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The effect of subject measurement error on joint kinematics in the conventional gait model: Insights from the open-source pyCGM tool using high performance computing methods

机译:传统步态模型中受试者测量误差对关节运动学的影响:使用高性能计算方法的开源pyCGM工具的见解

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摘要

The conventional gait model (CGM) is a widely used biomechanical model which has been validated over many years. The CGM relies on retro-reflective markers placed along anatomical landmarks, a static calibration pose, and subject measurements as inputs for joint angle calculations. While past literature has shown the possible errors caused by improper marker placement, studies on the effects of inaccurate subject measurements are lacking. Moreover, as many laboratories rely on the commercial version of the CGM, released as the Plug-in Gait (Vicon Motion Systems Ltd, Oxford, UK), integrating improvements into the CGM code is not easily accomplished. This paper introduces a Python implementation for the CGM, referred to as pyCGM, which is an open-source, easily modifiable, cross platform, and high performance computational implementation. The aims of pyCGM are to (1) reproduce joint kinematic outputs from the Vicon CGM and (2) be implemented in a parallel approach to allow integration on a high performance computer. The aims of this paper are to (1) demonstrate that pyCGM can systematically and efficiently examine the effect of subject measurements on joint angles and (2) be updated to include new calculation methods suggested in the literature. The results show that the calculated joint angles from pyCGM agree with Vicon CGM outputs, with a maximum lower body joint angle difference of less than 10-5 degrees. Through the hierarchical system, the ankle joint is the most vulnerable to subject measurement error. Leg length has the greatest effect on all joints as a percentage of measurement error. When compared to the errors previously found through inter-laboratory measurements, the impact of subject measurements is minimal, and researchers should rather focus on marker placement. Finally, we showed that code modifications can be performed to include improved hip, knee, and ankle joint centre estimations suggested in the existing literature. The pyCGM code is provided in open source format and available at .
机译:常规步态模型(CGM)是一种经过广泛验证的生物力学模型。 CGM依靠沿解剖界标放置的回射标记,静态校准姿势和对象测量值作为关节角度计算的输入。尽管过去的文献已经表明了由于标记放置不当而可能导致的错误,但仍缺乏对不准确的受试者测量结果的研究。而且,由于许多实验室依赖于CGM的商业版本,即以步态插件的形式发布(英国牛津的Vicon Motion Systems Ltd),因此将改进集成到CGM代码中并不容易。本文介绍了用于CGM的python实现,称为pyCGM,它是一种开源,易于修改的跨平台,高性能计算实现。 pyCGM的目的是(1)从Vicon CGM复制关节运动学输出,以及(2)以并行方式实现以允许集成在高性能计算机上。本文的目的是(1)证明pyCGM可以系统有效地检查对象测量对关节角度的影响,并且(2)进行更新以包括文献中建议的新计算方法。结果表明,从pyCGM计算得到的关节角度与Vicon CGM输出一致,最大下半身关节角度差小于10 -5 度。通过分层系统,脚踝关节最容易受到受试者测量误差的影响。腿长对所有关节的影响最大,以测量误差的百分比表示。与以前通过实验室间测量发现的误差进行比较时,受试者测量的影响很小,研究人员应该更专注于标记物的放置。最后,我们表明可以对代码进行修改,以包括现有文献中建议的改进的髋,膝和踝关节中心估计。 pyCGM代码以开放源代码格式提供,可在处获得。

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  • 年(卷),期 -1(13),1
  • 年度 -1
  • 页码 e0189984
  • 总页数 24
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