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Clinical COPD phenotypes: a novel approach using principal component and cluster analyses
Burgel P-R., Paillasseur J-L., Caillaud D., Tillie-Leblond I., Chanez P., Escamilla R., Court-Fortune I., Perez T., Carré P., Roche N.
Source:
Eur Respir J 2010; 36: 531-539
Journal Issue:
September
Disease area:
Airway diseases
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Burgel P-R., Paillasseur J-L., Caillaud D., Tillie-Leblond I., Chanez P., Escamilla R., Court-Fortune I., Perez T., Carré P., Roche N.. Clinical COPD phenotypes: a novel approach using principal component and cluster analyses. Eur Respir J 2010; 36: 531-539
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