Are estimations of radiomic image markers dispensable due to recent deep learning findings?

Martin Obert

Source: Eur Respir J, 54 (2) 1901185; 10.1183/13993003.01185-2019
Journal Issue: August
Disease area: Interstitial lung diseases

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Martin Obert. Are estimations of radiomic image markers dispensable due to recent deep learning findings?. Eur Respir J, 54 (2) 1901185; 10.1183/13993003.01185-2019

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