Connectome-based prediction modeling of cognitive control using functional and structural connectivity

IF 2.2 3区 心理学 Q3 NEUROSCIENCES
Qiuyu Lv , Xuanyi Wang , Xiang Wang , Sheng Ge , Pan Lin
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引用次数: 0

Abstract

Background

Cognitive control involves flexibly configuring mental resources and adjusting behavior to achieve goal-directed actions. It is associated with the coordinated activity of brain networks, although it remains unclear how both structural and functional brain networks can predict cognitive control. Connectome-based predictive modeling (CPM) is a powerful tool for predicting cognitive control based on brain networks.

Methods

The study used CPM to predict cognitive control in 102 healthy adults from the UCLA Consortium for Neuropsychiatric Phenomics dataset and further compared structural and functional connectome characteristics that support cognitive control.

Results

Our results showed that both structural (r values 0.263–0.375) and functional (r values 0.336–0.503) connectomes can significantly predict individuals’ cognitive control subcomponents. There is overlap between the functional and structural networks of all three cognitive control subcomponents, particularly in the frontoparietal (FP) and motor (Mot) networks, while each subcomponent also has its own unique weight prediction network. Overall, the functional and structural connectivity that supports different cognitive control subcomponents manifests overlapping and distinct spatial patterns.

Conclusions

The structural and functional connectomes provide complementary information for predicting cognitive control ability. Integrating information from both connectomes offers a more comprehensive understanding of the neural underpinnings of cognitive control.

利用功能和结构连接性建立基于连接组的认知控制预测模型
背景认知控制涉及灵活配置心理资源和调整行为,以实现目标导向的行动。它与大脑网络的协调活动有关,但目前仍不清楚大脑结构和功能网络如何预测认知控制。结果我们的研究结果表明,结构性(r值为0.263-0.375)和功能性(r值为0.336-0.503)连通组都能显著预测个体的认知控制子组件。所有三个认知控制子成分的功能和结构网络之间存在重叠,尤其是在顶叶前部(FP)和运动(Mot)网络中,同时每个子成分也有自己独特的权重预测网络。总体而言,支持不同认知控制子组件的功能和结构连接表现出重叠和独特的空间模式。综合这两个连接组的信息,可以更全面地了解认知控制的神经基础。
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来源期刊
Brain and Cognition
Brain and Cognition 医学-神经科学
CiteScore
4.60
自引率
0.00%
发文量
46
审稿时长
6 months
期刊介绍: Brain and Cognition is a forum for the integration of the neurosciences and cognitive sciences. B&C publishes peer-reviewed research articles, theoretical papers, case histories that address important theoretical issues, and historical articles into the interaction between cognitive function and brain processes. The focus is on rigorous studies of an empirical or theoretical nature and which make an original contribution to our knowledge about the involvement of the nervous system in cognition. Coverage includes, but is not limited to memory, learning, emotion, perception, movement, music or praxis in relationship to brain structure or function. Published articles will typically address issues relating some aspect of cognitive function to its neurological substrates with clear theoretical import, formulating new hypotheses or refuting previously established hypotheses. Clinical papers are welcome if they raise issues of theoretical importance or concern and shed light on the interaction between brain function and cognitive function. We welcome review articles that clearly contribute a new perspective or integration, beyond summarizing the literature in the field; authors of review articles should make explicit where the contribution lies. We also welcome proposals for special issues on aspects of the relation between cognition and the structure and function of the nervous system. Such proposals can be made directly to the Editor-in-Chief from individuals interested in being guest editors for such collections.
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