Quality assurance for online adaptive radiotherapy: a secondary dose verification model with geometry-encoded U-Net.

IF 6.3 2区 物理与天体物理 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine Learning Science and Technology Pub Date : 2024-12-01 Epub Date: 2024-10-11 DOI:10.1088/2632-2153/ad829e
Shunyu Yan, Austen Maniscalco, Biling Wang, Dan Nguyen, Steve Jiang, Chenyang Shen
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Abstract

In online adaptive radiotherapy (ART), quick computation-based secondary dose verification is crucial for ensuring the quality of ART plans while the patient is positioned on the treatment couch. However, traditional dose verification algorithms are generally time-consuming, reducing the efficiency of ART workflow. This study aims to develop an ultra-fast deep-learning (DL) based secondary dose verification algorithm to accurately estimate dose distributions using computed tomography (CT) and fluence maps (FMs). We integrated FMs into the CT image domain by explicitly resolving the geometry of treatment delivery. For each gantry angle, an FM was constructed based on the optimized multi-leaf collimator apertures and corresponding monitoring units. To effectively encode treatment beam configuration, the constructed FMs were back-projected to 30 cm away from the isocenter with respect to the exact geometry of the treatment machines. Then, a 3D U-Net was utilized to take the integrated CT and FM volume as input to estimate dose. Training and validation were performed on 381 prostate cancer cases, with an additional 40 testing cases for independent evaluation of model performance. The proposed model can estimate dose in ∼ 15 ms for each patient. The average γ passing rate ( 3 % / 2 mm , 10 % threshold) for the estimated dose was 99.9% ± 0.15% on testing patients. The mean dose differences for the planning target volume and organs at risk were 0.07 % ± 0.34 % and 0.48 % ± 0.72 % , respectively. We have developed a geometry-resolved DL framework for accurate dose estimation and demonstrated its potential in real-time online ART doses verification.

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在线自适应放射治疗的质量保证:采用几何编码 U-Net 的二次剂量验证模型。
在在线自适应放射治疗(ART)中,当病人被安置在治疗床上时,基于快速计算的二次剂量验证对于确保 ART 计划的质量至关重要。然而,传统的剂量验证算法一般都很耗时,降低了 ART 工作流程的效率。本研究旨在开发一种基于深度学习(DL)的超快速二次剂量验证算法,利用计算机断层成像(CT)和通量图(FMs)准确估计剂量分布。我们通过明确解析治疗投放的几何形状,将通量图整合到 CT 图像域中。对于每个龙门架角度,我们都根据优化的多叶准直器孔径和相应的监测单元构建了一个 FM。为有效编码治疗光束配置,根据治疗机的精确几何形状,将构建的调频反向投影到距离等中心 30 厘米的位置。然后,利用三维 U-Net 将集成 CT 和调频体积作为输入来估算剂量。对 381 个前列腺癌病例进行了训练和验证,另外还对 40 个测试病例进行了独立的模型性能评估。建议的模型能在 15 毫秒内估算出每位患者的剂量。在测试患者中,估计剂量的平均γ通过率(3 % / 2 mm,10 %阈值)为 99.9% ± 0.15%。规划靶体积和危险器官的平均剂量差异分别为 0.07 % ± 0.34 % 和 0.48 % ± 0.72 %。我们开发出了一种用于精确剂量估算的几何分辨 DL 框架,并证明了其在实时在线 ART 剂量验证中的潜力。
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来源期刊
Machine Learning Science and Technology
Machine Learning Science and Technology Computer Science-Artificial Intelligence
CiteScore
9.10
自引率
4.40%
发文量
86
审稿时长
5 weeks
期刊介绍: Machine Learning Science and Technology is a multidisciplinary open access journal that bridges the application of machine learning across the sciences with advances in machine learning methods and theory as motivated by physical insights. Specifically, articles must fall into one of the following categories: advance the state of machine learning-driven applications in the sciences or make conceptual, methodological or theoretical advances in machine learning with applications to, inspiration from, or motivated by scientific problems.
期刊最新文献
Quality assurance for online adaptive radiotherapy: a secondary dose verification model with geometry-encoded U-Net. GPU optimization techniques to accelerate optiGAN-a particle simulation GAN. WATUNet: a deep neural network for segmentation of volumetric sweep imaging ultrasound. Hierarchical Bayesian pharmacometrics analysis of Baclofen for alcohol use disorder Data-driven modeling of noise time series with convolutional generative adversarial networks.
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