Center for Information and Neural Networks, Advanced ICT Research Institute, National Institute of Information and Communications Technology, and Osaka University, 588-2 Iwaoka, Iwaoka-cho, Nishi-ku, Kobe, Japan.
Bunkyo Gakuin University, Fujimino, Saitama, Japan.
Sci Rep. 2022 Nov 28;12(1):20492. doi: 10.1038/s41598-022-24319-x.
While information enriches daily life, it can also sometimes have a negative impact, depending on an individual's mental state. We recorded electroencephalogram (EEG) signals from depressed and non-depressed individuals classified based on the Beck Depression Inventory-II score while they listened to news to clarify differences in their attention to affective information and the impact of attentional bias on language processing. Results showed that depressed individuals are characterized by delayed attention to positive news and require a more increased load on language processing. The feasibility of detecting a depressed state using these EEG characteristics was evaluated by classifying individuals as depressed and non-depressed individuals. The area under the curve in the models trained by the EEG features used was 0.73. This result shows that individuals' mental states may be assessed based on EEG measured during daily activities like listening to news.
虽然信息丰富了日常生活,但它也可能会根据个人的心理状态产生负面影响。我们记录了根据贝克抑郁量表二的得分来分类的抑郁和非抑郁个体在听新闻时的脑电图(EEG)信号,以阐明他们对情感信息的注意力差异以及注意力偏向对语言处理的影响。结果表明,抑郁个体的特征是对正面新闻的注意力延迟,并且需要在语言处理上增加更多的负荷。通过将个体分类为抑郁和非抑郁个体,评估了使用这些 EEG 特征来检测抑郁状态的可行性。使用 EEG 特征训练的模型的曲线下面积为 0.73。该结果表明,可以根据在日常活动(如听新闻)中测量的 EEG 来评估个体的心理状态。