Krumpe Tanja, Scharinger Christian, Rosenstiel Wolfgang, Gerjets Peter, Spüler Martin
Department of Computer Engineering, University of Tübingen, Sand 14, 72076 Tübingen, Germany.
Department of Computer Engineering, University of Tübingen, Sand 14, 72076 Tübingen, Germany.
Biol Psychol. 2018 Nov;139:163-172. doi: 10.1016/j.biopsycho.2018.09.008. Epub 2018 Nov 4.
According to current theoretical models of working memory (WM), executive functions (EFs) like updating, inhibition and shifting play an important role in WM functioning. The models state that EFs highly correlate with each other but also have some individual variance which makes them separable processes. Since this theory has mostly been substantiated with behavioral data like reaction time and the ability to execute a task correctly, the aim of this paper is to find evidence for diversity (unique properties) of the EFs updating and inhibition in neural correlates of EEG data by means of using brain-computer interface (BCI) methods as a research tool. To highlight the benefit of this approach we compare this new methodology to classical analysis approaches.
An existing study has been reinvestigated by applying neurophysiological analysis in combination with support vector machine (SVM) classification on recorded electroencephalography (EEG) data to determine the separability and variety of the two EFs updating and inhibition on a single trial basis.
The SVM weights reveal a set of distinct features as well as a set of shared features for the two EFs updating and inhibition in the theta and the alpha band power.
In this paper we find evidence that correlates for unity and diversity of EFs can be found in neurophysiological data. Machine learning approaches reveal shared but also distinct properties for the EFs. This study shows that using methods from brain-computer interface (BCI) research, like machine learning, as a tool for the validation of psychological models and theoretical constructs is a new approach that is highly versatile and could lead to many new insights.
根据当前工作记忆(WM)的理论模型,诸如更新、抑制和转换等执行功能(EFs)在WM功能中起着重要作用。这些模型表明,执行功能彼此高度相关,但也存在一些个体差异,这使得它们成为可分离的过程。由于该理论大多已通过诸如反应时间和正确执行任务的能力等行为数据得到证实,本文旨在通过使用脑机接口(BCI)方法作为研究工具,在脑电图(EEG)数据的神经关联中寻找执行功能更新和抑制的多样性(独特属性)的证据。为了突出这种方法的优势,我们将这种新方法与经典分析方法进行比较。
通过将神经生理学分析与支持向量机(SVM)分类相结合,对记录的脑电图(EEG)数据进行重新研究,以确定单次试验中执行功能更新和抑制这两种功能的可分离性和多样性。
支持向量机权重揭示了theta和alpha频段功率中执行功能更新和抑制这两种功能的一组独特特征以及一组共享特征。
在本文中,我们发现证据表明,在神经生理学数据中可以找到与执行功能的统一性和多样性相关的内容。机器学习方法揭示了执行功能的共享属性和独特属性。本研究表明,使用脑机接口(BCI)研究中的方法,如机器学习,作为验证心理模型和理论结构的工具是一种高度通用的新方法,可能会带来许多新的见解。