» Articles » PMID: 27986327

Improved Reduced-order Modelling of Cerebrovascular Flow Distribution by Accounting for Arterial Bifurcation Pressure Drops

Overview
Journal J Biomech
Specialty Physiology
Date 2016 Dec 18
PMID 27986327
Citations 9
Authors
Affiliations
Soon will be listed here.
Abstract

Reduced-order modelling offers the possibility to study global flow features in cardiovascular networks. In order to validate these models, previous studies have been conducted in which they compared 3D computational fluid dynamics simulations with reduced-order simulations. Discrepancies have been reported between the two methods. The loss of energy at the bifurcations is usually neglected and has been pointed out as a possible explanation for these discrepancies. We present distributed lumped models of cerebrovasculatures created automatically from 70 cerebrovascular networks segmented from 3D angiograms. The outflow rate repartitions predicted with and without modelling the energy loss at the bifurcations are compared against 3D simulations. When neglecting the energy loss at the bifurcations, the flow rates though the anterior cerebral arteries are overestimated by 4.7±6.8% (error relative to the inlet flow rate, mean ± standard deviation), impacting the remaining volume of flow going to the other vessels. When the energy loss is modelled, this error is dropping to 0.1±3.2%. Overall, over the total of 337 outlet vessels, when the energy losses at the bifurcations are not modelled the 95% of agreement is in the range of ±13.5% and is down to ±6.5% when the energy losses are considered. With minimal input and computational resources, the presented method can estimate the outflow rates reliably. This study constitutes the largest validation of a reduced-order flow model against 3D simulations. The impact of the energy loss at the bifurcations is here demonstrated for cerebrovasculatures but can be applied to other physiological networks.

Citing Articles

Beyond CFD: Emerging methodologies for predictive simulation in cardiovascular health and disease.

Schwarz E, Pegolotti L, Pfaller M, Marsden A Biophys Rev (Melville). 2023; 4(1):011301.

PMID: 36686891 PMC: 9846834. DOI: 10.1063/5.0109400.


Deep learning-based semantic vessel graph extraction for intracranial aneurysm rupture risk management.

Niemann A, Behme D, Larsen N, Preim B, Saalfeld S Int J Comput Assist Radiol Surg. 2023; 18(3):517-525.

PMID: 36626087 PMC: 9939495. DOI: 10.1007/s11548-022-02818-6.


Accelerated sequences of 4D flow MRI using GRAPPA and compressed sensing: A comparison against conventional MRI and computational fluid dynamics.

Garreau M, Puiseux T, Toupin S, Giese D, Mendez S, Nicoud F Magn Reson Med. 2022; 88(6):2432-2446.

PMID: 36005271 DOI: 10.1002/mrm.29404.


Automated generation of 0D and 1D reduced-order models of patient-specific blood flow.

Pfaller M, Pham J, Verma A, Pegolotti L, Wilson N, Parker D Int J Numer Method Biomed Eng. 2022; 38(10):e3639.

PMID: 35875875 PMC: 9561079. DOI: 10.1002/cnm.3639.


A nonlinear multi-scale model for blood circulation in a realistic vascular system.

Qohar U, Zanna Munthe-Kaas A, Nordbotten J, Hanson E R Soc Open Sci. 2021; 8(12):201949.

PMID: 34966547 PMC: 8633777. DOI: 10.1098/rsos.201949.