Kraljević Nevena, Langner Robert, Küppers Vincent, Raimondo Federico, Patil Kaustubh R, Eickhoff Simon B, Müller Veronika I
Institute of Neuroscience and Medicine (INM-7: Brain and Behaviour), Research Centre Jülich, Jülich, Germany.
Institute of Systems Neuroscience, Medical Faculty and University Hospital Düsseldorf, Heinrich Heine University Düsseldorf.
bioRxiv. 2023 Nov 18:2023.05.11.540387. doi: 10.1101/2023.05.11.540387.
Predicting individual behavior from brain functional connectivity (FC) patterns can contribute to our understanding of human brain functioning. This may apply in particular if predictions are based on features derived from circumscribed, defined functional networks, which improves interpretability. Furthermore, some evidence suggests that task-based FC data may yield more successful predictions of behavior than resting-state FC data. Here, we comprehensively examined to what extent the correspondence of functional network priors and task states with behavioral target domains influences the predictability of individual performance in cognitive, social, and affective tasks. To this end, we used data from the Human Connectome Project for large-scale out-of-sample predictions of individual abilities in working memory (WM), theory-of-mind cognition (SOCIAL), and emotion processing (EMO) from FC of corresponding and non-corresponding states (WM/SOCIAL/EMO/resting-state) and networks (WM/SOCIAL/EMO/whole-brain connectome). Using root mean squared error and coefficient of determination to evaluate model fit revealed that predictive performance was rather poor overall. Predictions from whole-brain FC were slightly better than those from FC in task-specific networks, and a slight benefit of predictions based on FC from task versus resting state was observed for performance in the WM domain. Beyond that, we did not find any significant effects of a correspondence of network, task state, and performance domains. Together, these results suggest that multivariate FC patterns during both task and resting states contain rather little information on individual performance levels, calling for a reconsideration of how the brain mediates individual differences in mental abilities.
从大脑功能连接(FC)模式预测个体行为有助于我们理解人类大脑的功能。如果预测基于从限定的、定义明确的功能网络中提取的特征,这一点可能尤其适用,因为这样可以提高可解释性。此外,一些证据表明,基于任务的FC数据可能比静息态FC数据能更成功地预测行为。在此,我们全面研究了功能网络先验和任务状态与行为目标领域的对应程度在多大程度上影响认知、社会和情感任务中个体表现的可预测性。为此,我们使用了人类连接体项目的数据,对工作记忆(WM)、心理理论认知(SOCIAL)和情绪处理(EMO)中相应和非相应状态(WM/SOCIAL/EMO/静息态)以及网络(WM/SOCIAL/EMO/全脑连接组)的FC进行个体能力的大规模样本外预测。使用均方根误差和决定系数来评估模型拟合度,结果表明总体预测性能相当差。全脑FC的预测略优于特定任务网络FC的预测,并且在WM领域的表现中,基于任务的FC预测相对于静息态FC预测有轻微优势。除此之外,我们没有发现网络、任务状态和表现领域之间的对应关系有任何显著影响。总之,这些结果表明,任务和静息状态下的多变量FC模式包含的关于个体表现水平的信息相当少,这就需要重新考虑大脑如何介导心理能力的个体差异。