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Statistical issues in the design and analysis of gene expression microarray studies of animal models.

机译:设计和分析动物模型的基因表达微阵列研究中的统计问题。

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Appropriate statistical design and analysis of gene expression microarray studies is critical in order to draw valid and useful conclusions from expression profiling studies of animal models. In this paper, several aspects of study design are discussed, including the number of animals that need to be studied to ensure sufficiently powered studies, usefulness of replication and pooling, and allocation of samples to arrays. Data preprocessing methods for both cDNA dual-label spotted arrays and Affymetrix-style oligonucleotide arrays are reviewed. High-level analysis strategies are briefly discussed for each of the types of study aims, namely class comparison, class discovery, and class prediction. For class comparison, methods are discussed for identifying genes differentially expressed between classes while guarding against unacceptably high numbers of false positive findings. Various clustering methods are discussed for class discovery aims. Class prediction methods are briefly reviewed, and reference is made to the importance of proper validation of predictors.
机译:为了从动物模型的表达谱研究中得出有效和有用的结论,对基因表达微阵列研究进行适当的统计设计和分析至关重要。在本文中,讨论了研究设计的几个方面,包括需要研究以确保足够有力的研究的动物数量,复制和合并的有用性以及将样品分配到阵列中。综述了cDNA双标记斑点阵列和Affymetrix型寡核苷酸阵列的数据预处理方法。针对每种学习目标类型简要讨论了高级分析策略,即班级比较,班级发现和班级预测。为了进行类比较,讨论了识别在类之间差异表达的基因,同时防止不可接受的大量假阳性结果的方法。讨论了用于类发现目的的各种聚类方法。简要概述了类别预测方法,并参考了正确验证预测变量的重要性。

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