2022
DOI: 10.1101/2022.05.03.490453
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Mixtures of large-scale dynamic functional brain network modes

Abstract: Accurate temporal modelling of functional brain networks is essential in the quest for understanding how such networks facilitate cognition. Researchers are beginning to adopt time-varying analyses for electrophysiological data that capture highly dynamic processes on the order of milliseconds. Typically, these approaches, such as clustering of functional connectivity profiles and Hidden Markov Modelling (HMM), assume mutual exclusivity of networks over time. Whilst a powerful constraint, this assumption may b… Show more

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Cited by 5 publications
(4 citation statements)
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References 100 publications
(152 reference statements)
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“…In addition, covariate effects and contrasts can be readily defined to quickly compute spectra associated with specific external dynamics. For example, an early application of this method has used a GLM-Spectrum to compute power spectra associated with dynamic whole-brain functional networks in MEG (Gohil et al, 2022).…”
Section: Discussionmentioning
confidence: 99%
“…In addition, covariate effects and contrasts can be readily defined to quickly compute spectra associated with specific external dynamics. For example, an early application of this method has used a GLM-Spectrum to compute power spectra associated with dynamic whole-brain functional networks in MEG (Gohil et al, 2022).…”
Section: Discussionmentioning
confidence: 99%
“…All HMMs make the assumption that only one state can be active at any given time, and that state transition probabilities only depend on the current state rather than the recent history of states (the Markov assumption). These may not be reasonable assumptions for neural population activity, and there have been recent efforts to develop a similar framework without, or with relaxed versions of, these assumptions (Gohil et al, 2022). A promising future direction might be to extend the benefits of multilevel Bayesian HMMs to such frameworks, for example, by implementing an explicit-duration hidden semi-Markov model that relaxes the Markov assumption, decoupling the state duration from the transition probabilities by explicitly assigning distributions to the duration of the states (Yu, 2010).…”
Section: Discussionmentioning
confidence: 99%
“…However, the brain likely recruits different brain networks simultaneously. Novel analysis designs, like DYNEMO 60 , could address this limitation in the future. The TDE-HMM is a stochastic model that could provide slightly different results at every run.…”
Section: Limitations and Future Workmentioning
confidence: 99%