Time-Frequency Distribution Analysis for Electroencephalogram Signals of Patients With Schizophrenia and Normal Participants

M. Sabeti, E. Moradi, M. Taghavi, M. Mohammadi, R. Boostani
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Abstract

Background: Psychiatrists diagnose schizophrenia based on clinical symptoms such as disordered thinking, delusions, hallucinations, and severe distortion of daily functions. However, some of these symptoms are common with other mental illnesses such as bipolar mood disorder. Therefore, quantitative assessment of schizophrenia by analyzing a physiological-based data such as the electroencephalogram (EEG) signal is of interest. In this study, we analyze the spectrum and time-frequency distribution (TFD) of EEG signals to understand how schizophrenia affects these signals. Methods: In this regard, EEG signals of 20 patients with schizophrenia and 20 age-matched participants (control group) were investigated. Several features including spectral flux, spectral flatness, spectral entropy, time-frequency (TF)-flux, TF-flatness, and TF-entropy were extracted from the EEG signals. Results: Spectral flux (1.5388±0.0038 and 1.5497±0.0058 for the control and case groups, respectively, P=0.0000), spectral entropy (0.8526±0.0386 and 0.9018±0.0428 for the control and case groups, respectively, P=0.0004), spectral roll-off (0.3896±0.0434 and 0.4245±0.0410 for the control and case groups, respectively, P=0.0129), spectral flatness (0.1401±0.0063 and 0.1467±0.0077 for the control and case groups, respectively, P=0.0055), TF-flux (1.2675±0.1806 and 1.5284±0.2057 for the control and case groups, respectively, P=0.0001) and TF-flatness (0.9980±0.0000 and 0.9981±0.0000 for the control and case groups, respectively, P=0.0000) values in patients with schizophrenia were significantly greater than the control group in most EEG channels. This prominent irregularity may be caused by decreasing the synchronization of neurons in the frontal lobe. Conclusion: Spectral and time frequency distribution analysis of EEG signals can be used as quantitative indexes for neurodynamic investigation in schizophrenia.
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精神分裂症患者和正常人脑电图信号的时频分布分析
背景:精神病学家根据临床症状诊断精神分裂症,如思维紊乱、妄想、幻觉和日常功能严重扭曲。然而,其中一些症状在其他精神疾病中很常见,如双相情感障碍。因此,通过分析诸如脑电图(EEG)信号之类的基于生理的数据来定量评估精神分裂症是令人感兴趣的。在这项研究中,我们分析了脑电图信号的频谱和时频分布(TFD),以了解精神分裂症如何影响这些信号。方法:对20例精神分裂症患者和20例年龄匹配的对照组的脑电图信号进行研究。从脑电信号中提取了包括频谱通量、频谱平坦度、频谱熵、时频(TF)通量、TF平坦度和TF熵在内的几个特征。结果:光谱通量(对照组和病例组分别为1.5388±0.0038和1.5497±0.0058,P=0.000)、光谱熵(对照组、病例组分别分别为0.8526±0.0386和0.9018±0.0428,P=0.0004)、光谱衰减(对照组及病例组分别是0.3896±0.0434和0.4245±0.0410,P=0.0129),光谱平坦度(对照组和病例组分别为0.1401±0.0063和0.1467±0.0077,P=0.0055),在大多数脑电图通道中,精神分裂症患者的TF通量(对照组和病例组分别为1.2675±0.1806和1.5284±0.2057,P=0.0001)和TF平坦度(对照组组和病例对照组分别为0.9980±0.0000和0.9981±0.0000,P=0.0000)值均显著高于对照组。这种明显的不规则性可能是由额叶神经元的同步性降低引起的。结论:脑电信号的频谱和时频分布分析可作为精神分裂症神经动力学研究的定量指标。
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审稿时长
4 weeks
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