non-peer-reviewedWe describe a Bayesian inference scheme for quantifying the active physiology of neuronal ensembles using local field recordings of synaptic potentials. This entails the inversion of a generative neural mass model of steady-state spectral activity. The inversion uses Expectation Maximization (EM) to furnish the posterior probability of key synaptic parameter and the marginal likelihood of the model itself. The neural mass model embeds prior knowledge pertaining to both the anatomical [synaptic, circuitry and plausible trajectories of neuronal dynamics. This model comprises a population of excitatory pyramidal cells, under local interneuron inhibition and driving excitation from layer IV stellate cells. Under quasi-stationar...
Neural mass models have been used for many years to study the macroscopic dynamics of neural populat...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
Neural population activity in cortical circuits is not solely driven by ex-ternal inputs, but is als...
We describe a Bayesian inference scheme for quantifying the active physiology of neuronal ensembles ...
AbstractWe present a neural mass model of steady-state membrane potentials measured with local field...
Neural models describe brain activity at different scales, ranging from single cells to whole brain ...
The world is stochastic and chaotic, and organisms have access to limited information to take decisi...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
AbstractDynamic causal modelling (DCM) for steady-state responses (SSR) is a framework for inferring...
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2008....
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
Computational modelling is playing an increasing role in neuroscience research by providing not onl...
Short-term synaptic plasticity is highly diverse across brain area, cortical layer, cell type, and d...
Neural mass models have been used for many years to study the macroscopic dynamics of neural populat...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
Neural population activity in cortical circuits is not solely driven by ex-ternal inputs, but is als...
We describe a Bayesian inference scheme for quantifying the active physiology of neuronal ensembles ...
AbstractWe present a neural mass model of steady-state membrane potentials measured with local field...
Neural models describe brain activity at different scales, ranging from single cells to whole brain ...
The world is stochastic and chaotic, and organisms have access to limited information to take decisi...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
AbstractDynamic causal modelling (DCM) for steady-state responses (SSR) is a framework for inferring...
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2008....
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
Computational modelling is playing an increasing role in neuroscience research by providing not onl...
Short-term synaptic plasticity is highly diverse across brain area, cortical layer, cell type, and d...
Neural mass models have been used for many years to study the macroscopic dynamics of neural populat...
The task of system identification lies at the heart of neural data analysis. Bayesian system identif...
Neural population activity in cortical circuits is not solely driven by ex-ternal inputs, but is als...