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Prioritizing PubMed articles for the Comparative Toxicogenomic Database utilizing semantic information

机译:利用语义信息为比较毒理基因组数据库确定PubMed文章的优先级

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The Comparative Toxicogenomics Database (CTD) contains manually curated literature that describes chemical–gene interactions, chemical–disease relationships and gene–disease relationships. Finding articles containing this information is the first and an important step to assist manual curation efficiency. However, the complex nature of named entities and their relationships make it challenging to choose relevant articles. In this article, we introduce a machine learning framework for prioritizing CTD-relevant articles based on our prior system for the protein–protein interaction article classification task in BioCreative III. To address new challenges in the CTD task, we explore a new entity identification method for genes, chemicals and diseases. In addition, latent topics are analyzed and used as a feature type to overcome the small size of the training set. Applied to the BioCreative 2012 Triage dataset, our method achieved 0.8030 mean average precision (MAP) in the official runs, resulting in the top MAP system among participants. Integrated with PubTator, a Web interface for annotating biomedical literature, the proposed system also received a positive review from the CTD curation team.
机译:比较毒物基因组学数据库(CTD)包含人工整理的文献,描述了化学与基因的相互作用,化学与疾病的关系以及基因与疾病的关系。查找包含此信息的文章是提高手动管理效率的第一步,也是重要的一步。但是,命名实体及其关系的复杂性使得选择相关文章具有挑战性。在本文中,我们介绍了一种机器学习框架,该框架基于BioCreative III中蛋白质/蛋白质相互作用文章分类任务的现有系统,对与CTD相关的文章进行优先排序。为了应对CTD任务中的新挑战,我们探索了一种针对基因,化学物质和疾病的新的实体识别方法。此外,分析了潜在主题并将其用作功能类型,以克服训练集的小尺寸问题。在BioCreative 2012 Triage数据集上,我们的方法在正式运行中获得了0.8030的平均平均精度(MAP),在参与者中排名第一。该系统与PubTator(用于注释生物医学文献的Web界面)集成在一起,还得到了CTD策展团队的积极评价。

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