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[EEG-based cerebral networks in 14 neurological disorders]. / EEG-alapú agyi hálózatok 14 neurológiai betegségben.
Dömötör, Johanna; Clemens, Béla; Csépány, Tünde; Emri, Miklós; Fogarasi, András; Hollódy, Katalin; Puskás, Szilvia; Fekete, Klára; Kovács, Attila; Fekete, István.
Afiliação
  • Dömötör J; Kenézy Gyula Kórház, Neurológiai Osztály, Debrecen.
  • Clemens B; Kenézy Gyula Kórház, Neurológiai Osztály, Debrecen.
  • Csépány T; Debreceni Egyetem Klinikai Központ, Neurológiai Klinika, Debrecen.
  • Emri M; Debreceni Egyetem, Nukleáris Medicina Intézet, Debrecen.
  • Fogarasi A; Bethesda Gyermekkórház, Neurológiai Osztály, Budapest.
  • Hollódy K; Pécsi Egyetem Klinikai Központ, Gyermekgyógyászati Klinika, Pécs.
  • Puskás S; Debreceni Egyetem Klinikai Központ, Neurológiai Klinika, Debrecen.
  • Fekete K; Debreceni Egyetem Klinikai Központ, Neurológiai Klinika, Debrecen.
  • Kovács A; Debreceni Egyetem Klinikai Központ, Pszichiátriai Tanszék, Debrecen.
  • Fekete I; Debreceni Egyetem Klinikai Központ, Neurológiai Klinika, Debrecen.
Ideggyogy Sz ; 70(5-6): 159-178, 2017 May 30.
Article em Hu | MEDLINE | ID: mdl-29870631
ABSTRACT
Background - Brain networks have not been systematically investigated yet in most neurological disorders. Purpose - To investigate EEG functional connectivity (EEGfC) networks in 14 neurological disorders. Patients - Potentially eligible patients were collected from clinical and EEG databases. All the available clinical data and EEG records were critically revised. All the patients who suffered of a single neurological disorder (out of the 14) and had a good quality EEG recording entered the study. Confoundig factors as comorbidity and CNS-active drug effects were eliminated as far as possible. EEG analysis - Three minutes of resting-state, waking EEG activity were selected for analysis. Current source density (CSD) values were computed for 2394 cortical voxels by Low Resolution Electromagnetic Tomography (LORETA). Thereafter, Pearson correlation coefficients were computed between all pairs of 23 cortical regions of interest (ROI) in each hemisphere (LORETA Source Correlation, LSC software). Computation was carried out for conventional EEG broad bands and very narrow bands (1 Hz bandwidth) between 1 and 25 Hz as well. Correlation coefficients of each group were statistically compared to our normative EEG (LSC) database by two-talied t-tests. Bonferroni-corrected p<0.05 values were accepted as statistically significant, and were graphically displayed as topographical networks. Results and conclusion - Group-specific networks were demonstrated. However, non-specific networks, charasteristic for most groups, were detected as well. Common finding were decreased connectivity in the alpha band and increased connectivity in the delta, theta bands and upper-beta band. Decreased alpha-band connectivity presumably reflected primary lesional effects and on the other hand, non-specific vulnerability of "rich club connections". Increased connectivity in the slow bands presumably indicated adaptive-compensatory activity of brain homeostasis.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Encéfalo / Eletroencefalografia / Doenças do Sistema Nervoso Tipo de estudo: Diagnostic_studies Limite: Humans Idioma: Hu Ano de publicação: 2017 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Encéfalo / Eletroencefalografia / Doenças do Sistema Nervoso Tipo de estudo: Diagnostic_studies Limite: Humans Idioma: Hu Ano de publicação: 2017 Tipo de documento: Article