Optimal Enrollment in Late-Stage New Drug Development with Learning of Drug's Efficacy for Group-Sequential Clinical Trials

Zhili Tian, Gordon B. Hazen, Hong Li
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Abstract

Problem definition: The cost for developing a new drug ranged from $1 billion to more than $2 billion between 2010 and 2019. In addition to high development costs, the efficacy of the candidate drug, patient enrollment, the market exclusivity period (MEP), and the planning horizon are uncertain. Moreover, slow enrollment leads to increased costs, canceled clinical trials, and lost potential revenue. Many firms, hoping to detect efficacy versus futility of the candidate drug early to save development costs, plan interim analyses of patient-response data in their clinical trials. Academic/practical relevance: The problem for optimizing patient-enrollment rates has an uncertain planning horizon. We developed a continuous-time dynamic programming (DP) model with learning of a drug’s efficacy and MEP to assist firms in developing optimal enrollment policies in their clinical trials. We also established the optimality equation for this DP model. Through a clinical trial for testing a cancer drug developed by a leading pharmaceutical firm, we demonstrate that our DP model can help firms effectively manage their trials with a sizable profit gain (as large as $270 million per drug). Firms can also use our model in simulation to select their trial design parameters (e.g., the sample sizes of interim analyses). Methodology: We update a drug’s efficacy by Bayes’ rules. Using the stochastic order and the likelihood-ratio order of distribution functions, we prove the monotonic properties of the value function and an optimal policy. Results: We established that the value of the drug-development project increases as the average response from patients using the candidate drug increases. For drugs having low annual revenue or a strong market brand or treating rare diseases, we also established that the optimal enrollment policy is monotonic in the average patient response. Moreover, the optimal enrollment rate increases as the variance of the MEP decreases. Managerial implications: Firms can use the properties of the value function to select late-stage clinical trials for their drug-development project portfolios. Firms can also use our optimal policy to guide patient recruitment in their clinical trials considering competition from other drugs in the marketplace. Supplemental Material: The online appendix is available at https://doi.org/10.1287/msom.2022.1162 .
群体序贯临床试验中药物疗效学习的新药开发后期最佳入组
问题定义:2010年至2019年间,开发一种新药的成本从10亿美元到20多亿美元不等。除了高昂的开发成本外,候选药物的疗效、患者入组、市场独占期(MEP)和规划范围都不确定。此外,注册缓慢导致成本增加,临床试验取消,潜在收入损失。许多公司希望尽早发现候选药物的有效性和无效性,以节省开发成本,计划在临床试验中对患者反应数据进行中期分析。学术/实践相关性:优化患者入组率的问题具有不确定的规划范围。我们开发了一个具有药物疗效和MEP学习的连续时间动态规划(DP)模型,以帮助公司在其临床试验中制定最佳入组政策。并建立了该模型的最优性方程。通过对一家领先制药公司开发的癌症药物的临床试验,我们证明了我们的DP模型可以帮助公司有效地管理他们的试验,并获得可观的利润(每种药物高达2.7亿美元)。企业也可以在模拟中使用我们的模型来选择他们的试验设计参数(例如,中期分析的样本量)。方法:我们通过贝叶斯规则更新药物的疗效。利用分布函数的随机阶和似然比阶,证明了值函数的单调性和最优策略。结果:我们确定了药物开发项目的价值随着使用候选药物的患者平均反应的增加而增加。对于年收入较低或市场品牌较强或治疗罕见疾病的药物,我们也确定了最优入组政策是患者平均反应单调。最优入学率随着MEP方差的减小而增大。管理意义:公司可以使用价值函数的属性来为他们的药物开发项目组合选择后期临床试验。考虑到市场上其他药物的竞争,公司也可以使用我们的最优政策来指导临床试验中的患者招募。补充材料:在线附录可在https://doi.org/10.1287/msom.2022.1162上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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