Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei 230022, China.
Soc Cogn Affect Neurosci. 2020 May 19;15(3):359-369. doi: 10.1093/scan/nsaa044.
Neuroimaging studies have linked inter-individual variability in the brain to individualized personality traits. However, only one or several aspects of personality have been effectively predicted based on brain imaging features. The objective of this study was to construct a reliable prediction model of personality in a large sample by using connectome-based predictive modeling (CPM), a recently developed machine learning approach. High-quality resting-state functional magnetic resonance imaging data of 810 healthy young participants from the Human Connectome Project dataset were used to construct large-scale brain networks. Personality traits of the five-factor model (FFM) were assessed by the NEO Five Factor Inventory. We found that CPM successfully and reliably predicted all the FFM personality factors (agreeableness, openness, conscientiousness and neuroticism) other than extraversion in novel individuals. At the neural level, we found that the personality-associated functional networks mainly included brain regions within default mode, frontoparietal executive control, visual and cerebellar systems. Although different feature selection thresholds and parcellation strategies did not significantly influence the prediction results, some findings lost significance after controlling for confounds including age, gender, intelligence and head motion. Our finding of robust personality prediction from an individual's unique functional connectome may help advance the translation of 'brain connectivity fingerprinting' into real-world personality psychological settings.
神经影像学研究将大脑个体间的可变性与个体的人格特质联系起来。然而,基于脑影像特征,只能有效预测人格的一个或几个方面。本研究旨在通过使用连接组预测建模(CPM)构建一个大样本的人格可靠预测模型,CPM 是一种最近开发的机器学习方法。使用人类连接组计划数据集的 810 名健康年轻参与者的高质量静息态功能磁共振成像数据构建大规模脑网络。使用 NEO 五因素量表评估大五人格特质(开放性、宜人性、尽责性、神经质和外向性)。我们发现,CPM 可以成功且可靠地预测除外向性以外的所有大五人格因素。在神经水平上,我们发现人格相关的功能网络主要包括默认模式、额顶叶执行控制、视觉和小脑系统内的脑区。尽管不同的特征选择阈值和分割策略对预测结果没有显著影响,但在控制年龄、性别、智力和头部运动等混杂因素后,一些发现失去了意义。我们从个体独特的功能连接组中发现了稳健的人格预测,这可能有助于将“大脑连接指纹”转化为现实世界的人格心理环境。