Methods for Аlzheimer’s desiease diagnostics
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Abstract
The problem of Alzheimer disease diagnosis is considered. The review of current existing automated methods of Alzheimer disease diagnosis using MRI and PET/SPECT images is given. Advantages and disadvantages are presented. Problem of potential redundancy of Alzheimer disease features, which are used in modern diagnosis systems, is considered.
A feature selection algorithm was developed using statistical tests.
The new approach based on a fuzzy logic application for the computer-aided diagnosis of Alzheimer’s disease is developed and experimentally investigated.
References 34, figures 7, tables 2.
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