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A Knowledge-based System for Intelligent Support in Pharmacogenomics Evidence Assessment: Ontology-driven Evidence Representation, Retrieval, Classification and Interpretation.

机译:基于知识的药物基因组学证据评估智能支持系统:本体驱动的证据表示,检索,分类和解释。

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摘要

Pharmacogenomics is the study of how genetic variants affect a person's response to a drug. With great advances to date, pharmacogenomics holds promise as one of the approaches to precision medicine. Yet, the use of pharmacogenomics in routine clinical care is minimal, partly due to the misperception that there is insufficient evidence to determine the value of pharmacogenomics and the lack of efficient and effective use of already existing evidence. Enormous efforts have been directed to develop pharmacogenomics knowledge bases; however, none of them fulfills the functionality of providing effective and efficient evidence assessment that supports decisions on adoption of pharmacogenomics in clinical care.;In this context, my overall hypothesis was that a knowledge-based system that fulfills three critical features, including clinically relevant evidence, providing an evidence-based approach, and using semantically computable formalism, could facilitate effective and efficient evidence assessment to support decisions on adoption of pharmacogenomics in clinical care. My overarching research question has been: How can we exploit state-of-the-art knowledge representation and reasoning in developing a knowledge-based system with the intended features and applications as specified above.;The first aim of this research was to develop a conceptual model to address the information needs and heterogeneity problem for the domain of pharmacogenomics evidence assessment. Faceted analysis and fine-grained characterization of clinically relevant evidence acquired from empirical pharmacogenomics studies were deployed to identify 3 information entities, 9 information components, 30 concepts, 49 relations and approximately 250 terms as building blocks of the conceptual model. These building blocks were then organized into a model, which features a layered and modular structure so that heterogeneous information content of pharmacogenomics evidence could be expressed to reflect its intended meaning. The developed conceptual model was validated against a general ontology of clinical research (OCRe) to show its strength in modeling pharmacogenomics publications, studies and evidence in an extensible and easy-to-understand way.;The second aim of this research was to exploit OWL 2 DL to build a knowledge-based system that enables formal representation and automatic retrieval of pharmacogenomics evidence for systematic review with meta-analysis. The conceptual model developed in Aim 1 was encoded into an OWL 2 DL ontology using Protege. The constructed ontology provides approximately 400 formalized vocabularies, which were used in turn to formally represent 73 individual publications, 82 individual studies and 445 individual pieces of evidence, and thereafter formed a knowledge base. After a series of subsumption checking and instance checking using HermiT reasoner, the implemented knowledge-based system was verified as consistent and correct.;The third aim of this research was to use the implemented knowledge-based system to provide four applications in pharmacogenomics evidence assessment. The first application focused on the ontology-driven evidence retrieval for meta-analysis. A total of 33 meta-analyses selected from 9 existing systematic reviews were used as test cases. The results showed that the ontology-based approach achieved a 100% precision of evidence retrieval in a very short time, ranging from 9 to 23 seconds. The second application addressed the evidence assessment of the clinical validity of CYP2C19 loss-of-function variants in predicting efficacy of clopidogrel therapy. The third application addressed the evidence assessment of the comparative effectiveness of genotype-guided versus non-genotype-guided warfarin therapy. These two applications focused on ontology-driven evidence classification to provide useful information to assist in the planning, execution, and reporting of a multitude of meta-analyses. The fourth application focused on ontology-driven interpretation of a multitude of synthesized evidence that was enabled by formal representation of synthesized evidence and typology of clinical significance in the context of assessing clinical validity and clinical utility of pharmacogenomics.;In conclusion, the major contributions of this research include: deriving an extensible conceptual model that expresses heterogeneous information content, constructing an ontology that exploits the advanced features of OWL 2 DL, and implementing a knowledge-based system that supports ontology-driven evidence retrieval, classification and interpretation. Future research would focus on (1) enhancing the system's applicability in pharmacogenomics evidence assessment by representing evidence of other sub-domains of pharmacogenomics such as cancer drugs, and (2) expanding the system's capability beyond pharmacogenomics evidence assessment by representing individuals' genomic profiles and providing evidence-based interpretation based on their individual genomic profiles. With the enhanced applicability, the pharmacogenomics knowledge-based system might improve pharmacogenomics evidence assessment as well as evidence-based interpretation of pharmacogenomics at the point of care, and ultimately increase the adoption of pharmacogenomics in routine clinical care.
机译:药物基因组学是对遗传变异如何影响人对药物反应的研究。随着迄今为止的巨大进步,药物基因组学有望成为精密医学的方法之一。但是,药物基因组学在常规临床护理中的使用是最少的,部分原因是由于误解,即没有足够的证据来确定药物基因组学的价值,并且缺乏对现有证据的有效利用。已经做出了巨大的努力来开发药物基因组学知识库。但是,它们中没有一个能够提供提供有效和有效证据评估的功能,以支持在临床护理中采用药物基因组学的决策。在这种情况下,我的总体假设是基于知识的系统具有三个关键特征,包括临床相关性证据,提供基于证据的方法,并使用语义可计算的形式主义,可以促进有效和高效的证据评估,以支持在临床护理中采用药物基因组学的决策。我的首要研究问题是:在开发具有上述指定功能和应用的基于知识的系统时,我们如何利用最新的知识表示和推理方法;该研究的首要目的是开发一种概念模型,以解决药物基因组学证据评估领域的信息需求和异质性问题。从经验药物基因组学研究获得的临床相关证据的多面分析和细粒度表征被部署为识别3个信息实体,9个信息组成部分,30个概念,49个关系和大约250个术语,作为概念模型的基础。然后将这些构建基块组织成一个模型,该模型具有分层和模块化的结构,以便可以表达药物基因组学证据的异类信息内容以反映其预期的含义。该开发的概念模型已针对临床研究的一般本体论(OCRe)进行了验证,从而以可扩展且易于理解的方式展示了其在药物基因组学出版物,研究和证据建模中的实力。该研究的第二个目标是利用OWL 2 DL建立了一个基于知识的系统,该系统能够正式表示和自动检索药物基因组学证据,以便进行荟萃分析。使用Protege将目标1中开发的概念模型编码为OWL 2 DL本体。所构建的本体提供了大约400个形式化的词汇表,依次用于正式代表73个单独的出版物,82个单独的研究和445个单独的证据,然后形成了知识库。经过使用HermiT推理机进行一系列的包含检查和实例检查后,该已实施的基于知识的系统被证明是正确和正确的;本研究的第三个目标是使用该已实施的基于知识的系统在药物基因组学证据评估中提供四种应用。第一个应用程序侧重于本体驱动的证据检索以进行荟萃分析。从9个现有系统评价中选择的总共33个荟萃分析用作测试用例。结果表明,基于本体的方法在很短的9到23秒的时间内即可实现100%的证据检索精度。第二项申请涉及CYP2C19功能丧失变异体在预测氯吡格雷治疗效果中的临床有效性的证据评估。第三个申请涉及对基因型指导的华法林治疗与非基因型指导的华法林治疗的相对有效性的证据评估。这两个应用程序专注于本体驱动的证据分类,以提供有用的信息,以帮助计划,执行和报告大量的荟萃分析。第四个应用程序集中在本体驱动的多种合成证据的解释上,这些证据是通过在评估药物基因组学的临床有效性和临床实用性的背景下,通过正式代表合成证据和临床意义类型学来实现的。这项研究包括:得出一个可表达异类信息内容的可扩展概念模型,构建一个利用OWL 2 DL高级功能的本体,以及实现一个支持本体驱动的证据检索,分类和解释的基于知识的系统。未来的研究将集中在(1)通过代表药物基因组学的其他子域(例如癌症药物)的证据来增强系统在药物基因组学证据评估中的适用性(2)通过代表个人的基因组概况并根据其个人基因组概况提供基于证据的解释,将系统的功能扩展到药物基因组学证据评估之外。随着应用性的增强,基于药物基因组学的知识体系可能会改善药物基因组学证据评估以及在护理点对药物基因组学的基于证据的解释,并最终提高药物基因组学在常规临床护理中的采用率。

著录项

  • 作者

    Lee, Chia-Ju.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Bioinformatics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 323 p.
  • 总页数 323
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:02

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