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Paris 2018
Tuesday, 18.09.2018
Imaging biomarkers and quantitative imaging
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PRM metrics predict COPD progression
P. Belloni (S. San Francisco, United States of America), D. Cheung (S. San Francisco, United States of America), X. Yang (S. San Francisco, United States of America), A. De Crespigny (S. San Francisco, United States of America), A. Coimbra (S. San Francisco, United States of America)
Source:
International Congress 2018 – Imaging biomarkers and quantitative imaging
Session:
Imaging biomarkers and quantitative imaging
Session type:
Oral Presentation
Number:
3797
Disease area:
Airway diseases
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Citations should be made in the following way:
P. Belloni (S. San Francisco, United States of America), D. Cheung (S. San Francisco, United States of America), X. Yang (S. San Francisco, United States of America), A. De Crespigny (S. San Francisco, United States of America), A. Coimbra (S. San Francisco, United States of America). PRM metrics predict COPD progression. 3797
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