不规则采样医疗时间序列数据的深度学习方法综述。

Health data science Pub Date : 2026-05-04 eCollection Date: 2026-01-01 DOI:10.34133/hds.0456
Chenxi Sun, Moxian Song, Derun Cai, Baofeng Zhang, Hongyan Li, Shenda Hong
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引用次数: 0

摘要

重要性:医疗时间序列构成了电子健康记录中最大的数据类型,在现实世界的临床环境中通常不定期采样。这种不规则采样的医疗时间序列表现出不均匀的时间间隔、缺失的观测值和异构的采样率,给深度学习模型带来了巨大的挑战。在本文中,从不规则感知和以数据为中心的角度,我们将现有的针对不规则采样医疗时间序列的深度学习方法分为基于缺失数据和基于原始数据的方法。我们分析了它们的理论基础和实际意义,并在基准和现实医疗数据集上进行实验,比较它们的优势和局限性。结论:在此基础上,对不规则采样医学时间序列建模提出了实用建议,并讨论了存在的问题和未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Deep Learning Methods for Irregularly Sampled Medical Time Series Data.

Importance: Medical time series constitute the largest data type in electronic health records and are often irregularly sampled in real-world clinical settings. Such irregularly sampled medical time series exhibit uneven time intervals, missing observations, and heterogeneous sampling rates, posing substantial challenges for deep learning models. Highlights: In this paper, from an irregularity-aware and data-centric perspective, we categorize existing deep learning methods for irregularly sampled medical time series into missing-data-based and raw-data-based approaches. We analyze their theoretical foundations and practical implications and conduct experiments on benchmark and real-world medical datasets to compare their strengths and limitations. Conclusion: Based on these analyses, we provide practical recommendations and discuss open problems and future research directions for modeling irregularly sampled medical time series.

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