首页> 外文会议>Pacific Symposium on Biocomputing 2004; Jan 6-10, 2004; Hawaii, USA >MODELING CELLULAR PROCESSES WITH VARIATIONAL BAYESIAN COOPERATIVE VECTOR QUANTIZER
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MODELING CELLULAR PROCESSES WITH VARIATIONAL BAYESIAN COOPERATIVE VECTOR QUANTIZER

机译:用变贝叶斯合作向量量化器建模细胞过程。

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Gene expression of a cell is controlled by sophisticated cellular processes. The capability of inferring the states of these cellular processes would provide insight into the mechanism of gene expression control system. In this paper, we propose and investigate the cooperative vector quantizer (CVQ) model for analysis of microarray data. The CVQ model could be capable of decomposing observed microarray data into many different regulatory subprocesses. To make the CVQ analysis tractable we develop and apply variational approximations. Bayesian model selection is employed in the model, so that the optimal number processes is determined purely from observed micro-array data. We test the model and algorithms on two datasets: (1) simulated gene-expression data and (2) real-world yeast cell-cycle microarray data. The results illustrate the ability of the CVQ approach to recover and characterize regulatory gene expression subprocesses, indicating a potential for advanced gene expression data analysis.
机译:细胞的基因表达受复杂的细胞过程控制。推断这些细胞过程状态的能力将提供对基因表达控制系统机制的洞察力。在本文中,我们提出并研究了用于分析微阵列数据的协作向量量化器(CVQ)模型。 CVQ模型可能能够将观察到的微阵列数据分解为许多不同的监管子过程。为了使CVQ分析易于处理,我们开发并应用了变分近似。在模型中采用了贝叶斯模型选择,因此纯粹从观察到的微阵列数据中确定最佳数目的过​​程。我们在两个数据集上测试模型和算法:(1)模拟的基因表达数据和(2)真实世界的酵母细胞周期微阵列数据。结果表明,CVQ方法具有恢复和表征调控基因表达子过程的能力,表明了进行高级基因表达数据分析的潜力。

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