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Amsterdam 2015
Tuesday, 29.09.2015
Tele-rehabilitation in chronic lung diseases
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Machine learning for COPD exacerbation prediction
Cristobal Esteban Gonzelez (Bilbao (Bizkaia), Spain), Cristóbal Esteban, Javier Moraza, Cristóbal Esteban, Fernando Sancho, Myriam Aburto, Amaia Aramburu, Begona Goiria, Amaia Garcia-Loizaga, Alberto Capelastegui
Source:
International Congress 2015 – Tele-rehabilitation in chronic lung diseases
Session:
Tele-rehabilitation in chronic lung diseases
Session type:
Oral Presentation
Number:
3282
Disease area:
Airway diseases
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Cristobal Esteban Gonzelez (Bilbao (Bizkaia), Spain), Cristóbal Esteban, Javier Moraza, Cristóbal Esteban, Fernando Sancho, Myriam Aburto, Amaia Aramburu, Begona Goiria, Amaia Garcia-Loizaga, Alberto Capelastegui. Machine learning for COPD exacerbation prediction. Eur Respir J 2015; 46: Suppl. 59, 3282
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