2013
DOI: 10.1209/0295-5075/103/68002
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Transitions in effective scaling behavior of accelerometric time series across sleep and wake

Abstract: We study the effective scaling behavior of high-resolution accelerometric time series recorded at the wrists and hips of 100 subjects during sleep and wake. Using spectral analysis and detrended fluctuation analysis we find long-term correlated fluctuations with a spectral exponent β ≈ 1.0 (1/f noise). On short time scales, β is larger during wake (≈ 1.4) and smaller during sleep (≈ 0.6). In addition, characteristic peaks at 0.2-0.3 Hz (due to respiration) and 4-10 Hz (probably due to physiological tremor) are… Show more

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Cited by 17 publications
(24 citation statements)
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References 27 publications
(26 reference statements)
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“…As the correlations agree with the variability one can assume with some confidence that high complexities (correlations around a ¼ 1)-in this case-are also indicative of a poor night's sleep. This is the first time such results have been shown since this is the first study that involves complexity analysis of actigraphy for the identification of acute insomnia; however, studies in the past have highlighted the merit of complexity analysis of actigraph measurements [24,25,37].…”
Section: Discussionmentioning
confidence: 84%
“…As the correlations agree with the variability one can assume with some confidence that high complexities (correlations around a ¼ 1)-in this case-are also indicative of a poor night's sleep. This is the first time such results have been shown since this is the first study that involves complexity analysis of actigraphy for the identification of acute insomnia; however, studies in the past have highlighted the merit of complexity analysis of actigraph measurements [24,25,37].…”
Section: Discussionmentioning
confidence: 84%
“…While such summary measures allow for hypothesis testing using classic statistical methods [14,[21][22][23], large amounts of relevant information are disclosed in those complex data when more advanced tools of quantification (cf. Section 3), like fractal analysis, are applied [11,13,15,17,24,25]. In particular, actigraphy studies by Sun et al [15] indicated that the scaling exponent of the power law detected in temporal autocorrelation of activity significantly correlates with the severity of Parkinson's disease symptoms.…”
Section: Experiment: Actigraphy Recordingsmentioning
confidence: 99%
“…Our initial observation of a peak in the 0.3 Hz range (corresponding to breaths per minute) in nocturnal three-axis accelerometry data recorded at the wrist 32 was the starting point for our approach towards respiration proxies. After we had found that the high amplitude resolution of modern accelerometers (down to ) can resolve tiny motions caused by respiratory activity 10 , 32 , 33 , we have systematically studied if this effect can be used for a practical derivation of respiration proxies.…”
Section: Methodsmentioning
confidence: 99%