Pera Óscar, Martínez Álvaro, Möhler Christian, Hamans Bob, Vega Fernando, Barral Fernando, Becerra Nuria, Jimenez Rafael, Fernandez-Velilla Enric, Quera Jaume, Algara Manuel
Radiation Oncology Department, Hospital del Mar, Barcelona, Spain.
Institut Hospital del Mar d'Investigacions Mèdiques, Barcelona, Spain.
Adv Radiat Oncol. 2023 Jan 16;8(3):101177. doi: 10.1016/j.adro.2023.101177. eCollection 2023 May-Jun.
The manual delineation of organs at risk is a process that requires a great deal of time both for the technician and for the physician. Availability of validated software tools assisted by artificial intelligence would be of great benefit, as it would significantly improve the radiation therapy workflow, reducing the time required for segmentation. The purpose of this article is to validate the deep learning-based autocontouring solution integrated in syngo.via RT Image Suite VB40 (Siemens Healthineers, Forchheim, Germany).
For this purpose, we have used our own specific qualitative classification system, RANK, to evaluate more than 600 contours corresponding to 18 different automatically delineated organs at risk. Computed tomography data sets of 95 different patients were included: 30 patients with lung, 30 patients with breast, and 35 male patients with pelvic cancer. The automatically generated structures were reviewed in the Eclipse Contouring module independently by 3 observers: an expert physician, an expert technician, and a junior physician.
There is a statistically significant difference between the Dice coefficient associated with RANK 4 compared with the coefficient associated with RANKs 2 and 3 ( < .001). In total, 64% of the evaluated structures received the maximum score, 4. Only 1% of the structures were classified with the lowest score, 1. The time savings for breast, thorax, and pelvis were 87.6%, 93.5%, and 82.2%, respectively.
Siemens' syngo.via RT Image Suite offers good autocontouring results and significant time savings.
手动勾画危及器官是一个对技术人员和医生来说都需要大量时间的过程。具备由人工智能辅助的经过验证的软件工具将大有裨益,因为这将显著改善放射治疗工作流程,减少分割所需的时间。本文的目的是验证集成在syngo.via RT Image Suite VB40(德国福希海姆西门子医疗)中的基于深度学习的自动轮廓解决方案。
为此,我们使用了自己特定的定性分类系统RANK,来评估对应于18个不同自动勾画的危及器官的600多个轮廓。纳入了95名不同患者的计算机断层扫描数据集:30名肺癌患者、30名乳腺癌患者和35名男性盆腔癌患者。3名观察者(一名专家医生、一名专家技术人员和一名初级医生)在Eclipse轮廓模块中独立审查自动生成的结构。
与RANK 2和RANK 3相关系数相比,与RANK 4相关的Dice系数存在统计学显著差异(<.001)。总体而言,64%的评估结构获得了最高分4。只有1%的结构被分类为最低分1。乳房、胸部和骨盆的时间节省分别为87.6%、93.5%和82.2%。
西门子的syngo.via RT Image Suite提供了良好的自动轮廓结果并显著节省了时间。