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Vienna 2012
Tuesday, 04.09.2012
Physiology, obesity and the downstream effects of OSA
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Multiscale entropy analysis of RR time series obtained from polysomnographic recordings in wide age spectrum group
J. Radlinski, Z. Baran, W. Tomalak (Rabka - Zdrój, Poland)
Source:
Annual Congress 2012 - Physiology, obesity and the downstream effects of OSA
Session:
Physiology, obesity and the downstream effects of OSA
Session type:
Poster Discussion
Number:
3187
Disease area:
Sleep and breathing disorders
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Citations should be made in the following way:
J. Radlinski, Z. Baran, W. Tomalak (Rabka - Zdrój, Poland). Multiscale entropy analysis of RR time series obtained from polysomnographic recordings in wide age spectrum group. Eur Respir J 2012; 40: Suppl. 56, 3187
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