Hierarchical Bayesian Regression for Multi-Site Normative Modeling of
Neuroimaging Data
- URL: http://arxiv.org/abs/2005.12055v1
- Date: Mon, 25 May 2020 11:55:19 GMT
- Title: Hierarchical Bayesian Regression for Multi-Site Normative Modeling of
Neuroimaging Data
- Authors: Seyed Mostafa Kia, Hester Huijsdens, Richard Dinga, Thomas Wolfers,
Maarten Mennes, Ole A. Andreassen, Lars T. Westlye, Christian F. Beckmann,
Andre F. Marquand
- Abstract summary: We propose an application of hierarchical Bayesian regression (HBR) for multi-site normative modeling.
Our experimental results confirm the superiority of HBR in deriving more accurate normative ranges on large multi-site neuroimaging data.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Clinical neuroimaging has recently witnessed explosive growth in data
availability which brings studying heterogeneity in clinical cohorts to the
spotlight. Normative modeling is an emerging statistical tool for achieving
this objective. However, its application remains technically challenging due to
difficulties in properly dealing with nuisance variation, for example due to
variability in image acquisition devices. Here, in a fully probabilistic
framework, we propose an application of hierarchical Bayesian regression (HBR)
for multi-site normative modeling. Our experimental results confirm the
superiority of HBR in deriving more accurate normative ranges on large
multi-site neuroimaging data compared to widely used methods. This provides the
possibility i) to learn the normative range of structural and functional brain
measures on large multi-site data; ii) to recalibrate and reuse the learned
model on local small data; therefore, HBR closes the technical loop for
applying normative modeling as a medical tool for the diagnosis and prognosis
of mental disorders.
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