An Integrated Segmentation and Classification Approach Applied to Multiple Sclerosis Analysis
Article 2006 en
Authors
AA
Ayelet Akselrod-Ballin
MG
Meirav Galun
RB
Ronen Basri
Abstract
1 min read
We present a novel multiscale approach that combines segmentation with classification to detect abnormal brain structures in medical imagery, and demonstrate its utility in detecting multiple sclerosis lesions in 3D MRI data. Our method uses segmentation to obtain a hierarchical decomposition of a multi-channel, anisotropic MRI scan. It then produces a rich set of features describing the segments in terms of intensity, shape, location, and neighborhood relations. These features are then fed into a decision tree-based classifier, trained with data labeled by experts, enabling the detection of lesions in all scales. Unlike common approaches that use voxel-by-voxel analysis, our system can utilize regional properties that are often important for characterizing abnormal brain structures. We provide experiments showing successful detections of lesions in both simulated and real MR images.
Paolo Preziosa, Maria A. Rocca, Elisabetta Pagani, Maria Laura Stromillo, Christian Enzinger, Antonio Gallo, Hanneke E. Hulst, Matteo Atzori, Deborah Pareto, Gianna Carla Riccitelli, Massimiliano Copetti, Nicola De Stefano, Franz Fazekas, Alvino Bisecco, Frederik Barkhof, Tarek Yousry, María Jesús Arévalo, Massimo Filippi
Paolo Preziosa, Maria A. Rocca, Manfredo Atzori, Frederik Barkhof, Nicola De Stefano, Christian Enzinger, Franz Fazekas, Antonio Gallo, Hanneke E. Hulst, Laura Mancini, Xavier Montalbán, Elisabetta Pagani, Àlex Rovira, ML Stromillo, Gioacchino Tedeschi, Giacomo P. Comi, Massimo Filippi
Discussion(0)
No comments yet. Be the first to comment.