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Performance evaluation of automated white matter hyperintensity segmentation algorithms in a multicenter cohort on cognitive impairment and dementia

Authors :
Malo Gaubert
Andrea Dell’Orco
Catharina Lange
Antoine Garnier-Crussard
Isabella Zimmermann
Martin Dyrba
Marco Duering
Gabriel Ziegler
Oliver Peters
Lukas Preis
Josef Priller
Eike Jakob Spruth
Anja Schneider
Klaus Fliessbach
Jens Wiltfang
Björn H. Schott
Franziska Maier
Wenzel Glanz
Katharina Buerger
Daniel Janowitz
Robert Perneczky
Boris-Stephan Rauchmann
Stefan Teipel
Ingo Kilimann
Christoph Laske
Matthias H. Munk
Annika Spottke
Nina Roy
Laura Dobisch
Michael Ewers
Peter Dechent
John Dylan Haynes
Klaus Scheffler
Emrah Düzel
Frank Jessen
Miranka Wirth
for the DELCODE study group
Amthauer Holger
Cetindag Arda Can
Cosma Nicoleta Carmen
Diesing Dominik
Ehrlich Marie
Fenski Frederike
Freiesleben Silka Dawn
Fuentes Manuel
Hauser Dietmar
Hujer Nicole
Incesoy Enise Irem
Kainz Christian
Lange Catharina
Lindner Katja
Megges Herlind
Peters Oliver
Preis Lukas
Altenstein Slawek
Lohse Andrea
Franke Christiana
Priller Josef
Spruth Eike
Villar Munoz Irene
Barkhoff Miriam
Boecker Henning
Brosseron Frederic
Daamen Marcel
Engels Tanja
Faber Jennifer
Fließbach Klaus
Frommann Ingo
Grobe-Einsler Marcus
Hennes Guido
Herrmann Gabi
Jost Lorraine
Kalbhen Pascal
Kimmich Okka
Kobeleva Xenia
Kofler Barbara
McCormick Cornelia
Miebach Lisa
Miklitz Carolin
Müller Anna
Oender Demet
Polcher Alexandra
Purrer Veronika
Röske Sandra
Schneider Christine
Schneider Anja
Spottke Annika
Vogt Ina
Wagner Michael
wolfsgruber Steffen
Yilmaz Sagik
Bartels Claudia
Dechent Peter
Hansen Niels
Hassoun Lina
Hirschel Sina
Nuhn Sabine
Pfahlert Ilona
Rausch Lena
Schott Björn
Timäus Charles
Werner Christine
Wiltfang Jens
Zabel Lioba
Zech Heike
Bader Abdelmajid
Baldermann Juan Carlos
Dölle Britta
Drzezga Alexander
Escher Claus
Ghiasi Nasim Roshan
Hardenacke Katja
Jessen Frank
Lützerath Hannah
Maier Franziska
Marquardt Benjamin
Martikke Anja
Meiberth Dix
Petzler Snjezana
Rostamzadeh Ayda
Sannemann Lena
Schild Ann-Katrin
Sorgalla Susanne
Stockter Simone
Thelen Manuela
Tscheuschler Maike
Uhle Franziska
Zeyen Philip
Bittner Daniel
Cardenas-Blanco Arturo
Dobisch Laura
Düzel Emrah
Grieger-Klose Doreen
Hartmann Deike
Metzger Coraline
Nestor Peter
Ruß Christin
Schulze Franziska
Speck Oliver
Yakupov Renat
Ziegler Gabriel
Brauneis Christine
Bürger Katharina
Catak Cihan
Coloma Andrews Lisa
Dichgans Martin
Dörr Angelika
Ertl-Wagner Birgit
Frimmer Daniela
Huber Brigitte
Janowitz Daniel
Kreuzer Max
Markov Eva
Müller Claudia
Rominger Axel
Schmid (ehemals Spreider) Jennifer
Seegerer Anna
Stephan Julia
Zollver Adelgunde
Burow Lena
de Jonge Sylvia
Falkai Peter
Garcia Angarita Natalie
Görlitz Thomas
Gürsel Selim Üstün
Horvath Ildiko
Kurz Carolin
Meisenzahl-Lechner Eva
Perneczky Robert
Utecht Julia
Dyrba Martin
Janecek-Meyer Heike
Kilimann Ingo
Lappe Chris
Lau Esther
Pfaff Henrike
Raum Heike
Sabik Petr
Schmidt Monika
Schulz Heike
Schwarzenboeck Sarah
Teipel Stefan
Weber Marc-Andre
Buchmann Martina
Heger Tanja
Hinderer Petra
Kuder-Buletta Elke
Laske Christoph
Munk Matthias
Mychajliw Christian
Soekadar Surjo
sulzer Patricia
Trunk Theresia
Source :
Frontiers in Psychiatry, Vol 13 (2023)
Publication Year :
2023
Publisher :
Frontiers Media S.A., 2023.

Abstract

BackgroundWhite matter hyperintensities (WMH), a biomarker of small vessel disease, are often found in Alzheimer’s disease (AD) and their advanced detection and quantification can be beneficial for research and clinical applications. To investigate WMH in large-scale multicenter studies on cognitive impairment and AD, appropriate automated WMH segmentation algorithms are required. This study aimed to compare the performance of segmentation tools and provide information on their application in multicenter research.MethodsWe used a pseudo-randomly selected dataset (n = 50) from the DZNE-multicenter observational Longitudinal Cognitive Impairment and Dementia Study (DELCODE) that included 3D fluid-attenuated inversion recovery (FLAIR) images from participants across the cognitive continuum. Performances of top-rated algorithms for automated WMH segmentation [Brain Intensity Abnormality Classification Algorithm (BIANCA), lesion segmentation toolbox (LST), lesion growth algorithm (LGA), LST lesion prediction algorithm (LPA), pgs, and sysu_media] were compared to manual reference segmentation (RS).ResultsAcross tools, segmentation performance was moderate for global WMH volume and number of detected lesions. After retraining on a DELCODE subset, the deep learning algorithm sysu_media showed the highest performances with an average Dice’s coefficient of 0.702 (±0.109 SD) for volume and a mean F1-score of 0.642 (±0.109 SD) for the number of lesions. The intra-class correlation was excellent for all algorithms (>0.9) but BIANCA (0.835). Performance improved with high WMH burden and varied across brain regions.ConclusionTo conclude, the deep learning algorithm, when retrained, performed well in the multicenter context. Nevertheless, the performance was close to traditional methods. We provide methodological recommendations for future studies using automated WMH segmentation to quantify and assess WMH along the continuum of cognitive impairment and AD dementia.

Details

Language :
English
ISSN :
16640640
Volume :
13
Database :
Directory of Open Access Journals
Journal :
Frontiers in Psychiatry
Publication Type :
Academic Journal
Accession number :
edsdoj.906b6b5e5c8d4a04a7d1427ab0aab040
Document Type :
article
Full Text :
https://doi.org/10.3389/fpsyt.2022.1010273