Spirometry longitudinal data analysis software (SPIROLA) in a routine clinical laboratory

C. Billings, D. Fishwick (Sheffield, United Kingdom)

Source: International Congress 2014 – Respiratory function: quality and new technologies
Session: Respiratory function: quality and new technologies
Session type: Poster Discussion
Number: 2000
Disease area: Airway diseases

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Citations should be made in the following way:
C. Billings, D. Fishwick (Sheffield, United Kingdom). Spirometry longitudinal data analysis software (SPIROLA) in a routine clinical laboratory. Eur Respir J 2014; 44: Suppl. 58, 2000

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