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Statistical design of personalized medicine interventions: The Clarification of Optimal Anticoagulation through Genetics (COAG) trial

机译:个性化药物干预措施的统计设计:通过遗传学(COAG)试验阐明最佳抗凝治疗

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Background There is currently much interest in pharmacogenetics: determining variation in genes that regulate drug effects, with a particular emphasis on improving drug safety and efficacy. The ability to determine such variation motivates the application of personalized drug therapies that utilize a patient's genetic makeup to determine a safe and effective drug at the correct dose. To ascertain whether a genotype-guided drug therapy improves patient care, a personalized medicine intervention may be evaluated within the framework of a randomized controlled trial. The statistical design of this type of personalized medicine intervention requires special considerations: the distribution of relevant allelic variants in the study population; and whether the pharmacogenetic intervention is equally effective across subpopulations defined by allelic variants. Methods The statistical design of the Clarification of Optimal Anticoagulation through Genetics (COAG) trial serves as an illustrative example of a personalized medicine intervention that uses each subject's genotype information. The COAG trial is a multicenter, double blind, randomized clinical trial that will compare two approaches to initiation of warfarin therapy: genotype-guided dosing, the initiation of warfarin therapy based on algorithms using clinical information and genotypes for polymorphisms in CYP2C9 and VKORC1; and clinical-guided dosing, the initiation of warfarin therapy based on algorithms using only clinical information. Results We determine an absolute minimum detectable difference of 5.49% based on an assumed 60% population prevalence of zero or multiple genetic variants in either CYP2C9 or VKORC1 and an assumed 15% relative effectiveness of genotype-guided warfarin initiation for those with zero or multiple genetic variants. Thus we calculate a sample size of 1238 to achieve a power level of 80% for the primary outcome. We show that reasonable departures from these assumptions may decrease statistical power to 65%. Conclusions In a personalized medicine intervention, the minimum detectable difference used in sample size calculations is not a known quantity, but rather an unknown quantity that depends on the genetic makeup of the subjects enrolled. Given the possible sensitivity of sample size and power calculations to these key assumptions, we recommend that they be monitored during the conduct of a personalized medicine intervention. Trial Registration clinicaltrials.gov: NCT00839657
机译:背景技术目前,人们对药物遗传学非常感兴趣:确定调节药物作用的基因的变异,特别强调提高药物安全性和功效。确定这种变化的能力激发了个性化药物疗法的应用,该疗法利用患者的基因组成来确定正确剂量的安全有效药物。为了确定基因型指导的药物治疗是否可以改善患者护理,可以在随机对照试验的框架内评估个性化药物干预措施。这类个性化药物干预的统计设计需要特殊考虑:研究人群中相关等位基因变异的分布;以及药物遗传学干预是否对等位基因变异定义的亚群同样有效。方法通过遗传学澄清最佳抗凝(COAG)试验的统计设计可作为使用每个受试者的基因型信息进行个性化药物干预的示例。 COAG试验是一项多中心,双盲,随机临床试验,将比较两种开始华法林治疗的方法:基因型引导给药,基于使用临床信息和基因型的CYP2C9和VKORC1基因多态性算法的华法林治疗开始;和临床指导的剂量,基于仅使用临床信息的算法启动华法林治疗。结果我们基于假设CYP2C9或VKORC1中60%的零或多种遗传变异的人群患病率以及基因型指导的华法林起始对具有零或多种遗传的人群的相对有效性假设的绝对最小可检测差异为5.49%变体。因此,我们计算出样本量为1238,以达到主要结果的功效水平为80%。我们表明,合理地偏离这些假设可能会使统计功效降低至65%。结论在个性化医学干预中,样本量计算中使用的最小可检测差异不是已知数量,而是取决于所招募受试者的遗传构成的未知数量。考虑到样本量和功效计算可能对这些关键假设敏感,我们建议在进行个性化药物干预时对其进行监控。试用注册临床试验.gov:NCT00839657

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