IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-03-05 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1550731
Giovanni Morone, Luigi De Angelis, Alex Martino Cinnera, Riccardo Carbonetti, Alessio Bisirri, Irene Ciancarelli, Marco Iosa, Stefano Negrini, Carlotte Kiekens, Francesco Negrini
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引用次数: 0

摘要

医学对人工智能(AI)的使用越来越乐于接受。本系统综述(SR)旨在对当前有关人工智能的证据进行分类,并确定该领域当前的方法论现状,同时提出一个人工智能分类模型(CLASMOD-AI),以改进未来的报告。四名盲审员对 PubMed/MEDLINE、Scopus、Cochrane 图书馆、EMBASE 和 Epistemonikos 数据库进行了筛选,并纳入了所有研究临床医学中人工智能工具的 SR。共找到 1923 篇文章,其中 360 篇文章通过全文检索,161 篇 SR 符合纳入标准。提取了检索策略、方法学、医学和偏倚风险信息。CLASMOD-AI 基于人工智能工具的输入、模型、数据训练和性能指标。在过去五年中,研究报告的数量大幅增加。涉及最多的领域是肿瘤学,占工作人员代表总数的 13.9%,44.4%的案例以诊断为主要目标)。49.1%的样本报告对偏倚风险进行了评估,但其中只有39.2%的报告使用了带有特定项目的工具来评估人工智能指标。本综述强调了改进人工智能指标报告的必要性,特别是有关人工智能模型训练和数据集质量的报告,因为这两项指标对于全面质量评估和使用专门评估工具降低偏倚风险至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence in clinical medicine: a state-of-the-art overview of systematic reviews with methodological recommendations for improved reporting.

Medicine has become increasingly receptive to the use of artificial intelligence (AI). This overview of systematic reviews (SRs) aims to categorise current evidence about it and identify the current methodological state of the art in the field proposing a classification of AI model (CLASMOD-AI) to improve future reporting. PubMed/MEDLINE, Scopus, Cochrane library, EMBASE and Epistemonikos databases were screened by four blinded reviewers and all SRs that investigated AI tools in clinical medicine were included. 1923 articles were found, and of these, 360 articles were examined via the full-text and 161 SRs met the inclusion criteria. The search strategy, methodological, medical and risk of bias information were extracted. The CLASMOD-AI was based on input, model, data training, and performance metric of AI tools. A considerable increase in the number of SRs was observed in the last five years. The most covered field was oncology accounting for 13.9% of the SRs, with diagnosis as the predominant objective in 44.4% of the cases). The risk of bias was assessed in 49.1% of included SRs, yet only 39.2% of these used tools with specific items to assess AI metrics. This overview highlights the need for improved reporting on AI metrics, particularly regarding the training of AI models and dataset quality, as both are essential for a comprehensive quality assessment and for mitigating the risk of bias using specialized evaluation tools.

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CiteScore
4.20
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