International audienceMathematical modeling is a powerful tool that enables researchers to describe the experimentally observed dynamics of complex systems. Starting with a robust model including model parameters, it is necessary to choose an appropriate set of model parameters to reproduce experimental data. However, estimating an optimal solution of the inverse problem, i.e., finding a set of model parameters that yields the best possible fit to the experimental data, is a very challenging problem. In the present work, we use different optimization algorithms based on a frequentist approach, as well as Monte Carlo Markov Chain methods based on Bayesian inference techniques to solve the considered inverse problems. We first probe two case ...
We present work in this dissertation on methods to map measured electrode signals from human subject...
International audienceVirtual brain models are data-driven patient-specific brain models integrating...
The work introduces a linear neural population model that allows to derive analytically the power sp...
International audienceMathematical modeling is a powerful tool that enables researchers to describe ...
The application of anesthetic agents is known to have significant effects on the electroencephalogra...
Electroencephalography (EEG) provides a non-invasive measure of brain electrical activity. Neural po...
The study of a time-frequency image is often the method of choice to address key issues in cognitive...
In the context of pre-surgical evaluation of epileptic patients, SEEG signals constitute a valuable ...
OBJECTIVE: Tracking brain states with electrophysiological measurements often relies on short-term a...
OBJECTIVE: Tracking brain states with electrophysiological measurements often relies on short-term a...
Target controlled infusion (TCI) of intraveneous anesthetics can assist clinical practitioners to pr...
The work presented in this paper focuses on fitting of a neural mass model to EEG data. Neurophysiol...
Objective: Tracking brain states with electrophysiological measurements often relies on short-term a...
© 2016 Amirhossein JafarianPatient-specific computational modelling of epileptic seizures may make t...
Changes to the electroencephalogram (EEG) observed during general anesthesia are modeled with a phys...
We present work in this dissertation on methods to map measured electrode signals from human subject...
International audienceVirtual brain models are data-driven patient-specific brain models integrating...
The work introduces a linear neural population model that allows to derive analytically the power sp...
International audienceMathematical modeling is a powerful tool that enables researchers to describe ...
The application of anesthetic agents is known to have significant effects on the electroencephalogra...
Electroencephalography (EEG) provides a non-invasive measure of brain electrical activity. Neural po...
The study of a time-frequency image is often the method of choice to address key issues in cognitive...
In the context of pre-surgical evaluation of epileptic patients, SEEG signals constitute a valuable ...
OBJECTIVE: Tracking brain states with electrophysiological measurements often relies on short-term a...
OBJECTIVE: Tracking brain states with electrophysiological measurements often relies on short-term a...
Target controlled infusion (TCI) of intraveneous anesthetics can assist clinical practitioners to pr...
The work presented in this paper focuses on fitting of a neural mass model to EEG data. Neurophysiol...
Objective: Tracking brain states with electrophysiological measurements often relies on short-term a...
© 2016 Amirhossein JafarianPatient-specific computational modelling of epileptic seizures may make t...
Changes to the electroencephalogram (EEG) observed during general anesthesia are modeled with a phys...
We present work in this dissertation on methods to map measured electrode signals from human subject...
International audienceVirtual brain models are data-driven patient-specific brain models integrating...
The work introduces a linear neural population model that allows to derive analytically the power sp...