Elsevier

NeuroImage

Volume 166, 1 February 2018, Pages 117-134
NeuroImage

Generative diffeomorphic modelling of large MRI data sets for probabilistic template construction

https://doi.org/10.1016/j.neuroimage.2017.10.060Get rights and content
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Highlights

  • We present a generative modelling framework to process large MRI data sets.

  • The proposed framework can serve to learn average-shaped tissue probability maps and empirical intensity priors.

  • We explore semi-supervised learning and variational inference schemes.

  • The method is validated against state-of-the-art tools using publicly available data.

Abstract

In this paper we present a hierarchical generative model of medical image data, which can capture simultaneously the variability of both signal intensity and anatomical shapes across large populations. Such a model has a direct application for learning average-shaped probabilistic tissue templates in a fully automated manner. While in principle the generality of the proposed Bayesian approach makes it suitable to address a wide range of medical image computing problems, our work focuses primarily on neuroimaging applications. In particular we validate the proposed method on both real and synthetic brain MR scans including the cervical cord and demonstrate that it yields accurate alignment of brain and spinal cord structures, as compared to state-of-the-art tools for medical image registration. At the same time we illustrate how the resulting tissue probability maps can readily be used to segment, bias correct and spatially normalise unseen data, which are all crucial pre-processing steps for MR imaging studies.

Keywords

Atlas construction
Image segmentation
Image registration
Generative modelling
MRI

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