Gurel Nil Z, Jung Hewon, Hersek Sinan, Inan Omer T
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA, 30322.
IEEE Sens J. 2019 Oct 1;19(19):8522-8531. doi: 10.1109/jsen.2018.2872651. Epub 2018 Oct 1.
Human-computer interaction (HCI) technology, and the automatic classification of a person's mental state, are of interest to multiple industries. In this work, the fusion of sensing modalities that monitor the oxygenation of the human prefrontal cortex (PFC) and cardiovascular physiology was evaluated to differentiate between rest, mental arithmetic and N-back memory tasks. A flexible headband to measure near-infrared spectroscopy (NIRS) for quantifying PFC oxygenation, and forehead photoplethysmography (PPG) for assessing peripheral cardiovascular activity was designed. Physiological signals such as the electrocardiogram (ECG) and seismocardiogram (SCG) were collected, along with the measurements obtained using the headband. The setup was tested and validated with a total of 16 human subjects performing a series of arithmetic and N-back memory tasks. Features extracted were related to cardiac and peripheral sympathetic activity, vasomotor tone, pulse wave propagation, and oxygenation. Machine learning techniques were utilized to classify rest, arithmetic, and N-back tasks, using leave-one-subject-out cross validation. Macro-averaged accuracy of 85%, precision of 84%, recall rate of 83%, and F1 score of 80% were obtained from the classification of the three states. Statistical analyses on the subject-based results demonstrate that the fusion of NIRS and peripheral cardiovascular sensing significantly improves the accuracy, precision, recall, and F1 scores, compared to using NIRS sensing alone. Moreover, the fusion significantly improves the precision compared to peripheral cardiovascular sensing alone. The results of this work can be used in the future to design a multi-modal wearable sensing system for classifying mental state for applications such as acute stress detection.
人机交互(HCI)技术以及对人的心理状态进行自动分类,受到了多个行业的关注。在这项工作中,对监测人类前额叶皮层(PFC)氧合和心血管生理的传感模式融合进行了评估,以区分休息、心算和n-back记忆任务。设计了一种灵活的头带,用于测量近红外光谱(NIRS)以量化PFC氧合,以及用于评估外周心血管活动的前额光电容积脉搏波描记法(PPG)。收集了诸如心电图(ECG)和心震图(SCG)等生理信号,以及使用头带获得的测量数据。该装置在总共16名人类受试者身上进行了测试和验证,这些受试者执行了一系列算术和n-back记忆任务。提取的特征与心脏和外周交感神经活动、血管舒缩张力、脉搏波传播和氧合有关。利用机器学习技术,采用留一法交叉验证对休息、算术和n-back任务进行分类。三种状态分类的宏观平均准确率为85%,精确率为84%,召回率为83%,F1分数为80%。基于受试者结果的统计分析表明,与单独使用NIRS传感相比,NIRS和外周心血管传感的融合显著提高了准确率、精确率、召回率和F1分数。此外,与单独使用外周心血管传感相比,融合显著提高了精确率。这项工作的结果未来可用于设计一种多模态可穿戴传感系统,用于对心理状态进行分类,以应用于急性应激检测等领域。