Abstract

At present, most brain functional studies are based on traditional frequency bands to explore the abnormal functional connections and topological organization of patients with depression. However, they ignore the characteristic relationship of electroencephalogram (EEG) signals in the time domain. Therefore, this paper proposes a network decomposition model based on Improved Empirical Mode Decomposition (EMD), it is suitable for time-frequency analysis of brain functional network. On the one hand, it solves the problem of mode mixing on original EMD method, especially on high-density EEG data. On the other hand, by building brain function networks on different intrinsic mode function (IMF), we can perform time-frequency analysis of brain function connections. It provides a new insight for brain function connectivity analysis of major depressive disorder (MDD). Experimental results found that the IMFs waveform decomposed by Improved EMD was more stable and the difference between IMFs was obvious, it indicated that the mode mixing can be effectively solved. Besides, the analysis of the brain network, we found that the changes in MDD functional connectivity on different IMFs, it may be related to the pathological changes for MDD. More statistical results on three network metrics proved that there were significant differences between MDD and normal controls (NC) group. In addition, the aberrant brain network structure of MDDs was also confirmed in the hubs characteristic. These findings may provide potential biomarkers for the clinical diagnosis of MDD patients.

Highlights

  • D EPRESSION is a common illness worldwide with more than 264 million people affected, and is a leading cause of global disability and disease burden [1]

  • In order to solve this problem, this paper proposes a network decomposition model based on Improved Empirical Mode Decomposition (EMD), which stabilizes the number of intrinsic mode function (IMF) obtained by decomposition and reduces information loss

  • We improved and enhanced the decomposition ability of EMD by adding a signalnoise ratio (SNR) setting to achieve the controllability of adding white Gaussian noise (WGN)

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Summary

Introduction

D EPRESSION is a common illness worldwide with more than 264 million people affected, and is a leading cause of global disability and disease burden [1]. Major depressive disorder (MDD) is characterized by impairments of mood and cognitive function and is currently the second leading cause of death. Analysis of functional brain connections based on EEG have been widely used in MDD, which explore regular activity patterns between regions [4]. Most of the researches on brain function network based on EEG analyzed the changes of functional connectivity on different frequency bands [6] [7]. These studies ignored the characteristic relationship of EEG signals in the time domain. It is meaningful to understand the changes in brain functional connectivity under different time domain

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