Identifying heterogeneous micromechanical properties of biological tissues via physics-informed neural networks

Wensi Wu, Mitchell Daneker, Kevin T. Turner, Matthew A. Jolley, Lu Lu
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Abstract

The heterogeneous micromechanical properties of biological tissues have profound implications across diverse medical and engineering domains. However, identifying the full-field heterogeneous elastic properties of soft materials using traditional computational and engineering approaches is fundamentally challenging due to difficulties in estimating local stress fields. Recently, there has been a growing interest in using data-driven models to learn full-field mechanical responses such as displacement and strain from experimental or synthetic data. However, research studies on inferring the full-field elastic properties of materials, a more challenging problem, are scarce, particularly for large deformation, hyperelastic materials. Here, we propose a novel approach to identify the elastic modulus distribution in nonlinear, large deformation hyperelastic materials utilizing physics-informed neural networks (PINNs). We evaluate the prediction accuracies and computational efficiency of PINNs, informed by mechanic features and principles, across three synthetic materials with structural complexity that closely resemble real tissue patterns, such as brain tissue and tricuspid valve tissue. Our improved PINN architecture accurately estimates the full-field elastic properties, with relative errors of less than 5% across all examples. This research has significant potential for advancing our understanding of micromechanical behaviors in biological materials, impacting future innovations in engineering and medicine.
通过物理信息神经网络识别生物组织的异质微机械特性
生物组织的异质微观力学特性对不同的医学和工程领域有着深远的影响。然而,由于难以估计局部应力场,使用传统计算和工程方法识别软材料的全场异质弹性特性具有根本性的挑战。最近,人们对使用数据驱动模型从实验或合成数据中学习位移和应变等全场机械响应越来越感兴趣。然而,推断材料的全场弹性特性是一个更具挑战性的问题,尤其是对于大变形、高弹性材料而言,这方面的研究还很少。在此,我们提出了一种利用物理信息神经网络(PINNs)识别非线性、大变形超弹性材料弹性模量分布的新方法。我们评估了 PINNs 在力学特征和原理的指导下,在三种结构复杂、与真实组织形态(如脑组织和三尖瓣组织)接近的合成材料中的预测精度和计算效率。我们改进的 PINN 架构能准确估计全场弹性特性,所有示例的相对误差均小于 5%。这项研究在促进我们对生物材料微机械行为的理解方面具有巨大潜力,将对未来的工程和医学创新产生影响。
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