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      Brain tissue classification based on DTI using an improved fuzzy C-means algorithm with spatial constraints.

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          Abstract

          We present an effective method for brain tissue classification based on diffusion tensor imaging (DTI) data. The method accounts for two main DTI segmentation obstacles: random noise and magnetic field inhomogeneities. In the proposed method, DTI parametric maps were used to resolve intensity inhomogeneities of brain tissue segmentation because they could provide complementary information for tissues and define accurate tissue maps. An improved fuzzy c-means with spatial constraints proposal was used to enhance the noise and artifact robustness of DTI segmentation. Fuzzy c-means clustering with spatial constraints (FCM_S) could effectively segment images corrupted by noise, outliers, and other imaging artifacts. Its effectiveness contributes not only to the introduction of fuzziness for belongingness of each pixel but also to the exploitation of spatial contextual information. We proposed an improved FCM_S applied on DTI parametric maps, which explores the mean and covariance of the feature spatial information for automated segmentation of DTI. The experiments on synthetic images and real-world datasets showed that our proposed algorithms, especially with new spatial constraints, were more effective.

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          Author and article information

          Journal
          Magn Reson Imaging
          Magnetic resonance imaging
          Elsevier BV
          1873-5894
          0730-725X
          Nov 2013
          : 31
          : 9
          Affiliations
          [1 ] Department of Computer Science and Technology, East China Normal University, Shanghai 200241, China. Electronic address: ywen@cs.ecnu.edu.cn.
          Article
          S0730-725X(13)00206-3
          10.1016/j.mri.2013.05.007
          23891435
          4270bcbc-fe21-4492-8cbb-b4bdc9b16c54
          History

          Fuzzy c-means with spatial constraints,Diffusion tensor imaging,Parametric map,Image segmentation

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