Detecting dental caries on oral photographs using artificial intelligence: A systematic review
- PMID: 37392423
- DOI: 10.1111/odi.14659
Detecting dental caries on oral photographs using artificial intelligence: A systematic review
Abstract
Objectives: This systematic review aimed at evaluating the performance of artificial intelligence (AI) models in detecting dental caries on oral photographs.
Methods: Methodological characteristics and performance metrics of clinical studies reporting on deep learning and other machine learning algorithms were assessed. The risk of bias was evaluated using the quality assessment of diagnostic accuracy studies 2 (QUADAS-2) tool. A systematic search was conducted in EMBASE, Medline, and Scopus.
Results: Out of 3410 identified records, 19 studies were included with six and seven studies having low risk of biases and applicability concerns for all the domains, respectively. Metrics varied widely and were assessed on multiple levels. F1-scores for classification and detection tasks were 68.3%-94.3% and 42.8%-95.4%, respectively. Irrespective of the task, F1-scores were 68.3%-95.4% for professional cameras, 78.8%-87.6%, for intraoral cameras, and 42.8%-80% for smartphone cameras. Limited studies allowed assessing AI performance for lesions of different severity.
Conclusion: Automatic detection of dental caries using AI may provide objective verification of clinicians' diagnoses and facilitate patient-clinician communication and teledentistry. Future studies should consider more robust study designs, employ comparable and standardized metrics, and focus on the severity of caries lesions.
Keywords: deep learning; dental caries; intraoral camera; oral photograph; smartphone.
© 2023 The Authors. Oral Diseases published by Wiley Periodicals LLC.
Comment in
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Comment on: Detecting dental caries on oral photographs using artificial intelligence: A systematic review.Oral Dis. 2024 Jul;30(5):3549-3550. doi: 10.1111/odi.14794. Epub 2023 Oct 27. Oral Dis. 2024. PMID: 37890040 No abstract available.
References
REFERENCES
-
- Askar, H., Krois, J., Rohrer, C., Mertens, S., Elhennawy, K., Ottolenghi, L., Mazur, M., Paris, S., & Schwendicke, F. (2021). Detecting white spot lesions on dental photography using deep learning: A pilot study. Journal of Dentistry, 107, 103615.
-
- Berdouses, E. D., Koutsouri, G. D., Tripoliti, E. E., Matsopoulos, G. K., & Oulis, C. J. (2015). A computer‐aided automated methodology for the detection and classification of occlusal caries from photographic color images. Computer Methods and Programs in Biomedicine, 62, 119–135.
-
- Boye, U., Pretty, I. A., Tickle, M., & Walsh, T. (2013). Comparison of caries detection methods using varying numbers of intra‐oral digital photographs with visual examination for epidemiology in children. BMC Oral Health, 13(1), 1–11. https://doi.org/10.1186/1472‐6831‐13‐7
-
- Boye, U., Walsh, T., & Pretty, I. (2012). Comparison of photographic and visual assessment of occlusal caries with histology as the reference standard. BMC Oral Health, 12(1), 1–7. https://doi.org/10.1186/1472‐6831‐12‐1
-
- Casalegno, F., Newton, T., Daher, R., Abdelaziz, M., Lodi‐Rizzini, A., Schürmann, F., Krejci, I., & Markram, H. (2019). Caries detection with near‐infrared transillumination using deep learning. Journal of Dental Research, 98, 1227–1233.
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