Jan Damián, de Vega Manuel, López-Pigüi Joana, Padrón Iván
Instituto Universitario de Neurociencia, Universidad de La Laguna, 38200 La Laguna, Santa Cruz de Tenerife, Spain.
Department of Psychology, Faculty of Health Sciences, University of Hull, Kingston upon Hull HU6 7RX, UK.
Brain Sci. 2022 Nov 6;12(11):1506. doi: 10.3390/brainsci12111506.
The growing number of depressive people and the overload in primary care services make it necessary to identify depressive states with easily accessible biomarkers such as mobile electroencephalography (EEG). Some studies have addressed this issue by collecting and analyzing EEG resting state in a search of appropriate features and classification methods. Traditionally, EEG resting state classification methods for depression were mainly based on linear or a combination of linear and non-linear features. We hypothesize that participants with ongoing depressive states differ from controls in complex patterns of brain dynamics that can be captured in EEG resting state data, using only nonlinear measures on a few electrodes, making it possible to develop cheap and wearable devices that could be even monitored through smartphones. To validate such a perspective, a resting-state EEG study was conducted with 50 participants, half with depressive state (DEP) and half controls (CTL). A data-driven approach was applied to select the most appropriate time window and electrodes for the EEG analyses, as suggested by Giacometti, as well as the most efficient nonlinear features and classifiers, to distinguish between CTL and DEP participants. Nonlinear features showing temporo-spatial and spectral complexity were selected. The results confirmed that computing nonlinear features from a few selected electrodes in a 15 s time window are sufficient to classify DEP and CTL participants accurately. Finally, after training and testing internally the classifier, the trained machine was applied to EEG resting state data (CTL and DEP) from a publicly available database, validating the capacity of generalization of the classifier with data from different equipment, population, and environment obtaining an accuracy near 100%.
抑郁症患者数量的不断增加以及初级保健服务的超负荷,使得有必要通过易于获取的生物标志物(如移动脑电图(EEG))来识别抑郁状态。一些研究通过收集和分析脑电图静息状态来解决这个问题,以寻找合适的特征和分类方法。传统上,抑郁症的脑电图静息状态分类方法主要基于线性特征或线性与非线性特征的组合。我们假设,处于持续抑郁状态的参与者与对照组在大脑动态的复杂模式上存在差异,这些差异可以在脑电图静息状态数据中捕获,仅使用少数电极上的非线性测量方法,这使得开发甚至可以通过智能手机进行监测的廉价可穿戴设备成为可能。为了验证这一观点,对50名参与者进行了一项静息状态脑电图研究,其中一半为抑郁状态(DEP),另一半为对照组(CTL)。采用数据驱动的方法来选择脑电图分析最合适的时间窗口和电极,正如贾科梅蒂所建议的,以及最有效的非线性特征和分类器,以区分CTL和DEP参与者。选择了显示时空和频谱复杂性的非线性特征。结果证实,在15秒的时间窗口内从少数选定电极计算非线性特征足以准确分类DEP和CTL参与者。最后,在对分类器进行内部训练和测试后,将训练好的机器应用于来自公开可用数据库的脑电图静息状态数据(CTL和DEP),用来自不同设备、人群和环境的数据验证分类器的泛化能力,准确率接近100%。