
AI That Understands Patient Histories
Zero-shot LLMs for Clinical Text Summarization with Temporal Context
This research evaluates how effectively large language models can summarize complex clinical documents without specific training, focusing on their ability to understand time-based relationships in patient histories.
Key Findings:
- LLMs demonstrate promising capabilities in processing lengthy clinical narratives
- Temporal reasoning enables comprehensive capture of treatment trajectories
- Zero-shot approaches offer potential for immediate application in healthcare settings
- The research addresses a critical need for efficient processing of growing volumes of clinical documentation
Business Impact: This advancement could transform healthcare data processing, improve clinical decision-making, reduce physician documentation burden, and potentially lead to better patient outcomes through more comprehensive understanding of medical histories.
Zero-shot Large Language Models for Long Clinical Text Summarization with Temporal Reasoning