Accelerated Patient-Specific Calibration via Differentiable Hemodynamics Simulations
Journal:
arXiv
Published Date:
Dec 19, 2024
Abstract
One of the goals of personalized medicine is to tailor diagnostics to
individual patients. Diagnostics are performed in practice by measuring
quantities, called biomarkers, that indicate the existence and progress of a
disease. In common cardiovascular diseases, such as hypertension, biomarkers
that are closely related to the clinical representation of a patient can be
predicted using computational models. Personalizing computational models
translates to considering patient-specific flow conditions, for example, the
compliance of blood vessels that cannot be a priori known and quantities such
as the patient geometry that can be measured using imaging. Therefore, a
patient is identified by a set of measurable and nonmeasurable parameters
needed to well-define a computational model; else, the computational model is
not personalized, meaning it is prone to large prediction errors. Therefore, to
personalize a computational model, sufficient information needs to be extracted
from the data. The current methods by which this is done are either
inefficient, due to relying on slow-converging optimization methods, or hard to
interpret, due to using `black box` deep-learning algorithms. We propose a
personalized diagnostic procedure based on a differentiable 0D-1D Navier-Stokes
reduced order model solver and fast parameter inference methods that take
advantage of gradients through the solver. By providing a faster method for
performing parameter inference and sensitivity analysis through
differentiability while maintaining the interpretability of well-understood
mathematical models and numerical methods, the best of both worlds is combined.
The performance of the proposed solver is validated against a well-established
process on different geometries, and different parameter inference processes
are successfully performed.