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Accepted for/Published in: JMIR Research Protocols

Date Submitted: Nov 7, 2024
Date Accepted: Jun 10, 2025

The final, peer-reviewed published version of this preprint can be found here:

Generative Artificial Intelligence Tools in Medical Research (GAMER): Protocol for a Scoping Review and Development of Reporting Guidelines

Luo X, Tham YC, Daher M, Bian Z, Chen Y, Estill J, the CHEER working group

Generative Artificial Intelligence Tools in Medical Research (GAMER): Protocol for a Scoping Review and Development of Reporting Guidelines

JMIR Res Protoc 2025;14:e64640

DOI: 10.2196/64640

PMID: 40812737

PMCID: 12395103

Generative Artificial intelligence tools in MEdical Research (GAMER): Protocol for a scoping review and reporting guidelines development

  • Xufei Luo; 
  • Yih Chung Tham; 
  • Mohammad Daher; 
  • Zhaoxiang Bian; 
  • Yaolong Chen; 
  • Janne Estill; 
  • the CHEER working group

ABSTRACT

Background:

The integration of artificial intelligence (AI) has revolutionized medical research, offering innovative solutions for data collection, patient engagement, and information dissemination. Powerful generative AI (GAI) tools like ChatGPT and other similar chatbots have emerged, facilitating user interactions with virtual conversational agents. However, the increasing use of GAI tools in medical research presents challenges, including ethical concerns, data privacy issues, and the potential for generating false content. These issues necessitate standardization of reporting to ensure transparency and scientific rigor.

Objective:

The development of the CHatbots and other gEnerative AI tools in mEdical Research (CHEER) reporting guidelines aims to establish a comprehensive, standardized guideline for reporting the use of GAI tools in medical research.

Methods:

The CHEER guidelines are being developed following the methodology recommended by the Enhancing the QUAlity and Transparency Of health Research (EQUATOR) network, involving scoping reviews and expert Delphi consensus. The process consists of three stages: preparatory work, Delphi survey, and testing and dissemination. The study is approved by the Ethics Committee of the Institute of Health Data Science at Lanzhou University (approval number: HDS-202406-01).

Results:

The CHEER project was launched in July 2023 by the Evidence-Based Medicine Center of Lanzhou University and the WHO Collaborating Centre for Guideline Implementation and Knowledge Translation, and is scheduled to conclude in July 2024. The expected outcome of the CHEER project is a reporting checklist, accompanied by relevant terminology, examples, and explanations, to guide stakeholders in better reporting the use of GAI tools.

Conclusions:

CHEER aims to guide researchers, reviewers, and editors in the transparent and scientific application of GAI tools in medical research. By providing a standardized reporting framework, CHEER seeks to enhance the clarity, completeness, and integrity of research involving GAI tools, promoting collaboration, comparability, and cumulative knowledge generation in AI-driven healthcare technologies. Clinical Trial: We registered this protocol on the EQUATOR Network (https://www.equator-network.org/library/reporting-guidelines-under-development/reporting-guidelines-under-development-for-other-study-designs/#CHEER).


 Citation

Please cite as:

Luo X, Tham YC, Daher M, Bian Z, Chen Y, Estill J, the CHEER working group

Generative Artificial Intelligence Tools in Medical Research (GAMER): Protocol for a Scoping Review and Development of Reporting Guidelines

JMIR Res Protoc 2025;14:e64640

DOI: 10.2196/64640

PMID: 40812737

PMCID: 12395103

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