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Drawing on millions of biomedical journal publications to do predictive biology

机译:利用数百万本生物医学期刊出版物进行预测生物学

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The biomedical literature captures the most current biomedical knowledge and is a tremendously rich resource for research. With over 24 million publications currently indexed in the US National Library of Medicine's PubMed index, however, it is becoming increasingly challenging for biomedical researchers to keep up with this literature. Automated strategies for extracting information from it are required. Large-scale processing of the literature enables direct biomedical knowledge discovery. This paper introduces the use of text mining techniques to support analysis of biological data sets, specifically discussing applications in protein function prediction and analysis of genetic variants that are supported by analysis of the literature. Review of the work suggests that methods that integrate simple text analysis with more targeted relation extraction, and methods that combine literature-derived information with complementary biological data, represent the most promising future directions.
机译:生物医学文献记录了最新的生物医学知识,是极为丰富的研究资源。但是,目前有超过2400万种出版物被美国国家医学图书馆的PubMed索引编制了索引,对生物医学研究者而言,要跟上该文献​​的发展,就变得越来越具有挑战性。需要从中提取信息的自动化策略。文献的大规模处理使直接的生物医学知识发现成为可能。本文介绍了使用文本挖掘技术来支持对生物数据集的分析,特别是讨论了蛋白质分析中支持的蛋白质功能预测和遗传变异分析中的应用。对工作的回顾表明,将简单的文本分析与更有针对性的关系提取相结合的方法,以及将文献衍生信息与互补生物学数据相结合的方法,代表了最有希望的未来方向。

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