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从脑电图中成功鉴别出抑郁症可能归因于恰当的特征提取,而非特定的分类方法。

The successful discrimination of depression from EEG could be attributed to proper feature extraction and not to a particular classification method.

作者信息

Čukić Milena, Stokić Miodrag, Simić Slobodan, Pokrajac Dragoljub

机构信息

Department for General Physiology and Biophysics, Faculty of Biology, University of Belgrade, Studentski trg 16, Belgrade, 11 000 Serbia.

Instituto de Tecnología del Conocimiento, Universidad Complutense de Madrid, Madrid, Spain.

出版信息

Cogn Neurodyn. 2020 Aug;14(4):443-455. doi: 10.1007/s11571-020-09581-x. Epub 2020 Mar 25.

Abstract

Reliable diagnosis of depressive disorder is essential for both optimal treatment and prevention of fatal outcomes. This study aimed to elucidate the effectiveness of two non-linear measures, Higuchi's Fractal Dimension (HFD) and Sample Entropy (SampEn), in detecting depressive disorders when applied on EEG. HFD and SampEn of EEG signals were used as features for seven machine learning algorithms including Multilayer Perceptron, Logistic Regression, Support Vector Machines with the linear and polynomial kernel, Decision Tree, Random Forest, and Naïve Bayes classifier, discriminating EEG between healthy control subjects and patients diagnosed with depression. This study confirmed earlier observations that both non-linear measures can discriminate EEG signals of patients from healthy control subjects. The results suggest that good classification is possible even with a small number of principal components. Average accuracy among classifiers ranged from 90.24 to 97.56%. Among the two measures, SampEn had better performance. Using HFD and SampEn and a variety of machine learning techniques we can accurately discriminate patients diagnosed with depression vs controls which can serve as a highly sensitive, clinically relevant marker for the diagnosis of depressive disorders.

摘要

可靠诊断抑郁症对于优化治疗和预防致命后果至关重要。本研究旨在阐明两种非线性测量方法,即 Higuchi 分形维数(HFD)和样本熵(SampEn),应用于脑电图(EEG)时检测抑郁症的有效性。EEG 信号的 HFD 和 SampEn 被用作七种机器学习算法的特征,这些算法包括多层感知器、逻辑回归、具有线性和多项式核的支持向量机、决策树、随机森林和朴素贝叶斯分类器,用于区分健康对照受试者和被诊断为抑郁症患者的 EEG。本研究证实了早期的观察结果,即这两种非线性测量方法都可以区分患者与健康对照受试者的 EEG 信号。结果表明,即使使用少量主成分也可能实现良好的分类。分类器之间的平均准确率在 90.24%至 97.56%之间。在这两种测量方法中,SampEn 表现更好。使用 HFD 和 SampEn 以及各种机器学习技术,我们可以准确区分被诊断为抑郁症的患者与对照组,这可作为诊断抑郁症的高度敏感、临床相关指标。

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