IMITATE: Clinical Prior Guided Hierarchical Vision-Language Pre-Training.

Journal: IEEE transactions on medical imaging
Published Date:

Abstract

In medical Vision-Language Pre-training (VLP), significant work focuses on extracting text and image features from clinical reports and medical images. Yet, existing methods may overlooked the potential of the natural hierarchical structure in clinical reports, typically divided into 'findings' for description and 'impressions' for conclusions. Current VLP approaches tend to oversimplify these reports into a single entity or fragmented tokens, ignoring this structured format. In this work, we propose a novel clinical prior guided VLP framework named IMITATE to learn the structure information from medical reports with hierarchical vision-language alignment. The framework derives multi-level visual features from the chest X-ray (CXR) images and separately aligns these features with the descriptive and the conclusive text encoded in the hierarchical medical report. Furthermore, a new clinical-informed contrastive loss is introduced for cross-modal learning, which accounts for clinical prior knowledge in formulating sample correlations in contrastive learning. The proposed model, IMITATE, outperforms baseline VLP methods across six different datasets, spanning five medical imaging downstream tasks. Experimental results show benefits of using hierarchical structures in medical reports for VLP. Code: https://github.com/cheliu-computation/IMITATE-TMI2024.

Authors

  • Che Liu
  • Sibo Cheng
    Data Science Institute, Department of Computing, Imperial College London, UK. sibo.cheng@imperial.ac.uk.
  • Miaojing Shi
    College of Electronic and Information Engineering, Tongji University, Shanghai, China.
  • Anand Shah
    National Heart and Lung Institute, Imperial College London, London, UK a.shah2@rbht.nhs.uk.
  • Wenjia Bai
    Department of Computing Imperial College London London UK.
  • Rossella Arcucci
    Data Science Institute, Department of Computing, Imperial College London, UK. sibo.cheng@imperial.ac.uk.