C. Besthorn et al., DISCRIMINATION OF ALZHEIMERS-DISEASE AND NORMAL AGING BY EEG DATA, Electroencephalography and clinical neurophysiology, 103(2), 1997, pp. 241-248
Quantitative EEG results in Alzheimer's disease may be summarized by t
he term 'slowing', i.e. slow frequencies (delta, theta) are increased
and fast frequencies (alpha, beta) are decreased. But how can EEG data
be used to discriminate AD patients from controls by means of EEG dat
a? Discriminant analysis may produce false predictions using too many
predictors, as is often the case in EEG studies. We studied 4 approach
es to this problem: Classification by group means, stepwise discrimina
nt analysis, a neuronal network using back propagation and discriminan
t analysis preceded by principal components analysis (PCA). A maximum
of 86.6% correct classifications was reached using the last mentioned
approach with EEG data alone. Including age as a moderator variable in
a subgroup, 95.9% correct classifications were reached. (C) 1997 Else
vier Science Ireland Ltd.