Seminar

Augmenting physics-based models by means of Scientific Machine Learning methods in Computational Cardiology

Seminar - Department of Mathematics
5 February 2024
Start time 
2:00 pm
PovoZero - Via Sommarive 14, Povo (Trento)
Seminari Room (Povo 0)
Organizer: 
Dipartimento di Matematica
Target audience: 
University community
UniTrento students
Attendance: 
Free
Contact person: 
Dott. Simone Pezzuto
Contact details: 
Staff Dipartimento di Matematica
0461/281508-1625-1701-3898-1980
Speaker: 
Francesco Regazzoni (MOX - Politecnico di Milano)

Abstract

The development of computational models in the cardiovascular field is a challenging research area, where the need for accurate responses in short timeframes conflicts with the complexity of the underlying physical processes and the great anatomical and functional variability among patients. In this context, physics-based models require long times and computational resources for the numerical discretization of multi-scale and multi-physics systems of differential equations, while data-driven methods rarely achieve high accuracy and generalization capabilities. In this talk, we present scientific machine learning methods that integrate physical knowledge with data-driven techniques to accelerate the evaluation of differential models and address many-query problems - such as sensitivity analysis, robust parameter estimation, and uncertainty quantification - in cardiovascular applications. To speed up input-output evaluations, we develop emulators of time-dependent processes capable of predicting spatial outputs and accounting for geometric variability from patient to patient. Our methods also enable data-driven learning of mathematical models for the slow-scale remodeling associated with processes whose fast scale is well characterized by physics-based models. Numerical results demonstrate that these scientific machine learning methods enhance efficiency and accuracy in approximating quantities of interest, as well as in solving parameter estimation and uncertainty quantification problems.