A CADSET WP4 transcriptomic analysis of Asthma and COPD overlap

I. Adcock (London, United Kingdom), K. Sun (London, United Kingdom), N. Zounemat Kermani (London, United Kingdom), L. Lahousse (Ghent, Belgium), K. Chung (London, United Kingdom), R. Faner (Barcelona, Spain), G. Donaldson (London, United Kingdom), J. Wedzicha (London, United Kingdom), A. Agusti (Barcelona, Spain), M. Van Den Berge (Groningen, Netherlands)

Source: Virtual Congress 2020 – Asthma science: novel targets and mechanisms
Session: Asthma science: novel targets and mechanisms
Session type: E-poster session
Number: 2895
Disease area: Airway diseases

Congress or journal article abstractE-poster

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I. Adcock (London, United Kingdom), K. Sun (London, United Kingdom), N. Zounemat Kermani (London, United Kingdom), L. Lahousse (Ghent, Belgium), K. Chung (London, United Kingdom), R. Faner (Barcelona, Spain), G. Donaldson (London, United Kingdom), J. Wedzicha (London, United Kingdom), A. Agusti (Barcelona, Spain), M. Van Den Berge (Groningen, Netherlands). A CADSET WP4 transcriptomic analysis of Asthma and COPD overlap. 2895

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