Author:
Gaubert Malo,Dell’Orco Andrea,Lange Catharina,Garnier-Crussard Antoine,Zimmermann Isabella,Dyrba Martin,Duering Marco,Ziegler Gabriel,Peters Oliver,Preis Lukas,Priller Josef,Spruth Eike Jakob,Schneider Anja,Fliessbach Klaus,Wiltfang Jens,Schott Björn H.,Maier Franziska,Glanz Wenzel,Buerger Katharina,Janowitz Daniel,Perneczky Robert,Rauchmann Boris-Stephan,Teipel Stefan,Kilimann Ingo,Laske Christoph,Munk Matthias H.,Spottke Annika,Roy Nina,Dobisch Laura,Ewers Michael,Dechent Peter,Haynes John Dylan,Scheffler Klaus,Düzel Emrah,Jessen Frank,Wirth Miranka,
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.
Subject
Psychiatry and Mental health