JTIS:通过中间步骤联合训练,加强生物医学文献级关系提取。

IF 3.4 4区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Jiru Li, Dinghao Pan, Zhihao Yang, Yuanyuan Sun, Hongfei Lin, Jian Wang
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引用次数: 0

摘要

生物医学关系提取(RE)是生物医学自然语言处理的核心,对各种下游应用至关重要。生物领域现有的RE挑战主要集中在句内分析上。然而,随着文献量的迅速增加和生物医学实体之间关系的复杂性,为了充分提取一对实体之间的关系,往往需要考虑多个句子。目前的方法往往不能完全捕获文档中信息的复杂语义结构,从而影响提取的准确性。因此,与传统的依赖于句子级分析和启发式规则的RE方法不同,我们的方法侧重于从生物医学文献标题和摘要中提取实体关系,并对新发现的关系进行分类。在我们的方法中,采用多任务训练方法对生物学领域的预训练语言模型进行微调。基于广泛的精心设计的任务,我们的多任务方法不仅由于更有效的监督而提取出质量更好的关系,而且还实现了对实体对是否为新发现的更准确分类。此外,通过应用模型集成方法,进一步提高了模型的性能。大量的实验表明,我们的方法取得了显着的性能改进,即在生物医学文献的F1评分中,RE比现有基线高出3.94%,Triplet Novel Typing比现有基线高出3.27%,证实了它在处理复杂的生物医学文献RE任务方面的有效性。数据库地址:https://codalab.lisn.upsaclay.fr/competitions/13377#learn_the_details-dataset。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
JTIS: enhancing biomedical document-level relation extraction through joint training with intermediate steps.

Biomedical Relation Extraction (RE) is central to Biomedical Natural Language Processing and is crucial for various downstream applications. Existing RE challenges in the field of biology have primarily focused on intra-sentential analysis. However, with the rapid increase in the volume of literature and the complexity of relationships between biomedical entities, it often becomes necessary to consider multiple sentences to fully extract the relationship between a pair of entities. Current methods often fail to fully capture the complex semantic structures of information in documents, thereby affecting extraction accuracy. Therefore, unlike traditional RE methods that rely on sentence-level analysis and heuristic rules, our method focuses on extracting entity relationships from biomedical literature titles and abstracts and classifying relations that are novel findings. In our method, a multitask training approach is employed for fine-tuning a Pre-trained Language Model in the field of biology. Based on a broad spectrum of carefully designed tasks, our multitask method not only extracts relations of better quality due to more effective supervision but also achieves a more accurate classification of whether the entity pairs are novel findings. Moreover, by applying a model ensemble method, we further enhance our model's performance. The extensive experiments demonstrate that our method achieves significant performance improvements, i.e. surpassing the existing baseline by 3.94% in RE and 3.27% in Triplet Novel Typing in F1 score on BioRED, confirming its effectiveness in handling complex biomedical literature RE tasks. Database URL: https://codalab.lisn.upsaclay.fr/competitions/13377#learn_the_details-dataset.

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来源期刊
Database: The Journal of Biological Databases and Curation
Database: The Journal of Biological Databases and Curation MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
9.00
自引率
3.40%
发文量
100
审稿时长
>12 weeks
期刊介绍: Huge volumes of primary data are archived in numerous open-access databases, and with new generation technologies becoming more common in laboratories, large datasets will become even more prevalent. The archiving, curation, analysis and interpretation of all of these data are a challenge. Database development and biocuration are at the forefront of the endeavor to make sense of this mounting deluge of data. Database: The Journal of Biological Databases and Curation provides an open access platform for the presentation of novel ideas in database research and biocuration, and aims to help strengthen the bridge between database developers, curators, and users.
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