EDITORIAL article

Front. Neurosci., 13 April 2022

Sec. Brain Imaging Methods

Volume 16 - 2022 | https://doi.org/10.3389/fnins.2022.854471

Editorial: From Raw MEG/EEG to Publication: How to Perform MEG/EEG Group Analysis With Free Academic Software

  • 1. CerCo, CNRS, Paul Sabatier University, Toulouse, France

  • 2. Swartz Center for Computational Neurosciences, Institute of Neural Computation, University of California, San Diego, San Diego, CA, United States

  • 3. Donders Institute for Brain, Cognition, and Behaviour, Radboud University, Nijmegen, Netherlands

  • 4. NatMEG, Karolinska Institutet, Stockholm, Sweden

  • 5. Signal and Image Processing Institute, University of Southern California, Los Angeles, CA, United States

  • 6. Université Paris-Saclay, Inria, CEA, Palaiseau, France

  • 7. Department of Radiology and Biomedical Imaging, University of California, San Francisco, San Francisco, CA, United States

  • 8. Welcome Centre for Human Neuroimaging, UCL Queen Square Institute of Neurology, London, United Kingdom

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Free and open-source academic toolboxes have gained increasing prominence in the field of MEG/EEG research to disseminate cutting-edge methods, share best practices between different research groups, and pool resources for developing essential tools for the MEG/EEG community. Large and vibrant research communities have emerged around several of these toolboxes in recent years. Training events are regularly held around the world where the basics of each toolbox are explained by its respective developers and experienced power users. However, most training material and tutorials only show analysis of a single “typical best” subject, whereas most real MEG/EEG studies involve group data analysis. It is then left to the researchers to figure out how to make the transition and obtain group results. This special Research Topic addresses this gap by publishing detailed descriptions of complete group analyses for which code and data are also shared. The level of detail of the description should be such that the readers will be able to fully reproduce the analysis and results and port the analysis to their own data.

A total of 25 articles, summarized in Table 1, were accepted for this special issue. In particular to foster comparable analysis with different tools and strategies, we encouraged authors to reuse a dataset containing responses to face stimuli acquired by Richard Henson and Daniel Wakeman (Wakeman and Henson, 2015; https://openfmri.org/dataset/ds000117/) (HW dataset). This dataset is formatted following the Brain Imaging Data Structure specification (Gorgolewski et al., 2016), which has become increasingly popular in the MEG (Niso et al., 2018), EEG (Pernet et al., 2019) and iEEG fields (Holdgraf et al., 2019). The specific dataset contains multiple modalities, including EEG (with digitized electrode positions), MEG, fMRI, and anatomical MRI, making it suitable for demonstrating multimodal analysis pipelines. Out of the 25 published articles, 10 are using this data (Table 1). All other articles used data that is also publicly available.

Table 1

TitleAuthorsScript locationLicenseData
type
Primary outcomeLanguageUsesData
The Detection of Phase Amplitude Coupling during Sensory ProcessingSeymour et al.Sup. mat.MEGPhase amplitude couplingMATLABFieldtripYes
Group Analysis in MNE-Python of Evoked Responses from a Tactile Stimulation Paradigm: A Pipeline for Reproducibility at Every Step of Processing, Going from Individual Sensor Space Representations to an across-Group Source Space RepresentationAndersenGitHubMEGBeamformerPythonMNEYes
Group-Level EEG-Processing Pipeline for Flexible Single Trial-Based Analyses Including Linear Mixed ModelsFrömer et al.OSFEEGLinear mixed modelMATLAB and REEGLAB; FieldtripYes
The Harvard Automated Processing Pipeline for Electroencephalography (HAPPE): Standardized Processing Software for Developmental and High-Artifact DataGabard-Durnam et al.HAPPE siteGNU/ GPLEEGAutomated pre-processingMATLABEEGLABYes
Computational Testing for Automated Preprocessing 2: Practical Demonstration of a System for Scientific Data-Processing Workflow Management for High-Volume EEGCowley and KorpelaCTAP siteMITEEGAutomated pre-processingMATLABEEGLABYes
Group Analysis in FieldTrip of Time-Frequency Responses: A Pipeline for Reproducibility at Every Step of Processing, Going From Individual Sensor Space Representations to an Across-Group Source Space RepresentationAndersenPersonal siteMEGBeamformerMATLABFieldtripYes
How to Build a Functional Connectomic Biomarker for Mild Cognitive Impairment From Source Reconstructed MEG Resting-State Activity: The Combination of ROI Representation and Connectivity Estimator MattersDimitriadis et al.FigshareMEGConnectivity analysisMATLABFieldtripYes
Source-Modeling Auditory Processes of EEG Data Using EEGLAB and BrainstormStropahl et al.Sup. Mat.EEGSource analysisMATLABEEGLAB; BrainstormYes
A Student's Guide to Randomization Statistics for Multichannel Event-Related Potentials Using RaguHabermann et al.Ragu siteGNU/ GPLEEGERP; MicrostatesMATLABYes
From ERPs to MVPA Using the Amsterdam Decoding and Modeling Toolbox (ADAM)Fahrenfort et al.ADAM siteGNU/ GPLEEGMVPAMATLABEEGLAB; FieldtripYes (HW)
Group-Level Multivariate Analysis in EasyEEG Toolbox: Examining the Temporal Dynamics Using Topographic ResponsesYang et al.EasyEEG siteGNU/ GPLEEGERP; ClassificationPythonMNEYes (HW)
BEAPP: The Batch Electroencephalography Automated Processing PlatformLevin et al.BEAP siteGNU/ GPLEEGAutomated pre-processingMATLABEEGLAB; PREP; HAPPEYes
A Reproducible MEG/EEG Group Study With the MNE Software: Recommendations, Quality Assessments, and Good PracticesJas et al.MNE siteBSDEEG/
MEG
General purposePythonMNEYes (HW)
Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Pythonvan Vliet et al.MNE siteEEG/
MEG
Connectivity analysisPythonMNEYes (HW)
BrainWave: A MATLAB Toolbox for Beamformer Source Analysis of MEG DataJobst et al.Brainwave siteGNU/ GPLMEGBeamformerMATLABYes
Bayesian Model Selection Maps for Group Studies Using M/EEG DataHarris et al.Sup. MatEEG/
MEG
Bayesian Model Selection MapsMATLABSPMYes
Task-Evoked Dynamic Network Analysis Through Hidden Markov ModelingQuinn et al.GitHubMEGDynamic Network Analysis using Hidden Markov ModelsMATLABSPM; OSLYes (HW)
FieldTrip Made Easy: An Analysis Protocol for Group Analysis of the Auditory Steady State Brain Response in Time, Frequency, and SpacePopov et al.Fieldtrip siteGNU/ GPLEEG/
MEG
General purposeMATLABFieldtripYes
Estimating the Timing of Cognitive Operations With MEG/EEG Latency Measures: A Primer, a Brief Tutorial, and an Implementation of Various MethodsLiesefeldGitHubEEG/
MEG
Timing of cognitive operationsMATLABFieldtripYes (HW)
MEG/EEG Group Analysis With BrainstormTadel et al.Brainstorm siteGNU/ GPLEEG/
MEG
Group analysis; Source localizationMATLABBrainstormYes (HW)
MEG Source Imaging and Group Analysis Using VBMEGTakeda et al.VBMEG siteGNU/ GPLMEGMRI based connectivity analysisMATLABFreesurferYes (HW)
Brainstorm Pipeline Analysis of Resting-State Data From the Open MEG ArchiveNiso et al.Brainstorm siteGNU/ GPLMEGResting state analysisMATLABBrainstormYes
Multimodal Integration of M/EEG and f/MRI Data in SPM12Henson, et al.FigshareEEG/
MEG/
fMRI
Multimodal integration of EEG/MEG with fMRIMATLABSPMYes (HW)
NUTMEG: Open Source Software for M/EEG Source ReconstructionHinkley et al.NUTMEG siteGNU/ GPL and BSDEEG/
MEG
EEG/MEG source reconstructionMATLABNUTMEGYes
From BIDS-Formatted EEG Data to Sensor-Space Group Results: A Fully Reproducible Workflow With EEGLAB and LIMO EEGPernet et al.LIMO siteGNU/ GPL and BSDEEGAutomated processing; EEG statistical analysisMATLABEEGLAB and LIMOYes (HW)

Article part of the special issue by order of publication date.

HW stands for Henson Wakeman face dataset. Sup. Mat. indicate that the article processing scripts are available in supplemental material.

Data not referenced in the article but available at https://zenodo.org/record/998965.

The articles in this special issue focus on different aspects of MEEG data processing. Some articles processed EEG data (n = 9), MEG data (n = 8), joint EEG/MEG data (n = 7), or even EEG/MEG/fMRI data (n = 1). Four articles focused on automated processing of EEG data, 10 dealt

with source localization, 3 with connectivity analysis, 3 with statistical analysis, 2 with EEG data classification. Other topics included microstates and Bayesian modeling. Submissions were based on existing MEEG software, in particular EEGLAB (n = 7), FieldTrip (n = 7), MNE (n = 4), SPM (n = 3), Brainstorm (n = 2), and NUTMEG (n = 1). Of the 25 articles, 21 are using MATLAB, 4 are using Python, and 1 is partially using R. Most scripts and tools were released under the GNU/GPL license (n = 10), BSD or MIT commercial friendly license (n = 2), no specific license (n = 11), or a combination of licenses (n = 2).

For researchers starting to process MEG/EEG data, we would recommend downloading the HW dataset (https://doi.org/10.18112/openneuro.ds000117.v1.0.5) and trying the methods described in this special issue. A simplified BIDS version of this dataset with EEG only is also available (https://doi.org/10.18112/openneuro.ds002718.v1.0.5). Furthermore, we recommend researchers to format their own data to BIDS to facilitate the application of some of the tools in this special issue and help the field move toward better tool integration centered on the BIDS framework.

Overall, there is tremendous potential in using different tools to process the same datasets. First, it forces tool developers to use a standard data format (BIDS) and increases interoperability between tools. Second, these tools offer common features, so the community may compare and check the numerical validity of each approach. Validity checking of MEEG signal processing approaches is important for open-source software, which often has limited resources assigned for testing purposes. Being able to process the same dataset using different tools also makes it simpler for users to compare them and see which one fits their style best, whether it is mixed GUI/script tools like EEGLAB, Brainstorm, SPM and NUTMEG or pure scripting tools such as Fieldtrip or MNE. Finally, making it possible to combine the signal processing pipelines of different tools allows users to develop approaches, leading to new methodological developments.

Publisher's Note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

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Author contributions

AD wrote the manuscript. RO, FT, AG, SN, and VL edited the manuscript. All authors contributed to the article and approved the submitted version.

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

References

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    GorgolewskiK.J.AuerT.CalhounV.D.CraddockR.C.DasS.DuffE.P.et al. (2016). The brain imaging data structure, a format for organizing and describing outputs of neuroimaging experiments. Sci. Data.3, 160044. 10.1038/sdata.2016.44

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    HoldgrafC.AppelhoffS.BickelS.BouchardK.D'AmbrosioS.DavidO.et al. (2019). iEEG-BIDS, extending the Brain Imaging Data Structure specification to human intracranial electrophysiology. Sci. Data.6, 102. 10.1038/s41597-019-0105-7

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    NisoG.GorgolewskiK.J.BockE.BrooksT.L.FlandinG.GramfortA.et al. (2018). MEG-BIDS, the brain imaging data structure extended to magnetoencephalography. Sci. Data.5, 180110. 10.1038/sdata.2018.110

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    PernetC.R.AppelhoffS.GorgolewskiK.J.FlandinG.PhillipsC.DelormeA.et al. (2019). EEG-BIDS, an extension to the brain imaging data structure for electroencephalography. Sci. Data.6, 103. 10.1038/s41597-019-0104-8

  • 5

    WakemanD.HensonR. (2015). A multi-subject, multi-modal human neuroimaging dataset. Sci. Data.2, 150001. 10.1038/sdata.2015.1

Summary

Keywords

EEG, MEG, iEEG, BIDS, pipeline

Citation

Delorme A, Oostenveld R, Tadel F, Gramfort A, Nagarajan S and Litvak V (2022) Editorial: From Raw MEG/EEG to Publication: How to Perform MEG/EEG Group Analysis With Free Academic Software. Front. Neurosci. 16:854471. doi: 10.3389/fnins.2022.854471

Received

14 January 2022

Accepted

25 February 2022

Published

13 April 2022

Volume

16 - 2022

Edited and reviewed by

Vince D. Calhoun, Georgia State University, United States

Updates

Copyright

*Correspondence: Arnaud Delorme

This article was submitted to Brain Imaging Methods, a section of the journal Frontiers in Neuroscience

Disclaimer

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.

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