Zhao Cuilian, Ma Shuangchi, Liu Yexiao
Shanghai Key Lab of Intelligent Manufacturing and Robotics, School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444,
Shanghai Key Lab of Intelligent Manufacturing and Robotics, School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444, P.R.China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2018 Dec 25;35(6):852-859. doi: 10.7507/1001-5515.201804026.
The diaphragm is the main respiratory muscle in the body. The onset detection of the surface diaphragmatic electromyography (sEMGdi) can be used in the respiratory rehabilitation training of the hemiparetic stroke patients, but the existence of electrocardiography (ECG) increases the difficulty of onset detection. Therefore, a method based on sample entropy (SampEn) and individualized threshold, referred to as SampEn method, was proposed to detect onset of muscle activity in this paper, which involved the extraction of SampEn features, the optimization of the SampEn parameters and , the selection of individualized threshold and the establishment of the judgment conditions. In this paper, three methods were used to compare onset detection accuracy with the SampEn method, which contained root mean square (RMS) with wavelet transform (WT), Teager-Kaiser energy operator (TKE) with wavelet transform and TKE without wavelet transform, respectively. sEMGdi signals of 12 healthy subjects in 2 different breathing ways were collected for signal synthesis and methods detection. The cumulative sum of the absolute value of error was used as an judgement value to evaluate the accuracy of the four methods. The results show that SampEn method can achieve higher and more stable detection precision than the other three methods, which is an onset detection method that can adapt to individual differences and achieve high detection accuracy without ECG denoising, providing a basis for sEMGdi based respiratory rehabilitation training and real time interaction.
膈肌是人体主要的呼吸肌。表面膈肌肌电图(sEMGdi)的起始点检测可用于偏瘫中风患者的呼吸康复训练,但心电图(ECG)的存在增加了起始点检测的难度。因此,本文提出了一种基于样本熵(SampEn)和个性化阈值的方法(称为SampEn方法)来检测肌肉活动的起始点,该方法包括SampEn特征提取、SampEn参数优化以及个性化阈值选择和判断条件的建立。本文采用三种方法与SampEn方法比较起始点检测准确率,分别是带小波变换(WT)的均方根(RMS)、带小波变换的Teager-Kaiser能量算子(TKE)和不带小波变换的TKE。采集了12名健康受试者在2种不同呼吸方式下的sEMGdi信号用于信号合成和方法检测。将误差绝对值的累积和用作判断值来评估这四种方法的准确率。结果表明,SampEn方法比其他三种方法能实现更高且更稳定的检测精度,是一种无需进行ECG去噪就能适应个体差异并实现高检测准确率的起始点检测方法,为基于sEMGdi的呼吸康复训练和实时交互提供了依据。