Temporal stability assessment in shear wave elasticity images validated by deep learning neural network for chronic liver disease fibrosis stage assessment.
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Ilias Gatos | Stavros Tsantis | Dimitris Karnabatidis | George C Kagadis | Thanasis Loupas | John D Hazle | Stavros Spiliopoulos | Ioannis Theotokas | J. Hazle | T. Loupas | S. Tsantis | I. Gatos | S. Spiliopoulos | D. Karnabatidis | I. Theotokas | P. Zoumpoulis | G. Kagadis | Pavlos Zoumpoulis
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