Alzheimer's disease early detection from sparse data using brain importance maps
Abstract
Statistical methods are increasingly used in the analysis of FDG-PET images for the early diagnosis of Alzheimer’s disease. We will demonstrate a method to extract information about the location of metabolic changes induced by Alzheimer’s disease based on a machine learning approach that directly relies features and brain areas to search for regions of interest (ROIs). This approach has the advantage over voxel-wise statistics to consider also the interactions between the features/voxels. We produce “maps” to visualize the most informative regions of the brain and compare the maps created by our approach with voxel-wise statistics. In classification experiments, using the extracted maps, we achieved classification rates of up to 95.5%.
Keywords
Statistical Pattern Recognition, Machine Learning and Data Mining, Medical Diagnosis, Medical Image AnalysisPublished
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Copyright (c) 2013 Andreas Kodewitz, Sylvie Lelandais, Christophe Montagne, Vincent Vigneron
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.