To investigate the predictive value of radiomics based on digital breast tomosynthesis (DBT) in molecular subtypes of breast cancer.
Methods:
The data of 380 patients with inva
sive breast cancer confirmed by pathology after DBT examination in the Fudan University Shanghai Cancer Center from January 2019 to August 2020 were retrospectively analyzed. The DBT images of each patient included craniocaudal (CC) position and mediolateral oblique (MLO) position. And 380 whole- tumor features of lesions based on DBT were extracted
after performing dimensionality reduction and screening
the final retained features were put into three different machine learning models
including logistic regression (LR)
support vector machine (SVM) and random forest (RF)
respectively. Receiver operating characteristic (ROC) curve was used to evaluate the predictive efficacy of three models based on DBT images for the four molecular classification of breast cancer.
Results:
Of the 380 lesions confirmed by pathology
72 were Luminal A type
175 were Luminal B type
54 were human epidermal growth factor receptor 2 (HER2) over- expression type
and 79 were triple-negative breast cancer (TNBC). The three models all can predict the molecular subtypes of breast cancer efficiently. Among the three different models
RF model had a better performance
and in the test set
AUC values predicted by dichotomy were 0.82
0.71
0.70
and 0.71 for Luminal A type
Luminal B type
HER2 over-expression type
and TNBC respectively. Among DBT radiomics features
the entropy and entropy-related features
as well as the morphological features are related to the molecular subtypes of breast cancer.
Conclusion:
The radiomics model based on DBT imaging can predict the molecular subtypes of breast cancer
and the radiomics features that represent the heterogeneity and morphology are helpful for the differentiation of breast cancer molecular subtypes.