Department of Health Technology and Informatics, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong SAR, People's Republic of China.
Ann Biomed Eng. 2010 Apr;38(4):1483-96. doi: 10.1007/s10439-010-9933-5. Epub 2010 Jan 23.
In the present contribution, a complexity measure is proposed to assess surface electromyography (EMG) in the study of muscle fatigue during sustained, isometric muscle contractions. Approximate entropy (ApEn) is believed to provide quantitative information about the complexity of experimental data that is often corrupted with noise, short data length, and in many cases, has inherent dynamics that exhibit both deterministic and stochastic behaviors. We developed an improved ApEn measure, i.e., fuzzy approximate entropy (fApEn), which utilizes the fuzzy membership function to define the vectors' similarity. Tests were conducted on independent, identically distributed (i.i.d.) Gaussian and uniform noises, a chirp signal, MIX processes, Rossler equation, and Henon map. Compared with the standard ApEn, the fApEn showed better monotonicity, relative consistency, and more robustness to noise when characterizing signals with different complexities. Performance analysis on experimental EMG signals demonstrated that the fApEn significantly decreased during the development of muscle fatigue, which is a similar trend to that of the mean frequency (MNF) of the EMG signal, while the standard ApEn failed to detect this change. Moreover, fApEn of EMG demonstrated a better robustness to the length of the analysis window in comparison with the MNF of EMG. The results suggest that the fApEn of an EMG signal may potentially become a new reliable method for muscle fatigue assessment and be applicable to other short noisy physiological signal analysis.
在本研究中,提出了一种复杂度度量方法,用于评估在持续等长肌肉收缩过程中肌肉疲劳的表面肌电(EMG)研究。近似熵(ApEn)被认为可以提供有关实验数据复杂性的定量信息,而这些数据通常会受到噪声、数据长度短以及在许多情况下具有表现出确定性和随机性行为的固有动态的干扰。我们开发了一种改进的 ApEn 度量方法,即模糊近似熵(fApEn),它利用模糊隶属函数来定义向量的相似性。在独立同分布(i.i.d.)高斯和均匀噪声、啁啾信号、MIX 过程、Rossler 方程和 Henon 映射上进行了测试。与标准 ApEn 相比,fApEn 在表征具有不同复杂度的信号时表现出更好的单调性、相对一致性和对噪声的更强鲁棒性。对实验性 EMG 信号的性能分析表明,fApEn 在肌肉疲劳发展过程中显著降低,这与 EMG 信号的平均频率(MNF)的趋势相似,而标准 ApEn 未能检测到这种变化。此外,与 EMG 的 MNF 相比,fApEn 对分析窗口长度的鲁棒性更好。结果表明,EMG 信号的 fApEn 可能成为肌肉疲劳评估的一种新的可靠方法,并可适用于其他短噪声生理信号分析。