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一种用于II期癌症临床试验的预测概率设计。

A predictive probability design for phase II cancer clinical trials.

作者信息

Lee J Jack, Liu Diane D

机构信息

Department of Biostatistics, University of Texas M.D. Anderson Cancer Center, Houston, Texas 77030, USA.

出版信息

Clin Trials. 2008;5(2):93-106. doi: 10.1177/1740774508089279.

Abstract

BACKGROUND

Two- or three-stage designs are commonly used in phase II cancer clinical trials. These designs possess good frequentist properties and allow early termination of the trial when the interim data indicate that the experimental regimen is inefficacious. The rigid study design, however, can be difficult to follow exactly because the response has to be evaluated at prespecified fixed number of patients.

PURPOSE

Our goal is to develop an efficient and flexible design that possesses desirable statistical properties.

METHODS

A flexible design based on Bayesian predictive probability and the minimax criterion is constructed. A three-dimensional search algorithm is implemented to determine the design parameters.

RESULTS

The new design controls type I and type II error rates, and allows continuous monitoring of the trial outcome. Consequently, under the null hypothesis when the experimental treatment is not efficacious, the design is more efficient in stopping the trial earlier, which results in a smaller expected sample size. Exact computation and simulation studies demonstrate that the predictive probability design possesses good operating characteristics.

LIMITATIONS

The predictive probability design is more computationally intensive than two- or three-stage designs. Similar to all designs with early stopping due to futility, the resulting estimate of treatment efficacy may be biased.

CONCLUSIONS

The predictive probability design is efficient and remains robust in controlling type I and type II error rates when the trial conduct deviates from the original design. It is more adaptable than traditional multi-stage designs in evaluating the study outcome, hence, it is easier to implement. S-PLUS/R programs are provided to assist the study design.

摘要

背景

两阶段或三阶段设计常用于癌症II期临床试验。这些设计具有良好的频率论性质,并允许在中期数据表明实验方案无效时提前终止试验。然而,由于必须在预先指定的固定患者数量时评估反应,严格的研究设计可能难以严格遵循。

目的

我们的目标是开发一种具有理想统计性质的高效且灵活的设计。

方法

构建基于贝叶斯预测概率和极小极大准则的灵活设计。实施三维搜索算法以确定设计参数。

结果

新设计控制I型和II型错误率,并允许持续监测试验结果。因此,在原假设下,当实验治疗无效时,该设计在更早终止试验方面更有效,从而导致预期样本量更小。精确计算和模拟研究表明,预测概率设计具有良好的操作特性。

局限性

预测概率设计比两阶段或三阶段设计计算量更大。与所有因无效性而提前终止的设计类似,由此产生的治疗效果估计可能存在偏差。

结论

预测概率设计在试验实施偏离原始设计时高效且在控制I型和II型错误率方面保持稳健。在评估研究结果时,它比传统的多阶段设计更具适应性,因此更易于实施。提供了S-PLUS/R程序以协助研究设计。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/60f9/5626665/84e0a42e6815/nihms902173f1.jpg

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