常规护理电子健康记录(EHR)的多模式融合:范围综述。

IF 2.9 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Information (Switzerland) Pub Date : 2025-01-01 Epub Date: 2025-01-15 DOI:10.3390/info16010054
Zina Ben-Miled, Jacob A Shebesh, Jing Su, Paul R Dexter, Randall W Grout, Malaz A Boustani
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引用次数: 0

摘要

背景:电子健康记录(EHR)现在在医疗保健机构广泛使用,用于记录患者与医疗保健服务互动时的病史。特别是,收集了大量患者的常规护理电子病历数据。这些数据跨越多个异构元素(即,人口统计、诊断、药物、临床记录、生命体征和实验室结果),其中包含语义、概念和时间信息。生成式学习技术的最新进展能够利用多个常规护理电子病历数据元素的融合来增强临床决策支持。目的:需要对所提出的技术进行范围审查,包括融合架构、输入数据元素和应用领域,以综合差异并确定研究差距,从而促进这些技术在新的临床结果中的重用。设计:使用谷歌Scholar进行了全面的文献检索,以确定2018年至2023年期间多模式常规护理EHR数据的高影响融合架构。遵循PRISMA(系统评价和荟萃分析首选报告项目)扩展范围评价的指南。研究结果是通过专题和比较分析从选定的研究中得出的。结果:范围审查揭示了电子病历数据元素在转换为输入模式时缺乏标准定义。这些定义忽略了数据的一个或多个关键特征,包括数据源、编码模式和概念级别。此外,为了适应紧急生成学习技术,融合架构的分类应该区分融合和学习,并考虑到学习可以同时发生在新融合架构的所有三层(即编码、表示和决策)中。这些方面构成了为常规护理电子病历数据设计多模式融合架构的简化方法的第一步。此外,目前的预训练编码模型在处理时间和语义信息方面不一致,从而阻碍了它们在不同应用和临床环境中的重用。结论:目前的常规护理EHR融合架构大多遵循按例设计的方法。为广泛的医疗保健应用设计有效的多模态模型需要指导方针。除了促进重用之外,这些指导方针还需要概述结合多种模式的最佳实践,同时利用迁移学习和共同学习以及语义和时间编码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-Modal Fusion of Routine Care Electronic Health Records (EHR): A Scoping Review.

Multi-Modal Fusion of Routine Care Electronic Health Records (EHR): A Scoping Review.

Multi-Modal Fusion of Routine Care Electronic Health Records (EHR): A Scoping Review.

Background: Electronic health records (EHR) are now widely available in healthcare institutions to document the medical history of patients as they interact with healthcare services. In particular, routine care EHR data are collected for a large number of patients. These data span multiple heterogeneous elements (i.e., demographics, diagnosis, medications, clinical notes, vital signs, and laboratory results) which contain semantic, concept, and temporal information. Recent advances in generative learning techniques were able to leverage the fusion of multiple routine care EHR data elements to enhance clinical decision support.

Objective: A scoping review of the proposed techniques including fusion architectures, input data elements, and application areas is needed to synthesize variances and identify research gaps that can promote re-use of these techniques for new clinical outcomes.

Design: A comprehensive literature search was conducted using Google Scholar to identify high impact fusion architectures over multi-modal routine care EHR data during the period 2018 to 2023. The guidelines from the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) extension for scoping review were followed. The findings were derived from the selected studies using a thematic and comparative analysis.

Results: The scoping review revealed the lack of standard definition for EHR data elements as they are transformed into input modalities. These definitions ignore one or more key characteristics of the data including source, encoding scheme, and concept level. Moreover, in order to adapt to emergent generative learning techniques, the classification of fusion architectures should distinguish fusion from learning and take into consideration that learning can concurrently happen in all three layers of new fusion architectures (i.e., encoding, representation, and decision). These aspects constitute the first step towards a streamlined approach to the design of multi-modal fusion architectures for routine care EHR data. In addition, current pretrained encoding models are inconsistent in their handling of temporal and semantic information thereby hindering their re-use for different applications and clinical settings.

Conclusions: Current routine care EHR fusion architectures mostly follow a design-by-example methodology. Guidelines are needed for the design of efficient multi-modal models for a broad range of healthcare applications. In addition to promoting re-use, these guidelines need to outline best practices for combining multiple modalities while leveraging transfer learning and co-learning as well as semantic and temporal encoding.

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来源期刊
Information (Switzerland)
Information (Switzerland) Computer Science-Information Systems
CiteScore
6.90
自引率
0.00%
发文量
515
审稿时长
11 weeks
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