Multi-modal component subspace-similarity-based multi-kernel SVM for schizophrenia classification

Abstract
Heterogeneous multi-modal medical imaging data need to be properly handled in classification. Currently, generating models using multi-modal imaging data has become a common practice and greatly benefits the brain disorder diagnosis, which also holds considerable clinical potential. Although the majority of classification studies focus on using features from single modality, there is substantial evidence suggesting that classification based on...
Paper Details
Title
Multi-modal component subspace-similarity-based multi-kernel SVM for schizophrenia classification
Published Date
Mar 16, 2020
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