Institute of Biomedical Technologies, National Research Council, Via Fratelli Cervi 93, 20054 Segrate, Italy.
Department of Molecular Medicine, University of Pavia, Via Forlanini 6, 27100 Pavia, Italy.
Sensors (Basel). 2023 Jan 26;23(3):1367. doi: 10.3390/s23031367.
Mental workload (MWL) is a relevant construct involved in all cognitively demanding activities, and its assessment is an important goal in many research fields. This paper aims at evaluating the reproducibility and sensitivity of MWL assessment from EEG signals considering the effects of different electrode configurations and pre-processing pipelines (PPPs).
Thirteen young healthy adults were enrolled and were asked to perform 45 min of Simon's task to elicit a cognitive demand. EEG data were collected using a 32-channel system with different electrode configurations (fronto-parietal; Fz and Pz; Cz) and analyzed using different PPPs, from the simplest bandpass filtering to the combination of filtering, Artifact Subspace Reconstruction (ASR) and Independent Component Analysis (ICA). The reproducibility of MWL indexes estimation and the sensitivity of their changes were assessed using Intraclass Correlation Coefficient and statistical analysis.
MWL assessed with different PPPs showed reliability ranging from good to very good in most of the electrode configurations (average consistency > 0.87 and average absolute agreement > 0.92). Larger fronto-parietal electrode configurations, albeit being more affected by the choice of PPPs, provide better sensitivity in the detection of MWL changes if compared to a single-electrode configuration (18 vs. 10 statistically significant differences detected, respectively).
The most complex PPPs have been proven to ensure good reliability (>0.90) and sensitivity in all experimental conditions. In conclusion, we propose to use at least a two-electrode configuration (Fz and Pz) and complex PPPs including at least the ICA algorithm (even better including ASR) to mitigate artifacts and obtain reliable and sensitive MWL assessment during cognitive tasks.
精神工作负荷(MWL)是与所有认知要求高的活动相关的重要构建,其评估是许多研究领域的重要目标。本文旨在评估考虑不同电极配置和预处理管道(PPP)的 EEG 信号评估 MWL 的再现性和敏感性。
招募了 13 名年轻健康的成年人,并要求他们执行 45 分钟的 Simon 任务以引起认知需求。使用具有不同电极配置(额顶;Fz 和 Pz;Cz)的 32 通道系统收集 EEG 数据,并使用不同的 PPP 进行分析,从最简单的带通滤波到滤波、人工制品子空间重建(ASR)和独立成分分析(ICA)的组合。使用组内相关系数和统计分析评估 MWL 指标估计的再现性及其变化的敏感性。
使用不同 PPP 评估的 MWL 显示出大多数电极配置(平均一致性>0.87,平均绝对一致性>0.92)的可靠性从良好到非常好。尽管更大的额顶电极配置受 PPP 选择的影响更大,但与单电极配置相比,在检测 MWL 变化方面提供了更好的敏感性(分别检测到 18 个与 10 个具有统计学意义的差异)。
最复杂的 PPP 已被证明可以在所有实验条件下确保良好的可靠性(>0.90)和敏感性。总之,我们建议至少使用两个电极配置(Fz 和 Pz)和至少包括 ICA 算法的复杂 PPP(最好包括 ASR),以减轻伪影并在认知任务期间获得可靠和敏感的 MWL 评估。