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Reporting guideline for the use of Generative Artificial intelligence tools in MEdical Research: the GAMER Statement
44
Zitationen
16
Autoren
2025
Jahr
Abstract
OBJECTIVES: Generative artificial intelligence (GAI) tools can enhance the quality and efficiency of medical research, but their improper use may result in plagiarism, academic fraud and unreliable findings. Transparent reporting of GAI use is essential, yet existing guidelines from journals and institutions are inconsistent, with no standardised principles. DESIGN AND SETTING: International online Delphi study. PARTICIPANTS: International experts in medicine and artificial intelligence. MAIN OUTCOME MEASURES: The primary outcome measure is the consensus level of the Delphi expert panel on the items of inclusion criteria for GAMER (Rreporting guideline for the use of Generative Artificial intelligence tools in MEdical Research). RESULTS: The development process included a scoping review, two Delphi rounds and virtual meetings. 51 experts from 26 countries participated in the process (44 in the Delphi survey). The final checklist comprises nine reporting items: general declaration, GAI tool specifications, prompting techniques, tool's role in the study, declaration of new GAI model(s) developed, artificial intelligence-assisted sections in the manuscript, content verification, data privacy and impact on conclusions. CONCLUSION: GAMER provides universal and standardised guideline for GAI use in medical research, ensuring transparency, integrity and quality.
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Autoren
Institutionen
- Chinese Academy of Medical Sciences & Peking Union Medical College(CN)
- Lanzhou University(CN)
- National University of Singapore(SG)
- Singapore National Eye Center(SG)
- Singapore Eye Research Institute(SG)
- Duke-NUS Medical School(SG)
- University of Trieste(IT)
- Yale University(US)
- University of Applied Sciences Potsdam(DE)
- Hôtel-Dieu de France(LB)
- Imperial College London(GB)
- Odense University Hospital(DK)
- Otago Polytechnic(NZ)
- University of Otago(NZ)
- Jyoban Hospital of Tokiwa Foundation(JP)
- Queen's University(CA)
- Mayo Clinic(US)
- WinnMed(US)
- China Medical University(TW)
- An-Nan Hospital(TW)
- China Medical University Hospital(TW)
- University of Zenica(BA)
- Hong Kong Baptist University(HK)
- University of Geneva(CH)