Jach Hayley K, Feuerriegel Daniel, Smillie Luke D
Melbourne School of Psychological Sciences, The University of Melbourne, Australia.
Melbourne School of Psychological Sciences, The University of Melbourne, Australia.
Cortex. 2020 Sep;130:158-171. doi: 10.1016/j.cortex.2020.05.013. Epub 2020 Jun 13.
Can personality be predicted from oscillatory patterns produced by the brain at rest? To date, relatively few studies using electroencephalography (EEG) have yielded consistent relations between personality trait measures and spectral power. Thus, new exploratory research may help develop targeted hypotheses about how neural processes associated with EEG activity may relate to personality differences. We used multivariate pattern analysis to decode personality scores (i.e., Big Five traits) from resting EEG frequency power spectra. Up to 8 minutes of EEG data was recorded per participant prior to completing an unrelated task (N = 168, M = 23.51, 57% female) and, in a subset of participants, after task completion (N = 96, M = 23.22, 52% female). In each recording, participants alternated between open and closed eyes. Linear support vector regression with 10-fold cross validation was performed using the power from 62 scalp electrodes within 1 Hz frequency bins from 1 to 30 Hz. One Big Five trait, agreeableness, could be decoded from EEG power ranging from 8 to 19 Hz, and this was consistent across all four recording periods. Neuroticism was decodable using data within the 3-6 Hz range, albeit less consistently. Posterior alpha power negatively correlated with agreeableness, whereas parietal beta power positively correlated with agreeableness. We suggest methods to draw from our results and develop targeted future hypotheses, such as linking to individual alpha frequency and incorporating self-reported emotional states. Our open dataset can be harnessed to reproduce results or investigate new research questions concerning the biological basis of personality.
能否根据大脑静息时产生的振荡模式来预测人格?迄今为止,相对较少使用脑电图(EEG)的研究得出了人格特质测量与频谱功率之间的一致关系。因此,新的探索性研究可能有助于提出关于与EEG活动相关的神经过程如何与人性格差异相关的有针对性的假设。我们使用多变量模式分析从静息EEG频率功率谱中解码人格分数(即大五人格特质)。在完成一项无关任务之前,每位参与者记录了长达8分钟的EEG数据(N = 168,M = 23.51,57%为女性),并且在一部分参与者中,在任务完成后也进行了记录(N = 96,M = 23.22,52%为女性)。在每次记录中,参与者在睁眼和闭眼之间交替。使用来自1至30Hz的1Hz频率区间内62个头皮电极的功率,进行了10折交叉验证的线性支持向量回归。大五人格特质之一的宜人性,可以从8至19Hz的EEG功率中解码出来,并且在所有四个记录时段都是一致的。神经质可以使用3至6Hz范围内的数据进行解码,尽管一致性较差。后α波功率与宜人性呈负相关,而顶叶β波功率与宜人性呈正相关。我们提出了从我们的结果中借鉴并制定有针对性的未来假设的方法,例如与个体α频率联系起来并纳入自我报告的情绪状态。我们的开放数据集可用于重现结果或研究有关人格生物学基础的新研究问题。