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Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods

Changes in cellular functions in response to drug therapy are mediated by specific transcriptional profiles resulting from the induction or repression in the activity of a number of genes, thereby modifying the preexisting gene activity pattern of the drug-targeted cell(s). Recombinant human interfe...

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Autores principales: Baranzini, Sergio E, Mousavi, Parvin, Rio, Jordi, Caillier, Stacy J, Stillman, Althea, Villoslada, Pablo, Wyatt, Matthew M, Comabella, Manuel, Greller, Larry D, Somogyi, Roland, Montalban, Xavier, Oksenberg, Jorge R
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2005
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC539058/
https://www.ncbi.nlm.nih.gov/pubmed/15630474
http://dx.doi.org/10.1371/journal.pbio.0030002
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author Baranzini, Sergio E
Mousavi, Parvin
Rio, Jordi
Caillier, Stacy J
Stillman, Althea
Villoslada, Pablo
Wyatt, Matthew M
Comabella, Manuel
Greller, Larry D
Somogyi, Roland
Montalban, Xavier
Oksenberg, Jorge R
author_facet Baranzini, Sergio E
Mousavi, Parvin
Rio, Jordi
Caillier, Stacy J
Stillman, Althea
Villoslada, Pablo
Wyatt, Matthew M
Comabella, Manuel
Greller, Larry D
Somogyi, Roland
Montalban, Xavier
Oksenberg, Jorge R
author_sort Baranzini, Sergio E
collection PubMed
description Changes in cellular functions in response to drug therapy are mediated by specific transcriptional profiles resulting from the induction or repression in the activity of a number of genes, thereby modifying the preexisting gene activity pattern of the drug-targeted cell(s). Recombinant human interferon beta (rIFNβ) is routinely used to control exacerbations in multiple sclerosis patients with only partial success, mainly because of adverse effects and a relatively large proportion of nonresponders. We applied advanced data-mining and predictive modeling tools to a longitudinal 70-gene expression dataset generated by kinetic reverse-transcription PCR from 52 multiple sclerosis patients treated with rIFNβ to discover higher-order predictive patterns associated with treatment outcome and to define the molecular footprint that rIFNβ engraves on peripheral blood mononuclear cells. We identified nine sets of gene triplets whose expression, when tested before the initiation of therapy, can predict the response to interferon beta with up to 86% accuracy. In addition, time-series analysis revealed potential key players involved in a good or poor response to interferon beta. Statistical testing of a random outcome class and tolerance to noise was carried out to establish the robustness of the predictive models. Large-scale kinetic reverse-transcription PCR, coupled with advanced data-mining efforts, can effectively reveal preexisting and drug-induced gene expression signatures associated with therapeutic effects.
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spelling pubmed-5390582004-12-28 Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods Baranzini, Sergio E Mousavi, Parvin Rio, Jordi Caillier, Stacy J Stillman, Althea Villoslada, Pablo Wyatt, Matthew M Comabella, Manuel Greller, Larry D Somogyi, Roland Montalban, Xavier Oksenberg, Jorge R PLoS Biol Research Article Changes in cellular functions in response to drug therapy are mediated by specific transcriptional profiles resulting from the induction or repression in the activity of a number of genes, thereby modifying the preexisting gene activity pattern of the drug-targeted cell(s). Recombinant human interferon beta (rIFNβ) is routinely used to control exacerbations in multiple sclerosis patients with only partial success, mainly because of adverse effects and a relatively large proportion of nonresponders. We applied advanced data-mining and predictive modeling tools to a longitudinal 70-gene expression dataset generated by kinetic reverse-transcription PCR from 52 multiple sclerosis patients treated with rIFNβ to discover higher-order predictive patterns associated with treatment outcome and to define the molecular footprint that rIFNβ engraves on peripheral blood mononuclear cells. We identified nine sets of gene triplets whose expression, when tested before the initiation of therapy, can predict the response to interferon beta with up to 86% accuracy. In addition, time-series analysis revealed potential key players involved in a good or poor response to interferon beta. Statistical testing of a random outcome class and tolerance to noise was carried out to establish the robustness of the predictive models. Large-scale kinetic reverse-transcription PCR, coupled with advanced data-mining efforts, can effectively reveal preexisting and drug-induced gene expression signatures associated with therapeutic effects. Public Library of Science 2005-01 2004-12-28 /pmc/articles/PMC539058/ /pubmed/15630474 http://dx.doi.org/10.1371/journal.pbio.0030002 Text en Copyright: © 2004 Baranzini 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
Baranzini, Sergio E
Mousavi, Parvin
Rio, Jordi
Caillier, Stacy J
Stillman, Althea
Villoslada, Pablo
Wyatt, Matthew M
Comabella, Manuel
Greller, Larry D
Somogyi, Roland
Montalban, Xavier
Oksenberg, Jorge R
Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods
title Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods
title_full Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods
title_fullStr Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods
title_full_unstemmed Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods
title_short Transcription-Based Prediction of Response to IFNβ Using Supervised Computational Methods
title_sort transcription-based prediction of response to ifnβ using supervised computational methods
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC539058/
https://www.ncbi.nlm.nih.gov/pubmed/15630474
http://dx.doi.org/10.1371/journal.pbio.0030002
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