Grady Benjamin J, Ritchie Marylyn D
Department of Molecular Physiology & Biophysics, Center for Human Genetics Research, Vanderbilt University, Nashville, TN, USA.
Curr Pharmacogenomics Person Med. 2011 Mar 1;9(1):41-66. doi: 10.2174/187569211794728805.
Research in human genetics and genetic epidemiology has grown significantly over the previous decade, particularly in the field of pharmacogenomics. Pharmacogenomics presents an opportunity for rapid translation of associated genetic polymorphisms into diagnostic measures or tests to guide therapy as part of a move towards personalized medicine. Expansion in genotyping technology has cleared the way for widespread use of whole-genome genotyping in the effort to identify novel biology and new genetic markers associated with pharmacokinetic and pharmacodynamic endpoints. With new technology and methodology regularly becoming available for use in genetic studies, a discussion on the application of such tools becomes necessary. In particular, quality control criteria have evolved with the use of GWAS as we have come to understand potential systematic errors which can be introduced into the data during genotyping. There have been several replicated pharmacogenomic associations, some of which have moved to the clinic to enact change in treatment decisions. These examples of translation illustrate the strength of evidence necessary to successfully and effectively translate a genetic discovery. In this review, the design of pharmacogenomic association studies is examined with the goal of optimizing the impact and utility of this research. Issues of ascertainment, genotyping, quality control, analysis and interpretation are considered.
在过去十年中,人类遗传学和遗传流行病学研究取得了显著进展,尤其是在药物基因组学领域。药物基因组学为将相关基因多态性快速转化为诊断措施或检测方法以指导治疗提供了契机,这是迈向个性化医疗的一部分。基因分型技术的发展为全基因组基因分型的广泛应用铺平了道路,有助于识别与药代动力学和药效学终点相关的新生物学特性和新基因标记。随着新技术和方法不断应用于基因研究,有必要对这些工具的应用进行讨论。特别是,随着全基因组关联研究(GWAS)的使用,质量控制标准也在不断发展,因为我们已经了解到基因分型过程中可能引入数据的潜在系统误差。已经有一些重复的药物基因组学关联研究,其中一些已经进入临床以改变治疗决策。这些转化实例说明了成功有效转化基因发现所需的证据强度。在本综述中,我们将审视药物基因组学关联研究的设计,目的是优化这项研究的影响力和实用性。我们将考虑确定研究对象、基因分型、质量控制、分析和解释等问题。