电子健康记录中深度学习技术的系统文献综述

G. Chitra, S. M. Basha
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引用次数: 0

摘要

如今,电子健康记录(EHR)中存储着大量的数字信息。电子病历包含丰富的信息,包括临床记录、患者信息、药物、程序、实验室测试报告等。因此,它也极大地推动了利用EHour R来辅助临床决策支持系统。典型的电子病历数据是不规则采样的、异构的、多模态的,缺乏带有噪声和缺失信息的注释。隐私需求的另一个挑战也意味着用于基准测试的公开可用数据集非常有限。机器学习技术在提供分析大量异构数据的工具方面处于最前沿。深度学习技术的最新进展极大地促进了电子病历的应用。为此,介绍了用于分析电子病历数据的最新进展和技术的概述。回顾文献并讨论不同方法的挑战。除此之外,还概述了有助于未来研究改进和触发医疗保健创新应用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic Literature Review on Deep Learning Techniques in Electronic Health Records
Nowadays there is a tremendous amount of digital information stored in Electronic Health Records (EHR). The EHR incorporates a wealth of information consisting of clinical notes, patient information, medications, procedures, laboratory test reports and so on. Thus, it has also led to huge impetus on exploiting the EHour R to aid clinical decision support systems. There is a growing research body in this direction to develop useful insights from FHR The typical EHR data is irregularly sampled, heterogenous, multi-modal lacking annotations with noisy and missing information. An additional challenge of need for privacy also means very limited publicly available datasetsfor benchmarking. Machine learning techniques are at the forefront of this effort in providing tools to analyse the huge amount of heterogeneous data. Recent advances in deep learning techniques have immensely contributed to growing applications using EHR Towards this, overview of recent advancements and techniques employed to analyse EHR data is introduced. A review of the literature and discuss the challenges of different approaches. In addition to that birds-view summary of the methods to aid future research improvements and trigger innovative applications in healthcare.
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