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A SAS Macro for Covariate-Constrained Randomization of General Cluster-Randomized and Unstratified Designs

机译:SAS宏用于一般聚类随机化和非分层设计的协变量约束随机化

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摘要

have recently stressed the importance to both statistical power and face validity of balancing allocations to study arms on relevant covariates. While several techniques exist (e.g., minimization, pair-matching, stratification), the covariate-constrained randomization (CCR) approach proposed by is favored when clusters can be recruited prior to randomization. >CCRA V1.0, a macro published by , provides a SAS implementation of CCR for a particular subset of possible designs (those with two arms, small numbers of strata and clusters, an equal number of clusters within each stratum, and constraints that can be expressed as absolute mean differences between arms). This paper presents a more comprehensive macro, >CCR, that is applicable across a wider variety of designs and provides statistics describing the range of possible allocations meeting the constraints in addition to performing the actual random assignment.
机译:最近强调了对统计功效和面对平衡分配以研究相关协变量的各个方面的有效性的重要性。尽管存在几种技术(例如最小化,配对匹配,分层),但是当可以在随机分组之前招募聚类时,建议使用协变量约束随机化(CCR)方法。 > CCRA V1.0(由发行的宏)为可能的设计的特定子集提供了CCR的SAS实现(那些子集有两个分支,少量的地层和簇,每个簇中的簇数相等层次和约束条件,可以表示为两臂之间的绝对均值差)。本文介绍了一个更全面的宏> CCR ,该宏适用于更广泛的设计,并提供了统计信息,描述了除了执行实际的随机分配外,满足约束条件的可能分配范围。

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