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首页> 外文期刊>Medical Physics >Automated contouring error detection based on supervised geometric attribute distribution models for radiation therapy: A general strategy
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Automated contouring error detection based on supervised geometric attribute distribution models for radiation therapy: A general strategy

机译:基于监督几何属性分布模型的放射治疗自动轮廓误差检测:一般策略

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摘要

Purpose: One of the most critical steps in radiation therapy treatment is accurate tumor and critical organ-at-risk (OAR) contouring. Both manual and automated contouring processes are prone to errors and to a large degree of inter-and intraobserver variability. These are often due to the limitations of imaging techniques in visualizing human anatomy as well as to inherent anatomical variability among individuals. Physicians/physicists have to reverify all the radiation therapy contours of every patient before using them for treatment planning, which is tedious, laborious, and still not an error-free process. In this study, the authors developed a general strategy based on novel geometric attribute distribution (GAD) models to automatically detect radiation therapy OAR contouring errors and facilitate the current clinical workflow.
机译:目的:放射治疗中最关键的步骤之一就是准确的肿瘤和关键的危险器官(OAR)轮廓。手动和自动轮廓绘制过程都容易出现错误,并且观察者之间和观察者内部的差异很大。这些通常是由于成像技术在可视化人体解剖学方面的局限性以及个体之间固有的解剖学变异性。在将每个患者的所有放射疗法轮廓用于治疗计划之前,医师/物理学家必须对其进行重新验证,这是繁琐,费力且仍然没有错误的过程。在这项研究中,作者开发了一种基于新型几何属性分布(GAD)模型的通用策略,以自动检测放射治疗OAR轮廓误差并促进当前的临床工作流程。

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