Ionita Silviu, Coman Daniela Andreea
Department of Electronics, Computers and Electrical Engineering, National University of Science and Technology POLITEHNICA Bucharest, 110040 Pitesti, Arges, Romania.
Ecological College 'Prof. Univ. Dr. Alexandru Ionescu', Intrarea Teilor, No 4, 110029 Pitesti, Arges, Romania.
Sensors (Basel). 2025 Jun 23;25(13):3902. doi: 10.3390/s25133902.
The way in which EEG signals reflect mental tasks that vary in duration and intensity is a key topic in the investigation of neural processes concerning neuroscience in general and BCI technologies in particular. More recent research has reinforced historical studies that highlighted theta band activity in relation to cognitive performance. In our study, we propose a comparative analysis of experiments with cognitive load imposed by arithmetic calculations performed mentally. The analysis of EEG signals captured with 64 electrodes is performed on low theta components extracted by narrowband filtering. As main signal discriminators, we introduced an original measure inspired by the integral of the curve of a function-specifically the signal function over the period corresponding to the filter band. Another measure of the signal considered as a discriminator is energy. In this research, it was used just for model comparison. A cognitive load detection algorithm based on these signal metrics was developed and tested on original experimental data. The results present EEG activity during mental tasks and show the behavioral pattern across 64 channels. The most precise and specific EEG channels for discriminating cognitive tasks induced by arithmetic tests are also identified.
脑电图(EEG)信号反映持续时间和强度各异的心理任务的方式,是神经科学领域尤其是脑机接口(BCI)技术中神经过程研究的关键课题。最近的研究强化了以往的研究,这些研究强调了与认知表现相关的θ波段活动。在我们的研究中,我们提议对通过心算施加认知负荷的实验进行比较分析。对用64个电极采集的EEG信号的分析,是在通过窄带滤波提取的低θ成分上进行的。作为主要的信号判别指标,我们引入了一种受函数曲线积分启发的原始测量方法——具体而言,是在对应于滤波器频段的时间段上对信号函数进行积分。另一个被视为判别的信号测量指标是能量。在本研究中,它仅用于模型比较。基于这些信号指标开发了一种认知负荷检测算法,并在原始实验数据上进行了测试。结果展示了心理任务期间的EEG活动,并显示了64个通道上的行为模式。还确定了用于区分算术测试诱发的认知任务的最精确和特异EEG通道。