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Efficient multi-fidelity computation of blood coagulation under flow

Clot formation is a crucial process that prevents bleeding, but can lead to severe disorders when imbalanced. This process is regulated by the coagulation cascade, a biochemical network that controls the enzyme thrombin, which converts soluble fibrinogen into the fibrin fibers that constitute clots....

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Autores principales: Guerrero-Hurtado, Manuel, Garcia-Villalba, Manuel, Gonzalo, Alejandro, Martinez-Legazpi, Pablo, Kahn, Andrew M., McVeigh, Elliot, Bermejo, Javier, del Alamo, Juan C., Flores, Oscar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10659216/
https://www.ncbi.nlm.nih.gov/pubmed/37889899
http://dx.doi.org/10.1371/journal.pcbi.1011583
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author Guerrero-Hurtado, Manuel
Garcia-Villalba, Manuel
Gonzalo, Alejandro
Martinez-Legazpi, Pablo
Kahn, Andrew M.
McVeigh, Elliot
Bermejo, Javier
del Alamo, Juan C.
Flores, Oscar
author_facet Guerrero-Hurtado, Manuel
Garcia-Villalba, Manuel
Gonzalo, Alejandro
Martinez-Legazpi, Pablo
Kahn, Andrew M.
McVeigh, Elliot
Bermejo, Javier
del Alamo, Juan C.
Flores, Oscar
author_sort Guerrero-Hurtado, Manuel
collection PubMed
description Clot formation is a crucial process that prevents bleeding, but can lead to severe disorders when imbalanced. This process is regulated by the coagulation cascade, a biochemical network that controls the enzyme thrombin, which converts soluble fibrinogen into the fibrin fibers that constitute clots. Coagulation cascade models are typically complex and involve dozens of partial differential equations (PDEs) representing various chemical species’ transport, reaction kinetics, and diffusion. Solving these PDE systems computationally is challenging, due to their large size and multi-scale nature. We propose a multi-fidelity strategy to increase the efficiency of coagulation cascade simulations. Leveraging the slower dynamics of molecular diffusion, we transform the governing PDEs into ordinary differential equations (ODEs) representing the evolution of species concentrations versus blood residence time. We then Taylor-expand the ODE solution around the zero-diffusivity limit to obtain spatiotemporal maps of species concentrations in terms of the statistical moments of residence time, [Image: see text] , and provide the governing PDEs for [Image: see text] . This strategy replaces a high-fidelity system of N PDEs representing the coagulation cascade of N chemical species by N ODEs and p PDEs governing the residence time statistical moments. The multi-fidelity order (p) allows balancing accuracy and computational cost providing a speedup of over N/p compared to high-fidelity models. Moreover, this cost becomes independent of the number of chemical species in the large computational meshes typical of the arterial and cardiac chamber simulations. Using a coagulation network with N = 9 and an idealized aneurysm geometry with a pulsatile flow as a benchmark, we demonstrate favorable accuracy for low-order models of p = 1 and p = 2. The thrombin concentration in these models departs from the high-fidelity solution by under 20% (p = 1) and 2% (p = 2) after 20 cardiac cycles. These multi-fidelity models could enable new coagulation analyses in complex flow scenarios and extensive reaction networks. Furthermore, it could be generalized to advance our understanding of other reacting systems affected by flow.
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spelling pubmed-106592162023-10-27 Efficient multi-fidelity computation of blood coagulation under flow Guerrero-Hurtado, Manuel Garcia-Villalba, Manuel Gonzalo, Alejandro Martinez-Legazpi, Pablo Kahn, Andrew M. McVeigh, Elliot Bermejo, Javier del Alamo, Juan C. Flores, Oscar PLoS Comput Biol Research Article Clot formation is a crucial process that prevents bleeding, but can lead to severe disorders when imbalanced. This process is regulated by the coagulation cascade, a biochemical network that controls the enzyme thrombin, which converts soluble fibrinogen into the fibrin fibers that constitute clots. Coagulation cascade models are typically complex and involve dozens of partial differential equations (PDEs) representing various chemical species’ transport, reaction kinetics, and diffusion. Solving these PDE systems computationally is challenging, due to their large size and multi-scale nature. We propose a multi-fidelity strategy to increase the efficiency of coagulation cascade simulations. Leveraging the slower dynamics of molecular diffusion, we transform the governing PDEs into ordinary differential equations (ODEs) representing the evolution of species concentrations versus blood residence time. We then Taylor-expand the ODE solution around the zero-diffusivity limit to obtain spatiotemporal maps of species concentrations in terms of the statistical moments of residence time, [Image: see text] , and provide the governing PDEs for [Image: see text] . This strategy replaces a high-fidelity system of N PDEs representing the coagulation cascade of N chemical species by N ODEs and p PDEs governing the residence time statistical moments. The multi-fidelity order (p) allows balancing accuracy and computational cost providing a speedup of over N/p compared to high-fidelity models. Moreover, this cost becomes independent of the number of chemical species in the large computational meshes typical of the arterial and cardiac chamber simulations. Using a coagulation network with N = 9 and an idealized aneurysm geometry with a pulsatile flow as a benchmark, we demonstrate favorable accuracy for low-order models of p = 1 and p = 2. The thrombin concentration in these models departs from the high-fidelity solution by under 20% (p = 1) and 2% (p = 2) after 20 cardiac cycles. These multi-fidelity models could enable new coagulation analyses in complex flow scenarios and extensive reaction networks. Furthermore, it could be generalized to advance our understanding of other reacting systems affected by flow. Public Library of Science 2023-10-27 /pmc/articles/PMC10659216/ /pubmed/37889899 http://dx.doi.org/10.1371/journal.pcbi.1011583 Text en © 2023 Guerrero-Hurtado et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Guerrero-Hurtado, Manuel
Garcia-Villalba, Manuel
Gonzalo, Alejandro
Martinez-Legazpi, Pablo
Kahn, Andrew M.
McVeigh, Elliot
Bermejo, Javier
del Alamo, Juan C.
Flores, Oscar
Efficient multi-fidelity computation of blood coagulation under flow
title Efficient multi-fidelity computation of blood coagulation under flow
title_full Efficient multi-fidelity computation of blood coagulation under flow
title_fullStr Efficient multi-fidelity computation of blood coagulation under flow
title_full_unstemmed Efficient multi-fidelity computation of blood coagulation under flow
title_short Efficient multi-fidelity computation of blood coagulation under flow
title_sort efficient multi-fidelity computation of blood coagulation under flow
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10659216/
https://www.ncbi.nlm.nih.gov/pubmed/37889899
http://dx.doi.org/10.1371/journal.pcbi.1011583
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