Experimental Clinical Psychology, Department of Psychology, Julius-Maximilians-University of Würzburg, 97070 Würzburg, Germany.
Applied Neurocognitive Systems, Fraunhofer Institute for Industrial Engineering IAO, 70569 Stuttgart, Germany.
Sensors (Basel). 2023 Jul 20;23(14):6546. doi: 10.3390/s23146546.
Humans' performance varies due to the mental resources that are available to successfully pursue a task. To monitor users' current cognitive resources in naturalistic scenarios, it is essential to not only measure demands induced by the task itself but also consider situational and environmental influences. We conducted a multimodal study with 18 participants (nine female, M = 25.9 with SD = 3.8 years). In this study, we recorded respiratory, ocular, cardiac, and brain activity using functional near-infrared spectroscopy (fNIRS) while participants performed an adapted version of the warship commander task with concurrent emotional speech distraction. We tested the feasibility of decoding the experienced mental effort with a multimodal machine learning architecture. The architecture comprised feature engineering, model optimisation, and model selection to combine multimodal measurements in a cross-subject classification. Our approach reduces possible overfitting and reliably distinguishes two different levels of mental effort. These findings contribute to the prediction of different states of mental effort and pave the way toward generalised state monitoring across individuals in realistic applications.
由于人类在成功完成任务时可利用的心理资源不同,因此其表现也各不相同。要在自然场景中监测用户当前的认知资源,不仅要衡量任务本身带来的需求,还要考虑情境和环境的影响。我们对 18 名参与者(9 名女性,平均年龄 25.9 岁,标准差为 3.8 岁)进行了一项多模态研究。在这项研究中,我们使用功能近红外光谱(fNIRS)记录了呼吸、眼部、心脏和大脑活动,同时参与者在执行带有情绪语音干扰的改良版军舰指挥官任务时。我们测试了使用多模态机器学习架构解码所经历的心理努力的可行性。该架构包括特征工程、模型优化和模型选择,以在跨主题分类中结合多模态测量。我们的方法减少了可能的过拟合,并可靠地区分了两种不同水平的心理努力。这些发现有助于预测不同的心理努力状态,并为在现实应用中跨个体进行通用状态监测铺平了道路。