首页> 外文会议>Second Critical Assessment of Microarray Data Analysis (CAMDA'01) Oct, 2001 null >BAYESIAN DECOMPOSITION ANALYSIS OF GENE EXPRESSION IN YEAST DELETION MUTANTS
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BAYESIAN DECOMPOSITION ANALYSIS OF GENE EXPRESSION IN YEAST DELETION MUTANTS

机译:酵母缺失突变体中基因表达的贝叶斯分解分析

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Many methods have been proposed for the analysis of microarray data. In general, these methods are borrowed from statistics and data mining, and they ignore the underlying biology that gives rise to the data. Biological systems, such as cells, are complex, with constant activation and deactivation of multiple pathways in response to external and internal stimuli. Thus, of particular concern is the failure of many analysis methods to allow expression levels for a single gene to be explained as arising from multiple, different stimuli. Bayesian Decomposition, originally developed for spectral mixture analysis, overcomes this problem by permitting the discovered patterns within the expression data to overlap, allowing genes to belong to multiple groups. We present results of the application of Bayesian Decomposition to the deletion mutation data, demonstrating its ability to assign genes that are regulated by multiple pathways to multiple coexpression groups, allowing identification of changes to specific signalling pathways.
机译:已经提出了许多用于微阵列数据分析的方法。通常,这些方法是从统计和数据挖掘中借用的,它们忽略了产生数据的潜在生物学。诸如细胞之类的生物系统是复杂的,具有响应于外部和内部刺激的多种途径的恒定激活和失活。因此,特别令人关注的是许多分析方法的失败,不能将单个基因的表达水平解释为源于多种不同的刺激。贝叶斯分解最初是为频谱混合分析而开发的,它通过允许表达数据内发现的模式重叠,允许基因属于多个组来克服了这个问题。我们目前对删除突变数据应用贝叶斯分解的结果,证明了其将受多种途径调节的基因分配给多个共表达组的能力,从而可以确定特定信号通路的变化。

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