Aditya Malik, Nalini Ratha, et al.
CAI 2024
Automated radiology report generators are being increasingly explored in clinical workflow pilots, particularly for chest X-ray imaging. However, retaining factual correctness with minimal hallucinations with respect to the description of the findings has often been lacking, making their adoption slow and requiring detailed verification by clinical experts. In this paper, we propose an automatic report correction method that uses both image and textual information in automated radiology reports to spot identity and location errors in findings through fact-checking models. Based on these errors, prompts are generated for selectively modifying the report sentences by a pre-trained LLMs. We show that this method of report correction, on the average, improves the report quality between 17-30% across various SOTA report generators over multi-institutional chest X-ray datasets.
Aditya Malik, Nalini Ratha, et al.
CAI 2024
Leonid Karlinsky, Joseph Shtok, et al.
CVPR 2019
Jie Ren, Zhenwei Dai, et al.
NeurIPS 2025
Rares Christian, Pavithra Harsha, et al.
NeurIPS 2025