Dual-Layer Groupwise Registration for Consistent Labeling of Longitudinal Brain Images.

Minjeong Kim, Guorong Wu, Isrem Rekik, Dinggang Shen
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引用次数: 1

Abstract

The growing collection of longitudinal images for brain disease diagnosis necessitates the development of advanced longitudinal registration and anatomical labeling methods that can respect temporal consistency between images. However, the characteristics of such longitudinal images and how they lodge into the image manifold are often neglected in existing labeling methods. Indeed, most of them independently align atlases to each target time-point image for propagating the pre-defined atlas labels to the subject domain. In this paper, we present a dual-layer groupwise registration method to consistently label anatomical regions of interest in brain images across different time-points using a multi-atlases-based labeling framework. Our framework can best enhance the labeling of longitudinal images through: (1) using the group mean of the longitudinal images of each subject (i.e., subject-mean) as a bridge between atlases and the longitudinal subject scans to align atlases to all time-point images jointly; and (2) using inter-atlas relationship in their nesting manifold to better register each atlas image to the subject-mean. These steps yield to a more consistent (from the joint alignment of atlases with all time-point images) and more accurate (from the manifold-guided registration between each atlases and the subject-mean image) registration, thereby eventually improving the consistency and accuracy for the subsequent labeling step. We have tested our dual-layer groupwise registration method to label two challenging longitudinal brain datasets (i.e., healthy infants and Alzheimer's disease subjects). Our experimental results have showed that our method achieves higher labeling accuracy while keeping the labeling consistency over time, when compared to the traditional registration scheme (without our proposed contributions). Moreover, the proposed framework can flexibly integrate with the existing label fusion methods, such as sparse-patch based methods, to improve the labeling accuracy of longitudinal datasets.

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纵向脑图像一致标记的双层分组配准。
越来越多的纵向图像用于脑部疾病诊断,需要发展先进的纵向配准和解剖标记方法,可以尊重图像之间的时间一致性。然而,在现有的标记方法中,这种纵向图像的特征以及它们如何进入图像歧管往往被忽视。实际上,它们中的大多数都独立地将地图集对齐到每个目标时间点图像,以便将预定义的地图集标签传播到主题域。在本文中,我们提出了一种双层分组配准方法,使用基于多地图集的标记框架,在不同时间点一致地标记大脑图像中感兴趣的解剖区域。我们的框架可以通过以下方式最好地增强纵向图像的标记:(1)利用每个受试者纵向图像的组均值(即受试者均值)作为地图集和纵向受试者扫描之间的桥梁,将地图集与所有时间点图像联合对齐;(2)利用嵌套流形中的地图集间关系,更好地将每幅地图集图像配准到主题均值。这些步骤产生了更一致(从地图集与所有时间点图像的联合对齐)和更准确(从每个地图集与主题平均图像之间的流形引导配准)的配准,从而最终提高了后续标记步骤的一致性和准确性。我们测试了我们的双层分组注册方法来标记两个具有挑战性的纵向脑数据集(即健康婴儿和阿尔茨海默病受试者)。我们的实验结果表明,与传统的注册方案(没有我们提出的贡献)相比,我们的方法在保持标记一致性的同时达到了更高的标记精度。此外,该框架可以灵活地与现有的标签融合方法(如基于稀疏补丁的方法)相结合,提高纵向数据集的标记精度。
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