Guidelines and standard frameworks for artificial intelligence in medicine: a systematic review.

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES
JAMIA Open Pub Date : 2025-01-03 eCollection Date: 2025-02-01 DOI:10.1093/jamiaopen/ooae155
Kirubel Biruk Shiferaw, Moritz Roloff, Irina Balaur, Danielle Welter, Dagmar Waltemath, Atinkut Alamirrew Zeleke
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引用次数: 0

Abstract

Objectives: The continuous integration of artificial intelligence (AI) into clinical settings requires the development of up-to-date and robust guidelines and standard frameworks that consider the evolving challenges of AI implementation in medicine. This review evaluates the quality of these guideline and summarizes ethical frameworks, best practices, and recommendations.

Materials and methods: The Appraisal of Guidelines, Research, and Evaluation II tool was used to assess the quality of guidelines based on 6 domains: scope and purpose, stakeholder involvement, rigor of development, clarity of presentation, applicability, and editorial independence. The protocol of this review including the eligibility criteria, the search strategy data extraction sheet and methods, was published prior to the actual review with International Registered Report Identifier of DERR1-10.2196/47105.

Results: The initial search resulted in 4975 studies from 2 databases and 7 studies from manual search. Eleven articles were selected for data extraction based on the eligibility criteria. We found that while guidelines generally excel in scope, purpose, and editorial independence, there is significant variability in applicability and the rigor of guideline development. Well-established initiatives such as TRIPOD+AI, DECIDE-AI, SPIRIT-AI, and CONSORT-AI have shown high quality, particularly in terms of stakeholder involvement. However, applicability remains a prominent challenge among the guidelines. The result also showed that the reproducibility, ethical, and environmental aspects of AI in medicine still need attention from both medical and AI communities.

Discussion: Our work highlights the need for working toward the development of integrated and comprehensive reporting guidelines that adhere to the principles of Findability, Accessibility, Interoperability and Reusability. This alignment is essential for fostering a cultural shift toward transparency and open science, which are pivotal milestone for sustainable digital health research.

Conclusion: This review evaluates the current reporting guidelines, discussing their advantages as well as challenges and limitations.

医学中人工智能的指南和标准框架:系统综述。
目标:将人工智能(AI)持续整合到临床环境中,需要制定最新且强大的指南和标准框架,以考虑AI在医学中实施的不断变化的挑战。本综述评估了这些指南的质量,并总结了道德框架、最佳实践和建议。材料和方法:指南评估、研究和评估II工具用于基于6个领域评估指南的质量:范围和目的、利益相关者参与、开发的严密性、表述的清晰度、适用性和编辑独立性。本综述的方案包括资格标准、检索策略、数据提取表和方法,已在实际评审前发布,国际注册报告标识符为DERR1-10.2196/47105。结果:最初的检索结果是来自2个数据库的4975项研究和人工检索的7项研究。根据入选标准选取11篇文章进行数据提取。我们发现,虽然指南通常在范围、目的和编辑独立性方面表现优异,但在指南制定的适用性和严谨性方面存在显著的可变性。诸如TRIPOD+AI、DECIDE-AI、SPIRIT-AI和consortium -AI等成熟的项目已经显示出高质量,特别是在利益相关者参与方面。然而,适用性仍然是指南中一个突出的挑战。研究结果还表明,人工智能在医学中的可重复性、伦理和环境方面仍然需要引起医学界和人工智能界的关注。讨论:我们的工作强调了朝着遵循可查找性、可访问性、互操作性和可重用性原则的集成和全面报告指导方针的发展而努力的必要性。这种一致性对于促进向透明和开放科学的文化转变至关重要,这是可持续数字健康研究的关键里程碑。结论:本综述评估了目前的报告指南,讨论了它们的优点、挑战和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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