R2GenCSR: Mining Contextual and Residual Information for LLMs-based Radiology Report Generation
This paper proposes R2GenCSR, a novel radiology report generation framework that leverages the linear-complexity Mamba architecture for efficient visual feature extraction and enhances LLM performance by mining both contextual and residual information from training samples to generate high-quality medical reports.