Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach

Neuroimaging research frequently demonstrates load-dependent activation in prefrontal and parietal cortex during working memory tasks such as the N-back. Most of this work has been conducted in fMRI, but functional near-infrared spectroscopy (fNIRS) is gaining traction as a less invasive and more fl...

Full description

Bibliographic Details
Main Authors: Kimberly L. Meidenbauer, Kyoung Whan Choe, Carlos Cardenas-Iniguez, Theodore J. Huppert, Marc G. Berman
Format: Article
Language:English
Published: Elsevier 2021-04-01
Series:NeuroImage
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1053811921000720
id doaj-892608cb280541b9911baf5cdba52f4f
record_format Article
spelling doaj-892608cb280541b9911baf5cdba52f4f2021-04-12T04:21:13ZengElsevierNeuroImage1095-95722021-04-01230117795Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approachKimberly L. Meidenbauer0Kyoung Whan Choe1Carlos Cardenas-Iniguez2Theodore J. Huppert3Marc G. Berman4Environmental Neuroscience Lab, Department of Psychology, The University of Chicago, 5848 S University Avenue, Chicago, IL 60637, United States; Corresponding authors.Environmental Neuroscience Lab, Department of Psychology, The University of Chicago, 5848 S University Avenue, Chicago, IL 60637, United States; Mansueto Institute for Urban Innovation, The University of Chicago, United StatesEnvironmental Neuroscience Lab, Department of Psychology, The University of Chicago, 5848 S University Avenue, Chicago, IL 60637, United StatesDepartment of Electrical and Computer Engineering, The University of Pittsburgh, United StatesEnvironmental Neuroscience Lab, Department of Psychology, The University of Chicago, 5848 S University Avenue, Chicago, IL 60637, United States; Grossman Institute for Neuroscience, Quantitative Biology and Human Behavior, United States; Corresponding authors.Neuroimaging research frequently demonstrates load-dependent activation in prefrontal and parietal cortex during working memory tasks such as the N-back. Most of this work has been conducted in fMRI, but functional near-infrared spectroscopy (fNIRS) is gaining traction as a less invasive and more flexible alternative to measuring cortical hemodynamics. Few fNIRS studies, however, have examined how working memory load-dependent changes in brain hemodynamics relate to performance. The current study employs a newly developed and robust statistical analysis of task-based fNIRS data in a large sample, and demonstrates the utility of data-driven, multivariate analyses to link brain activation and behavior in this modality. Seventy participants completed a standard N-back task with three N-back levels (N = 1, 2, 3) while fNIRS data were collected from frontal and parietal cortex. Overall, participants showed reliably greater fronto-parietal activation for the 2-back versus the 1-back task, suggesting fronto-parietal fNIRS measurements are sensitive to differences in cognitive load. The results for 3-back were much less consistent, potentially due to poor behavioral performance in the 3-back task. To address this, a multivariate analysis (behavioral partial least squares, PLS) was conducted to examine the interaction between fNIRS activation and performance at each N-back level. Results of the PLS analysis demonstrated differences in the relationship between accuracy and change in the deoxyhemoglobin fNIRS signal as a function of N-back level in eight mid-frontal channels. Specifically, greater reductions in deoxyhemoglobin (i.e., more activation) were positively related to performance on the 3-back task, unrelated to accuracy in the 2-back task, and negatively associated with accuracy in the 1-back task. This pattern of results suggests that the metabolic demands correlated with neural activity required for high levels of accuracy vary as a consequence of task difficulty/cognitive load, whereby more automaticity during the 1-back task (less mid-frontal activity) predicted superior performance on this relatively easy task, and successful engagement of this mid-frontal region was required for high accuracy on a more difficult and cognitively demanding 3-back task. In summary, we show that fNIRS activity can track working memory load and can uncover significant associations between brain activity and performance, thus opening the door for this modality to be used in more wide-spread applications.http://www.sciencedirect.com/science/article/pii/S1053811921000720fNIRSN-back taskCognitive loadPartial least squaresWorking memoryNeural efficiency
collection DOAJ
language English
format Article
sources DOAJ
author Kimberly L. Meidenbauer
Kyoung Whan Choe
Carlos Cardenas-Iniguez
Theodore J. Huppert
Marc G. Berman
spellingShingle Kimberly L. Meidenbauer
Kyoung Whan Choe
Carlos Cardenas-Iniguez
Theodore J. Huppert
Marc G. Berman
Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach
NeuroImage
fNIRS
N-back task
Cognitive load
Partial least squares
Working memory
Neural efficiency
author_facet Kimberly L. Meidenbauer
Kyoung Whan Choe
Carlos Cardenas-Iniguez
Theodore J. Huppert
Marc G. Berman
author_sort Kimberly L. Meidenbauer
title Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach
title_short Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach
title_full Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach
title_fullStr Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach
title_full_unstemmed Load-dependent relationships between frontal fNIRS activity and performance: A data-driven PLS approach
title_sort load-dependent relationships between frontal fnirs activity and performance: a data-driven pls approach
publisher Elsevier
series NeuroImage
issn 1095-9572
publishDate 2021-04-01
description Neuroimaging research frequently demonstrates load-dependent activation in prefrontal and parietal cortex during working memory tasks such as the N-back. Most of this work has been conducted in fMRI, but functional near-infrared spectroscopy (fNIRS) is gaining traction as a less invasive and more flexible alternative to measuring cortical hemodynamics. Few fNIRS studies, however, have examined how working memory load-dependent changes in brain hemodynamics relate to performance. The current study employs a newly developed and robust statistical analysis of task-based fNIRS data in a large sample, and demonstrates the utility of data-driven, multivariate analyses to link brain activation and behavior in this modality. Seventy participants completed a standard N-back task with three N-back levels (N = 1, 2, 3) while fNIRS data were collected from frontal and parietal cortex. Overall, participants showed reliably greater fronto-parietal activation for the 2-back versus the 1-back task, suggesting fronto-parietal fNIRS measurements are sensitive to differences in cognitive load. The results for 3-back were much less consistent, potentially due to poor behavioral performance in the 3-back task. To address this, a multivariate analysis (behavioral partial least squares, PLS) was conducted to examine the interaction between fNIRS activation and performance at each N-back level. Results of the PLS analysis demonstrated differences in the relationship between accuracy and change in the deoxyhemoglobin fNIRS signal as a function of N-back level in eight mid-frontal channels. Specifically, greater reductions in deoxyhemoglobin (i.e., more activation) were positively related to performance on the 3-back task, unrelated to accuracy in the 2-back task, and negatively associated with accuracy in the 1-back task. This pattern of results suggests that the metabolic demands correlated with neural activity required for high levels of accuracy vary as a consequence of task difficulty/cognitive load, whereby more automaticity during the 1-back task (less mid-frontal activity) predicted superior performance on this relatively easy task, and successful engagement of this mid-frontal region was required for high accuracy on a more difficult and cognitively demanding 3-back task. In summary, we show that fNIRS activity can track working memory load and can uncover significant associations between brain activity and performance, thus opening the door for this modality to be used in more wide-spread applications.
topic fNIRS
N-back task
Cognitive load
Partial least squares
Working memory
Neural efficiency
url http://www.sciencedirect.com/science/article/pii/S1053811921000720
work_keys_str_mv AT kimberlylmeidenbauer loaddependentrelationshipsbetweenfrontalfnirsactivityandperformanceadatadrivenplsapproach
AT kyoungwhanchoe loaddependentrelationshipsbetweenfrontalfnirsactivityandperformanceadatadrivenplsapproach
AT carloscardenasiniguez loaddependentrelationshipsbetweenfrontalfnirsactivityandperformanceadatadrivenplsapproach
AT theodorejhuppert loaddependentrelationshipsbetweenfrontalfnirsactivityandperformanceadatadrivenplsapproach
AT marcgberman loaddependentrelationshipsbetweenfrontalfnirsactivityandperformanceadatadrivenplsapproach
_version_ 1721530378309599232