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K-Neighborhood decentralization: A comprehensive solution to index the UMLS for large scale knowledge discovery

机译:K邻域去中心化:为大型知识发现的UMLS编制索引的综合解决方案

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摘要

The Unified Medical Language System (UMLS) is the largest thesaurus in the biomedical informatics domain. Previous works have shown that knowledge constructs comprised of transitively-associated UMLS concepts are effective for discovering potentially novel biomedical hypotheses. However, the extremely large size of the UMLS becomes a major challenge for these applications. To address this problem, we designed a k-neighborhood Decentralization Labeling Scheme (. kDLS) for the UMLS, and the corresponding method to effectively evaluate the kDLS indexing results. kDLS provides a comprehensive solution for indexing the UMLS for very efficient large scale knowledge discovery. We demonstrated that it is highly effective to use kDLS paths to prioritize disease-gene relations across the whole genome, with extremely high fold-enrichment values. To our knowledge, this is the first indexing scheme capable of supporting efficient large scale knowledge discovery on the UMLS as a whole. Our expectation is that kDLS will become a vital engine for retrieving information and generating hypotheses from the UMLS for future medical informatics applications.
机译:统一医学语言系统(UMLS)是生物医学信息学领域中最大的同义词库。先前的研究表明,由传递相关的UMLS概念组成的知识结构可有效地发现潜在的新颖生物医学假设。但是,UMLS的超大尺寸成为这些应用的主要挑战。为了解决此问题,我们为UMLS设计了一个k邻域分散标记方案(。kDLS),并设计了相应的方法来有效地评估kDLS索引结果。 kDLS为索引UMLS提供了一个全面的解决方案,以实现非常高效的大规模知识发现。我们证明了使用kDLS路径对整个基因组中疾病与基因的关系进行优先排序具有很高的倍数富集值,这是非常有效的。就我们所知,这是第一个能够支持整个UMLS上高效大规模知识发现的索引方案。我们的期望是,kDLS将成为从UMLS检索信息并生成假设以用于未来医学信息学的重要引擎。

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