Department of Dentomaxillofacial Radiology, Faculty of Dentistry, Ankara University, Ankara, Turkey.
Medical Design Application, and Research Center (MEDITAM), Ankara University, Ankara, Turkey.
Sci Rep. 2022 Jul 13;12(1):11863. doi: 10.1038/s41598-022-15920-1.
This study aims to generate and also validate an automatic detection algorithm for pharyngeal airway on CBCT data using an AI software (Diagnocat) which will procure a measurement method. The second aim is to validate the newly developed artificial intelligence system in comparison to commercially available software for 3D CBCT evaluation. A Convolutional Neural Network-based machine learning algorithm was used for the segmentation of the pharyngeal airways in OSA and non-OSA patients. Radiologists used semi-automatic software to manually determine the airway and their measurements were compared with the AI. OSA patients were classified as minimal, mild, moderate, and severe groups, and the mean airway volumes of the groups were compared. The narrowest points of the airway (mm), the field of the airway (mm), and volume of the airway (cc) of both OSA and non-OSA patients were also compared. There was no statistically significant difference between the manual technique and Diagnocat measurements in all groups (p > 0.05). Inter-class correlation coefficients were 0.954 for manual and automatic segmentation, 0.956 for Diagnocat and automatic segmentation, 0.972 for Diagnocat and manual segmentation. Although there was no statistically significant difference in total airway volume measurements between the manual measurements, automatic measurements, and DC measurements in non-OSA and OSA patients, we evaluated the output images to understand why the mean value for the total airway was higher in DC measurement. It was seen that the DC algorithm also measures the epiglottis volume and the posterior nasal aperture volume due to the low soft-tissue contrast in CBCT images and that leads to higher values in airway volume measurement.
本研究旨在使用人工智能软件(Diagnocat)生成和验证一种用于 CBCT 数据的咽气道自动检测算法,该算法将获得一种测量方法。第二个目的是将新开发的人工智能系统与商业上可用于 3D CBCT 评估的软件进行比较。基于卷积神经网络的机器学习算法用于对 OSA 和非 OSA 患者的咽气道进行分割。放射科医生使用半自动软件手动确定气道,将他们的测量结果与人工智能进行比较。将 OSA 患者分为轻度、中度和重度组,并比较各组的气道平均容积。还比较了 OSA 和非 OSA 患者气道的最窄点(mm)、气道面积(mm)和气道体积(cc)。在所有组中,手动技术和 Diagnocat 测量值之间没有统计学上的显著差异(p>0.05)。手动和自动分割的组内相关系数为 0.954,Diagnocat 和自动分割的组内相关系数为 0.956,Diagnocat 和手动分割的组内相关系数为 0.972。虽然在非 OSA 和 OSA 患者中,手动测量值、自动测量值和 DC 测量值之间的总气道容积测量值没有统计学上的显著差异,但我们评估了输出图像,以了解为什么 DC 测量值的总气道平均值较高。结果发现,由于 CBCT 图像中的软组织对比度低,DC 算法还会测量会厌体积和后鼻孔体积,这会导致气道容积测量值较高。