Neural Network Approaches for Soft Biological Tissue and Organ SimulationsSource: Journal of Biomechanical Engineering:;2022:;volume( 144 ):;issue: 012::page 121010DOI: 10.1115/1.4055835Publisher: The American Society of Mechanical Engineers (ASME)
Abstract: Given the functional complexities of soft tissues and organs, it is clear that computational simulations are critical in their understanding and for the rational basis for the development of therapies and replacements. A key aspect of such simulations is accounting for their complex, nonlinear, anisotropic mechanical behaviors. While soft tissue material models have developed to the point of high fidelity, insilico implementation is typically done using the finite element (FE) method, which remains impractically slow for translational clinical time frames. As a potential path toward addressing the development of high fidelity simulations capable of performing in clinically relevant time frames, we review the use of neural networks (NN) for soft tissue and organ simulation using two approaches. In the first approach, we show how a NN can learn the responses for a detailed mesostructural soft tissue material model. The NN material model not only reproduced the full anisotropic mechanical responses but also demonstrated a considerable efficiency improvement, as it was trained over a range of realizable fibrous structures. In the second approach, we go a step further with the use of a physicsbased surrogate model to directly learn the displacement field solution without the need for raw training data or FE simulation datasets. In this approach we utilize a finite element mesh to define the domain and perform the necessary integrations, but not the finite element method (FEM) itself. We demonstrate with this approach, termed neural network finite element (NNFE), results in a trained NNFE model with excellent agreement with the corresponding “ground truth” FE solutions over the entire physiological deformation range on a cuboidal myocardium specimen. More importantly, the NNFE approach provided a significantly decreased computational time for a range of finite element mesh sizes. Specifically, as the FE mesh size increased from 2744 to 175,615 elements, the NNFE computational time increased from 0.1108 s to 0.1393 s, while the “ground truth” FE model increased from 4.541 s to 719.9 s, with the same effective accuracy. These results suggest that NNFE run times are significantly reduced compared with the traditional largedeformationbased finite element solution methods. We then show how a nonuniform rational Bsplines (NURBS)based approach can be directly integrated into the NNFE approach as a means to handle real organ geometries. While these and related approaches are in their early stages, they offer a method to perform complex organlevel simulations in clinically relevant time frames without compromising accuracy.
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contributor author | Sacks, Michael S.;Motiwale, Shruti;Goodbrake, Christian;Zhang, Wenbo | |
date accessioned | 2023-04-06T13:01:25Z | |
date available | 2023-04-06T13:01:25Z | |
date copyright | 10/17/2022 12:00:00 AM | |
date issued | 2022 | |
identifier issn | 1480731 | |
identifier other | bio_144_12_121010.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4288939 | |
description abstract | Given the functional complexities of soft tissues and organs, it is clear that computational simulations are critical in their understanding and for the rational basis for the development of therapies and replacements. A key aspect of such simulations is accounting for their complex, nonlinear, anisotropic mechanical behaviors. While soft tissue material models have developed to the point of high fidelity, insilico implementation is typically done using the finite element (FE) method, which remains impractically slow for translational clinical time frames. As a potential path toward addressing the development of high fidelity simulations capable of performing in clinically relevant time frames, we review the use of neural networks (NN) for soft tissue and organ simulation using two approaches. In the first approach, we show how a NN can learn the responses for a detailed mesostructural soft tissue material model. The NN material model not only reproduced the full anisotropic mechanical responses but also demonstrated a considerable efficiency improvement, as it was trained over a range of realizable fibrous structures. In the second approach, we go a step further with the use of a physicsbased surrogate model to directly learn the displacement field solution without the need for raw training data or FE simulation datasets. In this approach we utilize a finite element mesh to define the domain and perform the necessary integrations, but not the finite element method (FEM) itself. We demonstrate with this approach, termed neural network finite element (NNFE), results in a trained NNFE model with excellent agreement with the corresponding “ground truth” FE solutions over the entire physiological deformation range on a cuboidal myocardium specimen. More importantly, the NNFE approach provided a significantly decreased computational time for a range of finite element mesh sizes. Specifically, as the FE mesh size increased from 2744 to 175,615 elements, the NNFE computational time increased from 0.1108 s to 0.1393 s, while the “ground truth” FE model increased from 4.541 s to 719.9 s, with the same effective accuracy. These results suggest that NNFE run times are significantly reduced compared with the traditional largedeformationbased finite element solution methods. We then show how a nonuniform rational Bsplines (NURBS)based approach can be directly integrated into the NNFE approach as a means to handle real organ geometries. While these and related approaches are in their early stages, they offer a method to perform complex organlevel simulations in clinically relevant time frames without compromising accuracy. | |
publisher | The American Society of Mechanical Engineers (ASME) | |
title | Neural Network Approaches for Soft Biological Tissue and Organ Simulations | |
type | Journal Paper | |
journal volume | 144 | |
journal issue | 12 | |
journal title | Journal of Biomechanical Engineering | |
identifier doi | 10.1115/1.4055835 | |
journal fristpage | 121010 | |
journal lastpage | 12101016 | |
page | 16 | |
tree | Journal of Biomechanical Engineering:;2022:;volume( 144 ):;issue: 012 | |
contenttype | Fulltext |