Jeong Jin-Sun, Kim Kyeong-Seop, Gu Yu, Yoon Da-Hyun, Zhang Meng, Wang Ling, Kim Jeong-Hwan
School of Nursing and Rehabilitation, Cheeloo College of Medicine, Shandong University, Jinan, Shandong, 250012, China.
Department of Biomedical Engineering, College of Science and Technology, Konkuk University, Chungju, Republic of Korea.
BMC Oral Health. 2025 Jul 2;25(1):1000. doi: 10.1186/s12903-025-06350-2.
The integration of artificial intelligence (AI) into healthcare has led to promising advancements in clinical decision-making and diagnostic accuracy. In dentistry, automated methods to evaluate oral hygiene measures, such as dental plaque detection, could improve patient care and streamline remote assessments.
This study aimed to develop and evaluate a deep learning (DL)-based system that automatically detects and quantifies dental plaque, using a standardized plaque index, from intraoral images.
Seventy participants were assessed using the Quigley-Hein plaque index, a clinical measure of plaque accumulation, following the application of a plaque-disclosing agent. Images were captured before and after dye application. Each tooth was labeled using the LabelMe software, indicating both tooth number and plaque presence for training and validation of the DL model. The performance of the DL-based system was statistically compared to the assessments of a highly experienced dentist (10 years) and a dental hygienist (1 year).
After data augmentation, the DL model achieved a micro-average accuracy of 73.67% and a macro-average accuracy of 65.15%, with a precision of 76.34%, recall of 65.15%, and an F1 score of 66.15%. Statistical analysis showed no significant difference between the DL model's performance and that of the experienced dentist (P > 0.05), supporting its clinical reliability.
The DL-based system successfully automated the evaluation of dental plaque from images, performing comparably to an experienced clinician. These findings underscore the potential for AI-driven plaque assessment tools to enhance digital dentistry, potentially supporting remote dental evaluations and improve oral healthcare delivery.
将人工智能(AI)整合到医疗保健领域已在临床决策和诊断准确性方面取得了有前景的进展。在牙科领域,评估口腔卫生措施的自动化方法,如牙菌斑检测,可改善患者护理并简化远程评估。
本研究旨在开发并评估一种基于深度学习(DL)的系统,该系统可使用标准化的菌斑指数从口腔内图像中自动检测和量化牙菌斑。
在应用菌斑显示剂后,使用Quigley-Hein菌斑指数(一种菌斑积聚的临床测量方法)对七十名参与者进行评估。在应用染料前后拍摄图像。使用LabelMe软件对每颗牙齿进行标记,标明牙齿编号和菌斑存在情况,用于DL模型的训练和验证。将基于DL的系统的性能与一位经验丰富的牙医(10年经验)和一位口腔保健员(1年经验)的评估进行统计学比较。
经过数据增强后,DL模型的微平均准确率为73.67%),宏平均准确率为65.15%,精确率为76.34%,召回率为65.15%,F1分数为66.15%。统计分析表明,DL模型的性能与经验丰富的牙医的性能之间无显著差异(P > ),支持其临床可靠性。
基于DL的系统成功实现了从图像中自动评估牙菌斑,其表现与经验丰富的临床医生相当。这些发现强调了人工智能驱动的菌斑评估工具在增强数字牙科方面的潜力,可能支持远程牙科评估并改善口腔医疗服务。