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Hybrid possibilistic-genetic technique for assessment of brain tissues volume: Case study for Alzheimer patients images clustering

机译:杂种可能性 - 脑组织评估的遗传技术(脑组织):Alzheimer患者的案例研究图像聚类

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The effect of partial volume related to anatomical MRI and functional images limit the diagnostic potential of brain imaging. To remedy for this problem, we propose a fuzzy-genetic brain segmentation scheme for the assessment of white matter, gray matter and cerebrospinal fluid volumes, from brain images of Alzheimer patients from a real database. This clustering process based on Possibilistic C-Means (PCM) algorithm, which allows modeling the degree of relationship between each voxels and a given tissue; and based on fuzzy genetic initialization for the centers of clusters by a Fuzzy C-Means (FCM) algorithm, and for which the result is optimized by genetic process. The visual results show a concordance between the ground truth segmentation and the hybrid algorithm results, which allows efficient tissue classification. The superiority was also proved with the quantitative results of the proposed method in comparison with the both conventional FCM and PCM algorithms.
机译:分解器MRI和功能图像相关的部分体积的影响限制了脑成像的诊断潜力。为了解决这个问题,我们提出了一种模糊遗传脑分割方案,用于评估白质,灰质和脑脊液量,从真实数据库中的阿尔茨米默患者的脑图像。该聚类过程基于可能性C-Means(PCM)算法,允许建模每个体素和给定组织之间的关系程度;基于模糊C型(FCM)算法对簇中心的模糊遗传初始化,结果通过遗传过程优化了结果。视觉结果显示了地面真实分割和混合算法结果之间的一致性,这允许有效的组织分类。除了传统的FCM和PCM算法相比,还证明了所提出的方法的定量结果。

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