关于人工智能报告指南的元研究:放射学、核医学和医学影像期刊对作者和审稿人的鼓励是否足够?

IF 1.4 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Diagnostic and interventional radiology Pub Date : 2024-09-09 Epub Date: 2024-02-20 DOI:10.4274/dir.2024.232604
Burak Koçak, Ali Keleş, Fadime Köse
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引用次数: 0

摘要

目的:确定放射学、核医学和医学影像期刊如何在其作者和审稿人说明中鼓励和规定使用人工智能(AI)报告指南:期刊信息和相关引文数据的主要来源是《期刊引文报告》(2023 年 6 月发布的 2022 年引文数据;英国 Clarivate Analytics 公司)。收录的期刊包括《科学引文索引扩展版》和《新兴资源引文索引》收录的第一和第二梯队期刊。作者和审稿人说明由两位独立读者进行评估,然后由另一位读者达成共识,并辅以自动注释。对鼓励和投稿要求进行了系统分析。报告指南分为人工智能专用、与建模相关和与建模无关三类:在 102 种期刊中,有 98 种被纳入本研究,所有期刊都有作者须知。只有五种期刊(5%)鼓励作者遵循人工智能特定的报告指南。其中,3 种期刊要求填写核对表。16种期刊(16%)有审稿人须知,其中1种期刊(6%)鼓励审稿人遵循人工智能特定报告指南,但无投稿要求。与其他类型的指南相比,人工智能特定报告指南的作者和审稿人鼓励比例在统计学上明显较低(P < 0.05):研究结果表明,与建模相关和非建模相关指南相比,这些期刊并不普遍鼓励和强制要求(即要求填写核对表)针对人工智能的指南,因此还有很大的改进空间。这项荟萃研究希望有助于提高成像界对人工智能报告指南的认识,并激发所有利益相关者的大规模群策群力,使人工智能研究减少浪费:这项荟萃研究强调了在放射学、核医学和医学影像期刊中加强鼓励人工智能特定指南的必要性。这有可能提高人工智能界的认识,并激励各利益相关方合作,促进更高效、更负责任的人工智能研究报告实践。
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Meta-research on reporting guidelines for artificial intelligence: are authors and reviewers encouraged enough in radiology, nuclear medicine, and medical imaging journals?

Purpose: To determine how radiology, nuclear medicine, and medical imaging journals encourage and mandate the use of reporting guidelines for artificial intelligence (AI) in their author and reviewer instructions.

Methods: The primary source of journal information and associated citation data used was the Journal Citation Reports (June 2023 release for 2022 citation data; Clarivate Analytics, UK). The first- and second-quartile journals indexed in the Science Citation Index Expanded and the Emerging Sources Citation Index were included. The author and reviewer instructions were evaluated by two independent readers, followed by an additional reader for consensus, with the assistance of automatic annotation. Encouragement and submission requirements were systematically analyzed. The reporting guidelines were grouped as AI-specific, related to modeling, and unrelated to modeling.

Results: Out of 102 journals, 98 were included in this study, and all of them had author instructions. Only five journals (5%) encouraged the authors to follow AI-specific reporting guidelines. Among these, three required a filled-out checklist. Reviewer instructions were found in 16 journals (16%), among which one journal (6%) encouraged the reviewers to follow AI-specific reporting guidelines without submission requirements. The proportions of author and reviewer encouragement for AI-specific reporting guidelines were statistically significantly lower compared with those for other types of guidelines (P < 0.05 for all).

Conclusion: The findings indicate that AI-specific guidelines are not commonly encouraged and mandated (i.e., requiring a filled-out checklist) by these journals, compared with guidelines related to modeling and unrelated to modeling, leaving vast space for improvement. This meta-research study hopes to contribute to the awareness of the imaging community for AI reporting guidelines and ignite large-scale group efforts by all stakeholders, making AI research less wasteful.

Clinical significance: This meta-research highlights the need for improved encouragement of AI-specific guidelines in radiology, nuclear medicine, and medical imaging journals. This can potentially foster greater awareness among the AI community and motivate various stakeholders to collaborate to promote more efficient and responsible AI research reporting practices.

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来源期刊
Diagnostic and interventional radiology
Diagnostic and interventional radiology Medicine-Radiology, Nuclear Medicine and Imaging
自引率
4.80%
发文量
0
期刊介绍: Diagnostic and Interventional Radiology (Diagn Interv Radiol) is the open access, online-only official publication of Turkish Society of Radiology. It is published bimonthly and the journal’s publication language is English. The journal is a medium for original articles, reviews, pictorial essays, technical notes related to all fields of diagnostic and interventional radiology.
期刊最新文献
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