Multi-head CRF classifier for biomedical multi-class named entity recognition on Spanish clinical notes.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Richard A A Jonker, Tiago Almeida, Rui Antunes, João R Almeida, Sérgio Matos
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引用次数: 0

Abstract

The identification of medical concepts from clinical narratives has a large interest in the biomedical scientific community due to its importance in treatment improvements or drug development research. Biomedical named entity recognition (NER) in clinical texts is crucial for automated information extraction, facilitating patient record analysis, drug development, and medical research. Traditional approaches often focus on single-class NER tasks, yet recent advancements emphasize the necessity of addressing multi-class scenarios, particularly in complex biomedical domains. This paper proposes a strategy to integrate a multi-head conditional random field (CRF) classifier for multi-class NER in Spanish clinical documents. Our methodology overcomes overlapping entity instances of different types, a common challenge in traditional NER methodologies, by using a multi-head CRF model. This architecture enhances computational efficiency and ensures scalability for multi-class NER tasks, maintaining high performance. By combining four diverse datasets, SympTEMIST, MedProcNER, DisTEMIST, and PharmaCoNER, we expand the scope of NER to encompass five classes: symptoms, procedures, diseases, chemicals, and proteins. To the best of our knowledge, these datasets combined create the largest Spanish multi-class dataset focusing on biomedical entity recognition and linking for clinical notes, which is important to train a biomedical model in Spanish. We also provide entity linking to the multi-lingual Systematized Nomenclature of Medicine Clinical Terms (SNOMED CT) vocabulary, with the eventual goal of performing biomedical relation extraction. Through experimentation and evaluation of Spanish clinical documents, our strategy provides competitive results against single-class NER models. For NER, our system achieves a combined micro-averaged F1-score of 78.73, with clinical mentions normalized to SNOMED CT with an end-to-end F1-score of 54.51. The code to run our system is publicly available at https://github.com/ieeta-pt/Multi-Head-CRF. Database URL: https://github.com/ieeta-pt/Multi-Head-CRF.

针对西班牙临床笔记的生物医学多类命名实体识别的多头 CRF 分类器。
从临床叙述中识别医学概念对改善治疗或药物开发研究具有重要意义,因此在生物医学科学界引起了广泛关注。临床文本中的生物医学命名实体识别(NER)对于自动信息提取、促进病历分析、药物开发和医学研究至关重要。传统方法通常侧重于单类命名实体识别任务,但最近的研究进展强调了处理多类场景的必要性,尤其是在复杂的生物医学领域。本文提出了一种整合多头条件随机场(CRF)分类器的策略,用于西班牙临床文档中的多类 NER。我们的方法通过使用多头 CRF 模型,克服了传统 NER 方法中常见的挑战--不同类型实体实例重叠的问题。这种架构提高了计算效率,确保了多类 NER 任务的可扩展性,并保持了高性能。通过结合 SympTEMIST、MedProcNER、DisTEMIST 和 PharmaCoNER 这四个不同的数据集,我们将 NER 的范围扩展到了五个类别:症状、程序、疾病、化学物质和蛋白质。据我们所知,这些数据集的组合创造了西班牙最大的多类数据集,其重点是临床笔记的生物医学实体识别和链接,这对训练西班牙语生物医学模型非常重要。我们还提供了与多语言系统化医学临床术语(SNOMED CT)词汇的实体链接,最终目标是进行生物医学关系提取。通过对西班牙语临床文档的实验和评估,我们的策略提供了与单类 NER 模型相比具有竞争力的结果。在 NER 方面,我们的系统取得了 78.73 的综合微平均 F1 分数,而根据 SNOMED CT 规范化的临床提及则取得了 54.51 的端到端 F1 分数。运行我们系统的代码可通过 https://github.com/ieeta-pt/Multi-Head-CRF 公开获取。数据库网址:https://github.com/ieeta-pt/Multi-Head-CRF。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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