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Anatomically Constrained Weak Classifier Fusion for Early Detection of Alzheimer's Disease

Authors :
Mawulawoé Komlagan
Vinh-Thong Ta
Xingyu Pan
Jean-Philippe Domenger
Louis Collins, D.
Pierrick Coupe
Patch-based processing for medical and natural images (PICTURA)
Laboratoire Bordelais de Recherche en Informatique (LaBRI)
Université de Bordeaux (UB)-Centre National de la Recherche Scientifique (CNRS)-École Nationale Supérieure d'Électronique, Informatique et Radiocommunications de Bordeaux (ENSEIRB)-Université de Bordeaux (UB)-Centre National de la Recherche Scientifique (CNRS)-École Nationale Supérieure d'Électronique, Informatique et Radiocommunications de Bordeaux (ENSEIRB)
Université de Bordeaux (UB)-Centre National de la Recherche Scientifique (CNRS)-École Nationale Supérieure d'Électronique, Informatique et Radiocommunications de Bordeaux (ENSEIRB)
McConnell Brain Imaging Centre (MNI)
Montreal Neurological Institute and Hospital
McGill University = Université McGill [Montréal, Canada]-McGill University = Université McGill [Montréal, Canada]
CPU
TRAIL
Coupé, Pierrick
Source :
HAL, Machine Learning in Medical Imaging, 5th International Workshop on Machine Learning in Medical Imaging, 5th International Workshop on Machine Learning in Medical Imaging, Sep 2014, United States. 8 p

Abstract

International audience; The early detection of Alzheimer's disease (AD) is a key step to accelerate the development of new therapies and to diminish the associated socio-economic burden. To address this challenging problem, several biomarkers based on MRI have been proposed. Although numer- ous efforts have been devoted to improve MRI-based feature quality or to increase machine learning methods accuracy, the current AD prog- nosis accuracy remains limited. In this paper, we propose to combine both high quality biomarkers and advanced learning method. Our ap- proach is based on a robust ensemble learning strategy using gray matter grading. The estimated weak classifiers are then fused into high infor- mative anatomical sub-ensembles. Through a sparse logistic regression, the most relevant anatomical sub-ensembles are selected, weighted and used as input to a global classifier. Validation on the full ADNI1 dataset demonstrates that the proposed method obtains competitive results of prediction of conversion to AD in the Mild Cognitive Impairment group with an accuracy of 75.6%.

Details

Database :
OpenAIRE
Journal :
HAL, Machine Learning in Medical Imaging, 5th International Workshop on Machine Learning in Medical Imaging, 5th International Workshop on Machine Learning in Medical Imaging, Sep 2014, United States. 8 p
Accession number :
edsair.dedup.wf.001..25f2282ffd2cb8aa726fff81958fd3e0