Abstract
Feature selection for multiple types of data has been widely applied in mild cognitive impairment (MCI) and Alzheimer’s disease (AD) classification research. Combining multi-modal data for classification can better realize the complementarity of valuable information. In order to improve the classification performance of feature selection on multi-modal data, we propose a multi-modal feature selection algorithm using feature correlation and feature structure fusion (FC2FS). First, we construct feature correlation regularization by fusing a similarity matrix between multi-modal feature nodes. Then, based on manifold learning, we employ feature matrix fusion to construct feature structure regularization, and learn the local geometric structure of the feature nodes. Finally, the two regularizations are embedded in a multi-task learning model that introduces low-rank constraint, the multi-modal features are selected, and the final features are linearly fused and input into a support vector machine (SVM) for classification. Different controlled experiments were set to verify the validity of the proposed method, which was applied to MCI and AD classification. The accuracy of normal controls versus Alzheimer’s disease, normal controls versus late mild cognitive impairment, normal controls versus early mild cognitive impairment, and early mild cognitive impairment versus late mild cognitive impairment achieve 91.85 ± 1.42%, 85.33 ± 2.22%, 78.29 ± 2.20%, and 77.67 ± 1.65%, respectively. This method makes up for the shortcomings of the traditional multi-modal feature selection based on subjects and fully considers the relationship between feature nodes and the local geometric structure of feature space. Our study not only enhances the interpretation of feature selection but also improves the classification performance, which has certain reference values for the identification of MCI and AD.
Highlights
Alzheimer’s Disease (AD) is a neurological disorder associated with memory and mobility impairment and resulting in loss of cognitive function
Structural Magnetic Resonance Imaging and Positron Emission Tomography (PET) have been widely adopted in multi-modal feature selection [4,5,6,7]
Four methods were selected for comparison and respectively applied to mild cognitive impairment (MCI) and AD classification
Summary
Alzheimer’s Disease (AD) is a neurological disorder associated with memory and mobility impairment and resulting in loss of cognitive function. The information complementarity between different modal data is ignored This is bound to result in the acquired features not being comprehensive enough, affecting the final classification results. By observing the subjects with multi-modal data, we can understand the pathogenic factors of the disease more comprehensively. Structural Magnetic Resonance Imaging (sMRI) and PET have been widely adopted in multi-modal feature selection [4,5,6,7]. These two modes can simultaneously obtain the structural and functional features of the brain, which can enhance the ability of feature description and facilitate feature expression
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