Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging

Abstract Background Cellular aging is best studied in the budding yeast Saccharomyces cerevisiae. As an example of a pleiotropic trait, yeast lifespan is influenced by hundreds of interconnected genes. However, no quantitative methods are currently available to infer system-level changes in gene net...

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Main Author: Hong Qin
Format: Article
Language:English
Published: BMC 2019-11-01
Series:BMC Bioinformatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12859-019-3177-7
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spelling doaj-b4475f333d9c44139746694bf8bbe5b32020-11-25T04:11:31ZengBMCBMC Bioinformatics1471-21052019-11-0120111010.1186/s12859-019-3177-7Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular agingHong Qin0Department of Computer Science and Engineering, Department of Biology, Geology and Environmental Science, SimCenter, University of Tennessee at ChattanoogaAbstract Background Cellular aging is best studied in the budding yeast Saccharomyces cerevisiae. As an example of a pleiotropic trait, yeast lifespan is influenced by hundreds of interconnected genes. However, no quantitative methods are currently available to infer system-level changes in gene networks during cellular aging. Results We propose a parsimonious mathematical model of cellular aging based on stochastic gene interaction networks. This network model is made of only non-aging components: the strength of gene interactions declines with a constant mortality rate. Death of a cell occurs in the model when an essential node loses all of its interactions with other nodes, and is equivalent to the deletion of an essential gene. Stochasticity of gene interactions is modeled using a binomial distribution. We show that the exponential increase of mortality rate over time can emerge from this gene network model during the early stages of aging.We developed a maximal likelihood approach to estimate three lifespan-influencing network parameters from experimental lifespans: t 0, the initial virtual age of the network system; n, the average lifespan-influencing interactions per essential node; and R, the initial mortality rate. We applied this model to yeast mutants with known effects on replicative lifespans. We found that deletion of SIR2, FOB1, and HXK2 considerably altered the initial virtual age but not the average lifespan-influencing interactions per essential node, suggesting that these mutations mainly influence the reliability of gene interactions but not the overall configurations of gene networks.We applied this model to investigate replicative lifespans of yeast natural isolates. We estimated that the average number of lifespan-influencing interactions per essential node is 7.0 (6.1–8) and the average estimated initial virtual age is 45.4 (30.6–74) cell divisions in these isolates. We also found that t 0 could potentially mediate the observed Strehler-Mildvan correlation in yeast natural isolates. Conclusions Our theoretical model provides a parsimonious interpretation of experimental lifespan data from the perspective of gene networks. We hope that our work will stimulate more interest in developing network models to study aging as a pleiotropic trait.http://link.springer.com/article/10.1186/s12859-019-3177-7Replicative lifespanCellular agingGompertzGene networksSaccharomyces cerevisiae
collection DOAJ
language English
format Article
sources DOAJ
author Hong Qin
spellingShingle Hong Qin
Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
BMC Bioinformatics
Replicative lifespan
Cellular aging
Gompertz
Gene networks
Saccharomyces cerevisiae
author_facet Hong Qin
author_sort Hong Qin
title Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
title_short Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
title_full Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
title_fullStr Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
title_full_unstemmed Estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
title_sort estimating network changes from lifespan measurements using a parsimonious gene network model of cellular aging
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2019-11-01
description Abstract Background Cellular aging is best studied in the budding yeast Saccharomyces cerevisiae. As an example of a pleiotropic trait, yeast lifespan is influenced by hundreds of interconnected genes. However, no quantitative methods are currently available to infer system-level changes in gene networks during cellular aging. Results We propose a parsimonious mathematical model of cellular aging based on stochastic gene interaction networks. This network model is made of only non-aging components: the strength of gene interactions declines with a constant mortality rate. Death of a cell occurs in the model when an essential node loses all of its interactions with other nodes, and is equivalent to the deletion of an essential gene. Stochasticity of gene interactions is modeled using a binomial distribution. We show that the exponential increase of mortality rate over time can emerge from this gene network model during the early stages of aging.We developed a maximal likelihood approach to estimate three lifespan-influencing network parameters from experimental lifespans: t 0, the initial virtual age of the network system; n, the average lifespan-influencing interactions per essential node; and R, the initial mortality rate. We applied this model to yeast mutants with known effects on replicative lifespans. We found that deletion of SIR2, FOB1, and HXK2 considerably altered the initial virtual age but not the average lifespan-influencing interactions per essential node, suggesting that these mutations mainly influence the reliability of gene interactions but not the overall configurations of gene networks.We applied this model to investigate replicative lifespans of yeast natural isolates. We estimated that the average number of lifespan-influencing interactions per essential node is 7.0 (6.1–8) and the average estimated initial virtual age is 45.4 (30.6–74) cell divisions in these isolates. We also found that t 0 could potentially mediate the observed Strehler-Mildvan correlation in yeast natural isolates. Conclusions Our theoretical model provides a parsimonious interpretation of experimental lifespan data from the perspective of gene networks. We hope that our work will stimulate more interest in developing network models to study aging as a pleiotropic trait.
topic Replicative lifespan
Cellular aging
Gompertz
Gene networks
Saccharomyces cerevisiae
url http://link.springer.com/article/10.1186/s12859-019-3177-7
work_keys_str_mv AT hongqin estimatingnetworkchangesfromlifespanmeasurementsusingaparsimoniousgenenetworkmodelofcellularaging
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