Kim Jin Hyuk, Shin Dong Mi, Lee Yong Sung
Department of Physiology, College of Medicine, Hanyang University, Hangdang-dong, Seoul 133-791, Korea.
Exp Mol Med. 2002 Jul 31;34(3):224-32. doi: 10.1038/emm.2002.31.
Normalization of the data of cDNA microarray is an obligatory step during microarray experiments due to the relatively frequent non-specific errors. Generally, normalization of microarray data is based on the null hypothesis and variance model. In the Yang's model (Yang et al., 2001), at least two types of noises are included. The one is additive noise and the other is multiplicative noise. Usually, background is considered as one of additive noise to the signal and the variation between the signal pixels is the representative multiplicative noise. In this study, the relation between the signal (spot intensity minus background intensity) and background was observed and the influence of background on normalization as a representative additive factor was investigated. Although the relation has not been considered as a factor affecting the normalization, it could improve the accuracy of microarray data when the normalization was carried out considering signal/background ratio. The background dependent normalization decreased the number of genes whose expression levels were changed significantly and it could make their distribution more consistent through the whole range of signal intensities. In this study, printing pin dependent normalization was also carried out regarding the printing pin as a representative multiplicative noise. It improved the distribution of spots in the Cy3-Cy5 scatter plot, but its effect was slight. These studies suggest that there are some influences of the signals on the local backgrounds and they must be considered for the normalization of cDNA microarray data.
由于相对频繁的非特异性误差,cDNA微阵列数据的归一化是微阵列实验中的一个必要步骤。一般来说,微阵列数据的归一化基于零假设和方差模型。在Yang模型(Yang等人,2001年)中,至少包括两种类型的噪声。一种是加性噪声,另一种是乘性噪声。通常,背景被视为信号的加性噪声之一,信号像素之间的变化是典型的乘性噪声。在本研究中,观察了信号(斑点强度减去背景强度)与背景之间的关系,并研究了背景作为代表性加性因子对归一化的影响。虽然这种关系尚未被视为影响归一化的一个因素,但在考虑信号/背景比进行归一化时,它可以提高微阵列数据的准确性。依赖背景的归一化减少了表达水平发生显著变化的基因数量,并且可以使它们在整个信号强度范围内的分布更加一致。在本研究中,还将打印针视为典型的乘性噪声进行了依赖打印针的归一化。它改善了Cy3-Cy5散点图中斑点的分布,但其效果轻微。这些研究表明,信号对局部背景存在一些影响,在cDNA微阵列数据归一化时必须考虑这些影响。