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TOWARDS PATHWAY CURATION THROUGH LITERATURE MINING – A CASE STUDY USING PHARMGKB

机译:贯穿文学挖掘的途径创造—使用PHARMGKB的案例研究

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摘要

The creation of biological pathway knowledge bases is largely driven by manual effort to curate based on evidences from the scientific literature. It is highly challenging for the curators to keep up with the literature. Text mining applications have been developed in the last decade to assist human curators to speed up the curation pace where majority of them aim to identify the most relevant papers for curation with little attempt to directly extract the pathway information from text. In this paper, we describe a rule-based literature mining system to extract pathway information from text. We evaluated the system using curated pharmacokinetic (PK) and pharmacodynamic (PD) pathways in PharmGKB. The system achieved an F-measure of 63.11% and 34.99% for entity extraction and event extraction respectively against all PubMed abstracts cited in PharmGKB. It may be possible to improve the system performance by incorporating using statistical machine learning approaches. This study also helped us gain insights into the barriers towards automated event extraction from text for pathway curation.
机译:建立生物途径知识库的主要动力是根据科学文献的证据进行人工整理。策展人要跟上文献的步伐是极具挑战性的。文本挖掘应用程序在过去的十年中得到了发展,以帮助人类策展人加快策展速度,其中大多数旨在找出最适合策展的论文,而很少尝试直接从文本中提取路径信息。在本文中,我们描述了一种基于规则的文献挖掘系统,可从文本中提取路径信息。我们使用PharmGKB中的药代动力学(PK)和药效学(PD)途径评估了该系统。该系统针对PharmGKB中引用的所有PubMed摘要分别实现了63.11%和34.99%的F度量,分别用于实体提取和事件提取。通过合并使用统计机器学习方法,可能会改善系统性能。这项研究还帮助我们洞悉了从用于路径管理的文本中自动提取事件的障碍。

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