...
首页> 外文期刊>Methods of information in medicine >Location tests for biomarker studies: A comparison using simulations for the two-sample case
【24h】

Location tests for biomarker studies: A comparison using simulations for the two-sample case

机译:用于生物标志物研究的位置测试:使用两个样本进行模拟比较

获取原文
获取原文并翻译 | 示例

摘要

Background: Gene, protein, or metabolite expression levels are often non-normally distributed, heavy tailed and contain outliers. Standard statistical approaches may fail as location tests in this situation. Objectives: In three Monte-Carlo simulation studies, we aimed at comparing the type I error levels and empirical power of standard location tests and three adaptive tests [O'Gorman, Can J Stat 1997; 25: 269 -279; Keselman et al., Brit J Math Stat Psychol 2007; 60: 267- 293; Szymczak et al., Stat Med 2013; 32: 524 - 537] for a wide range of distributions. Methods: We simulated two-sample scenarios using the g-and-k-distribution family to systematically vary tail length and skewness with identical and varying variability between groups. Results: All tests kept the type I error level when groups did not vary in their variability. The standard non-parametric U-test performed well in all simulated scenarios. It was outperformed by the two non-parametric adaptive methods in case of heavy tails or large skewness. Most tests did not keep the type I error level for skewed data in the case of heterogeneous variances. Conclusions: The standard U-test was a powerful and robust location test for most of the simulated scenarios except for very heavy tailed or heavy skewed data, and it is thus to be recommended except for these cases. The non-parametric adaptive tests were powerful for both normal and non-normal distributions under sample variance homogeneity. But when sample variances differed, they did not keep the type I error level. The parametric adaptive test lacks power for skewed and heavy tailed distributions.
机译:背景:基因,蛋白质或代谢物的表达水平通常是非正态分布的,重尾且包含异常值。在这种情况下,标准统计方法可能会因为位置测试而失败。目标:在三项蒙特卡洛模拟研究中,我们旨在比较标准位置测试和三项自适应测试的I型错误级别和经验能力[O'Gorman,Can J Stat 1997; 2003; 9:11。 25:269 -279; Keselman et al。,Brit J Math Stat Psychol 2007; 60:267-293; Szymczak等人,Stat Med 2013; 32:524-537]。方法:我们使用g和k分布族模拟了两个样本场景,系统地改变了尾巴的长度和偏度,并且各组之间具有相同且变化的变异性。结果:当各组的变异性没有变化时,所有测试均保持I型错误级别。标准的非参数U检验在所有模拟场景中均表现良好。在尾部较重或偏斜较大的情况下,通过两种非参数自适应方法的效果优于该方法。在异类差异的情况下,大多数测试没有为偏斜的数据保留I型错误级别。结论:对于大多数模拟场景,标准的U检验是强大而强大的位置测试,除了拖尾数据或偏斜数据非常重之外,因此建议使用这些情况除外。在样本方差同质性下,非参数自适应检验对于正态分布和非正态分布均具有强大的功能。但是,当样本方差不同时,它们不会保持I型错误级别。参数自适应测试缺乏用于偏态分布和重尾分布的能力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号