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This study introduces ClinGen, a novel method for generating synthetic clinical text using large language models (LLMs). ClinGen enhances clinical natural language processing (NLP) performance by overcoming privacy and resource constraints.

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Area of Science:

  • Medical Informatics
  • Natural Language Processing
  • Artificial Intelligence

Background:

  • Clinical natural language processing (NLP) is hindered by complex medical terminology and context.
  • Large language models (LLMs) show potential but face privacy and resource limitations for direct clinical application.

Purpose of the Study:

  • To develop a resource-efficient method for generating synthetic clinical text using LLMs for clinical NLP tasks.
  • To address privacy concerns and resource constraints associated with direct LLM deployment in healthcare.

Main Methods:

  • Proposed ClinGen, an innovative approach integrating clinical knowledge extraction and context-informed LLM prompting.
  • Utilized domain-specific knowledge graphs and LLMs to guide the generation of clinical topics and writing styles.
  • Employed a resource-efficient strategy for synthetic data generation.

Main Results:

  • ClinGen demonstrated consistent performance enhancements across 8 clinical NLP tasks and 18 datasets, averaging 7.7%-8.7%.
  • The generated synthetic data effectively aligned with the distribution of real clinical datasets.
  • ClinGen enriched the diversity of training instances, improving model generalization.

Conclusions:

  • ClinGen offers an effective and efficient solution for synthetic clinical text generation.
  • The approach successfully mitigates privacy and resource challenges in clinical NLP.
  • ClinGen significantly improves performance and data diversity for various clinical NLP applications.