Xu Yanting, Yang Zhengyuan, Li Gang, Tian Jinghong, Jiang Yonghua
Key Laboratory of Intelligent Operation and Maintenance Technology and Equipment for Urban Rail Transit of Zhejiang Province, Jinhua 321004, China.
College of Engineering, Zhejiang Normal University, Jinhua 321004, China.
Healthcare (Basel). 2021 Oct 27;9(11):1453. doi: 10.3390/healthcare9111453.
Brain fatigue is often associated with inattention, mental retardation, prolonged reaction time, decreased work efficiency, increased error rate, and other problems. In addition to the accumulation of fatigue, brain fatigue has become one of the important factors that harm our mental health. Therefore, it is of great significance to explore the practical and accurate brain fatigue detection method, especially for quantitative brain fatigue evaluation. In this study, a biomedical signal of ballistocardiogram (BCG), which does not require direct contact with human body, was collected by optical fiber sensor cushion during the whole process of cognitive tasks for 20 subjects. The heart rate variability (HRV) was calculated based on BCG signal. Machine learning classification model was built based on random forest to quantify and recognize brain fatigue. The results showed that: Firstly, the heart rate obtained from BCG signal was consistent with the result displayed by the medical equipment, and the absolute difference was less than 3 beats/min, and the mean error is 1.30 ± 0.81 beats/min; secondly, the random forest classifier for brain fatigue evaluation based on HRV can effectively identify the state of brain fatigue, with an accuracy rate of 96.54%; finally, the correlation between HRV and the accuracy was analyzed, and the correlation coefficient was as high as 0.98, which indicates that the accuracy can be used as an indicator for quantitative brain fatigue evaluation during the whole task. The results suggested that the brain fatigue quantification evaluation method based on the optical fiber sensor cushion and machine learning can carry out real-time brain fatigue detection on the human brain without disturbance, reduce the risk of human accidents in human-machine interaction systems, and improve mental health among the office and driving personnel.
脑疲劳常伴有注意力不集中、智力迟钝、反应时间延长、工作效率下降、错误率增加等问题。除了疲劳的积累,脑疲劳已成为危害我们心理健康的重要因素之一。因此,探索切实可行且准确的脑疲劳检测方法具有重要意义,尤其是对于脑疲劳的定量评估。在本研究中,20名受试者在认知任务全过程中,通过光纤传感器坐垫采集了无需直接接触人体的心冲击图(BCG)生物医学信号。基于BCG信号计算心率变异性(HRV)。基于随机森林构建机器学习分类模型,以量化和识别脑疲劳。结果表明:其一,BCG信号获取的心率与医疗设备显示结果一致,绝对差值小于3次/分钟,平均误差为1.30±0.81次/分钟;其二,基于HRV的脑疲劳评估随机森林分类器能够有效识别脑疲劳状态,准确率为96.54%;其三,分析了HRV与准确率之间的相关性,相关系数高达0.98,这表明该准确率可作为整个任务过程中脑疲劳定量评估的指标。结果提示,基于光纤传感器坐垫和机器学习的脑疲劳量化评估方法能够在无干扰的情况下对人脑进行实时脑疲劳检测,降低人机交互系统中的人为事故风险,并改善办公人员和驾驶人员的心理健康。