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Missing-value estimation using linear and non-linear regression with Bayesian gene selection.

机译:使用贝叶斯基因选择的线性和非线性回归进行缺失值估计。

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MOTIVATION: Data from microarray experiments are usually in the form of large matrices of expression levels of genes under different experimental conditions. Owing to various reasons, there are frequently missing values. Estimating these missing values is important because they affect downstream analysis, such as clustering, classification and network design. Several methods of missing-value estimation are in use. The problem has two parts: (1) selection of genes for estimation and (2) design of an estimation rule. RESULTS: We propose Bayesian variable selection to obtain genes to be used for estimation, and employ both linear and nonlinear regression for the estimation rule itself. Fast implementation issues for these methods are discussed, including the use of QR decomposition for parameter estimation. The proposed methods are tested on data sets arising from hereditary breast cancer and small round blue-cell tumors. The results compare very favorably with currently used methods based on the normalized root-mean-square error. AVAILABILITY: The appendix is available from http://gspsnap.tamu.edu/gspweb/zxb/missing_zxb/ (user: gspweb; passwd: gsplab).
机译:动机:来自微阵列实验的数据通常采用在不同实验条件下基因表达水平大的矩阵形式。由于各种原因,经常缺少值。估计这些缺失值很重要,因为它们会影响下游分析,例如聚类,分类和网络设计。缺失值估计的几种方法正在使用中。该问题包括两个部分:(1)选择用于估计的基因和(2)设计估计规则。结果:我们提出贝叶斯变量选择以获得用于估计的基因,并对估计规则本身采用线性和非线性回归。讨论了这些方法的快速实施问题,包括使用QR分解进行参数估计。在遗传性乳腺癌和小的圆形蓝细胞肿瘤产生的数据集上测试了提出的方法。结果与基于归一化均方根误差的当前使用方法相比非常有利。可用性:可以从http://gspsnap.tamu.edu/gspweb/zxb/missing_zxb/获取附录(用户:gspweb; passwd:gsplab)。

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