4.7 Article

Machine learning on MRI radiomic features: identification of molecular subtype alteration in breast cancer after neoadjuvant therapy

Journal

EUROPEAN RADIOLOGY
Volume 33, Issue 4, Pages 2965-2974

Publisher

SPRINGER
DOI: 10.1007/s00330-022-09264-7

Keywords

Machine learning; Breast neoplasms; Neoadjuvant therapy; Radiology; Magnetic resonance imaging

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This study developed a machine learning model based on MRI to predict molecular subtype alterations in breast cancer after neoadjuvant therapy. The model showed favorable predictive efficacy in identifying molecular subtype alteration and could be a useful tool in clinical practice.
Objectives Recent studies have revealed the change of molecular subtypes in breast cancer (BC) after neoadjuvant therapy (NAT). This study aims to construct a non-invasive model for predicting molecular subtype alteration in breast cancer after NAT. Methods Eighty-two estrogen receptor (ER)-negative/ human epidermal growth factor receptor 2 (HER2)-negative or ER-low-positive/HER2-negative breast cancer patients who underwent NAT and completed baseline MRI were retrospectively recruited between July 2010 and November 2020. Subtype alteration was observed in 21 cases after NAT. A 2D-DenseUNet machine-learning model was built to perform automatic segmentation of breast cancer. 851 radiomic features were extracted from each MRI sequence (T2-weighted imaging, ADC, DCE, and contrast-enhanced T1-weighted imaging), both in the manual and auto-segmentation masks. All samples were divided into a training set (n = 66) and a test set (n = 16). XGBoost model with 5-fold cross-validation was performed to predict molecular subtype alterations in breast cancer patients after NAT. The predictive ability of these models was subsequently evaluated by the AUC of the ROC curve, sensitivity, and specificity. Results A model consisting of three radiomics features from the manual segmentation of multi-sequence MRI achieved favorable predictive efficacy in identifying molecular subtype alteration in BC after NAT (cross-validation set: AUC = 0.908, independent test set: AUC = 0.864); whereas an automatic segmentation approach of BC lesions on the DCE sequence produced good segmentation results (Dice similarity coefficient = 0.720). Conclusions A machine learning model based on baseline MRI is proven useful for predicting molecular subtype alterations in breast cancer after NAT.

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