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Automatic atlas-guided constrained random Walker algorithm for 3D segmentation of muscles on water magnetic resonance images

机译:用于水磁共振图像上肌肉3D分割的自动图案引导的随机沃克算法

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Automatic segmentation of distinct muscles is a crucial step for quantitative analysis of muscle's tissue properties. Magnetic resonance (MR) imaging provides a superior soft tissue contrast and noninvasive means for assessing muscular characteristics. However, automatic segmentation of muscles using common morphological MR imaging is very challenging as the intensities and textures of adjacent muscles are similar and the boundaries between them are mostly invisible or discontinuous. In this paper, we propose a novel fully automatic framework for 3D segmentation of muscles on water MR images. This framework generates the 3D average and probabilistic atlases of the targeted muscle to automatically define the labeled seeds, the edges weights, and the constraints of a constrained Random Walker algorithm. Also, the low-pass filtered atlas-derived muscle probability map is used to augment the intensities prior to the graph-based segmentation. This enables automatic localization of the targeted muscle and enforces dissimilarities between its intensities and the intensities of adjacent lean tissues. The proposed algorithm outperforms the original random Walker algorithm and the conventional multi-atlas registration for muscle segmentation and is less sensitive to errors in the manually segmented muscle masks used for training (atlas computation).
机译:不同肌肉的自动分割是对肌肉组织特性进行定量分析的关键步骤。磁共振(MR)成像提供优异的软组织对比和非侵入性手段,用于评估肌肉特征。然而,使用常见形态学MR成像的肌肉的自动分割非常具有挑战性,因为相邻肌肉的强度和纹理相似,并且它们之间的边界大多是看不见的或不连续的。在本文中,我们提出了一种新的全自动框架,用于水MR图像上的肌肉的3D分割框架。该框架生成目标肌肉的3D平均值和概率标识,以自动定义标记的种子,边缘权重和约束随机沃克算法的约束。此外,低通滤波的地图衍生的肌肉概率图用于在基于图形的分割之前增强强度。这使得能够自动定位目标肌肉,并在其强度和相邻瘦组织的强度之间实施不同的抗纤维。所提出的算法优于原始的随机助行器算法和肌肉分割的传统多标准注册,对用于训练(ATLAS计算)的手动分段的肌肉掩模中的误差不太敏感。

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