Semi-supervised learning for medical image classification using imbalanced training data.

Journal: Computer methods and programs in biomedicine
Published Date:

Abstract

BACKGROUND AND OBJECTIVE: Medical image classification is often challenging for two reasons: a lack of labelled examples due to expensive and time-consuming annotation protocols, and imbalanced class labels due to the relative scarcity of disease-positive individuals in the wider population. Semi-supervised learning methods exist for dealing with a lack of labels, but they generally do not address the problem of class imbalance. Hence, the purpose of this study is to explore a new approach to perturbation-based semi-supervised learning which tackles the problem of applying semi-supervised learning to medical image classification with imbalanced training data.

Authors

  • Tri Huynh
    Department of Computer Science and Information Technology, La Trobe University, Melbourne, Australia. Electronic address: t.huynh@latrobe.edu.au.
  • Aiden Nibali
    Department of Computer Science and Computer Engineering, La Trobe University, Melbourne, Australia. anibali@students.latrobe.edu.au.
  • Zhen He