Projects per year
Abstract
Objective: Artificial intelligence (AI) is increasingly used in dental research for diagnosis, treatment planning, and disease prediction. However, many dental AI studies lack methodological rigor, transparency, or reproducibility, and no dedicated peer-review guidance exists for this field. Methods: Editors and reviewers from the ITU/WHO/WIPO AI for Health – Dentistry group participated in a structured survey and group discussions to identify key elements for reviewing AI dental research. A draft of the recommendations was circulated for feedback and consensus. Results: The consensus from editors and reviewers identified four key indicators of high-quality AI dental research: (1) relevance to a real clinical or methodological problem, (2) robust and transparent methodology, (3) reproducibility through data/code availability or functional demos, and (4) adherence to ethical and responsible reporting practices. Common reasons for rejection included lack of novelty, poor methodology, limited external testing, and overstated claims. Four essential checks were proposed to support peer review: the study should address a meaningful clinical question, follow appropriate reporting guidelines (e.g., DENTAL-AI, STARD-AI), clearly describe reproducible methods, and use precise, justified, and clinically relevant wording. Conclusion: Editors and reviewers play a critical role in improving the quality of AI research in dentistry. This guidance aims to support more robust peer review and contribute to the development of reliable, clinically relevant, and ethically sound AI applications in dentistry.
| Original language | English |
|---|---|
| Article number | 105867 |
| Number of pages | 6 |
| Journal | Journal of Dentistry |
| Volume | 160 |
| DOIs | |
| Publication status | Published - Sept 2025 |
Keywords*
- Artificial intelligence
- Deep learning
- Dentistry
- Machine learning
- Peer-review
Field of Science*
- 3.2 Clinical medicine
Publication Type*
- 1.1. Scientific article indexed in Web of Science and/or Scopus database
Fingerprint
Dive into the research topics of 'Evaluating dental AI research papers: Key considerations for editors and reviewers'. Together they form a unique fingerprint.Projects
- 1 Active
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IEVA: Implementation of the Evidence-Based Paediatric Caries Management Strategies in Latvian Clinical Practice - an Evidence Transfer Study
Maldupa, I. (Project leader), E. Uribe, S. (Work package leader), Innes, N. (Leading expert), Marino, R. (Leading expert), Viduskalne, I. (Expert), Grišakova, J. (Expert), Stars, I. (Expert), Evans, D. (Expert), Stāmere, U. (Assistant (student)), Sļepcova, O. (Assistant (student)), Gostilo, D. (Assistant (student)), Protasa, N. (Assistant (student)), Vagale, E. (Assistant (student)) & Vendiņa-Birzniece, I. (Participant)
1/01/23 → 31/12/25
Project: Fundamental and Applied Research Programme
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Integración de la IA en la Práctica Odontológica: Más Allá de la Automatización
E. Uribe, S. (Invited speaker)
18 Oct 2025Activity: Talk or presentation types › Invited talk
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Inteligencia Artificial en Odontología: Un Enfoque Clínico
E. Uribe, S. (Invited speaker)
5 Sept 2025Activity: Talk or presentation types › Invited talk
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How to Review an AI Research Paper in Dentistry: Guidance for Editors and Reviewers
E. Uribe, S. (Speaker)
2 Jul 2025Activity: Talk or presentation types › Oral presentation