Pilla Ramani S, Kitska David J, Loader Catherine
Department of Statistics, Case Western Reserve University, Cleveland, OH 44106, USA.
J Exp Biol. 2005 Apr;208(Pt 7):1267-76. doi: 10.1242/jeb.01523.
Often experimental scientists employ a Randomized Complete Block Design (RCBD) to study the effect of treatments on different subjects. Under a 'complete randomization', the order of the apparatus setups within each block, including all replications of each treatment across all subjects, is completely randomized. However, in many experimental settings complete randomization is impractical due to the cost involved in re-adjusting the device to administer a new treatment. One typically resorts to a type of 'restricted randomization', in which multiple subjects are tested under each treatment before the apparatus is re-adjusted. The order of the treatments as well as the assignment of subjects to each block are random. If the data obtained under any type of restricted randomization are treated as if the data were collected under an RCBD with complete randomization within each block, then there is potential to increase the risk of false positives (Type I error). This is of concern to animal orientation studies and other areas such as chemical ecology where it is impractical to reset the experimental device for each subject tested. The goal of the research presented in this article is twofold: (1) to demonstrate the consequences of constructing an F-statistic based on a mean square error for testing the significance of treatment effects under the restricted randomization; (2) to describe an alternative method, based on split-plot analysis of variance, to analyze designed experiments that yield better power under the restricted randomization. The statistical analyses of simulated experiments and data involving virgin male Periplaneta americana substantiate the benefits of the alternative approach under the restricted randomization. The methodology and analysis employed for the simulated experiment is equally applicable to any organism or artificial agent tested under a restricted randomization protocol.
实验科学家通常采用随机完全区组设计(RCBD)来研究处理对不同受试对象的影响。在“完全随机化”情况下,每个区组内仪器设置的顺序,包括所有受试对象上每种处理的所有重复,都是完全随机的。然而,在许多实验设置中,由于重新调整设备以施用新处理所涉及的成本,完全随机化是不切实际的。人们通常采用一种“受限随机化”,即在重新调整仪器之前,在每种处理下对多个受试对象进行测试。处理的顺序以及受试对象分配到每个区组都是随机的。如果将在任何类型的受限随机化下获得的数据当作是在每个区组内完全随机化的RCBD下收集的数据来处理,那么就有可能增加假阳性(I型错误)的风险。这在动物定向研究以及化学生态学等其他领域中是一个问题,在这些领域中为每个测试的受试对象重置实验设备是不切实际的。本文所呈现的研究目标有两个:(1)展示基于均方误差构建F统计量以检验受限随机化下处理效应显著性的后果;(2)描述一种基于裂区方差分析的替代方法,用于分析在受限随机化下具有更好功效的设计实验。对模拟实验以及涉及美洲大蠊处女雄性的数据进行的统计分析证实了受限随机化下替代方法的益处。模拟实验所采用的方法和分析同样适用于在受限随机化方案下测试的任何生物体或人工制剂。