Haralick’s texture features for the prediction of response to therapy in colorectal cancer: a preliminary study
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Silvia Conforto | Gaetano Giunta | Maurizio Schmid | Emanuele Neri | Damiano Caruso | Marco Rengo | Andrea Laghi | Maria Ciolina | E. Neri | M. Schmid | S. Conforto | M. Rengo | A. Laghi | G. Giunta | D. Caruso | M. Zerunian | D. De Santis | M. Ciolina | M. H. Soomro | Marta Zerunian | Domenico de Santis | Mumtaz H Soomro | Marta Zerunian
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