Xiang Liangliang, Gu Yaodong, Wang Alan, Shim Vickie, Gao Zixiang, Fernandez Justin
Faculty of Sports Science, Ningbo University, Ningbo, China.
Auckland Bioengineering Institute, The University of Auckland, Auckland, New Zealand.
J Hum Kinet. 2023 Jul 15;87:29-40. doi: 10.5114/jhk/163059. eCollection 2023 Jul.
Abnormal foot postures may affect foot movement and joint loading during locomotion. Investigating foot posture alternation during running could contribute to injury prevention and foot mechanism study. This study aimed to develop feature-based and deep learning algorithms to predict foot pronation during prolonged running. Thirty-two recreational runners have been recruited for this study. Nine-axial inertial sensors were attached to the right dorsum of the foot and the vertical axis of the distal anteromedial tibia. This study employed feature-based machine learning algorithms, including support vector machine (SVM), extreme gradient boosting (XGBoost), random forest, and deep learning, i.e., one-dimensional convolutional neural networks (CNN1D), to predict foot pronation. A custom nested k-fold cross-validation was designed for hyper-parameter tuning and validating the model's performance. The XGBoot classifier achieved the best accuracy using acceleration and angular velocity data from the foot dorsum as input. Accuracy and the area under curve (AUC) were 74.7 ± 5.2% and 0.82 ± 0.07 for the subject-independent model and 98 ± 0.4% and 0.99 ± 0 for the record-wise method. The test accuracy of the CNN1D model with sensor data at the foot dorsum was 74 ± 3.8% for the subject-wise approach with an AUC of 0.8 ± 0.05. This study found that these algorithms, specifically for the CNN1D and XGBoost model with inertial sensor data collected from the foot dorsum, could be implemented into wearable devices, such as a smartwatch, for monitoring a runner's foot pronation during long-distance running. It has the potential for running shoe matching and reducing or preventing foot posture-induced injuries.
异常的足部姿势可能会影响运动过程中的足部运动和关节负荷。研究跑步过程中的足部姿势变化有助于预防损伤和研究足部机制。本研究旨在开发基于特征和深度学习算法来预测长时间跑步过程中的足内翻。本研究招募了32名业余跑步者。将九轴惯性传感器附着于右足背和胫骨远端前内侧的垂直轴上。本研究采用基于特征的机器学习算法,包括支持向量机(SVM)、极端梯度提升(XGBoost)、随机森林,以及深度学习,即一维卷积神经网络(CNN1D),来预测足内翻。设计了一种自定义的嵌套k折交叉验证用于超参数调整和验证模型性能。使用来自足背的加速度和角速度数据作为输入,XGBoot分类器取得了最佳准确率。独立于受试者的模型的准确率和曲线下面积(AUC)分别为74.7±5.2%和0.82±0.07,按记录方式的方法的准确率和AUC分别为98±0.4%和0.99±0。对于按受试者方式的方法,使用足背传感器数据的CNN1D模型的测试准确率为74±3.8%,AUC为0.8±0.05。本研究发现,这些算法,特别是对于使用从足背收集的惯性传感器数据的CNN1D和XGBoost模型,可以应用于可穿戴设备,如智能手表,以监测跑步者在长跑过程中的足内翻情况。它具有用于跑鞋匹配以及减少或预防足部姿势引起的损伤的潜力。