Dynamic brain states during reasoning tasks: a co-activation pattern analysis

IF 4.5 2区 医学 Q1 NEUROIMAGING
Fatemeh Hasanzadeh , Christian Habeck , Yaakov Stern
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Abstract

Brain activity exhibits substantial temporal variability during cognitive processes, yet traditional fMRI analyses often fail to capture these dynamic patterns. Co-activation pattern (CAP) analysis has emerged as a promising method to study brain dynamics. CAP analysis provides a powerful framework for capturing transient brain states, however, its application to cognitive tasks remains very limited, with no prior studies specifically investigating its role in reasoning performance. This study investigated CAPs during reasoning tasks, their relationship with cognitive performance, age and other individual differences. We applied CAP analysis to fMRI data from 303 participants performing three reasoning tasks—Matrix Reasoning, Letter Sets, and Paper Folding—along with resting-state data. Using K-means clustering, we identified four distinct CAPs, each exhibiting unique spatial and temporal characteristics. These CAPs were analyzed in relation to predefined resting-state networks, revealing their functional relevance to cognitive task engagement. Key temporal metrics, including fraction occupancy, dwelling time, and transition probabilities, were assessed across reasoning tasks and resting state. The results demonstrate that CAP2 and CAP3 are predominantly engaged during reasoning tasks, with CAP2 strongly overlapping with the visual network and CAP3 exhibiting concurrent default mode and sensorimotor network activations. CAP1, primarily dominant during rest, showed prolonged engagement in older individuals, while CAP4 appeared to function as a transitional state facilitating network reorganization. Regression analyses link longer dwelling times and higher fraction occupancy of CAP2 and CAP3 to superior reasoning performance, whereas excessive transitions to CAP4 negatively impacted cognitive task outcomes. Additionally, aging was associated with reduced engagement in task-relevant CAPs and an increased tendency to transition into baseline-like states. These findings underscore the critical role of dynamic brain state reconfigurations in supporting cognition specifically reasoning and highlight CAP analysis as a powerful tool for studying transient brain function and individual cognitive differences.
推理任务中的动态大脑状态:共同激活模式分析
在认知过程中,大脑活动表现出大量的时间变化,然而传统的功能磁共振成像分析往往无法捕捉到这些动态模式。共激活模式(CAP)分析已成为研究脑动力学的一种很有前途的方法。CAP分析为捕捉短暂的大脑状态提供了一个强大的框架,然而,它在认知任务中的应用仍然非常有限,之前没有研究专门调查它在推理表现中的作用。本研究调查了推理任务中的cap及其与认知表现、年龄和其他个体差异的关系。我们将CAP分析应用于执行三个推理任务(矩阵推理、字母集和折纸)的303名参与者的fMRI数据以及静息状态数据。利用k -均值聚类,我们确定了四个不同的cap,每个cap都表现出独特的时空特征。我们分析了这些cap与预定义的静息状态网络的关系,揭示了它们与认知任务参与的功能相关性。关键的时间指标,包括占用率、停留时间和转移概率,在推理任务和静息状态下进行评估。结果表明,CAP2和CAP3主要参与推理任务,CAP2与视觉网络强烈重叠,CAP3表现出并发的默认模式和感觉运动网络激活。CAP1主要在休息时占主导地位,在老年人中表现出持续的参与,而CAP4似乎是一种促进网络重组的过渡状态。回归分析将较长的停留时间和较高的CAP2和CAP3占用率与较好的推理表现联系起来,而过度过渡到CAP4会对认知任务结果产生负面影响。此外,衰老与任务相关的cap参与减少以及向基线状态过渡的趋势增加有关。这些发现强调了动态大脑状态重构在支持认知特别是推理中的关键作用,并强调了CAP分析作为研究短暂脑功能和个体认知差异的有力工具。
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来源期刊
NeuroImage
NeuroImage 医学-核医学
CiteScore
11.30
自引率
10.50%
发文量
809
审稿时长
63 days
期刊介绍: NeuroImage, a Journal of Brain Function provides a vehicle for communicating important advances in acquiring, analyzing, and modelling neuroimaging data and in applying these techniques to the study of structure-function and brain-behavior relationships. Though the emphasis is on the macroscopic level of human brain organization, meso-and microscopic neuroimaging across all species will be considered if informative for understanding the aforementioned relationships.
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