Texture analysis on MR images helps predicting non-response to NAC in breast cancer
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N. Michoux | M. Berlière | C. Galant | S. Van den Broeck | L. Lacoste | L. Fellah | I. Leconte | C. Galant | N. Michoux | S. Van den Broeck | L. Lacoste | L. Fellah | M. Berlière | I. Leconte | S. B. Van den Broeck
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