药物基因组学的流行病学方法。

Julian Little, Linda Sharp, Muin J Khoury, Linda Bradley, Marta Gwinn
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引用次数: 32

摘要

流行病学方法能够系统地评估基于基因组信息的靶向治疗可能导致的药物治疗安全性和有效性的潜在改进。主要的流行病学设计是随机对照试验、队列研究和病例对照研究,以及这些研究的衍生品,用于研究基因-环境相互作用。然而,没有一种设计对每种情况都是理想的,方法问题,特别是选择偏差,信息偏差,混淆和机会,都在确定哪种研究设计最适合特定情况时发挥作用。还需要采用一系列不同的设计来建立关于特定基因-药物相互作用的证据组合。鉴于基因-药物相互作用的复杂性,为了有足够的统计能力来检验假设,可能需要跨研究汇集数据。我们建议可能有机会(i)利用已经完成的试验样本来调查可能的基因-药物相互作用;(ii)考虑使用嵌套在随机对照试验中的病例设计,作为在调查二分结果时降低基因分型成本的可能手段;(三)利用可与组织样本、治疗信息和死亡记录相联系的基于人群的疾病登记,调查基因-治疗在生存中的相互作用。
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The epidemiologic approach to pharmacogenomics.

The epidemiologic approach enables the systematic evaluation of potential improvements in the safety and efficacy of drug treatment which might result from targeting treatment on the basis of genomic information. The main epidemiologic designs are the randomized control trial, the cohort study, and the case-control study, and derivatives of these proposed for investigating gene-environment interactions. However, no one design is ideal for every situation, and methodological issues, notably selection bias, information bias, confounding and chance, all play a part in determining which study design is best for a given situation. There is also a need to employ a range of different designs to establish a portfolio of evidence about specific gene-drug interactions. In view of the complexity of gene-drug interactions, pooling of data across studies is likely to be needed in order to have adequate statistical power to test hypotheses. We suggest that there may be opportunities (i) to exploit samples from trials already completed to investigate possible gene-drug interactions; (ii) to consider the use of the case-only design nested within randomized controlled trials as a possible means of reducing genotyping costs when dichotomous outcomes are being investigated; and (iii) to make use of population-based disease registries that can be linked with tissue samples, treatment information and death records, to investigate gene-treatment interactions in survival.

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