| Literature DB >> 7519141 |
W S Pritchard1, D W Duke, K L Coburn, N C Moore, K A Tucker, M W Jann, R M Hostetler.
Abstract
Attempts to classify Alzheimer's disease (AD) subjects versus controls using spectral-band measures of electroencephalographic (EEG) data typically achieve around 80% success. This study assessed the ability of adding non-linear EEG measures and using a neural-net classification procedure to improve this performance level. The non-linear EEG measures were estimated correlation dimension ("dimensional complexity," or DCx) and saturation (degree of leveling-off of DCx with increasing embedding dimension). In a sample of 39 subjects (14 ADs, 25 controls), it was found that (a) the addition of non-linear EEG measures improved the classification accuracy of the AD/control status of subjects, and (b) a back-percolation neural net predictively classified the subjects much better than the standard linear techniques of multivariate discriminant analysis or nearest-neighbor discriminant analysis.Entities:
Mesh:
Year: 1994 PMID: 7519141 DOI: 10.1016/0013-4694(94)90033-7
Source DB: PubMed Journal: Electroencephalogr Clin Neurophysiol ISSN: 0013-4694