Accelerated Patient-Specific Calibration via Differentiable Hemodynamics Simulations
Diego Renner, Georgios Kissas

TL;DR
This paper introduces a fast, interpretable, differentiable computational model for patient-specific cardiovascular diagnostics, enabling efficient parameter inference and sensitivity analysis tailored to individual patient data.
Contribution
It presents a novel differentiable Navier-Stokes reduced order model solver that accelerates personalized parameter inference while maintaining interpretability.
Findings
Validated against established methods on various geometries
Successfully performed parameter inference processes
Achieved faster computation with maintained accuracy
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.…
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Taxonomy
TopicsHemodynamic Monitoring and Therapy · Heart Rate Variability and Autonomic Control · Cardiovascular Function and Risk Factors
MethodsSparse Evolutionary Training
