Literature DB >> 26944689

Determination of the mechanical and physical properties of cartilage by coupling poroelastic-based finite element models of indentation with artificial neural networks.

Vahid Arbabi1, Behdad Pouran2, Gianni Campoli3, Harrie Weinans4, Amir A Zadpoor3.   

Abstract

One of the most widely used techniques to determine the mechanical properties of cartilage is based on indentation tests and interpretation of the obtained force-time or displacement-time data. In the current computational approaches, one needs to simulate the indentation test with finite element models and use an optimization algorithm to estimate the mechanical properties of cartilage. The modeling procedure is cumbersome, and the simulations need to be repeated for every new experiment. For the first time, we propose a method for fast and accurate estimation of the mechanical and physical properties of cartilage as a poroelastic material with the aid of artificial neural networks. In our study, we used finite element models to simulate the indentation for poroelastic materials with wide combinations of mechanical and physical properties. The obtained force-time curves are then divided into three parts: the first two parts of the data is used for training and validation of an artificial neural network, while the third part is used for testing the trained network. The trained neural network receives the force-time curves as the input and provides the properties of cartilage as the output. We observed that the trained network could accurately predict the properties of cartilage within the range of properties for which it was trained. The mechanical and physical properties of cartilage could therefore be estimated very fast, since no additional finite element modeling is required once the neural network is trained. The robustness of the trained artificial neural network in determining the properties of cartilage based on noisy force-time data was assessed by introducing noise to the simulated force-time data. We found that the training procedure could be optimized so as to maximize the robustness of the neural network against noisy force-time data.
Copyright © 2016 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Artificial neural networks; Cartilage mechanical and physical properties; Indentation; Poroelastic constitutive modeling

Mesh:

Year:  2016        PMID: 26944689     DOI: 10.1016/j.jbiomech.2015.12.014

Source DB:  PubMed          Journal:  J Biomech        ISSN: 0021-9290            Impact factor:   2.712


  4 in total

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2.  An Experimental and Finite Element Protocol to Investigate the Transport of Neutral and Charged Solutes across Articular Cartilage.

Authors:  Vahid Arbabi; Behdad Pouran; Amir A Zadpoor; Harrie Weinans
Journal:  J Vis Exp       Date:  2017-04-23       Impact factor: 1.355

3.  Just-in-Time Correntropy Soft Sensor with Noisy Data for Industrial Silicon Content Prediction.

Authors:  Kun Chen; Yu Liang; Zengliang Gao; Yi Liu
Journal:  Sensors (Basel)       Date:  2017-08-08       Impact factor: 3.576

4.  BMP2 and TGF-β Cooperate Differently during Synovial-Derived Stem-Cell Chondrogenesis in a Dexamethasone-Dependent Manner.

Authors:  Nikolas J Kovermann; Valentina Basoli; Elena Della Bella; Mauro Alini; Christoph Lischer; Hagen Schmal; Eva Johanna Kubosch; Martin J Stoddart
Journal:  Cells       Date:  2019-06-25       Impact factor: 6.600

  4 in total

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