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Clinical COPD phenotypes identified by cluster analysis: validation with mortality
Burgel Pierre-Régis, Roche Nicolas, Paillasseur Jean-Louis, Tillie-Leblond Isabelle, Chanez Pascal, Escamilla Roger, Court-Fortune Isabelle, Perez Thierry, Carré Philippe, Caillaud Denis
Source:
Eur Respir J 2012; 40: 495-496
Journal Issue:
August
Disease area:
Airway diseases
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Burgel Pierre-Régis, Roche Nicolas, Paillasseur Jean-Louis, Tillie-Leblond Isabelle, Chanez Pascal, Escamilla Roger, Court-Fortune Isabelle, Perez Thierry, Carré Philippe, Caillaud Denis. Clinical COPD phenotypes identified by cluster analysis: validation with mortality. Eur Respir J 2012; 40: 495-496
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