University of Groningen.
Utrecht University.
J Cogn Neurosci. 2021 Mar;33(3):510-527. doi: 10.1162/jocn_a_01663. Epub 2020 Dec 16.
Dating back to the 19th century, the discovery of processing stages has been of great interest to researchers in cognitive science. The goal of this paper is to demonstrate the validity of a recently developed method, hidden semi-Markov model multivariate pattern analysis (HsMM-MVPA), for discovering stages directly from EEG data, in contrast to classical reaction-time-based methods. To test the validity of stages discovered with the HsMM-MVPA method, we applied it to two relatively simple tasks where the interpretation of processing stages is straightforward. In these visual discrimination EEG data experiments, perceptual processing and decision difficulty were manipulated. The HsMM-MVPA revealed that participants progressed through five cognitive processing stages while performing these tasks. The brain activation of one of those stages was dependent on perceptual processing, whereas the brain activation and the duration of two other stages were dependent on decision difficulty. In addition, evidence accumulation models (EAMs) were used to assess to what extent the results of HsMM-MVPA are comparable to standard reaction-time-based methods. Consistent with the HsMM-MVPA results, EAMs showed that nondecision time varied with perceptual difficulty and drift rate varied with decision difficulty. Moreover, nondecision and decision time of the EAMs correlated highly with the first two and last three stages of the HsMM-MVPA, respectively, indicating that the HsMM-MVPA gives a more detailed description of stages discovered with this more classical method. The results demonstrate that cognitive stages can be robustly inferred with the HsMM-MVPA.
回溯到 19 世纪,认知科学研究者对加工阶段的发现非常感兴趣。本文的目的是展示一种最近开发的方法,即隐藏半马尔可夫模型多变量模式分析(HsMM-MVPA)的有效性,该方法可直接从 EEG 数据中发现阶段,与经典的基于反应时的方法形成对比。为了测试 HsMM-MVPA 方法发现的阶段的有效性,我们将其应用于两个相对简单的任务中,其中加工阶段的解释非常直接。在这些视觉辨别 EEG 数据实验中,我们操纵了感知加工和决策难度。HsMM-MVPA 揭示了参与者在执行这些任务时经历了五个认知加工阶段。这些阶段中的一个阶段的大脑激活取决于感知加工,而另外两个阶段的大脑激活和持续时间取决于决策难度。此外,还使用证据积累模型(EAMs)来评估 HsMM-MVPA 结果在何种程度上与基于标准反应时的方法可比。与 HsMM-MVPA 结果一致,EAMs 表明非决策时间随感知难度而变化,漂移率随决策难度而变化。此外,EAMs 的非决策和决策时间与 HsMM-MVPA 的前两个和后三个阶段高度相关,这表明 HsMM-MVPA 对用这种更经典的方法发现的阶段提供了更详细的描述。结果表明,认知阶段可以通过 HsMM-MVPA 稳健地推断出来。