PET textural features stability and pattern discrimination power for radiomics analysis: An "ad-hoc" phantoms study.
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E De Bernardi | V Bettinardi | C Fiorino | L Presotto | M. L. Belli | V. Bettinardi | L. Presotto | C. Fiorino | G. Cattaneo | E. De Bernardi | S. Broggi | G M Cattaneo | S Broggi | M L Belli
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