Efficient estimation of load-free left ventricular geometry and passive myocardial properties using principal component analysis.
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2020
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Abstract
Models of cardiac mechanics require a well-defined reference geometry from which deformations, and hence myocardial strain and stress can be calculated. In the in vivo beating heart, the load-free (LF) geometry generally cannot be measured directly, since, in many cases, there is no stage at which the lumen pressures and contractile state are all zero. Therefore, there is a need for an efficient method to estimate the load-free (LF) geometry, which is essential for an accurate mechanical simulation of LV mechanics, and for estimations of passive and contractile constitutive parameters of the heart muscle. In this paper, we present a novel method for estimating both the LF geometry and the passive stiffness of the myocardium. A linear combination of principal components from a population of diastolic displacements is used to construct the LF geometry. For each estimate of the LF geometry and tissue stiffness, LV inflation is simulated, and the model predictions are compared with surface data at multiple stages during passive diastolic filling. The feasibility of this method was demonstrated using synthetically deformation data that were generated using LV models derived from clinical MRI data, and the identifiability of the LF geometry and passive stiffness parameters were analysed using Hessian metrics. Applications of this method to clinical datawould improve the accuracy of constitutive parameter estimation and allow a better simulation of LV wall strains and stresses. This article is protected by copyright. All rights reserved.
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| Reference Key |
wang2020efficientinternational
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| Authors | Wang, Zhinuo J;Wang, Vicky Y;Babarenda Gamage, Thiranja P;Rajagopal, Vijayaraghavan;Cao, J Jane;Nielsen, Poul M F;Bradley, Chris P;Young, Alistair A;Nash, Martyn P; |
| Journal | international journal for numerical methods in biomedical engineering |
| Year | 2020 |
| DOI |
10.1002/cnm.3313
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