Li Gang, Zhong Hongyang, Wang Jie, Yang Yixin, Li Huayun, Wang Sujie, Sun Yu, Qi Xuchen
Key Laboratory for Biomedical Engineering of Ministry of Education of China, Department of Biomedical Engineering, Zhejiang University, Hangzhou 310058, China.
College of Mathematical Medicine, Zhejiang Normal University, Jinhua 321004, China.
Brain Sci. 2023 Feb 22;13(3):384. doi: 10.3390/brainsci13030384.
Depression has become one of the most common mental illnesses, causing serious physical and mental harm. However, there remain unclear and uniform physiological indicators to support the diagnosis of clinical depression. This study aimed to use machine learning techniques to investigate the abnormal multidimensional EEG features in patients with depression. Resting-state EEG signals were recorded from 41 patients with depression and 34 healthy controls. Multiple dimensional characteristics were extracted, including power spectral density (PSD), fuzzy entropy (FE), and phase lag index (PLI). These three different dimensional characteristics with statistical differences between two groups were ranked by three machine learning algorithms. Then, the ranked characteristics were placed into the classifiers according to the importance of features to obtain the optimal feature subset with the highest classification accuracy. The results showed that the optimal feature subset contained 86 features with the highest classification accuracy of 98.54% ± 0.21%. According to the statistics of the optimal feature subset, PLI had the largest number of features among the three categories, and the number of beta features was bigger than other rhythms. Moreover, compared to the healthy controls, the PLI values in the depression group increased in theta and beta rhythms, but decreased in alpha1 and alpha2 rhythms. The PSD of theta and beta rhythms were significantly greater in depression group than that in healthy controls, and the FE of beta rhythm showed the same trend. These findings indicate that the distribution of abnormal multidimensional features is potentially useful for the diagnosis of depression and understanding of neural mechanisms.
抑郁症已成为最常见的精神疾病之一,造成严重的身心伤害。然而,目前仍缺乏明确统一的生理指标来支持临床抑郁症的诊断。本研究旨在运用机器学习技术探究抑郁症患者异常的多维脑电图特征。记录了41例抑郁症患者和34名健康对照者的静息态脑电图信号。提取了多个维度特征,包括功率谱密度(PSD)、模糊熵(FE)和相位滞后指数(PLI)。通过三种机器学习算法对两组间存在统计学差异的这三种不同维度特征进行排序。然后,根据特征重要性将排序后的特征放入分类器中,以获得分类准确率最高的最优特征子集。结果显示,最优特征子集包含86个特征,最高分类准确率为98.54%±0.21%。根据最优特征子集的统计,PLI在三类特征中数量最多,且β频段特征数量多于其他节律。此外,与健康对照相比,抑郁症组在θ和β节律中的PLI值升高,但在α1和α2节律中降低。抑郁症组θ和β节律的PSD显著高于健康对照组,β节律的FE也呈现相同趋势。这些发现表明,异常多维特征的分布可能有助于抑郁症的诊断及神经机制的理解。