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首页> 外文期刊>Pharmacogenetics and genomics >A systems biology network model for genetic association studies of nicotine addiction and treatment.
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A systems biology network model for genetic association studies of nicotine addiction and treatment.

机译:用于烟碱成瘾和治疗的遗传关联研究的系统生物学网络模型。

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OBJECTIVE: Interpreting genome-scale genetic association data, particularly for complex diseases and phenotypes, requires extensive use of prior knowledge across a broad range of potential biological and environmental influences, spanning many scientific subdisciplines. We suggest that known or hypothesized disease risk factors, and causal mechanisms, can be represented using an ontology, a computational specification of a set of concepts and the relations between them. METHODS: We have integrated the expertise of multiple investigators in nicotine pharmacokinetics and pharmacodynamics, nicotine dependence, and clinical smoking cessation outcomes, and represented this knowledge in an ontology-based network model. Our model spans multiple scales, from molecules, genes and cellular pathways, to complex behavioral phenotypes and even environmental factors. To leverage previous and ongoing work in the field of ontology development, we adopt, expand upon and relate elements from existing ontologies whenever possible. RESULTS: We discuss several applications of our ontology: to support interdisciplinary research by graphically representing a complex scientific theory, to facilitate meta-analysis across different studies, to highlight potential interactions, and to support statistical analysis and causal modeling. We demonstrate that our ontology can focus hypothesis testing on areas supported by current theory. CONCLUSION: We describe how an ontology-based computational representation can be applied to disease risk factors and mechanisms, enabling the use of prior knowledge in large-scale genetic association studies in general. In specific, we have developed an initial Smoking Behavior Risk Ontology to support studies related to the pharmacogenetics of nicotine addiction and treatment.
机译:目的:解释基因组规模的遗传关联数据,尤其是复杂疾病和表型的基因关联数据,需要在许多潜在的生物学和环境影响范围内广泛使用先验知识,涉及许多科学子学科。我们建议,可以使用本体,一组概念的计算规范及其之间的关系来表示已知或假设的疾病风险因素以及因果机制。方法:我们已经整合了多个研究人员在尼古丁药代动力学和药效学,尼古丁依赖性和临床戒烟结果方面的专业知识,并在基于本体的网络模型中代表了这一知识。我们的模型涵盖了多个尺度,从分子,基因和细胞途径到复杂的行为表型甚至环境因素。为了利用本体开发领域的先前和正在进行的工作,我们尽可能采用,扩展和关联现有本体中的元素。结果:我们讨论了本体的几种应用:通过以图形表示复杂的科学理论来支持跨学科研究,促进跨不同研究的荟萃分析,强调潜在的相互作用以及支持统计分析和因果模型。我们证明了本体论可以将假设检验集中在当前理论支持的领域上。结论:我们描述了如何将基于本体的计算表示法应用于疾病风险因素和机制,从而能够在一般的大规模遗传关联研究中使用先验知识。具体来说,我们已经开发了一种初步的吸烟行为风险本体论,以支持与尼古丁成瘾和治疗的药物遗传学有关的研究。

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