Cross- and Intra-Image Prototypical Learning for Multi-Label Disease Diagnosis and Interpretation.

Journal: IEEE transactions on medical imaging
Published Date:

Abstract

Recent advances in prototypical learning have shown remarkable potential to provide useful decision interpretations associating activation maps and predictions with class-specific training prototypes. Such prototypical learning has been well-studied for various single-label diseases, but for quite relevant and more challenging multi-label diagnosis, where multiple diseases are often concurrent within an image, existing prototypical learning models struggle to obtain meaningful activation maps and effective class prototypes due to the entanglement of the multiple diseases. In this paper, we present a novel Cross- and Intra-image Prototypical Learning (CIPL) framework, for accurate multi-label disease diagnosis and interpretation from medical images. CIPL takes advantage of common cross-image semantics to disentangle the multiple diseases when learning the prototypes, allowing a comprehensive understanding of complicated pathological lesions. Furthermore, we propose a new two-level alignment-based regularisation strategy that effectively leverages consistent intra-image information to enhance interpretation robustness and predictive performance. Extensive experiments show that our CIPL attains the state-of-the-art (SOTA) classification accuracy in two public multi-label benchmarks of disease diagnosis: thoracic radiography and fundus images. Quantitative interpretability results show that CIPL also has superiority in weakly-supervised thoracic disease localisation over other leading saliency- and prototype-based explanation methods.

Authors

  • Chong Wang
    Shandong Xinhua Pharmaceutical Co., Ltd., No. 1, Lu Tai Road, High Tech Zone, Zibo 255199, China.
  • Fengbei Liu
  • Yuanhong Chen
  • Helen Frazer
    Screening and Assessment Service, St Vincent's BreastScreen, 1st Floor Healy Wing, 41 Victoria Parade, Fitzroy, Victoria, 3065, Australia. Electronic address: Helen.Frazer@svha.org.au.
  • Gustavo Carneiro
    Australian Centre for Visual Technologies, The University of Adelaide, Australia. Electronic address: gustavo.carneiro@adelaide.edu.au.