Journal article
Accommodating site variation in neuroimaging data using normative and hierarchical Bayesian models
Johanna MM Bayer, Richard Dinga, Seyed Mostafa Kia, Akhil R Kottaram, Thomas Wolfers, Jinglei Lv, Andrew Zalesky, Lianne Schmaal, Andre Marquand
NEUROIMAGE | ACADEMIC PRESS INC ELSEVIER SCIENCE | Published : 2022
Abstract
The potential of normative modeling to make individualized predictions from neuroimaging data has enabled inferences that go beyond the case-control approach. However, site effects are often confounded with variables of interest in a complex manner and can bias estimates of normative models, which has impeded the application of normative models to large multi-site neuroimaging data sets. In this study, we suggest accommodating for these site effects by including them as random effects in a hierarchical Bayesian model. We compared the performance of a linear and a non-linear hierarchical Bayesian model in modeling the effect of age on cortical thickness. We used data of 570 healthy individual..
View full abstractGrants
Awarded by NHMRC Career Development Fellowship
Awarded by NIH RO1
Awarded by Dutch Organisation for Scientific Research (NWO) under a Vernieuwingsimpuls VIDI fellowship
Awarded by Wellcome Trust under a Digital Innovator grant
Funding Acknowledgements
LS was supported by the NHMRC Career Development Fellowship (1140764) and NIH RO1 (MH117601) . AM grateful acknowledges fund-ing from the Dutch Organisation for Scientific Research (NWO) under a Vernieuwingsimpuls VIDI fellowship (grant number 016.156.415) , the European Research Council (consolidator grant, number) and the Wellcome Trust under a Digital Innovator grant (215698/Z/19/Z)