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Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies

BACKGROUND: Uneven hepatic venous blood flow distribution (HFD) to the pulmonary arteries is hypothesized to be responsible for the development of intrapulmonary arteriovenous malformations (PAVM) in patients with univentricular physiology. Thus, achieving uniform distribution of hepatic blood flow...

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Autores principales: Schafstedde, Marie, Yevtushenko, Pavlo, Nordmeyer, Sarah, Kramer, Peter, Schleiger, Anastasia, Solowjowa, Natalia, Berger, Felix, Photiadis, Joachim, Mykychak, Yaroslav, Cho, Mi-Young, Ovroutski, Stanislav, Kuehne, Titus, Brüning, Jan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9381838/
https://www.ncbi.nlm.nih.gov/pubmed/35990961
http://dx.doi.org/10.3389/fcvm.2022.898701
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author Schafstedde, Marie
Yevtushenko, Pavlo
Nordmeyer, Sarah
Kramer, Peter
Schleiger, Anastasia
Solowjowa, Natalia
Berger, Felix
Photiadis, Joachim
Mykychak, Yaroslav
Cho, Mi-Young
Ovroutski, Stanislav
Kuehne, Titus
Brüning, Jan
author_facet Schafstedde, Marie
Yevtushenko, Pavlo
Nordmeyer, Sarah
Kramer, Peter
Schleiger, Anastasia
Solowjowa, Natalia
Berger, Felix
Photiadis, Joachim
Mykychak, Yaroslav
Cho, Mi-Young
Ovroutski, Stanislav
Kuehne, Titus
Brüning, Jan
author_sort Schafstedde, Marie
collection PubMed
description BACKGROUND: Uneven hepatic venous blood flow distribution (HFD) to the pulmonary arteries is hypothesized to be responsible for the development of intrapulmonary arteriovenous malformations (PAVM) in patients with univentricular physiology. Thus, achieving uniform distribution of hepatic blood flow is considered favorable. However, no established method for the prediction of the post-interventional hemodynamics currently exists. Computational fluid dynamics (CFD) offers the possibility to quantify HFD in patient-specific anatomies before and after virtual treatment. In this study, we evaluated the potential benefit of CFD-assisted treatment planning. MATERIALS AND METHODS: Three patients with total cavopulmonary connection (TCPC) and PAVM underwent cardiovascular magnetic resonance imaging (CMR) and computed tomography imaging (CT). Based on this imaging data, the patient-specific anatomy was reconstructed. These patients were considered for surgery or catheter-based intervention aiming at hepatic blood flow re-routing. CFD simulations were then performed for the untreated state as well as for different surgical and interventional treatment options. These treatment options were applied as suggested by treating cardiologists and congenital heart surgeons with longstanding experience in interventional and surgical treatment of patients with univentricular physiology. HFD was quantified for all simulations to identify the most viable treatment decision regarding redistribution of hepatic blood flow. RESULTS: For all three patients, the complex TCPC anatomy could be reconstructed. However, due to the presence of metallic stent implants, hybrid models generated from CT as well as CMR data were required. Numerical simulation of pre-interventional HFD agreed well with angiographic assessment and physiologic considerations. One treatment option resulting in improvement of HFD was identified for each patient. In one patient follow-up data after treatment was available. Here, the virtual treatment simulation and the CMR flow measurements differed by 15%. CONCLUSION: The combination of modern computational methods as well as imaging methods for assessment of patient-specific anatomy and flow might allow to optimize patient-specific therapy planning in patients with pronounced hepatic flow mismatch and PAVM. In this study, we demonstrate that these methods can also be applied in patients with complex univentricular physiology and extensive prior interventions. However, in those cases, hybrid approaches utilizing information of different image modalities may be required.
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spelling pubmed-93818382022-08-18 Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies Schafstedde, Marie Yevtushenko, Pavlo Nordmeyer, Sarah Kramer, Peter Schleiger, Anastasia Solowjowa, Natalia Berger, Felix Photiadis, Joachim Mykychak, Yaroslav Cho, Mi-Young Ovroutski, Stanislav Kuehne, Titus Brüning, Jan Front Cardiovasc Med Cardiovascular Medicine BACKGROUND: Uneven hepatic venous blood flow distribution (HFD) to the pulmonary arteries is hypothesized to be responsible for the development of intrapulmonary arteriovenous malformations (PAVM) in patients with univentricular physiology. Thus, achieving uniform distribution of hepatic blood flow is considered favorable. However, no established method for the prediction of the post-interventional hemodynamics currently exists. Computational fluid dynamics (CFD) offers the possibility to quantify HFD in patient-specific anatomies before and after virtual treatment. In this study, we evaluated the potential benefit of CFD-assisted treatment planning. MATERIALS AND METHODS: Three patients with total cavopulmonary connection (TCPC) and PAVM underwent cardiovascular magnetic resonance imaging (CMR) and computed tomography imaging (CT). Based on this imaging data, the patient-specific anatomy was reconstructed. These patients were considered for surgery or catheter-based intervention aiming at hepatic blood flow re-routing. CFD simulations were then performed for the untreated state as well as for different surgical and interventional treatment options. These treatment options were applied as suggested by treating cardiologists and congenital heart surgeons with longstanding experience in interventional and surgical treatment of patients with univentricular physiology. HFD was quantified for all simulations to identify the most viable treatment decision regarding redistribution of hepatic blood flow. RESULTS: For all three patients, the complex TCPC anatomy could be reconstructed. However, due to the presence of metallic stent implants, hybrid models generated from CT as well as CMR data were required. Numerical simulation of pre-interventional HFD agreed well with angiographic assessment and physiologic considerations. One treatment option resulting in improvement of HFD was identified for each patient. In one patient follow-up data after treatment was available. Here, the virtual treatment simulation and the CMR flow measurements differed by 15%. CONCLUSION: The combination of modern computational methods as well as imaging methods for assessment of patient-specific anatomy and flow might allow to optimize patient-specific therapy planning in patients with pronounced hepatic flow mismatch and PAVM. In this study, we demonstrate that these methods can also be applied in patients with complex univentricular physiology and extensive prior interventions. However, in those cases, hybrid approaches utilizing information of different image modalities may be required. Frontiers Media S.A. 2022-08-03 /pmc/articles/PMC9381838/ /pubmed/35990961 http://dx.doi.org/10.3389/fcvm.2022.898701 Text en Copyright © 2022 Schafstedde, Yevtushenko, Nordmeyer, Kramer, Schleiger, Solowjowa, Berger, Photiadis, Mykychak, Cho, Ovroutski, Kuehne and Brüning. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cardiovascular Medicine
Schafstedde, Marie
Yevtushenko, Pavlo
Nordmeyer, Sarah
Kramer, Peter
Schleiger, Anastasia
Solowjowa, Natalia
Berger, Felix
Photiadis, Joachim
Mykychak, Yaroslav
Cho, Mi-Young
Ovroutski, Stanislav
Kuehne, Titus
Brüning, Jan
Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies
title Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies
title_full Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies
title_fullStr Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies
title_full_unstemmed Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies
title_short Virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—Pitfalls and strategies
title_sort virtual treatment planning in three patients with univentricular physiology using computational fluid dynamics—pitfalls and strategies
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9381838/
https://www.ncbi.nlm.nih.gov/pubmed/35990961
http://dx.doi.org/10.3389/fcvm.2022.898701
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