Classification of spirometric tests results using neural network

J. Grabska-Chrzastowska, W. Libuszowski, W. Tomalak (Cracow, Rabka, Poland)

Source: Annual Congress 2005 - Spirometry - now and in the future
Session: Spirometry - now and in the future
Session type: Oral Presentation
Number: 4227
Disease area: Paediatric lung diseases

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J. Grabska-Chrzastowska, W. Libuszowski, W. Tomalak (Cracow, Rabka, Poland). Classification of spirometric tests results using neural network. Eur Respir J 2005; 26: Suppl. 49, 4227

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