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Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data

New biomarkers are urgently needed for many brain disorders; for example, the diagnosis of mild traumatic brain injury (mTBI) is challenging as the clinical symptoms are diverse and nonspecific. EEG and MEG studies have demonstrated several population-level indicators of mTBI that could serve as obj...

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Autores principales: Itälinna, Veera, Kaltiainen, Hanna, Forss, Nina, Liljeström, Mia, Parkkonen, Lauri
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10662745/
https://www.ncbi.nlm.nih.gov/pubmed/37943963
http://dx.doi.org/10.1371/journal.pcbi.1011613
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author Itälinna, Veera
Kaltiainen, Hanna
Forss, Nina
Liljeström, Mia
Parkkonen, Lauri
author_facet Itälinna, Veera
Kaltiainen, Hanna
Forss, Nina
Liljeström, Mia
Parkkonen, Lauri
author_sort Itälinna, Veera
collection PubMed
description New biomarkers are urgently needed for many brain disorders; for example, the diagnosis of mild traumatic brain injury (mTBI) is challenging as the clinical symptoms are diverse and nonspecific. EEG and MEG studies have demonstrated several population-level indicators of mTBI that could serve as objective markers of brain injury. However, deriving clinically useful biomarkers for mTBI and other brain disorders from EEG/MEG signals is hampered by the large inter-individual variability even across healthy people. Here, we used a multivariate machine-learning approach to detect mTBI from resting-state MEG measurements. To address the heterogeneity of the condition, we employed a normative modeling approach and modeled MEG signal features of individual mTBI patients as deviations with respect to the normal variation. To this end, a normative dataset comprising 621 healthy participants was used to determine the variation in power spectra across the cortex. In addition, we constructed normative datasets based on age-matched subsets of the full normative data. To discriminate patients from healthy control subjects, we trained support-vector-machine classifiers on the quantitative deviation maps for 25 mTBI patients and 20 controls not included in the normative dataset. The best performing classifier made use of the full normative data across the entire age and frequency ranges. This classifier was able to distinguish patients from controls with an accuracy of 79%. Inspection of the trained model revealed that low-frequency activity in the theta frequency band (4–8 Hz) is a significant indicator of mTBI, consistent with earlier studies. The results demonstrate the feasibility of using normative modeling of MEG data combined with machine learning to advance diagnosis of mTBI and identify patients that would benefit from treatment and rehabilitation. The current approach could be applied to a wide range of brain disorders, thus providing a basis for deriving MEG/EEG-based biomarkers.
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spelling pubmed-106627452023-11-09 Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data Itälinna, Veera Kaltiainen, Hanna Forss, Nina Liljeström, Mia Parkkonen, Lauri PLoS Comput Biol Research Article New biomarkers are urgently needed for many brain disorders; for example, the diagnosis of mild traumatic brain injury (mTBI) is challenging as the clinical symptoms are diverse and nonspecific. EEG and MEG studies have demonstrated several population-level indicators of mTBI that could serve as objective markers of brain injury. However, deriving clinically useful biomarkers for mTBI and other brain disorders from EEG/MEG signals is hampered by the large inter-individual variability even across healthy people. Here, we used a multivariate machine-learning approach to detect mTBI from resting-state MEG measurements. To address the heterogeneity of the condition, we employed a normative modeling approach and modeled MEG signal features of individual mTBI patients as deviations with respect to the normal variation. To this end, a normative dataset comprising 621 healthy participants was used to determine the variation in power spectra across the cortex. In addition, we constructed normative datasets based on age-matched subsets of the full normative data. To discriminate patients from healthy control subjects, we trained support-vector-machine classifiers on the quantitative deviation maps for 25 mTBI patients and 20 controls not included in the normative dataset. The best performing classifier made use of the full normative data across the entire age and frequency ranges. This classifier was able to distinguish patients from controls with an accuracy of 79%. Inspection of the trained model revealed that low-frequency activity in the theta frequency band (4–8 Hz) is a significant indicator of mTBI, consistent with earlier studies. The results demonstrate the feasibility of using normative modeling of MEG data combined with machine learning to advance diagnosis of mTBI and identify patients that would benefit from treatment and rehabilitation. The current approach could be applied to a wide range of brain disorders, thus providing a basis for deriving MEG/EEG-based biomarkers. Public Library of Science 2023-11-09 /pmc/articles/PMC10662745/ /pubmed/37943963 http://dx.doi.org/10.1371/journal.pcbi.1011613 Text en © 2023 Itälinna et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Itälinna, Veera
Kaltiainen, Hanna
Forss, Nina
Liljeström, Mia
Parkkonen, Lauri
Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
title Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
title_full Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
title_fullStr Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
title_full_unstemmed Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
title_short Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
title_sort using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10662745/
https://www.ncbi.nlm.nih.gov/pubmed/37943963
http://dx.doi.org/10.1371/journal.pcbi.1011613
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