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A survey of current work in biomedical text mining

机译:生物医学文本挖掘当前工作概览

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摘要

The volume of published biomedical research, and therefore the underlying biomedical knowledge base, is expanding at an increasing rate. Among the tools that can aid researchers in coping with this information overload are text mining and knowledge extraction. Significant progress has been made in applying text mining to named entity recognition, text classification, terminology extraction, relationship extraction and hypothesis generation. Several research groups are constructing integrated flexible text-mining systems intended for multiple uses. The major challenge of biomedical text mining over the next 5-10 years is to make these systems useful to biomedical researchers. This will require enhanced access to full text, better understanding of the feature space of biomedical literature, better methods for measuring the usefulness of systems to users, and continued cooperation with the biomedical research community to ensure that their needs are addressed.
机译:已发表的生物医学研究的数量以及由此而来的基础生物医学知识库的数量正以不断增加的速度增长。可以帮助研究人员应对这种信息过载的工具包括文本挖掘和知识提取。在将文本挖掘应用于命名实体识别,文本分类,术语提取,关系提取和假设生成方面已经取得了重大进展。几个研究小组正在构建旨在用于多种用途的集成的灵活文本挖掘系统。在接下来的5-10年中,生物医学文本挖掘的主要挑战是使这些系统对生物医学研究人员有用。这将需要增加对全文的访问,更好地了解生物医学文献的特征空间,更好的方法来衡量系统对用户的实用性,并继续与生物医学研究界合作以确保满足其需求。

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