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Supervised learning technique for the automated identification of white matter hyperintensities in traumatic brain injury

Authors :
Michael J. Lennon
Andrew R. Mayer
Rajan Agarwal
Gerald E. York
Garrett Black
Peter B. Walker
Brian A. Taylor
Harvey S. Levin
Randall S. Scheibel
Jorge DeVillasante
David F. Tate
Erin D. Bigler
Nicholas J. Tustison
Stephen T. Ahlers
Mary R. Newsome
Elisabeth A. Wilde
Tracy J. Abildskov
James R. Stone
John L. Ritter
Source :
Brain Injury. 30:1458-1468
Publication Year :
2016
Publisher :
Informa UK Limited, 2016.

Abstract

White matter hyperintensities (WMHs) are foci of abnormal signal intensity in white matter regions seen with magnetic resonance imaging (MRI). WMHs are associated with normal ageing and have shown prognostic value in neurological conditions such as traumatic brain injury (TBI). The impracticality of manually quantifying these lesions limits their clinical utility and motivates the utilization of machine learning techniques for automated segmentation workflows.This study develops a concatenated random forest framework with image features for segmenting WMHs in a TBI cohort. The framework is built upon the Advanced Normalization Tools (ANTs) and ANTsR toolkits. MR (3D FLAIR, T2- and T1-weighted) images from 24 service members and veterans scanned in the Chronic Effects of Neurotrauma Consortium's (CENC) observational study were acquired. Manual annotations were employed for both training and evaluation using a leave-one-out strategy. Performance measures include sensitivity, positive predictive value, [Formula: see text] score and relative volume difference.Final average results were: sensitivity = 0.68 ± 0.38, positive predictive value = 0.51 ± 0.40, [Formula: see text] = 0.52 ± 0.36, relative volume difference = 43 ± 26%. In addition, three lesion size ranges are selected to illustrate the variation in performance with lesion size.Paired with correlative outcome data, supervised learning methods may allow for identification of imaging features predictive of diagnosis and prognosis in individual TBI patients.

Details

ISSN :
1362301X and 02699052
Volume :
30
Database :
OpenAIRE
Journal :
Brain Injury
Accession number :
edsair.doi.dedup.....a6b2df3ab00e18d5c58942418f001321
Full Text :
https://doi.org/10.1080/02699052.2016.1222080