Effect of cognitive load on time spent offline during wakefulness

Author:

Wamsley Erin J1ORCID,Collins Megan1ORCID

Affiliation:

1. Department of Psychology and Program in Neuroscience, Furman University , 3300 Poinsett Highway, Johns Hall 206K, Greenville, SC 29613 , United States

Abstract

Abstract Humans continuously alternate between online attention to the current environment and offline attention to internally generated thought and imagery. This may be a fundamental feature of the waking brain, but remains poorly understood. Here, we took a data-driven approach to defining online and offline states of wakefulness, using machine learning methods applied to measures of sensory responsiveness, subjective report, electroencephalogram (EEG), and pupil diameter. We tested the effect of cognitive load on the structure and prevalence of online and offline states, hypothesizing that time spent offline would increase as cognitive load of an ongoing task decreased. We also expected that alternation between online and offline states would persist even in the absence of a cognitive task. As in prior studies, we arrived at a three-state model comprised of one online state and two offline states. As predicted, when cognitive load was high, more time was spent online. Also as predicted, the same three states were present even when participants were not performing a task. These observations confirm our method is successful at isolating seconds-long periods of offline time. Varying cognitive load may be a useful way to manipulate time spent in at least one of these offline states in future experimental studies.

Funder

National Science Foundation

Publisher

Oxford University Press (OUP)

Reference72 articles.

1. Hippocampal signatures of awake targeted memory reactivation;Alm;Brain Struct Funct,2018

2. Studies in the stream of consciousness: experimental enhancement and suppression of spontaneous cognitive processes;Antrobus;Percept Mot Skills,1966

3. Inspired by distraction: mind wandering facilitates creative incubation;Baird;Psychol Sci,2012

4. Fitting Linear Mixed-Effects Models Usinglme4;Bates;Journal of Statistical Software

5. Controlling the false discovery rate: a practical and powerful approach to multiple testing;Benjamini;J R Stat Soc B Methodol,1995

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