Automated model discovery for muscle using constitutive recurrent neural networks

IF 3.3 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Lucy M. Wang, Kevin Linka, Ellen Kuhl
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引用次数: 0

Abstract

The stiffness of soft biological tissues not only depends on the applied deformation, but also on the deformation rate. To model this type of behavior, traditional approaches select a specific time-dependent constitutive model and fit its parameters to experimental data. Instead, a new trend now suggests a machine-learning based approach that simultaneously discovers both the best model and best parameters to explain given data. Recent studies have shown that feed-forward constitutive neural networks can robustly discover constitutive models and parameters for hyperelastic materials. However, feed-forward architectures fail to capture the history dependence of viscoelastic soft tissues. Here we combine a feed-forward constitutive neural network for the hyperelastic response and a recurrent neural network for the viscous response inspired by the theory of quasi-linear viscoelasticity. Our novel rheologically-informed network architecture discovers the time-independent initial stress using the feed-forward network and the time-dependent relaxation using the recurrent network. We train and test our combined network using unconfined compression relaxation experiments of passive skeletal muscle and compare our discovered model to a neo Hookean standard linear solid, to an advanced mechanics-based model, and to a vanilla recurrent neural network with no mechanics knowledge. We demonstrate that, for limited experimental data, our new constitutive recurrent neural network discovers models and parameters that satisfy basic physical principles and generalize well to unseen data. We discover a Mooney–Rivlin type two-term initial stored energy function that is linear in the first invariant I1 and quadratic in the second invariant I2 with stiffness parameters of 0.60 kPa and 0.55 kPa. We also discover a Prony-series type relaxation function with time constants of 0.362s, 2.54s, and 52.0s with coefficients of 0.89, 0.05, and 0.03. Our newly discovered model outperforms both the neo Hookean standard linear solid and the vanilla recurrent neural network in terms of prediction accuracy on unseen data. Our results suggest that constitutive recurrent neural networks can autonomously discover both model and parameters that best explain experimental data of soft viscoelastic tissues. Our source code, data, and examples are available at https://github.com/LivingMatterLab.

Abstract Image

基于本构递归神经网络的肌肉自动模型发现
生物软组织的刚度不仅取决于施加的变形,而且取决于变形速率。为了模拟这种行为,传统方法选择特定的时间相关本构模型,并将其参数拟合到实验数据中。相反,现在的一种新趋势是,一种基于机器学习的方法可以同时发现解释给定数据的最佳模型和最佳参数。近年来的研究表明,前馈本构神经网络可以鲁棒地发现超弹性材料的本构模型和参数。然而,前馈结构不能捕捉黏弹性软组织的历史依赖性。在这里,我们结合了一个前馈本构神经网络来处理超弹性响应,而一个递归神经网络来处理粘性响应,这是受准线性粘弹性理论的启发。我们的新型流变信息网络结构使用前馈网络发现了与时间无关的初始应力,使用循环网络发现了与时间相关的松弛。我们使用被动骨骼肌的无约束压缩松弛实验来训练和测试我们的组合网络,并将我们发现的模型与新Hookean标准线性实体,先进的基于力学的模型以及没有力学知识的香草递归神经网络进行比较。我们证明,对于有限的实验数据,我们的新本构递归神经网络发现了满足基本物理原理的模型和参数,并很好地推广到看不见的数据。我们发现了一个Mooney-Rivlin型两项初始能量函数,它在第一不变量I1中是线性的,在第二不变量I2中是二次的,刚度参数为0.60 kPa和0.55 kPa。我们还发现了一个时间常数分别为0.362s、2.54s和50.2 s的prony级数型松弛函数,其系数分别为0.89、0.05和0.03。我们新发现的模型在对未知数据的预测精度方面优于新Hookean标准线性实体和香草递归神经网络。我们的研究结果表明,本构递归神经网络可以自主发现最能解释软粘弹性组织实验数据的模型和参数。我们的源代码、数据和示例可从https://github.com/LivingMatterLab获得。
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来源期刊
Journal of the Mechanical Behavior of Biomedical Materials
Journal of the Mechanical Behavior of Biomedical Materials 工程技术-材料科学:生物材料
CiteScore
7.20
自引率
7.70%
发文量
505
审稿时长
46 days
期刊介绍: The Journal of the Mechanical Behavior of Biomedical Materials is concerned with the mechanical deformation, damage and failure under applied forces, of biological material (at the tissue, cellular and molecular levels) and of biomaterials, i.e. those materials which are designed to mimic or replace biological materials. The primary focus of the journal is the synthesis of materials science, biology, and medical and dental science. Reports of fundamental scientific investigations are welcome, as are articles concerned with the practical application of materials in medical devices. Both experimental and theoretical work is of interest; theoretical papers will normally include comparison of predictions with experimental data, though we recognize that this may not always be appropriate. The journal also publishes technical notes concerned with emerging experimental or theoretical techniques, letters to the editor and, by invitation, review articles and papers describing existing techniques for the benefit of an interdisciplinary readership.
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