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Approach and assessment of automated stereotactic radiotherapy planning for early stage non-small-cell lung cancer

机译:早期非小细胞肺癌的立体定向放射治疗自动计划的方法和评估

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摘要

BackgroundIntensity-modulated radiotherapy (IMRT) and volumetric-modulated arc therapy (VMAT) are standard physical technologies of stereotactic body radiotherapy (SBRT) that are used for patients with non-small-cell lung cancer (NSCLC). The treatment plan quality depends on the experience of the planner and is limited by planning time. An automated planning process can save time and ensure a high-quality plan. This study aimed to introduce and demonstrate an automated planning procedure for SBRT for patients with NSCLC based on machine-learning algorithms. The automated planning was conducted in two steps: (1) determining patient-specific optimized beam orientations; (2) calculating the organs at risk (OAR) dose achievable for a given patient and setting these dosimetric parameters as optimization objectives. A model was developed using data of historical expertise plans based on support vector regression. The study cohort comprised patients with NSCLC who were treated using SBRT. A training cohort (N = 125) was used to calculate the beam orientations and dosimetric parameters for the lung as functions of the geometrical feature of each case. These plan–geometry relationships were used in a validation cohort (N = 30) to automatically establish the SBRT plan. The automatically generated plans were compared with clinical plans established by an experienced planner.
机译:背景技术调强放射疗法(IMRT)和体积调制放射疗法(VMAT)是立体定向放射疗法(SBRT)的标准物理技术,用于非小细胞肺癌(NSCLC)患者。治疗计划的质量取决于计划者的经验,并受计划时间的限制。自动化的计划流程可以节省时间并确保高质量的计划。这项研究旨在介绍和演示基于机器学习算法的NSCLC患者SBRT的自动计划程序。自动化计划分两个步骤进行:(1)确定针对患者的优化束方向; (2)计算给定患者可获得的危险器官(OAR)剂量,并将这些剂量参数设置为优化目标。使用基于支持向量回归的历史专业计划的数据开发了一个模型。该研究队列包括接受SBRT治疗的NSCLC患者。使用训练队列(N = 125)来计算每种情况下肺部的射束方向和剂量参数,作为几何特征的函数。在验证队列中使用这些计划与几何之间的关系(N = 30)自动建立SBRT计划。将自动生成的计划与有经验的计划者建立的临床计划进行比较。

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