Wang Bin, Guo Min, Pan Tingting, Li Zhifeng, Li Ying, Xiang Jie, Cui Xiaohong, Niu Yan, Yang Jiajia, Wu Jinglong, Liu Miaomiao, Li Dandan
College of Information and Computer, Taiyuan University of Technology, No. 79, Yingze West Street, Taiyuan, Shanxi, 030024, China.
Graduate School of Interdisciplinary Science and Engineering in Health Systems, 3-1-1 Tsushimanaka, kita-ku, Okayama-shi, Okayama, 700-8530, Japan.
Cereb Cortex. 2023 Apr 25;33(9):5447-5456. doi: 10.1093/cercor/bhac432.
It has been shown that the functional dependency of the brain exists in both direct and indirect regional relationships. Therefore, it is necessary to map higher-order coupling in brain structure and function to understand brain dynamic. However, how to quantify connections between not directly regions remains unknown to schizophrenia. The word2vec is a common algorithm through create embeddings of words to solve these problems. We apply the node2vec embedding representation to characterize features on each node, their pairwise relationship can give rise to correspondence relationships between brain regions. Then we adopt pearson correlation to quantify the higher-order coupling between structure and function in normal controls and schizophrenia. In addition, we construct direct and indirect connections to quantify the coupling between their respective functional connections. The results showed that higher-order coupling is significantly higher in schizophrenia. Importantly, the anomalous cause of coupling mainly focus on indirect structural connections. The indirect structural connections play an essential role in functional connectivity-structural connectivity (SC-FC) coupling. The similarity between embedded representations capture more subtle network underlying information, our research provides new perspectives for understanding SC-FC coupling. A strong indication that the structural backbone of the brain has an intimate influence on the resting-state functional.
研究表明,大脑的功能依赖性存在于直接和间接的区域关系中。因此,有必要绘制大脑结构和功能中的高阶耦合,以了解大脑动态。然而,如何量化非直接区域之间的连接在精神分裂症中仍然未知。词向量(word2vec)是一种常见的算法,通过创建词的嵌入来解决这些问题。我们应用节点向量(node2vec)嵌入表示来表征每个节点上的特征,它们的成对关系可以产生脑区之间的对应关系。然后我们采用皮尔逊相关性来量化正常对照和精神分裂症中结构与功能之间的高阶耦合。此外,我们构建直接和间接连接来量化它们各自功能连接之间的耦合。结果表明,精神分裂症中的高阶耦合显著更高。重要的是,耦合异常的原因主要集中在间接结构连接上。间接结构连接在功能连接-结构连接(SC-FC)耦合中起着至关重要的作用。嵌入表示之间的相似性捕获了更细微的网络潜在信息,我们的研究为理解SC-FC耦合提供了新的视角。有力表明大脑的结构骨架对静息态功能有密切影响。