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Multi-atlas Based Segmentation of Corpus Callosum on MRIs of Multiple Sclerosis Patients

机译:胼callosum基于多地标的胼callosum的分割

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In this work, a supervised automatic multi-atlas based segmentation method for corpus callosum (CC) in magnetic resonance images (MRIs) of MS patients is presented. Due to atrophy, the shape of disease affected CC differs distinctively from healthy ones. Therefore, atlases are used that are built from the underlying dataset and do not originate from atlas datasets of healthy brains. The atlas construction is done by clustering the patient images into subgroups of similar images and building a mean image from each cluster. During this work, the optimal number of atlases and the best label fusion method are analyzed. The method is evaluated on 100 T1-weighted brain MRI images from MS patients. Accuracy is assessed by comparing the overlap of the segmentations from the developed method against manual segmentations obtained by a medical student.
机译:在这项工作中,提出了MS患者磁共振图像(CC)的语料愈伤组织(CC)的受监督的基于多地图集的分段方法。由于萎缩,受影响的CC的疾病的形状与健康的疾病不同。因此,使用的atlase是由底层数据集构建的,不源自健康脑的Atlas数据集。通过将患者图像聚类为类似图像的子组并从每个簇构建平均图像来完成地图集结构。在此工作期间,分析了最佳的atlases和最佳标签融合方法。从MS患者100 T1加权脑MRI图像评估该方法。通过将分割与发出方法的分割重叠与医学生物获得的手动分割进行比较来评估准确性。

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