This paper compares the performance of two graph neural network architectures on the emulation of a cardiac mechanic model of the left ventricle of the heart. These models can be applied directly on the same computational mesh of the left ventricle geometry that is used by the expensive numerical forward solver, precluding the need for a low-order approximation of the true geometry. Our results show that these emulation approaches incur negligible loss in accuracy compared in the forward simulator, while making predictions multiple orders of magnitude more quickly, raising the prospect for their use in both forward and inverse problems in cardiac modelling
With cardiovascular disease, a leading cause of death worldwide, the quantification of blood flow–pr...
In this paper we present a dynamic reconstruction of the left ventricle (LV) of the human heart. LV ...
A long-standing problem at the frontier of biomechanical studies is to develop fast methods capable ...
Recent progress in Graph Neural Networks (GNNs) has allowed the creation of new methods for surrogat...
Contains simulation results of the forward displacement from beginning to end-diastole for approxima...
This paper outlines a comparison of different emulation based approaches to the task of parameter in...
We present a parametric physics-informed neural network for the simulation of personalised left-vent...
Biomechanical studies of the left ventricle (LV) typically rely on a mesh of finite element nodes fo...
Combining biomechanical modelling of left ventricular (LV) function and dysfunction with cardiac mag...
We propose a machine learning-based method to build a system of differential equations that approxim...
Cardiovascular diseases account for the highest number of annual deaths worldwide, a burden exacerba...
This dissertation seeks to develop novel data-driven algorithms to automatically construct simulatio...
In recent years, we have witnessed substantial advances in the mathematical modelling of the biomech...
An Electrophysiology study is conducted to diagnose and treat heart rhythm disorders, such as arrhyt...
Parameterised patient-specific models of the heart enable quantitative analysis of cardiac function ...
With cardiovascular disease, a leading cause of death worldwide, the quantification of blood flow–pr...
In this paper we present a dynamic reconstruction of the left ventricle (LV) of the human heart. LV ...
A long-standing problem at the frontier of biomechanical studies is to develop fast methods capable ...
Recent progress in Graph Neural Networks (GNNs) has allowed the creation of new methods for surrogat...
Contains simulation results of the forward displacement from beginning to end-diastole for approxima...
This paper outlines a comparison of different emulation based approaches to the task of parameter in...
We present a parametric physics-informed neural network for the simulation of personalised left-vent...
Biomechanical studies of the left ventricle (LV) typically rely on a mesh of finite element nodes fo...
Combining biomechanical modelling of left ventricular (LV) function and dysfunction with cardiac mag...
We propose a machine learning-based method to build a system of differential equations that approxim...
Cardiovascular diseases account for the highest number of annual deaths worldwide, a burden exacerba...
This dissertation seeks to develop novel data-driven algorithms to automatically construct simulatio...
In recent years, we have witnessed substantial advances in the mathematical modelling of the biomech...
An Electrophysiology study is conducted to diagnose and treat heart rhythm disorders, such as arrhyt...
Parameterised patient-specific models of the heart enable quantitative analysis of cardiac function ...
With cardiovascular disease, a leading cause of death worldwide, the quantification of blood flow–pr...
In this paper we present a dynamic reconstruction of the left ventricle (LV) of the human heart. LV ...
A long-standing problem at the frontier of biomechanical studies is to develop fast methods capable ...