Wu Guorong, Qi Feihu, Shen Dinggang
Department of Computer Science and Engineering, Shanghai Jiao Tong University, Shanghai, China.
Inf Process Med Imaging. 2007;20:160-71. doi: 10.1007/978-3-540-73273-0_14.
A fully learning-based framework has been presented for deformable registration of MR brain images. In this framework, the entire brain is first adaptively partitioned into a number of brain regions, and then the best features are learned for each of these brain regions. In order to obtain overall better performance for both of these two steps, they are integrated into a single framework and solved together by iteratively performing region partition and learning the best features for each partitioned region. In particular, the learned best features for each brain region are required to be identical, and maximally salient as well as consistent over all individual brains, thus facilitating the correspondence detection between individual brains during the registration procedure. Moreover, the importance of each brain point in registration is evaluated according to the distinctiveness and consistency of its respective best features, therefore the salient points with distinctive and consistent features can be hierarchically selected to steer the registration process and reduce the risk of being trapped in local minima. Finally, the statistics of inter-brain deformations, represented by multi-level B-Splines, is also hierarchically captured for effectively constraining the brain deformations estimated during the registration procedure. By using this proposed learning-based registration framework, more accurate and robust registration results can be achieved according to experiments on both real and simulated data.
已提出一种基于完全学习的框架用于磁共振脑图像的可变形配准。在该框架中,首先将整个大脑自适应地划分为多个脑区,然后为每个脑区学习最佳特征。为了在这两个步骤中都获得整体更好的性能,将它们集成到一个单一框架中,并通过迭代执行区域划分和为每个划分区域学习最佳特征来共同求解。特别地,要求为每个脑区学习的最佳特征是相同的,并且在所有个体大脑中具有最大显著性和一致性,从而便于在配准过程中检测个体大脑之间的对应关系。此外,根据每个脑点各自最佳特征的独特性和一致性来评估其在配准中的重要性,因此可以分层选择具有独特且一致特征的显著点来引导配准过程并降低陷入局部最小值的风险。最后,还分层捕获以多级B样条表示的脑间变形统计信息,以有效约束在配准过程中估计的脑变形。通过使用这种提出的基于学习的配准框架,根据对真实数据和模拟数据的实验,可以获得更准确和稳健的配准结果。