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Analysis of gene expression data using a linear mixed model/finite mixture model approach: application to regional differences in the human brain

机译:使用线性混合模型/有限混合模型方法分析基因表达数据:在人脑区域差异中的应用

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Motivation: Gene expression data exhibit common information over the genome. This article shows how data can be analysed from an efficient whole-genome perspective. Further, the methods have been developed so that users with limited expertise in bioinformatics and statistical computing techniques could use and modify this procedure to their own needs. The method outlined first uses a large-scale linear mixed model for the expression data genome-wide, and then uses finite mixture models to separate differentially expressed (DE) from non-DE transcripts. These methods are illustrated through application to an exceptional UK Brain Expression Consortium involving 12 human frozen post-mortem brain regions. Results: Fitting linear mixed models has allowed variation in gene expression between different biological states (e.g. brain regions, gender, age) to be investigated. The model can be extended to allow for differing levels of variation between different biological states. Predicted values of the random effects show the effects of each transcript in a particular biological state. Using the UK Brain Expression Consortium data, this approach yielded striking patterns of co-regional gene expression. Fitting the finite mixture model to the effects within each state provides a convenient method to filter transcripts that are DE: these DE transcripts can then be extracted for advanced functional analysis.
机译:动机:基因表达数据显示出整个基因组的共同信息。本文说明如何从有效的全基因组角度分析数据。此外,已经开发了这些方法,以使在生物信息学和统计计算技术方面具有有限专业知识的用户可以根据自己的需要使用和修改此过程。概述的方法首先对基因组范围的表达数据使用大规模线性混合模型,然后使用有限的混合模型将差异表达(DE)与非DE转录本分开。通过将其应用到一个涉及12个人类冰冻死后大脑区域的特殊的英国脑表达协会来说明这些方法。结果:拟合线性混合模型可以研究不同生物学状态(例如大脑区域,性别,年龄)之间基因表达的变化。可以扩展该模型以允许不同生物学状态之间的不同变化水平。随机效应的预测值显示了特定生物学状态下每个转录本的效应。使用UK Brain Expression Consortium的数据,这种方法产生了共同区域基因表达的惊人模式。使有限的混合模型适合每种状态下的效果,提供了一种方便的方法来过滤DE的成绩单:然后可以提取这些DE成绩单以进行高级功能分析。

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