A simple 2D multibody model to better quantify the movement quality of anterior cruciate ligament patients during single leg hop.

IF 0.5 4区 医学 Q4 ORTHOPEDICS
Nicolas Lambicht, Simon Hinnekens, Laurent Pitance, Paul Fisette, Christine Detrembleur
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引用次数: 0

Abstract

Patients with anterior cruciate ligament reconstruction frequently present asymmetries in the sagittal plane dynamics when performing single leg jumps but their assessment is inaccessible to health-care professionals as it requires a complex and expensive system. With the development of deep learning methods for human pose detection, kinematics can be quantified based on a video and this study aimed to investigate whether a relatively simple 2D multibody model could predict relevant dynamic biomarkers based on the kinematics using inverse dynamics. Six participants performed ten vertical and forward single leg hops while the kinematics and the ground reaction force "GRF" were captured using an optoelectronic system coupled with a force platform. The participants are modelled by a seven rigid bodies system and the sagittal plane kinematics was used as model input. Model outputs were compared to values measured by the force platform using intraclass correlation coefficients for seven outcomes: the peak vertical and antero-posterior GRFs and the impulses during the propulsion and landing phases and the loading ratio. The model reliability is either good or excellent for all outcomes (0,845 ≤ ICC ≤ 0.987). The study results are promising for deploying the developed model following a kinematics analysis based on a video. This could enable clinicians to assess their patients' jumps more effectively using video recordings made with widely available smartphones, even outside the laboratory.

建立简单的二维多体模型,更好地量化前交叉韧带患者单腿跳的运动质量。
前交叉韧带重建患者在进行单腿跳跃时经常出现矢状面动力学不对称,但医疗保健专业人员无法对其进行评估,因为它需要复杂且昂贵的系统。随着人体姿态检测的深度学习方法的发展,运动学可以基于视频进行量化,本研究旨在研究一个相对简单的二维多体模型是否可以使用逆动力学来预测基于运动学的相关动态生物标志物。六名参与者进行了十次垂直和向前单腿跳跃,同时使用光电系统与力平台耦合捕捉运动学和地面反作用力“GRF”。采用七刚体系统建模,矢状面运动学作为模型输入。模型输出与力平台测量的值进行了比较,使用了7个结果的类内相关系数:峰值垂直和前后GRFs、推进和着陆阶段的脉冲以及加载比。所有结果的模型信度均为良好或极好(0.845≤ICC≤0.987)。研究结果为基于视频的运动学分析奠定了基础。这可以使临床医生使用广泛使用的智能手机录制的视频,甚至在实验室外,更有效地评估患者的跳跃。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Acta orthopaedica Belgica
Acta orthopaedica Belgica 医学-整形外科
CiteScore
0.70
自引率
0.00%
发文量
58
审稿时长
4-8 weeks
期刊介绍: Information not localized
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