2022
DOI: 10.1002/cnm.3593
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Bayesian optimisation for efficient parameter inference in a cardiac mechanics model of the left ventricle

Abstract: We consider parameter inference in cardio‐mechanic models of the left ventricle, in particular the one based on the Holtzapfel‐Ogden (HO) constitutive law, using clinical in vivo data. The equations underlying these models do not admit closed form solutions and hence need to be solved numerically. These numerical procedures are computationally expensive making computational run times associated with numerical optimisation or sampling excessive for the uptake of the models in the clinical practice. To address t… Show more

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Cited by 14 publications
(12 citation statements)
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References 73 publications
(239 reference statements)
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“…At the beginning of diastole, it is assumed that blood pressure is zero, the unloaded state, while as we approach the end of diastole, the ventricular pressure increases and the myocardium is passively stretched to balance the applied pressure (Wang et al, 2013). Stiffness of the myocardium has been considered a potential biomarker to characterize diastolic dysfunction, while inferring myocardial stiffness non-invasively is still a challenging research problem (Gao et al, 2017b;Borowska et al, 2022). In this study, an incompressible material model derived from the constitutive model proposed by Holzapfel and Ogden (2009) is used, that is…”
Section: Cardio-mechanical Modelingmentioning
confidence: 99%
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“…At the beginning of diastole, it is assumed that blood pressure is zero, the unloaded state, while as we approach the end of diastole, the ventricular pressure increases and the myocardium is passively stretched to balance the applied pressure (Wang et al, 2013). Stiffness of the myocardium has been considered a potential biomarker to characterize diastolic dysfunction, while inferring myocardial stiffness non-invasively is still a challenging research problem (Gao et al, 2017b;Borowska et al, 2022). In this study, an incompressible material model derived from the constitutive model proposed by Holzapfel and Ogden (2009) is used, that is…”
Section: Cardio-mechanical Modelingmentioning
confidence: 99%
“…( 4) by matching the model predictions to the measured data, as we observe from CMR scans (Gao et al, 2015). The search for optimal parameters can be computationally intensive due to the multi-modality of the inverse problem and the high computational costs of iterative numerical solutions of the LV model using the finite element method (Borowska et al, 2022). To avoid this issue, a statistical emulator can be trained to replace the computationally expensive LV model, reducing computational costs by several orders of magnitude; see Noè et al (2019).…”
Section: Cardio-mechanical Modelingmentioning
confidence: 99%
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“…For instance, in [19,20] surrogate models were generated via the polynomial chaos expansion approach to accelerate uncertainty quantification (UQ) studies and sensitivity analysis of left ventricular mechanics. Many machine learning-based models have been proposed as real-time cardiac mechanics simulators [21,22,23], while statistical emulators, such as Gaussian processes, have been used to speed-up parameter inference [24,25] or to reduce the complexity of parametric searches for high-fidelity models [26]. Despite being well suited for the rapid and repeated evaluation of the input-output map, this models may lack of accuracy when dealing with a single, patient-specific forward simulation of the cardiac activity.…”
Section: Introductionmentioning
confidence: 99%