Virtual Transcatheter Interventions for Peripheral Pulmonary Artery Stenosis in Williams and Alagille Syndromes

Author:

Lan Ingrid S.1ORCID,Yang Weiguang2ORCID,Feinstein Jeffrey A.12ORCID,Kreutzer Jacqueline3ORCID,Collins R. Thomas24ORCID,Ma Michael5ORCID,Adamson Gregory T.2ORCID,Marsden Alison L.126ORCID

Affiliation:

1. Department of Bioengineering Stanford University Stanford CA

2. Department of Pediatrics (Cardiology) Stanford University Stanford CA

3. Department of Pediatrics (Cardiology) University of Pittsburgh Pittsburgh PA

4. Department of Medicine (Cardiovascular Medicine) Stanford University Stanford CA

5. Department of Cardiothoracic Surgery Stanford University Stanford CA

6. Institute for Computational and Mathematical Engineering Stanford University Stanford CA

Abstract

Background Despite favorable outcomes of surgical pulmonary artery (PA) reconstruction, isolated proximal stenting of the central PAs is common clinical practice for patients with peripheral PA stenosis in association with Williams and Alagille syndromes. Given the technical challenges of PA reconstruction and the morbidities associated with transcatheter interventions, the hemodynamic consequences of all treatment strategies must be rigorously assessed. Our study aims to model, assess, and predict hemodynamic outcomes of transcatheter interventions in these patients. Methods and Results Isolated proximal and “extensive” interventions (stenting and/or balloon angioplasty of proximal and lobar vessels) were performed in silico on 6 patient‐specific PA models. Autoregulatory adaptation of the cardiac output and downstream arterial resistance was modeled in response to intervention‐induced hemodynamic perturbations. Postintervention computational fluid dynamics predictions were validated in 2 stented patients and quantitatively assessed in 4 surgical patients. Our computational methods accurately predicted postinterventional PA pressures, the primary indicators of success for treatment of peripheral PA stenosis. Proximal and extensive treatment achieved median reductions of 14% and 40% in main PA systolic pressure, 27% and 56% in pulmonary vascular resistance, and 10% and 45% in right ventricular stroke work, respectively. Conclusions In patients with Williams and Alagille syndromes, extensive transcatheter intervention is required to sufficiently reduce PA pressures and right ventricular stroke work. Transcatheter therapy was shown to be ineffective for long‐segment stenosis and pales hemodynamically in comparison with published outcomes of surgical reconstruction. Regardless of the chosen strategy, a virtual treatment planning platform could identify lesions most critical for optimizing right ventricular afterload.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

Cited by 18 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. FSGe: A fast and strongly-coupled 3D fluid–solid-growth interaction method;Computer Methods in Applied Mechanics and Engineering;2024-11

2. Complex Pulmonary Artery Rehabilitation in Children with Alagille Syndrome: An Early Single-Center Experience of a Successful Collaborative Work;Journal of Cardiovascular Development and Disease;2024-07-25

3. Estimating pulmonary arterial remodeling via an animal-specific computational model of pulmonary artery stenosis;Biomechanics and Modeling in Mechanobiology;2024-06-25

4. A probabilistic neural twin for treatment planning in peripheral pulmonary artery stenosis;International Journal for Numerical Methods in Biomedical Engineering;2024-03-27

5. A modular framework for implicit 3D–0D coupling in cardiac mechanics;Computer Methods in Applied Mechanics and Engineering;2024-03

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