
pmid: 21096033
We investigated the potential of adding cardiac and respiratory activity information to actigraphy for sleep-wake staging. A dataset of 35 recordings with full polysomnography and actigraphy was used to assess the performance of an automated sleep/wake Bayesian classifier using electrocardiogram, inductance plethysmogram estimate of respiratory effort and actigraphy. The best performance was achieved with the linear discriminant model that provided an agreement of Cohen's kappa=0.62 for one of the configurations of the classifier, corresponding to an accuracy of 86.8%, a sensitivity of 66.9% and a specificity of 93.1%. It shows that combining different vital signs for a home sleep-wake staging system could be a promising approach.
Male, Polysomnography, Respiration, Sleep Initiation and Maintenance Disorders, Humans, Female, Heart, Middle Aged, Wakefulness, Sleep, Actigraphy
Male, Polysomnography, Respiration, Sleep Initiation and Maintenance Disorders, Humans, Female, Heart, Middle Aged, Wakefulness, Sleep, Actigraphy
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