Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.

Cerebral microbleeds, visible on gradient-recalled echo (GRE) T2* MRI, have generated increasing interest as an imaging marker of small vessel diseases, with relevance for intracerebral bleeding risk or brain dysfunction.Manual rating methods have limited reliability and are time-consuming. We devel...

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Main Authors: Mohamed L Seghier, Magdalena A Kolanko, Alexander P Leff, Hans R Jäger, Simone M Gregoire, David J Werring
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-03-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3063172?pdf=render
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spelling doaj-b5a9123a584c403f90d182def861dae12020-11-25T01:22:08ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-03-0163e1754710.1371/journal.pone.0017547Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.Mohamed L SeghierMagdalena A KolankoAlexander P LeffHans R JägerSimone M GregoireDavid J WerringCerebral microbleeds, visible on gradient-recalled echo (GRE) T2* MRI, have generated increasing interest as an imaging marker of small vessel diseases, with relevance for intracerebral bleeding risk or brain dysfunction.Manual rating methods have limited reliability and are time-consuming. We developed a new method for microbleed detection using automated segmentation (MIDAS) and compared it with a validated visual rating system. In thirty consecutive stroke service patients, standard GRE T2* images were acquired and manually rated for microbleeds by a trained observer. After spatially normalizing each patient's GRE T2* images into a standard stereotaxic space, the automated microbleed detection algorithm (MIDAS) identified cerebral microbleeds by explicitly incorporating an "extra" tissue class for abnormal voxels within a unified segmentation-normalization model. The agreement between manual and automated methods was assessed using the intraclass correlation coefficient (ICC) and Kappa statistic. We found that MIDAS had generally moderate to good agreement with the manual reference method for the presence of lobar microbleeds (Kappa = 0.43, improved to 0.65 after manual exclusion of obvious artefacts). Agreement for the number of microbleeds was very good for lobar regions: (ICC = 0.71, improved to ICC = 0.87). MIDAS successfully detected all patients with multiple (≥2) lobar microbleeds.MIDAS can identify microbleeds on standard MR datasets, and with an additional rapid editing step shows good agreement with a validated visual rating system. MIDAS may be useful in screening for multiple lobar microbleeds.http://europepmc.org/articles/PMC3063172?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed L Seghier
Magdalena A Kolanko
Alexander P Leff
Hans R Jäger
Simone M Gregoire
David J Werring
spellingShingle Mohamed L Seghier
Magdalena A Kolanko
Alexander P Leff
Hans R Jäger
Simone M Gregoire
David J Werring
Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.
PLoS ONE
author_facet Mohamed L Seghier
Magdalena A Kolanko
Alexander P Leff
Hans R Jäger
Simone M Gregoire
David J Werring
author_sort Mohamed L Seghier
title Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.
title_short Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.
title_full Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.
title_fullStr Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.
title_full_unstemmed Microbleed detection using automated segmentation (MIDAS): a new method applicable to standard clinical MR images.
title_sort microbleed detection using automated segmentation (midas): a new method applicable to standard clinical mr images.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-03-01
description Cerebral microbleeds, visible on gradient-recalled echo (GRE) T2* MRI, have generated increasing interest as an imaging marker of small vessel diseases, with relevance for intracerebral bleeding risk or brain dysfunction.Manual rating methods have limited reliability and are time-consuming. We developed a new method for microbleed detection using automated segmentation (MIDAS) and compared it with a validated visual rating system. In thirty consecutive stroke service patients, standard GRE T2* images were acquired and manually rated for microbleeds by a trained observer. After spatially normalizing each patient's GRE T2* images into a standard stereotaxic space, the automated microbleed detection algorithm (MIDAS) identified cerebral microbleeds by explicitly incorporating an "extra" tissue class for abnormal voxels within a unified segmentation-normalization model. The agreement between manual and automated methods was assessed using the intraclass correlation coefficient (ICC) and Kappa statistic. We found that MIDAS had generally moderate to good agreement with the manual reference method for the presence of lobar microbleeds (Kappa = 0.43, improved to 0.65 after manual exclusion of obvious artefacts). Agreement for the number of microbleeds was very good for lobar regions: (ICC = 0.71, improved to ICC = 0.87). MIDAS successfully detected all patients with multiple (≥2) lobar microbleeds.MIDAS can identify microbleeds on standard MR datasets, and with an additional rapid editing step shows good agreement with a validated visual rating system. MIDAS may be useful in screening for multiple lobar microbleeds.
url http://europepmc.org/articles/PMC3063172?pdf=render
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