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Lempel Ziv Complexity of EEG in Depression

机译:脑电图抑郁症的ziv复杂性

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摘要

Diagnosis of depression is still based mainly on evaluation of the intensity of subjective symptoms by psychiatrists. This study is aimed to give additional objective information about major depressive disorder analyzing the electroencephaolographic (EEG) signal using the method of Lempel Ziv Complexity (LZC). LZC measures the algorithmic complexity by counting the number of distinct segments in a signal. EEG recordings were carried out on the groups of depressive and healthy subjects of 17 female volunteers each. The LZC was calculated on resting EEG signals recorded in eyes closed condition from 18 channels at a length of 5 minutes. The results revealed increased complexity in depression compared to controls in all channels. The highest statistically significant difference appeared in channel F4-Cz (p=0.0098). Our results demonstrate that the analysis of single channel EEG signal can provide statistically significant difference in algorithmic complexity, the LZC value, between control and depressive group.
机译:抑郁症仍然主要基于精神科医生对主观症状强度的评估。本研究旨在提供有关使用LEMPEL ZIV复杂度(LZC)的方法分析闪电噬菌体(EEG)信号的主要抑郁症的额外客观信息。 LZC通过计数信号中的不同段的数量来测量算法复杂度。 EEG录音是在17名女性志愿者的抑郁和健康科目中进行的。计算LZC在休息闭合闭合条件的休息EEG信号,从18个通道以5分钟的长度。结果显示,与所有渠道中的控制相比,抑郁症的复杂性增加。通道F4-CZ中出现最高统计学显着差异(p = 0.0098)。我们的结果表明,单通道EEG信号的分析可以提供算法复杂性,LZC值,控制和抑郁组之间的统计学显着差异。

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