基于深度超图学习的磁共振图像中脑干核的多图谱分割

Pei Dong, Yangrong Guo, Yue Gao, Peipeng Liang, Yonghong Shi, Qian Wang, Dinggang Shen, Guorong Wu
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引用次数: 0

摘要

脑干核团(红核和黑质)的精确分割在深部脑刺激和帕金森病(PD)成像生物标记物研究等各种神经成像应用中非常重要。由于衰老过程中的铁沉积,脑干在磁共振(MR)图像中的对比度非常低。因此,斑块相似性的模糊性使得最近成功的基于多图谱斑块的标签融合方法难以像从磁共振图像中分割皮层和皮层下区域那样具有竞争力。为了应对这一挑战,我们提出了一种使用深度超图学习的新型多图谱脑干核分割方法。具体来说,我们从三个方面实现了这一目标。首先,我们利用超图将基于图的分割方法在保持空间一致性方面的优势和基于多图谱框架的群体先验的优势结合起来。其次,除了使用低层次的图像外观,我们还提取高层次的上下文特征来衡量复杂的斑块关系。由于上下文特征是在初步估计的标签概率图上计算的,因此我们最终将基于超图学习的标签传播转化为深度自改进模型。第三,由于某些体素(通常位于统一区域)上的解剖学标签比其他体素(通常位于两个区域之间的边界)上的解剖学标签更可靠,因此我们允许这些可靠的体素将其标签传播到附近难以贴标的体素上。这种分层策略使我们提出的标签融合方法具有深度和动态性。我们在从 3.0 T MR 图像分割黑质(SN)和红核(RN)的过程中评估了我们提出的标签融合方法,与最先进的标签融合方法相比,我们提出的方法取得了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-Atlas Based Segmentation of Brainstem Nuclei from MR Images by Deep Hyper-Graph Learning.

Multi-Atlas Based Segmentation of Brainstem Nuclei from MR Images by Deep Hyper-Graph Learning.

Multi-Atlas Based Segmentation of Brainstem Nuclei from MR Images by Deep Hyper-Graph Learning.

Accurate segmentation of brainstem nuclei (red nucleus and substantia nigra) is very important in various neuroimaging applications such as deep brain stimulation and the investigation of imaging biomarkers for Parkinson's disease (PD). Due to iron deposition during aging, image contrast in the brainstem is very low in Magnetic Resonance (MR) images. Hence, the ambiguity of patch-wise similarity makes the recently successful multi-atlas patch-based label fusion methods have difficulty to perform as competitive as segmenting cortical and sub-cortical regions from MR images. To address this challenge, we propose a novel multi-atlas brainstem nuclei segmentation method using deep hyper-graph learning. Specifically, we achieve this goal in three-fold. First, we employ hyper-graph to combine the advantage of maintaining spatial coherence from graph-based segmentation approaches and the benefit of harnessing population priors from multi-atlas based framework. Second, besides using low-level image appearance, we also extract high-level context features to measure the complex patch-wise relationship. Since the context features are calculated on a tentatively estimated label probability map, we eventually turn our hyper-graph learning based label propagation into a deep and self-refining model. Third, since anatomical labels on some voxels (usually located in uniform regions) can be identified much more reliably than other voxels (usually located at the boundary between two regions), we allow these reliable voxels to propagate their labels to the nearby difficult-to-label voxels. Such hierarchical strategy makes our proposed label fusion method deep and dynamic. We evaluate our proposed label fusion method in segmenting substantia nigra (SN) and red nucleus (RN) from 3.0 T MR images, where our proposed method achieves significant improvement over the state-of-the-art label fusion methods.

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