Parametric dynamic causal modelling
Amirhossein Jafarian, Peter Zeidman, Rob. C Wykes, Matthew Walker,, Karl J. Friston

TL;DR
This paper presents parametric dynamic causal modelling, a biophysically interpretable method for inferring slow parameter changes in brain activity, validated through simulations and an animal seizure model.
Contribution
It introduces a novel approach combining neural mass models with Bayesian model reduction to track slow biophysical parameter changes from electrophysiological data.
Findings
Efficient inference of slow parameter changes from spectral data.
Validation of the model's face validity through simulations.
Application to seizure activity in an animal model.
Abstract
This technical note introduces parametric dynamic causal modelling, a method for inferring slow changes in biophysical parameters that control fluctuations of fast neuronal states. The application domain we have in mind is inferring slow changes in variables (e.g., extracellular ion concentrations or synaptic efficacy) that underlie phase transitions in brain activity (e.g., paroxysmal seizure activity). The scheme is efficient and yet retains a biophysical interpretation, in virtue of being based on established neural mass models that are equipped with a slow dynamic on the parameters (such as synaptic rate constants or effective connectivity). In brief, we use an adiabatic approximation to summarise fast fluctuations in hidden neuronal states (and their expression in sensors) in terms of their second order statistics; namely, their complex cross spectra. This allows one to specify and…
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Taxonomy
TopicsNeural dynamics and brain function · Gaussian Processes and Bayesian Inference · Control Systems and Identification
