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首页> 外文期刊>Journal of Biomechanics >A novel training-free method for real-time prediction of femoral strain
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A novel training-free method for real-time prediction of femoral strain

机译:一种新的训练方法,用于股骨菌株的实时预测

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Surrogate methods for rapid calculation of femoral strain are limited by the scope of the training data. We compared a newly developed training-free method based on the superposition principle (Superposition Principle Method, SPM) and popular surrogate methods for calculating femoral strain during activity. Finite-element calculations of femoral strain, muscle, and joint forces for five different activity types were obtained previously. Multi-linear regression, multivariate adaptive regression splines, and Gaussian process were trained for 50, 100, 200, and 300 random samples generated using Latin Hypercube (LH) and Design of Experiment (DOE) sampling. The SPM method used weighted linear combinations of 173 activity-independent finite-element analyses accounting for each muscle and hip contact force. Across the surrogate methods, we found that 200 DOE samples consistently provided low error (RMSE < 100 mu epsilon), with model construction time ranging from 3.8 to 63.3 h and prediction time ranging from 6 to 1236 s per activity. The SPM method provided the lowest error (RMSE = 40 mu epsilon), the fastest model construction time (3.2 h) and the second fastest prediction time per activity (36 s) after Multi-linear Regression (6 s). The SPM method will enable large numerical studies of femoral strain and will narrow the gap between bone strain prediction and real-time clinical applications. (C) 2019 Elsevier Ltd. All rights reserved.
机译:用于快速计算股骨菌应变的替代方法受训练数据的范围受限。我们比较了基于叠加原理(叠加原理方法,SPM)和流行替代方法的新开发的无训练方法,用于计算活动期间的股骨菌应变。预先获得了股骨菌株,肌肉和关节力的有限元计算。多线性回归,多变量自适应回归花瓣和高斯工艺培训50,100,200和300种随机样本,使用拉丁杂交(LH)和实验(DOE)采样设计。 SPM方法使用了173个活性的有限元分析的加权线性组合,分析了每种肌肉和髋关节接触力的核算。在替代方法中,我们发现200个DOE样本一致地提供低误差(RMSE <100 mu epsilon),模型施工时间为3.8至63.3小时,预测时间范围为每次活动的6至1236秒。 SPM方法提供了最低误差(RMSE =40μmepsilon),最快的模型施工时间(3.2小时)和多线性回归后的每种活动(36秒)的第二最快预测时间(6 s)。 SPM方法将实现股骨菌菌株的大量数值研究,并将缩小骨应变预测和实时临床应用之间的差距。 (c)2019年elestvier有限公司保留所有权利。

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