Chen Chin-Chang, Wu Yi-Fan, Aung Lwin Moe, Lin Jerry C-Y, Ngo Sin Ting, Su Jo-Ning, Lin Yuan-Min, Chang Wei-Jen
College of Dentistry, National Yang Ming Chiao Tung University, Taipei, Taiwan.
Dentall Co., Ltd., Taipei, Taiwan.
J Dent Sci. 2023 Jul;18(3):1301-1309. doi: 10.1016/j.jds.2023.03.020. Epub 2023 Apr 10.
BACKGROUND/PURPOSE: Artificial Intelligence (AI) can optimize treatment approaches in dental healthcare due to its high level of accuracy and wide range of applications. This study seeks to propose a new deep learning (DL) ensemble model based on deep Convolutional Neural Network (CNN) algorithms to predict tooth position, detect shape, detect remaining interproximal bone level, and detect radiographic bone loss (RBL) using periapical and bitewing radiographs.
270 patients from January 2015 to December 2020, and all images were deidentified without private information for this study. A total of 8000 periapical radiographs with 27,964 teeth were included for our model. AI algorithms utilizing the YOLOv5 model and VIA labeling platform, including VGG-16 and U-Net architecture, were created as a novel ensemble model. Results of AI analysis were compared with clinicians' assessments.
DL-trained ensemble model accuracy was approximately 90% for periapical radiographs. Accuracy for tooth position detection was 88.8%, tooth shape detection 86.3%, periodontal bone level detection 92.61% and radiographic bone loss detection 97.0%. AI models were superior to mean accuracy values from 76% to 78% when detection was performed by dentists.
The proposed DL-trained ensemble model provides a critical cornerstone for radiographic detection and a valuable adjunct to periodontal diagnosis. High accuracy and reliability indicate model's strong potential to enhance clinical professional performance and build more efficient dental health services.
背景/目的:人工智能(AI)因其高准确性和广泛的应用范围,可优化牙科医疗保健中的治疗方法。本研究旨在提出一种基于深度卷积神经网络(CNN)算法的新型深度学习(DL)集成模型,以使用根尖片和咬合翼片X线片预测牙齿位置、检测形状、检测剩余邻间骨水平以及检测放射状骨丢失(RBL)。
选取2015年1月至2020年12月的270例患者,本研究中所有图像均去除了个人隐私信息。我们的模型纳入了总共8000张根尖片,包含27964颗牙齿。利用YOLOv5模型和VIA标注平台创建了包括VGG - 16和U - Net架构的AI算法,作为一种新型集成模型。将AI分析结果与临床医生的评估进行比较。
DL训练的集成模型对根尖片的准确率约为90%。牙齿位置检测准确率为88.8%,牙齿形状检测准确率为86.3%,牙周骨水平检测准确率为92.61%,放射状骨丢失检测准确率为97.0%。当由牙医进行检测时,AI模型优于76%至78%的平均准确率值。
所提出的DL训练的集成模型为影像学检测提供了关键基石,是牙周诊断的有价值辅助手段。高准确性和可靠性表明该模型在提高临床专业表现和构建更高效牙科保健服务方面具有强大潜力。