Department of Nuclear Medicine and Department of Brain and Cognitive Sciences, Seoul National University, Seoul 110-744, Korea.
IEEE Trans Med Imaging. 2012 Dec;31(12):2267-77. doi: 10.1109/TMI.2012.2219590. Epub 2012 Sep 19.
The brain network is usually constructed by estimating the connectivity matrix and thresholding it at an arbitrary level. The problem with this standard method is that we do not have any generally accepted criteria for determining a proper threshold. Thus, we propose a novel multiscale framework that models all brain networks generated over every possible threshold. Our approach is based on persistent homology and its various representations such as the Rips filtration, barcodes, and dendrograms. This new persistent homological framework enables us to quantify various persistent topological features at different scales in a coherent manner. The barcode is used to quantify and visualize the evolutionary changes of topological features such as the Betti numbers over different scales. By incorporating additional geometric information to the barcode, we obtain a single linkage dendrogram that shows the overall evolution of the network. The difference between the two networks is then measured by the Gromov-Hausdorff distance over the dendrograms. As an illustration, we modeled and differentiated the FDG-PET based functional brain networks of 24 attention-deficit hyperactivity disorder children, 26 autism spectrum disorder children, and 11 pediatric control subjects.
大脑网络通常通过估计连接矩阵并在任意水平上对其进行阈值处理来构建。这种标准方法的问题在于,我们没有任何普遍接受的标准来确定适当的阈值。因此,我们提出了一种新的多尺度框架,该框架可以对在每个可能的阈值上生成的所有大脑网络进行建模。我们的方法基于持久同调及其各种表示形式,例如 Rips 滤波、条形码和树状图。这种新的持久同调框架使我们能够以一致的方式在不同尺度上量化各种持久拓扑特征。条形码用于量化和可视化拓扑特征(如不同尺度上的贝蒂数)的进化变化。通过将额外的几何信息合并到条形码中,我们获得了一个单链接树状图,该图显示了网络的整体演变。然后,通过树状图上的 Gromov-Hausdorff 距离来测量两个网络之间的差异。作为说明,我们对 24 名注意力缺陷多动障碍儿童、26 名自闭症谱系障碍儿童和 11 名儿科对照组的基于 FDG-PET 的功能性大脑网络进行了建模和区分。