Suppr超能文献

分配至临床试验的最小化方法。综述

The method of minimization for allocation to clinical trials. a review.

作者信息

Scott Neil W, McPherson Gladys C, Ramsay Craig R, Campbell Marion K

机构信息

Department of Public Health, University of Aberdeen, Aberdeen, UK.

出版信息

Control Clin Trials. 2002 Dec;23(6):662-74. doi: 10.1016/s0197-2456(02)00242-8.

Abstract

Minimization is a largely nonrandom method of treatment allocation for clinical trials. We conducted a systematic literature search to determine its advantages and disadvantages compared with other allocation methods. Minimization was originally proposed by Taves and by Pocock and Simon. The latter paper introduces a family of allocation methods of which Taves' method is the simplest example. Minimization aims to ensure treatment arms are balanced with respect to predefined patient factors as well as for the number of patients in each group. Further extensions of the method have also been proposed by other authors. Simulation studies show that minimization provides better balanced treatment groups when compared with restricted or unrestricted randomization and that it can incorporate more prognostic factors than stratified randomization methods such as permuted blocks within strata. Some more computationally complex methods may give an even better performance. Concerns over the use of minimization have centered on the fact that treatment assignments may be predicted with certainty in some situations and on the implications for the analysis methods used. It has been suggested that adjustment should always be made for minimization factors when analyzing trials where minimization is the allocation method used. The use of minimization may sometimes result in added organizational complexity compared with other methods. Minimization has been recommended by many commentators for use in clinical trials. Despite this it is still rarely used in practice. From the evidence presented in this review, we believe minimization to be a highly effective allocation method and recommend its wider adoption in the conduct of randomized controlled trials.

摘要

最小化法是一种主要用于临床试验治疗分配的非随机方法。我们进行了一项系统的文献检索,以确定其与其他分配方法相比的优缺点。最小化法最初由塔夫斯以及波科克和西蒙提出。后者的论文介绍了一系列分配方法,其中塔夫斯的方法是最简单的例子。最小化法旨在确保治疗组在预定义的患者因素以及每组患者数量方面保持平衡。其他作者也提出了该方法的进一步扩展。模拟研究表明,与受限或非受限随机化相比,最小化法能提供更平衡的治疗组,并且与分层随机化方法(如层内排列块)相比,它可以纳入更多的预后因素。一些计算更复杂的方法可能会有更好的表现。对最小化法使用的担忧主要集中在某些情况下治疗分配可能被确切预测这一事实以及对所使用分析方法的影响上。有人建议,在分析采用最小化法作为分配方法的试验时,应始终对最小化因素进行调整。与其他方法相比,最小化法的使用有时可能会导致额外的组织复杂性。许多评论者推荐在临床试验中使用最小化法。尽管如此,它在实践中仍然很少被使用。根据本综述中提供的证据,我们认为最小化法是一种非常有效的分配方法,并建议在随机对照试验的实施中更广泛地采用它。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验