openlifescience-ai/Awesome-AI-LLMs-in-Radiology
A curated list of awesome resources, papers, datasets, and tools related to AI in radiology. This repository aims to provide a comprehensive collection of materials to facilitate research, learning, and development in the field of AI-powered radiology.
This is a curated collection of resources for anyone interested in using AI and Large Language Models (LLMs) in radiology. It brings together papers, datasets, and tools to help researchers, medical professionals, and innovators understand and apply these advanced technologies. If you're looking to explore or develop AI solutions for tasks like radiology report generation, image analysis, or AI-assisted diagnosis, this repository provides a foundational starting point. It's designed for radiologists, medical researchers, and data scientists working in the medical imaging field.
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Use this if you are a radiologist, medical researcher, or data scientist seeking to understand or implement AI and LLMs for medical imaging tasks, such as generating reports or aiding diagnosis.
Not ideal if you are looking for ready-to-use software applications for clinical practice without any technical background or interest in the underlying research and development.
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