使用对比图相似度网络的细粒度患者相似度测量。

Yuxi Liu, Zhenhao Zhang, Shaowen Qin, Flora D Salim, Jiang Bian, Antonio Jimeno Yepes
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引用次数: 0

摘要

近年来,特别是随着深度学习技术的发展,使用电子健康记录(EHRs)进行预测分析已成为一个活跃的研究领域。深度学习中流行的EHR数据分析范式是患者表征学习,其目的是学习单个患者的浓缩数学表示。然而,EHR数据通常具有固有的不规则性,即,由于每个患者的个性化需求,在不同的时间捕获数据条目以及不同的内容。大部分工作都集中在提供具有注意力机制的深度神经网络上,这些机制可以生成完整的患者表征,这些表征可以很容易地用于下游预测任务。然而,这些方法没有考虑到患者的相似性,这通常用于临床推理场景。本研究提出了一种新的对比图相似度网络,用于大型电子病历数据集患者之间的相似度计算。特别是,我们应用基于图的相似性分析,明确提取每个患者的临床特征,并聚集相似患者的信息,以生成丰富的患者表征。在现实世界的EHR数据库上的实验结果证明了我们的方法在生命体征输入和ICU患者恶化预测任务中的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-grained Patient Similarity Measuring using Contrastive Graph Similarity Networks.

Predictive analytics using Electronic Health Records (EHRs) have become an active research area in recent years, especially with the development of deep learning techniques. A popular EHR data analysis paradigm in deep learning is patient representation learning, which aims to learn a condensed mathematical representation of individual patients. However, EHR data are often inherently irregular, i.e., data entries were captured at different times as well as with different contents due to the individualized needs of each patient. Most of the work focused on the provision of deep neural networks with attention mechanisms that generate complete patient representations that can be readily used for downstream prediction tasks. However, such approaches fail to take patient similarity into account, which is generally used in clinical reasoning scenarios. This study presents a new Contrastive Graph Similarity Network for similarity calculation among patients in large EHR datasets. Particularly, we apply graph-based similarity analysis that explicitly extracts the clinical characteristics of each patient and aggregates the information of similar patients to generate rich patient representations. Experimental results on real-world EHR databases demonstrate the effectiveness and superiority of our method for the task of vital signs imputation and ICU patient deterioration prediction.

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