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Statistical Power of Alternative Structural Models for Comparative Effectiveness Research: Advantages of Modeling Unreliability

机译:用于比较有效性研究的替代结构模型的统计能力:建模不可靠性的优势

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摘要

The advantages of modeling the unreliability of outcomes when evaluating the comparative effectiveness of health interventions is illustrated. Adding an action-research intervention component to a regular summer job program for youth was expected to help in preventing risk behaviors. A series of simple two-group alternative structural equation models are compared to test the effect of the intervention on one key attitudinal outcome in terms of model fit and statistical power with Monte Carlo simulations. Some models presuming parameters equal across the intervention and comparison groups were underpowered to detect the intervention effect, yet modeling the unreliability of the outcome measure increased their statistical power and helped in the detection of the hypothesized effect. Comparative Effectiveness Research (CER) could benefit from flexible multigroup alternative structural models organized in decision trees, and modeling unreliability of measures can be of tremendous help for both the fit of statistical models to the data and their statistical power.
机译:说明了在评估卫生干预措施的相对有效性时对结果的不可靠性进行建模的优势。预期在针对青少年的夏季暑期工作计划中增加一个行动研究干预成分,有助于预防风险行为。比较了一系列简单的两组替代性结构方程模型,以通过蒙特卡洛模拟在模型拟合和统计功效方面测试干预对一个关键态度结果的影响。某些假设参数在整个干预组和比较组中均相等的模型不足以检测干预效果,但是对结果度量的不可靠性进行建模可以提高其统计能力并有助于检测假设的效果。比较有效性研究(CER)可以从决策树中组织的灵活的多组替代结构模型中受益,而对度量的不可靠性建模可以为统计模型与数据的拟合及其统计能力提供巨大帮助。

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