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..

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University of Melbourne Researchers

Grants

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)