Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies

Significant achievements have been made in the fMRI field by pooling statistical results from multiple studies (meta-analysis). More recently, fMRI standardization efforts have focused on enabling the joint analysis of raw fMRI data across studies (mega-analysis), with the hope of achieving more det...

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Main Authors: Nima Bigdely-Shamlo, Jonathan Touryan, Alejandro Ojeda, Christian Kothe, Tim Mullen, Kay Robbins
Format: Article
Language:English
Published: Elsevier 2020-02-01
Series:NeuroImage
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1053811919309528
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spelling doaj-e9bdd53a9aea4608afc327de477da9ef2020-11-25T02:54:04ZengElsevierNeuroImage1095-95722020-02-01207116361Automated EEG mega-analysis I: Spectral and amplitude characteristics across studiesNima Bigdely-Shamlo0Jonathan Touryan1Alejandro Ojeda2Christian Kothe3Tim Mullen4Kay Robbins5Intheon, 6020 Cornerstone Ct W Ste 220 San Diego, CA, 92121, USACCDC Army Research Laboratory, Human Research and Engineering Directorate, 7101 Mulberry Point Rd, Aberdeen Proving Ground, MD, 21005, USAIntheon, 6020 Cornerstone Ct W Ste 220 San Diego, CA, 92121, USAIntheon, 6020 Cornerstone Ct W Ste 220 San Diego, CA, 92121, USAIntheon, 6020 Cornerstone Ct W Ste 220 San Diego, CA, 92121, USADepartment of Computer Science, University of Texas at San Antonio, One UTSA Circle, San Antonio, 78249, USA; Corresponding author.Significant achievements have been made in the fMRI field by pooling statistical results from multiple studies (meta-analysis). More recently, fMRI standardization efforts have focused on enabling the joint analysis of raw fMRI data across studies (mega-analysis), with the hope of achieving more detailed insights. However, it has not been clear if such analyses in the EEG field are possible or equally fruitful. Here we present the results of a large-scale EEG mega-analysis using 18 studies from six sites representing several different experimental paradigms. We demonstrate that when meta-data are consistent across studies, both channel-level and source-level EEG mega-analysis are possible and can provide insights unavailable in single studies. The analysis uses a fully-automated processing pipeline to reduce line noise, interpolate noisy channels, perform robust referencing, remove eye-activity, and further identify outlier signals. We define several robust measures based on channel amplitude and dispersion to assess the comparability of data across studies and observe the effect of various processing steps on these measures. Using ICA-based dipolar sources, we also observe consistent differences in overall frequency baseline amplitudes across brain areas. For example, we observe higher alpha in posterior vs anterior regions and higher beta in temporal regions. We also detect consistent differences in the slope of the aperiodic portion of the EEG spectrum across brain areas. In a companion paper, we apply mega-analysis to assess commonalities in event-related EEG features across studies. The continuous raw and preprocessed data used in this analysis are available through the DataCatalog at https://cancta.net.http://www.sciencedirect.com/science/article/pii/S1053811919309528EEG/MEGMeta-analysisMega-analysisSignal statisticsLarge-scaleNeuroinformatics
collection DOAJ
language English
format Article
sources DOAJ
author Nima Bigdely-Shamlo
Jonathan Touryan
Alejandro Ojeda
Christian Kothe
Tim Mullen
Kay Robbins
spellingShingle Nima Bigdely-Shamlo
Jonathan Touryan
Alejandro Ojeda
Christian Kothe
Tim Mullen
Kay Robbins
Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies
NeuroImage
EEG/MEG
Meta-analysis
Mega-analysis
Signal statistics
Large-scale
Neuroinformatics
author_facet Nima Bigdely-Shamlo
Jonathan Touryan
Alejandro Ojeda
Christian Kothe
Tim Mullen
Kay Robbins
author_sort Nima Bigdely-Shamlo
title Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies
title_short Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies
title_full Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies
title_fullStr Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies
title_full_unstemmed Automated EEG mega-analysis I: Spectral and amplitude characteristics across studies
title_sort automated eeg mega-analysis i: spectral and amplitude characteristics across studies
publisher Elsevier
series NeuroImage
issn 1095-9572
publishDate 2020-02-01
description Significant achievements have been made in the fMRI field by pooling statistical results from multiple studies (meta-analysis). More recently, fMRI standardization efforts have focused on enabling the joint analysis of raw fMRI data across studies (mega-analysis), with the hope of achieving more detailed insights. However, it has not been clear if such analyses in the EEG field are possible or equally fruitful. Here we present the results of a large-scale EEG mega-analysis using 18 studies from six sites representing several different experimental paradigms. We demonstrate that when meta-data are consistent across studies, both channel-level and source-level EEG mega-analysis are possible and can provide insights unavailable in single studies. The analysis uses a fully-automated processing pipeline to reduce line noise, interpolate noisy channels, perform robust referencing, remove eye-activity, and further identify outlier signals. We define several robust measures based on channel amplitude and dispersion to assess the comparability of data across studies and observe the effect of various processing steps on these measures. Using ICA-based dipolar sources, we also observe consistent differences in overall frequency baseline amplitudes across brain areas. For example, we observe higher alpha in posterior vs anterior regions and higher beta in temporal regions. We also detect consistent differences in the slope of the aperiodic portion of the EEG spectrum across brain areas. In a companion paper, we apply mega-analysis to assess commonalities in event-related EEG features across studies. The continuous raw and preprocessed data used in this analysis are available through the DataCatalog at https://cancta.net.
topic EEG/MEG
Meta-analysis
Mega-analysis
Signal statistics
Large-scale
Neuroinformatics
url http://www.sciencedirect.com/science/article/pii/S1053811919309528
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