Ziyun Zeng, Ashwin Ramesh, Jinglong Ruan, Peirong Hao, Nisreen Al Jallad, Hoonji Jang, Oriana Ly-Mapes, Kevin Fiscella, Jin Xiao, Jiebo Luo
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引用次数: 0
Abstract
Dental caries is one of the most common diseases globally and affects children and adults living in poverty who have limited access to dental care the most. Left unexamined and untreated in the early stages, treatments for late-stage and severe caries are costly and unaffordable for socioeconomically disadvantaged families. If detected early, caries can be reversed to avoid more severe outcomes and a tremendous financial burden on the dental care system. Building upon a dataset of 50,179 intraoral tooth photos taken by various modalities, including smartphones and intraoral cameras, this study developed a multi-stage deep learning-based pipeline of AI algorithms that localize individual teeth and classify each tooth into several classes of caries. This study initially assigned International Caries Detection and Assessment System (ICDAS) scores to each tooth and subsequently grouped caries into two levels: Level-1 for white spots (ICDAS 1 and 2) and level-2 for cavitated lesions (ICDAS 3-6). The system's performance was assessed across a broad spectrum of anterior andposterior teeth photographs. For anterior teeth, 89.78% sensitivity and 91.67% specificity for level-1 (white spots) and 97.06% sensitivity and 99.79% specificity for level-2 (cavitated lesions) were achieved, respectively. For the more challenging posterior teeth due to the higher variability in the location of white spots, 90.25% sensitivity and 86.96% specificity for level-1 and 95.8% sensitivity and 94.12% specificity for level-2 were achieved, respectively. The performance of the developed AI algorithms shows potential as a cost-effective tool for early caries detection in non-clinical settings.
期刊介绍:
QI has a new contemporary design but continues its time-honored tradition of serving the needs of the general practitioner with clinically relevant articles that are scientifically based. Dr Eli Eliav and his editorial board are dedicated to practitioners worldwide through the presentation of high-level research, useful clinical procedures, and educational short case reports and clinical notes. Rigorous but timely manuscript review is the first order of business in their quest to publish a high-quality selection of articles in the multiple specialties and disciplines that encompass dentistry.