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  1. Research Outputs

Triplanar ensemble U-Net model for white matter hyperintensities segmentation on MR images

Academic Article
Publication Date:
2021
Short description:
Triplanar ensemble U-Net model for white matter hyperintensities segmentation on MR images / Sundaresan, V.; Zamboni, G.; Rothwell, P. M.; Jenkinson, M.; Griffanti, L.. - In: MEDICAL IMAGE ANALYSIS. - ISSN 1361-8415. - 73:(2021), pp. N/A-N/A. [10.1016/j.media.2021.102184]
abstract:
White matter hyperintensities (WMHs) have been associated with various cerebrovascular and neurodegenerative diseases. Reliable quantification of WMHs is essential for understanding their clinical impact in normal and pathological populations. Automated segmentation of WMHs is highly challenging due to heterogeneity in WMH characteristics between deep and periventricular white matter, presence of artefacts and differences in the pathology and demographics of populations. In this work, we propose an ensemble triplanar network that combines the predictions from three different planes of brain MR images to provide an accurate WMH segmentation. In the loss functions the network uses anatomical information regarding WMH spatial distribution in loss functions, to improve the efficiency of segmentation and to overcome the contrast variations between deep and periventricular WMHs. We evaluated our method on 5 datasets, of which 3 are part of a publicly available dataset (training data for MICCAI WMH Segmentation Challenge 2017 - MWSC 2017) consisting of subjects from three different cohorts, and we also submitted our method to MWSC 2017 to be evaluated on the unseen test datasets. On evaluating our method separately in deep and periventricular regions, we observed robust and comparable performance in both regions. Our method performed better than most of the existing methods, including FSL BIANCA, and on par with the top ranking deep learning methods of MWSC 2017.
Iris type:
Articolo su rivista
Keywords:
Deep learning; MRI; Segmentation; U-Nets; White matter hyperintensities
List of contributors:
Sundaresan, V.; Zamboni, G.; Rothwell, P. M.; Jenkinson, M.; Griffanti, L.
Authors of the University:
ZAMBONI Giovanna
Handle:
https://iris.unimore.it/handle/11380/1252244
Full Text:
https://iris.unimore.it//retrieve/handle/11380/1252244/570980/1-s2.0-S1361841521002309-main.pdf
Published in:
MEDICAL IMAGE ANALYSIS
Journal
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