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Analysis of EEG entropy during visual evocation of emotion in schizophrenia. | LitMetric

Analysis of EEG entropy during visual evocation of emotion in schizophrenia.

Ann Gen Psychiatry

Department of Biomedical Engineering, National Cheng Kung University, Tainan, 701 Taiwan.

Published: September 2017

Background: In this study, the international affective picture system was used to evoke emotion, and then the corresponding signals were collected. The features from different points of brainwaves, frequency, and entropy were used to identify normal, moderately, and markedly ill schizophrenic patients.

Methods: The signals were collected and preprocessed. Then, the signals were separated according to three types of emotions and five frequency bands. Finally, the features were calculated using three different methods of entropy. For classification, the features were divided into different sections and classification using support vector machine (principal components analysis on 95%). Finally, simple regression and correlation analysis between the total scores of positive and negative syndrome scale and features were used.

Results: At first, we observed that to classify normal and markedly ill schizophrenic patients, the identification result was as high as 81.5%, and therefore, we further explored moderately and markedly ill schizophrenic patients. Second, the identification rate in both moderately and markedly ill schizophrenic patient was as high as 79.5%, which at the Fz point signal in high valence low arousal fragments was calculated using the ApEn methods. Finally, the total scores of positive and negative syndrome scale were used to analyze the correlation with the features that were the five frequency bands at the Fz point signal. The results show that the value was less than .001 at the beta wave in the 15-18 Hz frequency range.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5613505PMC
http://dx.doi.org/10.1186/s12991-017-0157-zDOI Listing

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