Zink Nicolas, Stock Ann-Kathrin, Vahid Amirali, Beste Christian
Cognitive Neurophysiology, Department of Child and Adolescent Psychiatry, Faculty of Medicine, Technische Universität Dresden, Dresden, Germany.
Front Hum Neurosci. 2018 Oct 16;12:411. doi: 10.3389/fnhum.2018.00411. eCollection 2018.
Cognitive control processes are advantageous when routines would not lead to the desired outcome, but this can be ill-advised when automated behavior is advantageous. The aim of this study was to identify neural dynamics related to the ability to adapt to different cognitive control demands - a process that has been referred to as 'metacontrol.' A sample of = 227 healthy subjects that was split in a 'high' and 'low adaptability' group based on the behavioral performance in a task with varying control demands. To examine the neurophysiological mechanisms, we combined event-related potential (ERP) recordings with source localization and machine learning approaches. The results show that individuals who are better at strategically adapting to different cognitive control demands benefit from automatizing their response processes in situations where little cognitive control is needed. On a neurophysiological level, neither perceptual/attentional selection processes nor conflict monitoring processes paralleled the behavioral data, although the latter showed a descriptive trend. Behavioral differences in metacontrol abilities were only significantly mirrored by the modulation of response-locked P3 amplitudes, which were accompanied by activation differences in insula (BA13) and middle frontal gyrus (BA9). The machine learning result corroborated this by identifying a predictive/classification feature near the peak of the response-locked P3, which arose from the anterior cingulate cortex (BA24; BA33). In short, we found that metacontrol is associated to the ability to manage response selection processes, especially the ability to effectively downregulate cognitive control under low cognitive control requirements, rather than the ability to upregulate cognitive control.
当常规做法无法带来预期结果时,认知控制过程是有益的,但在自动化行为有益时,这样做可能并不明智。本研究的目的是确定与适应不同认知控制需求的能力相关的神经动力学——这一过程被称为“元控制”。根据在具有不同控制需求的任务中的行为表现,将227名健康受试者的样本分为“高适应性”和“低适应性”两组。为了研究神经生理机制,我们将事件相关电位(ERP)记录与源定位和机器学习方法相结合。结果表明,在策略性地适应不同认知控制需求方面表现更好的个体,在几乎不需要认知控制的情况下,通过自动执行其反应过程而受益。在神经生理层面上,感知/注意力选择过程和冲突监测过程均未与行为数据平行,尽管后者呈现出一种描述性趋势。元控制能力的行为差异仅通过反应锁定P3波幅的调制得到显著反映,同时伴随脑岛(BA13)和额中回(BA9)的激活差异。机器学习结果通过在反应锁定P3峰值附近识别出一个预测/分类特征来证实了这一点,该特征源自前扣带回皮质(BA24;BA33)。简而言之,我们发现元控制与管理反应选择过程的能力相关,特别是在低认知控制需求下有效下调认知控制的能力,而不是上调认知控制的能力。