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Investigation of Quantitative Electroencephalography Markers for Schizophrenia Diagnosis using Variational Mode decomposition

机译:分析模式分解研究精神分裂症诊断的定量脑能脑标记物

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Analyzing the human brain and detection of brain disorders using Electroencephalography (EEG) have gained impetus over past few years. Schizophrenia is a mental disorder which affects the functioning of brain. In this paper, we aim to determine quantitative significant EEG features which can be used to differentiate person having schizophrenia disorder and the healthy ones. Variational mode decomposition method (VMD) is used for feature extraction followed by statistical significance analysis of the extracted values. VMD is a popular decomposition method due to its adaptive nature. In this study, we also aim to examine the efficacy of the method in EEG signal analysis. Six different features were calculated and analyzed over the decomposed EEG signal. Analysis is done by performing statistical significance test on SPSS version 23 and by observing the p-values and error bar graphs. Results indicate that five out of six features turned out to be a very good indicator/markers. Hence, this method could be further extended by applying machine learning approach for the classification based on obtained feature set.
机译:分析人脑和使用脑电图(EEG)的脑疾病检测在过去几年中获得了动力。精神分裂症是影响大脑功能的精神障碍。在本文中,我们的目的是确定定量显着的EEG特征,可用于区分具有精神分裂症障碍和健康的人。变分模式分解方法(VMD)用于特征提取,然后用于提取值的统计显着性分析。 VMD由于其自适应性质,是一种流行的分解方法。在这项研究中,我们还可以探讨脑电图信号分析中方法的功效。计算六种不同的特征,并在分解的脑电图信号上分析。通过对SPSS版本23执行统计显着性测试并通过观察P值和误差条图来进行分析。结果表明,六种特征中的五个是一个非常好的指标/标记。因此,通过基于所获得的特征集应用于分类的机器学习方法,可以进一步扩展该方法。

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