patient records. The LSTM units are designed to handle data with constant elapsed times between consecutive elements of a sequence. Given that time lapse between successive elements in patient records can vary from days to months, the design of traditional LSTM may lead to suboptimal performance. In this paper, we propose a novel LSTM unit called Time-Aware LSTM (T-LSTM) to handle irregular time intervals in longitudinal patient records. We learn a subspace decomposition of the cell memory which enables time decay to discount the memory content according to the elapsed time. We propose a patient subtyping model that leverages the proposed T-LSTM in an auto-encoder to learn a powerful single representation for sequential records of patients, which are then used to cluster patients into clinical subtypes. Experiments on synthetic and real world datasets show that the proposed T-LSTM architecture captures the underlying structures in the sequences with time irregularities.
通过时间感知LSTM网络进行患者亚型分型
在各种疾病的研究中,患者之间的异质性通常导致不同的进展模式,可能需要不同类型的治疗干预。因此,研究患者亚型是很重要的,即将患者分组为具有疾病特征的亚型。由于信息异质性和时间动态性,从复杂的患者数据中分型是具有挑战性的。长短期记忆(LSTM)已经成功地应用于许多领域,用于序列数据的处理,最近也应用于纵向病历的分析。LSTM单元的设计目的是处理序列中连续元素之间的间隔时间恒定的数据。考虑到患者记录中连续元素之间的时间间隔可能从几天到几个月不等,传统LSTM的设计可能导致性能不理想。在本文中,我们提出了一种新的LSTM单元,称为时间感知LSTM (T-LSTM)来处理纵向患者记录中的不规则时间间隔。我们学习了细胞记忆的子空间分解,使时间衰减能够根据经过的时间对记忆内容进行折扣。我们提出了一个患者亚型模型,利用在自动编码器中提出的T-LSTM来学习患者序列记录的强大的单一表示,然后用于将患者聚类到临床亚型中。在合成数据集和真实世界数据集上的实验表明,所提出的T-LSTM架构能够捕获具有时间不规则性的序列中的底层结构。
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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