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A simple ratio-based approach for power and sample size determination for 2-group comparison using Rasch models

机译:一种简单的基于比率的功率和样本量确定方法,用于使用Rasch模型进行两组比较

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Background Despite the widespread use of patient-reported Outcomes (PRO) in clinical studies, their design remains a challenge. Justification of study size is hardly provided, especially when a Rasch model is planned for analysing the data in a 2-group comparison study. The classical sample size formula (CLASSIC) for comparing normally distributed endpoints between two groups has shown to be inadequate in this setting (underestimated study sizes). A correction factor (RATIO) has been proposed to reach an adequate sample size from the CLASSIC when a Rasch model is intended to be used for analysis. The objective was to explore the impact of the parameters used for study design on the RATIO and to identify the most relevant to provide a simple method for sample size determination for Rasch modelling. Methods A large combination of parameters used for study design was simulated using a Monte Carlo method: variance of the latent trait, group effect, sample size per group, number of items and items difficulty parameters. A linear regression model explaining the RATIO and including all the former parameters as covariates was fitted. Results The most relevant parameters explaining the ratio’s variations were the number of items and the variance of the latent trait (R2?=?99.4%). Conclusions Using the classical sample size formula adjusted with the proposed RATIO can provide a straightforward and reliable formula for sample size computation for 2-group comparison of PRO data using Rasch models.
机译:背景技术尽管在临床研究中广泛使用了患者报告的结果(PRO),但其设计仍然是一个挑战。很难提供研究规模的合理性,特别是当计划使用Rasch模型分析两组比较研究中的数据时。在这种情况下,用于比较两组之间正态分布终点的经典样本量公式(CLASSIC)已显示不足(被低估的研究量)。当打算将Rasch模型用于分析时,已经提出了一种校正因子(RATIO),可以从CLASSIC中获得足够的样本量。目的是探索用于研究设计的参数对RATIO的影响,并确定最相关的参数,从而为Rasch建模提供简单的样本量确定方法。方法使用蒙特卡洛方法对用于研究设计的大量参数进行了模拟:潜伏性状的差异,群体效应,每组的样本量,项目数和项目难度参数。拟合了解释RATIO并包括所有先前参数作为协变量的线性回归模型。结果解释比率变化的最相关参数是项目数量和潜在性状的方差(R 2 ?=?99.4%)。结论使用通过建议的RATIO调整的经典样本量公式可以为使用Rasch模型进行PRO数据的两组比较提供简单,可靠的样本量计算公式。

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