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基于随机试验-治疗研究中患病率的样本量重新计算。

Sample size recalculation based on the prevalence in a randomized test-treatment study.

机构信息

Institute of Medical Biometry and Epidemiology, University Medical Center Hamburg-Eppendorf, Christoph-Probst Weg 1, 20246, Hamburg, Germany.

Federal Institute for Drugs and Medical Devices (BfArM), Kurt-Georg-Kiesinger-Allee 3, 53175, Bonn, Germany.

出版信息

BMC Med Res Methodol. 2022 Jul 25;22(1):205. doi: 10.1186/s12874-022-01678-7.

Abstract

BACKGROUND

Randomized test-treatment studies aim to evaluate the clinical utility of diagnostic tests by providing evidence on their impact on patient health. However, the sample size calculation is affected by several factors involved in the test-treatment pathway, including the prevalence of the disease. Sample size planning is exposed to strong uncertainties in terms of the necessary assumptions, which have to be compensated for accordingly by adjusting prospectively determined study parameters during the course of the study.

METHOD

An adaptive design with a blinded sample size recalculation in a randomized test-treatment study based on the prevalence is proposed and evaluated by a simulation study. The results of the adaptive design are compared to those of the fixed design.

RESULTS

The adaptive design achieves the desired theoretical power, under the assumption that all other nuisance parameters have been specified correctly, while wrong assumptions regarding the prevalence may lead to an over- or underpowered study in the fixed design. The empirical type I error rate is sufficiently controlled in the adaptive design as well as in the fixed design.

CONCLUSION

The consideration of a blinded recalculation of the sample size already during the planning of the study may be advisable in order to increase the possibility of success as well as an enhanced process of the study. However, the application of the method is subject to a number of limitations associated with the study design in terms of feasibility, sample sizes needed to be achieved, and fulfillment of necessary prerequisites.

摘要

背景

随机试验治疗研究旨在通过提供有关诊断测试对患者健康影响的证据来评估诊断测试的临床实用性。然而,样本量计算受到测试治疗途径中涉及的几个因素的影响,包括疾病的流行率。样本量规划受到必要假设方面的强烈不确定性的影响,这必须通过在研究过程中前瞻性地调整预先确定的研究参数来进行相应的补偿。

方法

提出了一种基于流行率的随机试验治疗研究中的自适应设计,并通过模拟研究对其进行了评估。自适应设计的结果与固定设计的结果进行了比较。

结果

在假设所有其他讨厌参数都已正确指定的情况下,自适应设计达到了所需的理论功效,而错误地假设流行率可能会导致固定设计中的研究过度或不足。自适应设计和固定设计中的经验型 I 类错误率都得到了充分控制。

结论

在研究规划阶段就考虑对样本量进行盲法重新计算可能是明智的,以增加成功的可能性和研究的改进过程。然而,该方法的应用受到与研究设计相关的一些限制,包括可行性、需要达到的样本量以及满足必要前提条件。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/66b3/9317230/021f57324282/12874_2022_1678_Fig1_HTML.jpg

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