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Automatic Analysis of Brain Tumor from Magnetic Resonance Images based on Geometric Median Shift

机译:基于几何中间换档的磁共振图像自动分析磁共振图像

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In this paper, we propose an automated approach based on the geometric median shift algorithm over Riemannian manifolds, for the brain tumor detection and segmentation in magnetic resonance images (MRI). This approach is based on the geometric median, geodesic distance. We propose the median shift to overcome the limitation of mean which is not necessary a point in a set. The geodesic distance can describe data points distributed on a manifold, compared to the Euclidean distance, and produce efficient results for image analysis. Coupled with k-means algorithm, the proposed framework can cluster the brain image into tree regions (gray matter, white matter and cerebrospinal fluid) and abnormalities regions. We applied this approach to clustering the brain tissues and brain tumor segmentation, which is validated on a synthetic brain MRI. The obtained results using two datasets show the efficiency of the used algorithm validated qualitatively by the measurement of Dice Similarity Coefficient.
机译:在本文中,我们提出了一种基于Riemannian歧管的几何中值移位算法的自动方法,用于磁共振图像(MRI)中的脑肿瘤检测和分割。这种方法基于几何中值,测地距离。我们提出了中位数转变来克服意义的限制,这在一套中不是必需的点。与欧几里德距离相比,测地距可以描述分布在歧管上的数据点,并对图像分析产生有效的结果。耦合与K-Means算法,该框架可以将脑图像聚集成树木区域(灰质,白质和脑脊髓液)和异常区域。我们将这种方法应用于聚类脑组织和脑肿瘤细分,这些方法在合成脑MRI上验证。使用两个数据集的获得结果显示了通过测量骰子相似度系数的定性验证的使用算法的效率。

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