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fMRI-based detection of alertness predicts behavioral response variability

Sarah E. Goodale, Nafis Ahmed, Chong Zhao, Jacco A. de Zwart, Pınar S. Özbay, Dante Picchioni, Jeff H. Duyn, Dario J. Englot, Victoria L. Morgan, Catie Chang

2021eLife55 citationsDOIOpen Access PDF

Abstract

Levels of alertness are closely linked with human behavior and cognition. However, while functional magnetic resonance imaging (fMRI) allows for investigating whole-brain dynamics during behavior and task engagement, concurrent measures of alertness (such as EEG or pupillometry) are often unavailable. Here, we extract a continuous, time-resolved marker of alertness from fMRI data alone. We demonstrate that this fMRI alertness marker, calculated in a short pre-stimulus interval, captures trial-to-trial behavioral responses to incoming sensory stimuli. In addition, we find that the prediction of both EEG and behavioral responses during the task may be accomplished using only a small fraction of fMRI voxels. Furthermore, we observe that accounting for alertness appears to increase the statistical detection of task-activated brain areas. These findings have broad implications for augmenting a large body of existing datasets with information about ongoing arousal states, enriching fMRI studies of neural variability in health and disease.

Topics & Concepts

AlertnessFunctional magnetic resonance imagingPsychologyArousalStimulus (psychology)PupillometryNeuroscienceEEG-fMRIElectroencephalographyNeuroimagingVoxelNeural correlates of consciousnessCognitive psychologyBrain activity and meditationBrain mappingCognitionAudiologyArtificial intelligenceComputer scienceMedicinePsychiatryPupilFunctional Brain Connectivity StudiesNeural dynamics and brain functionEEG and Brain-Computer Interfaces
fMRI-based detection of alertness predicts behavioral response variability | Litcius