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Big Data Approaches to Phenotyping Acute Ischemic Stroke Using Automated Lesion Segmentation of Multi-Center Magnetic Resonance Imaging Data.

Authors :
Wu O
Winzeck S
Giese AK
Hancock BL
Etherton MR
Bouts MJRJ
Donahue K
Schirmer MD
Irie RE
Mocking SJT
McIntosh EC
Bezerra R
Kamnitsas K
Frid P
Wasselius J
Cole JW
Xu H
Holmegaard L
Jiménez-Conde J
Lemmens R
Lorentzen E
McArdle PF
Meschia JF
Roquer J
Rundek T
Sacco RL
Schmidt R
Sharma P
Slowik A
Stanne TM
Thijs V
Vagal A
Woo D
Bevan S
Kittner SJ
Mitchell BD
Rosand J
Worrall BB
Jern C
Lindgren AG
Maguire J
Rost NS
Source :
Stroke [Stroke] 2019 Jul; Vol. 50 (7), pp. 1734-1741. Date of Electronic Publication: 2019 Jun 10.
Publication Year :
2019

Abstract

Background and Purpose- We evaluated deep learning algorithms' segmentation of acute ischemic lesions on heterogeneous multi-center clinical diffusion-weighted magnetic resonance imaging (MRI) data sets and explored the potential role of this tool for phenotyping acute ischemic stroke. Methods- Ischemic stroke data sets from the MRI-GENIE (MRI-Genetics Interface Exploration) repository consisting of 12 international genetic research centers were retrospectively analyzed using an automated deep learning segmentation algorithm consisting of an ensemble of 3-dimensional convolutional neural networks. Three ensembles were trained using data from the following: (1) 267 patients from an independent single-center cohort, (2) 267 patients from MRI-GENIE, and (3) mixture of (1) and (2). The algorithms' performances were compared against manual outlines from a separate 383 patient subset from MRI-GENIE. Univariable and multivariable logistic regression with respect to demographics, stroke subtypes, and vascular risk factors were performed to identify phenotypes associated with large acute diffusion-weighted MRI volumes and greater stroke severity in 2770 MRI-GENIE patients. Stroke topography was investigated. Results- The ensemble consisting of a mixture of MRI-GENIE and single-center convolutional neural networks performed best. Subset analysis comparing automated and manual lesion volumes in 383 patients found excellent correlation (ρ=0.92; P<0.0001). Median (interquartile range) diffusion-weighted MRI lesion volumes from 2770 patients were 3.7 cm <superscript>3</superscript> (0.9-16.6 cm <superscript>3</superscript> ). Patients with small artery occlusion stroke subtype had smaller lesion volumes ( P<0.0001) and different topography compared with other stroke subtypes. Conclusions- Automated accurate clinical diffusion-weighted MRI lesion segmentation using deep learning algorithms trained with multi-center and diverse data is feasible. Both lesion volume and topography can provide insight into stroke subtypes with sufficient sample size from big heterogeneous multi-center clinical imaging phenotype data sets.

Details

Language :
English
ISSN :
1524-4628
Volume :
50
Issue :
7
Database :
MEDLINE
Journal :
Stroke
Publication Type :
Academic Journal
Accession number :
31177973
Full Text :
https://doi.org/10.1161/STROKEAHA.119.025373