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Normalization Method for Transcriptional Studies of Heterogeneous Samples – Simultaneous Array Normalization and Identification of Equivalent Expression

机译:异构样品转录研究的归一化方法-阵列同时归一化和等价表达的鉴定

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摘要

Normalization is an important step in the analysis of microarray data of transcription profiles as systematic non-biological variations often arise from the multiple steps involved in any transcription profiling experiment. Existing methods for data normalization often assume that there are few or symmetric differential expression, but this assumption does not always hold. Alternatively, non-differentially expressed genes may be used for array normalization. However, it is unknown at the outset which genes are non-differentially expressed. In this paper we propose a hierarchical mixture model framework to simultaneously identify non-differentially expressed genes and normalize arrays using these genes. The Fisher"s information matrix corresponding to array effects is derived, which provides useful intuition for guiding the choice of array normalization method. The operating characteristics of the proposed method are evaluated using simulated data. The simulations conducted under a wide range of parametric configurations suggest that the proposed method provides a useful alternative for array normalization. For example, the proposed method has better sensitivity than median normalization under modest prevalence of differentially expressed genes and when the magnitudes of over-expression and under-expression are not the same. Further, the proposed method has properties similar to median normalization when the prevalence of differentially expressed genes is very small. Empirical illustration of the proposed method is provided using a liposarcoma study from MSKCC to identify genes differentially expressed between normal fat tissue versus liposarcoma tissue samples.
机译:归一化是分析转录谱微阵列数据的重要步骤,因为系统的非生物变异通常来自任何转录谱实验中涉及的多个步骤。现有的用于数据归一化的方法通常假设几乎没有或对称的差分表达式,但是这种假设并不总是成立。或者,可以将非差异表达的基因用于阵列标准化。但是,一开始不知道哪些基因是非差异表达的。在本文中,我们提出了一种层次混合模型框架,可同时识别非差异表达的基因并使用这些基因对阵列进行标准化。推导了与阵列效应相对应的Fisher信息矩阵,为指导阵列归一化方法的选择提供了有益的直觉。使用模拟数据评估了所提出方法的操作特性。在各种参数配置下进行的模拟表明所提出的方法为阵列归一化提供了有用的替代方法,例如,在差异表达基因的适度流行以及过表达和欠表达的大小不相同的情况下,所提出的方法比中值归一化具有更高的灵敏度。当差异表达基因的患病率很小时,该方法具有与中值归一化相似的特性,并通过MSKCC的脂肪肉瘤研究提供了该方法的经验例证,以鉴定正常脂肪组织与脂肪肉瘤组织样品之间差异表达的基因。

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