Introduction of a new approach to interpret pulmonary function tests (PFT) based on Machine learning and Game theory

N. LE-DONG (Paris, France), T. Hua-Huy (Paris, France), M. Topalovic (Leuven, Belgium), A. Dinh-Xuan (Paris, France)

Source: International Congress 2019 – Assessment and management of immune-mediated interstitial lung diseases
Session: Assessment and management of immune-mediated interstitial lung diseases
Session type: Thematic Poster
Number: 4726
Disease area: Interstitial lung diseases

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N. LE-DONG (Paris, France), T. Hua-Huy (Paris, France), M. Topalovic (Leuven, Belgium), A. Dinh-Xuan (Paris, France). Introduction of a new approach to interpret pulmonary function tests (PFT) based on Machine learning and Game theory. 4726

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