1D and 2D annotation enrichment: a statistical method integrating quantitative proteomics with complementary high-throughput data

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1D and 2D annotation enrichment : a statistical method integrating quantitative proteomics with complementary high-throughput data. / Cox, Juergen; Mann, Matthias.

In: B M C Bioinformatics, Vol. 13 Suppl 16, 2012, p. S12.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Cox, J & Mann, M 2012, '1D and 2D annotation enrichment: a statistical method integrating quantitative proteomics with complementary high-throughput data', B M C Bioinformatics, vol. 13 Suppl 16, pp. S12. https://doi.org/10.1186/1471-2105-13-S16-S12

APA

Cox, J., & Mann, M. (2012). 1D and 2D annotation enrichment: a statistical method integrating quantitative proteomics with complementary high-throughput data. B M C Bioinformatics, 13 Suppl 16, S12. https://doi.org/10.1186/1471-2105-13-S16-S12

Vancouver

Cox J, Mann M. 1D and 2D annotation enrichment: a statistical method integrating quantitative proteomics with complementary high-throughput data. B M C Bioinformatics. 2012;13 Suppl 16:S12. https://doi.org/10.1186/1471-2105-13-S16-S12

Author

Cox, Juergen ; Mann, Matthias. / 1D and 2D annotation enrichment : a statistical method integrating quantitative proteomics with complementary high-throughput data. In: B M C Bioinformatics. 2012 ; Vol. 13 Suppl 16. pp. S12.

Bibtex

@article{655d5b499ee14901bf0ebd4da53b7b3a,
title = "1D and 2D annotation enrichment: a statistical method integrating quantitative proteomics with complementary high-throughput data",
abstract = "Quantitative proteomics now provides abundance ratios for thousands of proteins upon perturbations. These need to be functionally interpreted and correlated to other types of quantitative genome-wide data such as the corresponding transcriptome changes. We describe a new method, 2D annotation enrichment, which compares quantitative data from any two 'omics' types in the context of categorical annotation of the proteins or genes. Suitable genome-wide categories are membership of proteins in biochemical pathways, their annotation with gene ontology terms, sub-cellular localization, presence of protein domains or membership in protein complexes. 2D annotation enrichment detects annotation terms whose members show consistent behavior in one or both of the data dimensions. This consistent behavior can be a correlation between the two data types, such as simultaneous up- or down-regulation in both data dimensions, or a lack thereof, such as regulation in one dimension but no change in the other. For the statistical formulation of the test we introduce a two-dimensional generalization of the nonparametric two-sample test. The false discovery rate is stringently controlled by correcting for multiple hypothesis testing. We also describe one-dimensional annotation enrichment, which can be applied to single omics data. The 1D and 2D annotation enrichment algorithms are freely available as part of the Perseus software.",
keywords = "Algorithms, Data Interpretation, Statistical, Genes, Proteins, Proteomics, Software",
author = "Juergen Cox and Matthias Mann",
year = "2012",
doi = "10.1186/1471-2105-13-S16-S12",
language = "English",
volume = "13 Suppl 16",
pages = "S12",
journal = "B M C Bioinformatics",
issn = "1471-2105",
publisher = "BioMed Central Ltd.",

}

RIS

TY - JOUR

T1 - 1D and 2D annotation enrichment

T2 - a statistical method integrating quantitative proteomics with complementary high-throughput data

AU - Cox, Juergen

AU - Mann, Matthias

PY - 2012

Y1 - 2012

N2 - Quantitative proteomics now provides abundance ratios for thousands of proteins upon perturbations. These need to be functionally interpreted and correlated to other types of quantitative genome-wide data such as the corresponding transcriptome changes. We describe a new method, 2D annotation enrichment, which compares quantitative data from any two 'omics' types in the context of categorical annotation of the proteins or genes. Suitable genome-wide categories are membership of proteins in biochemical pathways, their annotation with gene ontology terms, sub-cellular localization, presence of protein domains or membership in protein complexes. 2D annotation enrichment detects annotation terms whose members show consistent behavior in one or both of the data dimensions. This consistent behavior can be a correlation between the two data types, such as simultaneous up- or down-regulation in both data dimensions, or a lack thereof, such as regulation in one dimension but no change in the other. For the statistical formulation of the test we introduce a two-dimensional generalization of the nonparametric two-sample test. The false discovery rate is stringently controlled by correcting for multiple hypothesis testing. We also describe one-dimensional annotation enrichment, which can be applied to single omics data. The 1D and 2D annotation enrichment algorithms are freely available as part of the Perseus software.

AB - Quantitative proteomics now provides abundance ratios for thousands of proteins upon perturbations. These need to be functionally interpreted and correlated to other types of quantitative genome-wide data such as the corresponding transcriptome changes. We describe a new method, 2D annotation enrichment, which compares quantitative data from any two 'omics' types in the context of categorical annotation of the proteins or genes. Suitable genome-wide categories are membership of proteins in biochemical pathways, their annotation with gene ontology terms, sub-cellular localization, presence of protein domains or membership in protein complexes. 2D annotation enrichment detects annotation terms whose members show consistent behavior in one or both of the data dimensions. This consistent behavior can be a correlation between the two data types, such as simultaneous up- or down-regulation in both data dimensions, or a lack thereof, such as regulation in one dimension but no change in the other. For the statistical formulation of the test we introduce a two-dimensional generalization of the nonparametric two-sample test. The false discovery rate is stringently controlled by correcting for multiple hypothesis testing. We also describe one-dimensional annotation enrichment, which can be applied to single omics data. The 1D and 2D annotation enrichment algorithms are freely available as part of the Perseus software.

KW - Algorithms

KW - Data Interpretation, Statistical

KW - Genes

KW - Proteins

KW - Proteomics

KW - Software

U2 - 10.1186/1471-2105-13-S16-S12

DO - 10.1186/1471-2105-13-S16-S12

M3 - Journal article

C2 - 23176165

VL - 13 Suppl 16

SP - S12

JO - B M C Bioinformatics

JF - B M C Bioinformatics

SN - 1471-2105

ER -

ID: 88592331