3T MRI-Radiomic Approach to Predict for Lymph Node Status in Breast Cancer Patients

3T MRI-放射组学方法预测乳腺癌患者淋巴结状态

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作者:Domiziana Santucci, Eliodoro Faiella, Ermanno Cordelli, Rosa Sicilia, Carlo de Felice, Bruno Beomonte Zobel, Giulio Iannello, Paolo Soda

Background

axillary lymph node (LN) status is one of the main breast cancer prognostic factors and it is currently defined by invasive procedures. The

Conclusions

the combination of patient clinical, histological and radiomics features of primary breast cancer can accurately predict LN status in a non-invasive way.

Methods

99 lesions on pre-treatment contrasted 3T-MRI (DCE). All patients had a histologically proven invasive breast cancer and defined LN status. Patients' clinical data and tumor histological analysis were previously collected. For each tumor lesion, a semi-automatic segmentation was performed, using the second phase of DCE-MRI. Each segmentation was optimized using a convex-hull algorithm. In addition to the 14 semantics features and a feature ROI volume/convex-hull volume, 242 other quantitative features were extracted. A wrapper selection method selected the 15 most prognostic features (14 quantitative, 1 semantic), used to train the final learning model. The classifier used was the Random Forest.

Results

the AUC-classifier was 0.856 (label = positive or negative). The contribution of each feature group was lower performance than the full signature. Conclusions: the combination of patient clinical, histological and radiomics features of primary breast cancer can accurately predict LN status in a non-invasive way.

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