Cargando…

Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models

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 h...

Descripción completa

Detalles Bibliográficos
Autores principales: Bayer, Johanna M. M., Dinga, Richard, Kia, Seyed Mostafa, Kottaram, Akhil R., Wolfers, Thomas, Lv, Jinglei, Zalesky, Andrew, Schmaal, Lianne, Marquand, Andre
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7614761/
https://www.ncbi.nlm.nih.gov/pubmed/36272672
http://dx.doi.org/10.1101/2021.02.09.430363
_version_ 1783605648012869632
author Bayer, Johanna M. M.
Dinga, Richard
Kia, Seyed Mostafa
Kottaram, Akhil R.
Wolfers, Thomas
Lv, Jinglei
Zalesky, Andrew
Schmaal, Lianne
Marquand, Andre
author_facet Bayer, Johanna M. M.
Dinga, Richard
Kia, Seyed Mostafa
Kottaram, Akhil R.
Wolfers, Thomas
Lv, Jinglei
Zalesky, Andrew
Schmaal, Lianne
Marquand, Andre
author_sort Bayer, Johanna M. M.
collection PubMed
description 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 individuals from the ABIDE (autism brain imaging data exchange) data set in our experiments. In addition, we used data from individuals with autism to test whether our models are able to retain clinically useful information while removing site effects. We compared the proposed single stage hierarchical Bayesian method to several harmonization techniques commonly used to deal with additive and multiplicative site effects using a two stage regression, including regressing out site and harmonizing for site with ComBat, both with and without explicitly preserving variance related to age and sex as biological variation of interest. In addition, we made predictions from raw data, in which site has not been accommodated for. The proposed hierarchical Bayesian method showed the best predictive performance according to multiple metrics. Beyond that, the resulting z-scores showed little to no residual site effects, yet still retained clinically useful information. In contrast, performance was particularly poor for the regression model and the ComBat model in which age and sex were not explicitly modeled. In all two stage harmonization models, predictions were poorly scaled, suffering from a loss of more than 90 % of the original variance. Our results show the value of hierarchical Bayesian regression methods for accommodating site variation in neuroimaging data, which provides an alternative to harmonization techniques. While the approach we propose may have broad utility, our approach is particularly well suited to normative modelling where the primary interest is in accurate modelling of inter-subject variation and statistical quantification of deviations from a reference model.
format Online
Article
Text
id pubmed-7614761
institution National Center for Biotechnology Information
language English
publishDate 2022
record_format MEDLINE/PubMed
spelling pubmed-76147612023-07-17 Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models Bayer, Johanna M. M. Dinga, Richard Kia, Seyed Mostafa Kottaram, Akhil R. Wolfers, Thomas Lv, Jinglei Zalesky, Andrew Schmaal, Lianne Marquand, Andre Neuroimage Article 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 individuals from the ABIDE (autism brain imaging data exchange) data set in our experiments. In addition, we used data from individuals with autism to test whether our models are able to retain clinically useful information while removing site effects. We compared the proposed single stage hierarchical Bayesian method to several harmonization techniques commonly used to deal with additive and multiplicative site effects using a two stage regression, including regressing out site and harmonizing for site with ComBat, both with and without explicitly preserving variance related to age and sex as biological variation of interest. In addition, we made predictions from raw data, in which site has not been accommodated for. The proposed hierarchical Bayesian method showed the best predictive performance according to multiple metrics. Beyond that, the resulting z-scores showed little to no residual site effects, yet still retained clinically useful information. In contrast, performance was particularly poor for the regression model and the ComBat model in which age and sex were not explicitly modeled. In all two stage harmonization models, predictions were poorly scaled, suffering from a loss of more than 90 % of the original variance. Our results show the value of hierarchical Bayesian regression methods for accommodating site variation in neuroimaging data, which provides an alternative to harmonization techniques. While the approach we propose may have broad utility, our approach is particularly well suited to normative modelling where the primary interest is in accurate modelling of inter-subject variation and statistical quantification of deviations from a reference model. 2022-12-01 2022-10-20 /pmc/articles/PMC7614761/ /pubmed/36272672 http://dx.doi.org/10.1101/2021.02.09.430363 Text en https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Article
Bayer, Johanna M. M.
Dinga, Richard
Kia, Seyed Mostafa
Kottaram, Akhil R.
Wolfers, Thomas
Lv, Jinglei
Zalesky, Andrew
Schmaal, Lianne
Marquand, Andre
Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models
title Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models
title_full Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models
title_fullStr Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models
title_full_unstemmed Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models
title_short Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models
title_sort accommodating site variation in neuroimaging data using normative and hierarchical bayesian models
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7614761/
https://www.ncbi.nlm.nih.gov/pubmed/36272672
http://dx.doi.org/10.1101/2021.02.09.430363
work_keys_str_mv AT bayerjohannamm accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT dingarichard accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT kiaseyedmostafa accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT kottaramakhilr accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT wolfersthomas accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT lvjinglei accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT zaleskyandrew accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT schmaallianne accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels
AT marquandandre accommodatingsitevariationinneuroimagingdatausingnormativeandhierarchicalbayesianmodels