2B-AlertApp 2.0: personalized caffeine recommendations for optimal alertness

Author:

Vital-Lopez Francisco G12ORCID,Doty Tracy J3ORCID,Anlap Ian4,Killgore William D S4,Reifman Jaques1ORCID

Affiliation:

1. Department of Defense Biotechnology High Performance Computing Software Applications Institute, Telemedicine and Advanced Technology Research Center, U.S. Army Medical Research and Development Command , Fort Detrick, MD , USA

2. The Henry M. Jackson Foundation for the Advancement of Military Medicine, Inc. , Bethesda, MD , USA

3. Behavioral Biology Branch, Walter Reed Army Institute of Research , Silver Spring, MD , USA

4. Department of Psychiatry, University of Arizona College of Medicine , Tucson, AZ , USA

Abstract

AbstractStudy ObjectivesIf properly consumed, caffeine can safely and effectively mitigate the effects of sleep loss on alertness. However, there are no tools to determine the amount and time to consume caffeine to maximize its effectiveness. Here, we extended the capabilities of the 2B-Alert app, a unique smartphone application that learns an individual’s trait-like response to sleep loss, to provide personalized caffeine recommendations to optimize alertness.MethodsWe prospectively validated 2B-Alert’s capabilities in a 62-hour total sleep deprivation study in which 21 participants used the app to measure their alertness throughout the study via the psychomotor vigilance test (PVT). Using PVT data collected during the first 36 hours of the sleep challenge, the app learned the participant’s sleep-loss response and provided personalized caffeine recommendations so that each participant would sustain alertness at a pre-specified target level (mean response time of 270 milliseconds) during a 6-hour period starting at 44 hours of wakefulness, using the least amount of caffeine possible. Starting at 42 hours, participants consumed 0 to 800 mg of caffeine, per the app recommendation.Results2B-Alert recommended no caffeine to five participants, 100–400 mg to 11 participants, and 500–800 mg to five participants. Regardless of the consumed amount, participants sustained the target alertness level ~80% of the time.Conclusions2B-Alert automatically learns an individual’s phenotype and provides personalized caffeine recommendations in real time so that individuals achieve a desired alertness level regardless of their sleep-loss susceptibility.

Funder

U.S. Army Medical Research and Development Command

Henry M. Jackson Foundation

Publisher

Oxford University Press (OUP)

Subject

Physiology (medical),Neurology (clinical)

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