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arxiv:2509.13696

Integrating Text and Time-Series into (Large) Language Models to Predict Medical Outcomes

Published on Sep 17
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Abstract

Instruction-tuned LLMs with DSPy-based prompt optimization achieve comparable performance to specialized multimodal systems for clinical classification tasks, with reduced complexity and increased adaptability.

AI-generated summary

Large language models (LLMs) excel at text generation, but their ability to handle clinical classification tasks involving structured data, such as time series, remains underexplored. In this work, we adapt instruction-tuned LLMs using DSPy-based prompt optimization to process clinical notes and structured EHR inputs jointly. Our results show that this approach achieves performance on par with specialized multimodal systems while requiring less complexity and offering greater adaptability across tasks.

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