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Prediction and management of outcomes in obstructive diseases
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Prediction model of COPD acute exacerbation with big data by machine learning methods
C. Rhee (Seoul, Republic of Korea), J. Kim (Seoul, Republic of Korea), K. Yoo (Seoul, Republic of Korea), K. Jung (Anyang, Republic of Korea)
Source:
Virtual Congress 2020 – Prediction and management of outcomes in obstructive diseases
Session:
Prediction and management of outcomes in obstructive diseases
Session type:
Oral Presentation
Number:
4911
Disease area:
Airway diseases
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C. Rhee (Seoul, Republic of Korea), J. Kim (Seoul, Republic of Korea), K. Yoo (Seoul, Republic of Korea), K. Jung (Anyang, Republic of Korea). Prediction model of COPD acute exacerbation with big data by machine learning methods. 4911
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