Applicability of a prognostic CT-based radiomic signature model trained on stage I-III non-small cell lung cancer in stage IV non-small cell lung cancer.
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Esther G.C. Troost | Philippe Lambin | Wouter van Elmpt | Arthur Jochems | Ralph T.H. Leijenaar | Anne-Marie C. Dingemans | Stefania Rizzo | Bart Reymen | Lizza E.L. Hendriks | P. Lambin | R. Leijenaar | A. Jochems | W. V. van Elmpt | E. D. de Jong | S. Rizzo | A. Dingemans | E. Troost | B. Reymen | L. Hendriks | Gianluca Spitaleri | Anna Colarieti | Evelyn E.C. de Jong | G. Spitaleri | A. Colarieti | W. van Elmpt
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