Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations

BACKGROUND:Despite the widespread use of microarrays, much ambiguity regarding data analysis, interpretation and correlation of the different technologies exists. There is a considerable amount of interest in correlating results obtained between different microarray platforms. To date, only a few cr...

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Main Authors: Shippy, Richard, Sendera, Timothy, Lockner, Randall, Palaniappan, Chockalingam, Kaysser-Kranich, Tamma, Watts, George, Alsobrook, John
Other Authors: GE Heathcare (formerly Amersham Biosciences) Chandler, Arizona 85248, USA
Language:en
Published: BioMed Central 2004
Online Access:http://hdl.handle.net/10150/610395
http://arizona.openrepository.com/arizona/handle/10150/610395
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-6103952016-05-22T03:02:05Z Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations Shippy, Richard Sendera, Timothy Lockner, Randall Palaniappan, Chockalingam Kaysser-Kranich, Tamma Watts, George Alsobrook, John GE Heathcare (formerly Amersham Biosciences) Chandler, Arizona 85248, USA Microarray Shared Service, Arizona Cancer Center, Tucson, Arizona 85724, USA Child Study Center, Yale University School of Medicine, New Haven, Connecticut 06510, USA BACKGROUND:Despite the widespread use of microarrays, much ambiguity regarding data analysis, interpretation and correlation of the different technologies exists. There is a considerable amount of interest in correlating results obtained between different microarray platforms. To date, only a few cross-platform evaluations have been published and unfortunately, no guidelines have been established on the best methods of making such correlations. To address this issue we conducted a thorough evaluation of two commercial microarray platforms to determine an appropriate methodology for making cross-platform correlations.RESULTS:In this study, expression measurements for 10,763 genes uniquely represented on Affymetrix U133A/B GeneChips(R) and Amersham CodeLinkTM UniSet Human 20 K microarrays were compared. For each microarray platform, five technical replicates, derived from the same total RNA samples, were labeled, hybridized, and quantified according to each manufacturers' standard protocols. The correlation coefficient (r) of differential expression ratios for the entire set of 10,763 overlapping genes was 0.62 between platforms. However, the correlation improved significantly (r = 0.79) when genes within noise were excluded. In addition to levels of inter-platform correlation, we evaluated precision, statistical-significance profiles, power, and noise levels for each microarray platform. Accuracy of differential expression was measured against real-time PCR for 25 genes and both platforms correlated well with r values of 0.92 and 0.79 for CodeLink and GeneChip, respectively.CONCLUSIONS:As a result of this study, we recommend using only genes called 'present' in cross-platform correlations. However, as in this study, a large number of genes may be lost from the correlation due to differing levels of noise between platforms. This is an important consideration given the apparent difference in sensitivity of the two platforms. Data from microarray analysis need to be interpreted cautiously and therefore, we provide guidelines for making cross-platform correlations. In all, this study represents the most comprehensive and specifically designed comparison of short-oligonucleotide microarray platforms to date using the largest set of overlapping genes. 2004 Article BMC Genomics 2004, 5:61 doi:10.1186/1471-2164-5-61 10.1186/1471-2164-5-61 http://hdl.handle.net/10150/610395 http://arizona.openrepository.com/arizona/handle/10150/610395 1471-2164 BMC Genomics en http://www.biomedcentral.com/1471-2164/5/61 © 2004 Shippy et al; licensee BioMed Central Ltd. This is an open-access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0) BioMed Central
collection NDLTD
language en
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description BACKGROUND:Despite the widespread use of microarrays, much ambiguity regarding data analysis, interpretation and correlation of the different technologies exists. There is a considerable amount of interest in correlating results obtained between different microarray platforms. To date, only a few cross-platform evaluations have been published and unfortunately, no guidelines have been established on the best methods of making such correlations. To address this issue we conducted a thorough evaluation of two commercial microarray platforms to determine an appropriate methodology for making cross-platform correlations.RESULTS:In this study, expression measurements for 10,763 genes uniquely represented on Affymetrix U133A/B GeneChips(R) and Amersham CodeLinkTM UniSet Human 20 K microarrays were compared. For each microarray platform, five technical replicates, derived from the same total RNA samples, were labeled, hybridized, and quantified according to each manufacturers' standard protocols. The correlation coefficient (r) of differential expression ratios for the entire set of 10,763 overlapping genes was 0.62 between platforms. However, the correlation improved significantly (r = 0.79) when genes within noise were excluded. In addition to levels of inter-platform correlation, we evaluated precision, statistical-significance profiles, power, and noise levels for each microarray platform. Accuracy of differential expression was measured against real-time PCR for 25 genes and both platforms correlated well with r values of 0.92 and 0.79 for CodeLink and GeneChip, respectively.CONCLUSIONS:As a result of this study, we recommend using only genes called 'present' in cross-platform correlations. However, as in this study, a large number of genes may be lost from the correlation due to differing levels of noise between platforms. This is an important consideration given the apparent difference in sensitivity of the two platforms. Data from microarray analysis need to be interpreted cautiously and therefore, we provide guidelines for making cross-platform correlations. In all, this study represents the most comprehensive and specifically designed comparison of short-oligonucleotide microarray platforms to date using the largest set of overlapping genes.
author2 GE Heathcare (formerly Amersham Biosciences) Chandler, Arizona 85248, USA
author_facet GE Heathcare (formerly Amersham Biosciences) Chandler, Arizona 85248, USA
Shippy, Richard
Sendera, Timothy
Lockner, Randall
Palaniappan, Chockalingam
Kaysser-Kranich, Tamma
Watts, George
Alsobrook, John
author Shippy, Richard
Sendera, Timothy
Lockner, Randall
Palaniappan, Chockalingam
Kaysser-Kranich, Tamma
Watts, George
Alsobrook, John
spellingShingle Shippy, Richard
Sendera, Timothy
Lockner, Randall
Palaniappan, Chockalingam
Kaysser-Kranich, Tamma
Watts, George
Alsobrook, John
Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
author_sort Shippy, Richard
title Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
title_short Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
title_full Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
title_fullStr Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
title_full_unstemmed Performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
title_sort performance evaluation of commercial short-oligonucleotide microarrays and the impact of noise in making cross-platform correlations
publisher BioMed Central
publishDate 2004
url http://hdl.handle.net/10150/610395
http://arizona.openrepository.com/arizona/handle/10150/610395
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