基于图神经网络的超快速、高精度非线性足部变形预测。

IF 3.3 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Taehyeon Kang , Jiho Kim , Hyobi Lee , Haeun Yum , Chani Kwon , Youngbin Lim , Sangryun Lee , Taeyong Lee
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引用次数: 0

摘要

近来,足部疾病的数量大幅增加,凸显了非手术疗法的重要性。根据个人足部形态量身定制的鞋垫已成为一种很有前景的解决方案。然而,由于预测足部变形所需的有限元分析计算复杂度高,传统的定制鞋垫设计过程既缓慢又昂贵。本研究探讨了基于 MeshGraphNet 框架的图神经网络(GNN)在预测负载下足部三维形状方面的适用性,并根据数据集的数量测试了 GNN 的性能。从一系列通过有限元分析预测变形的二维足部图像中,共获得 186 个三维未变形足部 CAD 几何图形。然后利用这些有限元分析数据来训练 GNN 模型,该模型旨在以高精度和计算速度预测足部位移。在对 GNN 权重进行优化后,该模型在速度上明显优于有限元分析模拟,速度提高了约 97.52 倍,同时保持了较高的准确性,在预测足部位移方面的 R2 值超过 95%。这一突破表明,GNN 模型可以大大提高定制鞋垫的生产效率,降低生产成本,为足部疾病的非手术治疗方案提供了重要的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Super-fast and accurate nonlinear foot deformation Prediction using graph neural networks
Recently, there has been a significant increase in the number of foot diseases, highlighting the importance of non-surgical treatments. Customized insoles, tailored to an individual's foot morphology, have emerged as a promising solution. However, the traditional design process of the customized insole is both slow and expensive due to the high computational complexity of finite element analysis (FEA) required to predict deformations of the foot. This study explores the applicability of a graph neural network (GNN) based on the MeshGraphNet framework to predict the 3-D shape of the foot under load and test the performance of GNN depending on the number of datasets. A total of 186 3-D undeformed foot CAD geometries are obtained from a series of 2-D foot images with deformations predicted through FEA. This FEA data is then used to train the GNN model, which aims to predict foot displacement with high accuracy and computation speed. After optimization of the weights of the GNN, the model remarkably outperformed FEA simulations in speed, being approximately 97.52 times faster, while maintaining high accuracy, with R2 values above 95% in predicting foot displacement. This breakthrough suggests that GNN models can greatly improve the efficiency and reduce the cost of manufacturing customized insoles, providing a significant advancement in non-surgical treatment options for foot conditions.
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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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