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Simulation methods to estimate design power: an overview for applied research

机译:估计设计电力的仿真方法:应用研究概述

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Background Estimating the required sample size and statistical power for a study is an integral part of study design. For standard designs, power equations provide an efficient solution to the problem, but they are unavailable for many complex study designs that arise in practice. For such complex study designs, computer simulation is a useful alternative for estimating study power. Although this approach is well known among statisticians, in our experience many epidemiologists and social scientists are unfamiliar with the technique. This article aims to address this knowledge gap. Methods We review an approach to estimate study power for individual- or cluster-randomized designs using computer simulation. This flexible approach arises naturally from the model used to derive conventional power equations, but extends those methods to accommodate arbitrarily complex designs. The method is universally applicable to a broad range of designs and outcomes, and we present the material in a way that is approachable for quantitative, applied researchers. We illustrate the method using two examples (one simple, one complex) based on sanitation and nutritional interventions to improve child growth. Results We first show how simulation reproduces conventional power estimates for simple randomized designs over a broad range of sample scenarios to familiarize the reader with the approach. We then demonstrate how to extend the simulation approach to more complex designs. Finally, we discuss extensions to the examples in the article, and provide computer code to efficiently run the example simulations in both R and Stata. Conclusions Simulation methods offer a flexible option to estimate statistical power for standard and non-traditional study designs and parameters of interest. The approach we have described is universally applicable for evaluating study designs used in epidemiologic and social science research.
机译:背景技术估计研究所需的样本量和统计功率是研究设计的一个组成部分。对于标准设计,功率方程提供了对问题的有效解决方案,但对于在实践中产生的许多复杂的研究设计,它们不可用。对于如此复杂的研究设计,计算机模拟是估算研究能力的有用替代方案。虽然这种方法在统计学中是众所周知的,但在我们经验中,许多流行病学家和社会科学家都不熟悉这种技术。本文旨在解决这一知识差距。方法审查使用计算机仿真估算个人或群集随机设计的研究电力的方法。这种灵活的方法自然地由用于推导传统功率方程的模型,但扩展了这些方法以适应任意复杂的设计。该方法普遍适用于广泛的设计和结果,我们以可用于定量的应用研究人员的方式呈现这些材料。我们说明了基于卫生和营养干预的两个例子(一个简单,一个复杂)的方法,以改善儿童生长。结果我们首先展示了如何在广泛的样本场景中仿真再现用于简单随机设计的传统功率估计,以使读者熟悉具有此方法的读者。然后,我们展示如何将模拟方法扩展到更复杂的设计。最后,我们讨论对文章中的示例的扩展,并提供计算机代码,以有效地运行r和stata中的示例模拟。结论仿真方法提供了灵活的选择,可以估算标准和非传统研究设计和兴趣参数的统计功率。我们所描述的方法普遍适用于评估流行病学和社会科学研究中使用的研究设计。

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