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Pharmacogenomic knowledge representation, reasoning and genome-based clinical decision support based on OWL 2 DL ontologies

机译:基于OWL 2 DL本体的药物基因组学知识表示,推理和基于基因组的临床决策支持

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Background Every year, hundreds of thousands of patients experience treatment failure or adverse drug reactions (ADRs), many of which could be prevented by pharmacogenomic testing. However, the primary knowledge needed for clinical pharmacogenomics is currently dispersed over disparate data structures and captured in unstructured or semi-structured formalizations. This is a source of potential ambiguity and complexity, making it difficult to create reliable information technology systems for enabling clinical pharmacogenomics. Methods We developed Web Ontology Language (OWL) ontologies and automated reasoning methodologies to meet the following goals: 1) provide a simple and concise formalism for representing pharmacogenomic knowledge, 2) finde errors and insufficient definitions in pharmacogenomic knowledge bases, 3) automatically assign alleles and phenotypes to patients, 4) match patients to clinically appropriate pharmacogenomic guidelines and clinical decision support messages and 5) facilitate the detection of inconsistencies and overlaps between pharmacogenomic treatment guidelines from different sources. We evaluated different reasoning systems and test our approach with a large collection of publicly available genetic profiles. Results Our methodology proved to be a novel and useful choice for representing, analyzing and using pharmacogenomic data. The Genomic Clinical Decision Support (Genomic CDS) ontology represents 336 SNPs with 707 variants; 665 haplotypes related to 43 genes; 22 rules related to drug-response phenotypes; and 308 clinical decision support rules. OWL reasoning identified CDS rules with overlapping target populations but differing treatment recommendations. Only a modest number of clinical decision support rules were triggered for a collection of 943 public genetic profiles. We found significant performance differences across available OWL reasoners. Conclusions The ontology-based framework we developed can be used to represent, organize and reason over the growing wealth of pharmacogenomic knowledge, as well as to identify errors, inconsistencies and insufficient definitions in source data sets or individual patient data. Our study highlights both advantages and potential practical issues with such an ontology-based approach.
机译:背景技术每年,成千上万的患者经历治疗失败或药物不良反应(ADR),其中许多可以通过药物基因组学测试来预防。但是,目前临床药物基因组学所需的主要知识分散在不同的数据结构上,并以非结构化或半结构化形式表示。这是潜在的歧义和复杂性的来源,使得难以创建可靠的信息技术系统来实现临床药物基因组学。方法我们开发了Web本体语言(OWL)本体和自动推理方法,以实现以下目标:1)提供一种简洁明了的形式来表示药物基因组学知识; 2)在药物基因组学知识库中发现错误和定义不足; 3)自动分配等位基因和患者的表型,4)使患者符合临床上适当的药物基因组学指南和临床决策支持消息,以及5)便于检测不同来源的药物基因组学治疗指南之间的不一致和重叠。我们评估了不同的推理系统,并通过大量公共可用的基因概况测试了我们的方法。结果我们的方法论被证明是代表,分析和使用药物基因组学数据的新颖而有用的选择。基因组临床决策支持(Genomic CDS)本体表示具有707个变异体的336个SNP。 665个单倍型,涉及43个基因;有关药物反应表型的22条规则; 308条临床决策支持规则。 OWL推理确定了目标人群重叠但治疗建议不同的CDS规则。仅触发了少量临床决策支持规则,就收集了943个公共遗传图谱。我们发现可用的OWL推理程序之间存在显着的性能差异。结论我们开发的基于本体的框架可用于表示,组织和推理不断增长的丰富的药物基因组学知识,以及识别源数据集或单个患者数据中的错误,不一致和定义不足。我们的研究强调了这种基于本体的方法的优点和潜在的实际问题。

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