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Monday, 30.09.2019
M-health/e-health I
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Explaining predictions of an automated pulmonary function test interpretation algorithm
N. Das (Leuven, Belgium), M. Topalovic (Leuven, Belgium), J. Raskin (Leuven, Belgium), J. Aerts (Leuven, Belgium), T. Troosters (Leuven, Belgium), W. Janssens (Leuven, Belgium)
Source:
International Congress 2019 – M-health/e-health I
Session:
M-health/e-health I
Session type:
Poster Discussion
Number:
2227
Disease area:
Airway diseases
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Citations should be made in the following way:
N. Das (Leuven, Belgium), M. Topalovic (Leuven, Belgium), J. Raskin (Leuven, Belgium), J. Aerts (Leuven, Belgium), T. Troosters (Leuven, Belgium), W. Janssens (Leuven, Belgium). Explaining predictions of an automated pulmonary function test interpretation algorithm. 2227
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