2018
DOI: 10.1111/jsr.12725
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2B‐Alert App: A mobile application for real‐time individualized prediction of alertness

Abstract: Knowing how an individual responds to sleep deprivation is a requirement for developing personalized fatigue management strategies. Here we describe and validate the 2B-Alert App, the first mobile application that progressively learns an individual's trait-like response to sleep deprivation in real time, to generate increasingly more accurate individualized predictions of alertness. We incorporated a Bayesian learning algorithm within the validated Unified Model of Performance to automatically and gradually ad… Show more

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Cited by 33 publications
(29 citation statements)
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“…Overall, the sample of 35 soldiers had poor sleep on the PSQI (6.3 ± 3.1)-above the commonly-used cut-off score of 5 [54,55], consistent with prior military samples [56][57][58][59][60][61]. The participants reported obtaining 5.6 ± 1.2 h of sleep per night prior to the exercise, indicating the soldiers had a modest amount of sleep debt before beginning the exercise.…”
Section: Resultssupporting
confidence: 75%
See 2 more Smart Citations
“…Overall, the sample of 35 soldiers had poor sleep on the PSQI (6.3 ± 3.1)-above the commonly-used cut-off score of 5 [54,55], consistent with prior military samples [56][57][58][59][60][61]. The participants reported obtaining 5.6 ± 1.2 h of sleep per night prior to the exercise, indicating the soldiers had a modest amount of sleep debt before beginning the exercise.…”
Section: Resultssupporting
confidence: 75%
“…Therefore, military researchers (particularly in our lab) have started focusing on increasing resiliency to sleep loss rather than eliminating sleep loss. This is done either by enhancing or extending sleep prior to sleep loss (i.e., sleep banking [49][50][51][52][53]) or by creating fatigue management strategies during and after sleep loss (e.g., using smart apps to enhance caffeine timing [54]). The current study focuses on the former concept-how does sleep quality prior to mandated sleep loss longitudinally predict the selected outcomes after sleep loss occurs?…”
Section: The Current Studymentioning
confidence: 99%
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“…The mobile device application "PeakAlert" and the FAST, or Fatigue Avoidance Scheduling Tool, use algorithms developed by WRAIR, the Biotechnology High Performance Computing Software Application Institute of the U.S. Army Medical Research and Materiel Command for the US Department of Defense that integrates performance and device data to predict cognitive alertness levels and performance. 82 When soldiers learn how physical activity, caffeine intake and other variables objectively affect their cognitive performance by using these tools, they are better able to apply strategies wisely in the future. 78 For those with persistent sleeping problems or established diagnosed insomnia, there are free resources for assistance that may be combined with guidance from their military medical provider.…”
Section: Improving Warfighter Fatigue Managementmentioning
confidence: 99%
“…Tracing individual behavior (model-tracing; Fu et al, 2006) can suffer from epistemic uncertainty (Kiureghian and Ditlevsen, 2009), for example, when it is unknown why a pilot did not react to an alert. This uncertainty can be reduced by using physiological data alongside system inputs to build richer models of individual performance (Olofsen et al, 2010;Putze et al, 2015;Reifman et al, 2018). However, sensor data inaccuracies can introduce a different, aleatory kind of uncertainty that is hard to assign to individual observations and needs to be considered in design of adaptive models (Kiureghian and Ditlevsen, 2009).…”
Section: Cognitive Pilot Modelsmentioning
confidence: 99%