Investigation of Functional Brain Networks in MDD Patients Based on EEG Signals Processing

Analysis of functional brain networks using graph theory metrics reveals informative aspects of brain functions. Major depressive disorder (MDD) which is a widespread disorder worldwide cause disruption in some brain functions and thus leads to brain network changes. To study the abnormality of brai...

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Published in2017 24th National and 2nd International Iranian Conference on Biomedical Engineering (ICBME) pp. 1 - 5
Main Authors Hasanzadeh, Fatemeh, Mohebbi, Maryam, Rostami, Reza
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.11.2017
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DOI10.1109/ICBME.2017.8430273

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Abstract Analysis of functional brain networks using graph theory metrics reveals informative aspects of brain functions. Major depressive disorder (MDD) which is a widespread disorder worldwide cause disruption in some brain functions and thus leads to brain network changes. To study the abnormality of brain function networks in MDD, functional brain networks were constructed from resting state EEG data of 16 MDD patients and 16 normal subjects. The networks based on phase lag index (PLI) were extracted in delta, theta, alpha, beta and total frequency bands. The extracted networks were binarized by Minimum Connected Component (MCC) technique. Average clustering coefficient, average characteristic path length and node degree for two groups were extracted. Results show significantly lower average characteristic path length in depressed group in alpha and total frequency bands. No significant differences in average clustering coefficient between two groups were observed. Higher average degree and higher average PLI in depressed group in alpha, beta and total frequency bands were also observed that may indicate over activation in some brain networks in depressed individuals.
AbstractList Analysis of functional brain networks using graph theory metrics reveals informative aspects of brain functions. Major depressive disorder (MDD) which is a widespread disorder worldwide cause disruption in some brain functions and thus leads to brain network changes. To study the abnormality of brain function networks in MDD, functional brain networks were constructed from resting state EEG data of 16 MDD patients and 16 normal subjects. The networks based on phase lag index (PLI) were extracted in delta, theta, alpha, beta and total frequency bands. The extracted networks were binarized by Minimum Connected Component (MCC) technique. Average clustering coefficient, average characteristic path length and node degree for two groups were extracted. Results show significantly lower average characteristic path length in depressed group in alpha and total frequency bands. No significant differences in average clustering coefficient between two groups were observed. Higher average degree and higher average PLI in depressed group in alpha, beta and total frequency bands were also observed that may indicate over activation in some brain networks in depressed individuals.
Author Rostami, Reza
Hasanzadeh, Fatemeh
Mohebbi, Maryam
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  givenname: Reza
  surname: Rostami
  fullname: Rostami, Reza
  organization: Psychology University of Tehran, Tehran, Iran
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Snippet Analysis of functional brain networks using graph theory metrics reveals informative aspects of brain functions. Major depressive disorder (MDD) which is a...
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SubjectTerms Biomedical engineering
Characteristic path length
Clustering coefficient
Coherence
EEG
Electroencephalography
Functional brain network
Graph theory
Information processing
MDD
Phase lag index
Phase measurement
Title Investigation of Functional Brain Networks in MDD Patients Based on EEG Signals Processing
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