The Role of Artificial Intelligence Model Documentation in Translational Science: Scoping Review.

IF 1.9 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Interactive Journal of Medical Research Pub Date : 2023-07-14 DOI:10.2196/45903
Tracey A Brereton, Momin M Malik, Mark Lifson, Jason D Greenwood, Kevin J Peterson, Shauna M Overgaard
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Abstract

Background: Despite the touted potential of artificial intelligence (AI) and machine learning (ML) to revolutionize health care, clinical decision support tools, herein referred to as medical modeling software (MMS), have yet to realize the anticipated benefits. One proposed obstacle is the acknowledged gaps in AI translation. These gaps stem partly from the fragmentation of processes and resources to support MMS transparent documentation. Consequently, the absence of transparent reporting hinders the provision of evidence to support the implementation of MMS in clinical practice, thereby serving as a substantial barrier to the successful translation of software from research settings to clinical practice.

Objective: This study aimed to scope the current landscape of AI- and ML-based MMS documentation practices and elucidate the function of documentation in facilitating the translation of ethical and explainable MMS into clinical workflows.

Methods: A scoping review was conducted in accordance with PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews) guidelines. PubMed was searched using Medical Subject Headings key concepts of AI, ML, ethical considerations, and explainability to identify publications detailing AI- and ML-based MMS documentation, in addition to snowball sampling of selected reference lists. To include the possibility of implicit documentation practices not explicitly labeled as such, we did not use documentation as a key concept but as an inclusion criterion. A 2-stage screening process (title and abstract screening and full-text review) was conducted by 1 author. A data extraction template was used to record publication-related information; barriers to developing ethical and explainable MMS; available standards, regulations, frameworks, or governance strategies related to documentation; and recommendations for documentation for papers that met the inclusion criteria.

Results: Of the 115 papers retrieved, 21 (18.3%) papers met the requirements for inclusion. Ethics and explainability were investigated in the context of AI- and ML-based MMS documentation and translation. Data detailing the current state and challenges and recommendations for future studies were synthesized. Notable themes defining the current state and challenges that required thorough review included bias, accountability, governance, and explainability. Recommendations identified in the literature to address present barriers call for a proactive evaluation of MMS, multidisciplinary collaboration, adherence to investigation and validation protocols, transparency and traceability requirements, and guiding standards and frameworks that enhance documentation efforts and support the translation of AI- and ML-based MMS.

Conclusions: Resolving barriers to translation is critical for MMS to deliver on expectations, including those barriers identified in this scoping review related to bias, accountability, governance, and explainability. Our findings suggest that transparent strategic documentation, aligning translational science and regulatory science, will support the translation of MMS by coordinating communication and reporting and reducing translational barriers, thereby furthering the adoption of MMS.

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人工智能模型文档在转化科学中的作用:范围审查。
背景:尽管人工智能(AI)和机器学习(ML)被吹捧有潜力彻底改变医疗保健,临床决策支持工具,在这里被称为医学建模软件(MMS),尚未实现预期的好处。一个被提出的障碍是人工智能翻译中公认的差距。这些差距部分源于支持MMS透明文档的流程和资源的分散。因此,缺乏透明的报告阻碍了在临床实践中提供支持MMS实施的证据,从而成为将软件从研究环境成功转化为临床实践的重大障碍。目的:本研究旨在探讨基于人工智能和机器学习的MMS文档实践的现状,并阐明文档在促进将道德和可解释的MMS转化为临床工作流程中的功能。方法:根据PRISMA-ScR(系统评价和荟萃分析扩展范围评价的首选报告项目)指南进行范围评价。除了对选定的参考文献列表进行滚雪球抽样外,还使用人工智能、机器学习、伦理考虑和可解释性等医学主题标题搜索PubMed,以确定详细介绍基于人工智能和机器学习的MMS文档的出版物。为了包含没有明确标记的隐式文档实践的可能性,我们没有将文档作为一个关键概念,而是作为一个包含标准。由1名作者进行两阶段筛选(标题和摘要筛选和全文审查)。数据提取模板用于记录出版相关信息;发展道德和可解释的MMS的障碍;与文档相关的可用标准、法规、框架或治理策略;以及对符合纳入标准的论文的文献推荐。结果:在检索到的115篇论文中,21篇(18.3%)符合纳入要求。在基于AI和ml的MMS文档和翻译的背景下,研究了伦理和可解释性。综合了详细说明当前状态和挑战的数据以及对未来研究的建议。值得注意的主题定义了需要彻底审查的当前状态和挑战,包括偏见、问责制、治理和可解释性。文献中提出的解决当前障碍的建议要求对MMS进行主动评估,多学科协作,遵守调查和验证协议,透明度和可追溯性要求,以及指导标准和框架,以加强文档工作并支持基于AI和ml的MMS的翻译。结论:解决翻译障碍对于MMS实现预期至关重要,包括在本范围审查中确定的与偏见、问责制、治理和可解释性相关的障碍。我们的研究结果表明,透明的战略文件,使翻译科学和监管科学保持一致,将通过协调沟通和报告以及减少翻译障碍来支持MMS的翻译,从而进一步推动MMS的采用。
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
Interactive Journal of Medical Research
Interactive Journal of Medical Research MEDICINE, RESEARCH & EXPERIMENTAL-
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发文量
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审稿时长
12 weeks
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