Centre for Health Economics and Medicines Evaluation, Bangor University, Bangor, UK.
CPT Pharmacometrics Syst Pharmacol. 2021 Jan;10(1):75-83. doi: 10.1002/psp4.12579. Epub 2020 Dec 31.
The Bayesian decision-analytic approach to trial design uses prior distributions for treatment effects, updated with likelihoods for proposed trial data. Prior distributions for treatment effects based on previous trial results risks sample selection bias and difficulties when a proposed trial differs in terms of patient characteristics, medication adherence, or treatment doses and regimens. The aim of this study was to demonstrate the utility of using pharmacometric-based clinical trial simulation (CTS) to generate prior distributions for use in Bayesian decision-theoretic trial design. The methods consisted of four principal stages: a CTS to predict the distribution of treatment response for a range of trial designs; Bayesian updating for a proposed sample size; a pharmacoeconomic model to represent the perspective of a reimbursement authority in which price is contingent on trial outcome; and a model of the pharmaceutical company return on investment linking drug prices to sales revenue. We used a case study of febuxostat versus allopurinol for the treatment of hyperuricemia in patients with gout. Trial design scenarios studied included alternative treatment doses, inclusion criteria, input uncertainty, and sample size. Optimal trial sample sizes varied depending on the uncertainty of model inputs, trial inclusion criteria, and treatment doses. This interdisciplinary framework for trial design and sample size calculation may have value in supporting decisions during later phases of drug development and in identifying costly sources of uncertainty, and thus inform future research and development strategies.
贝叶斯决策分析方法在临床试验设计中使用治疗效果的先验分布,并根据拟议的试验数据的可能性进行更新。基于先前试验结果的治疗效果的先验分布存在样本选择偏差的风险,并且当拟议的试验在患者特征、药物依从性或治疗剂量和方案方面存在差异时,也会存在困难。本研究旨在展示使用基于药代动力学的临床试验模拟 (CTS) 生成用于贝叶斯决策理论临床试验设计的先验分布的实用性。该方法包括四个主要阶段:用于预测一系列临床试验设计的治疗反应分布的 CTS;用于建议的样本量的贝叶斯更新;代表报销机构观点的药物经济学模型,其中价格取决于试验结果;以及将药物价格与销售收入联系起来的制药公司投资回报率模型。我们使用别嘌醇与非布司他治疗痛风患者高尿酸血症的案例研究。研究的试验设计方案包括替代治疗剂量、纳入标准、输入不确定性和样本量。最佳试验样本量取决于模型输入、试验纳入标准和治疗剂量的不确定性。这种跨学科的试验设计和样本量计算框架可能对药物开发后期的决策具有价值,并有助于确定昂贵的不确定性来源,从而为未来的研究和开发策略提供信息。