He Li, Zhuang Kaixiang, Chen Qunlin, Wei Dongtao, Chen Xiaoyi, Fan Jin, Qiu Jiang
Key Laboratory of Cognition and Personality of Ministry of Education.
School of Education.
J Exp Psychol Gen. 2021 Nov;150(11):2193-2207. doi: 10.1037/xge0001047. Epub 2021 Mar 25.
Although the unity and diversity model of executive functions (EFs) has been replicated, there are some studies questioning the validity of the EFs construct. This debate can be partially resolved by directly combining the brain activity pattern in different executive control processes. Previous univariate activation studies have suggested that the neural substrates of different EFs (e.g., updating, inhibiting, and shifting) involve common and distinct brain regions. However, the underlying multivariate neural representation of EFs in terms of unity and diversity is still elusive. Here, we employed the n-back task, stop signal task, and category switching task to investigate the characteristic of the neural representation in the three EF domains. At the global level, multivoxel pattern analysis revealed that a three-way classifier built with global activation pattern successfully distinguished the three EF tasks. At the local level, although most overlapping activations exhibit lower neural representational similarity, the inferior frontal junction showed similar neural representation across the three EFs, which was further confirmed by searchlight analysis that additionally revealed other similar representational regions were located in the presupplementary motor area extend to dorsal midcingulate cortex. In addition, using machine learning-based predictive framework, the resting-state functional networks built with the representational regions of EFs predicted intellectual abilities to some extent in a large independent sample. These findings suggest that different EFs are characterized by dissociable global neural representation but also share similar local neural representation, which contributes to understanding the neural correlates of the unity and diversity of EFs from an integrated framework. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
尽管执行功能(EFs)的统一性和多样性模型已得到重复验证,但仍有一些研究对执行功能这一概念结构的有效性提出质疑。通过直接结合不同执行控制过程中的大脑活动模式,这一争论可以得到部分解决。以往的单变量激活研究表明,不同执行功能(如更新、抑制和转换)的神经基质涉及共同和不同的脑区。然而,执行功能在统一性和多样性方面潜在的多变量神经表征仍然难以捉摸。在此,我们采用n-back任务、停止信号任务和类别转换任务来研究三个执行功能领域中神经表征的特征。在全局层面,多体素模式分析表明,基于全局激活模式构建的三分类器成功区分了这三个执行功能任务。在局部层面,尽管大多数重叠激活表现出较低的神经表征相似性,但额下回交界处在这三种执行功能中表现出相似的神经表征,探照灯分析进一步证实,其他相似的表征区域位于辅助运动区前部延伸至背侧中央扣带回皮质。此外,使用基于机器学习的预测框架,由执行功能表征区域构建的静息态功能网络在一个大型独立样本中在一定程度上预测了智力能力。这些发现表明,不同的执行功能具有可分离的全局神经表征,但也共享相似的局部神经表征,这有助于从一个综合框架理解执行功能统一性和多样性的神经关联。(PsycInfo数据库记录(c)2022美国心理学会,保留所有权利)