Literature DB >> 28602597

Performance comparison of 10 different classification techniques in segmenting white matter hyperintensities in aging.

Mahsa Dadar1, Josefina Maranzano2, Karen Misquitta3, Cassandra J Anor4, Vladimir S Fonov5, M Carmela Tartaglia6, Owen T Carmichael7, Charles Decarli8, D Louis Collins9.   

Abstract

INTRODUCTION: White matter hyperintensities (WMHs) are areas of abnormal signal on magnetic resonance images (MRIs) that characterize various types of histopathological lesions. The load and location of WMHs are important clinical measures that may indicate the presence of small vessel disease in aging and Alzheimer's disease (AD) patients. Manually segmenting WMHs is time consuming and prone to inter-rater and intra-rater variabilities. Automated tools that can accurately and robustly detect these lesions can be used to measure the vascular burden in individuals with AD or the elderly population in general. Many WMH segmentation techniques use a classifier in combination with a set of intensity and location features to segment WMHs, however, the optimal choice of classifier is unknown.
METHODS: We compare 10 different linear and nonlinear classification techniques to identify WMHs from MRI data. Each classifier is trained and optimized based on a set of features obtained from co-registered MR images containing spatial location and intensity information. We further assess the performance of the classifiers using different combinations of MRI contrast information. The performances of the different classifiers were compared on three heterogeneous multi-site datasets, including images acquired with different scanners and different scan-parameters. These included data from the ADC study from University of California Davis, the NACC database and the ADNI study. The classifiers (naïve Bayes, logistic regression, decision trees, random forests, support vector machines, k-nearest neighbors, bagging, and boosting) were evaluated using a variety of voxel-wise and volumetric similarity measures such as Dice Kappa similarity index (SI), Intra-Class Correlation (ICC), and sensitivity as well as computational burden and processing times. These investigations enable meaningful comparisons between the performances of different classifiers to determine the most suitable classifiers for segmentation of WMHs. In the spirit of open-source science, we also make available a fully automated tool for segmentation of WMHs with pre-trained classifiers for all these techniques.
RESULTS: Random Forests yielded the best performance among all classifiers with mean Dice Kappa (SI) of 0.66±0.17 and ICC=0.99 for the ADC dataset (using T1w, T2w, PD, and FLAIR scans), SI=0.72±0.10, ICC=0.93 for the NACC dataset (using T1w and FLAIR scans), SI=0.66±0.23, ICC=0.94 for ADNI1 dataset (using T1w, T2w, and PD scans) and SI=0.72±0.19, ICC=0.96 for ADNI2/GO dataset (using T1w and FLAIR scans). Not using the T2w/PD information did not change the performance of the Random Forest classifier (SI=0.66±0.17, ICC=0.99). However, not using FLAIR information in the ADC dataset significantly decreased the Dice Kappa, but the volumetric correlation did not drastically change (SI=0.47±0.21, ICC=0.95).
CONCLUSION: Our investigations showed that with appropriate features, most off-the-shelf classifiers are able to accurately detect WMHs in presence of FLAIR scan information, while Random Forests had the best performance across all datasets. However, we observed that the performances of most linear classifiers and some nonlinear classifiers drastically decline in absence of FLAIR information, with Random Forest still retaining the best performance.
Copyright © 2017 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Alzheimer's disease; Classification; Segmentation; White matter hyperintensities

Mesh:

Year:  2017        PMID: 28602597      PMCID: PMC6469398          DOI: 10.1016/j.neuroimage.2017.06.009

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  19 in total

1.  Standardized Assessment of Automatic Segmentation of White Matter Hyperintensities and Results of the WMH Segmentation Challenge.

Authors:  Hugo J Kuijf; J Matthijs Biesbroek; Jeroen De Bresser; Rutger Heinen; Simon Andermatt; Mariana Bento; Matt Berseth; Mikhail Belyaev; M Jorge Cardoso; Adria Casamitjana; D Louis Collins; Mahsa Dadar; Achilleas Georgiou; Mohsen Ghafoorian; Dakai Jin; April Khademi; Jesse Knight; Hongwei Li; Xavier Llado; Miguel Luna; Qaiser Mahmood; Richard McKinley; Alireza Mehrtash; Sebastien Ourselin; Bo-Yong Park; Hyunjin Park; Sang Hyun Park; Simon Pezold; Elodie Puybareau; Leticia Rittner; Carole H Sudre; Sergi Valverde; Veronica Vilaplana; Roland Wiest; Yongchao Xu; Ziyue Xu; Guodong Zeng; Jianguo Zhang; Guoyan Zheng; Christopher Chen; Wiesje van der Flier; Frederik Barkhof; Max A Viergever; Geert Jan Biessels
Journal:  IEEE Trans Med Imaging       Date:  2019-03-19       Impact factor: 10.048

2.  Validation of T1w-based segmentations of white matter hyperintensity volumes in large-scale datasets of aging.

Authors:  Mahsa Dadar; Josefina Maranzano; Simon Ducharme; Owen T Carmichael; Charles Decarli; D Louis Collins
Journal:  Hum Brain Mapp       Date:  2017-11-27       Impact factor: 5.038

3.  The Longitudinal Assessment of Neuropsychiatric Symptoms in Mild Cognitive Impairment and Alzheimer's Disease and Their Association With White Matter Hyperintensities in the National Alzheimer's Coordinating Center's Uniform Data Set.

Authors:  Cassandra J Anor; Mahsa Dadar; D Louis Collins; M Carmela Tartaglia
Journal:  Biol Psychiatry Cogn Neurosci Neuroimaging       Date:  2020-04-02

4.  Beware of white matter hyperintensities causing systematic errors in FreeSurfer gray matter segmentations!

Authors:  Mahsa Dadar; Olivier Potvin; Richard Camicioli; Simon Duchesne
Journal:  Hum Brain Mapp       Date:  2021-03-30       Impact factor: 5.038

5.  A dual modeling approach to automatic segmentation of cerebral T2 hyperintensities and T1 black holes in multiple sclerosis.

Authors:  Alessandra M Valcarcel; Kristin A Linn; Fariha Khalid; Simon N Vandekar; Shahamat Tauhid; Theodore D Satterthwaite; John Muschelli; Melissa Lynne Martin; Rohit Bakshi; Russell T Shinohara
Journal:  Neuroimage Clin       Date:  2018-10-16       Impact factor: 4.881

6.  White Matter Hyperintensities Mediate Impact of Dysautonomia on Cognition in Parkinson's Disease.

Authors:  Mahsa Dadar; Seyed-Mohammad Fereshtehnejad; Yashar Zeighami; Alain Dagher; Ronald B Postuma; D Louis Collins
Journal:  Mov Disord Clin Pract       Date:  2020-07-18

7.  What does hand motor function tell us about our aging brain in association with WMH?

Authors:  Misbah Riaz; Torgil Riise Vangberg; Olena Vasylenko; Susana Castro-Chavira; Marta M Gorecka; Knut Waterloo; Claudia Rodríguez-Aranda
Journal:  Aging Clin Exp Res       Date:  2020-08-29       Impact factor: 3.636

8.  Cognitive and motor correlates of grey and white matter pathology in Parkinson's disease.

Authors:  Mahsa Dadar; Myrlene Gee; Ashfaq Shuaib; Simon Duchesne; Richard Camicioli
Journal:  Neuroimage Clin       Date:  2020-07-17       Impact factor: 4.881

9.  Automated White Matter Hyperintensity Segmentation Using Bayesian Model Selection: Assessment and Correlations with Cognitive Change.

Authors:  Cassidy M Fiford; Carole H Sudre; Hugh Pemberton; Phoebe Walsh; Emily Manning; Ian B Malone; Jennifer Nicholas; Willem H Bouvy; Owen T Carmichael; Geert Jan Biessels; M Jorge Cardoso; Josephine Barnes
Journal:  Neuroinformatics       Date:  2020-06

10.  White matter hyperintensities are linked to future cognitive decline in de novo Parkinson's disease patients.

Authors:  Mahsa Dadar; Yashar Zeighami; Yvonne Yau; Seyed-Mohammad Fereshtehnejad; Josefina Maranzano; Ronald B Postuma; Alain Dagher; D Louis Collins
Journal:  Neuroimage Clin       Date:  2018-09-27       Impact factor: 4.881

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