White matter hyperintensity quantification in large-scale clinical acute ischemic stroke cohorts - The MRI-GENIE study

White matter hyperintensity (WMH) burden is a critically important cerebrovascular phenotype linked to prediction of diagnosis and prognosis of diseases, such as acute ischemic stroke (AIS). However, current approaches to its quantification on clinical MRI often rely on time intensive manual delinea...

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Veröffentlicht in:NeuroImage clinical 2019-01, Vol.23, p.101884-101884, Article 101884
Hauptverfasser: Schirmer, Markus D, Dalca, Adrian V, Sridharan, Ramesh, Giese, Anne-Katrin, Donahue, Kathleen L, Nardin, Marco J, Mocking, Steven J T, McIntosh, Elissa C, Frid, Petrea, Wasselius, Johan, Cole, John W, Holmegaard, Lukas, Jern, Christina, Jimenez-Conde, Jordi, Lemmens, Robin, Lindgren, Arne G, Meschia, James F, Roquer, Jaume, Rundek, Tatjana, Sacco, Ralph L, Schmidt, Reinhold, Sharma, Pankaj, Slowik, Agnieszka, Thijs, Vincent, Woo, Daniel, Vagal, Achala, Xu, Huichun, Kittner, Steven J, McArdle, Patrick F, Mitchell, Braxton D, Rosand, Jonathan, Worrall, Bradford B, Wu, Ona, Golland, Polina, Rost, Natalia S
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Sprache:eng
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Zusammenfassung:White matter hyperintensity (WMH) burden is a critically important cerebrovascular phenotype linked to prediction of diagnosis and prognosis of diseases, such as acute ischemic stroke (AIS). However, current approaches to its quantification on clinical MRI often rely on time intensive manual delineation of the disease on T2 fluid attenuated inverse recovery (FLAIR), which hinders high-throughput analyses such as genetic discovery. In this work, we present a fully automated pipeline for quantification of WMH in clinical large-scale studies of AIS. The pipeline incorporates automated brain extraction, intensity normalization and WMH segmentation using spatial priors. We first propose a brain extraction algorithm based on a fully convolutional deep learning architecture, specifically designed for clinical FLAIR images. We demonstrate that our method for brain extraction outperforms two commonly used and publicly available methods on clinical quality images in a set of 144 subject scans across 12 acquisition centers, based on dice coefficient (median 0.95; inter-quartile range 0.94-0.95; p 
ISSN:2213-1582
2213-1582
DOI:10.1016/j.nicl.2019.101884