Cluster analysis-based classification of healthy female netball players using wearable sensors

Umar Yahya, S. M. N. Arosha Senanayake, A. G. Naim
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引用次数: 2

Abstract

Use of wearable wireless sensors (WWS) for classification of healthy female netball players is presented in this study. WWS comprised of wireless surface electromyography (EMG) sensors and 3Dimensional (3D) marker-based motion capture system for acquisition of lower extremity (LE) EMG data and 3DKinematics data respectively. Using WWS data obtained during ball interception (BI) task, subjects are classified based on their similarity-dissimilarity measure through hierarchical cluster analysis (HCA). By investigating existence of homogeneous subgroups (clusters) in LE features extracted, this work aimed to establish for the first time whether netball players exhibit identifiable and distinguishable EMG-3D Kinematic patterns during multiple trials of BI. BI is a key goal-oriented, often spontaneous, and multi-directional jump-landing task frequently performed by every player in a netball game. Thirteen professional subjects were recruited for this study with each asked to perform BI task in six trials in a semi-controlled game-play environment. EMG activity of eight LE muscles and 3D kinematics of the knee and ankle joints were recorded from each subject bilaterally during each BI trial. A total of sixty features (48 EMG and 12 3D-Kinematics) were extracted from the recorded raw data for analysis. Principal component analysis (PCA) was applied for dimensionality reduction of the total feature dataset, retaining only principal components that collectively explained more than 90% data variability. HCA was then used in clustering of the reduced datasets. Through inspection of the resulting dendrograms along with cophenetic correlation coefficients, 3 different clusters were confirmed. Based on HCA cluster-solutions, subjects were classified into three different classes (Class-1, Class-2, and Class-3) corresponding with respective clusters. Classification showed that majority (8 of the 13) subjects exhibited and maintained an identifiable LE biomechanical pattern 100% of the time (i.e for all six BI trials), while the remaining 5 subjects exhibited the same more than 66% of the time. Kruskal Walli's test showed that subgroups differed significantly (p<0.05) in their ranges of motion of the knee and ankle joints in sagittal and transverse planes, bilaterally. The integration of wearable wireless EMG sensors with motion capture system utilized in this research demonstrates that quantification of athletes' BI profiles based on their LE neuromuscular and 3D kinematics loadings is plausible. This allows trainers to make informed judgment on performance enhancement and injury prevention measures for BI task, both for individual athletes as well as for similar-groups as identified through HCA.
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基于聚类分析的可穿戴传感器健康女篮运动员分类
本研究采用可穿戴式无线感测器(WWS)对健康女篮运动员进行分类。WWS由无线表面肌电(EMG)传感器和基于三维(3D)标记的运动捕捉系统组成,分别用于获取下肢(LE)肌电数据和三维运动学数据。利用截球(BI)任务中获得的WWS数据,通过层次聚类分析(HCA)对被试进行相似性-不相似性的分类。通过研究提取的LE特征中同质亚群(聚类)的存在性,这项工作旨在首次确定无篮篮球运动员在多次BI试验中是否表现出可识别和可区分的肌电- 3d运动模式。BI是一个关键的目标导向,通常是自发的,多方向的跳跃着陆任务,通常由每个球员在无板篮球比赛中执行。这项研究招募了13名专业受试者,每个人都被要求在半控制的游戏环境中进行6次BI任务。在每次BI试验期间,记录每位受试者双侧8块LE肌肉的肌电图活动以及膝关节和踝关节的3D运动学。从记录的原始数据中提取共60个特征(48个肌电图和12个3d -运动学)进行分析。主成分分析(PCA)应用于总特征数据集的降维,仅保留主成分,这些主成分共同解释了90%以上的数据变异性。然后使用HCA对约简后的数据集进行聚类。通过检查所得的树状图和相关系数,确定了3种不同的簇。基于HCA聚类解,将受试者分为三类(1类、2类和3类),与各自的聚类相对应。分类显示,大多数(13名受试者中的8名)在100%的时间(即所有6项BI试验)表现并保持可识别的LE生物力学模式,而其余5名受试者在超过66%的时间内表现出相同的模式。Kruskal Walli’s检验显示,各亚组双侧膝关节和踝关节矢状面和横切面的活动范围差异显著(p<0.05)。本研究中使用的可穿戴无线肌电传感器与运动捕捉系统的集成表明,基于运动员的LE神经肌肉和3D运动学负荷来量化运动员的BI特征是可行的。这使训练师能够对BI任务的性能提高和伤害预防措施做出明智的判断,无论是针对个人运动员还是通过HCA确定的类似群体。
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