基于切分同义词句合成机制的中文临床命名实体识别:算法开发与验证。

IF 3.1 3区 医学 Q2 MEDICAL INFORMATICS
Jian Tang, Zikun Huang, Hongzhen Xu, Hao Zhang, Hailing Huang, Minqiong Tang, Pengsheng Luo, Dong Qin
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引用次数: 0

摘要

临床命名实体识别(CNER)是自然语言处理中的一项基本任务,用于从电子病历文本中提取命名实体。近年来,随着机器学习的不断发展,深度学习模型取代了传统的机器学习和基于模板的方法,在CNER领域得到了广泛的应用。然而,由于临床文本的复杂性、命名实体类型的多样性和数量庞大,以及不同实体之间的边界不明确,现有的先进方法在一定程度上依赖于带注释的数据库和嵌入式词典的规模。目的:本研究提出了一种基于邻近词计算的数据集增强算法,旨在解决CNER任务中数据稀缺和标注困难的问题。方法:提出了一种基于相邻词汇的分词同义词句子合成算法,该算法利用现有的公共知识,无需人工扩充专门的领域词典。该算法通过词法分割,从海量的自然语言数据中对新的同义词汇进行重组替换,实现数据集的就近扩展表达式。我们将SSSS算法应用于基于变压器预训练方法的稳健优化双向编码器表示(RoBERTa) +条件随机场(CRF)和RoBERTa +双向长短期记忆(BiLSTM) + CRF模型,并评估了我们的模型(SSSS + RoBERTa + CRF;SSSS + RoBERTa + BiLSTM + CRF)在中国知识图谱与语义计算会议(CCKS) 2017年和2019年数据集上的研究。结果:我们的实验表明,SSSS + RoBERTa + CRF和SSSS + RoBERTa + BiLSTM + CRF模型在CCKS-2017数据集上的f1得分分别为91.30%和91.35%。在CCKS-2019数据集上,他们也分别获得了83.21%和83.01%的f1分。结论:实验结果表明,我们提出的方法成功地扩展了数据集,显著提高了模型的性能,有效地解决了数据获取、标注困难和模型泛化性能不足的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Clinical Named Entity Recognition With Segmentation Synonym Sentence Synthesis Mechanism: Algorithm Development and Validation.

Background: Clinical named entity recognition (CNER) is a fundamental task in natural language processing used to extract named entities from electronic medical record texts. In recent years, with the continuous development of machine learning, deep learning models have replaced traditional machine learning and template-based methods, becoming widely applied in the CNER field. However, due to the complexity of clinical texts, the diversity and large quantity of named entity types, and the unclear boundaries between different entities, existing advanced methods rely to some extent on annotated databases and the scale of embedded dictionaries.

Objective: This study aims to address the issues of data scarcity and labeling difficulties in CNER tasks by proposing a dataset augmentation algorithm based on proximity word calculation.

Methods: We propose a Segmentation Synonym Sentence Synthesis (SSSS) algorithm based on neighboring vocabulary, which leverages existing public knowledge without the need for manual expansion of specialized domain dictionaries. Through lexical segmentation, the algorithm replaces new synonymous vocabulary by recombining from vast natural language data, achieving nearby expansion expressions of the dataset. We applied the SSSS algorithm to the Robustly Optimized Bidirectional Encoder Representations from Transformers Pretraining Approach (RoBERTa) + conditional random field (CRF) and RoBERTa + Bidirectional Long Short-Term Memory (BiLSTM) + CRF models and evaluated our models (SSSS + RoBERTa + CRF; SSSS + RoBERTa + BiLSTM + CRF) on the China Conference on Knowledge Graph and Semantic Computing (CCKS) 2017 and 2019 datasets.

Results: Our experiments demonstrated that the models SSSS + RoBERTa + CRF and SSSS + RoBERTa + BiLSTM + CRF achieved F1-scores of 91.30% and 91.35% on the CCKS-2017 dataset, respectively. They also achieved F1-scores of 83.21% and 83.01% on the CCKS-2019 dataset, respectively.

Conclusions: The experimental results indicated that our proposed method successfully expanded the dataset and remarkably improved the performance of the model, effectively addressing the challenges of data acquisition, annotation difficulties, and insufficient model generalization performance.

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来源期刊
JMIR Medical Informatics
JMIR Medical Informatics Medicine-Health Informatics
CiteScore
7.90
自引率
3.10%
发文量
173
审稿时长
12 weeks
期刊介绍: JMIR Medical Informatics (JMI, ISSN 2291-9694) is a top-rated, tier A journal which focuses on clinical informatics, big data in health and health care, decision support for health professionals, electronic health records, ehealth infrastructures and implementation. It has a focus on applied, translational research, with a broad readership including clinicians, CIOs, engineers, industry and health informatics professionals. Published by JMIR Publications, publisher of the Journal of Medical Internet Research (JMIR), the leading eHealth/mHealth journal (Impact Factor 2016: 5.175), JMIR Med Inform has a slightly different scope (emphasizing more on applications for clinicians and health professionals rather than consumers/citizens, which is the focus of JMIR), publishes even faster, and also allows papers which are more technical or more formative than what would be published in the Journal of Medical Internet Research.
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