Improvements in task performance after practice are associated with scale-free dynamics of brain activity.

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Network Neuroscience Pub Date : 2023-10-01 eCollection Date: 2023-01-01 DOI:10.1162/netn_a_00319
Omid Kardan, Andrew J Stier, Elliot A Layden, Kyoung Whan Choe, Muxuan Lyu, Xihan Zhang, Sian L Beilock, Monica D Rosenberg, Marc G Berman
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Abstract

Although practicing a task generally benefits later performance on that same task, there are individual differences in practice effects. One avenue to model such differences comes from research showing that brain networks extract functional advantages from operating in the vicinity of criticality, a state in which brain network activity is more scale-free. We hypothesized that higher scale-free signal from fMRI data, measured with the Hurst exponent (H), indicates closer proximity to critical states. We tested whether individuals with higher H during repeated task performance would show greater practice effects. In Study 1, participants performed a dual-n-back task (DNB) twice during MRI (n = 56). In Study 2, we used two runs of n-back task (NBK) data from the Human Connectome Project sample (n = 599). In Study 3, participants performed a word completion task (CAST) across six runs (n = 44). In all three studies, multivariate analysis was used to test whether higher H was related to greater practice-related performance improvement. Supporting our hypothesis, we found patterns of higher H that reliably correlated with greater performance improvement across participants in all three studies. However, the predictive brain regions were distinct, suggesting that the specific spatial H↑ patterns are not task-general.

Abstract Image

Abstract Image

Abstract Image

练习后任务表现的改善与大脑活动的无标度动力学有关。
尽管练习一项任务通常有利于以后在同一任务上的表现,但练习效果存在个体差异。模拟这种差异的一种途径来自于研究表明,大脑网络从临界附近的操作中提取功能优势,在临界附近的状态下,大脑网络活动更无标度。我们假设,用赫斯特指数(H)测量的fMRI数据中的无标度信号越高,表明更接近临界状态。我们测试了在重复任务表现中H较高的个体是否会表现出更大的练习效果。在研究1中,参与者在MRI期间进行了两次双n背任务(DNB)(n=56)。在研究2中,我们使用了来自人类连接体项目样本(n=599)的两次n-back任务(NBK)数据。在研究3中,参与者进行了六次单词完成任务(CAST)(n=44)。在所有三项研究中,使用多变量分析来测试较高的H是否与更大的实践相关绩效改善有关。支持我们的假设,我们发现在所有三项研究中,较高的H模式与参与者的更大表现改善可靠相关。然而,预测大脑区域是不同的,这表明特定的空间H↑ 模式并不是一般任务。
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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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