Feature Selection, Ranking of Each Feature and Classification for the Diagnosis of Community Acquired Legionella Pneumonia
Other authors
Publication date
2001ISBN
3-540-42235-8
ISSN
0302-9743
Abstract
Diagnosis of community acquired legionella pneumonia (CALP) is currently performed by means of laboratory techniques which may delay diagnosis several hours. To determine whether ANN can categorize CALP and non-legionella community-acquired pneumonia (NLCAP) and be standard for use by clinicians, we prospectively studied 203 patients with community-acquired pneumonia (CAP) diagnosed by laboratory tests. Twenty one clinical and analytical variables were recorded to train a neural net with two classes (LCAP or NLCAP class). In this paper we deal with the problem of diagnosis, feature selection, and ranking of the features as a function of their classification importance, and the design of a classifier the criteria of maximizing the ROC (Receiving operating characteristics) area, which gives a good trade-off between true positives and false negatives. In order to guarantee the validity of the statistics; the train-validation-test databases were rotated by the jackknife technique, and a multistarting procedure was done in order to make the system insensitive to local maxima.
Document Type
Object of conference
Language
English
Keywords
Legionel·la pneumophila
Pages
9 p.
Publisher
Springer
Citation
E. Monte, J. Solé-Casals, J.A. Fiz, N. Sopena “Feature Selection, Ranking of Each Feature and Classification for the Diagnosis of Community Acquired Legionella Pneumonia“,Bio-Inspired Applications of Connectionism, Proceedings of 6th International Work-Conference on Artificial and Natural Networks, IWANN 2001, Series: LNCS, Vol. 2084, Mira, Jose; Prieto, Alberto (Eds.) 2001, XXVII, ISBN: 3-540-42235-8
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- Documents de Congressos [174]
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