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Differentiating Axillary Lymph Node Metastasis In Invasive Breast Cancer Patients: A Comparison Of Radiomic Signatures From Multiparametric Breast MR Sequences

Ruimei Chai, He Ma, Mingjie Xu, D. Arefan, Xiaoyu Cui, Y. Liu, L. Zhang, S. Wu, K. Xu
Published 2019 · Medicine

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The axillary lymph node status is critical for breast cancer staging and individualized treatment planning.
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