OMFS IMPATH Research Group, Department of Imaging and Pathology, Faculty of Medicine, University of Leuven and Oral & Maxillofacial Surgery, University Hospitals Leuven, KU Leuven, Kapucijnenvoer 33, 3000, Leuven, Belgium.
Department of Dentistry, Faculty of Health Sciences, Campus Universitario Darcy Ribeiro, University of Brasília, Brasília, 70910-900, Brazil.
Clin Oral Investig. 2021 Apr;25(4):2257-2267. doi: 10.1007/s00784-020-03544-6. Epub 2020 Aug 26.
To evaluate the performance of a new artificial intelligence (AI)-driven tool for tooth detection and segmentation on panoramic radiographs.
In total, 153 radiographs were collected. A dentomaxillofacial radiologist labeled and segmented each tooth, serving as the ground truth. Class-agnostic crops with one tooth resulted in 3576 training teeth. The AI-driven tool combined two deep convolutional neural networks with expert refinement. Accuracy of the system to detect and segment teeth was the primary outcome, time analysis secondary. The Kruskal-Wallis test was used to evaluate differences of performance metrics among teeth groups and different devices and chi-square test to verify associations among the amount of corrections, presence of false positive and false negative, and crown and root parts of teeth with potential AI misinterpretations.
The system achieved a sensitivity of 98.9% and a precision of 99.6% for tooth detection. For segmenting teeth, lower canines presented best results with the following values for intersection over union, precision, recall, F1-score, and Hausdorff distances: 95.3%, 96.9%, 98.3%, 97.5%, and 7.9, respectively. Although still above 90%, segmentation results for both upper and lower molars were somewhat lower. The method showed a clinically significant reduction of 67% of the time consumed for the manual.
The AI tool yielded a highly accurate and fast performance for detecting and segmenting teeth, faster than the ground truth alone.
An innovative clinical AI-driven tool showed a faster and more accurate performance to detect and segment teeth on panoramic radiographs compared with manual segmentation.
评估一种新的人工智能(AI)驱动的工具在全景片上检测和分割牙齿的性能。
共采集了 153 张射线照片。一位口腔颌面放射科医生对每颗牙齿进行标记和分割,作为基准。生成的具有一个牙齿的无类别作物共有 3576 个训练牙齿。AI 驱动的工具结合了两个深度卷积神经网络和专家精修。系统检测和分割牙齿的准确性是主要结果,时间分析是次要结果。Kruskal-Wallis 检验用于评估不同牙齿组和不同设备之间的性能指标差异,卡方检验用于验证与潜在 AI 误判相关的校正量、假阳性和假阴性的存在、以及牙齿的冠和根部分之间的关系。
该系统在牙齿检测方面达到了 98.9%的灵敏度和 99.6%的精度。对于牙齿分割,下尖牙的结果最佳,其交并比、精度、召回率、F1 得分和 Hausdorff 距离分别为 95.3%、96.9%、98.3%、97.5%和 7.9。虽然仍然高于 90%,但上下磨牙的分割结果略低。该方法显著减少了 67%的手动分割时间。
AI 工具在检测和分割牙齿方面表现出高度准确和快速的性能,比基准单独使用更快。
一种创新的临床 AI 驱动工具在检测和分割全景片上的牙齿方面表现出比手动分割更快、更准确的性能。