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Most Influential EMNLP 2022 Paper · 2026-03 edition

Large Language Models Are Few-shot Clinical Information Extractors

Monica Agrawal; Stefan Hegselmann; Hunter Lang; Yoon Kim; David Sontag

Venue
Conference on Empirical Methods in Natural Language Processing (EMNLP) 2022
Recognition
Most Influential EMNLP 2022 Paper (Rank No. 7)
Edition
2026-03
Impact factor
6
Certificate ID
f4c702c61fdbc99a

Abstract

A long-running goal of the clinical NLP community is the extraction of important variables trapped in clinical notes. However, roadblocks have included dataset shift from the general domain and a lack of public clinical corpora and annotations. In this work, we show that large language models, such as InstructGPT (Ouyang et al. , 2022), perform well at zero- and few-shot information extraction from clinical text despite not being trained specifically for the clinical domain. Whereas text classification and generation performance have already been studied extensively in such models, here we additionally demonstrate how to leverage them to tackle a diverse set of NLP tasks which require more structured outputs, including span identification, token-level sequence classification, and relation extraction. Further, due to the dearth of available data to evaluate these systems, we introduce new datasets for benchmarking few-shot clinical information extraction based on a manual re-annotation of the CASI dataset (Moon et al. , 2014) for new tasks. On the clinical extraction tasks we studied, the GPT-3 systems significantly outperform existing zero- and few-shot baselines.

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