Research Center in Physical Activity, Health and Leisure (CIAFEL), Faculty of Sport, University of Porto, Porto, Portugal.
Laboratory for Integrative and Translational Research in Population Health (ITR), University of Porto, Porto, Portugal.
Eur J Sport Sci. 2023 Aug;23(8):1518-1527. doi: 10.1080/17461391.2022.2102437. Epub 2022 Aug 11.
Currently, there is no way to assess mechanical loading variables such as peak ground reaction forces (pGRF) and peak loading rate (pLR) in clinical settings. The purpose of this study was to develop accelerometry-based equations to predict both pGRF and pLR during walking and running. One hundred and thirty one subjects (79 females; 76.9 ± 19.6 kg) walked and ran at different speeds (2-14 km·h) on a force plate-instrumented treadmill while wearing accelerometers at their ankle, lower back and hip. Regression equations were developed to predict pGRF and pLR from accelerometry data. Leave-one-out cross-validation was used to calculate prediction accuracy and Bland-Altman plots. Our pGRF prediction equation was compared with a reference equation previously published. Body mass and peak acceleration were included for pGRF prediction and body mass and peak acceleration rate for pLR prediction. All pGRF equation coefficients of determination were above 0.96, and a good agreement between actual and predicted pGRF was observed, with a mean absolute percent error (MAPE) below 7.3%. Accuracy indices from our equations were better than previously developed equations. All pLR prediction equations presented a lower accuracy compared to those developed to predict pGRF. Walking and running pGRF can be predicted with high accuracy by accelerometry-based equations, representing an easy way to determine mechanical loading in free-living conditions. The pLR prediction equations yielded a somewhat lower prediction accuracy compared with the pGRF equations.
目前,在临床环境中还无法评估峰值地面反作用力 (pGRF) 和峰值加载率 (pLR) 等机械加载变量。本研究旨在开发基于加速度计的方程,以预测步行和跑步时的 pGRF 和 pLR。131 名受试者(79 名女性;76.9±19.6kg)在装有测力板的跑步机上以不同速度(2-14km·h)行走和跑步,同时在脚踝、下背部和臀部佩戴加速度计。开发了回归方程,以从加速度计数据预测 pGRF 和 pLR。使用留一法交叉验证来计算预测准确性和 Bland-Altman 图。我们的 pGRF 预测方程与之前发表的参考方程进行了比较。体重和峰值加速度用于 pGRF 预测,体重和峰值加速度率用于 pLR 预测。所有 pGRF 方程的决定系数均高于 0.96,实际和预测的 pGRF 之间观察到良好的一致性,平均绝对百分比误差 (MAPE) 低于 7.3%。与之前开发的方程相比,我们的方程的准确性指标更好。与预测 pGRF 的方程相比,所有 pLR 预测方程的准确性都较低。基于加速度计的方程可以高度准确地预测步行和跑步时的 pGRF,代表了在自由生活条件下确定机械加载的一种简便方法。与 pGRF 方程相比,pLR 预测方程的预测准确性略低。