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Quantitative Evaluation of Established Clustering Methods for Gene Expression Data

机译:基因表达数据既定聚类方法的定量评价

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Analysis of gene expression data generated by microarray techniques often includes clustering. Although more reliable methods are available, hierarchical algorithms are still frequently employed. We clustered several data sets and quantitatively compared the performance of an agglomerative hierarchical approach using the average-linkage method with two partitioning procedures, k-means and fuzzy c-means. Investigation of the results revealed the superiority of the partitioning algorithms: the compactness of the clusters was markedly increased and the arrangement of the profiles into clusters more closely resembled biological categories. Therefore, we encourage analysts to critically scrutinize the results obtained by clustering.
机译:微阵列技术产生的基因表达数据通常包括聚类。 虽然可用的可靠方法可以使用更可靠的方法,但仍然经常使用分层算法。 我们聚集了几种数据集,并使用具有两个分区过程,K均值和模糊C-inse的平均连杆方法来定量地比较了附聚层次方法的性能。 研究结果揭示了分区算法的优越性:簇的紧凑性显着增加,并且轮廓的布置进入群集更像是与生物学类别相似。 因此,我们鼓励分析师彻底审查通过聚类获得的结果。

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