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A Predictive Probability Interim Design for Phase II Clinical Trials with Continuous Endpoints

机译:具有连续终点的II期临床试验的预测概率中期设计

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摘要

Phase II clinical trials aim to potentially screen out ineffective and identify effective therapies to move forward to randomized phase III trials. Single-arm studies remain the most utilized design in phase II oncology trials, especially in scenarios where a randomized design is simply not practical. Due to concerns regarding excessive toxicity or ineffective new treatment strategies, interim analyses are typically incorporated in the trial, and the choice of statistical methods mainly depends on the type of primary endpoints. For oncology trials, the most common primary objectives in phase II trials include tumor response rate (binary endpoint) and progression disease-free survival (time-to-event endpoint). Interim strategies are well-developed for both endpoints in single-arm phase II trials.;The advent of molecular targeted therapies, often with lower toxicity profiles from traditional cytotoxic treatments, has shifted the drug development paradigm into establishing evidence of biological activity, target modulation and pharmacodynamics effects of these therapies in early phase trials. As such, these trials need to address simultaneous evaluation of safety as well as proof-of-concept of biological marker activity or changes in continuous tumor size instead of binary response rates.;In this dissertation, we extend a predictive probability design for binary outcomes in the single-arm clinical trial setting and develop two interim designs for continuous endpoints, such as continuous tumor shrinkage or change in a biomarker over time. The two-stage design mainly focuses on the futility stopping strategies, while it also has the capacity of early stopping for efficacy. Both optimal and minimax designs are presented for this two-stage design. The multi-stage design has the flexibility of stopping the trial early either due to futility or efficacy. Due to the intense computation and searching strategy we adopt, only the minimax design is presented for this multi-stage design. The multi-stage design allows for up to 40 interim looks with continuous monitoring possible for large and moderate effect sizes, requiring an overall sample size less than 40. The stopping boundaries for both designs are based on predictive probability with normal likelihood and its conjugated prior distributions, while the design itself satisfies the pre-specified type I and type II error rate constraints. From simulation results, when compared with binary endpoints, both designs well preserve statistical properties across different effect sizes with reduced sample size. We also develop an R package, PPSC, and detail it in chapter four, so that both designs can be freely accessible for use in future phase II clinical trials with the collaborative efforts of biostatisticians. Clinical investigators and biostatisticians have the flexibility to specify the parameters from the hypothesis testing framework, searching ranges of the boundaries for predictive probabilities, the number of interim looks involved and if the continuous monitoring is preferred and so on.
机译:II期临床试验旨在潜在地筛选无效的并确定有效的疗法,以推进到随机III期试验。单臂研究仍然是II期肿瘤学研究中最常用的设计,尤其是在随机设计根本不可行的情况下。由于担心过度毒性或无效的新治疗策略,因此通常在试验中纳入中期分析,统计方法的选择主要取决于主要终点的类型。对于肿瘤学试验,II期试验中最常见的主要目标包括肿瘤缓解率(二进制终点)和无病进展生存(事件发生时间终点)。在单臂II期临床试验中,针对这两个终点的中期策略均得到了完善的开发;分子靶向疗法的出现(通常具有比传统细胞毒性治疗更低的毒性)已将药物开发范例转变为建立生物学活性,靶点调节的证据这些药物在早期试验中的药效学作用。因此,这些试验需要解决同时评估安全性以及生物标志物活性或连续肿瘤大小变化的概念证明,而不是二元反应率的问题。在单臂临床试验中进行研究,并为连续的终点开发两种临时设计,例如连续的肿瘤缩小或生物标志物随时间变化。两阶段设计主要关注无效停止策略,同时也具有尽早停止有效性的能力。针对此两阶段设计,提供了最佳设计和minimax设计。多阶段设计具有灵活性,可以由于徒劳或有效而提前终止试验。由于我们采用了密集的计算和搜索策略,因此针对此多阶段设计仅展示了minimax设计。多阶段设计允许多达40个临时外观,并且可以连续监控大型和中型效果大小,要求总体样本大小小于40。两种设计的制止边界均基于具有正常似然的预测概率及其共轭先验设计本身满足预先指定的I型和II型错误率约束。从仿真结果来看,与二进制端点进行比较时,两种设计都可以在减小样本大小的情况下很好地保留不同效果大小的统计属性。我们还开发了一个R包PPSC,并在第四章中对其进行了详细说明,以便在生物统计学家的共同努力下,可以自由访问这两种设计,以用于将来的II期临床试验。临床研究人员和生物统计学家可以灵活地从假设检验框架中指定参数,在边界范围内搜索预测概率,涉及的临时检查次数以及是否需要连续监测等。

著录项

  • 作者

    Liu, Meng.;

  • 作者单位

    University of Kentucky.;

  • 授予单位 University of Kentucky.;
  • 学科 Biostatistics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:52

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