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07.09.2021
Digital health interventions in respiratory medicine
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Deep learning algorithm for the classification of spirometries using flow-volume curves: proof of concept study
K. Exarchos (Ioannina, Greece), D. Potonos (Ioannina, Greece), A. Aggelopoulou (Ioannina, Greece), A. Sioutkou (Ioannina, Greece), K. Kostikas (Ioannina, Greece)
Source:
Virtual Congress 2021 – Digital health interventions in respiratory medicine
Session:
Digital health interventions in respiratory medicine
Session type:
E-poster
Number:
3442
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K. Exarchos (Ioannina, Greece), D. Potonos (Ioannina, Greece), A. Aggelopoulou (Ioannina, Greece), A. Sioutkou (Ioannina, Greece), K. Kostikas (Ioannina, Greece). Deep learning algorithm for the classification of spirometries using flow-volume curves: proof of concept study. 3442
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