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Multi-modal Pre-training for Medical Vision-language Understanding and Generation: An Empirical Study with A New Benchmark (2306.06494v2)

Published 10 Jun 2023 in cs.CV and cs.AI

Abstract: With the availability of large-scale, comprehensive, and general-purpose vision-language (VL) datasets such as MSCOCO, vision-language pre-training (VLP) has become an active area of research and proven to be effective for various VL tasks such as visual-question answering. However, studies on VLP in the medical domain have so far been scanty. To provide a comprehensive perspective on VLP for medical VL tasks, we conduct a thorough experimental analysis to study key factors that may affect the performance of VLP with a unified vision-language Transformer. To allow making sound and quick pre-training decisions, we propose RadioGraphy Captions (RGC), a high-quality, multi-modality radiographic dataset containing 18,434 image-caption pairs collected from an open-access online database MedPix. RGC can be used as a pre-training dataset or a new benchmark for medical report generation and medical image-text retrieval. By utilizing RGC and other available datasets for pre-training, we develop several key insights that can guide future medical VLP research and new strong baselines for various medical VL tasks.

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Authors (5)
  1. Li Xu (110 papers)
  2. Bo Liu (484 papers)
  3. Ameer Hamza Khan (1 paper)
  4. Lu Fan (21 papers)
  5. Xiao-Ming Wu (91 papers)
Citations (8)