Department of Oral and Maxillofacial Surgery, Kagawa Prefectural Central Hospital, 1-2-1, Asahi-machi, Takamatsu, Kagawa 760-8557, Japan.
Dentistry and Pharmaceutical Sciences, Department of Oral Pathology and Medicine, Okayama University Graduate School of Medicine, Okayama 700-8558, Japan.
Biomolecules. 2021 May 30;11(6):815. doi: 10.3390/biom11060815.
It is necessary to accurately identify dental implant brands and the stage of treatment to ensure efficient care. Thus, the purpose of this study was to use multi-task deep learning to investigate a classifier that categorizes implant brands and treatment stages from dental panoramic radiographic images. For objective labeling, 9767 dental implant images of 12 implant brands and treatment stages were obtained from the digital panoramic radiographs of patients who underwent procedures at Kagawa Prefectural Central Hospital, Japan, between 2005 and 2020. Five deep convolutional neural network (CNN) models (ResNet18, 34, 50, 101 and 152) were evaluated. The accuracy, precision, recall, specificity, F1 score, and area under the curve score were calculated for each CNN. We also compared the multi-task and single-task accuracies of brand classification and implant treatment stage classification. Our analysis revealed that the larger the number of parameters and the deeper the network, the better the performance for both classifications. Multi-tasking significantly improved brand classification on all performance indicators, except recall, and significantly improved all metrics in treatment phase classification. Using CNNs conferred high validity in the classification of dental implant brands and treatment stages. Furthermore, multi-task learning facilitated analysis accuracy.
有必要准确识别种植牙品牌和治疗阶段,以确保有效的护理。因此,本研究旨在使用多任务深度学习研究一种从口腔全景 X 光图像中分类种植体品牌和治疗阶段的分类器。为了进行客观标记,从日本香川县立中央医院 2005 年至 2020 年期间接受手术的患者的数字化全景 X 光中获取了 9767 张种植牙图像,涉及 12 个种植体品牌和治疗阶段。评估了 5 种深度卷积神经网络(CNN)模型(ResNet18、34、50、101 和 152)。为每个 CNN 计算了准确性、精度、召回率、特异性、F1 得分和曲线下面积得分。我们还比较了品牌分类和种植体治疗阶段分类的多任务和单任务准确性。我们的分析表明,对于这两种分类,参数越多、网络越深,性能越好。多任务学习显著提高了所有性能指标(除召回率外)的品牌分类准确性,并显著提高了治疗阶段分类的所有指标。使用 CNN 对种植牙品牌和治疗阶段进行分类具有很高的有效性。此外,多任务学习有助于提高分析准确性。