Abstract

BackgroundMany classification methods have been proposed based on magnetic resonance images. Most methods rely on measures such as volume, the cerebral cortical thickness and grey matter density. These measures are susceptible to the performance of registration and limited in representation of anatomical structure. This paper proposes a two-stage local feature fusion method, in which deformable registration is not desired and anatomical information is represented from moderate scale.MethodsKeypoints are firstly extracted from scale-space to represent anatomical structure. Then, two kinds of local features are calculated around the keypoints, one for correspondence and the other for representation. Scores are assigned for keypoints to quantify their effect in classification. The sum of scores for all effective keypoints is used to determine which group the test subject belongs to.ResultsWe apply this method to magnetic resonance images of Alzheimer's disease and Parkinson's disease. The advantage of local feature in correspondence and representation contributes to the final classification. With the help of local feature (Scale Invariant Feature Transform, SIFT) in correspondence, the performance becomes better. Local feature (Histogram of Oriented Gradient, HOG) extracted from 16×16 cell block obtains better results compared with 4×4 and 8×8 cell block.DiscussionThis paper presents a method which combines the effect of SIFT descriptor in correspondence and the representation ability of HOG descriptor in anatomical structure. This method has the potential in distinguishing patients with brain disease from controls.

Highlights

  • Magnetic resonance imaging (MRI) is a powerful technique which provides rich information about anatomical structure [1]

  • This paper presents a method which combines the effect of Scale Invariant Feature Transform (SIFT) descriptor in correspondence and the representation ability of Histogram of Oriented Gradient (HOG) descriptor in anatomical structure

  • Classification of brain disease in MRI using two-stage local feature fusion demonstrate one method which combines the advantage of local feature in correspondence among different subjects and representation of anatomical structure

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Summary

Introduction

Magnetic resonance imaging (MRI) is a powerful technique which provides rich information about anatomical structure [1]. The traditional measures extracted from the structural MR images include: 1) Voxel-wise density [3,4,5,6,7,8,9,10,11,12,13,14,15,16]; 2) Cortical thickness [17,18,19,20,21,22]; 3) Volume [17,19,23,24,25,26,27,28,29,30,31]; 4) Deformation information [32,33]. Most methods rely on measures such as volume, the cerebral cortical thickness and grey matter density These measures are susceptible to the performance of registration and limited in representation of anatomical structure. This paper proposes a two-stage local feature fusion method, in which deformable registration is not desired and anatomical information is represented from moderate scale

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