A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.

BACKGROUND: Cellular mechanisms leading to aging and therefore increasing susceptibility to age-related diseases are a central topic of research since aging is the ultimate, yet not understood mechanism of the fate of a cell. Studies with model organisms have been conducted to ellucidate these mecha...

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Main Authors: Esra Borklu Yucel, Kutlu O Ulgen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3244448?pdf=render
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spelling doaj-d69a3cad6fc444d686c9c46139c9b4542020-11-25T01:25:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-01612e2928410.1371/journal.pone.0029284A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.Esra Borklu YucelKutlu O UlgenBACKGROUND: Cellular mechanisms leading to aging and therefore increasing susceptibility to age-related diseases are a central topic of research since aging is the ultimate, yet not understood mechanism of the fate of a cell. Studies with model organisms have been conducted to ellucidate these mechanisms, and chronological aging of yeast has been extensively used as a model for oxidative stress and aging of postmitotic tissues in higher eukaryotes. METHODOLOGY/PRINCIPAL FINDINGS: The chronological aging network of yeast was reconstructed by integrating protein-protein interaction data with gene ontology terms. The reconstructed network was then statistically "tuned" based on the betweenness centrality values of the nodes to compensate for the computer automated method. Both the originally reconstructed and tuned networks were subjected to topological and modular analyses. Finally, an ultimate "heart" network was obtained via pooling the step specific key proteins, which resulted from the decomposition of the linear paths depicting several signaling routes in the tuned network. CONCLUSIONS/SIGNIFICANCE: The reconstructed networks are of scale-free and hierarchical nature, following a power law model with γ  =  1.49. The results of modular and topological analyses verified that the tuning method was successful. The significantly enriched gene ontology terms of the modular analysis confirmed also that the multifactorial nature of chronological aging was captured by the tuned network. The interplay between various signaling pathways such as TOR, Akt/PKB and cAMP/Protein kinase A was summarized in the "heart" network originated from linear path analysis. The deletion of four genes, TCB3, SNA3, PST2 and YGR130C, was found to increase the chronological life span of yeast. The reconstructed networks can also give insight about the effect of other cellular machineries on chronological aging by targeting different signaling pathways in the linear path analysis, along with unraveling of novel proteins playing part in these pathways.http://europepmc.org/articles/PMC3244448?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Esra Borklu Yucel
Kutlu O Ulgen
spellingShingle Esra Borklu Yucel
Kutlu O Ulgen
A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.
PLoS ONE
author_facet Esra Borklu Yucel
Kutlu O Ulgen
author_sort Esra Borklu Yucel
title A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.
title_short A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.
title_full A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.
title_fullStr A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.
title_full_unstemmed A network-based approach on elucidating the multi-faceted nature of chronological aging in S. cerevisiae.
title_sort network-based approach on elucidating the multi-faceted nature of chronological aging in s. cerevisiae.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description BACKGROUND: Cellular mechanisms leading to aging and therefore increasing susceptibility to age-related diseases are a central topic of research since aging is the ultimate, yet not understood mechanism of the fate of a cell. Studies with model organisms have been conducted to ellucidate these mechanisms, and chronological aging of yeast has been extensively used as a model for oxidative stress and aging of postmitotic tissues in higher eukaryotes. METHODOLOGY/PRINCIPAL FINDINGS: The chronological aging network of yeast was reconstructed by integrating protein-protein interaction data with gene ontology terms. The reconstructed network was then statistically "tuned" based on the betweenness centrality values of the nodes to compensate for the computer automated method. Both the originally reconstructed and tuned networks were subjected to topological and modular analyses. Finally, an ultimate "heart" network was obtained via pooling the step specific key proteins, which resulted from the decomposition of the linear paths depicting several signaling routes in the tuned network. CONCLUSIONS/SIGNIFICANCE: The reconstructed networks are of scale-free and hierarchical nature, following a power law model with γ  =  1.49. The results of modular and topological analyses verified that the tuning method was successful. The significantly enriched gene ontology terms of the modular analysis confirmed also that the multifactorial nature of chronological aging was captured by the tuned network. The interplay between various signaling pathways such as TOR, Akt/PKB and cAMP/Protein kinase A was summarized in the "heart" network originated from linear path analysis. The deletion of four genes, TCB3, SNA3, PST2 and YGR130C, was found to increase the chronological life span of yeast. The reconstructed networks can also give insight about the effect of other cellular machineries on chronological aging by targeting different signaling pathways in the linear path analysis, along with unraveling of novel proteins playing part in these pathways.
url http://europepmc.org/articles/PMC3244448?pdf=render
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