New Strategies for Automated Differential Diagnosis of Degenerative Brain Disorders

New strategies are considered for automated, single-subject differential diagnosis of independent degenerative brain disorders characterized by similar clinical symptoms using functional imaging. The methodology of these strategies is described and its application in Parkinsonian movement disorders is illustrated for PET data. Using an automated diagnostic topographic profile rating (TPR) technique based on the scaled subprofile model (SSM-PCA), single-subject score values for different conditions are compared with reference values to predict diagnosis. The discriminatory parameters of reference score sets associated with significant SSM principal components referred to as group invariant subprofiles (GIS networks) are examined. It is shown that the extraction of exclusive subnetworks that stem from contrasting image features between conditions can be an effective tool for optimization that does not require expert knowledge.

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