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GSSMD: A new standardized effect size measure to improve robustness and interpretability in biological applications

机译:GSSMD:一种新的标准化效果大小,以提高生物应用中的鲁棒性和可解释性

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In many biological applications, the primary objective of study is to quantity the magnitude of treatment effect between two groups. Cohens'd or strictly standardized mean difference (SSMD) can be used to measure effect size however, it is sensitive to violation of assumption of normality. Here, we propose an alternative metric of standardized effect size measure to improve robustness and interpretability, based on the overlap between two sample distributions. The proposed method is a non-parametric generalized variant of SSMD (Strictly Standardized Mean Difference). We characterized proposed measure in various simulation settings to illustrate its behavior. We also investigated finite sample properties on the estimation of effect size and draw some guidelines. As a case study, we applied our measure for hit selection problem in an RNAi experiment and showed superiority of proposed method.
机译:在许多生物学应用中,研究的主要目标是数量在两组之间的治疗效果的大小。 Cohens的或严格标准化的平均差异(SSMD)可用于测量效果大小,但违反正常性的假设是敏感的。在这里,我们提出了一种标准化效果大小测量的替代度量,以改善鲁棒性和可解释性,基于两个样本分布之间的重叠。所提出的方法是SSMD(严格标准化平均差异)的非参数化广义变体。我们在各种仿真设置中表征了所提出的措施,以说明其行为。我们还在估计效果规模上调查了有限的样本性质并提取了一些指导方针。作为一个案例研究,我们在RNAI实验中应用了我们的击中选择问题,并显示了所提出的方法的优越性。

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