1996
DOI: 10.1002/(sici)1096-8628(19960216)67:1<1::aid-ajmg1>3.0.co;2-w
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Reliable computer-assisted classification of the EEG: EEG variants in index cases and their first degree relatives

Abstract: A method which optimizes on global properties of sample recordings is proposed for the definition of and the discrimination between electroencephalogram (EEG) classes. The sample was drawn from students at the University of Heidelberg from 1974 to 1978 and consists of 15 healthy index cases clinically ascertained as belonging to the low voltage EEG group. In addition, the three clinically defined groups: diffuse β (18 index cases), borderline α (12 index cases) and monomorphous α (18 index cases) have been inc… Show more

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Cited by 9 publications
(2 citation statements)
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“…It is also readily acknowledged that some EEG records clearly represent "borderline" cases. Attempts have also been made to discriminate between LVA and borderline LVA (BLVA) using computer and statistical techniques (see Dunki et al, 1996;Vogel et al, 1981).…”
Section: Data Analysesmentioning
confidence: 99%
“…It is also readily acknowledged that some EEG records clearly represent "borderline" cases. Attempts have also been made to discriminate between LVA and borderline LVA (BLVA) using computer and statistical techniques (see Dunki et al, 1996;Vogel et al, 1981).…”
Section: Data Analysesmentioning
confidence: 99%
“…It is also readily acknowledged that some EEG records clearly represent "borderline" cases. Attempts have also been made to discriminate between LVA and BLVA using computer and statistical techniques (see Dunki et al, 1996;Vogel et al, 1981). In the present study, visual scoring of the EEG for clinical abnormalities, impressionistic classification, and spectral analyses were used to classify LVA.…”
Section: Data Analysesmentioning
confidence: 99%