Escola Politécnica de Pernambuco, Universidade de Pernambuco, Recife, 50720-001, Pernambuco, Brasil.
Departamento de Clínica e Odontologia Preventiva, Universidade Federal de Pernambuco, Recife, 50670-420, Pernambuco, Brasil.
Clin Oral Investig. 2024 Mar 20;28(4):223. doi: 10.1007/s00784-024-05599-1.
An evaluation of the effectiveness of a new computational system proposed for automatic classification, developed based on a Siamese network combined with Convolutional Neural Networks (CNNs), is presented. It aims to identify endodontic technical errors using Cone Beam Computed Tomography (CBCT). The study also aims to compare the performance of the automatic classification system with that of dentists.
One thousand endodontically treated maxillary molars sagittal and coronal reconstructions were evaluated for the quality of the endodontic treatment and the presence of periapical hypodensities by three board-certified dentists and by an oral and maxillofacial radiologist. The proposed classification system was based on a Siamese network combined with EfficientNet B1 or EfficientNet B7 networks. Accuracy, sensivity, precision, specificity, and F1-score values were calculated for automated artificial systems and dentists. Chi-square tests were performed.
The performances were obtained for EfficienteNet B1, EfficientNet B7 and dentists. Regarding accuracy, sensivity and specificity, the best results were obtained with EfficientNet B1. Concerning precision and F1-score, the best results were obtained with EfficientNet B7. The presence of periapical hypodensity lesions was associated with endodontic technical errors. In contrast, the absence of endodontic technical errors was associated with the absence of hypodensity.
Quality evaluation of the endodontic treatment performed by dentists and by Siamese Network combined with EfficientNet B7 or EfficientNet B1 networks was comparable with a slight superiority for the Siamese Network.
CNNs have the potential to be used as a support and standardization tool in assessing endodontic treatment quality in clinical practice.
提出了一种基于 Siamese 网络与卷积神经网络(CNN)相结合的新计算系统的有效性评估,旨在使用锥形束 CT(CBCT)识别根管治疗技术错误。该研究还旨在比较自动分类系统与牙医的性能。
由三位认证牙医和一名口腔颌面放射科医生对 1000 颗上颌磨牙的根管治疗质量和根尖低密度区的存在情况进行了矢状和冠状重建评估。所提出的分类系统基于 Siamese 网络与 EfficientNet B1 或 EfficientNet B7 网络相结合。计算了自动人工系统和牙医的准确性、敏感性、精度、特异性和 F1 评分值。进行了卡方检验。
获得了 EfficienteNet B1、EfficientNet B7 和牙医的表现。关于准确性、敏感性和特异性,EfficientNet B1 获得了最佳结果。关于精度和 F1 评分,EfficientNet B7 获得了最佳结果。根尖低密度病变的存在与根管治疗技术错误有关。相反,根管治疗技术错误的不存在与低密度的不存在有关。
牙医和 Siamese 网络与 EfficientNet B7 或 EfficientNet B1 网络相结合进行根管治疗质量评估的结果具有可比性,而 Siamese 网络具有轻微优势。
CNN 有可能成为评估临床实践中根管治疗质量的支持和标准化工具。