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首页> 外文期刊>International journal of medical informatics >Detection of mental fatigue state with wearable ECG devices
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Detection of mental fatigue state with wearable ECG devices

机译:使用可穿戴式ECG设备检测精神疲劳状态

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摘要

Overwork-related disorders, such as cerebrovascular/cardiovascular diseases (CCVD) and mental disorders due to overwork, are a major occupational and public health issue worldwide, particularly in East Asian countries. Since wearable smart devices are inexpensive, convenient, popular and widely available today, we were interested in investigating the possibility of using wearable smart electrocardiogram (ECG) devices to detect the mental fatigue state. In total, 35 healthy participants were recruited from a public university in East China. Throughout the entire experiment, each participant wore a wearable device that was further linked to a smartphone to upload the data based on Bluetooth transmission. To manipulate the fatigue state, each participant was asked to finish a quiz, which lasted for approximately 80 min, with 30 logical referential and computing problems and 25 memory tests. Eight heart rate variability (HRV) indicators namely NN. mean (mean of normal to normal interval), rMSSD (root mean square of successive differences), PNN50 (the proportion of NN50 divided by total number of NNs), TP (total spectral power), HF (high frequency from 0.15 Hz to 0.4 Hz), LF (low frequency from 0.04 Hz to 0.15 Hz), VLF (very low frequency from 0.0033 Hz to 0.04 Hz) and the LF/HF ratio were collected at intervals of 5 min throughout the entire experiment. After the feature selection was performed, six indicators remained for further analysis, which were the NN. mean, rMSSD, PNN50, TP, LF, and VLF. Four algorithms, support vector machine (SVM), K-nearest neighbor (KNN), naive Bayes (NB), and logistic regression (LR), were used to build classifiers that automatically detected the fatigue state. The best performance was achieved by KNN, which had a CV accuracy of 75.5%. The NN. mean, PNN50, TP and LF were the most important HRV indicators for mental fatigue detection. KNN performed the best among the four algorithms and had an average CV accuracy of 65.37% for all of the possible feature combinations.
机译:与劳累有关的疾病,例如脑血管/心血管疾病(CC​​VD)和因劳累导致的精神障碍,是全世界尤其是东亚国家的主要职业和公共卫生问题。由于可穿戴智能设备价格便宜,方便,流行并且在当今已广泛使用,因此我们有兴趣研究使用可穿戴智能心电图(ECG)设备检测精神疲劳状态的可能性。总共从华东一所公立大学招募了35名健康参与者。在整个实验过程中,每个参与者都穿戴了可穿戴设备,该设备可进一步链接到智能手机,以基于蓝牙传输上传数据。为了操纵疲劳状态,要求每个参与者完成一个测验,测验持续约80分钟,涉及30个逻辑参考和计算问题以及25个记忆测试。八个心率变异性(HRV)指标即NN。平均值(正常至正常间隔的平均值),rMSSD(连续差异的均方根),PNN50(NN50的比例除以NN总数),TP(总频谱功率),HF(从0.15 Hz到0.4的高频)在整个实验过程中,每隔5分钟收集一次LF,LF(低频从0.04 Hz到0.15 Hz),VLF(低频从0.0033 Hz到0.04 Hz)和LF / HF比。在进行特征选择之后,剩下六个指标需要进一步分析,即NN。平均值,rMSSD,PNN50,TP,LF和VLF。支持向量机(SVM),K近邻(KNN),朴素贝叶斯(NB)和逻辑回归(LR)这四种算法用于构建可自动检测疲劳状态的分类器。 KNN实现了最佳性能,其CV精度为75.5%。 NN。平均而言,PNN50,TP和LF是检测精神疲劳的最重要的HRV指标。 KNN在四种算法中表现最好,所有可能特征组合的CV平均准确度为65.37%。

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