Scaling Large Vision-Language Models for Enhanced Multimodal Comprehension In Biomedical Image Analysis
Robinson Umeike, Neil Getty, Fangfang Xia, and Rick Stevens

TL;DR
This paper presents a large-scale vision-language model fine-tuned for biomedical image analysis, significantly improving multimodal understanding and reducing hallucinations in domain-specific tasks like radiation therapy.
Contribution
We developed and fine-tuned LLaVA-based assistants on extensive biomedical data, enhancing multimodal comprehension and domain-specific reasoning in medical imaging.
Findings
Superior performance in visual question answering tasks
Reduced hallucination in model outputs
Enhanced understanding of biomedical images
Abstract
Large language models (LLMs) have demonstrated immense capabilities in understanding textual data and are increasingly being adopted to help researchers accelerate scientific discovery through knowledge extraction (information retrieval), knowledge distillation (summarizing key findings and methodologies into concise forms), and knowledge synthesis (aggregating information from multiple scientific sources to address complex queries, generate hypothesis and formulate experimental plans). However, scientific data often exists in both visual and textual modalities. Vision language models (VLMs) address this by incorporating a pretrained vision backbone for processing images and a cross-modal projector that adapts image tokens into the LLM dimensional space, thereby providing richer multimodal comprehension. Nevertheless, off-the-shelf VLMs show limited capabilities in handling…
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Taxonomy
TopicsAI in cancer detection
MethodsBalanced Selection · Knowledge Distillation
