{"title":"探讨大学生脑电特征与N-back任务难度与NASA-TLX得分的关系","authors":"Şeniz Harputlu Aksu, Erman Çakıt, M. Dağdeviren","doi":"10.54941/ahfe1002828","DOIUrl":null,"url":null,"abstract":"For safe and efficient human-machine interactions, the amount of mental\n resources required by the task should not exceed available capacity of the\n person. Therefore, determination of mental workload has critical importance\n in the fields of human factors and ergonomics. Because of its temporal\n dependability, EEG data has become widely used in assessing and measuring\n mental workload in recent years. Accordingly, motivation of the study was to\n examine the role of brain-related data in discriminating mental workload\n levels. The current paper presented a statistically analysis of whether\n pre-determined task difficulty levels led to the intended mental workload\n manipulation. It was aimed to investigate the relationship between EEG\n features, task difficulty levels, subjective self-assessment (NASA-TLX)\n scores and performance measures (accuracy rate and latency). N-back tasks\n have been commonly used in the literature. In this study, n-back memory\n tests were performed at four different difficulty levels. As the number of n\n increases, so does the difficulty of the task. Tests were conducted on 25\n (13 male, 12 female) healthy undergraduate students. The statistical\n analysis was performed for two sets of data. The first dataset, which\n included 300 session-based samples, was conducted in order to examine the\n possible relationship between task difficulty levels, performance criteria,\n and subjective assessments of mental workload. The second dataset, on the\n other hand, was analyzed on the basis of stimulus and consisted of seventy\n EEG features (5 frequency band power for 14 channels) corresponding to\n recording samples. The categorical variable reflecting the difficulty level\n of n-back memory was selected as dependent variable. It was demonstrated how\n the band power varies in various regions of the brain depending on the\n degree of task difficulty. Significant differences between the genders were\n noted in terms of all variables considered. As the task difficulty level\n increased, both the workload perceived by the participants (rho > 0.7, p\n < 0.01) and the latency in response time (rho > 0.6, p < 0.01)\n significantly increased. Otherwise, the correct answer rate decreased as the\n task became more difficult (rho > 0.6, p < 0.01). The number of hits\n (correct answers by detecting the match) was found to be more correlated\n with the task difficulty level compared to number of correct rejects\n (correct answers by detecting the non-match). The workload and its\n sub-dimensions perceived by the participants and performance variables are\n also related to each other. In tests with longer response times,\n participants reported that they felt more workload (rho > 0.6, p <\n 0.01). Conversely, the number of correct answers decreased (rho > 0.6, p\n < 0.01). It was also found that there was a significant difference\n between all difficulty levels compared in pairs, in terms of almost all\n variables (p < 0.001). There was no significant difference between men\n and women in terms of performance measures. However, men were found to\n report higher NASA-TLX scores than women, especially on difficult tasks. As\n a result, significant relationships between data obtained through different\n methods encourage the use of these methods together for reliable analysis in\n future studies.","PeriodicalId":269162,"journal":{"name":"Proceedings of the 6th International Conference on Intelligent Human Systems Integration (IHSI 2023) Integrating People and Intelligent Systems, February 22–24, 2023, Venice, Italy","volume":"40 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"Investigating the relationship between EEG features and N-back task\\n difficulty levels with NASA-TLX scores among undergraduate students\",\"authors\":\"Şeniz Harputlu Aksu, Erman Çakıt, M. 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N-back tasks\\n have been commonly used in the literature. In this study, n-back memory\\n tests were performed at four different difficulty levels. As the number of n\\n increases, so does the difficulty of the task. Tests were conducted on 25\\n (13 male, 12 female) healthy undergraduate students. The statistical\\n analysis was performed for two sets of data. The first dataset, which\\n included 300 session-based samples, was conducted in order to examine the\\n possible relationship between task difficulty levels, performance criteria,\\n and subjective assessments of mental workload. The second dataset, on the\\n other hand, was analyzed on the basis of stimulus and consisted of seventy\\n EEG features (5 frequency band power for 14 channels) corresponding to\\n recording samples. The categorical variable reflecting the difficulty level\\n of n-back memory was selected as dependent variable. It was demonstrated how\\n the band power varies in various regions of the brain depending on the\\n degree of task difficulty. Significant differences between the genders were\\n noted in terms of all variables considered. As the task difficulty level\\n increased, both the workload perceived by the participants (rho > 0.7, p\\n < 0.01) and the latency in response time (rho > 0.6, p < 0.01)\\n significantly increased. Otherwise, the correct answer rate decreased as the\\n task became more difficult (rho > 0.6, p < 0.01). The number of hits\\n (correct answers by detecting the match) was found to be more correlated\\n with the task difficulty level compared to number of correct rejects\\n (correct answers by detecting the non-match). The workload and its\\n sub-dimensions perceived by the participants and performance variables are\\n also related to each other. In tests with longer response times,\\n participants reported that they felt more workload (rho > 0.6, p <\\n 0.01). 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引用次数: 1
摘要
为了安全和有效的人机交互,任务所需的脑力资源不应超过人的可用能力。因此,心理负荷的确定在人因学和工效学领域具有至关重要的意义。由于脑电数据具有时间可靠性,近年来被广泛应用于心理负荷的评估和测量。因此,本研究的动机是检验大脑相关数据在区分精神负荷水平中的作用。本研究对预先设定的任务难度水平是否会导致预期的心理工作量操纵进行了统计分析。目的探讨脑电特征、任务难度水平、主观自我评价(NASA-TLX)得分与表现指标(正确率和潜伏期)之间的关系。N-back任务在文献中被广泛使用。在这项研究中,n-back记忆测试在四个不同的难度水平上进行。随着n的增加,任务的难度也会增加。对25名健康大学生(男13名,女12名)进行了测试。对两组数据进行统计分析。第一个数据集包括300个基于会话的样本,目的是研究任务难度水平、表现标准和主观心理工作量评估之间可能存在的关系。第二个数据集以刺激为基础进行分析,由记录样本对应的70个EEG特征(5个频带功率14个通道)组成。选取反映n-back记忆难度的分类变量作为因变量。实验证明了大脑不同区域的波段功率是如何随着任务难度的不同而变化的。就所有考虑的变量而言,性别之间存在显著差异。随着任务难度的增加,被试感知到的工作量(rho > 0.7, p < 0.01)和反应时间延迟(rho > 0.6, p < 0.01)均显著增加。否则,正确率会随着任务难度的增加而降低(rho > 0.6, p < 0.01)。与被拒绝的次数(通过检测不匹配的正确答案)相比,被击中的次数(通过检测不匹配的正确答案)与任务难度水平的相关性更大。参与者感知的工作负荷及其子维度与绩效变量之间也存在一定的相关性。在反应时间较长的测试中,参与者报告他们感到更多的工作量(rho > 0.6, p0.6, p < 0.01)。我们还发现,就几乎所有变量而言,所有难度级别之间存在显著差异(p < 0.001)。在绩效评估方面,男性和女性之间没有显著差异。然而,男性在NASA-TLX测试中的得分却高于女性,尤其是在处理困难任务时。因此,通过不同方法获得的数据之间的显著关系鼓励在未来的研究中共同使用这些方法进行可靠的分析。
Investigating the relationship between EEG features and N-back task
difficulty levels with NASA-TLX scores among undergraduate students
For safe and efficient human-machine interactions, the amount of mental
resources required by the task should not exceed available capacity of the
person. Therefore, determination of mental workload has critical importance
in the fields of human factors and ergonomics. Because of its temporal
dependability, EEG data has become widely used in assessing and measuring
mental workload in recent years. Accordingly, motivation of the study was to
examine the role of brain-related data in discriminating mental workload
levels. The current paper presented a statistically analysis of whether
pre-determined task difficulty levels led to the intended mental workload
manipulation. It was aimed to investigate the relationship between EEG
features, task difficulty levels, subjective self-assessment (NASA-TLX)
scores and performance measures (accuracy rate and latency). N-back tasks
have been commonly used in the literature. In this study, n-back memory
tests were performed at four different difficulty levels. As the number of n
increases, so does the difficulty of the task. Tests were conducted on 25
(13 male, 12 female) healthy undergraduate students. The statistical
analysis was performed for two sets of data. The first dataset, which
included 300 session-based samples, was conducted in order to examine the
possible relationship between task difficulty levels, performance criteria,
and subjective assessments of mental workload. The second dataset, on the
other hand, was analyzed on the basis of stimulus and consisted of seventy
EEG features (5 frequency band power for 14 channels) corresponding to
recording samples. The categorical variable reflecting the difficulty level
of n-back memory was selected as dependent variable. It was demonstrated how
the band power varies in various regions of the brain depending on the
degree of task difficulty. Significant differences between the genders were
noted in terms of all variables considered. As the task difficulty level
increased, both the workload perceived by the participants (rho > 0.7, p
< 0.01) and the latency in response time (rho > 0.6, p < 0.01)
significantly increased. Otherwise, the correct answer rate decreased as the
task became more difficult (rho > 0.6, p < 0.01). The number of hits
(correct answers by detecting the match) was found to be more correlated
with the task difficulty level compared to number of correct rejects
(correct answers by detecting the non-match). The workload and its
sub-dimensions perceived by the participants and performance variables are
also related to each other. In tests with longer response times,
participants reported that they felt more workload (rho > 0.6, p <
0.01). Conversely, the number of correct answers decreased (rho > 0.6, p
< 0.01). It was also found that there was a significant difference
between all difficulty levels compared in pairs, in terms of almost all
variables (p < 0.001). There was no significant difference between men
and women in terms of performance measures. However, men were found to
report higher NASA-TLX scores than women, especially on difficult tasks. As
a result, significant relationships between data obtained through different
methods encourage the use of these methods together for reliable analysis in
future studies.