Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models
Here we present an application of an EEG processing pipeline customizing EEGLAB and FieldTrip functions, specifically optimized to flexibly analyze EEG data based on single trial information. The key component of our approach is to create a comprehensive 3-D EEG data structure including all trials a...
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doaj-61046339c19045f3a67bb5d987b761152020-11-25T01:30:26ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2018-02-011210.3389/fnins.2018.00048315982Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed ModelsRomy Frömer0Romy Frömer1Martin Maier2Martin Maier3Rasha Abdel Rahman4Rasha Abdel Rahman5Cognitive Linguistic and Psychological Science, Brown University, Providence, RI, United StatesHumboldt-Universität zu Berlin, Berlin, GermanyHumboldt-Universität zu Berlin, Berlin, GermanyBerlin School of Mind and Brain, Humboldt-Universität zu Berlin, Berlin, GermanyHumboldt-Universität zu Berlin, Berlin, GermanyBerlin School of Mind and Brain, Humboldt-Universität zu Berlin, Berlin, GermanyHere we present an application of an EEG processing pipeline customizing EEGLAB and FieldTrip functions, specifically optimized to flexibly analyze EEG data based on single trial information. The key component of our approach is to create a comprehensive 3-D EEG data structure including all trials and all participants maintaining the original order of recording. This allows straightforward access to subsets of the data based on any information available in a behavioral data structure matched with the EEG data (experimental conditions, but also performance indicators, such accuracy or RTs of single trials). In the present study we exploit this structure to compute linear mixed models (LMMs, using lmer in R) including random intercepts and slopes for items. This information can easily be read out from the matched behavioral data, whereas it might not be accessible in traditional ERP approaches without substantial effort. We further provide easily adaptable scripts for performing cluster-based permutation tests (as implemented in FieldTrip), as a more robust alternative to traditional omnibus ANOVAs. Our approach is particularly advantageous for data with parametric within-subject covariates (e.g., performance) and/or multiple complex stimuli (such as words, faces or objects) that vary in features affecting cognitive processes and ERPs (such as word frequency, salience or familiarity), which are sometimes hard to control experimentally or might themselves constitute variables of interest. The present dataset was recorded from 40 participants who performed a visual search task on previously unfamiliar objects, presented either visually intact or blurred. MATLAB as well as R scripts are provided that can be adapted to different datasets.http://journal.frontiersin.org/article/10.3389/fnins.2018.00048/fullEEGEEGLabLinear mixed modelscluster-based permutation testsprocessing pipeline |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Romy Frömer Romy Frömer Martin Maier Martin Maier Rasha Abdel Rahman Rasha Abdel Rahman |
spellingShingle |
Romy Frömer Romy Frömer Martin Maier Martin Maier Rasha Abdel Rahman Rasha Abdel Rahman Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models Frontiers in Neuroscience EEG EEGLab Linear mixed models cluster-based permutation tests processing pipeline |
author_facet |
Romy Frömer Romy Frömer Martin Maier Martin Maier Rasha Abdel Rahman Rasha Abdel Rahman |
author_sort |
Romy Frömer |
title |
Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models |
title_short |
Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models |
title_full |
Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models |
title_fullStr |
Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models |
title_full_unstemmed |
Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed Models |
title_sort |
group-level eeg-processing pipeline for flexible single trial-based analyses including linear mixed models |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2018-02-01 |
description |
Here we present an application of an EEG processing pipeline customizing EEGLAB and FieldTrip functions, specifically optimized to flexibly analyze EEG data based on single trial information. The key component of our approach is to create a comprehensive 3-D EEG data structure including all trials and all participants maintaining the original order of recording. This allows straightforward access to subsets of the data based on any information available in a behavioral data structure matched with the EEG data (experimental conditions, but also performance indicators, such accuracy or RTs of single trials). In the present study we exploit this structure to compute linear mixed models (LMMs, using lmer in R) including random intercepts and slopes for items. This information can easily be read out from the matched behavioral data, whereas it might not be accessible in traditional ERP approaches without substantial effort. We further provide easily adaptable scripts for performing cluster-based permutation tests (as implemented in FieldTrip), as a more robust alternative to traditional omnibus ANOVAs. Our approach is particularly advantageous for data with parametric within-subject covariates (e.g., performance) and/or multiple complex stimuli (such as words, faces or objects) that vary in features affecting cognitive processes and ERPs (such as word frequency, salience or familiarity), which are sometimes hard to control experimentally or might themselves constitute variables of interest. The present dataset was recorded from 40 participants who performed a visual search task on previously unfamiliar objects, presented either visually intact or blurred. MATLAB as well as R scripts are provided that can be adapted to different datasets. |
topic |
EEG EEGLab Linear mixed models cluster-based permutation tests processing pipeline |
url |
http://journal.frontiersin.org/article/10.3389/fnins.2018.00048/full |
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