Developing cognitive workload and performance evaluation models using functional brain network analysis.

IF 4.1 Q2 GERIATRICS & GERONTOLOGY
Saeed Shadpour, Ambreen Shafqat, Serkan Toy, Zhe Jing, Kristopher Attwood, Zahra Moussavi, Somayeh B Shafiei
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Abstract

Cognition, defined as the ability to learn, remember, sustain attention, make decisions, and solve problems, is essential in daily activities and in learning new skills. The purpose of this study was to develop cognitive workload and performance evaluation models using features that were extracted from Electroencephalogram (EEG) data through functional brain network and spectral analyses. The EEG data were recorded from 124 brain areas of 26 healthy participants conducting two cognitive tasks on a robot simulator. The functional brain network and Power Spectral Density features were extracted from EEG data using coherence and spectral analyses, respectively. Participants reported their perceived cognitive workload using the SURG-TLX questionnaire after each exercise, and the simulator generated actual performance scores. The extracted features, actual performance scores, and subjectively assessed cognitive workload values were used to develop linear models for evaluating performance and cognitive workload. Furthermore, the Pearson correlation was used to find the correlation between participants' age, performance, and cognitive workload. The findings demonstrated that combined EEG features retrieved from spectral analysis and functional brain networks can be used to evaluate cognitive workload and performance. The cognitive workload in conducting only Matchboard level 3, which is more challenging than Matchboard level 2, was correlated with age (0.54, p-value = 0.01). This finding may suggest playing more challenging computer games are more helpful in identifying changes in cognitive workload caused by aging. The findings could open the door for a new era of objective evaluation and monitoring of cognitive workload and performance.

Abstract Image

Abstract Image

使用功能性脑网络分析开发认知工作量和绩效评估模型。
认知,被定义为学习、记忆、保持注意力、做出决策和解决问题的能力,在日常活动和学习新技能中至关重要。本研究的目的是利用通过功能性脑网络和频谱分析从脑电图(EEG)数据中提取的特征,开发认知工作量和绩效评估模型。脑电图数据是从26名健康参与者的124个大脑区域记录的,这些参与者在机器人模拟器上进行两项认知任务。分别使用相干分析和频谱分析从EEG数据中提取功能性脑网络和功率谱密度特征。参与者在每次锻炼后使用SURG-TLX问卷报告他们感知的认知工作量,模拟器生成实际表现分数。提取的特征、实际表现得分和主观评估的认知工作量值用于开发评估表现和认知工作量的线性模型。此外,Pearson相关性用于发现参与者的年龄、表现和认知工作量之间的相关性。研究结果表明,从频谱分析和功能性脑网络中提取的脑电特征可以用于评估认知工作量和表现。只进行3级火柴板比2级火柴板更具挑战性的认知工作量与年龄相关(0.54,p值 = 0.01)。这一发现可能表明,玩更具挑战性的电脑游戏更有助于识别衰老引起的认知工作量的变化。这些发现可能为客观评估和监测认知工作量和表现的新时代打开大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.90
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