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首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Capturing the Cranio-Caudal Signature of a Turn with Inertial Measurement Systems: Methods, Parameters Robustness and Reliability
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Capturing the Cranio-Caudal Signature of a Turn with Inertial Measurement Systems: Methods, Parameters Robustness and Reliability

机译:用惯性测量系统捕获转弯的颅尾特征:方法,参数的鲁棒性和可靠性

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Turning is a challenging mobility task requiring coordination and postural stability. Optimal turning involves a cranio-caudal sequence (i.e. the head initiates the motion, followed by the trunk and the pelvis) which has been shown to be altered in patients with neurodegenerative diseases such as Parkinson’s disease as well as in fallers and frails. Previous studies have suggested that the cranio-caudal sequence exhibits a specific signature corresponding to the adopted turn strategy. Currently, the assessment of cranio-caudal sequence is limited to biomechanical labs which use camera-based systems; however, there is a growing trend to assess human kinematics with wearable sensors such as Attitude and Heading Reference Systems (AHRS), which enable recording of raw inertial signals (acceleration and angular velocity) from which the orientation of the platform is estimated. In order to enhance the comprehension of complex processes such as turning, signal modeling can be performed. The current study investigates the use of a kinematic-based model, the sigma-lognormal model, to characterize the turn cranio-caudal signature as assessed with Attitude and Heading Reference Systems (AHRS). Methods: Sixteen asymptomatic adults (mean age = 69.1 ± 7.5 years old) performed repeated 10-m Timed-Up-and-Go (TUG) with 180o turns, at varying speed. Head and trunk kinematics were assessed with AHRS positioned on each segments. Relative orientation of the head to the trunk was then computed for each trial and relative angular velocity profile was derived for the turn phase. Peak relative angle (variable) and relative velocity profiles modelled using a sigma-lognormal approach (variables: Neuromuscular command amplitudes and timing parameters) were used to extract and characterize the cranio-caudal signature of each individual during the turn phase. Results: The methodology has shown good ability to reconstruct the cranio-caudal signature (signal-to-noise median of 17.7). All variables were robust to speed variations (p > 0.124). Peak relative angle and commanded amplitudes demonstrated moderate to strong reliability (ICC between 0.640 and 0.808). Conclusion: The cranio-caudal signature assessed with the sigma-lognormal model appears to be a promising avenue to assess the efficiency of turns.
机译:转向是一项具有挑战性的机动任务,需要协调和姿势稳定。最佳转向涉及颅尾序列(即头部开始运动,然后是躯干和骨盆),这已被证实在患有神经退行性疾病(如帕金森氏病)以及跌倒和体弱的患者中有所改变。先前的研究表明,颅尾序列表现出与采用的转向策略相对应的特定特征。目前,对颅尾序列的评估仅限于使用基于摄像头的系统的生物力学实验室。但是,使用诸如姿态和航向参考系统(AHRS)之类的可穿戴传感器评估人体运动学的趋势正在增长,该传感器能够记录原始惯性信号(加速度和角速度),并据此估计平台的方向。为了增强对复杂过程(如车削)的理解,可以执行信号建模。当前的研究调查了基于运动学的模型,即对数对数正态模型,该模型用于表征经姿态和航向参考系统(AHRS)评估的转弯颅尾特征。方法:16名无症状成人(平均年龄= 69.1±7.5岁)以180o转弯的速度反复进行10米的定时起跑(TUG)动作。头部和躯干运动学通过在每个节段上定位的AHRS进行评估。然后针对每次试验计算头部相对于躯干的相对方向,并得出转弯阶段的相对角速度曲线。使用sigma-lognormal方法建模的峰相对角(变量)和相对速度曲线(变量:神经肌肉命令幅度和时间参数)用于提取和表征转弯阶段每个人的颅尾特征。结果:该方法显示出良好的重建颅尾特征的能力(信噪比中值为17.7)。所有变量均对速度变化具有鲁棒性(p> 0.124)。峰值相对角度和指令幅度显示出中等到强的可靠性(ICC在0.640和0.808之间)。结论:用sigma-lognormal模型评估的颅尾标志似乎是评估转弯效率的有前途的途径。

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