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An Alpha resting EEG study on nonlinear dynamic analysis for schizophrenia

机译:精神分裂症非线性动力分析的α休息终原研究

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Schizophrenia is a mental disorder that may include delusions, loss of personality, confusion, social withdrawal, psychosis, and bizarre behavior. In this study, we use Electroencephalogram (EEG) signals of the Alpha band to detect the differences between nonlinear EEG features of schizophrenic patients and non-psychiatric controls. EEG signals from 31 schizophrenic patients and 31 age/sex matched normal controls are recorded using 16 electrodes. We calculate permutation entropy, Kolmogorov entropy, the correlation dimension, spectral entropy and the results indicate that the EEG signals from schizophrenics are more complex and irregular than those from normal controls. We compare three feature classifiers (k-Nearest Neighbor, Support Vector Machine and Back-Propagation Neural Network). A feature selection method based on Fisher criterion is used for enhancing the performance of classifiers. The optimal accuracy rate comes from Back-Propagation Neural Network, which is 86.1%. We think that the statistic and classification results make our approach helpful for schizophrenia diagnosis.
机译:精神分裂症是一种精神障碍,可能包括妄想,人格丧失,困惑,社会戒断,精神病和奇怪的行为。在本研究中,我们使用α带的脑电图(EEG)信号来检测精神分裂症患者和非精神病患者的非线性EEG特征之间的差异。使用16个电极记录来自31例精神分裂症患者和31岁/性别匹配的正常对照的脑电图。我们计算置换熵,Kolmogorov熵,相关尺寸,光谱熵,结果表明,来自精神分裂症的EEG信号更复杂,不规则,而不是来自正常对照的那些。我们比较三个特征分类器(k最近邻,支持向量机和背传播神经网络)。基于Fisher标准的特征选择方法用于增强分类器的性能。最佳精度率来自后传播神经网络,即86.1%。我们认为统计和分类结果使我们的方法有助于精神分裂症诊断。

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