TriAug: Out-of-Distribution Detection for Robust Classification of Imbalanced Breast Lesion in Ultrasound

Ye, Yinyu, Chen, Shijing, Ni, Dong, Huang, Ruobing

arXiv.org Artificial Intelligence 

Different diseases, such as histological subtypes of breast lesions, have severely varying incidence rates. Even trained with substantial amount of in-distribution (ID) data, models often encounter out-of-distribution (OOD) samples belonging to unseen classes in clinical reality. To address this, we propose a novel framework built upon a long-tailed OOD detection task for breast ultrasound images. It is equipped with a triplet state augmentation (TriAug) which improves ID classification accuracy while maintaining a promising OOD detection performance. Meanwhile, we designed a balanced sphere loss to handle the class imbalanced problem.