一项关于脑力工作负荷的生理测量的系统评价

A Systematic Review of Physiological Measures of Mental Workload.

机构信息

State Key Laboratory of Nuclear Power Safety Monitoring Technology and Equipment, China Nuclear Power Engineering Co., Ltd., Shenzhen 518172, China.

Institute of Human Factors and Ergonomics, College of Mechatronics and Control Engineering, Shenzhen University, Shenzhen 518060, China.

出版信息

Int J Environ Res Public Health. 2019 Jul 30;16(15):2716. doi: 10.3390/ijerph16152716.

Abstract

Mental workload (MWL) can affect human performance and is considered critical in the design and evaluation of complex human-machine systems. While numerous physiological measures are used to assess MWL, there appears no consensus on their validity as effective agents of MWL. This study was conducted to provide a comprehensive understanding of the use of physiological measures of MWL and to synthesize empirical evidence on the validity of the measures to discriminate changes in MWL. A systematical literature search was conducted with four electronic databases for empirical studies measuring MWL with physiological measures. Ninety-one studies were included for analysis. We identified 78 physiological measures, which were distributed in cardiovascular, eye movement, electroencephalogram (EEG), respiration, electromyogram (EMG) and skin categories. Cardiovascular, eye movement and EEG measures were the most widely used across varied research domains, with 76%, 66%, and 71% of times reported a significant association with MWL, respectively. While most physiological measures were found to be able to discriminate changes in MWL, they were not universally valid in all task scenarios. The use of physiological measures and their validity for MWL assessment also varied across different research domains. Our study offers insights into the understanding and selection of appropriate physiological measures for MWL assessment in varied human-machine systems.

摘要

精神工作负荷(MWL)会影响人类的表现,并且在复杂人机系统的设计和评估中被认为是至关重要的。虽然有许多生理指标被用于评估 MWL,但它们作为 MWL 有效指标的有效性似乎尚未达成共识。本研究旨在提供对 MWL 生理指标使用的全面理解,并综合关于这些指标区分 MWL 变化的有效性的实证证据。我们对四个电子数据库进行了系统的文献检索,以查找使用生理指标测量 MWL 的实证研究。共有 91 项研究被纳入分析。我们确定了 78 种生理指标,这些指标分布在心血管、眼动、脑电图(EEG)、呼吸、肌电图(EMG)和皮肤等类别中。心血管、眼动和 EEG 指标在不同的研究领域中被广泛使用,分别有 76%、66%和 71%的报告显示与 MWL 有显著关联。虽然大多数生理指标被发现能够区分 MWL 的变化,但它们在所有任务场景中并非普遍有效。生理指标的使用及其在 MWL 评估中的有效性也因不同的研究领域而异。我们的研究为理解和选择在不同人机系统中评估 MWL 的适当生理指标提供了深入了解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3fd4/6696017/efc2dcd3da84/ijerph-16-02716-g001.jpg

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