Deep learning facilitates the diagnosis of adult asthma

K. Tomita (Yonago, Japan), H. Touge (Yonago, Japan), H. Sakai (Yonago, Japan), H. Sano (Osaka-sayama, Japan), Y. Tohda (Osaka-sayama, Japan)

Source: International Congress 2018 – Determinants and monitoring of asthma control
Session: Determinants and monitoring of asthma control
Session type: Poster Discussion
Number: 5489
Disease area: Airway diseases

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K. Tomita (Yonago, Japan), H. Touge (Yonago, Japan), H. Sakai (Yonago, Japan), H. Sano (Osaka-sayama, Japan), Y. Tohda (Osaka-sayama, Japan). Deep learning facilitates the diagnosis of adult asthma. 5489

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