静息态脑电图振荡能预测人格特质吗?重复研究

IF 2.7 3区 医学 Q1 BEHAVIORAL SCIENCES
Christoph Fruehlinger , Katharina Paul , Jan Wacker
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引用次数: 0

摘要

人格神经科学旨在揭示人格的神经生物学基础。在这方面,确定大脑活动测量与人格特质之间的联系非常重要。Jach 等人(2020 年)采用完全归纳的方法,试图通过多变量模式分析(MVPA)从静息态频谱脑电图(EEG)中预测人格特质得分,并发现了对 "宜人 "有意义的结果。这项工作的探索性质以及对一般可复制性的担忧要求进行严格的复制,而这正是本研究的目的。我们将相同的分析方法应用于一个大型数据集(N = 772),以评估之前结果的稳健性。与 Jach 等人(2020 年)类似,我们使用支持向量回归(SVR)分析了睁眼和闭眼完成无关任务前后 8 分钟的静息状态脑电图。我们使用了 10 倍交叉验证来评估 59 个脑电图电极在 1 到 30 Hz 的 30 个频段内的频谱功率与大五人格特质得分之间的预测准确性。我们无法复制关于 "宜人性 "的研究结果。我们将整个脑电信号参数化为周期性和非周期性信号成分,从而扩展了分析范围。然而,这两种成分都没有与五大人格特质产生有意义的关联。我们的结果并不支持最初的结果,并表明人格特质至少不能从静息态频谱功率中得到实质性的预测。未来要确定大脑与人格之间稳健且可复制的关联,可能需要采用其他分析方法,并对所有分析步骤进行严格的预注册。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can personality traits be predicted from resting-state EEG oscillations? A replication study
Personality neuroscience seeks to uncover the neurobiological underpinnings of personality. Identifying links between measures of brain activity and personality traits is important in this respect. Using an entirely inductive approach, Jach et al. (2020) attempted to predict personality trait scores from resting-state spectral electroencephalography (EEG) using multivariate pattern analysis (MVPA) and found meaningful results for Agreeableness. The exploratory nature of this work and concerns about replicability in general require a rigorous replication, which was the aim of the current study. We applied the same analytic approach to a large data set (N = 772) to evaluate the robustness of the previous results. Similar to Jach et al. (2020), 8 min of resting-state EEG before and after unrelated tasks with both eyes open and closed were analyzed using support vector regressions (SVR). A 10-fold cross-validation was used to evaluate the prediction accuracy between the spectral power of 59 EEG electrodes within 30 frequency bins ranging from 1 to 30 Hz and Big Five personality trait scores. We were not able to replicate the findings for Agreeableness. We extended the analysis by parameterizing the total EEG signal into its periodic and aperiodic signal components. However, neither component was meaningfully associated with the Big Five personality traits. Our results do not support the initial results and indicate that personality traits may at least not be substantially predictable from resting-state spectral power. Future identification of robust and replicable brain-personality associations will likely require alternative analysis methods and rigorous preregistration of all analysis steps.
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来源期刊
Biological Psychology
Biological Psychology 医学-行为科学
CiteScore
4.20
自引率
11.50%
发文量
146
审稿时长
3 months
期刊介绍: Biological Psychology publishes original scientific papers on the biological aspects of psychological states and processes. Biological aspects include electrophysiology and biochemical assessments during psychological experiments as well as biologically induced changes in psychological function. Psychological investigations based on biological theories are also of interest. All aspects of psychological functioning, including psychopathology, are germane. The Journal concentrates on work with human subjects, but may consider work with animal subjects if conceptually related to issues in human biological psychology.
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