Simpson, I J A, Cardoso, M J, Modat, M, Cash, D M, Woolrich, M W, Andersson, J L R, Schnabel, J A and Ourselin, S (2015) Probabilistic non-linear registration with spatially adaptive regularisation. Medical Image Analysis, 26 (1). pp. 203-216. ISSN 1361-8415
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Abstract
This paper introduces a novel method for inferring spatially varying regularisation in non-linear registration. This is achieved through full Bayesian inference on a probabilistic registration model, where the prior on the transformation parameters is parameterised as a weighted mixture of spatially localised components. Such an approach has the advantage of allowing the registration to be more flexibly driven by the data than a traditional globally defined regularisation penalty, such as bending energy. The proposed method adaptively determines the influence of the prior in a local region. The strength of the prior may be reduced in areas where the data better support deformations, or can enforce a stronger constraint in less informative areas. Consequently, the use of such a spatially adaptive prior may reduce unwanted impacts of regularisation on the inferred transformation. This is especially important for applications where the deformation field itself is of interest, such as tensor based morphometry. The proposed approach is demonstrated using synthetic images, and with application to tensor based morphometry analysis of subjects with Alzheimer’s disease and healthy controls. The results indicate that using the proposed spatially adaptive prior leads to sparser deformations, which provide better localisation of regional volume change. Additionally, the proposed regularisation model leads to more data driven and localised maps of registration uncertainty. This paper also demonstrates for the first time the use of Bayesian model comparison for selecting different types of regularisation.
Item Type: | Article |
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Keywords: | Medical image registration, Regularisation, Bayesian inference, Registration uncertainty |
Schools and Departments: | School of Engineering and Informatics > Informatics |
Research Centres and Groups: | Data Science Research Group |
Depositing User: | Ivor Simpson |
Date Deposited: | 24 Jan 2020 11:15 |
Last Modified: | 24 Jan 2020 11:17 |
URI: | http://sro.sussex.ac.uk/id/eprint/89511 |
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