通过检测子句依赖性和基于语言的否定,从文献中自动提取药物-药物相互作用

Behrouz Bokharaeian, Alberto Díaz
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引用次数: 0

摘要

从文本中提取药物-药物相互作用(DDI)等生物医学关系是生物医学自然语言处理中的重要任务。由于生物医学文献中复杂句子较多,研究人员采用了一些句子简化技术来提高关系提取方法的性能。然而,由于任务的难度,研究文献中没有明显的改进。本文旨在探讨子句依赖相关特征以及基于语言的否定范围和线索,以克服句子的复杂性。实验表明,否定提示在复杂句中的比例高于简单句,否定提示是导致错误的另一个原因。此外,结果表明,将所提出的特征与袋词核相结合,所使用的核方法的性能得到了提高。此外,实验表明,增强的局部上下文核优于其他方法。该方法可作为一种替代方法,用于易出错的生物医学领域的句子简化技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic extraction of drug-drug interaction from literature through detecting clause dependency and linguistic-based negation
Extracting biomedical relations such as drug-drug interaction (DDI) from text is an important task in biomedical NLP. Due to the large number of complex sentences in biomedical literature, researchers have employed some sentence simplification techniques to improve the performance of the relation extraction methods. However, due to difficulty of the task, there is no noteworthy improvement in the research literature. This paper aims to explore clause dependency related features alongside to linguistic-based negation scope and cues to overcome complexity of the sentences. The experiments indicate the ratio of negation cues which is another source of inaccuracy is higher in complex sentences in comparison with simple ones. Additionally, the results show by employing the proposed features combined with a bag of words kernel, the performance of the used kernel methods improves. Moreover, experiments show the enhanced local context kernel outperforms other methods. The proposed method can be used as an alternative approach for sentence simplification techniques in biomedical area which is an error-prone task.
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