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3D Probabilistic Morphable Models for Brain Tumor Segmentation

机译:3D脑肿瘤细分的概率性功能模型

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Segmenting abnormal areas in brain volumes is a difficult task, due to the shape variability that the brain tumors exhibit between patients. The main problem in these processes is that the common segmentation techniques used in these tasks, lack of the property of modeling the shape structure that the tumor presents, which leads to an inaccurate segmentation. In this paper, we propose a probabilistic framework in order to model the shape variations related to abnormal tissues relevant in brain tumor segmentation procedures. For this purpose the database of the Brain Tumor Image Segmentation Challenge (Brats) 2015 is used. We use a Probabilistic extension of the 3D morphable model to learn those tumor variations between patients. Then from the trained model, we perform a non-rigid matching to fit the deformed modeled tumor in the medical image. The experimental results show that by using Probabilistic morphable models, the non-rigid properties of the abnormal tissues can be learned and hence improve the segmentation task.
机译:由于脑肿瘤在患者之间表现出的形状变异性,脑体积的异常区域是一项艰巨的任务。这些过程中的主要问题是,在这些任务中使用的常见分割技术,缺乏对肿瘤呈现的形状结构建模的性质,这导致不准确的分割。在本文中,我们提出了一个概率框架,以模拟与脑肿瘤分割程序相关的异常组织有关的形状变化。为此目的,使用脑肿瘤图像分割挑战(Brats)2015的数据库。我们使用概率扩展3D有线模型来学习患者之间的肿瘤变化。然后从训练有素的模型中,我们执行非刚性匹配以适合医学图像中的变形建模肿瘤。实验结果表明,通过使用概率的可变模型,可以学习异常组织的非刚性特性,从而改善分割任务。

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