Aktuna Belgin Ceren, Kurbanova Aida, Aksoy Seçil, Akkaya Nurullah, Orhan Kaan
Faculty of Dentistry, Department of Dentomaxillofacial Radiology, Hatay Mustafa Kemal University, Hatay, Turkey.
Faculty of Dentistry, Department of Dentomaxillofacial Radiology, Near East University, Mersin10, 99138, Turkey.
Eur Arch Otorhinolaryngol. 2025 May 20. doi: 10.1007/s00405-025-09451-4.
Deep learning, a subset of machine learning, is widely utilized in medical applications. Identifying maxillary sinus pathologies before surgical interventions is crucial for ensuring successful treatment outcomes. Cone beam computed tomography (CBCT) is commonly employed for maxillary sinus evaluations due to its high resolution and lower radiation exposure. This study aims to assess the accuracy of artificial intelligence (AI) algorithms in detecting maxillary sinus pathologies from CBCT scans.
A dataset comprising 1000 maxillary sinuses (MS) from 500 patients was analyzed using CBCT. Sinuses were categorized based on the presence or absence of pathology, followed by segmentation of the maxillary sinus. Manual segmentation masks were generated using the semiautomatic software ITK-SNAP, which served as a reference for comparison. A convolutional neural network (CNN)-based machine learning model was then implemented to automatically segment maxillary sinus pathologies from CBCT images. To evaluate segmentation accuracy, metrics such as the Dice similarity coefficient (DSC) and intersection over union (IoU) were utilized by comparing AI-generated results with human-generated segmentations.
The automated segmentation model achieved a Dice score of 0.923, a recall of 0.979, an IoU of 0.887, an F1 score of 0.970, and a precision of 0.963.
This study successfully developed an AI-driven approach for segmenting maxillary sinus pathologies in CBCT images. The findings highlight the potential of this method for rapid and accurate clinical assessment of maxillary sinus conditions using CBCT imaging.
深度学习作为机器学习的一个子集,在医学应用中得到广泛应用。在手术干预前识别上颌窦病变对于确保治疗成功至关重要。锥形束计算机断层扫描(CBCT)因其高分辨率和较低的辐射暴露,常用于上颌窦评估。本研究旨在评估人工智能(AI)算法从CBCT扫描中检测上颌窦病变的准确性。
使用CBCT分析了来自500名患者的1000个上颌窦(MS)数据集。根据是否存在病变对上颌窦进行分类,然后对上颌窦进行分割。使用半自动软件ITK-SNAP生成手动分割掩码,作为比较的参考。然后实施基于卷积神经网络(CNN)的机器学习模型,以从CBCT图像中自动分割上颌窦病变。为了评估分割准确性,通过将AI生成的结果与人工生成的分割进行比较,使用了诸如Dice相似系数(DSC)和交并比(IoU)等指标。
自动分割模型的Dice评分为0.923,召回率为0.979,IoU为0.887,F1评分为0.970,精度为0.963。
本研究成功开发了一种AI驱动的方法,用于分割CBCT图像中的上颌窦病变。研究结果突出了该方法利用CBCT成像对上颌窦状况进行快速准确临床评估的潜力。