JRadiEvo: A Japanese Radiology Report Generation Model Enhanced by Evolutionary Optimization of Model Merging
Kaito Baba, Ryota Yagi, Junichiro Takahashi, Risa Kishikawa, Satoshi, Kodera

TL;DR
JRadiEvo is a novel Japanese radiology report generation model that uses evolutionary optimization to effectively merge models, enabling accurate report generation from X-ray images with limited data and small model size.
Contribution
First to adapt a non-medical vision-language foundation model to medical report generation in Japanese via evolutionary model merging optimization.
Findings
Outperforms larger models trained on more data.
Generates accurate Japanese radiology reports from limited samples.
Compact model (8B parameters) suitable for local deployment.
Abstract
With the rapid advancement of large language models (LLMs), foundational models (FMs) have seen significant advancements. Healthcare is one of the most crucial application areas for these FMs, given the significant time and effort required for physicians to analyze large volumes of patient data. Recent efforts have focused on adapting multimodal FMs to the medical domain through techniques like instruction-tuning, leading to the development of medical foundation models (MFMs). However, these approaches typically require large amounts of training data to effectively adapt models to the medical field. Moreover, most existing models are trained on English datasets, limiting their practicality in non-English-speaking regions where healthcare professionals and patients are not always fluent in English. The need for translation introduces additional costs and inefficiencies. To address these…
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Taxonomy
TopicsTopic Modeling · Biomedical Text Mining and Ontologies · Radiomics and Machine Learning in Medical Imaging
