Cargando…

Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data

The recent advances in high-throughput data acquisition have driven a revolution in the study of human disease and determination of molecular biomarkers of disease states. It has become increasingly clear that many of the most important human diseases arise as the result of a complex interplay betwe...

Descripción completa

Detalles Bibliográficos
Autores principales: McDermott, Jason E., Costa, Michelle, Janszen, Derek, Singhal, Mudita, Tilton, Susan C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IOS Press 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3833603/
https://www.ncbi.nlm.nih.gov/pubmed/20534910
http://dx.doi.org/10.3233/DMA-2010-0695
_version_ 1782291868123398144
author McDermott, Jason E.
Costa, Michelle
Janszen, Derek
Singhal, Mudita
Tilton, Susan C.
author_facet McDermott, Jason E.
Costa, Michelle
Janszen, Derek
Singhal, Mudita
Tilton, Susan C.
author_sort McDermott, Jason E.
collection PubMed
description The recent advances in high-throughput data acquisition have driven a revolution in the study of human disease and determination of molecular biomarkers of disease states. It has become increasingly clear that many of the most important human diseases arise as the result of a complex interplay between several factors including environmental factors, such as exposure to toxins or pathogens, diet, lifestyle, and the genetics of the individual patient. Recent research has begun to describe these factors in the context of networks which describe relationships between biological components, such as genes, proteins and metabolites, and have made progress towards the understanding of disease as a dysfunction of the entire system, rather than, for example, mutations in single genes. We provide a summary of some of the recent work in this area, focusing on how the integration of different kinds of complementary data, and analysis of biological networks and pathways can lead to discovery of robust, specific and useful biomarkers of disease and how these methods can help shed light on the mechanisms and etiology of the diseases being studied.
format Online
Article
Text
id pubmed-3833603
institution National Center for Biotechnology Information
language English
publishDate 2010
publisher IOS Press
record_format MEDLINE/PubMed
spelling pubmed-38336032013-12-17 Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data McDermott, Jason E. Costa, Michelle Janszen, Derek Singhal, Mudita Tilton, Susan C. Dis Markers Other The recent advances in high-throughput data acquisition have driven a revolution in the study of human disease and determination of molecular biomarkers of disease states. It has become increasingly clear that many of the most important human diseases arise as the result of a complex interplay between several factors including environmental factors, such as exposure to toxins or pathogens, diet, lifestyle, and the genetics of the individual patient. Recent research has begun to describe these factors in the context of networks which describe relationships between biological components, such as genes, proteins and metabolites, and have made progress towards the understanding of disease as a dysfunction of the entire system, rather than, for example, mutations in single genes. We provide a summary of some of the recent work in this area, focusing on how the integration of different kinds of complementary data, and analysis of biological networks and pathways can lead to discovery of robust, specific and useful biomarkers of disease and how these methods can help shed light on the mechanisms and etiology of the diseases being studied. IOS Press 2010 2010-06-09 /pmc/articles/PMC3833603/ /pubmed/20534910 http://dx.doi.org/10.3233/DMA-2010-0695 Text en Copyright © 2010 Hindawi Publishing Corporation.
spellingShingle Other
McDermott, Jason E.
Costa, Michelle
Janszen, Derek
Singhal, Mudita
Tilton, Susan C.
Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data
title Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data
title_full Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data
title_fullStr Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data
title_full_unstemmed Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data
title_short Separating the Drivers from the Driven: Integrative Network and Pathway Approaches Aid Identification of Disease Biomarkers from High-Throughput Data
title_sort separating the drivers from the driven: integrative network and pathway approaches aid identification of disease biomarkers from high-throughput data
topic Other
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3833603/
https://www.ncbi.nlm.nih.gov/pubmed/20534910
http://dx.doi.org/10.3233/DMA-2010-0695
work_keys_str_mv AT mcdermottjasone separatingthedriversfromthedrivenintegrativenetworkandpathwayapproachesaididentificationofdiseasebiomarkersfromhighthroughputdata
AT costamichelle separatingthedriversfromthedrivenintegrativenetworkandpathwayapproachesaididentificationofdiseasebiomarkersfromhighthroughputdata
AT janszenderek separatingthedriversfromthedrivenintegrativenetworkandpathwayapproachesaididentificationofdiseasebiomarkersfromhighthroughputdata
AT singhalmudita separatingthedriversfromthedrivenintegrativenetworkandpathwayapproachesaididentificationofdiseasebiomarkersfromhighthroughputdata
AT tiltonsusanc separatingthedriversfromthedrivenintegrativenetworkandpathwayapproachesaididentificationofdiseasebiomarkersfromhighthroughputdata