Department of Kinesiology and Sport Sciences, School of Education & Human Development, University of Miami, Coral Gables, FL, 33143, USA.
Department of Kinesiology, School of Education, Michigan State University, East Lansing, MI, 48824, USA.
Gait Posture. 2021 Feb;84:232-237. doi: 10.1016/j.gaitpost.2020.12.025. Epub 2020 Dec 25.
Although stair ambulation should be included in the rehabilitation of the long-term effects of ACL injury on knee function, the assessment of kinetic parameter in the situation where stair gait can only be established using costly and cumbersome force platforms via conventional inverse dynamic analysis. Therefore, there is a need to develop a practical laboratory setup as an assessment tool of the stair gait abnormalities in lower extremity that arise from an ACL deficiency.
Can the use of a single depth sensor-driven full-body musculoskeletal gait model be considered an accurate assessment tool of the ground reaction forces (GRFs) during stair climbing for patients following ACL reconstruction (ACLR) surgery?
A total of 15 patients who underwent ACLR participated in this study. GRFs data during stair climbing was collected using a custom-built 3-step staircase with two embedded force platforms. A single depth sensor, commercially available and cost effective, was used to obtain participants' depth map information to extract the full-body skeleton information. The AnyBody TM GaitFullBody model was utilized to estimate GRFs attained by 25 artificial muscle-like actuators placed under each foot. Mean differences between the measured and estimated GRFs were compared using paired samples t-tests. The ensemble curves of the GRFs were compared between both approaches during stance phase of the gait cycle.
The findings of this study showed that the estimation of the GRFs produced during staircase gait using a depth sensor-driven musculoskeletal model can produce acceptable results when compared to the traditional inverse dynamics modelling approach as an alternative tool in clinical settings for individuals who had undergone ACLR.
The introduced approach of full-body musculoskeletal modelling driven by a single depth sensor has the potential to be a cost-effective stair gait analysis tool for patients with ACL injury.
尽管楼梯步行应该包括在 ACL 损伤对膝关节功能的长期影响的康复中,但在传统的逆动力学分析中,只能通过昂贵且繁琐的力台来建立楼梯步态的情况下,对动力学参数进行评估。因此,需要开发一种实用的实验室设置,作为评估 ACL 缺陷引起的下肢楼梯步态异常的工具。
能否将使用单个深度传感器驱动的全身肌肉骨骼步态模型视为 ACLR 手术后患者进行楼梯攀爬时评估地面反作用力(GRF)的准确评估工具?
共有 15 名接受 ACLR 的患者参与了这项研究。使用带有两个嵌入式力台的定制 3 级楼梯收集楼梯攀爬过程中的 GRF 数据。使用单个深度传感器(商业上可用且具有成本效益)获取参与者的深度图信息,以提取全身骨骼信息。AnyBody TM GaitFullBody 模型用于估计放置在每只脚下的 25 个人工肌肉样执行器获得的 GRF。使用配对样本 t 检验比较测量和估计的 GRF 之间的平均差异。在步态周期的站立阶段,比较两种方法之间的 GRF 整体曲线。
这项研究的结果表明,与传统的逆动力学建模方法相比,使用深度传感器驱动的肌肉骨骼模型来估计楼梯步态中产生的 GRF 可以产生可接受的结果,作为 ACLR 后个体在临床环境中的替代工具。
引入的由单个深度传感器驱动的全身肌肉骨骼建模方法有可能成为 ACL 损伤患者的一种具有成本效益的楼梯步态分析工具。