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Split-Plot Microarray Experiments

机译:分割图微阵列实验

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This article focuses on microarray experiments with two or more factors in which treatment combinations of the factors corresponding to the samples paired together onto arrays are not completely random. A main effect of one (or more) factor(s) is confounded with arrays (the experimental blocks). This is called a split-plot microarray experiment. We utilise an analysis of variance (ANOVA) model to assess differentially expressed genes for between-array and within-array comparisons that are generic under a split-plot microarray experiment. Instead of standard t- or F-test statistics that rely on mean square errors of the ANOVA model, we use a robust method, referred to as 'a pooled percentile estimator', to identify genes that are differentially expressed across different treatment conditions. We illustrate the design and analysis of split-plot microarray experiments based on a case application described by Jin et al. A brief discussion of power and sample size for split-plot microarray experiments is also presented.
机译:本文重点关注具有两个或多个因素的微阵列实验,其中与配对到阵列上的样品相对应的因素的治疗组合并非完全随机。一个(或多个)因子的主要作用与数组(实验模块)混淆。这被称为分裂图微阵列实验。我们利用方差分析(ANOVA)模型来评估差异表达的基因,以进行阵列内比较和阵列内比较,这在裂区微阵列实验下是通用的。代替依赖于方差分析模型均方误差的标准t检验或F检验统计数据,我们使用一种可靠的方法(称为“合并百分位数估算器”)来识别在不同治疗条件下差异表达的基因。我们说明了基于Jin等人描述的案例应用的分裂图微阵列实验的设计和分析。还简要介绍了分裂图微阵列实验的功效和样本量。

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