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Bayesian modelling of shared gene function

机译:共享基因功能的贝叶斯建模

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Motivation: Biological assays are often carried out on tissues that contain many cell lineages and active pathways. Microarray data produced using such material therefore reflect superimpositions of biological processes. Analysing such data for shared gene function by means of well-matched assays may help to provide a better focus on specific cell types and processes. The identification of genes that behave similarly in different biological systems also has the potential to reveal new insights into preserved biological mechanisms.Results: In this article, we propose a hierarchical Bayesian model allowing integrated analysis of several microarray data sets for shared gene function. Each gene is associated with an indicator variable that selects whether binary class labels are predicted from expression values or by a classifier which is common to all genes. Each indicator selects the component models for all involved data sets simultaneously. A quantitative measure of shared gene function is obtained by inferring a probability measure over these indicators. Through experiments on synthetic data, we illustrate potential advantages of this Bayesian approach over a standard method. A shared analysis of matched microarray experiments covering (a) a cycle of mouse mammary gland development and (b) the process of in vitro endothelial cell apoptosis is proposed as a biological gold standard. Several useful sanity checks are introduced during data analysis, and we confirm the prior biological belief that shared apoptosis events occur in both systems. We conclude that a Bayesian analysis for shared gene function has the potential to reveal new biological insights, unobtainable by other means.
机译:动机:经常在含有许多细胞谱系和活跃途径的组织上进行生物测定。因此,使用这种材料产生的微阵列数据反映了生物过程的叠加。通过良好匹配的分析方法分析此类数据的共有基因功能,可能有助于更好地关注特定的细胞类型和过程。鉴定在不同生物学系统中行为相似的基因也有可能揭示对保留的生物学机制的新见解。结果:在本文中,我们提出了一个分层贝叶斯模型,可以对共享的基因功能的几个微阵列数据集进行综合分析。每个基因都与一个指示变量关联,该指示变量选择是从表达值还是由所有基因共有的分类器预测二元类别标记。每个指标同时为所有涉及的数据集选择组件模型。通过推断这些指标的概率测度,可以获得共享基因功能的定量测度。通过对合成数据的实验,我们说明了这种贝叶斯方法相对于标准方法的潜在优势。涵盖了(a)小鼠乳腺发育周期和(b)体外内皮细胞凋亡过程的匹配微阵列实验的共享分析被认为是生物学的金标准。在数据分析过程中引入了几种有用的健全性检查,我们确认了先前的生物学信念,即在两个系统中均发生共享的凋亡事件。我们得出结论,对共享基因功能的贝叶斯分析有潜力揭示新的生物学见解,而其他方法则无法获得。

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