Cargando…

Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques

Mild traumatic brain injury (mTBI) is a major public health concern that can result in a broad spectrum of short-term and long-term symptoms. Recently, machine learning (ML) algorithms have been used in neuroscience research for diagnostics and prognostic assessment of brain disorders. The present s...

Descripción completa

Detalles Bibliográficos
Autores principales: Vedaei, Faezeh, Mashhadi, Najmeh, Zabrecky, George, Monti, Daniel, Navarreto, Emily, Hriso, Chloe, Wintering, Nancy, Newberg, Andrew B., Mohamed, Feroze B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9869678/
https://www.ncbi.nlm.nih.gov/pubmed/36699521
http://dx.doi.org/10.3389/fnins.2022.1099560
_version_ 1784876817925013504
author Vedaei, Faezeh
Mashhadi, Najmeh
Zabrecky, George
Monti, Daniel
Navarreto, Emily
Hriso, Chloe
Wintering, Nancy
Newberg, Andrew B.
Mohamed, Feroze B.
author_facet Vedaei, Faezeh
Mashhadi, Najmeh
Zabrecky, George
Monti, Daniel
Navarreto, Emily
Hriso, Chloe
Wintering, Nancy
Newberg, Andrew B.
Mohamed, Feroze B.
author_sort Vedaei, Faezeh
collection PubMed
description Mild traumatic brain injury (mTBI) is a major public health concern that can result in a broad spectrum of short-term and long-term symptoms. Recently, machine learning (ML) algorithms have been used in neuroscience research for diagnostics and prognostic assessment of brain disorders. The present study aimed to develop an automatic classifier to distinguish patients suffering from chronic mTBI from healthy controls (HCs) utilizing multilevel metrics of resting-state functional magnetic resonance imaging (rs-fMRI). Sixty mTBI patients and forty HCs were enrolled and allocated to training and testing datasets with a ratio of 80:20. Several rs-fMRI metrics including fractional amplitude of low-frequency fluctuation (fALFF), regional homogeneity (ReHo), degree centrality (DC), voxel-mirrored homotopic connectivity (VMHC), functional connectivity strength (FCS), and seed-based FC were generated from two main analytical categories: local measures and network measures. Statistical two-sample t-test was employed comparing between mTBI and HCs groups. Then, for each rs-fMRI metric the features were selected extracting the mean values from the clusters showing significant differences. Finally, the support vector machine (SVM) models based on separate and multilevel metrics were built and the performance of the classifiers were assessed using five-fold cross-validation and via the area under the receiver operating characteristic curve (AUC). Feature importance was estimated using Shapley additive explanation (SHAP) values. Among local measures, the range of AUC was 86.67–100% and the optimal SVM model was obtained based on combined multilevel rs-fMRI metrics and DC as a separate model with AUC of 100%. Among network measures, the range of AUC was 80.42–93.33% and the optimal SVM model was obtained based on the combined multilevel seed-based FC metrics. The SHAP analysis revealed the DC value in the left postcentral and seed-based FC value between the motor ventral network and right superior temporal as the most important local and network features with the greatest contribution to the classification models. Our findings demonstrated that different rs-fMRI metrics can provide complementary information for classifying patients suffering from chronic mTBI. Moreover, we showed that ML approach is a promising tool for detecting patients with mTBI and might serve as potential imaging biomarker to identify patients at individual level. CLINICAL TRIAL REGISTRATION: [clinicaltrials.gov], identifier [NCT03241732].
format Online
Article
Text
id pubmed-9869678
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-98696782023-01-24 Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques Vedaei, Faezeh Mashhadi, Najmeh Zabrecky, George Monti, Daniel Navarreto, Emily Hriso, Chloe Wintering, Nancy Newberg, Andrew B. Mohamed, Feroze B. Front Neurosci Neuroscience Mild traumatic brain injury (mTBI) is a major public health concern that can result in a broad spectrum of short-term and long-term symptoms. Recently, machine learning (ML) algorithms have been used in neuroscience research for diagnostics and prognostic assessment of brain disorders. The present study aimed to develop an automatic classifier to distinguish patients suffering from chronic mTBI from healthy controls (HCs) utilizing multilevel metrics of resting-state functional magnetic resonance imaging (rs-fMRI). Sixty mTBI patients and forty HCs were enrolled and allocated to training and testing datasets with a ratio of 80:20. Several rs-fMRI metrics including fractional amplitude of low-frequency fluctuation (fALFF), regional homogeneity (ReHo), degree centrality (DC), voxel-mirrored homotopic connectivity (VMHC), functional connectivity strength (FCS), and seed-based FC were generated from two main analytical categories: local measures and network measures. Statistical two-sample t-test was employed comparing between mTBI and HCs groups. Then, for each rs-fMRI metric the features were selected extracting the mean values from the clusters showing significant differences. Finally, the support vector machine (SVM) models based on separate and multilevel metrics were built and the performance of the classifiers were assessed using five-fold cross-validation and via the area under the receiver operating characteristic curve (AUC). Feature importance was estimated using Shapley additive explanation (SHAP) values. Among local measures, the range of AUC was 86.67–100% and the optimal SVM model was obtained based on combined multilevel rs-fMRI metrics and DC as a separate model with AUC of 100%. Among network measures, the range of AUC was 80.42–93.33% and the optimal SVM model was obtained based on the combined multilevel seed-based FC metrics. The SHAP analysis revealed the DC value in the left postcentral and seed-based FC value between the motor ventral network and right superior temporal as the most important local and network features with the greatest contribution to the classification models. Our findings demonstrated that different rs-fMRI metrics can provide complementary information for classifying patients suffering from chronic mTBI. Moreover, we showed that ML approach is a promising tool for detecting patients with mTBI and might serve as potential imaging biomarker to identify patients at individual level. CLINICAL TRIAL REGISTRATION: [clinicaltrials.gov], identifier [NCT03241732]. Frontiers Media S.A. 2023-01-09 /pmc/articles/PMC9869678/ /pubmed/36699521 http://dx.doi.org/10.3389/fnins.2022.1099560 Text en Copyright © 2023 Vedaei, Mashhadi, Zabrecky, Monti, Navarreto, Hriso, Wintering, Newberg and Mohamed. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Vedaei, Faezeh
Mashhadi, Najmeh
Zabrecky, George
Monti, Daniel
Navarreto, Emily
Hriso, Chloe
Wintering, Nancy
Newberg, Andrew B.
Mohamed, Feroze B.
Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
title Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
title_full Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
title_fullStr Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
title_full_unstemmed Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
title_short Identification of chronic mild traumatic brain injury using resting state functional MRI and machine learning techniques
title_sort identification of chronic mild traumatic brain injury using resting state functional mri and machine learning techniques
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9869678/
https://www.ncbi.nlm.nih.gov/pubmed/36699521
http://dx.doi.org/10.3389/fnins.2022.1099560
work_keys_str_mv AT vedaeifaezeh identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT mashhadinajmeh identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT zabreckygeorge identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT montidaniel identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT navarretoemily identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT hrisochloe identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT winteringnancy identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT newbergandrewb identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques
AT mohamedferozeb identificationofchronicmildtraumaticbraininjuryusingrestingstatefunctionalmriandmachinelearningtechniques