Assessing Axillary Lymph Node Burden and Prognosis in cT1‐T2 Stage Breast Cancer Using Machine Learning Methods: A Retrospective Dual‐Institutional MRI Study
Jiayi Liao,
Zeyan Xu,
Yu Xie
et al.
Abstract:BackgroundPathological axillary lymph node (pALN) burden is an important factor for treatment decision‐making in clinical T1‐T2 (cT1‐T2) stage breast cancer. Preoperative assessment of the pALN burden and prognosis aids in the individualized selection of therapeutic approaches.PurposeTo develop and validate a machine learning (ML) model based on clinicopathological and MRI characteristics for assessing pALN burden and survival in patients with cT1‐T2 stage breast cancer.Study TypeRetrospective.PopulationA tota… Show more
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