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Local Patch Similarity Ranked Voxelwise STAPLE on Magnetic Resonance Image Hippocampus Segmentation

机译:本地补丁相似性在磁共振图像海马分割上排名voxelwise钉书针

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The segmentation and labeling of sub-cortical structures of interest are important tasks for the assessment of morphometric features in quantitative magnetic resonance (MR) image analysis. Recently, multi-atlas segmentation methods with statistical fusion strategy have demonstrated high accuracy in hippocampus segmentation. While, most of the segmentations rarely consider spatially variant model and reserve all segmentations. In this study, we propose a novel local patch-based and ranking strategy for voxelwise atlas selection to extend the original Simultaneous Truth and Performance Level Estimation (STAPLE) algorithm. The local ranking strategy is based on the metric of normalized cross correlation (NCC). Unlike its predecessors, this method estimates the fusion of each voxel patch-by-patch and makes use of gray image features as a prior. Validation results on 33 pairs of hippocampus MR images show good performance on the segmentation of hippocampus.
机译:利息次皮质结构的分割和标记是评估定量磁共振(MR)图像分析中的形态学特征的重要任务。最近,具有统计融合策略的多地图集分段方法在海马分割中表现出高精度。虽然,大多数分段很少考虑空间变体模型并保留所有分段。在本研究中,我们提出了一种新的本地补丁和排名策略,用于voxelwise地图集选择,以扩展原始的同时性真实性和性能水平估计(Staple)算法。本地排名策略基于标准化交叉相关(NCC)的度量。与其前辈不同,此方法估计每个体素补丁逐个修补程序的融合,并使用灰度图像特征作为先前。验证结果33对海马MR图像显示出海马分割的良好表现。

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