Pourmohammadi Sara, Maleki Ali
Biomedical Engineering Department, Semnan University, Semnan, Iran.
Comput Methods Programs Biomed. 2020 Sep;193:105482. doi: 10.1016/j.cmpb.2020.105482. Epub 2020 May 5.
In recent years, stress and mental health have been considered as important worldwide concerns. Stress detection using physiological signals such as electrocardiogram (ECG), skin conductance (SC), electromyogram (EMG) and electroencephalogram (EEG) is a traditional approach. However, the effect of stress on the EMG signal of different muscles and the efficacy of combination of the EMG and other biological signals for stress detection have not been taken into account yet. This paper presents a comprehensive review of the EMG signal of the right and left trapezius and right and left erector spinae muscles for multi-level stress recognition. Also, the ECG signal was employed to evaluate the efficacy of EMG signals for stress detection.
Both EMG and ECG signals were acquired simultaneously from 34 healthy students (23 females and 11 males, aged 20-37 years). Mental arithmetic, Stroop color-word test, time pressure, and stressful environment were employed to induce stress in the laboratory.
The accuracies of stress recognition in two, three and four levels were 100%, 97.6%, and 96.2%, respectively, obtained from the distinct combination of feature selection and machine learning algorithms.
The comparison of stress detection accuracies resulted from EMG and ECG indicators demonstrated the strong ability and the effectiveness of EMG signal for multi-level stress detection.
近年来,压力和心理健康已成为全球重要的关注点。利用诸如心电图(ECG)、皮肤电导率(SC)、肌电图(EMG)和脑电图(EEG)等生理信号进行压力检测是一种传统方法。然而,压力对不同肌肉的肌电信号的影响以及肌电信号与其他生物信号组合用于压力检测的功效尚未得到考虑。本文对右、左斜方肌以及右、左竖脊肌的肌电信号进行了全面综述,以实现多层次压力识别。此外,还利用心电图信号评估肌电信号用于压力检测的功效。
同时从34名健康学生(23名女性和11名男性,年龄在20 - 37岁之间)采集肌电和心电图信号。在实验室中通过心算、斯特鲁普色词测试、时间压力和压力环境来诱导压力。
通过特征选择和机器学习算法的不同组合,在两个、三个和四个层次上的压力识别准确率分别为100%、97.6%和96.2%。
肌电和心电图指标的压力检测准确率比较表明,肌电信号在多层次压力检测方面具有强大能力和有效性。