Global EEG Norms

Banner image of the 2024 GBC Assembly'

Overview

This project is a multi-national EEG normative initiative for creating international standards for MEEG analysis, under the focus of the Global Brain Consortium (GBC). The initiative is led by Dr. Pedro Valdes-Sosa, at the University of Electronic Science and Technology of China (UESTC) and it joins several scientists all around the world.

Background

The pilot phase of the project started in March 2021. This initial proof of concept aims to calculate populational normative descriptors at the scalp level and with a reduced set of 19 electrodes of the international 1020 system.

Resting state (eyes closed) EEG data from 1586 healthy subjects have been collected from 15 research groups, located in 9 countries across the Americas, Europe, and Asia.

Data Cohorts

  • Barbados
  • China
  • Columbia
  • Cuba
  • Germany
  • Malaysia
  • Russia
  • Switzerland
  • USA

Goals

Creating Signatures to describe EEG activity

  • Create “qEEG signature” descriptors of EEG spectra maturation for a narrow frequency range across ages in large populations, examining factors such as ethnicity, culture, sex and other socio-economical indices.
  • Developing methodologies for data harmonization across cohorts

Data Standardization and Quality Control

  • Validating and standardizing EEG preprocessing toolboxes for clean-EEG selection (e.g., artifact rejection).
  • Data harmonization for conjoint use of EEG recordings gathered with different devices, technical conditions, and countries.
  • Creating Quality Control mechanisms for accessing data quality and validity, as well as automatic preprocessing algorithms performance.
  • Development of methods for automatic detection of outliers, to assess signal quality.
  • Multivariate measurements for the comparison of different EEG cohorts.

Novel Normative Methodologies

  • Metrics for assessing deviations from normality.
  • Multivariate methodologies to calculate normative regressions for MEEG data, and to create normative surfaces, rather than single variable norms.
  • Methods for estimating the spectra at the MEEG sources, more appropriate for connectivity analysis.
  • Calculation of normative parameters both at the scalp and the sources, in the whole frequency range, for different inverse estimators.

Participants

University of Electronic Science and Technology of China (UESTC), China

Pedro A. Valdes-Sosa
Deirel Paz-Linares
Shiang Hu
Min Li
Maria L. Bringas-Vega
Ariosky Areces-Gonzalez
Xu Lei
Rigel Wang
Dezhong Yao
Ying Wang

Montreal Neurological Institute, Canada

Alan C. Evans
Jorge F. Bosch-Bayard
Christine Rogers

Cuban Neuroscience Center (CNeuro), Cuba

Lidice Galan-Garcia
Mitchell J. Valdes-Sosa
Ana Calzada Reyes
Trinidad A. Virues-Alba
Eduardo Aubert-Vazquez

Federal Research Center for Information and Computational Technologies, Russia

Pavel Rudych

Institute of Cytology and Genetics Siberian Branch, Russia

Alexander N. Savostyanov
Nataliya S. Milakhina

Universidad de Antioquia, Colombia

Carlos A. Tobon-Quintero
John F. Ochoa-Gomez

Universiti Sains Malaysia, Malaysia

Mohd Faizal
Mohd Zulkifly
Jafri Malin Abdullah
Hazim Omar
Muhammad R. Abdul Rahman
Aini Ismafairus Abd Hamid
Faruque Reza

University of Zurich, Switzerland

Marius Tröndle
Nicolas Langer

University Hospital of Clinical Psychiatry, Bern, Switzerland

Thomas Koenig

Brain Research Laboratories, New York University, USA

Leslie Prichep

Centro Internacional de Restauracion Neurológica (CIREN), Cuba

Lilia Morales-Chacon

CITED, Cuba

Daysi Garcia

Max Planck Institute for Human Cognitive and Brain Sciences, Germany

Arno Villringer (Director)