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Probabilistic Refinement of Model-Based Segmentation: Application to Radiation Therapy Planning of the Head and Neck

机译:基于模型的细分的概率细化:用于头部和颈部放射治疗计划的应用

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Radiation therapy planning requires accurate delineation of target volumes and organs at risk. Traditional manual delineation is tedious, and can require hours of clinician's time. The majority of the published automated methods belong to model-based, atlas-based or hybrid segmentation approaches. One substantial limitation of model-based segmentation is that its accuracy may be restricted either by the uncertainties in image content or by the intrinsic properties of the model itself, such as prior shape constraints. In this paper, we propose a novel approach aimed at probabilistic refinement of segmentations obtained using 3D deformable models. The method is applied as the last step of a fully automated segmentation framework consisting of automatic initialization of the models in the patient image and their adaptation to the anatomical structures of interest. Performance of the method is compared to the conventional model-based scheme by segmentation of three important organs at risk in the head and neck region: mandible, brainstem, and parotid glands. The resulting segmentations are validated by comparing them to manual expert delineations. We demonstrate that the proposed refinement method leads to a significant improvement of segmentation accuracy, resulting in up to 13% overlap increase.
机译:放射治疗计划需要准确地描绘目标体积和器官面临风险。传统的手动描绘是乏味的,可以要求临床医生的时间。大多数已发布的自动化方法属于基于模型的,基于Atlas的或混合分割方法。基于模型的分割的一个实质性限制是其精度可以通过图像内容的不确定性或模型本身的内在特性,例如先前的形状约束来限制。在本文中,我们提出了一种新的方法,旨在使用3D可变形模型获得的分段的概率细化。该方法应用于完全自动分割框架的最后一步,包括患者图像中的模型的自动初始化及其对感兴趣的解剖结构的自动初始化。将该方法的性能与常规模型的方案进行比较,通过在头部和颈部区域的风险下分割三个重要器官:下颌,脑干和腮腺。通过将它们与手动专家描绘进行比较来验证产生的分割。我们证明,所提出的细化方法导致分割精度的显着提高,导致高达13%的重叠增加。

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