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Inter-Gene Correlation on Oligonucleotide ArraysHow Much Does Normalization Matter?

 

作者: David L Gold,   Jing Wang,   Kevin R Coombes,  

 

期刊: American Journal of PharmacoGenomics  (ADIS Available online 2005)
卷期: Volume 5, issue 4  

页码: 271-279

 

ISSN:1175-2203

 

年代: 2005

 

出版商: ADIS

 

关键词: Bioinformatics;Statistics

 

数据来源: ADIS

 

摘要:

Background and objectiveNormalization is a standard low-level preprocessing procedure in microarray data analysis to minimize the systematic technological variations and produce more reliable results. A variety of normalization approaches have been introduced and are widely applied. Normalization, however, remains controversial. The sensitivity of array results to normalization is an open question. No clear standard for comparing or judging normalization methods has yet emerged, and the effects of normalization on gene-to-gene co-expression are unclear.MethodsIn this investigation, we applied 1-, 2-, andN-quantile normalization to several publicly available microarray datasets quantified with either MAS 5.0 or dCHIP and evaluated the effect on gene-to-gene co-expression. We introduced a graphical method to explore trends in gene correlation.ResultsWe found clear differences in the distributions of gene dependencies by normalization method. Increasing the number of standardized quantiles in the normalization reduced trends in correlation by signal intensity in MAS 5.0 quantifications but not dCHIP. Increasing the number of standardized quantiles did not markedly reduce the correlation of known overlapping targets with MAS 5.0.ConclusionsNormalization plays a very important role in the estimation of inter-gene dependency. Caution should be used when making inferences concerning gene-wise dependencies with microarrays until this source of variation is better understood.

 

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