Real-Time Caffeine Optimization During Total Sleep Deprivation
NCT ID: NCT04399083
Last Updated: 2021-09-17
Study Results
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Basic Information
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COMPLETED
NA
60 participants
INTERVENTIONAL
2021-02-19
2021-07-31
Brief Summary
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Detailed Description
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A second objective of the present study is to investigate if 2BAlert can not only recover PVT performance during a specified period, but also recover increases in self-reported stress and anxiety related to sleep-loss. Data from a previous study by WRAIR shows that self-reported stress and anxiety increase after 1 night of sleep loss and continues to increase after a second night of continuous sleep deprivation. These measures return to baseline following 12 hours of recovery sleep and map directly onto PVT performance. Therefore, the investigators hypothesize that if PVT performance can be recovered by caffeine, self-reported stress and anxiety can also return close to baseline levels with caffeine.
A tertiary objective of the study is to assess whether images acquired using a smartphone camera are suitable for developing a passive, non-intrusive computer-vision system that could substitute the PVT for assessing alertness. Currently, the algorithm uses PVT data because: (a) compared to other performance measures, the PVT is relatively sensitive to sleep loss and the circadian rhythm of alertness; and (b) there are no learning effects on the PVT. However, the PVT requires an individual to actively engage in a 3- to 10-min long test, which must be performed at least a dozen times during sleep deprivation, making it a sensitive but impractical test to measure a Soldier's alertness in operational settings.
All participants will participate in the following continuous study phases. Caffeine gum may be administered during this study.
Phase 1: At Home Sleep/Wake Measurement: All participants will be instructed to maintain their normal sleep/wake schedule for the 13 days/12 nights immediately preceding phase 2 (the in-laboratory portion of the study). Compliance will be verified objectively via wrist actigraphy. Participants will be given a smartphone and asked to complete a PVT on it every 3 hours while awake and log their normal caffeine use as well as daily sleep duration.
Phase 2: In-Laboratory Sleep/Wake and PVT Performance Assessment: Participants will report to the sleep lab at 1900 hrs on Day 13. While awake in the laboratory, they will complete various cognitive tests, including the PVT, and record a 3-minute video of their face every 3 hours. They will be allowed to sleep from 2300 hrs on Day 13 until 0700 hrs on Day 14 and sleep will be monitored via PSG and actigraphy. This will be followed by 62 hours of continuous wakefulness (i.e., from 0700 hrs on Day 14 until 2100 hrs on Day 16). At 1900 on Day 15, 2BAlert will be run for each individual and will use each individual's previous sleep and performance to create an individualized caffeine dosing schedule to optimize performance from 0300-0900 on Day 16.
Phase 3: In-Laboratory Recovery: All participants will undergo a recovery phase consisting of 12 hours time in bed from 2100 hrs on Day 16 until 0900 hrs on Day 17 \& sleep will be monitored via PSG and actigraphy. The cognitive testing and facial video recording schedule will continue from Phase 2 during wake hours. After being evaluated by a study physician they will be released from the study at approximately 1800 hrs on Day 17. Thus, participants will be in the laboratory for a total of 95 hours.
The main endpoint for this study is psychomotor vigilance test performance (PVT), measured using Smart-PVT. A secondary endpoint is self-reported stress and anxiety, as measured by the Stress Visual Analog Scale and the Spielberger State-Trait Anxiety Inventory, respectively. A third endpoint of the study is to test if facial images captured with the phone camera could be used to assess the alertness level of subjects under sleep deprivation.
Hypotheses to be tested: (a) Psychomotor performance data collected on the Smart-PVT will stay at or below 275ms during the Peak Alertness Window of optimized performance thus indicating that 2BAlert is valid and ready to be utilized in future field studies and operational settings. (b) Self-reported stress and anxiety will return to baseline levels during the Peak Alertness Window and map onto the recovery of PVT performance during this time window.
BACKGROUND: Sleep loss-induced neurobehavioral deficits are a recognized threat to safety and productivity in both civilian and military operational settings. Highly-publicized fatigue-related accidents and mishaps (including commercial mishaps such as those occurring at 3-Mile Island, Chernobyl, and Bhopal; and military mishaps such as the ambush of the 507th Maintenance Company) continue to draw attention to the problem of sleep loss/sleepiness in operational environments. Such accidents highlight detrimental effects of sleep loss on decision-making, vigilance, problem-solving and other mental abilities critical to military effectiveness. Publications and manuals from the Army, U.S. Marine Corps, and the U.S. Navy have documented militarily-relevant deleterious effects of sleep loss on alertness and performance. The Army's fifth Mental Health Advisory Team survey of Warfighters serving in Operation Iraqi Freedom and Operation Enduring Freedom revealed that service members who reported less sleep also reported higher rates of accidents and mistakes, and more frequently endorsed negative mental health items.
The Department of Defense has funded development of a computational model for quantifying the effects of daily sleep amounts on neurobehavioral performance. The most recent (and most advanced) version of the mathematical sleep/performance prediction model is the 2BAlert model, developed by BHSAI. Like its predecessors, 2BAlert was based primarily on PVT data collected in the WRAIR sleep research laboratory. PVT data was used because, for the purpose of constructing sleep/performance prediction models, it is generally superior to data from other performance measures in several important respects: (a) compared to other performance measures, the PVT is relatively sensitive to sleep loss and the circadian rhythm of alertness; (b) there are no learning effects on the PVT; and (c) it has previously been demonstrated that a PVT-based sleep/performance prediction model has good ecological validity. That is, the PVT-based model predictions of performance effectiveness have been shown to correlate well with 'risk of accidents' in actual railroad operations.
The current 2BAlert tool comes in two forms: 1)a web-based tool that takes sleep and caffeine schedules and displays the predicted GROUP AVERAGE performance \& 2)a smartphone app that utilizes individual performance measured with the PVT on a smartphone to individualize the performance predictive model. This version of the tool was successfully validated in a recent study by WRAIR. The most recent version of the smartphone app uses individualized performance predictions to compute individualized caffeine scheduling that optimize performance during specific periods. While this tool was developed using data collected at WRAIR and has been run post-hoc on data previously collected at WRAIR, it has yet to be tested in real-time. Therefore, the purpose of this study is to validate this caffeine optimization algorithm in real-time. The investigators will be utilizing the same study protocol as the recent WRAIR study because it is known there is variability in performance in a healthy population over this time period and that overall performance is slower than 275ms and self-reported stress and anxiety increase significantly without a caffeine intervention. Additionally, by utilizing a previous study design the investigators can minimize the burden on the study team in creating new documentation and schedules.
Taking a step back, it is important to address why caffeine optimization is important and relevant for the military. While caffeine is widely accepted and utilized as a stimulant to counter the effects of fatigue associated with shift work and sleep loss, a previous study conducted by WRAIR has shown that caffeine loses its effectiveness and can even slow recovery with repeated use and chronic sleep loss. This surprising result indicates that caffeine has a limit and a cost, and, therefore, the Warfighter would be more effective if he or she utilized caffeine optimally. For previous caffeine studies with similar lengths of continuous sleep deprivation as the current protocol, participants were given 800mg of caffeine during each night. While this research suggests that the investigators could recover performance by giving all participants in this study 800mg of caffeine, the 2BAlert algorithm will allow the investigators to give some participants less caffeine but still reach the same outcome as if everyone had been given 800mg of caffeine.
Recent research applied the 2BAlert algorithm post-hoc using parameters laid out in this protocol. The model results show that all participants recovered performance during the Peak Alertness Window, i.e. between 44-50 hours awake, where recovery is defined as 275ms or faster, and over half the subjects required less than half the max total allowable amount of caffeine (800mg), while three subjects required no caffeine at all. The investigators hope to validate 2BAlert by applying it to real-time data utilizing the original study design.
In addition to testing the Caffeine Optimization model, the investigators are also interested in testing the hypothesis that if PVT performance can be recovered with caffeine, self-reported stress and anxiety can also be recovered. Recent work found that self-reported stress and anxiety increased with increased sleep loss and recovered to baseline after recovery sleep, following the same trend as PVT performance data. While previous work has shown that self-reported stress and anxiety increase with 1 night of sleep loss, these are the first data to show that self-reported stress and anxiety continue to increase after 2 nights of sleep loss. There are currently no studies reporting if and how self-reported stress and anxiety can be recovered with caffeine during sleep loss.
Conditions
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Study Design
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NA
SINGLE_GROUP
OTHER
NONE
Study Groups
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Single Arm
Caffeine
Caffeine will be administered to each participant following an individualized optimal dosing schedule created by the 2B-Alert app. Individualized caffeine dosing schedules will be created by the 2BAlert app on the smartphone the participant uses to do Smart-PVT tests. Study staff will run the optimization at 1900 on Day 15. The algorithm will recommend caffeine dosing to optimize performance during the Peak Alertness window (e.g. from 0300-0900 on Day 16, 44-50 hours of continuous sleep loss). Doses could be recommended at any hour from 2000 on Day 15 to 0800 on Day 16. HOWEVER, the algorithm will not exceed 800 mg of caffeine across the entire study AND it will not dose more than 300 mg of caffeine at a time. Gum will be chewed for a total of 10 minutes by each participant and then discarded.
As there will be no placebo in this protocol, randomization and blinding procedures are not necessary. IT IS IMPORTANT TO NOTE THAT SOME PARTICIPANTS MAY NOT RECEIVE CAFFEINE AT ALL.
Interventions
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Caffeine
Caffeine will be administered to each participant following an individualized optimal dosing schedule created by the 2B-Alert app. Individualized caffeine dosing schedules will be created by the 2BAlert app on the smartphone the participant uses to do Smart-PVT tests. Study staff will run the optimization at 1900 on Day 15. The algorithm will recommend caffeine dosing to optimize performance during the Peak Alertness window (e.g. from 0300-0900 on Day 16, 44-50 hours of continuous sleep loss). Doses could be recommended at any hour from 2000 on Day 15 to 0800 on Day 16. HOWEVER, the algorithm will not exceed 800 mg of caffeine across the entire study AND it will not dose more than 300 mg of caffeine at a time. Gum will be chewed for a total of 10 minutes by each participant and then discarded.
As there will be no placebo in this protocol, randomization and blinding procedures are not necessary. IT IS IMPORTANT TO NOTE THAT SOME PARTICIPANTS MAY NOT RECEIVE CAFFEINE AT ALL.
Eligibility Criteria
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Inclusion Criteria
* Must demonstrate adequate comprehension of the protocol by achieving a score of at least 80% correct on a short multiple-choice quiz. Individuals who fail to achieve a passing score on the initial quiz will be given one opportunity to retest after a review of protocol information. Individuals who fail the comprehension assessment for the second time will be disqualified
Exclusion Criteria
* Self-reported nighttime lights-out times earlier than approximately 2100 hours on average during weeknights (Sunday through Thursday)
* Self-reported morning wake-up times later than approximately 0900 on average during weekdays (Monday through Friday)
* Self-reported habitual napping (\> 3 times per week) in conjunction with normal sleep habits
* Self-reported symptoms suggestive of a sleep disorder (to include but not limited to sleep disordered breathing/sleep apnea, narcolepsy, idiopathic hypersomnia, restless leg syndrome, parasomnias, REM behavior disorder, etc.)
* History of a sleep disorder (to include all of the above)
* Any use of prescription or over-the-counter sleep aids during the 6 month period prior to screening indicative of a potential sleep disorder as determined by the examining study physician (e.g., use of a sleep aid for several nights following time zone travel, or the occasional use of a sleep inducing medication (e.g. 1-2 times per month), would not necessarily constitute evidence of a sleep disorder and result in disqualification)
* Self-reported caffeine use in excess of 400 mg (e.g., approximately 8 caffeinated sodas or approximately 3-4 12-oz cups of coffee) per day on average
* History of neurologic disorder (to include but not limited to epilepsy or another seizure disorder, amnesia for any reason, hydrocephalus, MS). An infrequent or resolved single neurological event (e.g., childhood seizure, rare sporadic migraine headaches, resolved meningeal infection with no sequelae) may be deemed non-exclusionary at the discretion of the examining study physician.
* Score of 14 or above on the Beck Depression Inventory
* Score of 41 or above on the Spielberger Trait Anxiety Inventory
* Score of lower than 31 or higher than 69 on the Morningness-Eveningness Questionnaire
* Self-reported or suspected regular nicotine use (or addiction) (defined as more than 1 cigarette or equivalent per week) within the last 1 year)
* Self-reported or suspected heavy alcohol use (minimum limit to define heavy alcohol use is 14 drinks per week or as determined by the examining study physician)
* History of cardiovascular disease (to include but not limited to arrhythmias, valvular heart disease, congestive heart failure, history of sudden cardiac death or myocardial infarction)
* Underlying acute or chronic pulmonary disease requiring daily inhaler use
* Kidney disease or kidney abnormalities
* Liver disease or liver abnormalities
* Self-reported history of psychiatric disorder requiring hospitalization or use of psychiatric product for any length of time
* Self-reported or suspected use of products or drugs that cannot be safely discontinued during in-laboratory phases, to be determined on a case-by-case basis by the examining study physician
* Self-reported or suspected current use of other illicit drugs (to include but not limited to benzodiazepines, amphetamines, cocaine, marijuana)
* (Females only) Positive urine pregnancy result
* (Females only) Self-reported or suspected current breast-feeding or collecting breast-milk
* Resting blood pressure above 140/90 or resting pulse \> 110 beats per minute Note that if a repeat measurement is within range, volunteer will not be excluded.
* BMI ≥ 30 (Obese Class I or greater)
* Clinically significant values (as determined by the reviewing study physician) for any hematology or chemistry parameter. Reviewing study physician may opt to repeat any clinically significant tests and include participants whose repeat test values are not clinically significant.
* Positive urine nicotine/cotinine result during screening visit
* Positive urine drug result during screening visit
* Positive saliva alcohol results during screening visit
* Inability to read and sign consent
* Failure to obtain required approved official leave to participate.
* Failure to cooperate with requirements of the study, e.g. failure to complete 80% of Smart-PVTs during Phase 1 (Days 2-13)
18 Years
39 Years
ALL
Yes
Sponsors
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Walter Reed Army Institute of Research (WRAIR)
FED
University of Arizona
OTHER
Responsible Party
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William D. Killgore
Professor
Locations
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University of Arizona
Tucson, Arizona, United States
Countries
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Other Identifiers
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1912215022
Identifier Type: -
Identifier Source: org_study_id
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