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A novel machine learning based computational framework for homogenization of heterogeneous soft materials: application to liver tissue

机译:基于新型机器学习的异构软材料均质化计算框架:肝组织的应用

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摘要

Real-time simulation of organs increases comfort and safety for patients during the surgery. Proper generalized decomposition (PGD) is an efficient numerical method with coordinate errors below 1 mm and response time below 0.1 s that can be used for simulated surgery. For input of this approach, nonlinear mechanical properties of each segment of the liver need to be calculated based on the geometries of the patient's liver extracted using medical imaging techniques. In this research work, a map of the mechanical properties of the liver tissue has been estimated with a novel combined method of the finite element (FE) optimization. Due to the existence of major-size vessels in the liver that makes the surrounding tissue anisotropic, the simulation of hyperelastic material with two different sections is computationally expensive. Thus, a homogenized, anisotropic, and hyperelastic model with the nearest response to the real heterogeneous model was developed and presented. Because of various possibilities of the vessel orientation, position, and size, homogenization has been carried out for adequate samples of heterogeneous models to train artificial neural networks (ANNs) as machine learning tools. Then, an unknown sample of heterogeneous material was categorized and mapped to its homogenized material parameters with the trained networks for the fast and low-cost generalization of our combined FE optimization method. The results showed the efficiency of the proposed novel machine learning based technique for the prediction of effective material properties of unknown heterogeneous tissues.
机译:器官的实时仿真会增加手术期间患者的舒适性和安全性。适当的广义分解(PGD)是一种有效的数值方法,其坐标误差低于1mm,响应时间低于0.1秒,可用于模拟手术。为了输入这种方法,需要基于使用医学成像技术提取的患者肝脏的几何形状来计算肝脏的每个区段的非线性力学性能。在该研究工作中,据估计了肝组织的力学性能的地图,并用了有限元(Fe)优化的新组合方法。由于肝脏中主要血管的存在,使周围组织各向异性的,具有两个不同部分的超弹性材料的仿真是计算昂贵的。因此,开发并呈现了具有最接近真实异构模型的响应的均质化,各向异性和超弹性模型。由于血管取向,位置和尺寸的各种可能性,已经为机器学习工具培养了人工神经网络(ANNS)的异质模型的适当样本来进行均质化。然后,通过培训的网络对其均质材料进行分类并映射到其均质材料参数的未知样品,用于我们的组合FE优化方法的快速和低成本的概括。结果表明,基于新型机器学习技术的效率,用于预测未知异质组织的有效材料特性。

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