Literature DB >> 8301333

Analytical methods to differentiate similar electroencephalographic spectra: neural network and discriminant analysis.

R A Veselis1, R Reinsel, M Wronski.   

Abstract

Differences in electroencephalographic (EEG) power spectra obtained under similar, but not identical, conditions may be difficult to discern using standard techniques. Statistical analysis may not be useful because of the large number of comparisons necessary. Visual recognition of differences also may be difficult. A new technique, neural network analysis, has been used successfully in other problems of pattern recognition and classification. We examined a number of methods of classifying similar EEG data: standard statistical analysis (analysis of variance), visual recognition, discriminant analysis, and neural network analysis. Twenty-nine volunteers received either thiopental (n = 9), midazolam (n = 10), or propofol (n = 10) in sedative doses in 3 different studies. These drugs produced very similar changes in the EEG power spectra. Except for beta 2 power during thiopental infusion, differences between drugs could not be detected using analysis of variance. Visual categorization was correct in 72% of the baseline EEGs, 70% of thiopental EEGs, 27% of propofol EEGs, and 46% of midazolam EEGs. A classification neural network (Learning Vector Quantization network) containing a Kohonen hidden layer was able to successfully classify 57 of 58 EEG samples (of 4 minutes' duration). Discriminant analysis had a similar rate of success. This level of performance was achieved by dividing the EEG power spectrum from 1 to 30 Hz into 15 2-Hz bandwidths. When the EEG power spectrum was divided into the "classical" frequency bandwidths (alpha, beta 1, beta 2, theta, delta), both neural network and discriminant analysis performance deteriorated. By training the network using only certain inputs we were able to identify drug-specific bandwidths that seemed to be important in correct classification. We conclude that propofol, thiopental, and midazolam produce different effects on the EEG and that both neural network and discriminant analysis are useful in identifying these differences. We also conclude that EEG spectra should be analyzed without using classical EEG bands (alpha, beta, etc.). Additionally, neural networks can be used to identify frequency bands that are "important" in specific drug effects on the EEG. Once a classification algorithm is obtained using either a neural network or discriminant analysis, it could be used as an on-line monitor to recognize drug-specific EEG patterns.

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Year:  1993        PMID: 8301333     DOI: 10.1007/BF02886696

Source DB:  PubMed          Journal:  J Clin Monit        ISSN: 0748-1977


  14 in total

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Authors:  G Pfurtscheller; D Flotzinger; W Mohl; M Peltoranta
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Review 2.  Fundamentals and applications of quantified electrophysiology.

Authors:  R A Zappulla
Journal:  Ann N Y Acad Sci       Date:  1991       Impact factor: 5.691

3.  Quantification of the EEG effect of midazolam by aperiodic analysis in volunteers. Pharmacokinetic/pharmacodynamic modelling.

Authors:  L T Breimer; P J Hennis; A G Burm; M Danhof; J G Bovill; J Spierdijk; A A Vletter
Journal:  Clin Pharmacokinet       Date:  1990-03       Impact factor: 6.447

4.  Pharmacokinetic and electroencephalographic study of intravenous diazepam, midazolam, and placebo.

Authors:  D J Greenblatt; B L Ehrenberg; J Gunderman; A Locniskar; J M Scavone; J S Harmatz; R I Shader
Journal:  Clin Pharmacol Ther       Date:  1989-04       Impact factor: 6.875

5.  Comparison of a set of power distribution parameters for intraoperative EEG monitoring.

Authors:  R R Dzwonczyk; M B Howie
Journal:  IEEE Trans Biomed Eng       Date:  1986-08       Impact factor: 4.538

6.  Pharmacokinetic-pharmacodynamic modeling of midazolam effects on the human central nervous system.

Authors:  R Koopmans; J Dingemanse; M Danhof; G P Horsten; C J van Boxtel
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7.  Evidence for a characteristic EEG frequency response to thiopental.

Authors:  J Schwartz; S Feldstein; M Fink; D M Shapiro; T M Itil
Journal:  Electroencephalogr Clin Neurophysiol       Date:  1971-08

8.  Differentiating the effects of three benzodiazepines on non-REM sleep EEG spectra. A neural-network pattern classification analysis.

Authors:  A S Gevins; R K Stone; S D Ragsdale
Journal:  Neuropsychobiology       Date:  1988       Impact factor: 2.328

9.  Transformations towards the normal distribution of broad band spectral parameters of the EEG.

Authors:  T Gasser; P Bächer; J Möcks
Journal:  Electroencephalogr Clin Neurophysiol       Date:  1982-01

10.  EEG and memory effects of low-dose infusions of propofol.

Authors:  R A Veselis; R A Reinsel; M Wroński; P Marino; W P Tong; R F Bedford
Journal:  Br J Anaesth       Date:  1992-09       Impact factor: 9.166

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