Knowledge Distillation to Ensemble Global and Interpretable Prototype-Based Mammogram Classification Models
Chong Wang, Yuanhong Chen, Yuyuan Liu, Yu Tian, Fengbei Liu, Davis J., McCarthy, Michael Elliott, Helen Frazer, Gustavo Carneiro

TL;DR
This paper introduces BRAIxProtoPNet++, a novel ensemble model combining global and prototype-based approaches for mammogram classification, enhancing accuracy, interpretability, and prototype diversity over existing methods.
Contribution
It proposes a new ensemble framework that distills global model knowledge into a prototype-based model and enforces prototype diversity, improving accuracy and interpretability.
Findings
Higher classification accuracy than SOTA models
More effective lesion localization for interpretability
Superior prototype diversity compared to existing approaches
Abstract
State-of-the-art (SOTA) deep learning mammogram classifiers, trained with weakly-labelled images, often rely on global models that produce predictions with limited interpretability, which is a key barrier to their successful translation into clinical practice. On the other hand, prototype-based models improve interpretability by associating predictions with training image prototypes, but they are less accurate than global models and their prototypes tend to have poor diversity. We address these two issues with the proposal of BRAIxProtoPNet++, which adds interpretability to a global model by ensembling it with a prototype-based model. BRAIxProtoPNet++ distills the knowledge of the global model when training the prototype-based model with the goal of increasing the classification accuracy of the ensemble. Moreover, we propose an approach to increase prototype diversity by guaranteeing…
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