Tian Fuze, Zhu Lixian, Shi Qiuxia, Wang Rui, Zhang Lixin, Dong Qunxi, Qian Kun, Zhao Qinglin, Hu Bin
IEEE Trans Biomed Circuits Syst. 2023 Dec;17(6):1305-1318. doi: 10.1109/TBCAS.2023.3292237. Epub 2024 Jan 10.
For depression diagnosis, traditional methods such as interviews and clinical scales have been widely leveraged in the past few decades, but they are subjective, time-consuming, and labor-consuming. With the development of affective computing and Artificial Intelligence (AI) technologies, Electroencephalogram (EEG)-based depression detection methods have emerged. However, previous research has virtually neglected practical application scenarios, as most studies have focused on analyzing and modeling EEG data. Furthermore, EEG data is typically obtained from specialized devices that are large, complex to operate, and poorly ubiquitous. To address these challenges, a wearable three-lead EEG sensor with flexible electrodes was developed to obtain prefrontal-lobe EEG data. Experimental measurements show that the EEG sensor achieves promising performance (background noise of no more than 0.91 μVpp, Signal-to-Noise Ratio (SNR) of 26--48 dB, and electrode-skin contact impedance of less than 1 K Ω). In addition, EEG data from 70 depressed patients and 108 healthy controls were collected using the EEG sensor, and the linear and nonlinear features were extracted. The features were then weighted and selected using the Ant Lion Optimization (ALO) algorithm to improve classification performance. The experimental results show that the k-NN classifier achieves a classification accuracy of 90.70%, specificity of 96.53%, and sensitivity of 81.79%, indicating the promising potential of the three-lead EEG sensor combined with the ALO algorithm and the k-NN classifier for EEG-assisted depression diagnosis.
在过去几十年中,抑郁症诊断主要采用访谈和临床量表等传统方法,但这些方法主观、耗时且费力。随着情感计算和人工智能(AI)技术的发展,基于脑电图(EEG)的抑郁症检测方法应运而生。然而,以往的研究几乎忽略了实际应用场景,因为大多数研究都集中在对EEG数据进行分析和建模。此外,EEG数据通常是通过大型、操作复杂且普及性差的专业设备获取的。为应对这些挑战,研发了一种带有柔性电极的可穿戴三导联EEG传感器,用于获取额叶脑电图数据。实验测量表明,该EEG传感器具有良好的性能(背景噪声不超过0.91μVpp,信噪比(SNR)为26 - 48dB,电极与皮肤的接触阻抗小于1KΩ)。此外,使用该EEG传感器收集了70名抑郁症患者和108名健康对照者的EEG数据,并提取了线性和非线性特征。然后使用蚁狮优化(ALO)算法对这些特征进行加权和选择,以提高分类性能。实验结果表明,k近邻(k-NN)分类器的分类准确率达到90.70%,特异性为96.53%,灵敏度为81.79%,表明三导联EEG传感器结合ALO算法和k-NN分类器在EEG辅助抑郁症诊断方面具有广阔的应用前景。