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Sample size calculation in multi-centre clinical trials

机译:多中心临床试验中的样本量计算

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Multi-centre randomized controlled clinical trials play an important role in modern evidence-based medicine. Advantages of collecting data from more than one site are numerous, including accelerated recruitment and increased generalisability of results. Mixed models can be applied to account for potential clustering in the data, in particular when many small centres contribute patients to the study. Previously proposed methods on sample size calculation for mixed models only considered balanced treatment allocations which is an unlikely outcome in practice if block randomisation with reasonable choices of block length is used. We propose a sample size determination procedure for multi-centre trials comparing two treatment groups for a continuous outcome, modelling centre differences using random effects and allowing for arbitrary sample sizes. It is assumed that block randomisation with fixed block length is used at each study site for subject allocation. Simulations are used to assess operation characteristics such as power of the sample size approach. The proposed method is illustrated by an example in disease management systems. A sample size formula as well as a lower and upper boundary for the required overall sample size are given. We demonstrate the superiority of the new sample size formula over the conventional approach of ignoring the multi-centre structure and show the influence of parameters such as block length or centre heterogeneity. The application of the procedure on the example data shows that large blocks require larger sample sizes, if centre heterogeneity is present. Unbalanced treatment allocation can result in substantial power loss when centre heterogeneity is present but not considered at the planning stage. When only few patients by centre will be recruited, one has to weigh the risk of imbalance between treatment groups due to large blocks and the risk of unblinding due to small blocks. The proposed approach should be considered when planning multi-centre trials.
机译:多中心随机对照临床试验在现代循证医学中发挥着重要作用。从一个以上的站点收集数据的好处很多,包括加快招聘速度和提高结果的可推广性。可以使用混合模型来说明数据中的潜在聚类,尤其是当许多小型中心为研究贡献患者时。先前提出的用于混合模型的样本量计算的方法仅考虑了均衡的处理分配,如果使用具有合理选择的块长的块随机化方法,那么在实践中这是不太可能的结果。我们为多中心试验提出了一个样本量确定程序,用于比较两个治疗组的连续结果,使用随机效应模拟中心差异以及允许任意样本量。假设在每个研究地点将具有固定块长度的块随机化用于受试者分配。仿真用于评估操作特征,例如样本量方法的功效。疾病管理系统中的示例说明了所提出的方法。给出了样本量公式以及所需总样本量的上下边界。我们证明了新的样本量公式优于忽略多中心结构的常规方法的优越性,并显示了诸如块长或中心异质性等参数的影响。该程序在示例数据上的应用表明,如果存在中心异质性,则大块需要更大的样本量。当存在中心异质性但在计划阶段未考虑时,不平衡的治疗分配会导致大量的功率损耗。如果仅按中心招募几名患者,则必须权衡由于大块而造成的治疗组之间失衡的风险和由于小块而导致失明的风险。在计划多中心试验时,应考虑建议的方法。

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