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Combined inverse-forward artificial neural networks for fast and accurate estimation of the diffusion coefficients of cartilage based on multi-physics models

机译:基于多物理场模型的组合逆向人工神经网络快速准确地估计软骨的扩散系数

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Analytical and numerical methods have been used to extract essential engineering parameters such as elastic modulus, Poisson's ratio, permeability and diffusion coefficient from experimental data in various types of biological tissues. The major limitation associated with analytical techniques is that they are often only applicable to problems with simplified assumptions. Numerical multi-physics methods, on the other hand, enable minimizing the simplified assumptions but require substantial computational expertise, which is not always available. In this paper, we propose a novel approach that combines inverse and forward artificial neural networks (ANNs) which enables fast and accurate estimation of the diffusion coefficient of cartilage without any need for computational modeling. In this approach, an inverse ANN is trained using our multi-zone biphasic-solute finite-bath computational model of diffusion in cartilage to estimate the diffusion coefficient of the various zones of cartilage given the concentration time curves. Robust estimation of the diffusion coefficients, however, requires introducing certain levels of stochastic variations during the training process. Determining the required level of stochastic variation is performed by coupling the inverse ANN with a forward ANN that receives the diffusion coefficient as input and returns the concentration-time curve as output. Combined together, forward-inverse ANNs enable computationally inexperienced users to obtain accurate and fast estimation of the diffusion coefficients of cartilage zones. The diffusion coefficients estimated using the proposed approach are compared with those determined using direct scanning of the parameter space as the optimization approach. It has been shown that both approaches yield comparable results. (C) 2016 Elsevier Ltd. All rights reserved.
机译:已经使用分析和数值方法从各种类型的生物组织中的实验数据中提取必要的工程参数,例如弹性模量,泊松比,渗透率和扩散系数。与分析技术相关的主要限制是它们通常仅适用于具有简化假设的问题。另一方面,数值多物理场方法可以使简化的假设最小化,但需要大量的计算专业知识,而这并非总是可用的。在本文中,我们提出了一种结合了逆向和正向人工神经网络(ANN)的新颖方法,该方法可以快速而准确地估计软骨的扩散系数,而无需进行任何计算建模。在这种方法中,使用我们在软骨中扩散的多区域双相-溶质有限浴计算模型训练逆神经网络,以在给出浓度时间曲线的情况下估计软骨各个区域的扩散系数。但是,对扩散系数的可靠估计需要在训练过程中引入一定水平的随机变化。通过将逆ANN与正向ANN耦合来确定所需的随机变化水平,正向ANN接收扩散系数作为输入,并返回浓度-时间曲线作为输出。结合在一起,前向逆向神经网络使没有计算经验的用户能够准确,快速地估计软骨区域的扩散系数。将使用建议的方法估计的扩散系数与使用参数空间的直接扫描作为优化方法确定的扩散系数进行比较。已经表明,两种方法都能产生可比的结果。 (C)2016 Elsevier Ltd.保留所有权利。

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