Opportunities and Pitfalls with Large Language Models for Biomedical Annotation.

Q2 Computer Science
Cecilia Arighi, Jin-Dong Kim, Zhiyong Lu, Fabio Rinaldi
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引用次数: 0

Abstract

Large language models (LLMs) and biomedical annotations have a symbiotic relationship. LLMs rely on high-quality annotations for training and/or fine-tuning for specific biomedical tasks. These annotations are traditionally generated through expensive and time-consuming human curation. Meanwhile LLMs can also be used to accelerate the process of curation, thus simplifying the process, and potentially creating a virtuous feedback loop. However, their use also introduces new limitations and risks, which are as important to consider as the opportunities they offer. In this workshop, we will review the process that has led to the current rise of LLMs in several fields, and in particular in biomedicine, and discuss specifically the opportunities and pitfalls when they are applied to biomedical annotation and curation.

生物医学注释大型语言模型的机遇与陷阱。
大型语言模型(llm)和生物医学注释具有共生关系。llm依靠高质量的注释进行培训和/或微调特定的生物医学任务。传统上,这些注释是通过昂贵且耗时的人工管理生成的。同时,法学硕士也可以用来加速策展过程,从而简化流程,并有可能创造一个良性的反馈循环。然而,它们的使用也带来了新的限制和风险,这与它们提供的机会一样重要。在本次研讨会中,我们将回顾导致法学硕士在几个领域,特别是生物医学领域兴起的过程,并具体讨论将法学硕士应用于生物医学注释和策展时的机会和陷阱。
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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CiteScore
4.50
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