Gait-to-Contact (G2C): A Novel Deep Learning Framework to Predict Total Knee Replacement Wear from Gait Patterns.

IF 5.4 2区 医学 Q3 ENGINEERING, BIOMEDICAL
Mattia Perrone, Scott Simmons, Philip Malloy, Vasili Karas, Catherine Yuh, John Martin, Steven P Mell
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引用次数: 0

Abstract

Purpose: Total knee replacement (TKR) is the most common inpatient surgery in the US. Studies leveraging finite element analysis (FEA) models have shown that variability of gait patterns can lead to significant variability of wear rates in TKR settings. However, FEA models can be resource-intensive and time-consuming to execute, hindering further research in this area. This study introduces a novel deep learning-based surrogate modeling approach aimed at significantly reducing computational costs and processing time compared to traditional FEA models.

Methods: A published method was used to generate 314 variations of ISO14243-3 (2014) anterior/posterior translation, internal/external rotation, flexion/extension, and axial loading time series, and a validated FEA model was used to calculate linear wear distribution on the polyethylene liner. A deep learning model featuring a transformer-CNN based encoder-decoder architecture was trained to predict linear wear distribution using gait pattern time series as input. Model performance was evaluated by comparing the deep learning and FEA model predictions using metrics such as mean absolute percentage error (MAPE) for relevant geometric features of the wear scar, structural similarity index measure (SSIM), and normalized mutual information (NMI).

Results: The deep learning model significantly reduced the computational time for generating wear predictions compared to FEA, with the former training and inferring in minutes, and the latter requiring days. Comparisons of deep learning model wear map predictions to FEA results yielded MAPE values below 6% for most of the variables and SSIM and NMI values above 0.88, indicating a high level of agreement.

Conclusion: The deep learning approach provides a promising alternative to FEA for predicting wear in TKR, with substantial reductions in computational time and comparable accuracy. Future research will aim to apply this methodology to clinical patient data, which could lead to more personalized and timely interventions in TKR settings.

步态-接触(G2C):一种基于步态模式预测全膝关节置换术磨损的新型深度学习框架。
目的:全膝关节置换术(TKR)是美国最常见的住院手术。利用有限元分析(FEA)模型的研究表明,步态模式的可变性会导致TKR设置中磨损率的显著变化。然而,有限元分析模型的执行可能是资源密集和耗时的,阻碍了这一领域的进一步研究。本研究引入了一种新的基于深度学习的代理建模方法,与传统的有限元模型相比,该方法旨在显著降低计算成本和处理时间。方法:采用已发表的方法生成314种ISO14243-3(2014)前后平移、内外旋转、屈伸和轴向加载时间序列,并使用经过验证的有限元模型计算聚乙烯衬垫的线性磨损分布。训练了基于变压器- cnn的编码器-解码器结构的深度学习模型,以步态模式时间序列作为输入预测线性磨损分布。通过比较深度学习和FEA模型预测,使用诸如磨损疤痕相关几何特征的平均绝对百分比误差(MAPE)、结构相似指数测量(SSIM)和归一化互信息(NMI)等指标来评估模型性能。结果:与有限元分析相比,深度学习模型显著减少了生成磨损预测的计算时间,前者的训练和推断只需几分钟,后者则需要几天。将深度学习模型磨损图预测结果与有限元分析结果进行比较,大多数变量的MAPE值低于6%,SSIM和NMI值高于0.88,表明高度一致。结论:深度学习方法为预测TKR磨损提供了一种有前途的替代方法,大大减少了计算时间和相当的准确性。未来的研究将致力于将这种方法应用于临床患者数据,这可能导致在TKR设置中更个性化和及时的干预。
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来源期刊
Annals of Biomedical Engineering
Annals of Biomedical Engineering 工程技术-工程:生物医学
CiteScore
7.50
自引率
15.80%
发文量
212
审稿时长
3 months
期刊介绍: Annals of Biomedical Engineering is an official journal of the Biomedical Engineering Society, publishing original articles in the major fields of bioengineering and biomedical engineering. The Annals is an interdisciplinary and international journal with the aim to highlight integrated approaches to the solutions of biological and biomedical problems.
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