Individual prediction of white matter injury following traumatic brain injury

Objective: Traumatic brain injury (TBI) often results in traumatic axonal injury (TAI). This can be difficult to identify using conventional imaging. Diffusion tensor imaging (DTI) offers a method of assessing axonal damage in vivo, but has previously mainly been used to investigate groups of patien...

Full description

Bibliographic Details
Main Authors: Hellyer, P, Leech, R, Ham, T, Bonnelle, V, Sharp, D
Format: Journal article
Language:English
Published: 2013
_version_ 1797082897380802560
author Hellyer, P
Leech, R
Ham, T
Bonnelle, V
Sharp, D
author_facet Hellyer, P
Leech, R
Ham, T
Bonnelle, V
Sharp, D
author_sort Hellyer, P
collection OXFORD
description Objective: Traumatic brain injury (TBI) often results in traumatic axonal injury (TAI). This can be difficult to identify using conventional imaging. Diffusion tensor imaging (DTI) offers a method of assessing axonal damage in vivo, but has previously mainly been used to investigate groups of patients. Machine learning techniques are increasingly used to improve diagnosis based on complex imaging measures. We investigated whether machine learning applied to DTI data can be used to diagnose white matter damage after TBI and to predict neuropsychological outcome in individual patients. Methods: We trained pattern classifiers to predict the presence of white matter damage in 25 TBI patients with microbleed evidence of TAI compared to neurologically healthy age-matched controls. We then applied these classifiers to 35 additional patients with no conventional imaging evidence of TAI. Finally, we used regression analyses to predict indices of neuropsychological outcome for information processing speed, executive function, and associative memory in a group of 70 heterogeneous patients. Results The classifiers discriminated between patients with microbleeds and age-matched controls with a high degree of accuracy, and outperformed other methods. When the trained classifiers were applied to patients without microbleeds, patients having likely TAI showed evidence of greater cognitive impairment in information processing speed and executive function. The classifiers were also able to predict the extent of impairments in information processing speed and executive function. Interpretation: The work provides a proof of principle that multivariate techniques can be used with DTI to provide diagnostic information about clinically significant TAI. © 2013 American Neurological Association.
first_indexed 2024-03-07T01:34:24Z
format Journal article
id oxford-uuid:94a726eb-ad5b-4471-9524-adf7fe5ae01c
institution University of Oxford
language English
last_indexed 2024-03-07T01:34:24Z
publishDate 2013
record_format dspace
spelling oxford-uuid:94a726eb-ad5b-4471-9524-adf7fe5ae01c2022-03-26T23:40:57ZIndividual prediction of white matter injury following traumatic brain injuryJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:94a726eb-ad5b-4471-9524-adf7fe5ae01cEnglishSymplectic Elements at Oxford2013Hellyer, PLeech, RHam, TBonnelle, VSharp, DObjective: Traumatic brain injury (TBI) often results in traumatic axonal injury (TAI). This can be difficult to identify using conventional imaging. Diffusion tensor imaging (DTI) offers a method of assessing axonal damage in vivo, but has previously mainly been used to investigate groups of patients. Machine learning techniques are increasingly used to improve diagnosis based on complex imaging measures. We investigated whether machine learning applied to DTI data can be used to diagnose white matter damage after TBI and to predict neuropsychological outcome in individual patients. Methods: We trained pattern classifiers to predict the presence of white matter damage in 25 TBI patients with microbleed evidence of TAI compared to neurologically healthy age-matched controls. We then applied these classifiers to 35 additional patients with no conventional imaging evidence of TAI. Finally, we used regression analyses to predict indices of neuropsychological outcome for information processing speed, executive function, and associative memory in a group of 70 heterogeneous patients. Results The classifiers discriminated between patients with microbleeds and age-matched controls with a high degree of accuracy, and outperformed other methods. When the trained classifiers were applied to patients without microbleeds, patients having likely TAI showed evidence of greater cognitive impairment in information processing speed and executive function. The classifiers were also able to predict the extent of impairments in information processing speed and executive function. Interpretation: The work provides a proof of principle that multivariate techniques can be used with DTI to provide diagnostic information about clinically significant TAI. © 2013 American Neurological Association.
spellingShingle Hellyer, P
Leech, R
Ham, T
Bonnelle, V
Sharp, D
Individual prediction of white matter injury following traumatic brain injury
title Individual prediction of white matter injury following traumatic brain injury
title_full Individual prediction of white matter injury following traumatic brain injury
title_fullStr Individual prediction of white matter injury following traumatic brain injury
title_full_unstemmed Individual prediction of white matter injury following traumatic brain injury
title_short Individual prediction of white matter injury following traumatic brain injury
title_sort individual prediction of white matter injury following traumatic brain injury
work_keys_str_mv AT hellyerp individualpredictionofwhitematterinjuryfollowingtraumaticbraininjury
AT leechr individualpredictionofwhitematterinjuryfollowingtraumaticbraininjury
AT hamt individualpredictionofwhitematterinjuryfollowingtraumaticbraininjury
AT bonnellev individualpredictionofwhitematterinjuryfollowingtraumaticbraininjury
AT sharpd individualpredictionofwhitematterinjuryfollowingtraumaticbraininjury