Prediction of molecular subtypes of breast cancer using BI-RADS features based on a “white box” machine learning approach in a multi-modal imaging setting
European Journal of Radiology Apr 25, 2019
Wu M, et al. - Researchers developed and validated an interpretable and repeatable machine learning model approach to predict molecular subtypes of breast cancer from clinical metainformation along with mammography and MRI images through retrospectively evaluating 363 breast cancer cases. For this analysis, 82 features defined in the BI-RADS lexicon have been visually described. Based on the BI-RADS feature description in a multimodal setting, investigators used a complete "white box" machine learning method to predict the molecular subtype of breast cancer. The prediction accuracy is boosted and robust by combining BI-RADS features in both mammography and MRI. Due to the applicability and acceptance of the BI-RADS, the proposed method could be easily applied widely regardless of variability of imaging vendors and settings.
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