Probabilistic estimation of cardiac electrophysiological model parameters serves an important step toward model personalization and uncertain quantification. The expensive computation associated with these model simulations, however, makes direct Markov Chain Monte Carlo (MCMC) sampling of the posterior probability density function (pdf) of model parameters computationally intensive. Approximated posterior pdfs resulting from replacing the simulation model with a computationally efficient surrogate, on the other hand, have seen limited accuracy. In this study, we present a Bayesian active learning method to directly approximate the posterior pdf function of cardiac model parameters, in which we intelligently select training points to query ...
We propose a machine learning-based method to build a system of differential equations that approxim...
Calibration of cardiac electrophysiology models is a fundamental aspect of model personalization for...
We propose a machine learning-based method to build a system of differential equations that approxim...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
International audienceBiophysical models are increasingly used for medical applications at the organ...
International audienceBiophysical models are increasingly used for medical applications at the organ...
International audienceBiophysical models are increasingly used for medical applications at the organ...
Many different techniques have been used for parameter estimation in cardiac electrophysiology model...
Cardiac imaging is routinely used to evaluate cardiac tissue properties prior to therapy. By integra...
<div><p>Models of electrical activity in cardiac cells have become important research tools as they ...
An Electrophysiology study is conducted to diagnose and treat heart rhythm disorders, such as arrhyt...
We propose a machine learning-based method to build a system of differential equations that approxim...
We propose a machine learning-based method to build a system of differential equations that approxim...
We propose a machine learning-based method to build a system of differential equations that approxim...
Calibration of cardiac electrophysiology models is a fundamental aspect of model personalization for...
We propose a machine learning-based method to build a system of differential equations that approxim...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
International audienceBiophysical models are increasingly used for medical applications at the organ...
International audienceBiophysical models are increasingly used for medical applications at the organ...
International audienceBiophysical models are increasingly used for medical applications at the organ...
Many different techniques have been used for parameter estimation in cardiac electrophysiology model...
Cardiac imaging is routinely used to evaluate cardiac tissue properties prior to therapy. By integra...
<div><p>Models of electrical activity in cardiac cells have become important research tools as they ...
An Electrophysiology study is conducted to diagnose and treat heart rhythm disorders, such as arrhyt...
We propose a machine learning-based method to build a system of differential equations that approxim...
We propose a machine learning-based method to build a system of differential equations that approxim...
We propose a machine learning-based method to build a system of differential equations that approxim...
Calibration of cardiac electrophysiology models is a fundamental aspect of model personalization for...
We propose a machine learning-based method to build a system of differential equations that approxim...