论文标题
多中心CBCT扫描的深度学习细分和多摩尔的下颌运河的比较
Comparison of Deep Learning Segmentation and Multigrader-annotated Mandibular Canals of Multicenter CBCT scans
论文作者
论文摘要
已经证明了深度学习方法可以从CBCT扫描中自动分割双侧下颌管,但是对其临床和技术验证的系统研究却很少。为了验证深度学习系统(DLS)的下颌运河定位精度,我们通过982次CBCT扫描对其进行了培训,并使用了150次扫描,对欧洲和东南亚研究所的临床工作流程患者进行了15次扫描,由四位放射学家注释。将观察者间的变异性与DLS和放射科医生之间的变异性进行了比较。此外,还检查了对训练数据中未使用的扫描仪的DLS对CBCT扫描的概括,以评估分布外的概括能力。与放射线医生之间的变异性相比,DLS的变异性较低,并且与它们之间的观察者变异性相比,它能够推广到三个新设备。对于用作黄金标准的放射科医生的共识分割,与单个放射线医生相比,DLS的平均曲线距离为0.39 mm。 DLS在下颌管的分割中表现出可比或稍好的性能,并具有放射线医生以及对新扫描仪的概括能力。
Deep learning approach has been demonstrated to automatically segment the bilateral mandibular canals from CBCT scans, yet systematic studies of its clinical and technical validation are scarce. To validate the mandibular canal localization accuracy of a deep learning system (DLS) we trained it with 982 CBCT scans and evaluated using 150 scans of five scanners from clinical workflow patients of European and Southeast Asian Institutes, annotated by four radiologists. The interobserver variability was compared to the variability between the DLS and the radiologists. In addition, the generalization of DLS to CBCT scans from scanners not used in the training data was examined to evaluate the out-of-distribution generalization capability. The DLS had lower variability to the radiologists than the interobserver variability between them and it was able to generalize to three new devices. For the radiologists' consensus segmentation, used as gold standard, the DLS had a symmetric mean curve distance of 0.39 mm compared to those of the individual radiologists with 0.62 mm, 0.55 mm, 0.47 mm, and 0.42 mm. The DLS showed comparable or slightly better performance in the segmentation of the mandibular canal with the radiologists and generalization capability to new scanners.