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Early detection of white matter hyperintensities using SHIVA-WMH detector
Language
EN
Article de revue
This item was published in
Human Brain Mapping. 2024-01-01, vol. 45, n° 1, p. e26548
English Abstract
White matter hyperintensities (WMHs) are well-established markers of cerebral small vessel disease, and are associated with an increased risk of stroke, dementia, and mortality. Although their prevalence increases with ...Read more >
White matter hyperintensities (WMHs) are well-established markers of cerebral small vessel disease, and are associated with an increased risk of stroke, dementia, and mortality. Although their prevalence increases with age, small and punctate WMHs have been reported with surprisingly high frequency even in young, neurologically asymptomatic adults. However, most automated methods to segment WMH published to date are not optimized for detecting small and sparse WMH. Here we present the SHIVA-WMH tool, a deep-learning (DL)-based automatic WMH segmentation tool that has been trained with manual segmentations of WMH in a wide range of WMH severity. We show that it is able to detect WMH with high efficiency in subjects with only small punctate WMH as well as in subjects with large WMHs (i.e., with confluency) in evaluation datasets from three distinct databases: magnetic resonance imaging-Share consisting of young university students, MICCAI 2017 WMH challenge dataset consisting of older patients from memory clinics, and UK Biobank with community-dwelling middle-aged and older adults. Across these three cohorts with a wide-ranging WMH load, our tool achieved voxel-level and individual lesion cluster-level Dice scores of 0.66 and 0.71, respectively, which were higher than for three reference tools tested: the lesion prediction algorithm implemented in the lesion segmentation toolbox (LPA: Schmidt), PGS tool, a DL-based algorithm and the current winner of the MICCAI 2017 WMH challenge (Park et al.), and HyperMapper tool (Mojiri Forooshani et al.), another DL-based method with high reported performance in subjects with mild WMH burden. Our tool is publicly and openly available to the research community to facilitate investigations of WMH across a wide range of severity in other cohorts, and to contribute to our understanding of the emergence and progression of WMH.Read less <
English Keywords
automatic segmentation
cerebral small vessel disease
deep-learning
magnetic resonance imaging
white matter hyperintensities
ANR Project
Etude de cohorte sur la santé des étudiants - ANR-10-COHO-0005
Stopping cognitive decline and dementia by fighting covert cerebral small vessel disease
Laboratoire pour les applications en imagerie biomédicale
Translational Research and Advanced Imaging Laboratory - ANR-10-LABX-0057
Initiative d'excellence de l'Université de Bordeaux - ANR-10-IDEX-0003
Stopping cognitive decline and dementia by fighting covert cerebral small vessel disease
Laboratoire pour les applications en imagerie biomédicale
Translational Research and Advanced Imaging Laboratory - ANR-10-LABX-0057
Initiative d'excellence de l'Université de Bordeaux - ANR-10-IDEX-0003