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    Time-frequency methodologies in neurosciences

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    Date
    2016
    Author
    Boashash, B.
    Stevenson, N.J.
    Rankine, L.J.
    Stevenson, N.J.
    Azemi, G.
    Sejdić, E.
    Aviyente, S.
    Akan, A.
    Mert, A.
    Dong, S.
    Omidvarnia, A.
    Zarjam, P.
    O'Toole, J.M.
    Colditz, P.
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    Abstract
    This chapter presents a number of time-frequency (t,f) techniques that can provide advanced solutions to several problems in neuro-sciences with focus on the monitoring of brain abnormalities using EEG and other physiological modalities (t,f) characteristics as a diagnosis and prognosis tool. The methods presented illustrate the improved performance obtained by using a time-frequency approach to process EEG data, including a focus on detecting abnormalities in sick newborns in a Neonatal Intensive Care Unit (NICU) as well as mental health issues in elderlies. The chapter starts by presenting methods for the assessment of Newborn EEG and ECG abnormalities using a time-frequency identification approach (Section 16.1). Next, the important question of (t,f) modeling of nonstationary signals is discussed with illustration on newborn EEGs (Section 16.2); Then, the use of (t,f) features for nonstationary signal classification is illustrated on an application to newborn EEG burst-suppression detection (Section 16.3); an application relevant to the elderly is described where a time-varying analysis of brain networks uses the EEG for the detection of Alzheimer disease (Section 16.4). Another method of time-frequency analysis is described that involves EEG noise reduction using the empirical mode decomposition(Section 16.5). Finally the chapter concludes with a discussion on other perspectives of using advanced (t,f) methods for medical diagnosis and prognosis in other areas of neurosciences (Section 16.6).
    DOI/handle
    http://dx.doi.org/10.1016/B978-0-12-398499-9.00016-9
    http://hdl.handle.net/10576/22934
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