DDL:用于预测表型的深度字典学习。

Tianfan Fu, Trong Nghia Hoang, Cao Xiao, Jimeng Sun
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摘要

预测性表型是指根据纵向电子健康记录(EHR)数据,准确预测下一次临床就诊中会出现哪些表型。虽然深度学习(DL)模型最近在预测表型方面表现出了强劲的性能,但它们需要访问大量的标记数据,而获取这些数据的成本很高。为了解决这一标签不足的难题,我们提出了一种用于表型分析的深度字典学习框架(DDL),该框架利用无标签数据作为补充信息源,生成更好、更简洁的数据表示。我们在多个电子病历数据集上进行的实证评估表明,在需要对患者进行表型分析的各种临床任务中,DDL 的表现优于现有的预测性表型分析方法。结果还表明,非标记数据可用于生成更好的数据表示,从而有助于提高 DDL 的表型分析性能,超过仅使用标记数据的现有方法。
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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DDL: Deep Dictionary Learning for Predictive Phenotyping.

Predictive phenotyping is about accurately predicting what phenotypes will occur in the next clinical visit based on longitudinal Electronic Health Record (EHR) data. While deep learning (DL) models have recently demonstrated strong performance in predictive phenotyping, they require access to a large amount of labeled data, which are expensive to acquire. To address this label-insufficient challenge, we propose a deep dictionary learning framework (DDL) for phenotyping, which utilizes unlabeled data as a complementary source of information to generate a better, more succinct data representation. Our empirical evaluations on multiple EHR datasets demonstrated that DDL outperforms the existing predictive phenotyping methods on a wide variety of clinical tasks that require patient phenotyping. The results also show that unlabeled data can be used to generate better data representation that helps improve DDL's phenotyping performance over existing methods that only uses labeled data.

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