Title :
Spatial and Anatomical Regularization of SVM: A General Framework for Neuroimaging Data
Author :
Cuingnet, R. ; Glaunes, Joan Alexis ; Chupin, Marie ; Benali, Habib ; Colliot, O.
Author_Institution :
Philips Res., Medisys, Suresnes, France
fDate :
3/1/2013 12:00:00 AM
Abstract :
This paper presents a framework to introduce spatial and anatomical priors in SVM for brain image analysis based on regularization operators. A notion of proximity based on prior anatomical knowledge between the image points is defined by a graph (e.g., brain connectivity graph) or a metric (e.g., Fisher metric on statistical manifolds). A regularization operator is then defined from the graph Laplacian, in the discrete case, or from the Laplace-Beltrami operator, in the continuous case. The regularization operator is then introduced into the SVM, which exponentially penalizes high-frequency components with respect to the graph or to the metric and thus constrains the classification function to be smooth with respect to the prior. It yields a new SVM optimization problem whose kernel is a heat kernel on graphs or on manifolds. We then present different types of priors and provide efficient computations of the Gram matrix. The proposed framework is finally applied to the classification of brain Magnetic Resonance (MR) images (based on Gray Matter (GM) concentration maps and cortical thickness measures) from 137 patients with Alzheimer´s Disease (AD) and 162 elderly controls. The results demonstrate that the proposed classifier generates less-noisy and consequently more interpretable feature maps with high classification performances.
Keywords :
Laplace equations; biomedical MRI; brain; diseases; graph theory; image classification; matrix algebra; medical image processing; optimisation; statistical analysis; support vector machines; Alzheimer disease; Fisher metric; Gram matrix; Laplace-Beltrami operator; SVM optimization problem; anatomical regularization; brain connectivity graph; brain image analysis; brain magnetic resonance image classification; cortical thickness measure; graph Laplacian; gray matter concentration map; heat kernel; neuroimaging data; regularization operator; spatial regularization; statistical manifold; Brain models; Kernel; Laplace equations; Manifolds; Support vector machines; Alzheimer´s disease; Laplacian; SVM; neuroimaging; regularization;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2012.142