医疗保健大数据时代的高质量真实世界实验室数据。

IF 4 2区 医学 Q1 MEDICAL LABORATORY TECHNOLOGY Annals of Laboratory Medicine Pub Date : 2024-09-30 DOI:10.3343/alm.2024.0258
Sollip Kim, Won-Ki Min
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引用次数: 0

摘要

随着工业 4.0 的发展,大数据和人工智能在医学领域变得至关重要。电子健康记录是医疗数据的主要来源,它不是为研究目的而收集的,而是代表真实世界的数据;因此,它们有各种限制。实验室数据虽然是结构化的,但往往包含不规范的术语或缺失的信息。主要的挑战在于检测结果在计量方面缺乏标准化,这使得不同实验室之间的比较变得复杂。在本综述中,我们将深入探讨将真实世界的实验室数据整合为高质量大数据所必需的基本要素,包括术语、数据格式、方程的标准化以及结果的统一和标准化。此外,我们还讨论了实验室结果的转移和调整,以及实验室数据的质量认证。通过讨论这些关键方面,我们试图揭示在医疗保健大数据和人工智能框架内利用真实世界实验室数据所固有的挑战和机遇。
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Toward High-Quality Real-World Laboratory Data in the Era of Healthcare Big Data.

With Industry 4.0, big data and artificial intelligence have become paramount in the field of medicine. Electronic health records, the primary source of medical data, are not collected for research purposes but represent real-world data; therefore, they have various constraints. Although structured, laboratory data often contain unstandardized terminology or missing information. The major challenge lies in the lack of standardization of test results in terms of metrology, which complicates comparisons across laboratories. In this review, we delve into the essential components necessary for integrating real-world laboratory data into high-quality big data, including the standardization of terminology, data formats, equations, and the harmonization and standardization of results. Moreover, we address the transference and adjustment of laboratory results, along with the certification for quality of laboratory data. By discussing these critical aspects, we seek to shed light on the challenges and opportunities inherent to utilizing real-world laboratory data within the framework of healthcare big data and artificial intelligence.

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来源期刊
Annals of Laboratory Medicine
Annals of Laboratory Medicine MEDICAL LABORATORY TECHNOLOGY-
CiteScore
8.30
自引率
12.20%
发文量
100
审稿时长
6-12 weeks
期刊介绍: Annals of Laboratory Medicine is the official journal of Korean Society for Laboratory Medicine. The journal title has been recently changed from the Korean Journal of Laboratory Medicine (ISSN, 1598-6535) from the January issue of 2012. The JCR 2017 Impact factor of Ann Lab Med was 1.916.
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