Cavus Hasan, Bulens Philippe, Tournel Koen, Orlandini Marc, Jankelevitch Alexandra, Crijns Wouter, Reniers Brigitte
Department of Radiation Oncology, Jessa Hospital, 3500 Hasselt, Belgium.
Limburg Oncology Center, 3500 Hasselt, Belgium.
Phys Imaging Radiat Oncol. 2024 Aug 13;31:100627. doi: 10.1016/j.phro.2024.100627. eCollection 2024 Jul.
Advancements in radiotherapy auto-segmentation necessitate reliable and efficient workflows. Therefore, a standardized fully automatic workflow was developed for three commercially available deep learning-based auto-segmentation applications and compared to a manual workflow for safety and efficiency. The workflow underwent safety evaluation with failure mode and effects analysis. Notably, eight failure modes were reduced, including seven with severity factors ≥7, indicating the effect on patients, and two with Risk Priority Number value >125, which assesses relative risk level. Efficiency, measured by mouse clicks, showed zero clicks with the automatic workflow. This automation illustrated improvement in both safety and efficiency of workflow.
放射治疗自动分割技术的进步需要可靠且高效的工作流程。因此,针对三款市售的基于深度学习的自动分割应用程序开发了一种标准化的全自动工作流程,并将其与手动工作流程在安全性和效率方面进行了比较。该工作流程通过失效模式与效应分析进行了安全性评估。值得注意的是,减少了八种失效模式,其中七种严重度因子≥7,表明对患者有影响,还有两种风险优先数>125,用于评估相对风险水平。以鼠标点击次数衡量的效率显示,自动工作流程的点击次数为零。这种自动化展示了工作流程在安全性和效率方面的提升。