A network analysis of clinical characteristics of patients with COPD: partial results.

A. Rodrigues (Londrina, Brazil), C. Camillo (Londrina, Brazil), P. Cerqueira (Londrina, Brazil), F. Machado (Londrina, Brazil), L. Belo (Londrina, Brazil), L. Schneider (Londrina, Brazil), J. Fonseca (Londrina, Brazil), T. Paes (Londrina, Brazil), N. Hernandes (Londrina, Brazil), F. Pitta (Londrina, Brazil)

Source: International Congress 2018 – Chronic respiratory disease: effects of rehabilitation interventions in patients
Session: Chronic respiratory disease: effects of rehabilitation interventions in patients
Session type: Thematic Poster
Number: 1486
Disease area: Airway diseases

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A. Rodrigues (Londrina, Brazil), C. Camillo (Londrina, Brazil), P. Cerqueira (Londrina, Brazil), F. Machado (Londrina, Brazil), L. Belo (Londrina, Brazil), L. Schneider (Londrina, Brazil), J. Fonseca (Londrina, Brazil), T. Paes (Londrina, Brazil), N. Hernandes (Londrina, Brazil), F. Pitta (Londrina, Brazil). A network analysis of clinical characteristics of patients with COPD: partial results.. 1486

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