Shi Yaping, Graves John A, Garbett Shawn P, Zhou Zilu, Marathi Ramya, Wang Xiaoming, Harrell Frank E, Lasko Thomas A, Denny Joshua C, Roden Dan M, Peterson Josh F, Schildcrout Jonathan S
Department of Biostatistics, Vanderbilt University Medical Center, Nashville, Tennessee.
Department of Health Policy, Vanderbilt University Medical Center, Nashville, Tennessee.
MDM Policy Pract. 2019 Aug 17;4(2):2381468319864337. doi: 10.1177/2381468319864337. eCollection 2019 Jul-Dec.
We discuss a decision-theoretic approach to building a panel-based, preemptive genotyping program. The method is based on findings that a large percentage of patients are prescribed medications that are known to have pharmacogenetic associations, and over time, a substantial proportion are prescribed additional such medication. Preemptive genotyping facilitates genotype-guided therapy at the time medications are prescribed; panel-based testing allows providers to reuse previously collected genetic data when a new indication arises. Because it is cost-prohibitive to conduct panel-based genotyping on all patients, we describe a three-step approach to identify patients with the highest anticipated benefit. First, we construct prediction models to estimate the risk of being prescribed one of the target medications using readily available clinical data. Second, we use literature-based estimates of adverse event rates, variant allele frequencies, secular death rates, and costs to construct a discrete event simulation that estimates the expected benefit of having an individual's genetic data in the electronic health record after an indication has occurred. Finally, we combine medication prescription risk with expected benefit of genotyping once a medication is indicated to calculate the expected benefit of preemptive genotyping. For each patient-clinic visit, we calculate this expected benefit across a range of medications and select patients with the highest expected benefit overall. We build a proof of concept implementation using a cohort of patients from a single academic medical center observed from July 2010 through December 2012. We then apply the results of our modeling strategy to show the extent to which we can improve clinical and economic outcomes in a cohort observed from January 2013 through December 2015.
我们讨论了一种基于决策理论的方法,用于构建基于面板的抢先基因分型程序。该方法基于以下发现:很大一部分患者被开具了已知具有药物遗传学关联的药物,并且随着时间的推移,相当一部分患者又被开具了其他此类药物。抢先基因分型有助于在开具药物时进行基因型指导的治疗;基于面板的检测使医疗服务提供者在出现新适应症时能够重复使用先前收集的基因数据。由于对所有患者进行基于面板的基因分型成本过高,我们描述了一种三步法来识别预期受益最高的患者。首先,我们构建预测模型,使用现成的临床数据来估计被开具目标药物之一的风险。其次,我们利用基于文献的不良事件发生率、变异等位基因频率、长期死亡率和成本估计值,构建一个离散事件模拟,以估计在出现适应症后,个人基因数据存在于电子健康记录中的预期益处。最后,我们将药物处方风险与药物被开具后基因分型的预期益处相结合,以计算抢先基因分型的预期益处。对于每次患者就诊,我们计算一系列药物的这种预期益处,并选择总体预期益处最高的患者。我们使用2010年7月至2012年12月观察到的来自单一学术医疗中心的一组患者构建了一个概念验证实施方案。然后,我们应用建模策略的结果,以展示我们在2013年1月至2015年12月观察到的一组患者中能够在多大程度上改善临床和经济结果。