Menrva Research Group, Schools of Mechatronic Systems & Engineering Science, Simon Fraser University, 8888 University Dr, Burnaby, BC V5A 1S6, Canada.
Department of Physical Therapy, GF Strong Rehab Centre, Vancouver Coastal Health Research Institute, Vancouver Campus, University of British Columbia and Rehabilitation Research Program, 212-2177 Wesbrook Mall, Vancouver, BC V6T 1Z3, Canada.
Sensors (Basel). 2019 Jun 21;19(12):2796. doi: 10.3390/s19122796.
(1) Background: Ankle joint power, as an indicator of the ability to control lower limbs, is of great relevance for clinical diagnosis of gait impairment and control of lower limb prosthesis. However, the majority of available techniques for estimating joint power are based on inverse dynamics methods, which require performing a biomechanical analysis of the foot and using a highly instrumented environment to tune the parameters of the resulting biomechanical model. Such techniques are not generally applicable to real-world scenarios in which gait monitoring outside of the clinical setting is desired. This paper proposes a viable alternative to such techniques by using machine learning algorithms to estimate ankle joint power from data collected by two miniature inertial measurement units (IMUs) on the foot and shank, (2) Methods: Nine participants walked on a force-plate-instrumented treadmill wearing two IMUs. The data from the IMUs were processed to train and test a random forest model to estimate ankle joint power. The performance of the model was then evaluated by comparing the estimated power values to the reference values provided by the motion tracking system and the force-plate-instrumented treadmill. (3) Results: The proposed method achieved a high accuracy with the correlation coefficient, root mean square error, and normalized root mean square error of 0.98, 0.06 w/kg, and 1.05% in the intra-subject test, and 0.92, 0.13 w/kg, and 2.37% in inter-subject test, respectively. The difference between the predicted and true peak power values was 0.01 w/kg and 0.14 w/kg with a delay of 0.4% and 0.4% of gait cycle duration for the intra- and inter-subject testing, respectively. (4) Conclusions: The results of this study demonstrate the feasibility of using only two IMUs to estimate ankle joint power. The proposed technique provides a basis for developing a portable and compact gait monitoring system that can potentially offer monitoring and reporting on ankle joint power in real-time during activities of daily living.
(1)背景:踝关节功率作为控制下肢能力的指标,对于临床步态损伤诊断和下肢假肢控制具有重要意义。然而,大多数用于估计关节功率的现有技术都是基于逆动力学方法,这些方法需要对脚部进行生物力学分析,并使用高度仪器化的环境来调整由此产生的生物力学模型的参数。这些技术通常不适用于希望在临床环境之外进行步态监测的实际情况。本文提出了一种可行的替代方法,即使用机器学习算法从脚部和小腿上的两个微型惯性测量单元 (IMU) 收集的数据来估计踝关节功率。
(2)方法:九名参与者在配备力板的跑步机上穿着两个 IMU 行走。对 IMU 数据进行处理,以训练和测试随机森林模型来估计踝关节功率。然后通过将估计的功率值与运动跟踪系统和力板跑步机提供的参考值进行比较来评估模型的性能。
(3)结果:该方法在内部测试中达到了较高的准确性,相关系数、均方根误差和归一化均方根误差分别为 0.98、0.06 w/kg 和 1.05%,在外部测试中分别为 0.92、0.13 w/kg 和 2.37%。预测和真实峰值功率值之间的差异分别为 0.01 w/kg 和 0.14 w/kg,内部和外部测试的延迟分别为步态周期持续时间的 0.4%和 0.4%。
(4)结论:这项研究的结果表明,仅使用两个 IMU 来估计踝关节功率是可行的。所提出的技术为开发便携式紧凑型步态监测系统提供了基础,该系统有可能在日常生活活动中实时提供踝关节功率的监测和报告。