Predicting the molecular subtype of breast cancer and identifying interpretable imaging features using machine learning algorithms.
Mengwei MaRenyi LiuChanjuan WenWeimin XuZeyuan XuSina WangJiefang WuDerun PanBowen ZhengGenggeng QinWeiguo ChenPublished in: European radiology (2021)
• Interpretable machine learning model (MLM) could help clinicians and radiologists differentiate between breast cancer molecular subtypes. • The Shapley additive explanations (SHAP) technique can select important features for predicting the molecular subtypes of breast cancer from a large number of imaging signs. • Machine learning model can assist radiologists to evaluate the molecular subtype of breast cancer to some extent.