Deep AUC Maximization for Medical Image Classification: Challenges and Opportunities

11/01/2021
by   Tianbao Yang, et al.
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In this extended abstract, we will present and discuss opportunities and challenges brought about by a new deep learning method by AUC maximization (aka Deep AUC Maximization or DAM) for medical image classification. Since AUC (aka area under ROC curve) is a standard performance measure for medical image classification, hence directly optimizing AUC could achieve a better performance for learning a deep neural network than minimizing a traditional loss function (e.g., cross-entropy loss). Recently, there emerges a trend of using deep AUC maximization for large-scale medical image classification. In this paper, we will discuss these recent results by highlighting (i) the advancements brought by stochastic non-convex optimization algorithms for DAM; (ii) the promising results on various medical image classification problems. Then, we will discuss challenges and opportunities of DAM for medical image classification from three perspectives, feature learning, large-scale optimization, and learning trustworthy AI models.

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