

Chexagent
Overview :
CheXagent is a chest X-ray interpretation tool based on visual language foundation models. It leverages clinical large language models to parse radiology reports, visual encoders to represent X-ray images, and designs a network to bridge the visual and language modalities. Additionally, CheXagent introduces CheXbench, a new benchmark designed to systematically evaluate the performance of visual language foundation models on eight clinically relevant chest X-ray interpretation tasks. Through extensive quantitative evaluation and qualitative review by five expert radiologists, CheXagent outperforms previously developed general-purpose and medical domain foundation models on CheXbench tasks.
Target Users :
CheXagent can be used to automate chest X-ray interpretation, assisting doctors in clinical decision-making and improving patient outcomes.
Use Cases
Hospitals use CheXagent to assist in chest X-ray interpretation in the radiology department.
Medical research institutions utilize CheXagent for clinical-relevant chest X-ray interpretation tasks.
Medical imaging companies integrate CheXagent into their medical imaging solutions.
Features
Parse radiology reports
Represent X-ray images
Bridge visual and language modalities
Systematically evaluate performance
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