This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC) algorithm for parameter estimation and model selection in models of mesoscale brain network activity. We provide a proof of principle, first pass validation of this framework using a set of neural mass models of the cortico-basal ganglia thalamic circuit inverted upon spectral features from experimental, in vivo recordings. This optimization scheme relaxes an assumption of fixed-form posteriors (i.e. the Laplace approximation) taken in previous approaches to inverse modelling of spectral features. This enables the exploration of model dynamics beyond that approximated from local linearity assumptions and so fit to explicit, numerical soluti...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
The relationship between structure and function in the human brain is well established, but not yet ...
The relationship between structure and function in the human brain is well established, but not yet ...
The relationship between structure and function in the human brain is well established, but not yet ...
The relationship between structure and function in the human brain is well established, but not yet ...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...
The application of Bayesian modeling techniques is increasingly common in neuroscience due to the co...
We describe a Bayesian inference scheme for quantifying the active physiology of neuronal ensembles ...
Mechanistic models of single-neuron dynamics have been extensively studied in computational neurosci...
Recent research has suggested disrupted interactions between brain regions may contribute to some of...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
The relationship between structure and function in the human brain is well established, but not yet ...
The relationship between structure and function in the human brain is well established, but not yet ...
The relationship between structure and function in the human brain is well established, but not yet ...
The relationship between structure and function in the human brain is well established, but not yet ...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...
The application of Bayesian modeling techniques is increasingly common in neuroscience due to the co...
We describe a Bayesian inference scheme for quantifying the active physiology of neuronal ensembles ...
Mechanistic models of single-neuron dynamics have been extensively studied in computational neurosci...
Recent research has suggested disrupted interactions between brain regions may contribute to some of...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...
International audienceUnderstanding the bio-physical mechanisms underlying complex neuronal phenomen...