Publication:
Scaling Clinical Trial Matching Using Large Language Models: A Case Study in Oncology
Cliff Wong, Sheng Zhang, Yu Gu, C. Moung, Jacob Abel, Naoto Usuyama, R. Weerasinghe, B. Piening, Tristan Naumann, C. Bifulco, Hoifung Poon • @arXiv • 04 August 2023
TLDR: A systematic study on scaling clinical trial matching using large language models (LLMs), with oncology as the focus area, which reveals a few significant growth areas for applying LLMs to end-to-endclinical trial matching, such as context limitation and accuracy.
Citations: 11
Abstract: Clinical trial matching is a key process in health delivery and discovery. In practice, it is plagued by overwhelming unstructured data and unscalable manual processing. In this paper, we conduct a systematic study on scaling clinical trial matching using large language models (LLMs), with oncology as the focus area. Our study is grounded in a clinical trial matching system currently in test deployment at a large U.S. health network. Initial findings are promising: out of box, cutting-edge LLMs, such as GPT-4, can already structure elaborate eligibility criteria of clinical trials and extract complex matching logic (e.g., nested AND/OR/NOT). While still far from perfect, LLMs substantially outperform prior strong baselines and may serve as a preliminary solution to help triage patient-trial candidates with humans in the loop. Our study also reveals a few significant growth areas for applying LLMs to end-to-end clinical trial matching, such as context limitation and accuracy, especially in structuring patient information from longitudinal medical records.
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