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Comparison of Multivendor Single-Voxel MR Spectroscopy Data Acquired in Healthy Brain at 26 Sites

Authors :
Hongmin Xu
Thomas Lange
Michal Považan
Peter B. Barker
Muhammad G. Saleh
Scott O. Murray
Koen Cuypers
Chencheng Zhang
Fuhua Yan
Lars Ersland
Ian Greenhouse
Martin Tegenthoff
Alayar Kangarlu
Kim M. Cecil
Yan Li
Pallab K. Bhattacharyya
Nigel Hoggard
Adam J. Woods
Feng Liu
Nicolaas A.J. Puts
Chien Yuan E. Lin
Helge J. Zöllner
Niall W. Duncan
Ruoyun Ma
Hans Jörg Wittsack
Vadim Zipunnikov
Michael Dacko
Guangbin Wang
Eric C. Porges
Michael-Paul Schallmo
R. Marc Lebel
Marta Moreno-Ortega
David Yen Ting Chen
Joanna R. Long
Megan A. Forbes
Kimberly L. Chan
Georg Oeltzschner
Richard A.E. Edden
Adam Berrington
Sean Noah
Maiken K. Brix
Napapon Sailasuta
Mark Mikkelsen
Stefanie Heba
Stephan P. Swinnen
David A. Edmondson
Diederick Stoffers
Naying He
Ralph Noeske
Jacobus F.A. Jansen
Fei Gao
Peter Truong
Michael D. Noseworthy
Pieter F. Buur
Alexander R. Craven
Jy Kang Liou
Tun Wei Hsu
Celine Maes
Gabriele Ende
James J. Prisciandaro
Nicholas Simard
Markus Sack
Ashley D. Harris
Timothy P.L. Roberts
Ulrike Dydak
Jiing Feng Lirng
Iain D. Wilkinson
Spinoza Centre for Neuroimaging
RS: MHeNs - R1 - Cognitive Neuropsychiatry and Clinical Neuroscience
Beeldvorming
MUMC+: DA BV Klinisch Fysicus (9)
Source :
Radiology, Radiology, 295, 171-180. Radiological Society of North America Inc., Radiology, 295(1), 171-180. Radiological Society of North America, Inc.
Publication Year :
2020

Abstract

Background The hardware and software differences between MR vendors and individual sites influence the quantification of MR spectroscopy data. An analysis of a large data set may help to better understand sources of the total variance in quantified metabolite levels. Purpose To compare multisite quantitative brain MR spectroscopy data acquired in healthy participants at 26 sites by using the vendor-supplied single-voxel point-resolved spectroscopy (PRESS) sequence. Materials and Methods An MR spectroscopy protocol to acquire short-echo-time PRESS data from the midparietal region of the brain was disseminated to 26 research sites operating 3.0-T MR scanners from three different vendors. In this prospective study, healthy participants were scanned between July 2016 and December 2017. Data were analyzed by using software with simulated basis sets customized for each vendor implementation. The proportion of total variance attributed to vendor-, site-, and participant-related effects was estimated by using a linear mixed-effects model. P values were derived through parametric bootstrapping of the linear mixed-effects models (denoted Pboot). Results In total, 296 participants (mean age, 26 years ± 4.6; 155 women and 141 men) were scanned. Good-quality data were recorded from all sites, as evidenced by a consistent linewidth of N-acetylaspartate (range, 4.4-5.0 Hz), signal-to-noise ratio (range, 174-289), and low Cramér-Rao lower bounds (≤5%) for all of the major metabolites. Among the major metabolites, no vendor effects were found for levels of myo-inositol (Pboot > .90), N-acetylaspartate and N-acetylaspartylglutamate (Pboot = .13), or glutamate and glutamine (Pboot = .11). Among the smaller resonances, no vendor effects were found for ascorbate (Pboot = .08), aspartate (Pboot > .90), glutathione (Pboot > .90), or lactate (Pboot = .28). Conclusion Multisite multivendor single-voxel MR spectroscopy studies performed at 3.0 T can yield results that are coherent across vendors, provided that vendor differences in pulse sequence implementation are accounted for in data analysis. However, the site-related effects on variability were more profound and suggest the need for further standardization of spectroscopic protocols. © RSNA, 2020 Online supplemental material is available for this article. ispartof: RADIOLOGY vol:295 issue:1 pages:171-180 ispartof: location:United States status: published

Details

ISSN :
15271315 and 00338419
Volume :
295
Issue :
1
Database :
OpenAIRE
Journal :
Radiology
Accession number :
edsair.doi.dedup.....87ad8d5c9358f3076c303a29dfe745d8