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首页> 外文期刊>Journal of chemical information and modeling >DINTO: Using OWL Ontologies and SWRL Rules to Infer Drug-Drug Interactions and Their Mechanisms
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DINTO: Using OWL Ontologies and SWRL Rules to Infer Drug-Drug Interactions and Their Mechanisms

机译:DINTO:使用OWL本体论和SWRL规则来推断毒品相互作用及其机制

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摘要

The early detection of drug drug interactions (DDIs) is limited by the diffuse spread of DDI information in heterogeneous sources. Computational methods promise to play a key role in the identification and explanation of DDIs on a large scale. However, such methods rely on the availability of computable representations describing the relevant domain knowledge. Current modeling efforts have focused on partial and shallow representations of the DDI domain, failing to adequately support computational inference and discovery applications. In this paper, we describe a comprehensive ontology for DDI knowledge (DINTO), which is the first formal representation of different types of DDIs and their mechanisms and its application in the prediction of DDIs. This project has been developed using currently available semantic web technologies, standards, and tools, and we have demonstrated that the combination of drug-related facts in DINTO and Semantic Web Rule Language (SWRL) rules can be used to infer DDIs and their different mechanisms on a large scale.
机译:药物相互作用(DDI)的早期检测受到DDI信息在异构源中的扩散传播的限制。计算方法有望在DDI的大规模识别和解释中发挥关键作用。但是,这样的方法依赖于描述相关领域知识的可计算表示的可用性。当前的建模工作集中在DDI域的部分和浅层表示上,未能充分支持计算推理和发现应用程序。在本文中,我们描述了DDI知识的综合本体(DINTO),它是不同类型DDI及其机制的第一个正式表示形式,并在DDI预测中得到了应用。该项目是使用当前可用的语义Web技术,标准和工具开发的,并且我们证明了DINTO中与毒品有关的事实与语义Web规则语言(SWRL)规则的结合可用于推断DDI及其不同机制大范围上。

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