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引用次数: 0

摘要

纵向可重复性是自动医学影像分割的一个基本问题,但事实证明这是一个难以实现的目标,因为人工脑结构描记显示的变异性超过 10%。为了提高再现性,人们研究了纵向分割(4D)方法,以调和传统 3D 方法的时间变化。在过去的十年中,多图谱标签融合已成为最先进的三维图像分割技术,很多人都在努力将其应用于四维纵向分割。然而,以往的方法要么受限于使用应用指定的能量函数(如曲面融合和多模型融合),要么只考虑稀疏性假设下两个连续时间点(t 和 t+1)上的时间平滑性。因此,针对一般标签融合目的并同时考虑所有时间点的时间一致性的 4D 多图集标签融合理论很有吸引力。在此,我们提出了一种新颖的纵向标签融合算法,称为 4D 联合标签融合(4DJLF),通过非局部斑块-强度协方差模型纳入时间一致性建模。4DJLF 的优势包括(1) 4DJLF 在一般标签融合框架下,同时纳入了所有纵向时间点的空间和时间协方差。(2) 所提出的算法是一种领先的联合标签融合方法(JLF)的纵向通用化,该方法已被证明适用于多种应用。(3) 地图集的空间时间一致性是在基于投票和统计融合的概率模型启发下建立的。与使用相同地图集的原始 JLF 方法相比,所提出的方法提高了纵向分割的一致性,同时保持了灵敏度。该方法可在线开源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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4D Multi-atlas Label Fusion using Longitudinal Images.

Longitudinal reproducibility is an essential concern in automated medical image segmentation, yet has proven to be an elusive objective as manual brain structure tracings have shown more than 10% variability. To improve reproducibility, longitudinal segmentation (4D) approaches have been investigated to reconcile temporal variations with traditional 3D approaches. In the past decade, multi-atlas label fusion has become a state-of-the-art segmentation technique for 3D image and many efforts have been made to adapt it to a 4D longitudinal fashion. However, the previous methods were either limited by using application specified energy function (e.g., surface fusion and multi model fusion) or only considered temporal smoothness on two consecutive time points (t and t+1) under sparsity assumption. Therefore, a 4D multi-atlas label fusion theory for general label fusion purpose and simultaneously considering temporal consistency on all time points is appealing. Herein, we propose a novel longitudinal label fusion algorithm, called 4D joint label fusion (4DJLF), to incorporate the temporal consistency modeling via non-local patch-intensity covariance models. The advantages of 4DJLF include: (1) 4DJLF is under the general label fusion framework by simultaneously incorporating the spatial and temporal covariance on all longitudinal time points. (2) The proposed algorithm is a longitudinal generalization of a leading joint label fusion method (JLF) that has proven adaptable to a wide variety of applications. (3) The spatial temporal consistency of atlases is modeled in a probabilistic model inspired from both voting based and statistical fusion. The proposed approach improves the consistency of the longitudinal segmentation while retaining sensitivity compared with original JLF approach using the same set of atlases. The method is available online in open-source.

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Brain Image Labeling Using Multi-atlas Guided 3D Fully Convolutional Networks. Learning-Based Estimation of Functional Correlation Tensors in White Matter for Early Diagnosis of Mild Cognitive Impairment. Whole Brain Parcellation with Pathology: Validation on Ventriculomegaly Patients. Multiple Sclerosis Lesion Segmentation Using Joint Label Fusion. 4D Multi-atlas Label Fusion using Longitudinal Images.
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