临床试验安全监测的统计规则。

IF 2.2 3区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Clinical Trials Pub Date : 2024-04-01 Epub Date: 2023-10-25 DOI:10.1177/17407745231203391
Michael J Martens, Brent R Logan
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引用次数: 0

摘要

背景/目的:保护患者安全是进行临床试验的重要组成部分。这些研究实施了严格的安全性监测计划,以防范研究疗法的过度毒性风险。它们通常包括协议规定的停止规则,规定过多的安全事件将导致研究停止。统计方法有助于构建规则,保护患者免受过度毒性的影响,同时将虚假安全信号的可能性保持在较低水平。为此,已经提出了几种统计技术,但目前的文献缺乏严格的比较,无法确定哪种方法最适合给定的试验设计。本文的目的是(1)描述临床试验中重复监测安全性事件的一般框架;(2) 调查制定安全停车标准的常用统计技术;以及(3)为调查人员提供用于构建和评估这些停止规则的软件工具。方法:针对II期和III期试验中可能出现的常见情况,研究并比较Pocock和O'Brien-Fleming检验、贝叶斯贝塔二项式模型和序列概率比检验(SPRT)产生的停止规则的性质和操作特征。我们开发了R包“停止规则”,用于从这些方法中构建和评估停止规则。通过重新设计BMT CTN 0601(在Clinicaltrials.gov注册为NCT00745420)的停止规则来证明其用途,这是一项II期单臂临床试验,评估了接受骨髓移植治疗的儿童镰状细胞病患者的结果。结果:在试验早期具有积极停止标准的方法,如Pocock检验和具有弱先验的贝叶斯贝塔二项模型,在后期具有允许停止标准。这导致了一种权衡,即具有积极早期监测的规则通常比具有更保守早期停止的规则具有更少的预期毒性,但也具有更低的功效,例如O-Brien-Fleming检验和具有强先验的Beta二项式模型。改进的SPRT方法对替代毒性率的选择是敏感的。最大化的SPRT通常比其他方法具有更高数量的预期毒性和/或更差的功率。结论:由于目标是最大限度地减少暴露于不安全治疗并经历不安全治疗毒性的患者数量,我们建议使用Pocock或Beta二项式,即构建安全停止规则的弱先验方法。在设计阶段,应在各种可能的毒性率下评估候选规则的操作特性,以指导特定试验的规则选择;我们的R包有助于进行评估。
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Statistical rules for safety monitoring in clinical trials.

Background/aims: Protecting patient safety is an essential component of the conduct of clinical trials. Rigorous safety monitoring schemes are implemented for these studies to guard against excess toxicity risk from study therapies. They often include protocol-specified stopping rules dictating that an excessive number of safety events will trigger a halt of the study. Statistical methods are useful for constructing rules that protect patients from exposure to excessive toxicity while also maintaining the chance of a false safety signal at a low level. Several statistical techniques have been proposed for this purpose, but the current literature lacks a rigorous comparison to determine which method may be best suitable for a given trial design. The aims of this article are (1) to describe a general framework for repeated monitoring of safety events in clinical trials; (2) to survey common statistical techniques for creating safety stopping criteria; and (3) to provide investigators with a software tool for constructing and assessing these stopping rules.

Methods: The properties and operating characteristics of stopping rules produced by Pocock and O'Brien-Fleming tests, Bayesian Beta-Binomial models, and sequential probability ratio tests (SPRTs) are studied and compared for common scenarios that may arise in phase II and III trials. We developed the R package "stoppingrule" for constructing and evaluating stopping rules from these methods. Its usage is demonstrated through a redesign of a stopping rule for BMT CTN 0601 (registered at Clinicaltrials.gov as NCT00745420), a phase II, single-arm clinical trial that evaluated outcomes in pediatric sickle cell disease patients treated by bone marrow transplant.

Results: Methods with aggressive stopping criteria early in the trial, such as the Pocock test and Bayesian Beta-Binomial models with weak priors, have permissive stopping criteria at late stages. This results in a trade-off where rules with aggressive early monitoring generally will have a smaller number of expected toxicities but also lower power than rules with more conservative early stopping, such as the O-Brien-Fleming test and Beta-Binomial models with strong priors. The modified SPRT method is sensitive to the choice of alternative toxicity rate. The maximized SPRT generally has a higher number of expected toxicities and/or worse power than other methods.

Conclusions: Because the goal is to minimize the number of patients exposed to and experiencing toxicities from an unsafe therapy, we recommend using the Pocock or Beta-Binomial, weak prior methods for constructing safety stopping rules. At the design stage, the operating characteristics of candidate rules should be evaluated under various possible toxicity rates in order to guide the choice of rule(s) for a given trial; our R package facilitates this evaluation.

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来源期刊
Clinical Trials
Clinical Trials 医学-医学:研究与实验
CiteScore
4.10
自引率
3.70%
发文量
82
审稿时长
6-12 weeks
期刊介绍: Clinical Trials is dedicated to advancing knowledge on the design and conduct of clinical trials related research methodologies. Covering the design, conduct, analysis, synthesis and evaluation of key methodologies, the journal remains on the cusp of the latest topics, including ethics, regulation and policy impact.
期刊最新文献
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