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Recommendations for disclosure of artificial intelligence in scientific writing and publishing: a regional anesthesia and pain medicine modified Delphi study
9
Zitationen
22
Autoren
2025
Jahr
Abstract
INTRODUCTION: (RAPM) therefore sought to develop best practices for AI usage and disclosure. METHODS: A steering committee from the American Society of Regional Anesthesia and Pain Medicine used a modified Delphi process to address definitions, disclosure requirements, authorship standards, and editorial oversight for AI use in publishing. The committee reviewed existing publication guidelines and identified areas of ambiguity, which were translated into questions and distributed to an expert workgroup of authors, reviewers, editors, and AI researchers. RESULTS: Two survey rounds, with 91% and 87% response rates, were followed by focused discussion and clarification to identify consensus recommendations. The workgroup achieved consensus on recommendations to authors about definitions of AI, required items to report, disclosure locations, authorship stipulations, and AI use during manuscript preparation. The workgroup formulated recommendations to reviewers about monitoring and evaluating the responsible use of AI in the review process, including the endorsement of AI-detection software, identification of concerns about undisclosed AI use, situations where AI use may necessitate the rejection of a manuscript, and use of checklists in the review process. Finally, there was consensus about AI-driven work, including required and optional disclosures and the use of checklists for AI-associated research. DISCUSSION: Our modified Delphi study identified practical recommendations on AI use during the scientific writing and editorial process. The workgroup highlighted the need for transparency, human accountability, protection of patient confidentiality, editorial oversight, and the need for iterative updates. The proposed framework enables authors and editors to harness AI's efficiencies while maintaining the fundamental principles of responsible scientific communication and may serve as an example for other journals.
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Autoren
- Michael R. Fettiplace
- Anuj Bhatia
- Yian Chen
- Steven L. Orebaugh
- Michael Gofeld
- Rodney A. Gabriel
- Daniel I. Sessler
- Hannah Lonsdale
- Brittani Bungart
- Christopher Cheng
- Garrett W. Burnett
- Lichy Han
- M. D. Wiles
- Steve Coppens
- Thomas T. Joseph
- Kristin L. Schreiber
- Thomas Volk
- Richard D. Urman
- Vesela Kovacheva
- Christopher L. Wu
- Edward R. Mariano
- Vivian Ip
Institutionen
- University of Illinois Chicago(US)
- University of Chicago(US)
- University of Toronto(CA)
- Toronto Western Hospital(CA)
- University of Washington(US)
- UPMC Health System(US)
- University of Pittsburgh Medical Center(US)
- NOSM University(CA)
- University of California San Diego(US)
- The University of Texas Health Science Center(US)
- The University of Texas Health Science Center at Houston(US)
- Vanderbilt University Medical Center(US)
- Icahn School of Medicine at Mount Sinai(US)
- Stanford University(US)
- Sheffield Teaching Hospitals NHS Foundation Trust(GB)
- Sheffield Hallam University(GB)
- KU Leuven(BE)
- University of Pennsylvania(US)
- Brigham and Women's Hospital(US)
- Outcomes Research Consortium(US)
- Saarland University(DE)
- The Ohio State University(US)
- Hospital for Special Surgery(US)
- Cornell University(US)
- Weill Cornell Medicine(US)
- VA Palo Alto Health Care System(US)
- South Health Campus(CA)