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RENET: A Deep Learning Approach for Extracting Gene-Disease Associations from Literature

机译:RENET:一种从文献中提取基因疾病关联的深度学习方法

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Over one million new biomedical articles are published every year. Efficient and accurate text-mining tools are urgently needed to automatically extract knowledge from these articles to support research and genetic testing. In particular, the extraction of gene-disease associations is mostly studied. However, existing text-mining tools for extracting gene-disease associations have limited capacity, as each sentence is considered separately. Our experiments show that the best existing tools, such as BeFree and DTMiner, achieve a precision of 48% and recall rate of 78% at most. In this study, we designed and implemented a deep learning approach, named RENET, which considers the correlation between the sentences in an article to extract gene-disease associations. Our method has significantly improved the precision and recall rate to 85.2% and 81.8%, respectively. The source code of RENET is available at https://bitbucket.org/alexwuhkucs/gda-extraction/src/master/.
机译:每年发表超过一百万篇新的生物医学文章。迫切需要一种高效,准确的文本挖掘工具,以便从这些文章中自动提取知识,以支持研究和基因测试。特别地,大多数研究了基因疾病关联的提取。但是,现有的用于提取基因疾病关联的文本挖掘工具的能力有限,因为每个句子都是单独考虑的。我们的实验表明,最好的现有工具,例如BeFree和DTMiner,可以达到48%的精度和最高78%的召回率。在这项研究中,我们设计并实现了一种名为RENET的深度学习方法,该方法考虑了文章中句子之间的相关性以提取基因疾病关联。我们的方法将准确度和召回率分别显着提高到85.2%和81.8%。 RENET的源代码位于https://bitbucket.org/alexwuhkucs/gda-extraction/src/master/。

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