Quetin Sébastien, Jafarzadeh Hossein, Kalinowski Jonathan, Bekerat Hamed, Bahoric Boris, Maleki Farhad, Enger Shirin A
Medical Physics Unit, Department of Oncology, McGill University, Montreal, Canada.
Montreal Institute for Learning Algorithms, Mila, Montreal, Canada.
Med Phys. 2025 Sep;52(9):e18107. doi: 10.1002/mp.18107.
High dose rate (HDR) brachytherapy requires clinicians to digitize catheters manually. This process is time-consuming, complex, and depends heavily on clinical experience-especially in breast cancer cases, where catheters may be inserted at varying angles and orientations due to an irregular anatomy.
This study is the first to automate catheter digitization specifically for breast HDR brachytherapy, emphasizing the unique challenges associated with this treatment site. It also introduces a pipeline that automatically digitizes catheters, generates dwell positions, and calculates the delivered dose for new breast cancer patients.
Treatment data from 117 breast cancer patients treated with HDR brachytherapy were used. Pseudo-contours for the catheters were created from the treatment digitization points and divided into three classes: catheter body, catheter head, and catheter tip. An nnU-Net pipeline was trained to segment the pseudo-contours on treatment planning computed tomography images of 88 patients (training and validation). Then, pseudo-contours were digitized by separating the catheters into connected components. Predicted catheters with an unusual volume were flagged for manual review. A custom algorithm was designed to report and separate connected components containing colliding catheters. Finally, a spline was fitted to every separated catheter, and the tip was identified on the spline using the tip contour prediction. Dwell positions were placed from the created tip at a regular step size extracted from the DICOM plan file. Distance from each dwell position used during the clinical treatment to the fitted spline (shaft distance) was computed, as well as the distance from the treatment tip to the one identified by our pipeline. Dwell times from the clinical plan were assigned to the nearest generated dwell positions. TG-43 dose in water was computed analytically, and the absorbed dose in the medium was predicted using a published AI-based dose prediction model. Dosimetric comparison between the clinically delivered plan dose and the created automated plan dose was evaluated regarding dosimetric indices percent error.
Our pipeline was used to digitize 408 catheters on a test set of 29 patients. Shaft distance was on average and distance to the tip was on average . The dosimetric error between the manual and automated treatment plans was, on average, below 3% for planning target volume , , and for the lung, heart, skin, and chest wall and , in both water and heterogeneous media. For values in all the organs at risk, the average error remained below 5%. The pipeline execution time, including auto-contouring, digitization, and dose to medium prediction, averages 118 s, ranging from 63 to 294 s. The pipeline successfully flagged all cases where digitization was not performed correctly.
Our pipeline is the first to automate the digitization of catheters for breast brachytherapy, as well as the first to generate dwell positions and predict corresponding AI-based absorbed dose to medium based on automatically digitized catheters. The automatically digitized catheters are in excellent agreement with the manually digitized ones while more accurately reflecting their true anatomical shape.
高剂量率(HDR)近距离放射治疗要求临床医生手动将导管数字化。这个过程既耗时又复杂,并且严重依赖临床经验——尤其是在乳腺癌病例中,由于解剖结构不规则,导管可能以不同的角度和方向插入。
本研究首次专门针对乳腺HDR近距离放射治疗实现导管数字化自动化,强调了与该治疗部位相关的独特挑战。它还引入了一个管道,可自动将导管数字化、生成驻留位置并为新的乳腺癌患者计算输送剂量。
使用了117例接受HDR近距离放射治疗的乳腺癌患者的治疗数据。从治疗数字化点创建导管的伪轮廓,并将其分为三类:导管主体、导管头部和导管尖端。训练了一个nnU-Net管道,以在88例患者(训练和验证)的治疗计划计算机断层扫描图像上分割伪轮廓。然后,通过将导管分离为连接组件来对伪轮廓进行数字化。标记出体积异常的预测导管以供人工检查。设计了一种自定义算法来报告和分离包含碰撞导管的连接组件。最后,对每个分离的导管拟合样条,并使用尖端轮廓预测在样条上识别尖端。驻留位置从创建的尖端处以从DICOM计划文件中提取的规则步长放置。计算临床治疗期间使用的每个驻留位置到拟合样条的距离(轴距离),以及从治疗尖端到我们的管道识别的尖端的距离。将临床计划中的驻留时间分配给最近生成的驻留位置。在水中的TG-43剂量通过解析计算得出,并使用已发表的基于人工智能的剂量预测模型预测介质中的吸收剂量。关于剂量学指标百分比误差,评估了临床交付计划剂量与创建的自动计划剂量之间的剂量学比较。
我们的管道用于在29例患者的测试集上数字化408根导管。轴距离平均为 ,到尖端的距离平均为 。对于计划靶体积 、 、 以及肺、心脏、皮肤和胸壁 、 ,在水和非均匀介质中,手动和自动治疗计划之间的剂量学误差平均低于3%。对于所有危及器官的 值,平均误差保持在5%以下。管道执行时间,包括自动轮廓绘制、数字化和介质剂量预测,平均为118秒,范围为63至294秒。该管道成功标记了所有数字化未正确执行的病例。
我们的管道是第一个实现乳腺近距离放射治疗导管数字化自动化的管道,也是第一个生成驻留位置并基于自动数字化导管预测基于人工智能的相应介质吸收剂量的管道。自动数字化的导管与手动数字化的导管高度一致,同时更准确地反映了它们的真实解剖形状。