Analysis of the time-varying cortical neural connectivity in the newborn EEG: A time-frequency approach
Author | Omidvarnia, A |
Author | Mesbah, M |
Author | O'Toole, J.M. |
Author | Colditz, P |
Author | Boashash, B |
Available date | 2011-09-17T09:37:45Z |
Publication Date | 2011-05 |
Publication Name | 2011 7th International Workshop on Systems, Signal Processing and their Applications (WOSSPA) |
Citation | Omidvarnia, A.; Mesbah, M.; O'Toole, J.M.; Colditz, P.; Boashash, B., "Analysis of the time-varying cortical neural connectivity in the newborn EEG: A time-frequency approach," Systems, Signal Processing and their Applications (WOSSPA), 2011 7th International Workshop on , vol., no., pp.179,182, 9-11 May 2011 |
ISBN | 978-1-4577-0689-9 |
Description | This paper aims to assess and compare the performance of two brain connectivity measures based on time-varying multivariate AR modelling for newborn EEG analysis. |
Abstract | Relationships between cortical neural recordings as a representation of functional connectivity between cortical brain regions were quantified using different time-frequency criteria. Among these, Partial Directed Coherence (PDC) and Directed Transfer Function (DTF) and their extensions have found wide acceptance. This paper aims to assess and compare the performance of these two connectivity measures that are based on time-varying multivariate AR modeling. The time-varying parameters of the AR model are estimated using an Adaptive AR modeling (AAR) approach and a short-time based stationary approach. The performance of these two approaches is compared using both simulated signal and a multichannel newborn EEG recording. The results show that the time-varying PDC outperforms the time-varying DTF measure. The results also point to the limitation of the AAR algorithm in tracking rapid parameter changes and the drawback of the short-time approach in providing high resolution time-frequency coherence functions. However, it can be demonstrated that time-varying MVAR representations of the cortical connectivity will potentially lead to better understanding of non-symmetric relations between EEG channels. |
Language | en |
Publisher | IEEE |
Subject | Adaptation model Brain modeling Electroencephalography Kalman filters Pediatrics Time frequency analysis autoregressive processes electroencephalography medical signal processing neurophysiology time-frequency analysis adaptive AR modeling cortical brain region cortical neural recording directed transfer function high resolution time-frequency coherence function multichannel newborn EEG recording multivariate autoregressive model partial directed coherence short-time based stationary approach time-varying DTF time-varying MVAR representation time-varying PDC time-varying cortical neural connectivity analysis time-varying multivariate AR modeling Brain connectivity newborn EEG |
Type | Conference Paper |
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Technology Innovation and Engineering Education Unit [63 items ]