IDEA Lab, Department of Radiology and BRIC, University of North Carolina at Chapel Hill, NC, USA.
Neuroimage. 2012 Jan 16;59(2):1275-89. doi: 10.1016/j.neuroimage.2011.07.095. Epub 2011 Aug 22.
Longitudinal atlas construction plays an important role in medical image analysis. Given a set of longitudinal images from different subjects, the task of longitudinal atlas construction is to build an atlas sequence which can represent the trend of anatomical changes of the population. The major challenge for longitudinal atlas construction is how to effectively incorporate both the subject-specific information and population information to build the unbiased atlases. In this paper, a novel groupwise longitudinal atlas construction framework is proposed to address this challenge, and the main contributions of the proposed framework lie in the following aspects: (1) The subject-specific longitudinal information is captured by building the growth model for each subject. (2) The longitudinal atlas sequence is constructed by performing groupwise registration among all the subject image sequences, and only one transformation is needed to transform each subject's image sequence to the atlas space. The constructed longitudinal atlases are unbiased and no explicit template is assumed. (3) The proposed method is general, where the number of longitudinal images of each subject and the time points at which they are taken can be different. The proposed method is extensively evaluated on two longitudinal databases, namely the BLSA and ADNI databases, to construct the longitudinal atlas sequence. It is also compared with a state-of-the-art longitudinal atlas construction algorithm based on kernel regression on the temporal domain. Experimental results demonstrate that the proposed method consistently achieves higher registration accuracies and more consistent spatial-temporal correspondences than the compared method on both databases.
构建纵向图谱在医学图像分析中起着重要作用。给定一组来自不同个体的纵向图像,构建纵向图谱的任务是构建一个图谱序列,该序列能够代表人群解剖变化的趋势。构建纵向图谱的主要挑战是如何有效地结合个体特异性信息和群体信息来构建无偏的图谱。在本文中,提出了一种新的基于群组的纵向图谱构建框架来解决这个挑战,该框架的主要贡献在于以下几个方面:
通过为每个个体构建生长模型来捕获个体特异性的纵向信息。
通过对所有个体图像序列进行群组配准来构建纵向图谱序列,并且只需要一个变换就可以将每个个体的图像序列转换到图谱空间。构建的纵向图谱是无偏的,并且不假设显式模板。
所提出的方法是通用的,其中每个个体的纵向图像数量和拍摄它们的时间点可以不同。该方法在两个纵向数据库 BLSA 和 ADNI 上进行了广泛的评估,以构建纵向图谱序列。它还与基于时域核回归的最新纵向图谱构建算法进行了比较。实验结果表明,该方法在两个数据库上都比比较方法具有更高的配准精度和更一致的时空对应关系。