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Statistical model specification and power: recommendations on the use of test-qualified pooling in analysis of experimental data

机译:统计模型规范和功效:关于在实验数据分析中使用经过测试的合并的建议

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摘要

A common approach to the analysis of experimental data across much of the biological sciences is test-qualified pooling. Here non-significant terms are dropped from a statistical model, effectively pooling the variation associated with each removed term with the error term used to test hypotheses (or estimate effect sizes). This pooling is only carried out if statistical testing on the basis of applying that data to a previous more complicated model provides motivation for this model simplification; hence the pooling is test-qualified. In pooling, the researcher increases the degrees of freedom of the error term with the aim of increasing statistical power to test their hypotheses of interest. Despite this approach being widely adopted and explicitly recommended by some of the most widely cited statistical textbooks aimed at biologists, here we argue that (except in highly specialized circumstances that we can identify) the hoped-for improvement in statistical power will be small or non-existent, and there is likely to be much reduced reliability of the statistical procedures through deviation of type I error rates from nominal levels. We thus call for greatly reduced use of test-qualified pooling across experimental biology, more careful justification of any use that continues, and a different philosophy for initial selection of statistical models in the light of this change in procedure.
机译:在许多生物科学领域中,分析实验数据的常用方法是测试合格的合并。在这里,从统计模型中删除了不重要的项,从而有效地将与每个删除的项相关联的变化与用于检验假设(或估计效应大小)的误差项合并在一起。仅当基于将数据应用于先前更复杂的模型的统计测试为简化该模型提供动力时,才进行此合并;因此,该池已通过测试。在合并中,研究人员增加了误差项的自由度,目的是提高统计能力以检验他们感兴趣的假设。尽管这种方法已被一些针对生物学家的最广泛引用的统计教科书广泛采用并明确推荐,但在这里我们认为(希望在高度专业化的情况下除外)改善统计功效的希望很小或没有存在,并且由于I类错误率与标称水平之间的偏差,统计程序的可靠性可能会大大降低。因此,我们呼吁大大减少跨实验生物学的测试合格池的使用,对任何继续使用的方法进行更仔细的论证,并根据程序的变化为统计模型的初始选择提供不同的理念。

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