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Functional connectome of the five-factor model of personality

机译:人格五因素模型的功能连接体

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摘要

A key objective of the emerging field of personality neuroscience is to link the great variety of the enduring dispositions of human behaviour with reliable markers of brain function. This can be achieved by analyzing large sets of data with methods that model whole-brain connectivity patterns. To meet these expectations, we exploited a large repository of personality and neuroimaging measures made publicly available via the Human Connectome Project.Using connectomic analyses based on graph theory, we computed global and local indices of functional connectivity (e.g., nodal strength, efficiency, clustering, betweenness centrality) and related these metrics to the five-factor-model (FFM) personality traits (i.e., neuroticism, extraversion, openness, agreeableness, and conscientiousness). The maximal information coefficient was used to assess for linear and non-linear statistical dependencies across the graph ‘nodes’, which were defined as distinct brain circuits identified via independent component analysis. Multi-variate regression models and ‘train/test’ machine-learning approaches were also used to examine the associations between FFM traits and connectomic indices as well as to test for the generalizability of the main findings, whilst accounting for age and sex differences.Conscientiousness was the sole FFM trait linked to measures of higher functional connectivity in the fronto-parietal and default mode networks. This might provide a mechanistic explanation of the behavioural observation that conscientious people are reliable and efficient in goal-setting or planning.Our study provides new inputs to understanding the neurological basis of personality and contributes to the development of more realistic models of the brain dynamics that mediate personality differences.
机译:人格神经科学新兴领域的一个关键目标是将人类行为的多种持久特征与可靠的脑功能标记联系起来。这可以通过使用建模全脑连接模式的方法分析大量数据来实现。为了满足这些期望,我们利用了通过人类Connectome项目公开提供的大量个性和神经影像学措施库。使用基于图论的连接组学分析,我们计算了功能连接的全局和局部指标(例如节点强度,效率,聚类) (介于中间性中心),并将这些指标与五因素模型(FFM)的人格特征(即神经质,外向性,开放性,和agree可亲和认真)相关联。最大信息系数用于评估图“节点”之间的线性和非线性统计依赖性,这些依赖性定义为通过独立成分分析确定的不同脑回路。多变量回归模型和``训练/测试''机器学习方法也用于检查FFM特征与关联组学指标之间的关联,并测试主要发现的一般性,同时考虑年龄和性别差异。是唯一的FFM特性,与额顶和默认模式网络中更高功能的连接性相关。这可能为行为观察提供了机械的解释,即尽职尽责的人在设定或规划目标方面是可靠而有效的。我们的研究为理解人格的神经学基础提供了新的投入,并有助于开发更现实的大脑动力学模型调解人格差异。

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