Cargando…

NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data

MOTIVATION: Reverse phase protein array (RPPA) is a powerful dot-blot technology that allows studying protein expression levels as well as post-translational modifications in a large number of samples simultaneously. Yet, correct interpretation of RPPA data has remained a major challenge for its bro...

Descripción completa

Detalles Bibliográficos
Autores principales: Troncale, Sylvie, Barbet, Aurélie, Coulibaly, Lamine, Henry, Emilie, He, Beilei, Barillot, Emmanuel, Dubois, Thierry, Hupé, Philippe, de Koning, Leanne
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3386279/
https://www.ncbi.nlm.nih.gov/pubmed/22761696
http://dx.doi.org/10.1371/journal.pone.0038686
_version_ 1782236963312500736
author Troncale, Sylvie
Barbet, Aurélie
Coulibaly, Lamine
Henry, Emilie
He, Beilei
Barillot, Emmanuel
Dubois, Thierry
Hupé, Philippe
de Koning, Leanne
author_facet Troncale, Sylvie
Barbet, Aurélie
Coulibaly, Lamine
Henry, Emilie
He, Beilei
Barillot, Emmanuel
Dubois, Thierry
Hupé, Philippe
de Koning, Leanne
author_sort Troncale, Sylvie
collection PubMed
description MOTIVATION: Reverse phase protein array (RPPA) is a powerful dot-blot technology that allows studying protein expression levels as well as post-translational modifications in a large number of samples simultaneously. Yet, correct interpretation of RPPA data has remained a major challenge for its broad-scale application and its translation into clinical research. Satisfying quantification tools are available to assess a relative protein expression level from a serial dilution curve. However, appropriate tools allowing the normalization of the data for external sources of variation are currently missing. RESULTS: Here we propose a new method, called NormaCurve, that allows simultaneous quantification and normalization of RPPA data. For this, we modified the quantification method SuperCurve in order to include normalization for (i) background fluorescence, (ii) variation in the total amount of spotted protein and (iii) spatial bias on the arrays. Using a spike-in design with a purified protein, we test the capacity of different models to properly estimate normalized relative expression levels. The best performing model, NormaCurve, takes into account a negative control array without primary antibody, an array stained with a total protein stain and spatial covariates. We show that this normalization is reproducible and we discuss the number of serial dilutions and the number of replicates that are required to obtain robust data. We thus provide a ready-to-use method for reliable and reproducible normalization of RPPA data, which should facilitate the interpretation and the development of this promising technology. AVAILABILITY: The raw data, the scripts and the NormaCurve package are available at the following web site: http://microarrays.curie.fr.
format Online
Article
Text
id pubmed-3386279
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-33862792012-07-03 NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data Troncale, Sylvie Barbet, Aurélie Coulibaly, Lamine Henry, Emilie He, Beilei Barillot, Emmanuel Dubois, Thierry Hupé, Philippe de Koning, Leanne PLoS One Research Article MOTIVATION: Reverse phase protein array (RPPA) is a powerful dot-blot technology that allows studying protein expression levels as well as post-translational modifications in a large number of samples simultaneously. Yet, correct interpretation of RPPA data has remained a major challenge for its broad-scale application and its translation into clinical research. Satisfying quantification tools are available to assess a relative protein expression level from a serial dilution curve. However, appropriate tools allowing the normalization of the data for external sources of variation are currently missing. RESULTS: Here we propose a new method, called NormaCurve, that allows simultaneous quantification and normalization of RPPA data. For this, we modified the quantification method SuperCurve in order to include normalization for (i) background fluorescence, (ii) variation in the total amount of spotted protein and (iii) spatial bias on the arrays. Using a spike-in design with a purified protein, we test the capacity of different models to properly estimate normalized relative expression levels. The best performing model, NormaCurve, takes into account a negative control array without primary antibody, an array stained with a total protein stain and spatial covariates. We show that this normalization is reproducible and we discuss the number of serial dilutions and the number of replicates that are required to obtain robust data. We thus provide a ready-to-use method for reliable and reproducible normalization of RPPA data, which should facilitate the interpretation and the development of this promising technology. AVAILABILITY: The raw data, the scripts and the NormaCurve package are available at the following web site: http://microarrays.curie.fr. Public Library of Science 2012-06-28 /pmc/articles/PMC3386279/ /pubmed/22761696 http://dx.doi.org/10.1371/journal.pone.0038686 Text en Troncale et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Troncale, Sylvie
Barbet, Aurélie
Coulibaly, Lamine
Henry, Emilie
He, Beilei
Barillot, Emmanuel
Dubois, Thierry
Hupé, Philippe
de Koning, Leanne
NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data
title NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data
title_full NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data
title_fullStr NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data
title_full_unstemmed NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data
title_short NormaCurve: A SuperCurve-Based Method That Simultaneously Quantifies and Normalizes Reverse Phase Protein Array Data
title_sort normacurve: a supercurve-based method that simultaneously quantifies and normalizes reverse phase protein array data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3386279/
https://www.ncbi.nlm.nih.gov/pubmed/22761696
http://dx.doi.org/10.1371/journal.pone.0038686
work_keys_str_mv AT troncalesylvie normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT barbetaurelie normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT coulibalylamine normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT henryemilie normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT hebeilei normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT barillotemmanuel normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT duboisthierry normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT hupephilippe normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata
AT dekoningleanne normacurveasupercurvebasedmethodthatsimultaneouslyquantifiesandnormalizesreversephaseproteinarraydata