Chen Jiayi
Department of Stomatology, Suzhou Wujiang District Hospital of Traditional Chinese Medicine, Suzhou, PR China.
BMC Oral Health. 2025 Jul 1;25(1):961. doi: 10.1186/s12903-025-06408-1.
BACKGROUND/PURPOSE: The development of artificial intelligence has revolutionized the field of dentistry. Medical image segmentation is a vital part of AI applications in dentistry. This technique can assist medical practitioners in accurately diagnosing diseases. The detection of the maxillary sinus (MS), such as dental implants, tooth extraction, and endoscopic surgery, is important in the surgical field. The accurate segmentation of MS in radiological images is a prerequisite for diagnosis and treatment planning. This study aims to investigate the feasibility of applying a CNN algorithm based on the U-Net architecture to facilitate MS segmentation of individuals from the Chinese population.
A total of 300 CBCT images in the axial, coronal, and sagittal planes were used in this study. These images were divided into a training set and a test set at a ratio of 8:2. The marked regions (maxillary sinus) were labelled for training and testing in the original images. The training process was performed for 40 epochs using a learning rate of 0.00001. Computation was performed on an RTX GeForce 3060 GPU. The best model was retained for predicting MS in the test set and calculating the model parameters.
The trained U-Net model achieved yield segmentation accuracy across the three imaging planes. The IoU values were 0.942, 0.937 and 0.916 in the axial, sagittal and coronal planes, respectively, with F1 scores across all planes exceeding 0.95. The accuracies of the U-Net model were 0.997, 0.998, and 0.995 in the axial, sagittal and coronal planes, respectively.
The trained U-Net model achieved highly accurate segmentation of MS across three planes on the basis of 2D CBCT images among the Chinese population. The AI model has shown promising application potential for daily clinical practice.
Not applicable.
背景/目的:人工智能的发展给牙科领域带来了变革。医学图像分割是人工智能在牙科应用中的重要组成部分。这项技术可以帮助医生准确诊断疾病。上颌窦(MS)的检测,如牙种植、拔牙和内窥镜手术,在外科领域很重要。在放射图像中对上颌窦进行准确分割是诊断和治疗计划的前提。本研究旨在探讨应用基于U-Net架构的卷积神经网络(CNN)算法对上颌窦进行分割的可行性,以便对中国人群个体进行上颌窦分割。
本研究共使用了300张轴向、冠状和矢状面的锥形束计算机断层扫描(CBCT)图像。这些图像以8:2的比例分为训练集和测试集。在原始图像中对标记区域(上颌窦)进行标注以用于训练和测试。使用0.00001的学习率进行40个轮次的训练过程。计算在RTX GeForce 3060图形处理器(GPU)上进行。保留最佳模型用于在测试集中预测上颌窦并计算模型参数。
训练后的U-Net模型在三个成像平面上均实现了较高的分割准确率。轴向、矢状面和冠状面的交并比(IoU)值分别为0.942、0.937和0.916,所有平面的F1分数均超过0.95。U-Net模型在轴向、矢状面和冠状面的准确率分别为0.997、0.998和0.995。
训练后的U-Net模型在二维CBCT图像基础上,在中国人群中实现了上颌窦在三个平面上的高精度分割。该人工智能模型在日常临床实践中显示出了有前景的应用潜力。
不适用。