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A Comparison of Methods to Harmonize Cortical Thickness Measurements Across Scanners and Sites

Authors :
Yuval Neria
Henrik Walter
Matthew Peverill
Bobak Hosseini
Saskia B. J. Koch
Sophia I. Thomopoulos
Robert Vermeiren
Evan Gordon
Emily L. Dennis
Terri A. deRoon-Cassini
Geoffrey J May
Chadi G. Abdallah
Amit Etkin
Tanja Jovanovic
Scott R. Sponheim
Xin Wang
Jack B. Nitschke
Christopher R.K. Ching
Justin T. Baker
Ilan Harpaz-Rotem
Lauren A.M. Lebois
Martha E. Shenton
Faisal Rashid
Katie A. McLaughlin
Julia Herzog
Jessica Bomyea
Steven J.A. van der Werff
John H. Krystal
Anna R. Hudson
Murray B. Stein
Lauren E. Salminen
Kyle Choi
Anika Sierk
Inga K. Koerte
Richard A. Bryant
Vincent A. Magnotta
Marijo Tamburrino
Delin Sun
Nic J.A. van de Wee
Soraya Seedat
Miranda Olff
Christian Schmahl
Elpiniki Andrew
Elizabeth A. Olson
Israel Liberzon
Sven C. Mueller
Dick J. Veltman
Sanne J.H. van Rooij
Neda Jahanshad
Jennifer S. Stevens
Jonathan C Ipser
Benjamin Suarez-Jimenez
Richard J. Davidson
Courtney C. Haswell
Jessie L. Frijling
Mirjam van Zuiden
Gina L. Forster
Gopalkumar Rakesh
Lee A. Baugh
Laura Nawijn
Theo G.M. van Erp
Kelene A. Fercho
Li Wang
Steven M. Nelson
Adi Maron-Katz
Antje Manthey
Tian Chen
Gen Li
Mayuresh S. Korgaonkar
C. Lexi Baird
Xi Zhu
Hassaan Gomaa
Thomas Straube
Seth G. Disner
Ye Zhu
Kelly A. Sambrook
Dan J. Stein
Isabelle M. Rosso
Mark W. Logue
Michael D. De Bellis
Andrew S. Cotton
David Hofmann
Stefan S. du Plessis
Jacklynn M. Fitzgerald
Judith K. Daniels
Ifat Levy
K. Luan Phan
Nicholas D. Davenport
Jeffrey S. Simons
Paul M. Thompson
Hong Xie
Christine L. Larson
Raluca M. Simons
Negar Fani
Rajendra A. Morey
Brian M. O’Leary
Milissa L. Kaufman
Daniel W. Grupe
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

Results of neuroimaging datasets aggregated from multiple sites may be biased by site- specific profiles in participants’ demographic and clinical characteristics, as well as MRI acquisition protocols and scanning platforms. We compared the impact of four different harmonization methods on results obtained from analyses of cortical thickness data: (1) linear mixed-effects model (LME) that models site-specific random intercepts (LMEINT), (2) LME that models both site-specific random intercepts and age-related random slopes (LMEINT+SLP), (3) ComBat, and (4) ComBat with a generalized additive model (ComBat-GAM). Our test case for comparing harmonization methods was cortical thickness data aggregated from 29 sites, which included 1,343 cases with posttraumatic stress disorder (PTSD) (6.2-81.8 years old) and 2,067 trauma-exposed controls without PTSD (6.3-85.2 years old). We found that, compared to the other data harmonization methods, data processed with ComBat-GAM were more sensitive to the detection of significant case-control differences in regional cortical thickness (X2(3) = 34.339, p < 0.001), and case-control differences in age-related cortical thinning (X2(3) = 15.128, p = 0.002). Specifically, ComBat-GAM led to larger effect size estimates of cortical thickness reductions (corrected p-values < 0.001), smaller age-appropriate declines (corrected p-values < 0.001), and lower female to male contrast (corrected p-values < 0.001) in cases compared to controls relative to other harmonization methods. Harmonization with ComBat-GAM also led to greater estimates of age-related declines in cortical thickness (corrected p-values < 0.001) in both cases and controls compared to other harmonization methods. Our results support the use of ComBat-GAM for harmonizing cortical thickness data aggregated from multiple sites and scanners to minimize confounds and increase statistical power.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........fa475400968c2fdb2ea007150ae2ac31