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Fuzzy generalized fast marching method for 3D segmentation of brain structures

机译:脑结构3D分割的模糊广义快速行进方法

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The aim of this work is to develop a new model for segmentation of brain structures in medical brain MR images. Brain segmentation is a challenging task due to the complex anatomical structure of brain structures as well as intensity nonuniformity, partial volume effects and noise. Generally the structures of interest are of relatively complicated size and have significant shape variations, the structures boundaries may be blurry or even missing, and the surrounding background is full of irrelevant edges. Segmentation methods based on fuzzy models have been developed to overcome the uncertainty caused by these effects. In this study, we propose a robust and accurate brain structures segmentation method based on a combination of fuzzy model and deformable model. Our method breaks up into two great parts. Initially, a preliminary stage allows to construct the various information maps, in particular a fuzzy map, used as a principal information source, constructed using the Fuzzy C-means method (FCM). Then, a deformable model implemented with the generalized fast marching method (GFMM), evolves toward the structure to be segmented, under the action of a normal force defined from these information maps. In this sense, we used a powerful evolution function based on a fuzzy model, adapted for brain structures. Two extensions of our general method are presented in this work. The first extension concerns the addition of an edge map to the fuzzy model and the use of some rules adapted to the segmentation process. The second extension consists of the use of several models evolving simultaneously to segment several structures. Extensive experiments are conducted on both simulated and real brain MRI datasets. Our proposed approach shows promising and achieves significant improvements with respect to several state-of-the-art methods and with the three practical segmentation techniques widely used in neuroimaging studies, namely SPM, FSL, and Freesurfer.
机译:这项工作的目的是开发一种用于医学医学MR图像中的大脑结构分割的新模型。由于脑部结构的复杂解剖结构以及强度不均匀,部分体积效应和噪声,脑部分割是一项具有挑战性的任务。通常,感兴趣的结构的尺寸相对复杂并且形状变化很大,结构边界可能模糊甚至丢失,并且周围的背景充满了不相关的边缘。已经开发出基于模糊模型的分割方法来克服由这些影响引起的不确定性。在这项研究中,我们提出了一种基于模糊模型和可变形模型相结合的鲁棒且准确的脑结构分割方法。我们的方法分为两个主要部分。最初,初步阶段允许构建各种信息图,特别是使用模糊C均值方法(FCM)构建的用作主要信息源的模糊图。然后,在从这些信息图中定义的法向力的作用下,使用广义快速行进方法(GFMM)实现的可变形模型向要分割的结构发展。从这个意义上讲,我们使用了基于模糊模型的强大演化函数,适用于大脑结构。这项工作介绍了我们通用方法的两个扩展。第一个扩展涉及将边缘图添加到模糊模型,以及使用一些适用于分割过程的规则。第二个扩展包括使用同时演化的几个模型来分割几个结构。在模拟和真实大脑MRI数据集上都进行了广泛的实验。我们提出的方法相对于几种最先进的方法以及在神经影像研究中广泛使用的三种实用的分割技术,即SPM,FSL和Freesurfer,显示出了希望,并取得了显着改善。

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