Improving lung cancer diagnosis from exhaled-breath analysis by adding clinical parameters to the artificial neural network
S. Kort (Enschede, Netherlands), M. Brusse-Keizer (Enschede, Netherlands), H. Schouwink (Enschede, Netherlands), E. Citgez (Enschede, Netherlands), F. De Jongh (Enschede, Netherlands), J. Gerritsen (Zutphen, Netherlands), J. Van Der Palen (Zutphen, Netherlands)
Source: International Congress 2019 – Diagnostic procedures and biology of lung cancer
Session: Diagnostic procedures and biology of lung cancer
Session type: Oral Presentation
Number: 1913
Disease area: -
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S. Kort (Enschede, Netherlands), M. Brusse-Keizer (Enschede, Netherlands), H. Schouwink (Enschede, Netherlands), E. Citgez (Enschede, Netherlands), F. De Jongh (Enschede, Netherlands), J. Gerritsen (Zutphen, Netherlands), J. Van Der Palen (Zutphen, Netherlands). Improving lung cancer diagnosis from exhaled-breath analysis by adding clinical parameters to the artificial neural network. 1913
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