Automatic classification of ICA components from infant EEG using MARA
Automated systems for identifying and removing non-neural ICA components are growing in popularity among EEG researchers of adult populations. Infant EEG data differs in many ways from adult EEG data, but there exists almost no specific system for automated classification of source components from p...
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sg-ntu-dr.10356-1536172023-03-05T15:33:46Z Automatic classification of ICA components from infant EEG using MARA Marriott Haresign, I. Phillips, E. Whitehorn, M. Noreika, V. Jones, Emma-Jane Leong, Victoria Wass, S. V. School of Social Sciences Social sciences::General Artifact Correction Deep Learning Automated systems for identifying and removing non-neural ICA components are growing in popularity among EEG researchers of adult populations. Infant EEG data differs in many ways from adult EEG data, but there exists almost no specific system for automated classification of source components from paediatric populations. Here, we adapt one of the most popular systems for adult ICA component classification for use with infant EEG data. Our adapted classifier significantly outperformed the original adult classifier on samples of naturalistic free play EEG data recorded from 10 to 12-month-old infants, achieving agreement rates with the manual classification of over 75% across two validation studies (n = 44, n = 25). Additionally, we examined both classifiers' ability to remove stereotyped ocular artifact from a basic visual processing ERP dataset compared to manual ICA data cleaning. Here, the new classifier performed on level with expert manual cleaning and was again significantly better than the adult classifier at removing artifact whilst retaining a greater amount of genuine neural signal operationalised through comparing ERP activations in time and space. Our new system (iMARA) offers developmental EEG researchers a flexible tool for automatic identification and removal of artifactual ICA components. Published version This research was funded by a Project Grant from the Leverhulme Trust UK, number RPG-2018-281. We wish to thank Federica Lamagna and Martina Eliano for contributing to coding the data. We also wish to thank all families who participated in the research. 2021-12-14T08:14:14Z 2021-12-14T08:14:14Z 2021 Journal Article Marriott Haresign, I., Phillips, E., Whitehorn, M., Noreika, V., Jones, E., Leong, V. & Wass, S. V. (2021). Automatic classification of ICA components from infant EEG using MARA. Developmental Cognitive Neuroscience, 52, 101024-. https://dx.doi.org/10.1016/j.dcn.2021.101024 1878-9293 https://hdl.handle.net/10356/153617 10.1016/j.dcn.2021.101024 34715619 2-s2.0-85117878992 52 101024 en Developmental Cognitive Neuroscience © 2021 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Social sciences::General Artifact Correction Deep Learning Marriott Haresign, I. Phillips, E. Whitehorn, M. Noreika, V. Jones, Emma-Jane Leong, Victoria Wass, S. V. Automatic classification of ICA components from infant EEG using MARA |
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Automated systems for identifying and removing non-neural ICA components are growing in popularity among EEG researchers of adult populations. Infant EEG data differs in many ways from adult EEG data, but there exists almost no specific system for automated classification of source components from paediatric populations. Here, we adapt one of the most popular systems for adult ICA component classification for use with infant EEG data. Our adapted classifier significantly outperformed the original adult classifier on samples of naturalistic free play EEG data recorded from 10 to 12-month-old infants, achieving agreement rates with the manual classification of over 75% across two validation studies (n = 44, n = 25). Additionally, we examined both classifiers' ability to remove stereotyped ocular artifact from a basic visual processing ERP dataset compared to manual ICA data cleaning. Here, the new classifier performed on level with expert manual cleaning and was again significantly better than the adult classifier at removing artifact whilst retaining a greater amount of genuine neural signal operationalised through comparing ERP activations in time and space. Our new system (iMARA) offers developmental EEG researchers a flexible tool for automatic identification and removal of artifactual ICA components. |
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School of Social Sciences |
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School of Social Sciences Marriott Haresign, I. Phillips, E. Whitehorn, M. Noreika, V. Jones, Emma-Jane Leong, Victoria Wass, S. V. |
format |
Article |
author |
Marriott Haresign, I. Phillips, E. Whitehorn, M. Noreika, V. Jones, Emma-Jane Leong, Victoria Wass, S. V. |
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Marriott Haresign, I. |
title |
Automatic classification of ICA components from infant EEG using MARA |
title_short |
Automatic classification of ICA components from infant EEG using MARA |
title_full |
Automatic classification of ICA components from infant EEG using MARA |
title_fullStr |
Automatic classification of ICA components from infant EEG using MARA |
title_full_unstemmed |
Automatic classification of ICA components from infant EEG using MARA |
title_sort |
automatic classification of ica components from infant eeg using mara |
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2021 |
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https://hdl.handle.net/10356/153617 |
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1759856684474302464 |