Ultrasound Report Generation with Multimodal Large Language Models for Standardized Texts
By: Peixuan Ge , Tongkun Su , Faqin Lv and more
Potential Business Impact:
Writes doctor reports for ultrasound pictures.
Ultrasound (US) report generation is a challenging task due to the variability of US images, operator dependence, and the need for standardized text. Unlike X-ray and CT, US imaging lacks consistent datasets, making automation difficult. In this study, we propose a unified framework for multi-organ and multilingual US report generation, integrating fragment-based multilingual training and leveraging the standardized nature of US reports. By aligning modular text fragments with diverse imaging data and curating a bilingual English-Chinese dataset, the method achieves consistent and clinically accurate text generation across organ sites and languages. Fine-tuning with selective unfreezing of the vision transformer (ViT) further improves text-image alignment. Compared to the previous state-of-the-art KMVE method, our approach achieves relative gains of about 2\% in BLEU scores, approximately 3\% in ROUGE-L, and about 15\% in CIDEr, while significantly reducing errors such as missing or incorrect content. By unifying multi-organ and multi-language report generation into a single, scalable framework, this work demonstrates strong potential for real-world clinical workflows.
Similar Papers
Any-to-Any Vision-Language Model for Multimodal X-ray Imaging and Radiological Report Generation
CV and Pattern Recognition
Creates fake X-rays and reports for doctors.
Adapting Vision-Language Foundation Model for Next Generation Medical Ultrasound Image Analysis
CV and Pattern Recognition
Helps doctors see inside bodies better with AI.
Evaluating Vision Language Model Adaptations for Radiology Report Generation in Low-Resource Languages
CV and Pattern Recognition
Helps doctors write patient reports in other languages.