Background and objectives: Parameter estimation and uncertainty quantification are crucial in computational cardiology, as they enable the construction of digital twins that faithfully replicate the behavior of physical patients. Many model parameters regarding cardiac electromechanics and cardiovascular hemodynamics need to be robustly fitted by starting from a few, possibly non-invasive, noisy observations. Moreover, short execution times and a small amount of computational resources are required for the effective clinical translation. Methods: In the framework of Bayesian statistics, we combine Maximum a Posteriori estimation and Hamiltonian Monte Carlo to find an approximation of model parameters and their posterior distributions. Fast ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
International audiencePatient-specific cardiac modelling can help in understanding pathophysiology a...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Probabilistic estimation of cardiac electrophysiological model parameters serves an important step t...
We consider parameter inference in cardio-mechanic models of the left ventricle, in particular the o...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
International audiencePatient-specific cardiac modelling can help in understanding pathophysiology a...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Background and objectives: Parameter estimation and uncertainty quantification are crucial in comput...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Computational models of cardiovascular physiology can inform clinical decision-making, providing a p...
Probabilistic estimation of cardiac electrophysiological model parameters serves an important step t...
We consider parameter inference in cardio-mechanic models of the left ventricle, in particular the o...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
We present a new, computationally efficient framework to perform forward uncertainty quantification ...
International audiencePatient-specific cardiac modelling can help in understanding pathophysiology a...