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Stockholm 2002
Monday 16.09.2002
Asthma prevalence in different parts of the world
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Predicting the hospitalization trends of asthma using autoregression and time-delay neural networks
D. P. Petrovic, L. S. Nagorni-Obradovic, V. I. Petrovic (Belgrade, Yugoslavia)
Source:
Annual Congress 2002 - Asthma prevalence in different parts of the world
Session:
Asthma prevalence in different parts of the world
Session type:
Thematic Poster Session
Number:
1977
Disease area:
Airway diseases
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Citations should be made in the following way:
D. P. Petrovic, L. S. Nagorni-Obradovic, V. I. Petrovic (Belgrade, Yugoslavia). Predicting the hospitalization trends of asthma using autoregression and time-delay neural networks. Eur Respir J 2002; 20: Suppl. 38, 1977
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