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PredictAD was presented in ICAD 2010
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NeuroImage paper: LEAP: Learning embeddings for atlas propagation

2/3/10

Robin Wolza, Paul Aljabara, Joseph V. Hajnalb, Alexander Hammersb, Daniel Rueckerta and the Alzheimer's Disease Neuroimaging Initiative2

a Visual Information Processing Group, Department of Computing, Imperial College London, 180 Queen's Gate, London, SW7 2AZ, UK

b Division of Neuroscience and Mental Health, MRC Clinical Sciences Center, Imperial College at Hammersmith Hospital Campus, Du Cane Road, London, W12 0HS, UK

Received 8 July 2009; 
revised 27 September 2009; 
accepted 29 September 2009. 
Available online 6 October 2009.

Abstract

We propose a novel framework for the automatic propagation of a set of manually labeled brain atlases to a diverse set of images of a population of subjects. A manifold is learned from a coordinate system embedding that allows the identification of neighborhoods which contain images that are similar based on a chosen criterion. Within the new coordinate system, the initial set of atlases is propagated to all images through a succession of multi-atlas segmentation steps. This breaks the problem of registering images that are very “dissimilar” down into a problem of registering a series of images that are “similar”. At the same time, it allows the potentially large deformation between the images to be modeled as a sequence of several smaller deformations. We applied the proposed method to an exemplar region centered around the hippocampus from a set of 30 atlases based on images from young healthy subjects and a dataset of 796 images from elderly dementia patients and age-matched controls enrolled in the Alzheimer's Disease Neuroimaging Initiative (ADNI). We demonstrate an increasing gain in accuracy of the new method, compared to standard multi-atlas segmentation, with increasing distance between the target image and the initial set of atlases in the coordinate embedding, i.e., with a greater difference between atlas and image. For the segmentation of the hippocampus on 182 images for which a manual segmentation is available, we achieved an average overlap (Dice coefficient) of 0.85 with the manual reference.

Keywords: Structural MR images; Atlas-based segmentation; Coordinate system embedding; Manifold learning; Spectral analysis

8/18/10 PredictAD was presented in ICAD 2010
6/4/10 NeuroImage Paper: Measurement of hippocampal atrophy using 4D graph-cut segmentation: Application to ADNI
6/4/10 PredictAD presented on Finnish TV
2/16/10 Press release: VTT has developed a rapid image analysis method to help diagnose Alzheimer's disease
2/3/10 NeuroImage paper: LEAP: Learning embeddings for atlas propagation
2/3/10 NeuroImage paper: Fast and robust multi-atlas segmentation of brain magnetic resonance images
2/3/10 NeuroImage paper: General indices to characterize the electrical response of the cerebral cortex to TMS
11/4/09 Contribution of WP4 to the dissemination of knowledge
6/19/08 PredictAD featured in European Hospital
6/10/08 European research project to explore Alzheimer´s disease diagnosis (Press Release)

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