Analysis of A-phase transitions during the cyclic alternating pattern under normal sleep
详细信息    查看全文
  • 作者:Martin Oswaldo Mendez ; Ioanna Chouvarda…
  • 关键词:Sleep ; CAP ; Nonlinear analysis ; Border identification ; EEG
  • 刊名:Medical and Biological Engineering and Computing
  • 出版年:2016
  • 出版时间:January 2016
  • 年:2016
  • 卷:54
  • 期:1
  • 页码:133-148
  • 全文大小:1,083 KB
  • 参考文献:1.Terzano MG, Parrino L, Smerieri A, Chervin R, Chokroverty S, Guilleminault C, Hirshkowitz M, Mahowald M, Moldofsky H, Rosa A, Thomas R, Walters A (2001) Consensus report. Atlas, rules, and recording techniques for the scoring of cyclic alternating pattern (CAP) in human sleep. Sleep Med 2:537–553CrossRef PubMed
    2.Chouvarda I, Rosso V, Mendez MO, Bianchi AM, Parrino L, Grassi A, Terzano MG, Cerutti S (2011) Assessment of the EEG complexity during activations from sleep. Comput Methods Programs Biomed 104:e16–e28CrossRef PubMed
    3.Terzano MG, Parrino L (1993) Clinical applications of cyclic alternating pattern. Physiol Behav 54:807–813CrossRef PubMed
    4.Terzano MG, Parrino L, Boselli M, Spaggiari MC, Di Giovanni G (1996) Polysomnographic analysis of arousal responses in OSAS by means of the cyclic alternating pattern (CAP). Clin Neurophysiol 13:145–155CrossRef
    5.Terzano MG, Parrino L, Spaggiari MC, Palomba V, Rossi M, Smerieri A (2003) CAP variables and arousals as sleep electroencephalogram markers for primary insomnia. Clin Neurophysiol 114:1715–1723CrossRef PubMed
    6.Terzano MG, Parrino L, Smerieri A, De Carli F, Nobili L, Donadio S, Ferrillo F (2005) CAP and arousals are involved in the homeostatic and ultradian sleep processes. J Sleep Res 14:359–368CrossRef PubMed
    7.Halasz P, Terzano MG, Parrino L, Bodisz R (2004) The nature of Arousal from sleep. J Sleep Res 13:1–23CrossRef PubMed
    8.Barcaro U, Bonanni E, Maestri M, Murri L, Parrino L, Terzano MG (2004) A general automatic method for the analysis of NREM sleep microstructure. Sleep Med 5:567–576CrossRef PubMed
    9.Ferri R, Bruni O, Miano S, Plazzi G, Terzano MG (2005) All-night EEG power spectral analysis of the cyclic alternating pattern components in young adult subjects. Clin Neurophysiol 116:2429–2440CrossRef PubMed
    10.Ferri R, Bruni O, Miano S, Smerieri A, Spruyt K, Terzano MG (2005) Inter-rater reliability of sleep cyclic alternating pattern (CAP) scoring and validation of a new computer-assisted CAP scoring method. Clin Neurophysiol 116:696–707CrossRef PubMed
    11.Navona C, Barcaro U, Bonanni E, Di Martino F, Maestri M, Murri L (2002) An automatic method for recognition and classification of the A-phases of the cyclic alternating pattern. Clin Neurophysiol 113:1826–1831CrossRef PubMed
    12.Mariani S, Manfredini E, Rosso V, Mendez MO, Bianchi AM, Matteucci M, Terzano MG, Cerutti S, Parrino L (2011) Characterization of A phases during the cyclic alternating pattern of sleep. Clin Neurophysiol 22:2016–2024CrossRef
    13.Mariani S, Manfredini E, Rosso V, Grassi A, Mendez MO, Alba A, Matteucci M, Parrino L, Terzano MG, Cerutti S, Bianchi AM (2012) Efficient automatic classifiers for the detection of A phases of the Cyclic Alternating Pattern in sleep. Med Biol Eng Comput 50:359–372CrossRef PubMed
    14.Fingelkurts A, Fingelkurts AA (2008) A brain-mind operational architectonics imaging: technical and methodological aspect. Open Neuroimag J 2:73–93CrossRef PubMed PubMedCentral
    15.American Academy of Sleep Medicine (2007) The AASM manual for the scoring of sleep and associated events: rules, terminology and technical specifications, 1st edn. American Academy of Sleep Medicine, Westchester, IL
    16.Parrino L, Boselli M, Spaggiari MC, Smerieri A, Terzano MG (1998) Cyclic alternating pattern (CAP) in normal sleep: polysomnographic parameters in different age groups, Electroencephalography. Clin Neurophysiol 107:439–450CrossRef
    17.Accardo A, Affinito M, Carrozzi M, Bouquet F (1997) Use of the fractal dimension for the analysis of electroencephalographic time series. Biol Cybern 77:339–350CrossRef PubMed
    18.Richman JS, Moorman JM (2000) Physiological time-series analysis using approximate entropy and sample entropy. Am J Physiol Heart Circ 278:H2039–H2049
    19.Kaspar F, Schuster HG (1987) Easily calculable measure for the complexity of spatiotemporal patterns. Phys Rev A 36:842–848CrossRef PubMed
    20.Higuchi T (1988) Approach to an irregular time series on the basis of the fractal theory. Physica D 31:277–283CrossRef
    21.Klonowski W (2007) From conformons to human brains: an informal overview of nonlinear dynamics and its applications in biomedicine. Nonlinear Biomedical Physics 1 (5). BioMed Central, London. http://​www.​nonlinearbiomedp​hys.​com/​content/​1/​1/​5
    22.Zhang D, Jia X, Ding X, Ye D, Thakor N (2010) Application of tsallis entropy to EEG: quantifying the presence of burst suppression after asphyxial cardiac arrest in rats. IEEE Trans Biomed Eng 57:867–874CrossRef PubMedCentral
    23.De Carli F, Nobili L, Beelke M, Watanabe T, Smerieri A, Parrino L, Terzano MG, Ferrillo F (2004) Quantitative analysis of sleep EEG microstructure in the time-frequency domain. Brain Res Bull 63:399–405CrossRef PubMed
    24.Halasz P (1993) Arousals without awakening—dynamic aspect of sleep. Physiol Behav 54:795–802CrossRef PubMed
    25.Kaplan A, Shishkin SL (2000) Application of the change-point analysis to the investigation of the brain’s electrical activity (Chapter 7). In: Brodsky BE, Darkhovsky BS (eds) Nonparametric statistical diagnosis: problems and methods. Kluwer Academic Publishers, Dordrecht, pp 333–338CrossRef
    26.Ferri R, Rundo F, Bruni O, Terzano MG, Stam CJ (2008) The functional connectivity of different EEG bands moves toward small-world network organization during sleep. Clin Neurophysiol 119:2026–2036CrossRef PubMed
    27.Ferri R, Rundo F, Bruni O, Terzano MG, Stam CJ (2006) Regional scalp EEG slow-wave synchronization during sleep cyclic alternating pattern A1 subtypes. Neurosci Lett 404:352–357CrossRef PubMed
    28.Ferri R, Rundo F, Bruni O, Terzano MG, Stam CJ (2005) Dynamics of the EEG slow-wave synchronization during sleep. Clin Neurophysiol 116:2783–2795CrossRef PubMed
    29.Sciarretta G, Bricolo A (1970) Automatic detection of sleep spindles by analysis of harmonic components. Med Biol Eng Comput 8:517–519CrossRef
    30.Hao YL, Ueda Y, Ishii N (1992) Improved procedure of complex demodulation and an application to frequency analysis of sleep spindles in EEG. Med Biol Eng Comput 30:406–412CrossRef PubMed
    31.Huupponen E, Himanen SL, Hasa J, Varri A (2003) Automatic analysis of electro-encephalogram sleep spindle frequency throughout the night. Med Biol Eng Comput 41:727–732CrossRef PubMed
    32.Mendez MO, Bianchi AM, Montano N, Patruno V, Gil E, Mantaras C, Aiolfi A, Cerutti S (2008) On arousal from sleep: time-frequency analysis. Med Biol Eng Comput 46:341–351CrossRef PubMed
    33.Ferri R, Parrino L, Smerieri A, Terzano MG, Elia M, Stam CJ (2002) Non-linear EEG measures during sleep: effects of the different sleep stages and cyclic alternating pattern. Int J Phychophysiol 43:273–286CrossRef
  • 作者单位:Martin Oswaldo Mendez (1)
    Ioanna Chouvarda (2)
    Alfonso Alba (1)
    Anna Maria Bianchi (3)
    Andrea Grassi (4)
    Edgar Arce-Santana (1)
    Guilia Milioli (4)
    Mario Giovanni Terzano (4)
    Liborio Parrino (4)

    1. Facultad de Ciencias, Universidad Autónoma de San Luis Potosí, Lateral Av. Salvador Nava s/n, 78290, San Luis Potosí (SLP), Mexico
    2. Lab of Medical Informatics, Aristotle University of Thessaloniki, Thessaloniki, Greece
    3. Biomedical Engineering Department, Politecnico di Milano, Milan, Italy
    4. Department of Neurology, Sleep Disorders Centre, University of Parma, Parma, Italy
  • 刊物类别:Engineering
  • 刊物主题:Biomedical Engineering
    Human Physiology
    Imaging and Radiology
    Computer Applications
    Neurosciences
  • 出版者:Springer Berlin / Heidelberg
  • ISSN:1741-0444
文摘
An analysis of the EEG signal during the B-phase and A-phases transitions of the cyclic alternating pattern (CAP) during sleep is presented. CAP is a sleep phenomenon composed by consecutive sequences of A-phases (each A-phase could belong to a possible group A1, A2 or A3) observed during the non-REM sleep. Each A-phase is separated by a B-phase which has the basal frequency of the EEG during a specific sleep stage. The patterns formed by these sequences reflect the sleep instability and consequently help to understand the sleep process. Ten recordings from healthy good sleepers were included in this study. The current study investigates complexity, statistical and frequency signal properties of electroencephalography (EEG) recordings at the transitions: B-phase—A-phase. In addition, classification between the onset–offset of the A-phases and B-phase was carried out with a kNN classifier. The results showed that EEG signal presents significant differences (p < 0.05) between A-phases and B-phase for the standard deviation, energy, sample entropy, Tsallis entropy and frequency band indices. The A-phase onset showed values of energy three times higher than B-phase at all the sleep stages. The statistical analysis of variance shows that more than 80 % of the A-phase onset and offset is significantly different from the B-phase. The classification performance between onset or offset of A-phases and background showed classification values over 80 % for specificity and accuracy and 70 % for sensitivity. Only during the A3-phase, the classification was lower. The results suggest that neural assembles that generate the basal EEG oscillations during sleep present an over-imposed coordination for a few seconds due to the A-phases. The main characteristics for automatic separation between the onset–offset A-phase and the B-phase are the energy at the different frequency bands.
NGLC 2004-2010.National Geological Library of China All Rights Reserved.
Add:29 Xueyuan Rd,Haidian District,Beijing,PRC. Mail Add: 8324 mailbox 100083
For exchange or info please contact us via email.