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Deriving quantitative conclusions from microarray expression data.

机译:从微阵列表达数据得出定量结论。

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Motivation: The last few years have seen the development of DNA microarray technology that allows simultaneous measurement of the expression levels of thousands of genes. While many methods have been developed to analyze such data, most have been visualization-based. Methods that yield quantitative conclusions have been diverse and complex. Results: We present two straightforward methods for identifying specific genes whose expression is linked with a phenotype or outcome variable as well as for systematically predicting sample class membership: (1) a conservative, permutation-based approach to identifying differentially expressed genes; (2) an augmentation of K-nearest-neighbor pattern classification. Our analyses replicate the quantitative conclusions of Golub et al. (1999; Science, 286, 531-537) on leukemia data, with better classification results, using far simpler methods. With the breast tumor data of Perou et al. (2000; Nature, 406, 747-752), the methods lend rigorous quantitative support to the conclusions of the original paper. In the case of the lymphoma data in Alizadeh et al. (2000; Nature, 403, 503-511), our analyses only partially support the conclusions of the original authors. Availability: The software and supplementary information are available freely to researchers at academic and non-profit institutions at http://cc.ucsf.edu/jain/public Contact: ajain
机译:动机:最近几年看到了DNA微阵列技术的发展,该技术可以同时测量数千种基因的表达水平。尽管已开发出许多方法来分析此类数据,但大多数方法都是基于可视化的。产生定量结论的方法多种多样且复杂。结果:我们提供了两种直接的方法来鉴定表达与表型或结果变量相关的特定基因,以及系统地预测样品类别成员:(1)一种基于置换的保守方法,用于鉴定差异表达的基因; (2)增强了K最近邻模式分类。我们的分析重复了Golub等人的定量结论。 (1999; Science,286,531-537),使用简单得多的方法,对白血病数据具有更好的分类结果。随着佩鲁等人的乳腺肿瘤数据。 (2000; Nature,406,747-752),这些方法为原始论文的结论提供了严格的定量支持。对于淋巴瘤,Alizadeh等人的数据。 (2000; Nature,403,503-511),我们的分析仅部分支持原始作者的结论。可用性:该软件和补充信息可免费从学术机构和非营利机构的研究人员处获得,网址为http://cc.ucsf.edu/jain/public联系人:ajain

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