首页> 外文会议>Second Critical Assessment of Microarray Data Analysis (CAMDA'01) Oct, 2001 null >ANALYSIS OF GENE EXPRESSION PROFILES AND DRUG ACTIVITY PATTERNS BY CLUSTERING AND BAYESIAN NETWORK LEARNING
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ANALYSIS OF GENE EXPRESSION PROFILES AND DRUG ACTIVITY PATTERNS BY CLUSTERING AND BAYESIAN NETWORK LEARNING

机译:聚类和贝叶斯网络学习法分析基因表达谱和药物活性模式。

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High-throughput genomic analysis provides insight into a complicated biological phenomena. However, the vast amount of data produced from up-to-date biological experimental processes needs appropriate data mining techniques to extract useful information. In this paper, we propose a method based on cluster analysis and Bayesian network learning for the molecular pharmacology of cancer. Specifically, the NCI60 dataset is analyzed by soft topographic vector quantization (STVQ) for cluster analysis and by Bayesian network learning for dependency analysis. Our results of the cluster analysis show that gene expression profiles are more related to the kind of cancer than to drug activity patterns. Dependency analysis using Bayesian networks reveals some biologically meaningful relationships among gene expression levels, drug activities, and cancer types, suggesting the usefulness of Bayesian network learning as a method for exploratory analysis of high-throughput genomic data.
机译:高通量基因组分析提供了对复杂生物现象的洞察力。但是,从最新的生物实验过程中产生的大量数据需要适当的数据挖掘技术来提取有用的信息。在本文中,我们提出了一种基于聚类分析和贝叶斯网络学习的癌症分子药理学方法。具体来说,NCI60数据集通过软地形矢量量化(STVQ)进行聚类分析,并通过贝叶斯网络学习进行依赖性分析。我们的聚类分析结果表明,基因表达谱与癌症的种类而不是与药物活性模式的关系更大。使用贝叶斯网络的依赖性分析揭示了基因表达水平,药物活性和癌症类型之间的一些生物学上有意义的关系,这表明贝叶斯网络学习作为探索性分析高通量基因组数据的方法的有用性。

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