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Prompt Engineering for Eastern Cooperative Oncology Group Status Extraction: Comparing Large Language Model

Meenakshi Dubey1, Kok Joon Chong1, Yuba Raj Pun1

  • 1Saw Swee Hock School of Public Health, National University of Singapore, Singapore City, Singapore.

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Summary
This summary is machine-generated.

Advanced large language model (LLM) prompting significantly improves the extraction of Eastern Cooperative Oncology Group (ECOG) performance status from clinical notes. Techniques like Double Filtering and Chain-of-Thought offer superior accuracy and reliability for cancer patient data management.

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Area of Science:

  • Natural Language Processing (NLP) in Oncology
  • Clinical Data Extraction
  • Artificial Intelligence in Healthcare

Background:

  • Eastern Cooperative Oncology Group (ECOG) performance status is vital for cancer patient management.
  • ECOG status is frequently documented in unstructured clinical notes, posing extraction challenges.
  • Current methods for extracting ECOG status from clinical text are often limited.

Purpose of the Study:

  • To compare various approaches for extracting ECOG performance status from unstructured oncology clinical notes.
  • To evaluate the effectiveness of advanced prompting techniques for large language models (LLMs) in this task.
  • To assess the generalizability of these methods across different cancer types.

Main Methods:

  • Evaluated four ECOG extraction methods: rule-based NLP, simple LLM prompting, Chain-of-Thought (CoT), and Double Filtering (DFT).
  • Utilized unstructured clinical notes from non-small cell lung cancer, multiple myeloma, and ovarian cancer patients (2017-2021).
  • Assessed performance using binary and three-class outcomes, and the QUEST questionnaire for human evaluation.

Main Results:

  • Both CoT and DFT achieved 94% accuracy, surpassing rule-based (91%) and simple prompting (86%).
  • DFT demonstrated the highest specificity (0.91) and PPV (0.93); CoT achieved the highest sensitivity (0.98).
  • DFT and CoT showed superior output quality, reasoning, bias reduction, and user satisfaction, with DFT receiving the highest rating.

Conclusions:

  • Advanced LLM prompting techniques (DFT, CoT) significantly enhance ECOG status extraction accuracy and reliability.
  • These methods can standardize ECOG documentation, facilitate patient cohort identification, and support personalized treatment planning.
  • Implementation requires consideration of computational costs and the necessity of human oversight.