Inferring left atrial stasis and flow from patient-specific 4D contrast dynamics -- physics-informed neural networks with hard constraints vs. indicator dilution theory
ORAL
Abstract
Patient-specific computational fluid dynamics (CFD) has shown promise in predicting LAA blood stasis. However, CFD analysis requires high-quality segmentation and meshing of the left atrium and appendage --tasks that remain challenging to automate -- and is sensitive to modeling assumptions such as inflow boundary conditions and blood rheology. This study investigates an alternative approach: using a physics-informed neural network (PINN) to infer LAA flow and stasis directly from the 4D spatiotemporal dynamics of a contrast agent imaged over multiple heartbeats, thereby eliminating the need for LA segmentation and explicit specification of inflow or rheological parameters.
The underlying physical models in our method consist of Navier-Stokes, continuity, a contrast transport equation, and a residence time equation. We incorporated hard constraints in the PINN architecture to enforce initial conditions on residence time and ensure temporal periodicity. We validated PINN predictions for flow velocity and residence time using data from patient-specific CFD simulations as ground-truth data. We also compare these predictions with those obtained by a simplified compartment model of indicator dilution that fits the contrast profile at each image voxel by a gamma-variate function and approximates residence time as the first-order moment of the gamma-variate.
–
Presenters
-
Bahetihazi Maidu
University of Washington
Authors
-
Bahetihazi Maidu
University of Washington
-
Alejandro Gonzalo
University of Washington
-
Manuel Guerrero-Hurtado
Universidad Carlos III de Madrid
-
Clarissa Bargellini
University of Washington
-
Pablo Martinez-Legazpi
Universidad Nacional de Educación a Distancia, Universidad Nacional de Educación a Distancia & CIBERCV
-
Javier Bermejo
Hospital General Universitario Gregorio Marañón, Hospital General Universitario Gregorio Marañón & CIBERCV
-
Oscar Flores
University Carlos III De Madrid
-
Manuel García-Villalba
TU Wien, Technical University of Vienna
-
Elliot McVeigh
University of California San Diego
-
Andrew M Kahn
University of California San Diego
-
Juan C del Alamo
Department of Mechanical Engineering, University of Washington, Seattle, Washington; Center for Cardiovascular Biology, University of Washington, Seattle, Washington, University of Washington