Statistical comparison of random allocation methods in cancer clinical trials

Atsushi Hagino , Chikuma Hamada , Isao Yoshimura , Yasuo Ohashi , Junichi Sakamoto , Hiroaki Nakazato
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引用次数: 49

Abstract

The selection of a trial design is an important issue in the planning of clinical trials. One of the most important considerations in trial design is the method of treatment allocation and appropriate analysis plan corresponding to the design.

In this article, we conducted computer simulations using the actual data from 2158 rectal cancer patients enrolled in the surgery-alone group from seven randomized controlled trials in Japan to compare the performance of allocation methods, simple randomization, stratified randomization and minimization in relatively small-scale trials (total number of two groups are 50, 100, 150 or 200 patients). The degree of imbalance in prognostic factors between groups was evaluated by changing the allocation probability of minimization from 1.00 to 0.70 by 0.05.

The simulation demonstrated that minimization provides the best performance to ensure balance in the number of patients between groups and prognostic factors. Moreover, to achieve the 1 percentile for the p-value of chi-square test around 0.50 with respect to balance in prognostic factors, the allocation probability of minimization was required to be set to 0.95 for 50, 0.80 for 100, 0.75 for 150 and 0.70 for 200 patients. When the sample size was larger, sufficient balance could be achieved even if reducing allocation probability. The simulation using actual data demonstrated that unadjusted tests for the allocation factors resulted in conservative type I errors when dynamic allocation, such as minimization, was used. In contrast, adjusted tests for allocation factors as covariates improved type I errors closer to the nominal significance level and they provided slightly higher power. In conclusion, both the statistical and clinical validity of minimization was demonstrated in our study.

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癌症临床试验随机分配方法的统计学比较
试验设计的选择是临床试验计划中的一个重要问题。试验设计中最重要的考虑因素之一是处理分配的方法和与设计相对应的适当的分析计划。在本文中,我们利用日本7项随机对照试验中2158例入组单纯手术组的直肠癌患者的实际数据进行计算机模拟,比较分配方法、简单随机化、分层随机化和最小化在相对小规模试验中的表现(两组总人数分别为50、100、150和200例)。通过将最小分配概率从1.00改变为0.70,差0.05来评价组间预后因素的不平衡程度。仿真结果表明,最小化算法提供了最佳性能,以确保组间患者数量和预后因素的平衡。此外,为了使卡方检验的p值在0.50左右达到1个百分位,对于预后因素的平衡,需要将最小分配概率设置为50例0.95,100例0.80,150例0.75,200例0.70。当样本量较大时,即使降低分配概率也能达到充分的平衡。使用实际数据的模拟表明,当使用动态分配(如最小化)时,未调整分配因素的测试导致保守的I型误差。相比之下,将分配因素作为协变量的调整检验使I型误差更接近名义显著性水平,并提供略高的功率。总之,我们的研究证明了最小化的统计和临床有效性。
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