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Applications of Small Language Models in Medical Imaging Classification with a Focus on Prompt Strategies

18 August 2025
Yiting Wang
Ziwei Wang
Jiachen Zhong
Di Zhu
Weiyi Li
    LM&MA
ArXiv (abs)PDFHTML
Main:8 Pages
1 Figures
Bibliography:2 Pages
1 Tables
Abstract

Large language models (LLMs) have shown remarkable capabilities in natural language processing and multi-modal understanding. However, their high computational cost, limited accessibility, and data privacy concerns hinder their adoption in resource-constrained healthcare environments. This study investigates the performance of small language models (SLMs) in a medical imaging classification task, comparing different models and prompt designs to identify the optimal combination for accuracy and usability. Using the NIH Chest X-ray dataset, we evaluate multiple SLMs on the task of classifying chest X-ray positions (anteroposterior [AP] vs. posteroanterior [PA]) under three prompt strategies: baseline instruction, incremental summary prompts, and correction-based reflective prompts. Our results show that certain SLMs achieve competitive accuracy with well-crafted prompts, suggesting that prompt engineering can substantially enhance SLM performance in healthcare applications without requiring deep AI expertise from end users.

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