International audienceVirtual brain models are data-driven patient-specific brain models integrating individual brain imaging data with neural mass modeling in a single computational framework, capable of autonomously generating brain activity and its associated brain imaging signals. Along the example of epilepsy, we develop an efficient and accurate Bayesian methodology estimating the parameters linked to the extent of the epileptogenic zone. State-of-the-art advances in Bayesian inference using Hamiltonian Monte Carlo (HMC) algorithms have remained elusive for large-scale differential-equations based models due to their slow convergence. We propose appropriate priors and a novel reparameterization to facilitate efficient exploration of t...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
This article proposes a Bayesian spatio-temporal model for source reconstruction of M/EEG data. The ...
Abstract: We describe a novel Bayesian approach to the estimation of neural currents from a single d...
International audienceVirtual brain models are data-driven patient-specific brain models integrating...
International audienceIndividualized anatomical information has been used as prior knowledge in Baye...
International audienceFocal drug resistant epilepsy is a neurological disorder characterized by seiz...
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
The work presented in this paper focuses on fitting of a neural mass model to EEG data. Neurophysiol...
In this dissertation, we discuss Bayesian modeling approaches for identifying brain regions that res...
Objective: The multivariate autoregression (MVAR) model is an effective model to construct brain cau...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
International audienceRecent work on brain tumor growth modeling for glioblas-toma using reaction-di...
International audienceMathematical modeling is a powerful tool that enables researchers to describe ...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
This article proposes a Bayesian spatio-temporal model for source reconstruction of M/EEG data. The ...
Abstract: We describe a novel Bayesian approach to the estimation of neural currents from a single d...
International audienceVirtual brain models are data-driven patient-specific brain models integrating...
International audienceIndividualized anatomical information has been used as prior knowledge in Baye...
International audienceFocal drug resistant epilepsy is a neurological disorder characterized by seiz...
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
The work presented in this paper focuses on fitting of a neural mass model to EEG data. Neurophysiol...
In this dissertation, we discuss Bayesian modeling approaches for identifying brain regions that res...
Objective: The multivariate autoregression (MVAR) model is an effective model to construct brain cau...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
International audienceRecent work on brain tumor growth modeling for glioblas-toma using reaction-di...
International audienceMathematical modeling is a powerful tool that enables researchers to describe ...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
This article proposes a Bayesian spatio-temporal model for source reconstruction of M/EEG data. The ...
Abstract: We describe a novel Bayesian approach to the estimation of neural currents from a single d...