评估和解释三个交叉设计的结果。

V Guiard, J Spilke, S Dänicke
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引用次数: 7

摘要

在交叉设计中,个体序列的治疗被应用于动物。在这样的设计中,每一种处理都可能改变应用于同一动物的后续处理的效果。我们比较了三个交叉设计,每个设计有三个处理,三个周期和两个街区。这种比较是根据治疗和前一治疗的延续效应之间的相互作用引起的效果估计的方差及其偏差进行的。通过仿真比较了方差分量估计和自由度计算的不同方法。如果动物方差分量很小,则方差分量的REML估计器的偏差大于称为“TYPE3”的广泛方差估计器之一。但是,与方差分析相比,在REML的情况下,这种估计的均方误差较小。因此,应该优先使用REML方法。对于自由度的计算,应采用Kenward-Roger法。应用该方法后,真实显著性水平几乎等于其要求值,但如果使用Satterthwaite方法,则真实显著性水平过高。如果相互作用(治疗x结转)虽然存在,但在模型中被忽略,则治疗效果估计的标准误差太大,因此真实显著性水平太小。已评估的方法可在SAS-程序MIXED中获得(SAS研究所,1999a)。为了利用该软件辅助交叉设计的调查,我们开发了数据管理和数据分析程序。这些程序可从第一作者处获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation and interpretation of results for three cross-over designs.

In cross-over designs, individual sequences of treatments are applied to the animals. Within such designs it is possible that every treatment could modify the effect of the subsequent treatment applied to the same animal. We compared three cross-over designs each with three treatments, three periods, and two blocks. This comparison was done with respect to the variance of the estimations of the effects and its biases caused by the interactions between the treatment and the carry over effect of the foregoing treatment. Moreover, different methods of estimating variance components and calculating the degrees of freedom were compared by means of simulation. If the animal variance component is small, then the bias of the REML estimator of the variance components is greater than one of the widespread ANOVA-estimator called 'TYPE3'. But nevertheless, the mean squared error of this estimation is smaller in the case of REML in comparison to ANOVA. Therefore, the REML method should be preferred. For calculating the degrees of freedom, the Kenward-Roger method should be used. After applying this method, the true significance level is almost equal to its required value, but if the Satterthwaite method is used, the true significance level will be too high. If the interaction (treatment x carry over) is ignored in the model although it exists, the standard error of the treatment effect estimation is too great, and, therefore, the true significance level is too small. The methods which have been evaluated are available in the SAS-procedure MIXED (SAS Institute, 1999a). To assist the investigation of cross-over designs by using this software, we developed programs for data management and data analysis. These programs are available from the first author.

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