Med CXRGen I
M
Med CXRGen I
Developed by X-iZhang
Med-CXRGen-I is a multimodal large language model fine-tuned based on LLaVA-v1.5-7B, specializing in the task of generating radiology reports from chest X-ray images, particularly the impression section.
Downloads 86
Release Time : 12/31/2024
Model Overview
This model is specifically designed to generate the impression section of radiology reports from chest X-ray images, as part of the RRG shared task. It combines visual and textual processing capabilities to provide auxiliary support for medical image analysis.
Model Features
Multimodal Understanding
Capable of processing both image and text information to understand the visual features of chest X-ray images.
Medical Specialization
Optimized specifically for the task of radiology report generation, particularly the impression section.
Instruction Tuning
Utilizes visual instruction tuning methods to enhance the model's understanding of medical images and report generation capabilities.
Model Capabilities
Medical Image Analysis
Radiology Report Generation
Multimodal Understanding
Medical Text Generation
Use Cases
Medical Diagnosis Assistance
Automatic Chest X-ray Report Generation
Automatically generates the impression section of radiology reports based on input chest X-ray images.
Effectiveness validated in the RRG24 shared task.
Medical Education
Radiology Teaching Aid
Serves as a teaching tool to help medical students understand how to generate professional reports from X-ray images.
Featured Recommended AI Models