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Corpus Callosum Segmentation in MS Studies Using Normal Atlases and Optimal Hybridization of Extrinsic and Intrinsic Image Cues

机译:MS研究中的正常语料库Call体分割和外部和内部图像提示的最佳杂交

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The corpus callosum (CC) is a key brain structure and change in its size and shape is a focal point in the study of neurodegenerative diseases like multiple sclerosis (MS). A number of automatic methods have been proposed for CC segmentation in magnetic resonance images (MRIs) that can be broadly classified as intensity-based and template-based. Imaging artifacts and signal changes due to pathology often cause errors in intensity-based methods. Template-based methods have been proposed to alleviate these problems. However, registration inaccuracies (local mismatch) can occur when the template image has large intensity and morphological differences from the scan to be segmented, such as when using publicly available normal templates for a diseased population. Accordingly, we propose a novel hybrid segmentation framework that performs optimal, spatially variant fusion of multi-atlas-based and intensity-based priors. Our novel coupled graph-labeling formulation effectively optimizes, on a per-voxel basis, the weights that govern the choice of priors so that intensity priors derived from the subject image are emphasized when spatial priors derived from the registered templates are deemed less trustworthy. This stands in contrast to existing hybrid methods that either ignore local registration errors or alternate between the optimization of fusion weights and segmentation results in an expectation-maximization fashion. We evaluated our method using a public dataset and two large in-house MS datasets and found that it gave more accurate results than those achieved by existing methods for CC segmentation.
机译:call体(CC)是关键的大脑结构,其大小和形状的变化是诸如多发性硬化症(MS)等神经退行性疾病研究的重点。已经提出了许多用于磁共振图像(MRI)中的CC分割的自动方法,其可以大致分为基于强度和基于模板的分类。由于病理原因造成的成像伪影和信号变化通常会导致基于强度的方法出现错误。已经提出了基于模板的方法来减轻这些问题。但是,当模板图像的强度和形态差异与要分割的扫描图像较大时(例如,当使用公共可用的正常模板用于患病人群时),可能会发生配准不准确(局部不匹配)的情况。因此,我们提出了一种新颖的混合分割框架,可以对基于多图集和基于强度的先验进行最优的空间变异融合。我们新颖的耦合图形标记格式在每个体素的基础上有效地优化了控制优先级选择的权重,从而当从注册模板派生的空间优先级被认为不太值得信赖时,可以强调从主题图像得出的强度优先级。这与现有的混合方法形成对比,现有的混合方法要么忽略局部配准错误,要么以期望最大化的方式在融合权重和分段结果的优化之间交替。我们使用一个公共数据集和两个大型内部MS数据集评估了我们的方法,发现与现有的CC分割方法相比,该方法可提供更准确的结果。

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