ChestGPT: Integrating Large Language Models and Vision Transformers for Disease Detection and Localization in Chest X-Rays
Journal:
arXiv
Published Date:
Jul 4, 2025
Abstract
The global demand for radiologists is increasing rapidly due to a growing
reliance on medical imaging services, while the supply of radiologists is not
keeping pace. Advances in computer vision and image processing technologies
present significant potential to address this gap by enhancing radiologists'
capabilities and improving diagnostic accuracy. Large language models (LLMs),
particularly generative pre-trained transformers (GPTs), have become the
primary approach for understanding and generating textual data. In parallel,
vision transformers (ViTs) have proven effective at converting visual data into
a format that LLMs can process efficiently. In this paper, we present ChestGPT,
a deep-learning framework that integrates the EVA ViT with the Llama 2 LLM to
classify diseases and localize regions of interest in chest X-ray images. The
ViT converts X-ray images into tokens, which are then fed, together with
engineered prompts, into the LLM, enabling joint classification and
localization of diseases. This approach incorporates transfer learning
techniques to enhance both explainability and performance. The proposed method
achieved strong global disease classification performance on the VinDr-CXR
dataset, with an F1 score of 0.76, and successfully localized pathologies by
generating bounding boxes around the regions of interest. We also outline
several task-specific prompts, in addition to general-purpose prompts, for
scenarios radiologists might encounter. Overall, this framework offers an
assistive tool that can lighten radiologists' workload by providing preliminary
findings and regions of interest to facilitate their diagnostic process.