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Robust cluster analysis of microarray gene expression data with the number of clusters determined biologically.

机译:对微阵列基因表达数据进行稳健的聚类分析,并通过生物学方法确定簇的数量。

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Motivation: The success of each method of cluster analysis depends on how well its underlying model describes the patterns of expression. Outlier-resistant and distribution-insensitive clustering of genes are robust against violations of model assumptions. Results: A measure of dissimilarity that combines advantages of the Euclidean distance and the correlation coefficient is introduced. The measure can be made robust using a rank order correlation coefficient. A robust graphical method of summarizing the results of cluster analysis and a biological method of determining the number of clusters are also presented. These methods are applied to a public data set, showing that rank-based methods perform better than log-based methods. Availability: Software is available from http://www.davidbickel.com. Contact: dbickel@mail.mcg.edu Supplementary Information: http://www.davidbickel.com will have updates and related articles
机译:动机:聚类分析的每种方法的成功取决于其基础模型对表达模式的描述程度。基因的离群值抗性和对分布不敏感的聚类对于抵制模型假设具有强大的抵抗力。结果:结合欧几里德距离和相关系数的优点,提出了一种相异度量。可以使用等级相关系数来使该测量变得鲁棒。还介绍了概述聚类分析结果的鲁棒图形方法和确定聚类数量的生物学方法。这些方法应用于公共数据集,表明基于排名的方法比基于日志的方法执行得更好。可用性:可从http://www.davidbickel.com获得软件。联系人:dbickel@mail.mcg.edu补充信息:http://www.davidbickel.com将具有更新和相关文章

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