Two datasets were used, 107 cases for training and 94 cases for testing. Patients were classified into three subtypes: TN, HER2+, and (HR+/HER2-). Three heuristic DCE parametric maps were generated from DCE-MRI. PyRadiomics was applied to extract features. Five machine learning algorithms were implemented to build models. The classification accuracy in training dataset was 84.3%, 77.2%, 75.5%, 74.3%, 69.1% for SVM, Decision tree, LDA, KNN, Naïve Bayes, respectively. In binary classification for TN vs. Non-TN, accuracy was 91.0% in training and 88.2% in testing datasets. For HER2+ vs. HER2-, accuracy was 90.4% in training and 86.2% in testing datasets.
This abstract and the presentation materials are available to members only; a login is required.