EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions

Abstract Background Establishing reliable predictive and diganostic biomarkers of autism would enhance early identification and facilitate targeted intervention during periods of greatest plasticity in early brain development. High impact research on biomarkers is currently limited by relatively sma...

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Main Authors: Stefon van Noordt, James A. Desjardins, Scott Huberty, Lina Abou-Abbas, Sara Jane Webb, April R. Levin, Sidney J. Segalowitz, Alan C. Evans, Mayada Elsabbagh
Format: Article
Language:English
Published: BMC 2020-05-01
Series:Molecular Medicine
Subjects:
EEG
ICA
Online Access:http://link.springer.com/article/10.1186/s10020-020-00149-3
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spelling doaj-7b1879e23e224d02b414292435bad6d22020-11-25T03:36:45ZengBMCMolecular Medicine1076-15511528-36582020-05-0126111110.1186/s10020-020-00149-3EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditionsStefon van Noordt0James A. Desjardins1Scott Huberty2Lina Abou-Abbas3Sara Jane Webb4April R. Levin5Sidney J. Segalowitz6Alan C. Evans7Mayada Elsabbagh8Montreal Neurological Institute, Azrieli Centre for Autism Research, McGill UniversityMontreal Neurological Institute, Azrieli Centre for Autism Research, McGill UniversityMontreal Neurological Institute, Azrieli Centre for Autism Research, McGill UniversityMcGill University Health CentreCenter on Child Health, Behavior and Development, Washington Children’s Research InstituteBoston Children’s HospitalCognitive and Affective Neuroscience Lab, Brock UniversityMcConnell Brain Imaging Centre, McGill UniveristyMontreal Neurological Institute, Azrieli Centre for Autism Research, McGill UniversityAbstract Background Establishing reliable predictive and diganostic biomarkers of autism would enhance early identification and facilitate targeted intervention during periods of greatest plasticity in early brain development. High impact research on biomarkers is currently limited by relatively small sample sizes and the complexity of the autism phenotype. Methods EEG-IP is an International Infant EEG Data Integration Platform developed to advance biomarker discovery by enhancing the large scale integration of multi-site data. Currently, this is the largest multi-site standardized dataset of infant EEG data. Results First, multi-site data from longitudinal cohort studies of infants at risk for autism was pooled in a common repository with 1382 EEG longitudinal recordings, linked behavioral data, from 432 infants between 3- to 36-months of age. Second, to address challenges of limited comparability across independent recordings, EEG-IP applied the Brain Imaging Data Structure (BIDS)-EEG standard, resulting in a harmonized, extendable, and integrated data state. Finally, the pooled and harmonized raw data was preprocessed using a common signal processing pipeline that maximizes signal isolation and minimizes data reduction. With EEG-IP, we produced a fully standardized data set, of the pooled, harmonized, and pre-processed EEG data from multiple sites. Conclusions Implementing these integrated solutions for the first time with infant data has demonstrated success and challenges in generating a standardized multi-site data state. The challenges relate to annotation of signal sources, time, and ICA analysis during pre-processing. A number of future opportunities also emerge, including validation of analytic pipelines that can replicate existing findings and/or test novel hypotheses.http://link.springer.com/article/10.1186/s10020-020-00149-3EEGAutism riskBiomarkersPre-processingHigh performance computingICA
collection DOAJ
language English
format Article
sources DOAJ
author Stefon van Noordt
James A. Desjardins
Scott Huberty
Lina Abou-Abbas
Sara Jane Webb
April R. Levin
Sidney J. Segalowitz
Alan C. Evans
Mayada Elsabbagh
spellingShingle Stefon van Noordt
James A. Desjardins
Scott Huberty
Lina Abou-Abbas
Sara Jane Webb
April R. Levin
Sidney J. Segalowitz
Alan C. Evans
Mayada Elsabbagh
EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions
Molecular Medicine
EEG
Autism risk
Biomarkers
Pre-processing
High performance computing
ICA
author_facet Stefon van Noordt
James A. Desjardins
Scott Huberty
Lina Abou-Abbas
Sara Jane Webb
April R. Levin
Sidney J. Segalowitz
Alan C. Evans
Mayada Elsabbagh
author_sort Stefon van Noordt
title EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions
title_short EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions
title_full EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions
title_fullStr EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions
title_full_unstemmed EEG-IP: an international infant EEG data integration platform for the study of risk and resilience in autism and related conditions
title_sort eeg-ip: an international infant eeg data integration platform for the study of risk and resilience in autism and related conditions
publisher BMC
series Molecular Medicine
issn 1076-1551
1528-3658
publishDate 2020-05-01
description Abstract Background Establishing reliable predictive and diganostic biomarkers of autism would enhance early identification and facilitate targeted intervention during periods of greatest plasticity in early brain development. High impact research on biomarkers is currently limited by relatively small sample sizes and the complexity of the autism phenotype. Methods EEG-IP is an International Infant EEG Data Integration Platform developed to advance biomarker discovery by enhancing the large scale integration of multi-site data. Currently, this is the largest multi-site standardized dataset of infant EEG data. Results First, multi-site data from longitudinal cohort studies of infants at risk for autism was pooled in a common repository with 1382 EEG longitudinal recordings, linked behavioral data, from 432 infants between 3- to 36-months of age. Second, to address challenges of limited comparability across independent recordings, EEG-IP applied the Brain Imaging Data Structure (BIDS)-EEG standard, resulting in a harmonized, extendable, and integrated data state. Finally, the pooled and harmonized raw data was preprocessed using a common signal processing pipeline that maximizes signal isolation and minimizes data reduction. With EEG-IP, we produced a fully standardized data set, of the pooled, harmonized, and pre-processed EEG data from multiple sites. Conclusions Implementing these integrated solutions for the first time with infant data has demonstrated success and challenges in generating a standardized multi-site data state. The challenges relate to annotation of signal sources, time, and ICA analysis during pre-processing. A number of future opportunities also emerge, including validation of analytic pipelines that can replicate existing findings and/or test novel hypotheses.
topic EEG
Autism risk
Biomarkers
Pre-processing
High performance computing
ICA
url http://link.springer.com/article/10.1186/s10020-020-00149-3
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