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首页> 外文期刊>BMC Medical Research Methodology >Confidence regions for repeated measures ANOVA power curves based on estimated covariance
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Confidence regions for repeated measures ANOVA power curves based on estimated covariance

机译:基于估计协方差的重复测量方差分析功效曲线的置信区域

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Background Using covariance or mean estimates from previous data introduces randomness into each power value in a power curve. Creating confidence intervals about the power estimates improves study planning by allowing scientists to account for the uncertainty in the power estimates. Driving examples arise in many imaging applications. Methods We use both analytical and Monte Carlo simulation methods. Our analytical derivations apply to power for tests with the univariate approach to repeated measures (UNIREP). Approximate confidence intervals and regions for power based on an estimated covariance matrix and fixed means are described. Extensive simulations are used to examine the properties of the approximations. Results Closed-form expressions are given for approximate power and confidence intervals and regions. Monte Carlo simulations support the accuracy of the approximations for practical ranges of sample size, rank of the design matrix, error degrees of freedom, and the amount of deviation from sphericity. The new methods provide accurate coverage probabilities for all four UNIREP tests, even for small sample sizes. Accuracy is higher for higher power values than for lower power values, making the methods especially useful in practical research conditions. The new techniques allow the plotting of power confidence regions around an estimated power curve, an approach that has been well received by researchers. Free software makes the new methods readily available. Conclusions The new techniques allow a convenient way to account for the uncertainty of using an estimated covariance matrix in choosing a sample size for a repeated measures ANOVA design. Medical imaging and many other types of healthcare research often use repeated measures ANOVA.
机译:背景技术使用先前数据的协方差或均值估计将随机性引入幂曲线中的每个幂值。通过允许科学家考虑功效估计中的不确定性,创建有关功效估计的置信区间可以改善研究计划。在许多成像应用中都出现了驱动示例。方法我们同时使用分析和蒙特卡洛模拟方法。我们的分析推导适用于采用单变量重复测量方法(UNIREP)进行测试的能力。描述了基于估计的协方差矩阵和固定均值的功率的近似置信区间和区域。广泛的模拟用于检查近似值的性质。结果给出了近似功效和置信区间和区域的闭式表达式。蒙特卡洛模拟支持样本大小的实际范围,设计矩阵的等级,自由度的误差以及与球形度的偏差量的近似精度。新方法为所有四个UNIREP测试提供了准确的覆盖率,即使是小样本量也是如此。高功率值比低功率值的精度更高,这使得该方法在实际研究条件下特别有用。新技术允许围绕估计的功率曲线绘制功率置信区域,这一方法已为研究人员所接受。免费软件使新方法易于使用。结论新技术为选择重复测量方差分析设计的样本量时使用估计协方差矩阵的不确定性提供了便利的方法。医学成像和许多其他类型的医疗保健研究通常使用重复测量方差分析。

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