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Dynamic Community Detection for Brain Functional Networks During Music Listening With Block Component Analysis

Zhu, Yongjie ; Liu, Jia LU and Cong, Fengyu (2023) In IEEE Transactions on Neural Systems and Rehabilitation Engineering 31. p.2438-2447
Abstract

The human brain can be described as a complex network of functional connections between distinct regions, referred to as the brain functional network. Recent studies show that the functional network is a dynamic process and its community structure evolves with time during continuous task performance. Consequently, it is important for the understanding of the human brain to develop dynamic community detection techniques for such time-varying functional networks. Here, we propose a temporal clustering framework based on a set of network generative models and surprisingly it can be linked to Block Component Analysis to detect and track the latent community structure in dynamic functional networks. Specifically, the temporal dynamic... (More)

The human brain can be described as a complex network of functional connections between distinct regions, referred to as the brain functional network. Recent studies show that the functional network is a dynamic process and its community structure evolves with time during continuous task performance. Consequently, it is important for the understanding of the human brain to develop dynamic community detection techniques for such time-varying functional networks. Here, we propose a temporal clustering framework based on a set of network generative models and surprisingly it can be linked to Block Component Analysis to detect and track the latent community structure in dynamic functional networks. Specifically, the temporal dynamic networks are represented within a unified three-way tensor framework for simultaneously capturing multiple types of relationships between a set of entities. The multi-linear rank- $(L_{r}, L_{r}, 1)$ block term decomposition (BTD) is adopted to fit the network generative model to directly recover underlying community structures with the specific evolution of time from the temporal networks. We apply the proposed method to the study of the reorganization of the dynamic brain networks from electroencephalography (EEG) data recorded during free music listening. We derive several network structures ( $L_{r}$ communities in each component) with specific temporal patterns (described by BTD components) significantly modulated by musical features, involving subnetworks of frontoparietal, default mode, and sensory-motor networks. The results show that the brain functional network structures are dynamically reorganized and the derived community structures are temporally modulated by the music features. The proposed generative modeling approach can be an effective tool for describing community structures in brain networks that go beyond static methods and detecting the dynamic reconfiguration of modular connectivity elicited by continuously naturalistic tasks.

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author
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organization
publishing date
type
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publication status
published
subject
keywords
block term decomposition, brain connectivity, Dynamic community detection, EEG, generative model, module detection, tensor decomposition
in
IEEE Transactions on Neural Systems and Rehabilitation Engineering
volume
31
pages
10 pages
publisher
IEEE - Institute of Electrical and Electronics Engineers Inc.
external identifiers
  • scopus:85160234335
  • pmid:37200117
ISSN
1534-4320
DOI
10.1109/TNSRE.2023.3277509
language
English
LU publication?
yes
id
60fb4025-c7bc-4a64-afb2-81e7844b2497
date added to LUP
2023-09-25 13:32:18
date last changed
2024-06-28 08:03:06
@article{60fb4025-c7bc-4a64-afb2-81e7844b2497,
  abstract     = {{<p>The human brain can be described as a complex network of functional connections between distinct regions, referred to as the brain functional network. Recent studies show that the functional network is a dynamic process and its community structure evolves with time during continuous task performance. Consequently, it is important for the understanding of the human brain to develop dynamic community detection techniques for such time-varying functional networks. Here, we propose a temporal clustering framework based on a set of network generative models and surprisingly it can be linked to Block Component Analysis to detect and track the latent community structure in dynamic functional networks. Specifically, the temporal dynamic networks are represented within a unified three-way tensor framework for simultaneously capturing multiple types of relationships between a set of entities. The multi-linear rank- $(L_{r}, L_{r}, 1)$ block term decomposition (BTD) is adopted to fit the network generative model to directly recover underlying community structures with the specific evolution of time from the temporal networks. We apply the proposed method to the study of the reorganization of the dynamic brain networks from electroencephalography (EEG) data recorded during free music listening. We derive several network structures ( $L_{r}$ communities in each component) with specific temporal patterns (described by BTD components) significantly modulated by musical features, involving subnetworks of frontoparietal, default mode, and sensory-motor networks. The results show that the brain functional network structures are dynamically reorganized and the derived community structures are temporally modulated by the music features. The proposed generative modeling approach can be an effective tool for describing community structures in brain networks that go beyond static methods and detecting the dynamic reconfiguration of modular connectivity elicited by continuously naturalistic tasks.</p>}},
  author       = {{Zhu, Yongjie and Liu, Jia and Cong, Fengyu}},
  issn         = {{1534-4320}},
  keywords     = {{block term decomposition; brain connectivity; Dynamic community detection; EEG; generative model; module detection; tensor decomposition}},
  language     = {{eng}},
  pages        = {{2438--2447}},
  publisher    = {{IEEE - Institute of Electrical and Electronics Engineers Inc.}},
  series       = {{IEEE Transactions on Neural Systems and Rehabilitation Engineering}},
  title        = {{Dynamic Community Detection for Brain Functional Networks During Music Listening With Block Component Analysis}},
  url          = {{http://dx.doi.org/10.1109/TNSRE.2023.3277509}},
  doi          = {{10.1109/TNSRE.2023.3277509}},
  volume       = {{31}},
  year         = {{2023}},
}