使用最小P值法进行Kruskal-Wallis检验的具有两个截断值的除毛

IF 0.3 Q4 MATHEMATICS, APPLIED Journal of Applied Mathematics Statistics and Informatics Pub Date : 2022-12-01 DOI:10.2478/jamsi-2022-0010
T. Ogura, C. Shiraishi
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引用次数: 0

摘要

摘要在临床试验中,年龄常被截断值转换为二进制数据。然而,当观察年龄大于或等于截断值的一组患者的散点图时,年龄和结果可能不相关。如果将年龄大于或等于临界值的人群进一步分成两组,两组中年龄较大的人可能会显得风险较低。在这种情况下,可能需要进一步将年龄大于或等于截断值的患者组分为两组。这项研究提供了一种方法来确定两组或三组中哪一组是最好的分割。使用以下两种方法划分数据。现有的方法是最小p值法的Wilcoxon-Mann-Whitney检验,它通过一个截止值将数据分为两组。一种新的方法,Kruskal-Wallis最小p值检验方法,通过两个截止值将数据分为三组。两个检验中,取p值较小的检验。由于这是一个新的决策程序,因此在应用于现有的COVID-19数据之前,使用蒙特卡罗模拟(mcs)对其进行了测试。MCS实验结果表明,该方法具有良好的性能。在COVID-19数据中,以60岁和70岁两个临界值分为三组是最佳的。根据两个截止值将COVID-19数据分为三组,确认每组具有不同的特征。我们提供了可用于复制本文结果的R代码。另一个实际的例子是将x和y替换为合适的值。
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Trichotomization with two cutoff values using Kruskal-Wallis test by minimum P-value approach
Abstract In clinical trials, age is often converted to binary data by the cutoff value. However, when looking at a scatter plot for a group of patients whose age is larger than or equal to the cutoff value, age and outcome may not be related. If the group whose age is greater than or equal to the cutoff value is further divided into two groups, the older of the two groups may appear to be at lower risk. In this case, it may be necessary to further divide the group of patients whose age is greater than or equal to the cutoff value into two groups. This study provides a method for determining which of the two or three groups is the best split. The following two methods are used to divide the data. The existing method, the Wilcoxon-Mann-Whitney test by minimum P-value approach, divides data into two groups by one cutoff value. A new method, the Kruskal-Wallis test by minimum P-value approach, divides data into three groups by two cutoff values. Of the two tests, the one with the smaller P-value is used. Because this was a new decision procedure, it was tested using Monte Carlo simulations (MCSs) before application to the available COVID-19 data. The MCS results showed that this method performs well. In the COVID-19 data, it was optimal to divide into three groups by two cutoff values of 60 and 70 years old. By looking at COVID-19 data separated into three groups according to the two cutoff values, it was confirmed that each group had different features. We provided the R code that can be used to replicate the results of this manuscript. Another practical example can be performed by replacing x and y with appropriate ones.
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