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White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks

White matter hyperintensities (WMH) are a feature of sporadic small vessel disease also frequently observed in magnetic resonance images (MRI) of healthy elderly subjects. The accurate assessment of WMH burden is of crucial importance for epidemiological studies to determine association between WMHs...

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Autores principales: Guerrero, R., Qin, C., Oktay, O., Bowles, C., Chen, L., Joules, R., Wolz, R., Valdés-Hernández, M.C., Dickie, D.A., Wardlaw, J., Rueckert, D.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5842732/
https://www.ncbi.nlm.nih.gov/pubmed/29527496
http://dx.doi.org/10.1016/j.nicl.2017.12.022
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author Guerrero, R.
Qin, C.
Oktay, O.
Bowles, C.
Chen, L.
Joules, R.
Wolz, R.
Valdés-Hernández, M.C.
Dickie, D.A.
Wardlaw, J.
Rueckert, D.
author_facet Guerrero, R.
Qin, C.
Oktay, O.
Bowles, C.
Chen, L.
Joules, R.
Wolz, R.
Valdés-Hernández, M.C.
Dickie, D.A.
Wardlaw, J.
Rueckert, D.
author_sort Guerrero, R.
collection PubMed
description White matter hyperintensities (WMH) are a feature of sporadic small vessel disease also frequently observed in magnetic resonance images (MRI) of healthy elderly subjects. The accurate assessment of WMH burden is of crucial importance for epidemiological studies to determine association between WMHs, cognitive and clinical data; their causes, and the effects of new treatments in randomized trials. The manual delineation of WMHs is a very tedious, costly and time consuming process, that needs to be carried out by an expert annotator (e.g. a trained image analyst or radiologist). The problem of WMH delineation is further complicated by the fact that other pathological features (i.e. stroke lesions) often also appear as hyperintense regions. Recently, several automated methods aiming to tackle the challenges of WMH segmentation have been proposed. Most of these methods have been specifically developed to segment WMH in MRI but cannot differentiate between WMHs and strokes. Other methods, capable of distinguishing between different pathologies in brain MRI, are not designed with simultaneous WMH and stroke segmentation in mind. Therefore, a task specific, reliable, fully automated method that can segment and differentiate between these two pathological manifestations on MRI has not yet been fully identified. In this work we propose to use a convolutional neural network (CNN) that is able to segment hyperintensities and differentiate between WMHs and stroke lesions. Specifically, we aim to distinguish between WMH pathologies from those caused by stroke lesions due to either cortical, large or small subcortical infarcts. The proposed fully convolutional CNN architecture, called uResNet, that comprised an analysis path, that gradually learns low and high level features, followed by a synthesis path, that gradually combines and up-samples the low and high level features into a class likelihood semantic segmentation. Quantitatively, the proposed CNN architecture is shown to outperform other well established and state-of-the-art algorithms in terms of overlap with manual expert annotations. Clinically, the extracted WMH volumes were found to correlate better with the Fazekas visual rating score than competing methods or the expert-annotated volumes. Additionally, a comparison of the associations found between clinical risk-factors and the WMH volumes generated by the proposed method, was found to be in line with the associations found with the expert-annotated volumes.
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spelling pubmed-58427322018-03-09 White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks Guerrero, R. Qin, C. Oktay, O. Bowles, C. Chen, L. Joules, R. Wolz, R. Valdés-Hernández, M.C. Dickie, D.A. Wardlaw, J. Rueckert, D. Neuroimage Clin Regular Article White matter hyperintensities (WMH) are a feature of sporadic small vessel disease also frequently observed in magnetic resonance images (MRI) of healthy elderly subjects. The accurate assessment of WMH burden is of crucial importance for epidemiological studies to determine association between WMHs, cognitive and clinical data; their causes, and the effects of new treatments in randomized trials. The manual delineation of WMHs is a very tedious, costly and time consuming process, that needs to be carried out by an expert annotator (e.g. a trained image analyst or radiologist). The problem of WMH delineation is further complicated by the fact that other pathological features (i.e. stroke lesions) often also appear as hyperintense regions. Recently, several automated methods aiming to tackle the challenges of WMH segmentation have been proposed. Most of these methods have been specifically developed to segment WMH in MRI but cannot differentiate between WMHs and strokes. Other methods, capable of distinguishing between different pathologies in brain MRI, are not designed with simultaneous WMH and stroke segmentation in mind. Therefore, a task specific, reliable, fully automated method that can segment and differentiate between these two pathological manifestations on MRI has not yet been fully identified. In this work we propose to use a convolutional neural network (CNN) that is able to segment hyperintensities and differentiate between WMHs and stroke lesions. Specifically, we aim to distinguish between WMH pathologies from those caused by stroke lesions due to either cortical, large or small subcortical infarcts. The proposed fully convolutional CNN architecture, called uResNet, that comprised an analysis path, that gradually learns low and high level features, followed by a synthesis path, that gradually combines and up-samples the low and high level features into a class likelihood semantic segmentation. Quantitatively, the proposed CNN architecture is shown to outperform other well established and state-of-the-art algorithms in terms of overlap with manual expert annotations. Clinically, the extracted WMH volumes were found to correlate better with the Fazekas visual rating score than competing methods or the expert-annotated volumes. Additionally, a comparison of the associations found between clinical risk-factors and the WMH volumes generated by the proposed method, was found to be in line with the associations found with the expert-annotated volumes. Elsevier 2017-12-20 /pmc/articles/PMC5842732/ /pubmed/29527496 http://dx.doi.org/10.1016/j.nicl.2017.12.022 Text en © 2017 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Regular Article
Guerrero, R.
Qin, C.
Oktay, O.
Bowles, C.
Chen, L.
Joules, R.
Wolz, R.
Valdés-Hernández, M.C.
Dickie, D.A.
Wardlaw, J.
Rueckert, D.
White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
title White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
title_full White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
title_fullStr White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
title_full_unstemmed White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
title_short White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
title_sort white matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5842732/
https://www.ncbi.nlm.nih.gov/pubmed/29527496
http://dx.doi.org/10.1016/j.nicl.2017.12.022
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