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A novel depression detection method based on pervasive EEG and EEG splitting criterion

机译:一种基于普及脑电图和脑电图分裂标准的新型凹陷检测方法

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Depression is a mental disorder characterized by persistent occurrences of lower mood states in the affected person. According to the study of World Health Organization (WHO), depression will become the second largest cause of illness threatening the life of human beings in 2020, so early detection, early diagnosis and early treatment of depression is very important to save the health and life of human beings. In order to alleviate the damage caused by depression and make early detection, early diagnosis and early treatment of depression, a portable and accurate depression detection and diagnosis method is most necessary. Due to the highly complexity, nonlinearity and non-stationarity of electroencephalogram (EEG) data in nature, we present a novel method for pervasive EEG-based detection and diagnosis of depression with the resting state eye-closed EEG data of Fp1, Fpz and Fp2 locations of scalp electrodes, which are closely related to emotion, collected through three-electrode pervasive EEG collection device in this paper. Experiment has been conducted and totally 170 (81 depressive patients and 89 normal subjects) subjects' pervasive EEG data have been collected in resting state and eye-closed. Then, Support Vector Machine (SVM) is utilized to analyze the pervasive EEG data and the average accuracy reaches 83.07%. After Friedman Test and post-hoc two-tailed Nemenyi Test, we propose a splitting criterion for pervasive EEG. The data analysis experimental results show that the proposed method for detecting and diagnosing depression is effective and convenient, and it also demonstrate that the three-electrode pervasive EEG collection device has broad prospects in depression detection and diagnosis.
机译:抑郁症是一种精神障碍,其特征在于受影响人群的持续发生的较低情绪状态。根据世界卫生组织(世卫组织)的研究,抑郁症将成为2020年威胁人类生命的第二大生病原因,因此早期检测,早期诊断和早期治疗抑郁症是挽救健康和生活的重要性非常重要人类。为了减轻抑郁症造成的损害,提前检测,早期诊断和早期治疗抑郁,便携式和准确的抑郁检测和诊断方法是最必要的。由于脑电图(EEG)数据的高度复杂性,非线性和非公平性和非公平性,我们提出了一种基于EEG的基于EEG的检测和诊断的新方法,抑郁症的FP1,FPZ和FP2的静止状态闭合EEG数据头皮电极的位置与情感密切相关,通过本文通过三电极普及EEG收集装置收集。实验已经进行,完全170(81名抑郁症患者和89名正常受试者)受试者的普遍存在的EEG数据被收集在休息状态和眼睛闭合。然后,使用支持向量机(SVM)来分析普遍的EEG数据,平均精度达到83.07 %。在Friedman测试和Hoc双尾Nemenyi测试后,我们提出了普及脑电图的分裂标准。数据分析实验结果表明,该检测和诊断抑郁症的方法是有效且方便的,并且还证明了三电极普及的EEG收集装置具有广泛的抑郁检测和诊断前景。

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