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A Bayesian Translational Framework for Knowledge Propagation Discovery and Integration Under Specific Contexts

机译:针对特定上下文的知识传播发现和集成的贝叶斯翻译框架

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摘要

The immense corpus of biomedical literature existing today poses challenges in information search and integration. Many links between pieces of knowledge occur or are significant only under certain contexts—rather than under the entire corpus. This study proposes using networks of ontology concepts, linked based on their co-occurrences in annotations of abstracts of biomedical literature and descriptions of experiments, to draw conclusions based on context-specific queries and to better integrate existing knowledge. In particular, a Bayesian network framework is constructed to allow for the linking of related terms from two biomedical ontologies under the queried context concept. Edges in such a Bayesian network allow associations between biomedical concepts to be quantified and inference to be made about the existence of some concepts given prior information about others. This approach could potentially be a powerful inferential tool for context-specific queries, applicable to ontologies in other fields as well.
机译:当前存在的大量生物医学文献资料库在信息搜索和整合方面提出了挑战。知识之间的许多链接仅在某些情况下才发生或有意义,而不是在整个语料库下。这项研究提出使用本体概念的网络,基于它们在生物医学文献摘要和实验描述的注释中的共现关系,以基于上下文的查询得出结论,并更好地整合现有知识。特别地,构造贝叶斯网络框架以允许在所查询的上下文概念下将来自两个生物医学本体的相关术语进行链接。这样的贝叶斯网络中的边缘允许量化生物医学概念之间的关联,并在给出有关其他概念的先验信息的情况下推断出一些概念的存在。对于特定于上下文的查询,该方法可能是功能强大的推论工具,也适用于其他领域的本体。

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