Linyi University, Linyi, China.
Linyi University, Linyi, China.
Psychiatry Res Neuroimaging. 2023 Jan;328:111582. doi: 10.1016/j.pscychresns.2022.111582. Epub 2022 Dec 20.
Depression is a mental illness and can even lead to suicide if not be diagnosed and treated. Electroencephalograph (EEG) is used to diagnose depression and it is more complexity to extract the features from all the multimodal channel information . In order to simplify the diagnose process and detect clinical depression, the EEG channels with strong depression information should be identified firstly. Therefore, a depression signal correlation identification method based on convolutional neural network (CNN) is proposed. In the method, the labeled multi-channel EEG is used as data. The EEG signals of each channel are divided into neural network training data set and these data is trained by AlexNet network. Then the correlation classification of each channel for depression is identified based on the trained sample. Accuracy and loss functions are used to evaluate classification index.Conversely, the correlation is lower. An experiments is conducted and the results show that the correlation is not consistent. A few of channels are strongly correlated with depression, such as 13, 17, 28, 40, 46, 66 and 69. These EEG channels are selected to diagnose depression.
抑郁症是一种精神疾病,如果得不到诊断和治疗,甚至可能导致自杀。脑电图(EEG)用于诊断抑郁症,从所有多模态通道信息中提取特征更加复杂。为了简化诊断过程和检测临床抑郁症,首先应识别具有强烈抑郁信息的 EEG 通道。因此,提出了一种基于卷积神经网络(CNN)的抑郁信号相关识别方法。在该方法中,使用带标签的多通道 EEG 作为数据。将每个通道的 EEG 信号分为神经网络训练数据集,并使用 AlexNet 网络对这些数据进行训练。然后,根据训练样本识别每个通道对抑郁的相关分类。使用准确性和损失函数评估分类指标。相反,相关性较低。进行了一项实验,结果表明相关性不一致。少数通道与抑郁强烈相关,如 13、17、28、40、46、66 和 69。这些 EEG 通道被选来诊断抑郁症。