ailSemantic Web-based data representation and reasoning applied to disease mechanism and pharmacology

Xiaoyan A. Qu, R. C. Gudivada, A. Jegga, Eric K. Neumann, Bruce J. Aronow
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引用次数: 9

Abstract

To pursue a systematic approach to the discovery of novel and inferable relationships between drugs and diseases based on mechanistic knowledge, we have sought to apply semantic Web-based technologies to integrate heterogeneous data from pharmacological and biological domains. We have devised a knowledge framework, Disease-Drug Correlation Ontology (DDCO), constructed for semantic representation of the key entities and relationships. A collection of prior knowledge sets including pharmacological substance, drug target, pathway, disease and clinical features, and all interlinking properties were integrated using an RDF (resource description framework) model derived from the semantic elements defined in the DDCO framework. Using the resulting RDF graph network, ontology-based mining and queries could identify embedded associations in this genome-phenome-pharmacome network. Several use-cases demonstrated that potentially powerful rewards could be obtained through semantic integration based on principles of drug action modeling.
基于语义的数据表示和推理在疾病机制和药理学中的应用
为了寻求一种系统的方法来发现基于机制知识的药物和疾病之间的新型和可推断的关系,我们寻求应用基于语义的基于web的技术来整合来自药理学和生物学领域的异构数据。我们设计了一个知识框架,疾病-药物相关本体(DDCO),构建了关键实体和关系的语义表示。使用从DDCO框架中定义的语义元素派生的RDF(资源描述框架)模型集成了包括药理学物质、药物靶点、途径、疾病和临床特征以及所有相互关联属性在内的先验知识集集合。利用生成的RDF图网络,基于本体的挖掘和查询可以识别基因组-现象-药物组网络中的嵌入关联。几个用例表明,基于药物作用建模原理的语义集成可以获得潜在的强大奖励。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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