获取药物-药物相互作用知识以提高治疗效果

Ariam Rivas, Maria-Esther Vidal
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引用次数: 3

摘要

获取关于药物-药物相互作用(DDI)的知识是支持临床医生更好地治疗的关键因素。如今,公共药物数据库提供了丰富的药物信息,可以用来增强任务,如数据挖掘、排序和查询回答。然而,公共数据库中所有的相互作用都集中在药物对上。由于目前的治疗是由多种药物组成的,因此要知道哪些潜在的药物会影响治疗的有效性是极具挑战性的。在这项工作中,我们解决了发现ddi的问题,并将该问题简化为在RDF-star表示的属性图上进行链接预测。一个演绎系统捕获关于一组药物相互作用的条件的知识。扩展语句表示属性图。最后,内涵规则指导推理过程,以发现图中的关系及其性质。作为一个证明概念,我们在属性图和推导出的边的顶部实现了图遍历方法。这项技术的目的是确定药物的组合,其相互作用可能会降低治疗的有效性或增加毒性的数量。这种遍历方法依赖于属性图中楔形的计算。尽管在DDI上下文中进行了说明,但该方法可以推广到其他链接遍历任务。我们对不同处理的ddi属性图进行了实验研究。结果表明,通过获取关于ddi的知识,我们的方法可以发现降低治疗有效性的药物。我们的结果是有希望的,并表明临床医生可以更好地了解治疗中的ddi,并通过我们的方法获得的知识开出改进的治疗方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing Knowledge about Drug-Drug Interactions to Enhance Treatment Effectiveness
Capturing knowledge about Drug-Drug Interactions (DDI) is a crucial factor to support clinicians in better treatments. Nowadays, public drug databases provide a wealth of information on drugs that can be exploited to enhance tasks, e.g., data mining, ranking, and query answering. However, all the interactions in the public database are focused on pairs of drugs. Since current treatments are composed of multi-drugs, it is extremely challenging to know which potential drugs affect the effectiveness of the treatment. In this work, we tackle the problem of discovering DDIs and reduce this problem to link prediction over a property graph represented in RDF-star. A deductive system captures knowledge about the conditions that define when a group of drugs interacts as Datalog rules. Extensional statements represent the property graph. Lastly, the intensional rules guide the deduction process to discover relationships in the graph and their properties. As a proof concept, we have implemented a graph traversal method on top of the property graph and the deduced edges. The technique aims to identify the combination of drugs whose interactions may reduce the effectiveness of a treatment or increase the number of toxicities. This traversal method relies on the computation of wedges in the property graph. Albeit illustrated in the context of DDI, this method could be generalized to other link traversal tasks. We conduct an experimental study on a DDIs property graph for different treatments. The results suggest that by capturing knowledge about DDIs, our approach can discover the drugs that decrease the effectiveness of the treatment. Our results are promising and suggest that clinicians can better understand the DDIs in treatment and prescribe improved treatments through the knowledge captured by our approach.
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