电子健康记录分析中结构化数据之外的挑战和机遇

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2021-02-14 DOI:10.1002/wics.1549
Maryam Tayefi, Phuong D. Ngo, T. Chomutare, H. Dalianis, Elisa Salvi, A. Budrionis, F. Godtliebsen
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引用次数: 67

摘要

电子健康记录(EHR)包含了关于个体患者和整个人群的大量有价值的信息。除了结构化数据,电子病历中的非结构化数据可以提供额外的、有价值的信息,但分析过程复杂、耗时,而且通常需要大量的人工工作。在非结构化数据中,临床文本和图像是两种最流行和最重要的信息来源。自然语言处理、机器学习、深度学习和放射组学中的高级统计算法已越来越多地用于分析临床文本和图像。尽管存在许多尚未完全解决的挑战,这可能会阻碍非结构化数据的使用,但设计良好的诊断和决策支持工具显然有机会有效地将结构化和非结构化数据结合起来,以提取有用的信息并提供更好的结果。然而,由于数据敏感性和伦理问题,对临床数据的访问仍然非常有限。数据质量也是一个重要的挑战,需要提高数据完整性、一致性和可信性的方法。此外,概括和解释机器学习模型的结果是医疗保健的重要问题,这些都是开放的挑战。提高数据质量和非结构化数据可访问性的一个可能解决方案是开发能够生成临床相关合成数据的机器学习方法,并加速对隐私保护技术的进一步研究,如临床文本的去识别和假名化。
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Challenges and opportunities beyond structured data in analysis of electronic health records
Electronic health records (EHR) contain a lot of valuable information about individual patients and the whole population. Besides structured data, unstructured data in EHRs can provide extra, valuable information but the analytics processes are complex, time‐consuming, and often require excessive manual effort. Among unstructured data, clinical text and images are the two most popular and important sources of information. Advanced statistical algorithms in natural language processing, machine learning, deep learning, and radiomics have increasingly been used for analyzing clinical text and images. Although there exist many challenges that have not been fully addressed, which can hinder the use of unstructured data, there are clear opportunities for well‐designed diagnosis and decision support tools that efficiently incorporate both structured and unstructured data for extracting useful information and provide better outcomes. However, access to clinical data is still very restricted due to data sensitivity and ethical issues. Data quality is also an important challenge in which methods for improving data completeness, conformity and plausibility are needed. Further, generalizing and explaining the result of machine learning models are important problems for healthcare, and these are open challenges. A possible solution to improve data quality and accessibility of unstructured data is developing machine learning methods that can generate clinically relevant synthetic data, and accelerating further research on privacy preserving techniques such as deidentification and pseudonymization of clinical text.
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CiteScore
6.20
自引率
0.00%
发文量
31
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