MRC Biostatistics Unit, School of Clinical Medicine, University of Cambridge, Cambridge, UK; Cardiovascular Epidemiology Unit, Department of Public Health and Primary Care, University of Cambridge, Cambridge, UK.
Cardiovascular Epidemiology Unit, Department of Public Health and Primary Care, University of Cambridge, Cambridge, UK.
Am J Hum Genet. 2023 Feb 2;110(2):195-214. doi: 10.1016/j.ajhg.2022.12.017.
Evidence on the validity of drug targets from randomized trials is reliable but typically expensive and slow to obtain. In contrast, evidence from conventional observational epidemiological studies is less reliable because of the potential for bias from confounding and reverse causation. Mendelian randomization is a quasi-experimental approach analogous to a randomized trial that exploits naturally occurring randomization in the transmission of genetic variants. In Mendelian randomization, genetic variants that can be regarded as proxies for an intervention on the proposed drug target are leveraged as instrumental variables to investigate potential effects on biomarkers and disease outcomes in large-scale observational datasets. This approach can be implemented rapidly for a range of drug targets to provide evidence on their effects and thus inform on their priority for further investigation. In this review, we present statistical methods and their applications to showcase the diverse opportunities for applying Mendelian randomization in guiding clinical development efforts, thus enabling interventions to target the right mechanism in the right population group at the right time. These methods can inform investigators on the mechanisms underlying drug effects, their related biomarkers, implications for the timing of interventions, and the population subgroups that stand to gain the most benefit. Most methods can be implemented with publicly available data on summarized genetic associations with traits and diseases, meaning that the only major limitations to their usage are the availability of appropriately powered studies for the exposure and outcome and the existence of a suitable genetic proxy for the proposed intervention.
来自随机对照试验的药物靶点有效性证据是可靠的,但通常成本高昂且获取速度较慢。相比之下,来自传统观察性流行病学研究的证据可靠性较低,因为存在混杂和反向因果关系导致的偏倚风险。孟德尔随机化是一种准实验方法,类似于随机试验,利用遗传变异传递中的自然随机化。在孟德尔随机化中,可以将可被视为对拟议药物靶点干预的代理的遗传变异作为工具变量,用于在大规模观察性数据集调查对生物标志物和疾病结局的潜在影响。该方法可以快速针对一系列药物靶点实施,以提供其效果的证据,从而为进一步研究的优先级提供信息。在这篇综述中,我们介绍了统计方法及其应用,以展示孟德尔随机化在指导临床开发工作中的多种机会,从而能够在正确的时间将干预措施针对正确的机制和正确的人群。这些方法可以为研究人员提供有关药物作用机制、相关生物标志物、干预时机的影响以及最有可能受益的人群亚组的信息。大多数方法可以使用与性状和疾病的汇总遗传关联相关的公开可用数据来实施,这意味着它们使用的主要限制是暴露和结局的适当加权研究的可用性,以及拟议干预措施的合适遗传代理的存在。