modelling of aortic valve implants - predicting in vitro performance using finite element analysis.

J Med Eng Technol

Biomechanics Research Centre (BMEC), Biomedical Engineering, School of Engineering, National University of Ireland Galway, Galway, Ireland.

Published: April 2022

The competing structural and hemodynamic considerations in valve design generally require a large amount of hydrodynamic and durability testing during development, often resulting in inefficient "trial-and-error" prototyping. While in silico modelling through finite element analysis (FEA) has been widely used to inform valve design by optimising structural performance, few studies have exploited the potential insight FEA could provide into critical hemodynamic performance characteristics of the valve. The objective of this study is to demonstrate the potential of FEA to predict the hydrodynamic performance of tri-leaflet aortic valve implants obtained during development through testing. Several variations of tri-leaflet aortic valves were designed and manufactured using a synthetic polymer and hydrodynamic testing carried out using a pulsatile flow rig according to ISO 5840, with bulk hydrodynamic parameters measured. In silico models were developed in tandem and suitable surrogate measures were investigated as predictors of the hydrodynamic parameters. Through regression analysis, the parameters of leaflet coaptation area, geometric orifice area and opening pressure were found to be suitable indicators of experimental hydrodynamic parameters: regurgitant fraction, effective orifice area and transvalvular pressure drop performance, respectively.

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Source
http://dx.doi.org/10.1080/03091902.2022.2026506DOI Listing

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