Radiology Report Generation
Radiology report generation aims to automate the creation of radiology reports from medical images, reducing radiologist workload and improving efficiency. Current research heavily utilizes large language models (LLMs) and vision-language models (VLMs), often incorporating techniques like contrastive learning, knowledge graphs, and fine-grained image-text alignment to enhance report accuracy and clinical relevance. A key focus is on improving the evaluation of generated reports, moving beyond simple lexical similarity metrics towards more clinically meaningful assessments that capture factual accuracy and semantic coherence. This field holds significant potential for improving healthcare delivery by streamlining diagnostic workflows and potentially reducing diagnostic errors.
Papers
RaDialog: A Large Vision-Language Model for Radiology Report Generation and Conversational Assistance
Chantal Pellegrini, Ege Özsoy, Benjamin Busam, Nassir Navab, Matthias Keicher
Consensus, dissensus and synergy between clinicians and specialist foundation models in radiology report generation
Ryutaro Tanno, David G. T. Barrett, Andrew Sellergren, Sumedh Ghaisas, Sumanth Dathathri, Abigail See, Johannes Welbl, Karan Singhal, Shekoofeh Azizi, Tao Tu, Mike Schaekermann, Rhys May, Roy Lee, SiWai Man, Zahra Ahmed, Sara Mahdavi, Yossi Matias, Joelle Barral, Ali Eslami, Danielle Belgrave, Vivek Natarajan, Shravya Shetty, Pushmeet Kohli, Po-Sen Huang, Alan Karthikesalingam, Ira Ktena
MAIRA-1: A specialised large multimodal model for radiology report generation
Stephanie L. Hyland, Shruthi Bannur, Kenza Bouzid, Daniel C. Castro, Mercy Ranjit, Anton Schwaighofer, Fernando Pérez-García, Valentina Salvatelli, Shaury Srivastav, Anja Thieme, Noel Codella, Matthew P. Lungren, Maria Teodora Wetscherek, Ozan Oktay, Javier Alvarez-Valle
Rethinking Radiology Report Generation via Causal Reasoning and Counterfactual Augmentation
Xiao Song, Jiafan Liu, Yun Li, Wenbin Lei, Ruxin Wang