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Main Authors: Said, Omar, Tossas-Betancourt, Christopher, Olive, Mary K., Lu, Jimmy C., Dorfman, Adam, Figueroa, C. Alberto
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.25027
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author Said, Omar
Tossas-Betancourt, Christopher
Olive, Mary K.
Lu, Jimmy C.
Dorfman, Adam
Figueroa, C. Alberto
author_facet Said, Omar
Tossas-Betancourt, Christopher
Olive, Mary K.
Lu, Jimmy C.
Dorfman, Adam
Figueroa, C. Alberto
contents Pulmonary arterial hypertension (PAH) is a progressive cardiopulmonary disease that leads to increased pulmonary pressures, vascular remodeling, and eventual right ventricular (RV) failure. Pediatric PAH remains understudied due to limited data and the lack of targeted diagnostic and therapeutic strategies. In this study, we developed and calibrated multi-scale, patient-specific cardiovascular models for four pediatric PAH patients using longitudinal MRI and catheterization data collected approximately two years apart. Using the CRIMSON simulation framework, we coupled three-dimensional fluid-structure interaction (FSI) models of the pulmonary arteries with zero-dimensional (0D) lumped-parameter heart and Windkessel models to simulate patient hemodynamics. An automated Python-based optimizer was developed to calibrate boundary conditions by minimizing discrepancies between simulated and clinical metrics, reducing calibration time from weeks to days. Model-derived metrics such as arterial stiffness, pulse wave velocity, resistance, and compliance were found to align with clinical indicators of disease severity and progression. Our findings demonstrate that computational modeling can non-invasively capture patient-specific hemodynamic adaptation over time, offering a promising tool for monitoring pediatric PAH and informing future treatment strategies.
format Preprint
id arxiv_https___arxiv_org_abs_2512_25027
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Computational Analysis of Disease Progression in Pediatric Pulmonary Arterial Hypertension
Said, Omar
Tossas-Betancourt, Christopher
Olive, Mary K.
Lu, Jimmy C.
Dorfman, Adam
Figueroa, C. Alberto
Medical Physics
Computational Physics
Fluid Dynamics
Pulmonary arterial hypertension (PAH) is a progressive cardiopulmonary disease that leads to increased pulmonary pressures, vascular remodeling, and eventual right ventricular (RV) failure. Pediatric PAH remains understudied due to limited data and the lack of targeted diagnostic and therapeutic strategies. In this study, we developed and calibrated multi-scale, patient-specific cardiovascular models for four pediatric PAH patients using longitudinal MRI and catheterization data collected approximately two years apart. Using the CRIMSON simulation framework, we coupled three-dimensional fluid-structure interaction (FSI) models of the pulmonary arteries with zero-dimensional (0D) lumped-parameter heart and Windkessel models to simulate patient hemodynamics. An automated Python-based optimizer was developed to calibrate boundary conditions by minimizing discrepancies between simulated and clinical metrics, reducing calibration time from weeks to days. Model-derived metrics such as arterial stiffness, pulse wave velocity, resistance, and compliance were found to align with clinical indicators of disease severity and progression. Our findings demonstrate that computational modeling can non-invasively capture patient-specific hemodynamic adaptation over time, offering a promising tool for monitoring pediatric PAH and informing future treatment strategies.
title Computational Analysis of Disease Progression in Pediatric Pulmonary Arterial Hypertension
topic Medical Physics
Computational Physics
Fluid Dynamics
url https://arxiv.org/abs/2512.25027