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Inferring novel disease indications for known drugs by semantically linking drug action and disease mechanism relationships

机译:通过语义上将药物作用与疾病机制关系联系起来,推断已知药物的新疾病适应症

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Background Discovering that drug entities already approved for one disease are effective treatments for other distinct diseases can be highly beneficial and cost effective. To do this predictively, our conjecture is that a semantic infrastructure linking mechanistic relationships between pharmacologic entities and multidimensional knowledge of biological systems and disease processes will be highly enabling. Results To develop a knowledge framework capable of modeling and interconnecting drug actions and disease mechanisms across diverse biological systems contexts, we designed a Disease-Drug Correlation Ontology (DDCO) , formalized in OWL, that integrates multiple ontologies, controlled vocabularies, and data schemas and interlinks these with diverse datasets extracted from pharmacological and biological domains. Using the complex disease Systemic Lupus Erythematosus (SLE) as an example, a high-dimensional pharmacome-diseasome graph network was generated as RDF XML, and subjected to graph-theoretic proximity and connectivity analytic approaches to rank drugs versus the compendium of SLE-associated genes, pathways, and clinical features. Tamoxifen, a current candidate therapeutic for SLE, was the highest ranked drug. Conclusion This early stage demonstration highlights critical directions to follow that will enable translational pharmacotherapeutic research. The uniform application of Semantic Web methodology to problems in data integration, knowledge representation, and analysis provides an efficient and potentially powerful means to allow mining of drug action and disease mechanism relationships. Further improvements in semantic representation of mechanistic relationships will provide a fertile basis for accelerated drug repositioning, reasoning, and discovery across the spectrum of human disease.
机译:背景技术发现已经批准用于一种疾病的药物实体是对其他不同疾病的有效治疗方法,可能会非常有益且具有成本效益。为此,我们可以推测,将药理实体与生物系统和疾病过程的多维知识之间的机械关系联系起来的语义基础结构将非常有可能实现。结果为了建立一个能够在各种生物系统环境中建模和互连药物作用和疾病机制的知识框架,我们设计了以OWL形式化的疾病-药物相关本体论(DDCO),该本体将多个本体论,受控词汇表和数据模式集成在一起。将它们与从药理和生物学领域提取的各种数据集相互链接。以复杂疾病系统性红斑狼疮(SLE)为例,以RDF XML形式生成了高维药学-二线体图网络,并对其进行了图论邻近性和连通性分析方法,以对与SLE相关联的药物进行排名基因,途径和临床特征。他莫昔芬是目前治疗SLE的候选药物,是排名最高的药物。结论这项早期的示范突出了将要遵循的关键方向,这将使转化药物治疗研究成为可能。语义Web方法论对数据集成,知识表示和分析中的问题的统一应用提供了一种有效且潜在强大的方法,可以挖掘药物作用和疾病机制之间的关系。机械关系语义表示的进一步改进将为跨人类疾病谱的加速药物重新定位,推理和发现提供肥沃的基础。

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