首页> 外文会议>Pacific Symposium on Biocomputing 2001, Jan 3-7, 2001, Mauna Lani, Hawaii >USING GRAPHICAL MODELS AND GENOMIC EXPRESSION DATA TO STATISTICALLY VALIDATE MODELS OF GENETIC REGULATORY NETWORKS
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USING GRAPHICAL MODELS AND GENOMIC EXPRESSION DATA TO STATISTICALLY VALIDATE MODELS OF GENETIC REGULATORY NETWORKS

机译:使用图形模型和基因表达数据对遗传调控网络的模型进行统计验证

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We propose a model-driven approach for analyzing genomic expression data that permits genetic regulatory networks to be represented in a biologically interpretable computational form. Our models permit latent variables capturing unobserved factors, describe arbitrarily complex (more than pair-wise) relationships at varying levels of refinement, and can be scored rigorously against observational data. The models that we use are based on Bayesian networks and their extensions. As a demonstration of this approach, we utilize 52 genomes worth of Affymetrix GeneChip expression data to correctly differentiate between alternative hypotheses of the galactose regulatory network in S. cerevisiae. When we extend the graph semantics to permit annotated edges, we are able to score models describing relationships at a finer degree of specification.
机译:我们提出了一种用于分析基因组表达数据的模型驱动方法,该方法允许以生物可解释的计算形式表示基因调控网络。我们的模型允许潜在变量捕获未观察到的因素,以不同的细化水平描述任意复杂(比成对的)关系,并且可以根据观测数据进行严格评分。我们使用的模型基于贝叶斯网络及其扩展。作为此方法的证明,我们利用了52个基因组的Affymetrix GeneChip表达数据来正确区分酿酒酵母中半乳糖调节网络的替代假设。当我们扩展图的语义以允许带注释的边时,我们能够对模型的关系进行评分,以更好的规范度。

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