LGAICVIVOCNov 1, 2021

Deep AUC Maximization for Medical Image Classification: Challenges and Opportunities

arXiv:2111.02400v16 citations
AI Analysis

It addresses performance improvement in medical image classification, but is incremental as it builds on existing AUC optimization trends.

The paper discusses deep AUC maximization (DAM) as a method for medical image classification, highlighting that directly optimizing AUC can lead to better performance than traditional loss functions like cross-entropy, with promising results on various problems.

In this extended abstract, we will present and discuss opportunities and challenges brought about by a new deep learning method by AUC maximization (aka \underline{\bf D}eep \underline{\bf A}UC \underline{\bf M}aximization or {\bf 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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes