Literature DB >> 32947265

Continuous decoding of cognitive load from electroencephalography reveals task-general and task-specific correlates.

Matthew J Boring1,2, Karl Ridgeway1, Michael Shvartsman1, Tanya R Jonker1.   

Abstract

OBJECTIVE: Algorithms to detect changes in cognitive load using non-invasive biosensors (e.g. electroencephalography (EEG)) have the potential to improve human-computer interactions by adapting systems to an individual's current information processing capacity, which may enhance performance and mitigate costly errors. However, for algorithms to provide maximal utility, they must be able to detect load across a variety of tasks and contexts. The current study aimed to build models that capture task-general EEG correlates of cognitive load, which would allow for load detection across variable task contexts. APPROACH: Sliding-window support vector machines (SVM) were trained to predict periods of high versus low cognitive load across three cognitively and perceptually distinct tasks: n-back, mental arithmetic, and multi-object tracking. To determine how well these SVMs could generalize to novel tasks, they were trained on data from two of the three tasks and evaluated on the held-out task. Additionally, to better understand task-general and task-specific correlates of cognitive load, a set of models were trained on subsets of EEG frequency features. MAIN
RESULTS: Models achieved reliable performance in classifying periods of high versus low cognitive load both within and across tasks, demonstrating their generalizability. Furthermore, continuous model outputs correlated with subtle differences in self-reported mental effort and they captured predicted changes in load within individual trials of each task. Additionally, alpha or beta frequency features achieved reliable within- and cross-task performance, suggesting that activity in these frequency bands capture task-general signatures of cognitive load. In contrast, delta and theta frequency features performed considerably worse than the full cross-task models, suggesting that delta and theta activity may be reflective of task-specific differences across cognitive load conditions. SIGNIFICANCE: EEG data contains task-general signatures of cognitive load. Sliding-window SVMs can capture these signatures and continuously detect load across multiple task contexts.

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Year:  2020        PMID: 32947265     DOI: 10.1088/1741-2552/abb9bc

Source DB:  PubMed          Journal:  J Neural Eng        ISSN: 1741-2552            Impact factor:   5.379


  4 in total

1.  Decoding different working memory states during an operation span task from prefrontal fNIRS signals.

Authors:  Ting Chen; Cui Zhao; Xingyu Pan; Junda Qu; Jing Wei; Chunlin Li; Ying Liang; Xu Zhang
Journal:  Biomed Opt Express       Date:  2021-05-18       Impact factor: 3.732

2.  Gaze dynamics are sensitive to target orienting for working memory encoding in virtual reality.

Authors:  Candace E Peacock; Ting Zhang; Brendan David-John; T Scott Murdison; Matthew J Boring; Hrvoje Benko; Tanya R Jonker
Journal:  J Vis       Date:  2022-01-04       Impact factor: 2.240

3.  The Task Pre-Configuration Is Associated With Cognitive Performance Evidence From the Brain Synchrony.

Authors:  Jie Xiang; Chanjuan Fan; Jing Wei; Ying Li; Bin Wang; Yan Niu; Lan Yang; Jiaqi Lv; Xiaohong Cui
Journal:  Front Comput Neurosci       Date:  2022-05-06       Impact factor: 2.380

4.  3D Space Layout Design of Holographic Command Cabin Information Display in Mixed Reality Environment Based on HoloLens 2.

Authors:  Wei Wang; Xuefeng Hong; Sina Dang; Ning Xu; Jue Qu
Journal:  Brain Sci       Date:  2022-07-23
  4 in total

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