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Randomization with a posteriori constraints: description and properties.

机译:具有后验约束的随机化:描述和属性。

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摘要

The use of randomization for assigning patients to treatment groups in clinical trials is firmly acknowledged as providing the best quality results. Two standard methods are used in order to achieve well-balanced groups with respect to prognostic factors (i.e. factors influencing the disease outcome): stratification and minimization. Stratification is recommended when the number of strata is not too high--otherwise, minimization is preferred. However, minimization may compromise blinding (since the search for balance is performed a priori) and, furthermore, use of the technique has been questioned by the European Agency for the Evaluation of Medicinal Products. We have developed a new procedure for adaptive randomization, which we have named 'randomization with a posteriori constraints'. By using a search for balance a posteriori, this procedure ensures that patient groups are similar with respect to prognostic factors while being less vulnerable to selection bias. The aim of this work was to describe the new method and to compare it (using simulations) with stratification and minimization. In the case of trials with few prognostic factors, the recourse to minimization or 'randomization with a posteriori constraints' does not appear to be useful. In such a context, stratification has suitable properties and its simplicity of implementation encourages its use. However, when the number of prognostic factors is higher, 'randomization with a posteriori constraints' is less predictable than minimization and the chance of imbalance is lower than for stratification. In conclusion, 'randomization with a posteriori constraints' with an adequate threshold seems to be a good compromise between minimization and stratification.
机译:在临床试验中使用随机分组将患者分配到治疗组已得到公认,可提供最佳质量的结果。为了达到关于预后因素(即影响疾病结果的因素)的良好平衡,使用了两种标准方法:分层和最小化。当层数不太高时,建议分层。否则,首选最小化。但是,最小化可能会损害盲目性(因为先要进行平衡搜索),而且,该技术的使用已受到欧洲药品评估机构的质疑。我们已经开发了一种新的自适应随机过程,我们将其命名为“具​​有后验约束的随机化”。通过使用后验平衡法,该程序可确保患者组在预后因素方面相似,同时不易受到选择偏见的影响。这项工作的目的是描述新方法,并将其与分层和最小化进行比较(使用模拟)。对于具有较少预后因素的试验,采用最小化或“具有后验约束的随机化”方法似乎无济于事。在这种情况下,分层具有合适的属性,其实现的简便性鼓励其使用。但是,当预后因素的数量较多时,“具有后验约束的随机化”比最小化的可预测性要低,并且失衡的机会也比分层少。总之,适当的阈值的“具有后验约束的随机化”似乎是最小化和分层之间的良好折衷。

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