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Conference paper

Modeling dynamic functional connectivity using a wishart mixture model

In Proceedings of the 2017 International Workshop on Pattern Recognition in Neuroimaging — 2017, pp. 1-4
From

Department of Applied Mathematics and Computer Science, Technical University of Denmark1

Cognitive Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Dynamic functional connectivity (dFC) has recently become a popular way of tracking the temporal evolution of the brains functional integration. However, there does not seem to be a consensus on how to choose the complexity, i.e. number of brain states, and the time-scale of the dynamics, i.e. the window length.

In this work we use the Wishart Mixture Model (WMM) as a probabilistic model for dFC based on variational inference. The framework admits arbitrary window lengths and number of dynamic components and includes the static one-component model as a special case. We exploit that the WMM framework provides model selection by quantifying models generalization to new data.

We use this to quantify the number of states within a prespecified window length. We further propose a heuristic procedure for choosing the window length based on contrasting for each window length the predictive performance of dFC models to their static counterparts and choosing the window length having largest difference as most favorable for characterizing dFC.

On synthetic data we find that generalizability is influenced by window length and signal-tonoise ratio. Too long windows cause dynamic states to be mixed together whereas short windows are more unstable and influenced by noise and we find that our heuristic correctly identifies an adequate level of complexity.

On single subject resting state fMRI data we find that dynamic models generally outperform static models and using the proposed heuristic points to a windowlength of around 30 seconds provides largest difference between the predictive likelihood of static and dynamic FC.

Language: English
Publisher: IEEE
Year: 2017
Pages: 1-4
Proceedings: 2017 International Workshop on Pattern Recognition in Neuroimaging
ISBN: 1538631598 , 1538631601 , 9781538631591 and 9781538631607
Types: Conference paper
DOI: 10.1109/PRNI.2017.7981505
ORCIDs: Nielsen, Søren Føns Vind , Madsen, Kristoffer Hougaard , Schmidt, Mikkel Nørgaard and Mørup, Morten

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