TY - JOUR
T1 - Development and evaluation of a manual segmentation protocol for deep grey matter in multiple sclerosis
T2 - Towards accelerated semi-automated references
AU - de Sitter, Alexandra
AU - Burggraaff, Jessica
AU - Bartel, Fabian
AU - Palotai, Miklos
AU - Liu, Yaou
AU - Simoes, Jorge
AU - Ruggieri, Serena
AU - Schregel, Katharina
AU - Ropele, Stefan
AU - Rocca, Maria A.
AU - Gasperini, Claudio
AU - Gallo, Antonio
AU - Schoonheim, Menno M.
AU - Amann, Michael
AU - Yiannakas, Marios
AU - Pareto, Deborah
AU - Wattjes, Mike P.
AU - Sastre-Garriga, Jaume
AU - Kappos, Ludwig
AU - Filippi, Massimo
AU - Enzinger, Christian
AU - Frederiksen, Jette
AU - Uitdehaag, Bernard
AU - Guttmann, Charles R.G.
AU - Barkhof, Frederik
AU - Vrenken, Hugo
N1 - Publisher Copyright:
© 2021 The Authors
PY - 2021
Y1 - 2021
N2 - Background: Deep grey matter (dGM) structures, particularly the thalamus, are clinically relevant in multiple sclerosis (MS). However, segmentation of dGM in MS is challenging; labeled MS-specific reference sets are needed for objective evaluation and training of new methods. Objectives: This study aimed to (i) create a standardized protocol for manual delineations of dGM; (ii) evaluate the reliability of the protocol with multiple raters; and (iii) evaluate the accuracy of a fast-semi-automated segmentation approach (FASTSURF). Methods: A standardized manual segmentation protocol for caudate nucleus, putamen, and thalamus was created, and applied by three raters on multi-center 3D T1-weighted MRI scans of 23 MS patients and 12 controls. Intra- and inter-rater agreement was assessed through intra-class correlation coefficient (ICC); spatial overlap through Jaccard Index (JI) and generalized conformity index (CIgen). From sparse delineations, FASTSURF reconstructed full segmentations; accuracy was assessed both volumetrically and spatially. Results: All structures showed excellent agreement on expert manual outlines: intra-rater JI > 0.83; inter-rater ICC ≥ 0.76 and CIgen ≥ 0.74. FASTSURF reproduced manual references excellently, with ICC ≥ 0.97 and JI ≥ 0.92. Conclusions: The manual dGM segmentation protocol showed excellent reproducibility within and between raters. Moreover, combined with FASTSURF a reliable reference set of dGM segmentations can be produced with lower workload.
AB - Background: Deep grey matter (dGM) structures, particularly the thalamus, are clinically relevant in multiple sclerosis (MS). However, segmentation of dGM in MS is challenging; labeled MS-specific reference sets are needed for objective evaluation and training of new methods. Objectives: This study aimed to (i) create a standardized protocol for manual delineations of dGM; (ii) evaluate the reliability of the protocol with multiple raters; and (iii) evaluate the accuracy of a fast-semi-automated segmentation approach (FASTSURF). Methods: A standardized manual segmentation protocol for caudate nucleus, putamen, and thalamus was created, and applied by three raters on multi-center 3D T1-weighted MRI scans of 23 MS patients and 12 controls. Intra- and inter-rater agreement was assessed through intra-class correlation coefficient (ICC); spatial overlap through Jaccard Index (JI) and generalized conformity index (CIgen). From sparse delineations, FASTSURF reconstructed full segmentations; accuracy was assessed both volumetrically and spatially. Results: All structures showed excellent agreement on expert manual outlines: intra-rater JI > 0.83; inter-rater ICC ≥ 0.76 and CIgen ≥ 0.74. FASTSURF reproduced manual references excellently, with ICC ≥ 0.97 and JI ≥ 0.92. Conclusions: The manual dGM segmentation protocol showed excellent reproducibility within and between raters. Moreover, combined with FASTSURF a reliable reference set of dGM segmentations can be produced with lower workload.
KW - Atrophy
KW - Deep grey matter
KW - MRI
KW - Multiple Sclerosis
KW - Reference set
KW - Segmentation
U2 - 10.1016/j.nicl.2021.102659
DO - 10.1016/j.nicl.2021.102659
M3 - Journal article
C2 - 33882422
AN - SCOPUS:85104345552
VL - 30
JO - NeuroImage: Clinical
JF - NeuroImage: Clinical
SN - 2213-1582
M1 - 102659
ER -