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Conceptual biology, hypothesis discovery, and text mining: Swanson's legacy

机译:概念生物学,假设发现和文本挖掘:Swanson的遗产

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Innovative biomedical librarians and information specialists who want to expand their roles as expert searchers need to know about profound changes in biology and parallel trends in text mining. In recent years, conceptual biology has emerged as a complement to empirical biology. This is partly in response to the availability of massive digital resources such as the network of databases for molecular biologists at the National Center for Biotechnology Information. Developments in text mining and hypothesis discovery systems based on the early work of Swanson, a mathematician and information scientist, are coincident with the emergence of conceptual biology. Very little has been written to introduce biomedical digital librarians to these new trends. In this paper, background for data and text mining, as well as for knowledge discovery in databases (KDD) and in text (KDT) is presented, then a brief review of Swanson's ideas, followed by a discussion of recent approaches to hypothesis discovery and testing. 'Testing' in the context of text mining involves partially automated methods for finding evidence in the literature to support hypothetical relationships. Concluding remarks follow regarding (a) the limits of current strategies for evaluation of hypothesis discovery systems and (b) the role of literature-based discovery in concert with empirical research. Report of an informatics-driven literature review for biomarkers of systemic lupus erythematosus is mentioned. Swanson's vision of the hidden value in the literature of science and, by extension, in biomedical digital databases, is still remarkably generative for information scientists, biologists, and physicians.
机译:想要扩大专家搜索者作用的创新生物医学图书馆员和信息专家需要了解生物学的深刻变化和文本挖掘中的平行趋势。近年来,概念生物学已成为经验生物学的补充。部分原因是对大量数字资源的利用,例如国家生物技术信息中心分子生物学家的数据库网络。基于数学家和信息科学家Swanson早期工作的文本挖掘和假设发现系统的发展与概念生物学的出现相吻合。关于将生物医学数字图书馆员介绍给这些新趋势的文献很少。在本文中,介绍了数据和文本挖掘以及数据库(KDD)和文本(KDT)中的知识发现的背景,然后简要回顾了Swanson的想法,然后讨论了关于发现和发现假设的最新方法。测试。文本挖掘中的“测试”涉及部分自动化的方法,用于在文献中查找证据以支持假设关系。结束语如下:(a)当前评估假设发现系统的策略的局限性;(b)基于文献的发现与实证研究相结合的作用。提到了信息学驱动的系统性红斑狼疮生物标志物文献综述的报告。斯旺森对科学文献以及扩展到生物医学数字数据库中的隐藏价值的看法,对于信息科学家,生物学家和医师而言仍然具有显着的价值。

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