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首页> 外文期刊>Bioinformatics >Validating clustering for gene expression data.
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Validating clustering for gene expression data.

机译:验证基因表达数据的聚类。

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MOTIVATION: Many clustering algorithms have been proposed for the analysis of gene expression data, but little guidance is available to help choose among them. We provide a systematic framework for assessing the results of clustering algorithms. Clustering algorithms attempt to partition the genes into groups exhibiting similar patterns of variation in expression level. Our methodology is to apply a clustering algorithm to the data from all but one experimental condition. The remaining condition is used to assess the predictive power of the resulting clusters-meaningful clusters should exhibit less variation in the remaining condition than clusters formed by chance. RESULTS: We successfully applied our methodology to compare six clustering algorithms on four gene expression data sets. We found our quantitative measures of cluster quality to be positively correlated with external standards of cluster quality.
机译:动机:已经提出了许多用于分析基因表达数据的聚类算法,但是几乎没有指导可用来帮助他们选择。我们提供了一个评估聚类算法结果的系统框架。聚类算法试图将基因分成表现出相似表达水平变化模式的组。我们的方法是将聚类算法应用于除一个实验条件之外的所有条件下的数据。剩余条件用于评估所得聚类的预测能力,有意义的聚类应该比偶然形成的聚类在剩余条件中表现出更少的变化。结果:我们成功地应用了我们的方法,在四个基因表达数据集上比较了六个聚类算法。我们发现我们对集群质量的定量度量与集群质量的外部标准正相关。

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