Predicting Clinical Events via Graph Neural Networks

Teja Kanchinadam, Shaheen Gauher
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Abstract

Timely detection of clinical events would provide healthcare providers the opportunity to make meaningful interventions that can result in improved health outcomes. This work describes a methodology developed at a large U.S. healthcare insurance company for predicting clinical events using administrative claims data. Most of the existing literature for predicting clinical events leverage historical data in Electronic Health Records (EHR). EHR data however has limitations making it undesirable for real-time use-cases. It is inconsistent, expensive, inefficient and sparsely available. In contrast, administrative claims data is relatively consistent, efficient and readily available. In this work, we introduce a novel modeling workflow: First, we learn custom embeddings for medical codes within claims data in order to uncover the hidden relationships between them. Second, we introduce a novel way of representing a member’s health history with a graph such that the relationships between various diagnosis and procedure codes is captured. Finally, we apply Graph Neural Networks (GNN) to perform a multi-label graph classification for clinical event prediction. Our approach produces more accurate predictions than any other standard classification approaches and can be easily generalized to other clinical prediction tasks.
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通过图神经网络预测临床事件
及时发现临床事件将使医疗保健提供者有机会采取有意义的干预措施,从而改善健康结果。这项工作描述了在美国一家大型医疗保险公司开发的一种方法,用于使用行政索赔数据预测临床事件。大多数预测临床事件的现有文献都利用电子健康记录(EHR)中的历史数据。然而,EHR数据有一些限制,使得它不适合实时用例。它是不一致的,昂贵的,低效的,稀缺的。相比之下,行政索赔数据相对一致、有效和容易获得。在这项工作中,我们引入了一种新的建模工作流程:首先,我们学习了索赔数据中医疗代码的自定义嵌入,以揭示它们之间隐藏的关系。其次,我们引入了一种用图表表示成员健康史的新方法,以便捕获各种诊断和程序代码之间的关系。最后,我们应用图神经网络(GNN)进行多标签图分类,用于临床事件预测。我们的方法比任何其他标准分类方法产生更准确的预测,并且可以很容易地推广到其他临床预测任务。
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