Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma

<p>Abstract</p> <p>Background</p> <p>RNA amplification is necessary for profiling gene expression from small tissue samples. Previous studies have shown that the T7 based amplification techniques are reproducible but may distort the true abundance of targets. However, t...

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Main Authors: Orengo Christine, Wernisch Lorenz, Diboun Ilhem, Koltzenburg Martin
Format: Article
Language:English
Published: BMC 2006-10-01
Series:BMC Genomics
Online Access:http://www.biomedcentral.com/1471-2164/7/252
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spelling doaj-3364f056dd39469b9061f87d4f97af952020-11-24T21:24:56ZengBMCBMC Genomics1471-21642006-10-017125210.1186/1471-2164-7-252Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limmaOrengo ChristineWernisch LorenzDiboun IlhemKoltzenburg Martin<p>Abstract</p> <p>Background</p> <p>RNA amplification is necessary for profiling gene expression from small tissue samples. Previous studies have shown that the T7 based amplification techniques are reproducible but may distort the true abundance of targets. However, the consequences of such distortions on the ability to detect biological variation in expression have not been explored sufficiently to define the true extent of usability and limitations of such amplification techniques.</p> <p>Results</p> <p>We show that expression ratios are occasionally distorted by amplification using the Affymetrix small sample protocol version 2 due to a disproportional shift in intensity across biological samples. This occurs when a shift in one sample cannot be reflected in the other sample because the intensity would lie outside the dynamic range of the scanner. Interestingly, such distortions most commonly result in smaller ratios with the consequence of reducing the statistical significance of the ratios. This becomes more critical for less pronounced ratios where the evidence for differential expression is not strong. Indeed, statistical analysis by limma suggests that up to 87% of the genes with the largest and therefore most significant ratios (p < 10e<sup>-20</sup>) in the unamplified group have a p-value below 10e<sup>-20 </sup>in the amplified group. On the other hand, only 69% of the more moderate ratios (10e<sup>-20 </sup>< p < 10e<sup>-10</sup>) in the unamplified group have a p-value below 10e<sup>-10 </sup>in the amplified group. Our analysis also suggests that, overall, limma shows better overlap of genes found to be significant in the amplified and unamplified groups than the Z-scores statistics.</p> <p>Conclusion</p> <p>We conclude that microarray analysis of amplified samples performs best at detecting differences in gene expression, when these are large and when limma statistics are used.</p> http://www.biomedcentral.com/1471-2164/7/252
collection DOAJ
language English
format Article
sources DOAJ
author Orengo Christine
Wernisch Lorenz
Diboun Ilhem
Koltzenburg Martin
spellingShingle Orengo Christine
Wernisch Lorenz
Diboun Ilhem
Koltzenburg Martin
Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma
BMC Genomics
author_facet Orengo Christine
Wernisch Lorenz
Diboun Ilhem
Koltzenburg Martin
author_sort Orengo Christine
title Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma
title_short Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma
title_full Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma
title_fullStr Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma
title_full_unstemmed Microarray analysis after RNA amplification can detect pronounced differences in gene expression using limma
title_sort microarray analysis after rna amplification can detect pronounced differences in gene expression using limma
publisher BMC
series BMC Genomics
issn 1471-2164
publishDate 2006-10-01
description <p>Abstract</p> <p>Background</p> <p>RNA amplification is necessary for profiling gene expression from small tissue samples. Previous studies have shown that the T7 based amplification techniques are reproducible but may distort the true abundance of targets. However, the consequences of such distortions on the ability to detect biological variation in expression have not been explored sufficiently to define the true extent of usability and limitations of such amplification techniques.</p> <p>Results</p> <p>We show that expression ratios are occasionally distorted by amplification using the Affymetrix small sample protocol version 2 due to a disproportional shift in intensity across biological samples. This occurs when a shift in one sample cannot be reflected in the other sample because the intensity would lie outside the dynamic range of the scanner. Interestingly, such distortions most commonly result in smaller ratios with the consequence of reducing the statistical significance of the ratios. This becomes more critical for less pronounced ratios where the evidence for differential expression is not strong. Indeed, statistical analysis by limma suggests that up to 87% of the genes with the largest and therefore most significant ratios (p < 10e<sup>-20</sup>) in the unamplified group have a p-value below 10e<sup>-20 </sup>in the amplified group. On the other hand, only 69% of the more moderate ratios (10e<sup>-20 </sup>< p < 10e<sup>-10</sup>) in the unamplified group have a p-value below 10e<sup>-10 </sup>in the amplified group. Our analysis also suggests that, overall, limma shows better overlap of genes found to be significant in the amplified and unamplified groups than the Z-scores statistics.</p> <p>Conclusion</p> <p>We conclude that microarray analysis of amplified samples performs best at detecting differences in gene expression, when these are large and when limma statistics are used.</p>
url http://www.biomedcentral.com/1471-2164/7/252
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