Golby Lab, Department of Neurosurgery, Brigham and Women's Hospital, Boston MA, USA.
Neuroimage. 2013 Oct 15;80:283-9. doi: 10.1016/j.neuroimage.2013.04.066. Epub 2013 Apr 28.
We compare two strategies for modeling the connections of the brain's white matter: fiber clustering and the parcellation-based connectome. Both methods analyze diffusion magnetic resonance imaging fiber tractography to produce a quantitative description of the brain's connections. Fiber clustering is designed to reconstruct anatomically-defined white matter tracts, while the parcellation-based white matter segmentation enables the study of the brain as a network. From the perspective of white matter segmentation, we compare and contrast the goals and methods of the parcellation-based and clustering approaches, with special focus on reviewing the field of fiber clustering. We also propose a third category of new hybrid methods that combine the aspects of parcellation and clustering, for joint analysis of connection structure and anatomy or function. We conclude that these different approaches for segmentation and modeling of the white matter can advance the neuroscientific study of the brain's connectivity in complementary ways.
纤维聚类和基于分割的连接组学。这两种方法都分析扩散磁共振成像纤维束追踪,以产生大脑连接的定量描述。纤维聚类旨在重建解剖定义的白质束,而基于分割的白质分割则使我们能够将大脑作为网络进行研究。从白质分割的角度,我们比较和对比了基于分割和聚类方法的目标和方法,特别关注纤维聚类领域的综述。我们还提出了第三种新的混合方法,这些方法结合了分割和聚类的方面,用于连接结构和解剖或功能的联合分析。我们得出结论,这些不同的白质分割和建模方法可以以互补的方式促进大脑连接的神经科学研究。