Class-Specific Distribution Alignment for semi-supervised medical image classification

Comput Biol Med. 2023 Sep:164:107280. doi: 10.1016/j.compbiomed.2023.107280. Epub 2023 Jul 22.

Abstract

Despite the success of deep neural networks in medical image classification, the problem remains challenging as data annotation is time-consuming, and the class distribution is imbalanced due to the relative scarcity of diseases. To address this problem, we propose Class-Specific Distribution Alignment (CSDA), a semi-supervised learning framework based on self-training that is suitable to learn from highly imbalanced datasets. Specifically, we first provide a new perspective to distribution alignment by considering the process as a change of basis in the vector space spanned by marginal predictions, and then derive CSDA to capture class-dependent marginal predictions on both labeled and unlabeled data, in order to avoid the bias towards majority classes. Furthermore, we propose a Variable Condition Queue (VCQ) module to maintain a proportionately balanced number of unlabeled samples for each class. Experiments on three public datasets HAM10000, CheXpert and Kvasir show that our method provides competitive performance on semi-supervised skin disease, thoracic disease, and endoscopic image classification tasks.

Keywords: Distribution alignment; Medical image classification; Self-training; Semi-supervised learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Neural Networks, Computer*
  • Supervised Machine Learning*