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: Fast and robust multi-atlas segmentation of brain magnetic resonance images2/3/10
Jyrki MP. Lötjönena, Robin Wolzb, Juha R. Koikkalainena, Lennart Thurfjellc, Gunhild Waldemard, Hilkka Soininene, Daniel Rueckertb and The Alzheimer's Disease Neuroimaging Initiative1 a Knowledge Intensive Services, VTT Technical Research Centre of Finland, P.O. Box 1300 (street address Tekniikankatu 1), FIN-33101 Tampere, Finlandb Department of Computing, Imperial College London, London, UK c Medical Diagnostics R and D, GE Healthcare, Uppsala, Sweden d Memory Disorders Research Group, Department of Neurology, Copenhagen University Hospital, Rigshospitalet, Copenhagen, Denmark e Department of Neurology, University of Kuopio, Kuopio, Finland Received 12 July 2009;
revised 9 October 2009;
accepted 10 October 2009.
Available online 24 October 2009.
AbstractWe introduce an optimised pipeline for multi-atlas brain MRI segmentation. Both accuracy and speed of segmentation are considered. We study different similarity measures used in non-rigid registration. We show that intensity differences for intensity normalised images can be used instead of standard normalised mutual information in registration without compromising the accuracy but leading to threefold decrease in the computation time. We study and validate also different methods for atlas selection. Finally, we propose two new approaches for combining multi-atlas segmentation and intensity modelling based on segmentation using expectation maximisation (EM) and optimisation via graph cuts. The segmentation pipeline is evaluated with two data cohorts: IBSR data (N = 18, six subcortial structures: thalamus, caudate, putamen, pallidum, hippocampus, amygdala) and ADNI data (N = 60, hippocampus). The average similarity index between automatically and manually generated volumes was 0.849 (IBSR, six subcortical structures) and 0.880 (ADNI, hippocampus). The correlation coefficient for hippocampal volumes was 0.95 with the ADNI data. The computation time using a standard multicore PC computer was about 3–4 min. Our results compare favourably with other recently published results. Keywords: MRI; Segmentation; Atlases; Registration; Hippocampus |
| 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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