Cargando…

Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis

The ability to obtain gene expression profiles from human disease specimens provides an opportunity to identify relevant gene pathways, but is limited by the absence of data sets spanning a broad range of conditions. Here, we analyzed publicly available microarray data from 16 diverse skin condition...

Descripción completa

Detalles Bibliográficos
Autores principales: Inkeles, Megan S., Scumpia, Philip O., Swindell, William R., Lopez, David, Teles, Rosane M.B., Graeber, Thomas G., Meller, Stephan, Homey, Bernhard, Elder, James T., Gilliet, Michel, Modlin, Robert L., Pellegrini, Matteo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4268388/
https://www.ncbi.nlm.nih.gov/pubmed/25111617
http://dx.doi.org/10.1038/jid.2014.352
_version_ 1782349236606599168
author Inkeles, Megan S.
Scumpia, Philip O.
Swindell, William R.
Lopez, David
Teles, Rosane M.B.
Graeber, Thomas G.
Meller, Stephan
Homey, Bernhard
Elder, James T.
Gilliet, Michel
Modlin, Robert L.
Pellegrini, Matteo
author_facet Inkeles, Megan S.
Scumpia, Philip O.
Swindell, William R.
Lopez, David
Teles, Rosane M.B.
Graeber, Thomas G.
Meller, Stephan
Homey, Bernhard
Elder, James T.
Gilliet, Michel
Modlin, Robert L.
Pellegrini, Matteo
author_sort Inkeles, Megan S.
collection PubMed
description The ability to obtain gene expression profiles from human disease specimens provides an opportunity to identify relevant gene pathways, but is limited by the absence of data sets spanning a broad range of conditions. Here, we analyzed publicly available microarray data from 16 diverse skin conditions in order to gain insight into disease pathogenesis. Unsupervised hierarchical clustering separated samples by disease and common cellular and molecular pathways. Disease specific signatures were leveraged to build a multi-disease classifier which predicted the diagnosis of publicly and prospectively collected expression profiles with 93% accuracy. In one sample, the molecular classifier differed from the initial clinical diagnosis and correctly predicted the eventual diagnosis as the clinical presentation evolved. Finally, integration of interferon (IFN) regulated gene programs with the skin database revealed a significant inverse correlation between IFN–β and IFN–γ programs across all conditions. Our study provides an integrative approach to the study of gene signatures from multiple skin conditions, elucidating mechanisms of disease pathogenesis. Additionally, these studies provide a framework for developing tools for personalized medicine towards the precise prediction, prevention, and treatment of disease on an individual level.
format Online
Article
Text
id pubmed-4268388
institution National Center for Biotechnology Information
language English
publishDate 2014
record_format MEDLINE/PubMed
spelling pubmed-42683882015-07-01 Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis Inkeles, Megan S. Scumpia, Philip O. Swindell, William R. Lopez, David Teles, Rosane M.B. Graeber, Thomas G. Meller, Stephan Homey, Bernhard Elder, James T. Gilliet, Michel Modlin, Robert L. Pellegrini, Matteo J Invest Dermatol Article The ability to obtain gene expression profiles from human disease specimens provides an opportunity to identify relevant gene pathways, but is limited by the absence of data sets spanning a broad range of conditions. Here, we analyzed publicly available microarray data from 16 diverse skin conditions in order to gain insight into disease pathogenesis. Unsupervised hierarchical clustering separated samples by disease and common cellular and molecular pathways. Disease specific signatures were leveraged to build a multi-disease classifier which predicted the diagnosis of publicly and prospectively collected expression profiles with 93% accuracy. In one sample, the molecular classifier differed from the initial clinical diagnosis and correctly predicted the eventual diagnosis as the clinical presentation evolved. Finally, integration of interferon (IFN) regulated gene programs with the skin database revealed a significant inverse correlation between IFN–β and IFN–γ programs across all conditions. Our study provides an integrative approach to the study of gene signatures from multiple skin conditions, elucidating mechanisms of disease pathogenesis. Additionally, these studies provide a framework for developing tools for personalized medicine towards the precise prediction, prevention, and treatment of disease on an individual level. 2014-08-11 2015-01 /pmc/articles/PMC4268388/ /pubmed/25111617 http://dx.doi.org/10.1038/jid.2014.352 Text en http://www.nature.com/authors/editorial_policies/license.html#terms Users may view, print, copy, and download text and data-mine the content in such documents, for the purposes of academic research, subject always to the full Conditions of use:http://www.nature.com/authors/editorial_policies/license.html#terms
spellingShingle Article
Inkeles, Megan S.
Scumpia, Philip O.
Swindell, William R.
Lopez, David
Teles, Rosane M.B.
Graeber, Thomas G.
Meller, Stephan
Homey, Bernhard
Elder, James T.
Gilliet, Michel
Modlin, Robert L.
Pellegrini, Matteo
Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis
title Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis
title_full Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis
title_fullStr Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis
title_full_unstemmed Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis
title_short Comparison of Molecular Signatures from Multiple Skin Diseases Identifies Mechanisms of Immunopathogenesis
title_sort comparison of molecular signatures from multiple skin diseases identifies mechanisms of immunopathogenesis
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4268388/
https://www.ncbi.nlm.nih.gov/pubmed/25111617
http://dx.doi.org/10.1038/jid.2014.352
work_keys_str_mv AT inkelesmegans comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT scumpiaphilipo comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT swindellwilliamr comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT lopezdavid comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT telesrosanemb comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT graeberthomasg comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT mellerstephan comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT homeybernhard comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT elderjamest comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT gillietmichel comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT modlinrobertl comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis
AT pellegrinimatteo comparisonofmolecularsignaturesfrommultipleskindiseasesidentifiesmechanismsofimmunopathogenesis