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Segmentation of Cervical Images by Inter-subject Registration with a Statistical Organ Model

机译:通过对象间配准的统计器官模型对子宫颈图像进行分割

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For radiation therapy of cervical cancer, segmentation of the cervix and the surrounding organs are needed. The aim is to develop a fully automatic method for the segmentation of all relevant organs. Our approach is an atlas-based segmentation, with a registration scheme that is aided by statistical knowledge of the deformations that are to be expected. A statistical model that acts on the boundary of an organ is included as a soft constraint in a free-form registration framework. As a first evaluation of our approach, we apply it to the segmentation of the bladder. Statistical models for the bladder were trained on a set of manual delineations. Experiments on a leave-one-patient-out basis were performed, with the quality defined as the Dice similarity to the manual segmentations. Compared to a registration without the use of statistical knowledge, the segmentations are slightly, but significantly improved.
机译:对于子宫颈癌的放射治疗,需要对子宫颈和周围器官进行分割。目的是开发一种用于分割所有相关器官的全自动方法。我们的方法是基于地图集的分割,其配准方案由对预期变形的统计知识进行辅助。在自由形式的注册框架中,作为软约束包括了作用在器官边界上的统计模型。作为对我们方法的首次评估,我们将其应用于膀胱分割。膀胱的统计模型是根据一组手动描述进行训练的。进行了“一刀切”实验,其质量定义为Dice与手动细分相似。与不使用统计知识的注册相比,细分会略有改善,但会明显改善。

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