Bioregulatory event extraction using large language models: a case study of rice literature.

Xinzhi Yao, Zhihan He, Jingbo Xia
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Abstract

The extraction of biological regulation events has been a key focus in the field of biomedical nature language processing (BioNLP). However, existing methods often encounter challenges such as cascading errors in text mining pipelines and limitations in topic coverage from the selected corpus. Fortunately, the emergence of large language models (LLMs) presents a potential solution due to their robust semantic understanding and extensive knowledge base. To explore this potential, our project at the Biomedical Linked Annotation Hackathon 8 (BLAH 8) investigates the feasibility of using LLMs to extract biological regulation events. Our findings, based on the analysis of rice literature, demonstrate the promising performance of LLMs in this task, while also highlighting several concerns that must be addressed in future LLM-based application in low-resource topic.

使用大型语言模型提取生物调控事件:水稻文献案例研究。
生物调控事件的提取一直是生物医学自然语言处理(BioNLP)领域的重点。然而,现有的方法经常会遇到一些挑战,如文本挖掘管道中的级联错误和所选语料库主题覆盖范围的局限性。幸运的是,大型语言模型(LLM)的出现提供了一个潜在的解决方案,因为它们具有强大的语义理解能力和广泛的知识库。为了探索这一潜力,我们在生物医学关联注释黑客马拉松 8(BLAH 8)上的项目研究了使用 LLMs 提取生物调控事件的可行性。我们的研究结果基于对水稻文献的分析,证明了 LLM 在这项任务中的良好表现,同时也强调了未来基于 LLM 的低资源主题应用中必须解决的几个问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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