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Tests for statistical significance of a treatment effect in the presence of hidden sub-populations

机译:在存在隐藏亚群的情况下测试治疗效果的统计显着性

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摘要

For testing the statistical significance of a treatment effect, we often compare between two parts of a population; one is exposed to the treatment, and the other is not exposed to it. Standard parametric or nonparametric two-sample tests are commonly used for this comparison. But direct applications of these tests can yield misleading results, especially when the population has some hidden sub-populations, and the effect of this sub-population difference on the response dominates the treatment effect. This problem becomes more evident if these sub-populations have widely different proportions of representatives in the samples obtained from these two parts. In this article, we propose some simple methods to overcome these limitations. These proposed methods first use a suitable clustering algorithm to find the hidden sub-populations, and then they eliminate the sub-population effect by using a suitable transformation of the data. Standard two-sample tests, when they are applied on the transformed data, usually yield better results. We analyze some simulated and real data sets to demonstrate the utility of these proposed methods.
机译:为了检验治疗效果的统计显着性,我们经常在人群的两个部分之间进行比较。一个暴露于治疗,而另一个不暴露于治疗。标准参数或非参数两个样本测试通常用于此比较。但是直接应用这些测试可能会产生误导性的结果,尤其是在人群中有一些隐藏的亚人群时,这种亚人群差异对反应的影响主导了治疗效果。如果这些子群体在从这两部分获得的样品中具有不同比例的代表比例,则此问题将变得更加明显。在本文中,我们提出了一些简单的方法来克服这些限制。这些提出的方法首先使用合适的聚类算法来找到隐藏的子群体,然后通过使用数据的合适变换来消除子群体的影响。当将标准的两样本测试应用于转换后的数据时,通常会产生更好的结果。我们分析了一些模拟的和真实的数据集,以证明这些建议方法的实用性。

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