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Joint motion pattern classification by cluster analysis of kinematic, demographic, and subjective variables

机译:通过运动学,人口统计学和主观变量的聚类分析对关节运动模式进行分类

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摘要

The purpose of this study is to identify joint motion patterns by classifying the full range of motion (ROM) into several sections. Forty participants were stratified by age and gender and they performed 18 full-swing motions at a self-selected speed. Joint angle, angular velocity, angular acceleration, and subjective discomfort rating were collected for each motion. K-means cluster analyses were used to classify joint motion patterns and ROM sections. The results showed that two or three clusters were mainly determined by the kinematic variables of angular velocity and acceleration. The motions of three clusters showed that the ROM sections of low and moderate velocity with moderate and high accelerations occurred in the initial (negative) and terminal (positive) phases, respectively, whereas those of high velocity with low acceleration were shown in the mid (neutral) phase. The motions of two clusters revealed that while the patterns of high velocity and high acceleration were found on the positive side of the ROM, those of low velocity and low acceleration were on the negative and neutral sides. The ROM sections close to both ends of the ROM may have a larger physical load than the others. This study provides information that could be useful for developing postural analysis tools for dynamic work.
机译:这项研究的目的是通过将整个运动范围(ROM)分为几个部分来识别关节运动模式。 40名参与者按年龄和性别进行了分层,他们以自行选择的速度执行了18次全幅动作。收集每个动作的关节角度,角速度,角加速度和主观不适等级。使用K均值聚类分析对关节运动模式和ROM部分进行分类。结果表明,两个或三个聚类主要由角速度和加速度的运动学变量确定。三个簇的运动表明,低速和中速,中等和高加速度的ROM区域分别出现在初始(负)和末期(正)阶段,而高速,低加速度的ROM区域显示在中间(中性)阶段。两个簇的运动表明,虽然在ROM的正侧发现了高速和高加速度的模式,但在负和中性侧发现了低速和低加速度的模式。靠近ROM两端的ROM部分可能比其他部分具有更大的物理负载。这项研究提供的信息可能对开发用于动态工作的姿势分析工具有用。

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