Paper
12 March 2010 Diffeomorphic demons using normalized mutual information, evaluation on multimodal brain MR images
Marc Modat, Tom Vercauteren, Gerard R. Ridgway, David J. Hawkes, Nick C. Fox, Sébastien Ourselin
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Abstract
The demons algorithm is a fast non-parametric non-rigid registration method. In recent years great efforts have been made to improve the approach; the state of the art version yields symmetric inverse-consistent largedeformation diffeomorphisms. However, only limited work has explored inter-modal similarity metrics, with no practical evaluation on multi-modality data. We present a diffeomorphic demons implementation using the analytical gradient of Normalised Mutual Information (NMI) in a conjugate gradient optimiser. We report the first qualitative and quantitative assessment of the demons for inter-modal registration. Experiments to spatially normalise real MR images, and to recover simulated deformation fields, demonstrate (i) similar accuracy from NMI-demons and classical demons when the latter may be used, and (ii) similar accuracy for NMI-demons on T1w-T1w and T1w-T2w registration, demonstrating its potential in multi-modal scenarios.
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Marc Modat, Tom Vercauteren, Gerard R. Ridgway, David J. Hawkes, Nick C. Fox, and Sébastien Ourselin "Diffeomorphic demons using normalized mutual information, evaluation on multimodal brain MR images", Proc. SPIE 7623, Medical Imaging 2010: Image Processing, 76232K (12 March 2010); https://doi.org/10.1117/12.843962
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CITATIONS
Cited by 26 scholarly publications and 2 patents.
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KEYWORDS
Image registration

Brain

Magnetic resonance imaging

Neuroimaging

Data acquisition

Error analysis

Optimization (mathematics)

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