Literature DB >> 34999491

A parameter reduced adaptive quasi-linear viscoelastic model for soft biological tissue in uniaxial tension.

Othniel J Aryeetey1, Martin Frank2, Andrea Lorenz3, Sarah-Jane Estermann4, Andreas G Reisinger1, Dieter H Pahr5.   

Abstract

Mechanical characterisation of soft viscous materials is essential for many applications including aerospace industries, material models for surgical simulation, and tissue mimicking materials for anatomical models. Constitutive material models are, therefore, necessary to describe soft biological tissues in physiologically relevant strain ranges. Hereby, the adaptive quasi-linear viscoelastic (AQLV) model enables accurate modelling of the strain-dependent non-linear viscoelastic behaviour of soft tissues with a high flexibility. However, the higher flexibility produces a large number of model parameters. In this study, porcine muscle and liver tissue samples were modelled in the framework of the originally published AQLV (3-layers of Maxwell elements) model using four incremental ramp-hold experiments in uniaxial tension. AQLV model parameters were reduced by decreasing model layers (M) as well as the number of experimental ramp-hold steps (N). Leave One out cross validation tests show that the original AQLV model (3M4N) with 19 parameters, accurately describes porcine muscle tissue with an average R2 of 0.90 and porcine liver tissue, R2 of 0.86. Reducing the number of layers (N) in the model produced acceptable model fits for 1-layer (R2 of 0.83) and 2-layer models (R2 of 0.89) for porcine muscle tissue and 1-layer (R2 of 0.84) and 2-layer model (R2 of 0.85) for porcine liver tissue. Additionally, a 2 step (2N) ramp-hold experiment was performed on additional samples of porcine muscle tissue only to further reduce model parameters. Calibrated spring constant values for 2N ramp-hold tests parameters k1 and k2 had a 16.8% and 38.0% deviation from those calibrated for a 4 step (4N) ramp hold experiment. This enables further reduction of material parameters by means of step reduction, effectively reducing the number of parameters required to calibrate the AQLV model from 19 for a 3M4N model to 8 for a 2M2N model, with the added advantage of reducing the time per experiment by 50%. This study proposes a 'reduced-parameter' AQLV model (2M2N) for the modelling of soft biological tissues at finite strain ranges. Sequentially, the comparison of model parameters of soft tissues is easier and the experimental burden is reduced.
Copyright © 2021 The Authors. Published by Elsevier Ltd.. All rights reserved.

Entities:  

Keywords:  Mechanical characterization; Parameter reduction; Quasi-linear; Soft tissue; Viscoelasticity

Mesh:

Year:  2021        PMID: 34999491     DOI: 10.1016/j.jmbbm.2021.104999

Source DB:  PubMed          Journal:  J Mech Behav Biomed Mater        ISSN: 1878-0180


  2 in total

1.  Soft Tissue Hybrid Model for Real-Time Simulations.

Authors:  Mario R Moreno-Guerra; Oscar Martínez-Romero; Luis Manuel Palacios-Pineda; Daniel Olvera-Trejo; José A Diaz-Elizondo; Eduardo Flores-Villalba; Jorge V L da Silva; Alex Elías-Zúñiga; Ciro A Rodriguez
Journal:  Polymers (Basel)       Date:  2022-03-30       Impact factor: 4.329

2.  Estimation of Tensile Modulus of a Thermoplastic Material from Dynamic Mechanical Analysis: Application to Polyamide 66.

Authors:  Albert Serra-Aguila; Josep Maria Puigoriol-Forcada; Guillermo Reyes; Joaquin Menacho
Journal:  Polymers (Basel)       Date:  2022-03-17       Impact factor: 4.329

  2 in total

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