Radiation Oncology, Mater Olbia Hospital, 07026 Olbia, Italy.
UOC Radioterapia Oncologica, Dipartimento di Diagnostica per Immagini, Radioterapia Oncologica ed Ematologia, Fondazione Policlinico Universitario Agostino Gemelli IRCCS, 00168 Roma, Italy.
Int J Environ Res Public Health. 2022 Jul 25;19(15):9057. doi: 10.3390/ijerph19159057.
Organs at risk (OARs) delineation is a crucial step of radiotherapy (RT) treatment planning workflow. Time-consuming and inter-observer variability are main issues in manual OAR delineation, mainly in the head and neck (H & N) district. Deep-learning based auto-segmentation is a promising strategy to improve OARs contouring in radiotherapy departments. A comparison of deep-learning-generated auto-contours (AC) with manual contours (MC) was performed by three expert radiation oncologists from a single center.
Planning computed tomography (CT) scans of patients undergoing RT treatments for H&N cancers were considered. CT scans were processed by Limbus Contour auto-segmentation software, a commercial deep-learning auto-segmentation based software to generate AC. H&N protocol was used to perform AC, with the structure set consisting of bilateral brachial plexus, brain, brainstem, bilateral cochlea, pharyngeal constrictors, eye globes, bilateral lens, mandible, optic chiasm, bilateral optic nerves, oral cavity, bilateral parotids, spinal cord, bilateral submandibular glands, lips and thyroid. Manual revision of OARs was performed according to international consensus guidelines. The AC and MC were compared using the Dice similarity coefficient (DSC) and 95% Hausdorff distance transform (DT).
A total of 274 contours obtained by processing CT scans were included in the analysis. The highest values of DSC were obtained for the brain (DSC 1.00), left and right eye globes and the mandible (DSC 0.98). The structures with greater MC editing were optic chiasm, optic nerves and cochleae.
In this preliminary analysis, deep-learning auto-segmentation seems to provide acceptable H&N OAR delineations. For less accurate organs, AC could be considered a starting point for review and manual adjustment. Our results suggest that AC could become a useful time-saving tool to optimize workload and resources in RT departments.
危及器官(OARs)勾画是放射治疗(RT)治疗计划工作流程中的关键步骤。手动 OAR 勾画耗时且存在观察者间变异性,这是主要问题,尤其是在头颈部(H & N)区域。基于深度学习的自动勾画是改善放射治疗部门 OAR 勾画的有前途的策略。来自单一中心的三位专家放射肿瘤学家对基于深度学习生成的自动轮廓(AC)与手动轮廓(MC)进行了比较。
考虑了接受 H&N 癌症 RT 治疗的患者的计划计算机断层扫描(CT)扫描。通过 Limbus Contour 自动分割软件处理 CT 扫描,这是一种商业的基于深度学习的自动分割软件,用于生成 AC。使用 H&N 方案执行 AC,结构集包括双侧臂丛神经、大脑、脑干、双侧耳蜗、咽缩肌、眼球、双侧晶状体、下颌骨、视交叉、双侧视神经、口腔、双侧腮腺、脊髓、双侧颌下腺、嘴唇和甲状腺。根据国际共识指南,对 OAR 进行手动修正。使用 Dice 相似系数(DSC)和 95% Hausdorff 距离变换(DT)比较 AC 和 MC。
在分析中总共包括 274 个通过处理 CT 扫描获得的轮廓。大脑(DSC 1.00)、左右眼球和下颌骨的 DSC 值最高(DSC 0.98)。视神经交叉、视神经和耳蜗等结构的 MC 编辑量较大。
在这项初步分析中,深度学习自动勾画似乎可以提供可接受的 H&N OAR 勾画。对于不太准确的器官,可以将 AC 视为审查和手动调整的起点。我们的结果表明,AC 可以成为一种节省时间的有用工具,以优化放射治疗部门的工作量和资源。