Machine learning algorithm for the diagnosis of pulmonary embolism: a proof of concept study

K. Exarchos (Ioannina, Greece), A. Aggelopoulou (Ioannina, Greece), K. Bartziokas (Ioannina, Greece), E. Tsina (Ioannina, Greece), C. Tagkas (Ioannina, Greece), V. Drouvis (Ioannina, Greece), O. Toli (Ioannina, Greece), K. Kostikas (Ioannina, Greece)

Source: Virtual Congress 2020 – From diagnosis to management of pulmonary embolism
Session: From diagnosis to management of pulmonary embolism
Session type: Oral Presentation
Number: 4972
Disease area: Pulmonary vascular diseases

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K. Exarchos (Ioannina, Greece), A. Aggelopoulou (Ioannina, Greece), K. Bartziokas (Ioannina, Greece), E. Tsina (Ioannina, Greece), C. Tagkas (Ioannina, Greece), V. Drouvis (Ioannina, Greece), O. Toli (Ioannina, Greece), K. Kostikas (Ioannina, Greece). Machine learning algorithm for the diagnosis of pulmonary embolism: a proof of concept study. 4972

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