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  3. Towards Using Microstate-Neurofeedback for the Treatment of Psychotic Symptoms in Schizophrenia. A Feasibility Study in Healthy Participants
 

Towards Using Microstate-Neurofeedback for the Treatment of Psychotic Symptoms in Schizophrenia. A Feasibility Study in Healthy Participants

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BORIS DOI
10.7892/boris.73527
Publisher DOI
10.1007/s10548-015-0460-4
PubMed ID
26582260
Description
Spontaneous EEG signal can be parsed into sub-second periods of stable functional states (microstates) that assumingly correspond to brief large scale synchronization events. In schizophrenia, a specific class of microstate (class "D") has been found to be shorter than in healthy controls and to be correlated with positive symptoms. To explore potential new treatment options in schizophrenia, we tested in healthy controls if neurofeedback training to self-regulate microstate D presence is feasible and what learning patterns are observed. Twenty subjects underwent EEG-neurofeedback training to up-regulate microstate D presence. The protocol included 20 training sessions, consisting of baseline trials (resting state), regulation trials with auditory feedback contingent on microstate D presence, and a transfer trial. Response to neurofeedback was assessed with mixed effects modelling. All participants increased the percentage of time spent producing microstate D in at least one of the three conditions (p < 0.05). Significant between-subjects across-sessions results showed an increase of 0.42 % of time spent producing microstate D in baseline (reflecting a sustained change in the resting state), 1.93 % of increase during regulation and 1.83 % during transfer. Within-session analysis (performed in baseline and regulation trials only) showed a significant 1.65 % increase in baseline and 0.53 % increase in regulation. These values are in a range that is expected to have an impact upon psychotic experiences. Additionally, we found a negative correlation between alpha power and microstate D contribution during neurofeedback training. Given that microstate D has been related to attentional processes, this result provides further evidence that the training was to some degree specific for the attentional network. We conclude that microstate-neurofeedback training proved feasible in healthy subjects. The implementation of the same protocol in schizophrenia patients may promote skills useful to reduce positive symptoms by means of EEG-neurofeedback.
Date of Publication
2016
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
EEG Microstates Modelling Neurofeedback Resting state Schizophrenia
Language(s)
en
Contributor(s)
Díaz Hernàndez, Laura
Zentrum für Translationale Forschung der Universitätsklinik für Psychiatrie und Psychotherapie
Rieger, Kathryn
Zentrum für Translationale Forschung der Universitätsklinik für Psychiatrie und Psychotherapie
Bänninger, Anja Katharina
Zentrum für Translationale Forschung der Universitätsklinik für Psychiatrie und Psychotherapie
Brandeis, Daniel
König, Thomasorcid-logo
Zentrum für Translationale Forschung der Universitätsklinik für Psychiatrie und Psychotherapie
Additional Credits
Zentrum für Translationale Forschung der Universitätsklinik für Psychiatrie und Psychotherapie
Series
Brain topography
Publisher
Springer
ISSN
0896-0267
Access(Rights)
open.access
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