Faculty of Dentistry, Thammasat University, Khlong Luang, Pathum Thani, Thailand.
College of Interdisciplinary Studies, Thammasat University, Khlong Luang, Pathum Thani, Thailand.
Sci Rep. 2023 Mar 1;13(1):3434. doi: 10.1038/s41598-023-30640-w.
The purpose of this study was to evaluate the performance of convolutional neural network-based models for the detection and classification of maxillofacial fractures in computed tomography (CT) maxillofacial bone window images. A total of 3407 CT images, 2407 of which contained maxillofacial fractures, were retrospectively obtained from the regional trauma center from 2016 to 2020. Multiclass image classification models were created by using DenseNet-169 and ResNet-152. Multiclass object detection models were created by using faster R-CNN and YOLOv5. DenseNet-169 and ResNet-152 were trained to classify maxillofacial fractures into frontal, midface, mandibular and no fracture classes. Faster R-CNN and YOLOv5 were trained to automate the placement of bounding boxes to specifically detect fracture lines in each fracture class. The performance of each model was evaluated on an independent test dataset. The overall accuracy of the best multiclass classification model, DenseNet-169, was 0.70. The mean average precision of the best multiclass detection model, faster R-CNN, was 0.78. In conclusion, DenseNet-169 and faster R-CNN have potential for the detection and classification of maxillofacial fractures in CT images.
本研究旨在评估基于卷积神经网络的模型在检测和分类 CT 颌面骨窗图像中颌面骨折方面的性能。总共回顾性地从 2016 年至 2020 年从区域创伤中心获得了 3407 张 CT 图像,其中 2407 张包含颌面骨折。使用 DenseNet-169 和 ResNet-152 创建了多类图像分类模型。使用更快的 R-CNN 和 YOLOv5 创建了多类对象检测模型。训练 DenseNet-169 和 ResNet-152 将颌面骨折分为额骨、中面部、下颌骨和无骨折类。训练更快的 R-CNN 和 YOLOv5 以自动化放置边界框,以专门检测每个骨折类别的骨折线。在独立的测试数据集上评估了每个模型的性能。最佳多类分类模型 DenseNet-169 的总体准确率为 0.70。最佳多类检测模型更快的 R-CNN 的平均精度均值为 0.78。总之,DenseNet-169 和更快的 R-CNN 有可能在 CT 图像中检测和分类颌面骨折。