Validation of an Artificial Intelligence-Based Model for Early Childhood Caries Detection in Dental Photographs
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Published:2024-09-03
Issue:17
Volume:13
Page:5215
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ISSN:2077-0383
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Container-title:Journal of Clinical Medicine
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language:en
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Short-container-title:JCM
Author:
Schwarzmaier Julia1, Frenkel Elisabeth1, Neumayr Julia1ORCID, Ammar Nour1ORCID, Kessler Andreas12, Schwendicke Falk1, Kühnisch Jan1ORCID, Dujic Helena1ORCID
Affiliation:
1. Department of Conservative Dentistry and Periodontology, University Hospital, Ludwig-Maximilians University of Munich, 80336 Munich, Germany 2. Department of Prosthetic Dentistry, Center for Dental Medicine, University Hospital Freiburg, 79106 Freiburg, Germany
Abstract
Background/Objectives: Early childhood caries (ECC) is a widespread and severe oral health problem that potentially affects the general health of children. Visual–tactile examination remains the diagnostic method of choice to diagnose ECC, although visual examination could be automated by artificial intelligence (AI) tools in the future. The aim of this study was the external validation of a recently published and freely accessible AI-based model for detecting ECC and classifying carious lesions in dental photographs. Methods: A total of 143 anonymised photographs of anterior deciduous teeth (ECC = 107, controls = 36) were visually evaluated by the dental study group (reference test) and analysed using the AI-based model (test method). Diagnostic performance was determined statistically. Results: ECC detection accuracy was 97.2%. Diagnostic performance varied between carious lesion classes (noncavitated lesions, greyish translucency/microcavity, cavitation, destructed tooth), with accuracies ranging from 88.9% to 98.1%, sensitivities ranging from 68.8% to 98.5% and specificities ranging from 86.1% to 99.4%. The area under the curve ranged from 0.834 to 0.964. Conclusions: The performance of the AI-based model is similar to that reported for the internal dataset used by developers. Further studies with independent image samples are required to comprehensively gauge the performance of the model.
Funder
Forschungsgemeinschaft Dental e.V.
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