Digital twinning of cardiac electrophysiology for congenital heart disease.
Matteo SalvadorFanwei KongMathias PeirlinckDavid W ParkerHenry ChubbAnne M DubinAlison L MarsdenPublished in: Journal of the Royal Society, Interface (2024)
In recent years, blending mechanistic knowledge with machine learning has had a major impact in digital healthcare. In this work, we introduce a computational pipeline to build certified digital replicas of cardiac electrophysiology in paediatric patients with congenital heart disease. We construct the patient-specific geometry by means of semi-automatic segmentation and meshing tools. We generate a dataset of electrophysiology simulations covering cell-to-organ level model parameters and using rigorous mathematical models based on differential equations. We previously proposed Branched Latent Neural Maps (BLNMs) as an accurate and efficient means to recapitulate complex physical processes in a neural network. Here, we employ BLNMs to encode the parametrized temporal dynamics of in silico 12-lead electrocardiograms (ECGs). BLNMs act as a geometry-specific surrogate model of cardiac function for fast and robust parameter estimation to match clinical ECGs in paediatric patients. Identifiability and trustworthiness of calibrated model parameters are assessed by sensitivity analysis and uncertainty quantification.
Keyphrases
- healthcare
- machine learning
- congenital heart disease
- end stage renal disease
- ejection fraction
- newly diagnosed
- emergency department
- intensive care unit
- deep learning
- heart failure
- prognostic factors
- mental health
- physical activity
- social media
- patient reported outcomes
- high resolution
- mesenchymal stem cells
- bone marrow
- single cell
- mass spectrometry
- molecular dynamics
- health insurance
- health information
- molecular dynamics simulations
- artificial intelligence
- data analysis