NUTRIM School of Nutrition and Translational Research in Metabolism, Maastricht University Medical Centre+, Department of Nutrition and Movement Sciences, Maastricht, THE NETHERLANDS.
Med Sci Sports Exerc. 2024 Oct 1;56(10):2059-2075. doi: 10.1249/MSS.0000000000003493. Epub 2024 Jun 6.
Wearables have the potential to provide accurate estimates of tissue loads at common running injury locations. Here we investigate the accuracy by which commercially available instrumented insoles (ARION; ATO-GEAR, Eindhoven, The Netherlands) can predict musculoskeletal loading at common running injury locations.
Nineteen runners (10 males) ran at five different speeds, four slopes, with different step frequencies, and forward trunk lean on an instrumented treadmill while wearing instrumented insoles. The insole data were used as input to an artificial neural network that was trained to predict the Achilles tendon strain, and tibia and patellofemoral stress impulses and weighted impulses (damage proxy) as determined with musculoskeletal modeling. Accuracy was investigated using leave-one-out cross-validation and correlations. The effect of different input metrics was also assessed.
The neural network predicted tissue loading with overall relative percentage errors of 1.95 ± 8.40%, -7.37 ± 6.41%, and -12.8 ± 9.44% for the patellofemoral joint, tibia, and Achilles tendon impulse, respectively. The accuracy significantly changed with altered running speed, slope, or step frequency. Mean (95% confidence interval) within-individual correlations between modeled and predicted impulses across conditions were generally nearly perfect, being 0.92 (0.89 to 0.94), 0.95 (0.93 to 0.96), and 0.95 (0.94 to 0.96) for the patellofemoral, tibial, and Achilles tendon stress/strain impulses, respectively.
This study shows that commercially available instrumented insoles can predict loading at common running injury locations with variable absolute but (very) high relative accuracy. The absolute error was lower than the methods that measure only the step count or assume a constant load per speed or slope. This developed model may allow for quantification of in-field tissue loading and real-time tissue loading-based feedback to reduce injury risk.
可穿戴设备有望准确估计常见跑步损伤部位的组织负荷。在这里,我们研究了市售鞋垫(ARION;ATO-GEAR,埃因霍温,荷兰)通过预测常见跑步损伤部位的肌肉骨骼负荷的准确性。
19 名跑步者(10 名男性)在装有仪器的跑步机上以 5 种不同速度、4 种坡度、不同步频和前倾躯干倾斜的情况下穿着装有仪器的鞋垫跑步。将鞋垫数据用作输入,输入到一个人工神经网络中,该网络经过训练可以预测跟腱应变以及胫骨和髌股关节的应力脉冲和加权脉冲(损伤代理),这是通过肌肉骨骼建模确定的。使用留一交叉验证和相关性来研究准确性。还评估了不同输入指标的效果。
神经网络预测组织负荷的总体相对百分比误差分别为 1.95±8.40%、-7.37±6.41%和-12.8±9.44%,用于髌股关节、胫骨和跟腱脉冲。准确性随着跑步速度、坡度或步频的变化而显著变化。在所有条件下,模型化和预测脉冲之间的个体内平均(95%置信区间)相关性通常几乎是完美的,分别为 0.92(0.89 至 0.94)、0.95(0.93 至 0.96)和 0.95(0.94 至 0.96),用于髌股关节、胫骨和跟腱的应力/应变脉冲。
本研究表明,市售的鞋垫可以以可变的绝对但(非常)高的相对精度预测常见跑步损伤部位的负荷。绝对误差低于仅测量步数或假设每个速度或坡度的恒定负荷的方法。该开发的模型可能允许量化现场组织负荷并基于实时组织负荷的反馈来降低受伤风险。