Home
Scholarly Works
Tracking the Brain’s Intrinsic Connectivity...
Preprint

Tracking the Brain’s Intrinsic Connectivity Networks in EEG

Abstract

Abstract Functional magnetic resonance imaging (fMRI) has identified dysfunctional network dynamics underlying a number of psychopathologies, including post-traumatic stress disorder, depression and schizophrenia. There is tremendous potential for the development of network-based clinical biomarkers to better characterize these disorders. However, to realize this potential requires the ability to track brain networks using a more affordable imaging modality, such as Electroencephalography (EEG). Here we present a novel analysis pipeline capable of tracking brain networks from EEG alone, after training on supervisory signals derived from data simultaneously recorded in EEG and fMRI, while people engaged in various cognitive tasks. EEG-based features were then used to classify three cognitively-relevant brain networks with up to 75% accuracy. These findings could lead to affordable and non-invasive methods to objectively diagnose brain disorders involving dysfunctional network dynamics, and to track and even predict treatment responses.

Authors

Shaw SB; McKinnon MC; Heisz JJ; Harrison AH; Connolly JF; Becker S

Publication date

June 19, 2021

DOI

10.1101/2021.06.18.449078

Preprint server

bioRxiv
View published work (Non-McMaster Users)

Contact the Experts team