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78 18 57) Babiloni C Sources of Cortical Rhythms in Adults During Physiological Aging A Multicentric EEG Study Human Brain Mapping 2006 P Basar E Gamma alpha delta and theta oscillations govern cognitive processes / Basar E CananBasarEroglu S Karakas M Schurmann International Journal of Psychophysiology P Cacioppo J The Affect System Has Parallel and Integrative Processing Components Form Follows Function / Journal of Personality and Social Psychology 1999 Vol 76 No 5 P Davidson RJ Individual differences in prefrontal activation asymmetry predict natural killer cell activity at rest and in response to challenge// R J Davidson I Dolski B / DonzellaBrainBehavImmun 1999 V 13 P Frijda N H The American Psychological Association Vol 43 5 P Gemignani A Changes in autonomic and EEG patterns induced by hypnotic imagination of aversive stimuli in man // AGemignani ESantarcangelo L Sebastiani CMarchese RMammoliti A/Simoni Brain Research Bulletin 2000 Vol 53 1 P Herrmann C S Adaptive frequency decomposition of EEG with subsequent expert system analysis C S Herrmann T Arnold A Visbeck HP Hundemer H C Hopf Computers in BТШХШРв КЧН MОНТМТЧО P Jensen O On the human sensorimotorcortex beta rhythm Sources and modeling / O Jensen P Goel N Kopell M Pohja R Hari B Ermentroutf // NeuroImage P Kaiser J Lutzenberger W Human gammaband activity a window to cognitive processing // Kaiser J Lutzenberger W / Neuroreport ) P Klimesch W Alpha oscillations and early stages of visual encoding / W Klimesch R Fellinger R Freunberger // Published online] Front Psychol URL СЭЭЩ//УШЮЫЧКХПЫШЧЭТОЫЬТЧШЫР/КЫЭТМХО/103389/ПЩЬвР /ПЮХХ ) 74 Kolev VAge effects on visual EEG responses reveal distinct frontal alpha networks // VKolev J Yordanova C BasarEroglu E Basar Clinical Neurophysiology 2002 Vol113 6 P Landau A N Distributed attention is implemented through thetarhythmic gamma modulation / Helene Marianne Schreyer Stan van Pelt Pascal Fries ErnstStrüngmannInstitute ESI) CurrentBiology Vol P

79 76 Makeig S Independent Component Analysis of Electroencephalographic Advances in Neural Information Processing Systems Terrence J Sejnowski D Touretzky) M Mozer and M Hasselmo Eds) MIT Press Cambridge MA 1996 P Ortony A The cognitive structure of emotions // A Ortony G Clore A Collins Cambridge University Press Cambridge p 78 Pekrun R Academic emotions in students' selfregulated learning and achievement A program of quantitative and qualitative research / R Pekrun T Goetz W Titz R P Perry Educational Psychologist P PТЧОНК JA TСО ПЮЧМЭТШЧКХ ЬТРЧТПТМКЧМО ШП ЦЮ ЫСвЭСЦЬ TЫКЧЬХКЭТЧР ЬООТЧР КЧН СОКЫТЧР ТЧЭШ НШТЧР // BЫКТЧ RОЬОКЫМС Reviews 2005 Vol50 1 p Simoni R A Changes in autonomic and EEG patterns induced by hypnotic imagination of aversive stimuli in man // Brain Research Bulletin 2000 Vol 53 1 P Tomarken AJ Frontal brain asymmetry and depression A selfregulatory perspective // A J TomarkenAD Keene Cognition and Emotion 1998 V12 P Vinogradova OS Pacemaker neurons of the forebrain medical septal area and theta rhythm of the hippocampus // OSVinogradova VFKitchigina CIZenchenko Membr Cell Biol 1998 Vol p 83 Schachter S The interaction of cognitive and physiological determinants of emotion & al state//adv Exp Soc Psychol 1964 Vol 1 P Weisz N Alpha rhythms in audition cognitive and clinical perspectives // NWeisz THartmann NMüller ILorenz J Obleser Frontiers in psychology 2011 Vol p 78

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