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Frequency Dependent Topological Patterns of Resting-State Brain Networks
Authors:Long Qian  Yi Zhang  Li Zheng  Yuqing Shang  Jia-Hong Gao  Yijun Liu
Institution:1. Department of Biomedical Engineering, Peking University, Beijing, China.; 2. School of Life Science and Technology, Xidian University, Xi’an, Shaanxi, China.; 3. Department of Biological Sciences, National University of Singapore, Singapore, Singapore.; 4. Center for MRI Research, Peking University, Beijing, China.; Max Planck Institute for Human Cognitive and Brain Sciences, GERMANY,
Abstract:The topological organization underlying brain networks has been extensively investigated using resting-state fMRI, focusing on the low frequency band from 0.01 to 0.1 Hz. However, the frequency specificities regarding the corresponding brain networks remain largely unclear. In the current study, a data-driven method named complementary ensemble empirical mode decomposition (CEEMD) was introduced to separate the time series of each voxel into several intrinsic oscillation rhythms with distinct frequency bands. Our data indicated that the whole brain BOLD signals could be automatically divided into five specific frequency bands. After applying the CEEMD method, the topological patterns of these five temporally correlated networks were analyzed. The results showed that global topological properties, including the network weighted degree, network efficiency, mean characteristic path length and clustering coefficient, were observed to be most prominent in the ultra-low frequency bands from 0 to 0.015 Hz. Moreover, the saliency of small-world architecture demonstrated frequency-density dependency. Compared to the empirical mode decomposition method (EMD), CEEMD could effectively eliminate the mode-mixing effects. Additionally, the robustness of CEEMD was validated by the similar results derived from a split-half analysis and a conventional frequency division method using the rectangular window band-pass filter. Our findings suggest that CEEMD is a more effective method for extracting the intrinsic oscillation rhythms embedded in the BOLD signals than EMD. The application of CEEMD in fMRI data analysis will provide in-depth insight in investigations of frequency specific topological patterns of the dynamic brain networks.
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