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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Multi-region labeling and segmentation using a graph topology prior and atlas information in brain images
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Multi-region labeling and segmentation using a graph topology prior and atlas information in brain images

机译:使用图拓扑先验和大脑图像中的图集信息进行多区域标记和分割

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Medical image segmentation and anatomical structure labeling according to the types of the tissues are important for accurate diagnosis and therapy. In this paper, we propose a novel approach for multi-region labeling and segmentation, which is based on a topological graph prior and the topological information of an atlas, using a modified multi-level set energy minimization method in brain images. We consider a topological graph prior and atlas information to evolve the contour based on a topological relationship presented via a graph relation. This novel method is capable of segmenting adjacent objects with very close gray level in low resolution brain image that would be difficult to segment correctly using standard methods. The topological information of an atlas are transformed to the topological graph of a low resolution (noisy) brain image to obtain region labeling. We explain our algorithm and show the topological graph prior and label transformation techniques to explain how it gives precise multi-region segmentation and labeling. The proposed algorithm is capable of segmenting and labeling different regions in noisy or low resolution MRI brain images of different modalities. We compare our approaches with other state-of-the-art approaches for multi-region labeling and segmentation. (C) 2014 Elsevier Ltd. All rights reserved.
机译:根据组织类型进行医学图像分割和解剖结构标记对于准确诊断和治疗很重要。在本文中,我们提出了一种新颖的多区域标记和分割方法,该方法基于先验的拓扑图和地图集的拓扑信息,在脑图像中使用改进的多级集能量最小化方法。我们考虑拓扑图先验和地图集信息,以基于通过图关系表示的拓扑关系来演化轮廓。这种新颖的方法能够在低分辨率脑图像中以非常接近的灰度分割相邻对象,而使用标准方法很难正确分割。将地图集的拓扑信息转换为低分辨率(嘈杂)脑图像的拓扑图,以获得区域标记。我们解释了我们的算法,并展示了拓扑图先验和标签变换技术,以解释它如何提供精确的多区域分割和标签。所提出的算法能够对具有不同模态的嘈杂或低分辨率MRI脑图像中的不同区域进行分割和标记。我们将我们的方法与其他用于多区域标记和分割的最新方法进行了比较。 (C)2014 Elsevier Ltd.保留所有权利。

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