Validation of the fatigue science Readiband™ actigraph and associated sleep/wake classification algorithms.

Auteur(s)
Russell, C.A. Caldwell, J.A. Arand, D. Myers, L.J. Wubbels, P. & Downs, H.
Jaar
Samenvatting

The use of almost any actigraph-based sleep/wake assessment strategy is better for deriving the input data for fatigue-prediction models than reliance upon self-reported sleep histories (which are typically highly inaccurate). And the use of an objective and validated fatigue-prediction model overcomes the difficulties associated with self-assessments of fatigue (which also have been proven highly unreliable). However, it is essential that actigraphy classification accurately discriminates periods of in-bed awake from periods of in-bed sleep since the level of the sleep reservoir is one of the two primary influences on fatigue-risk predictions. Coupling the Fatigue Science actigraphy approach with an accurate fatigue-risk assessment model such as the Fatigue Science SAFTE, provides an operationally-useful fatigue- measurement strategy that will facilitate fatigue-risk management systems in transportation, industrial, and other contexts. (Author/publisher)

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Publicatie

Bibliotheeknummer
20210531 ST [electronic version only]
Uitgave

Honolulu, HI, Archinoetics, 2000, 20 p., ref.

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