样本熵
支持向量机
脑电图
朴素贝叶斯分类器
计算机科学
随机森林
特征提取
模式识别(心理学)
逻辑回归
感知器
多层感知器
决策树
去趋势波动分析
人工智能
机器学习
数学
心理学
人工神经网络
精神科
缩放比例
几何学
作者
Milena Čukić,Miodrag Stokić,Slobodan K. Simić,Dragoljub Pokrajac
标识
DOI:10.1007/s11571-020-09581-x
摘要
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.
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