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Abstract #8780 Published in IGR 5-1

Diagnosis of glaucoma by indirect classifiers

Peters A; Lausen B; Michelson G; Gefeller O
Methods of Information in Medicine 2003; 42: 99-103


OBJECTIVES: Demonstration of the applicability of a framework known as indirect classification to the example of glaucoma classification. Indirect classification combines medical a priori knowledge and statistical classification methods. The method is compared to direct classification approaches with respect to the estimated misclassification error. METHODS: Indirect classification is applied using classification trees and the diagnosis of glaucoma. Misclassification errors are reduced by bootstrap aggregation. As direct classification methods, linear discriminant analysis, classification trees, and bootstrap aggregated classification trees are utilized in the problem of glaucoma diagnosis. Misclassification rates are estimated via ten-fold cross-validation. RESULTS: Indirect classification techniques reduce the misclassification error in the context of glaucoma classification compared to direct classification methods. CONCLUSIONS: Embedding a priori knowledge into statistical classification techniques can improve misclassification results. Indirect classification offers a framework to realize this combination.

Dr. O. Gefeller, Department of Medical Informatics, F.-A.-Univ. Erlangen-Nuremberg, Waldstrasse 6, D-91054 Erlangen, Germany. olaf.gefeller@rzmail.uni-erlangen.de


Classification:

15 Miscellaneous



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