双色微阵列实验中有效非平衡因子设计的统计分析。

Robert J Tempelman
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引用次数: 6

摘要

有效地将固定效应处理结构嵌入随机效应设计结构的实验设计通常需要混合模型方法来进行数据分析。虽然为分析双色微阵列数据量身定制的混合模型软件越来越多,但这些软件中的大部分通常无法正确分析越来越多地被提出并用于析因处理结构的精心设计的不完整块设计。也就是说,优化设计通常是不平衡的,因为它涉及到各种处理比较,不同的处理因素往往需要不同规格的实验变异性。本文使用公开可用的微阵列数据集,基于有效的实验设计,展示了典型的不平衡因子设计的适当混合模型分析,其特征是不完整的块和变异性的分层水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Statistical analysis of efficient unbalanced factorial designs for two-color microarray experiments.

Statistical analysis of efficient unbalanced factorial designs for two-color microarray experiments.

Statistical analysis of efficient unbalanced factorial designs for two-color microarray experiments.

Statistical analysis of efficient unbalanced factorial designs for two-color microarray experiments.

Experimental designs that efficiently embed a fixed effects treatment structure within a random effects design structure typically require a mixed-model approach to data analyses. Although mixed model software tailored for the analysis of two-color microarray data is increasingly available, much of this software is generally not capable of correctly analyzing the elaborate incomplete block designs that are being increasingly proposed and used for factorial treatment structures. That is, optimized designs are generally unbalanced as it pertains to various treatment comparisons, with different specifications of experimental variability often required for different treatment factors. This paper uses a publicly available microarray dataset, as based upon an efficient experimental design, to demonstrate a proper mixed model analysis of a typical unbalanced factorial design characterized by incomplete blocks and hierarchical levels of variability.

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