UMLS-KGI-BERT: Data-Centric Knowledge Integration in Transformers for Biomedical Entity Recognition

Aidan Mannion, D. Schwab, L. Goeuriot
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Abstract

Pre-trained transformer language models (LMs) have in recent years become the dominant paradigm in applied NLP. These models have achieved state-of-the-art performance on tasks such as information extraction, question answering, sentiment analysis, document classification and many others. In the biomedical domain, significant progress has been made in adapting this paradigm to NLP tasks that require the integration of domain-specific knowledge as well as statistical modelling of language. In particular, research in this area has focused on the question of how best to construct LMs that take into account not only the patterns of token distribution in medical text, but also the wealth of structured information contained in terminology resources such as the UMLS. This work contributes a data-centric paradigm for enriching the language representations of biomedical transformer-encoder LMs by extracting text sequences from the UMLS.This allows for graph-based learning objectives to be combined with masked-language pre-training. Preliminary results from experiments in the extension of pre-trained LMs as well as training from scratch show that this framework improves downstream performance on multiple biomedical and clinical Named Entity Recognition (NER) tasks. All pre-trained models, data processing pipelines and evaluation scripts will be made publicly available.
UMLS-KGI-BERT:用于生物医学实体识别的转换器中以数据为中心的知识集成
近年来,预训练的转换语言模型(LMs)已成为应用自然语言处理的主导范式。这些模型在信息提取、问题回答、情感分析、文档分类等任务上取得了最先进的性能。在生物医学领域,将这种范式应用于需要整合特定领域知识和语言统计建模的NLP任务方面取得了重大进展。特别是,该领域的研究集中在如何最好地构建LMs的问题上,该LMs不仅考虑到医学文本中的令牌分布模式,而且还考虑到术语资源(如UMLS)中包含的丰富的结构化信息。这项工作提供了一个以数据为中心的范例,通过从UMLS中提取文本序列来丰富生物医学转换器-编码器LMs的语言表示。这允许基于图形的学习目标与屏蔽语言预训练相结合。扩展预训练的LMs以及从头开始训练的初步实验结果表明,该框架提高了多个生物医学和临床命名实体识别(NER)任务的下游性能。所有预先训练的模型、数据处理管道和评估脚本都将公开提供。
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