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基于真实初级医疗保健数据进行训练或验证的机器学习诊断和预后模型预测的临床健康状况的系统评价。

A systematic review of clinical health conditions predicted by machine learning diagnostic and prognostic models trained or validated using real-world primary health care data.

机构信息

Chair of Epidemiology, Department of Sport and Health Sciences, Technical University of Munich (TUM), Munich, Germany.

Faculty of Medicine and Health Sciences, McGill University, Montreal, Quebec, Canada.

出版信息

PLoS One. 2023 Sep 8;18(9):e0274276. doi: 10.1371/journal.pone.0274276. eCollection 2023.

Abstract

With the advances in technology and data science, machine learning (ML) is being rapidly adopted by the health care sector. However, there is a lack of literature addressing the health conditions targeted by the ML prediction models within primary health care (PHC) to date. To fill this gap in knowledge, we conducted a systematic review following the PRISMA guidelines to identify health conditions targeted by ML in PHC. We searched the Cochrane Library, Web of Science, PubMed, Elsevier, BioRxiv, Association of Computing Machinery (ACM), and IEEE Xplore databases for studies published from January 1990 to January 2022. We included primary studies addressing ML diagnostic or prognostic predictive models that were supplied completely or partially by real-world PHC data. Studies selection, data extraction, and risk of bias assessment using the prediction model study risk of bias assessment tool were performed by two investigators. Health conditions were categorized according to international classification of diseases (ICD-10). Extracted data were analyzed quantitatively. We identified 106 studies investigating 42 health conditions. These studies included 207 ML prediction models supplied by the PHC data of 24.2 million participants from 19 countries. We found that 92.4% of the studies were retrospective and 77.3% of the studies reported diagnostic predictive ML models. A majority (76.4%) of all the studies were for models' development without conducting external validation. Risk of bias assessment revealed that 90.8% of the studies were of high or unclear risk of bias. The most frequently reported health conditions were diabetes mellitus (19.8%) and Alzheimer's disease (11.3%). Our study provides a summary on the presently available ML prediction models within PHC. We draw the attention of digital health policy makers, ML models developer, and health care professionals for more future interdisciplinary research collaboration in this regard.

摘要

随着技术和数据科学的进步,机器学习(ML)正在被医疗保健领域迅速采用。然而,迄今为止,针对初级保健(PHC)中 ML 预测模型所针对的健康状况的文献还很少。为了填补这一知识空白,我们按照 PRISMA 指南进行了系统回顾,以确定 PHC 中 ML 针对的健康状况。我们在 Cochrane 图书馆、Web of Science、PubMed、Elsevier、BioRxiv、美国计算机协会(ACM)和 IEEE Xplore 数据库中搜索了 1990 年 1 月至 2022 年 1 月发表的研究。我们纳入了主要研究,这些研究涉及由真实世界 PHC 数据完全或部分提供的 ML 诊断或预后预测模型。两名研究人员对研究选择、数据提取和使用预测模型研究风险偏倚评估工具进行了风险偏倚评估。根据国际疾病分类(ICD-10)对健康状况进行分类。提取的数据进行了定量分析。我们确定了 106 项研究,涉及 42 种健康状况。这些研究包括 207 个 ML 预测模型,这些模型由来自 19 个国家的 2420 万参与者的 PHC 数据提供。我们发现,92.4%的研究是回顾性的,77.3%的研究报告了诊断预测 ML 模型。大多数(76.4%)研究都是在没有进行外部验证的情况下开发模型的。风险偏倚评估显示,90.8%的研究存在高风险或不确定风险的偏倚。报告最多的健康状况是糖尿病(19.8%)和阿尔茨海默病(11.3%)。我们的研究提供了 PHC 中现有 ML 预测模型的概述。我们提请数字健康政策制定者、ML 模型开发者和医疗保健专业人员注意,在这方面需要进行更多的跨学科研究合作。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57f7/10491005/955844bddea0/pone.0274276.g001.jpg

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