Makaram Navaneethakrishna, Swaminathan Ramakrishnan
Non-Invasive Imaging and Diagnostics laboratory, Department of Applied Mechanics, Indian Institute of Technology Madras, Chennai, India - 600036.
Stud Health Technol Inform. 2020 Jun 16;270:1219-1220. doi: 10.3233/SHTI200371.
In this, study, an attempt is made to differentiate muscle nonfatigue and fatigue condition using signal complexity metrics derived from phase space network features. A total of 55 healthy adult volunteers performed dynamic contraction of the biceps brachii muscle. The first and last curl are segmented and are considered as nonfatigue and fatigue condition respectively. A weighted phase space network is constructed and reduced to a binary network based on various radii. The mean and median degree centrality features are extracted from these networks and are used for classification. The results of the classification indicate that these features are capable of differentiating nonfatigue and fatigue condition with 91% accuracy. This method of analysis can be extended to applications such as diagnosis of neuromuscular disorder where fatigue is a symptom.
在本研究中,尝试使用从相空间网络特征导出的信号复杂度指标来区分肌肉的非疲劳和疲劳状态。共有55名健康成年志愿者进行肱二头肌的动态收缩。第一次和最后一次卷曲被分割出来,分别被视为非疲劳和疲劳状态。构建一个加权相空间网络,并基于各种半径将其简化为一个二元网络。从这些网络中提取平均和中位数度中心性特征,并将其用于分类。分类结果表明,这些特征能够以91%的准确率区分非疲劳和疲劳状态。这种分析方法可以扩展到诸如神经肌肉疾病诊断等应用中,在这些疾病中疲劳是一种症状。