8/18/10
PredictAD was presented in ICAD 2010
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6/4/10
NeuroImage Paper: Measurement of hippocampal atrophy using 4D graph-cut segmentation: Application to ADNI
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6/4/10
PredictAD presented on Finnish TV
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8/18/10
PredictAD was presented in ICAD 2010
Read more »
6/4/10
NeuroImage Paper: Measurement of hippocampal atrophy using 4D graph-cut segmentation: Application to ADNI
Read more »
6/4/10
PredictAD presented on Finnish TV
Read more »
Wednesday 9/8/10 - 9/9/10
VPH Industry Meeting 2010
Monday 9/20/10
MICCAI 2010 Machine Learning Workshop
Saturday 9/25/10 - 9/28/10
EFNS 2010
Sunday 9/26/10 - 9/29/10
International Psychogeriatric Association (IPA) International Meeting
Scientific Coordinator
Jyrki Lötjönen
VTT Technical Research Centre of Finland
P.O. Box 1300
33101 Tampere
+358 20 722 3378
jyrki.lotjonen@vtt.fi
NeuroImage paper: LEAP: Learning embeddings for atlas propagation2/3/10
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, UKb 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.
AbstractWe 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 |