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Home / A comparison of supervised machine learning algorithms and feature vectors for MS lesion segmentation using multimodal structural MRI.

A comparison of supervised machine learning algorithms and feature vectors for MS lesion segmentation using multimodal structural MRI.

TitleA comparison of supervised machine learning algorithms and feature vectors for MS lesion segmentation using multimodal structural MRI.
Publication TypeJournal Article
Year of Publication2014
AuthorsSweeney EM, Vogelstein JT, Cuzzocreo JL, Calabresi PA, Reich DS, Crainiceanu CM, Shinohara RT
JournalPLoS One
Volume9
Issue4
Paginatione95753
Date Published2014
ISSN1932-6203
Abstract

Machine learning is a popular method for mining and analyzing large collections of medical data. We focus on a particular problem from medical research, supervised multiple sclerosis (MS) lesion segmentation in structural magnetic resonance imaging (MRI). We examine the extent to which the choice of machine learning or classification algorithm and feature extraction function impacts the performance of lesion segmentation methods. As quantitative measures derived from structural MRI are important clinical tools for research into the pathophysiology and natural history of MS, the development of automated lesion segmentation methods is an active research field. Yet, little is known about what drives performance of these methods. We evaluate the performance of automated MS lesion segmentation methods, which consist of a supervised classification algorithm composed with a feature extraction function. These feature extraction functions act on the observed T1-weighted (T1-w), T2-weighted (T2-w) and fluid-attenuated inversion recovery (FLAIR) MRI voxel intensities. Each MRI study has a manual lesion segmentation that we use to train and validate the supervised classification algorithms. Our main finding is that the differences in predictive performance are due more to differences in the feature vectors, rather than the machine learning or classification algorithms. Features that incorporate information from neighboring voxels in the brain were found to increase performance substantially. For lesion segmentation, we conclude that it is better to use simple, interpretable, and fast algorithms, such as logistic regression, linear discriminant analysis, and quadratic discriminant analysis, and to develop the features to improve performance.

DOI10.1371/journal.pone.0095753
Alternate JournalPLoS ONE
PubMed ID24781953
PubMed Central IDPMC4004572
Grant ListR01 NS070906 / NS / NINDS NIH HHS / United States
R01 NS08521 / NS / NINDS NIH HHS / United States
R01 NS085211 / NS / NINDS NIH HHS / United States
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