research group will continue study this problem on
larger sample of subjects in order to improve
robustness of the classification as well as compare
discriminate analysis performance versus other
methods on the same sample of subjects.
ACKNOWLEDGEMENTS
The work was supported by Act 211 Government of
the Russian Federation, contract № 02.A03.21.0006.
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