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Bivariate Generalization of the Time-to-Event Conditional Reassessment Method with a Novel Adaptive Randomization Method

机译:事件时间条件重新评估方法的双变量泛化和新型自适应随机方法

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摘要

Phase I clinical trials in oncology aim to evaluate the toxicity risk of new therapies and identify a safe but also effective dose for future studies. Traditional Phase I trials of chemotherapies focus on estimating the maximum tolerated dose (MTD). The rationale for finding the MTD is that better therapeutic effects are expected at higher dose levels as long as the risk of severe toxicity is acceptable. With the advent of a new generation of cancer treatments such as the molecularly targeted agents (MTAs) and immunotherapies, higher dose levels no longer guarantee increased therapeutic effects, and the focus has shifted to estimating the optimal biological dose (OBD). The OBD is a dose level with the highest biologic activity with acceptable toxicity. The search for OBD requires joint evaluation of toxicity and efficacy. Although several seamleass phase I/II designs have been published in recent years, there is not a consensus regarding an optimal design and further improvement is needed for some designs to be widely used in practice.;In this dissertation, we propose a modification to an existing seamless phase I/II design by Wages and Tait (2015) for locating the OBD based on binary outcomes, and extend it to time to event (TITE) endpoints. While the original design showed promising results, we hypothesized that performance could be improved by replacing the original adaptive randomization stage with a different randomization strategy. We proposed to calculate dose assigning probabilities by averaging all candidate models that fit the observed data reasonably well, as opposed to the original design that based all calculations on one best-fit model. We proposed three different strategies to select and average among candidate models, and simulations are used to compare the proposed strategies to the original design. Under most scenarios, one of the proposed strategies allocates more patients to the optimal dose while improving accuracy in selecting the final optimal dose without increasing the overall risk of toxicity.;We further extend this design to TITE endpoints to address a potential issue of delayed outcomes. The original design is most appropriate when both toxicity and efficacy outcomes can be observed shortly after the treatment, but delayed outcomes are common, especially for efficacy endpoints. The motivating example for this TITE extension is a Phase I/II study evaluating optimal dosing of all-trans retinoic acid (ATRA) in combination with a fixed dose of daratumumab in the treatment of relapsed or refractory multiple myeloma. The toxicity endpoint is observed in one cycle of therapy (i.e., 4 weeks) while the efficacy endpoint is assessed after 8 weeks of treatment. The difference in endpoint observation windows causes logistical challenges in conducting the trial, since it is not acceptable in practice to wait until both outcomes for each participant have been observed before sequentially assigning the dose of a newly eligible participant. The result would be a delay in treatment for patients and undesirably long trial duration. To address this issue, we generalize the time-to-event continual reassessment method (TITE-CRM) to bivariate outcomes with potentially non-monotonic dose-efficacy relationship. Simulation studies show that the proposed TITE design maintains similar probability in selecting the correct OBD comparing to the binary original design, but the number of patients treated at the OBD decreases as the rate of enrollment increases.;We also develop an R package for the proposed methods and document the R functions used in this research. The functions in this R package assist implementation of the proposed randomization strategy and design. The input and output format of these functions follow similar formatting of existing R packages such as "dfcrm" or "pocrm" to allow direct comparison of results. Input parameters include efficacy skeletons, prior distribution of any model parameters, escalation restrictions, design method, and observed data. Output includes recommended dose level for the next patient, MTD, estimated model parameters, and estimated probabilities of each set of skeletons. Simulation functions are included in this R package so that the proposed methods can be used to design a trial based on certain parameters and assess performance. Parameters of these scenarios include total sample size, true dose-toxicity relationship, true dose-efficacy relationship, patient recruit rate, delay in toxicity and efficacy responses.
机译:肿瘤学的I期临床试验旨在评估新疗法的毒性风险,并确定安全但有效的剂量以用于将来的研究。传统的化学疗法I期试验着重于估计最大耐受剂量(MTD)。找到MTD的理由是,只要可以接受严重毒性的风险,就可以在更高剂量下获得更好的治疗效果。随着新一代癌症治疗方法的出现,例如分子靶向药物(MTA)和免疫疗法,更高的剂量水平已不再保证增加的治疗效果,并且重点已转移到估计最佳生物剂量(OBD)上。 OBD是具有最高生物活性和可接受毒性的剂量水平。寻找OBD需要联合评估毒性和功效。尽管近年来已经发布了几种无缝钢管的I / II阶段设计,但关于最佳设计尚无共识,需要对某些设计进行进一步改进以使其在实践中得到广泛应用。 Wages and Tait(2015)现有的无缝I / II阶段设计,用于根据二进制结果定位OBD,并将其扩展到事件发生时间(TITE)端点。虽然原始设计显示出令人鼓舞的结果,但我们假设可以通过使用不同的随机化策略代替原始的自适应随机化阶段来提高性能。我们提议通过平均合理地拟合观察数据的所有候选模型来计算剂量分配概率,这与基于所有计算基于一个最佳拟合模型的原始设计相反。我们提出了三种不同的策略来选择和平均候选模型,并通过仿真将提出的策略与原始设计进行比较。在大多数情况下,其中一种建议的策略是将更多患者分配到最佳剂量,同时提高选择最终最佳剂量的准确性,而又不增加总体毒性风险。 。当在治疗后不久即可观察到毒性和功效结局时,最原始的设计是最合适的,但延迟结局是普遍的,尤其是对于功效终点而言。这种TITE扩展的动机示例是I / II期研究,评估全反式视黄酸(ATRA)与固定剂量的daratumumab联合治疗复发或难治性多发性骨髓瘤的最佳剂量。在一个治疗周期(即4周)中观察到毒性终点,而在治疗8周后评估功效终点。终点观察窗的差异在进行试验时会带来后勤方面的挑战,因为在实践中,要等到观察到每个参与者的两个结果之后再依次分配新的合格参与者的剂量,这在实践中是不可接受的。结果将延误患者的治疗,并延长试验时间。为了解决这个问题,我们将事件持续时间重新评估方法(TITE-CRM)推广到具有潜在非单调剂量-功效关系的双变量结果。仿真研究表明,与二元原始设计相比,拟议的TITE设计在选择正确的OBD方面保持相似的概率,但是随着入学率的提高,在OBD接受治疗的患者人数会减少。方法并记录本研究中使用的R函数。此R包中的功能有助于实施建议的随机策略和设计。这些函数的输入和输出格式遵循现有R包的类似格式,例如“ dfcrm”或“ pocrm”,以允许直接比较结果。输入参数包括功效框架,任何模型参数的先验分布,升级限制,设计方法和观察到的数据。输出包括下一位患者的推荐剂量水平,MTD,估计的模型参数以及每组骨骼的估计概率。该R软件包中包含仿真功能,因此可以将所提出的方法用于基于某些参数设计试验并评估性能。这些方案的参数包括总样本量,真实剂量-毒性关系,真实剂量-功效关系,患者招募率,毒性反应延迟和功效反应。

著录项

  • 作者

    Yan, Donglin.;

  • 作者单位

    University of Kentucky.;

  • 授予单位 University of Kentucky.;
  • 学科 Biostatistics.;Statistics.;Oncology.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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