TACCO: Task-guided Co-clustering of Clinical Concepts and Patient Visits for Disease Subtyping based on EHR Data.

Ziyang Zhang, Hejie Cui, Ran Xu, Yuzhang Xie, Joyce C Ho, Carl Yang
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Abstract

The growing availability of well-organized Electronic Health Records (EHR) data has enabled the development of various machine learning models towards disease risk prediction. However, existing risk prediction methods overlook the heterogeneity of complex diseases, failing to model the potential disease subtypes regarding their corresponding patient visits and clinical concept subgroups. In this work, we introduce TACCO, a novel framework that jointly discovers clusters of clinical concepts and patient visits based on a hypergraph modeling of EHR data. Specifically, we develop a novel self-supervised co-clustering framework that can be guided by the risk prediction task of specific diseases. Furthermore, we enhance the hypergraph model of EHR data with textual embeddings and enforce the alignment between the clusters of clinical concepts and patient visits through a contrastive objective. Comprehensive experiments conducted on the public MIMIC-III dataset and Emory internal CRADLE dataset over the downstream clinical tasks of phenotype classification and cardiovascular risk prediction demonstrate an average 31.25% performance improvement compared to traditional ML baselines and a 5.26% improvement on top of the vanilla hypergraph model without our co-clustering mechanism. In-depth model analysis, clustering results analysis, and clinical case studies further validate the improved utilities and insightful interpretations delivered by TACCO. Code is available at https://github.com/PericlesHat/TACCO.

TACCO:基于EHR数据的疾病亚型临床概念和患者就诊的任务导向共聚类。
组织良好的电子健康记录(EHR)数据的日益可用性使得各种机器学习模型能够用于疾病风险预测。然而,现有的风险预测方法忽视了复杂疾病的异质性,未能对其对应的就诊人数和临床概念亚组的潜在疾病亚型进行建模。在这项工作中,我们介绍了TACCO,这是一个基于EHR数据超图建模的新框架,可以共同发现临床概念和患者就诊的集群。具体而言,我们开发了一种新的自监督共聚类框架,可以通过特定疾病的风险预测任务来指导。此外,我们通过文本嵌入增强了EHR数据的超图模型,并通过对比目标加强了临床概念和患者就诊之间的一致性。在公开的MIMIC-III数据集和Emory内部的CRADLE数据集上进行的关于表型分类和心血管风险预测的下游临床任务的综合实验表明,与传统的ML基线相比,平均性能提高了31.25%,在没有我们的共聚类机制的情况下,在香草超图模型的基础上提高了5.26%。深入的模型分析、聚类结果分析和临床案例研究进一步验证了TACCO提供的改进的效用和深刻的解释。代码可从https://github.com/PericlesHat/TACCO获得。
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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