Detail
Article
Online article
FT
Medvik - BMC
  • Something wrong with this record ?

Monte-Carlo modeling of the central carbon metabolism of Lactococcus lactis: insights into metabolic regulation

E. Murabito, M. Verma, M. Bekker, D. Bellomo, HV. Westerhoff, B. Teusink, R. Steuer,

. 2014 ; 9 (9) : e106453.

Language English Country United States

Document type Journal Article, Research Support, Non-U.S. Gov't

Metabolic pathways are complex dynamic systems whose response to perturbations and environmental challenges are governed by multiple interdependencies between enzyme properties, reactions rates, and substrate levels. Understanding the dynamics arising from such a network can be greatly enhanced by the construction of a computational model that embodies the properties of the respective system. Such models aim to incorporate mechanistic details of cellular interactions to mimic the temporal behavior of the biochemical reaction system and usually require substantial knowledge of kinetic parameters to allow meaningful conclusions. Several approaches have been suggested to overcome the severe data requirements of kinetic modeling, including the use of approximative kinetics and Monte-Carlo sampling of reaction parameters. In this work, we employ a probabilistic approach to study the response of a complex metabolic system, the central metabolism of the lactic acid bacterium Lactococcus lactis, subject to perturbations and brief periods of starvation. Supplementing existing methodologies, we show that it is possible to acquire a detailed understanding of the control properties of a corresponding metabolic pathway model that is directly based on experimental observations. In particular, we delineate the role of enzymatic regulation to maintain metabolic stability and metabolic recovery after periods of starvation. It is shown that the feedforward activation of the pyruvate kinase by fructose-1,6-bisphosphate qualitatively alters the bifurcation structure of the corresponding pathway model, indicating a crucial role of enzymatic regulation to prevent metabolic collapse for low external concentrations of glucose. We argue that similar probabilistic methodologies will help our understanding of dynamic properties of small-, medium- and large-scale metabolic networks models.

References provided by Crossref.org

000      
00000naa a2200000 a 4500
001      
bmc15022994
003      
CZ-PrNML
005      
20150709122705.0
007      
ta
008      
150709s2014 xxu f 000 0|eng||
009      
AR
024    7_
$a 10.1371/journal.pone.0106453 $2 doi
035    __
$a (PubMed)25268481
040    __
$a ABA008 $b cze $d ABA008 $e AACR2
041    0_
$a eng
044    __
$a xxu
100    1_
$a Murabito, Ettore $u Manchester Institute of Biotechnology, School of Chemical Engineering and Analytical Sciences (CEAS), Manchester Centre for Integrative Systems Biology (MCISB), The University of Manchester, Manchester, United Kingdom.
245    10
$a Monte-Carlo modeling of the central carbon metabolism of Lactococcus lactis: insights into metabolic regulation / $c E. Murabito, M. Verma, M. Bekker, D. Bellomo, HV. Westerhoff, B. Teusink, R. Steuer,
520    9_
$a Metabolic pathways are complex dynamic systems whose response to perturbations and environmental challenges are governed by multiple interdependencies between enzyme properties, reactions rates, and substrate levels. Understanding the dynamics arising from such a network can be greatly enhanced by the construction of a computational model that embodies the properties of the respective system. Such models aim to incorporate mechanistic details of cellular interactions to mimic the temporal behavior of the biochemical reaction system and usually require substantial knowledge of kinetic parameters to allow meaningful conclusions. Several approaches have been suggested to overcome the severe data requirements of kinetic modeling, including the use of approximative kinetics and Monte-Carlo sampling of reaction parameters. In this work, we employ a probabilistic approach to study the response of a complex metabolic system, the central metabolism of the lactic acid bacterium Lactococcus lactis, subject to perturbations and brief periods of starvation. Supplementing existing methodologies, we show that it is possible to acquire a detailed understanding of the control properties of a corresponding metabolic pathway model that is directly based on experimental observations. In particular, we delineate the role of enzymatic regulation to maintain metabolic stability and metabolic recovery after periods of starvation. It is shown that the feedforward activation of the pyruvate kinase by fructose-1,6-bisphosphate qualitatively alters the bifurcation structure of the corresponding pathway model, indicating a crucial role of enzymatic regulation to prevent metabolic collapse for low external concentrations of glucose. We argue that similar probabilistic methodologies will help our understanding of dynamic properties of small-, medium- and large-scale metabolic networks models.
650    _2
$a adenosintrifosfát $x metabolismus $7 D000255
650    12
$a metabolismus sacharidů $7 D050260
650    _2
$a počítačová simulace $7 D003198
650    _2
$a zpětná vazba fyziologická $7 D025461
650    _2
$a fruktosadifosfáty $x metabolismus $7 D005635
650    _2
$a Lactococcus lactis $x metabolismus $7 D013294
650    _2
$a metabolické sítě a dráhy $7 D053858
650    _2
$a biologické modely $7 D008954
650    _2
$a statistické modely $7 D015233
650    _2
$a metoda Monte Carlo $7 D009010
655    _2
$a časopisecké články $7 D016428
655    _2
$a práce podpořená grantem $7 D013485
700    1_
$a Verma, Malkhey $u Manchester Institute of Biotechnology, School of Chemical Engineering and Analytical Sciences (CEAS), Manchester Centre for Integrative Systems Biology (MCISB), The University of Manchester, Manchester, United Kingdom.
700    1_
$a Bekker, Martijn $u Molecular Microbial Physiology, Swammerdam Institute for Life Sciences, University of Amsterdam, Amsterdam, The Netherlands.
700    1_
$a Bellomo, Domenico $u Systems Bioinformatics IBIVU and Netherlands Institute for Systems Biology (NISB), VU University Amsterdam, Amsterdam, The Netherlands.
700    1_
$a Westerhoff, Hans V $u Manchester Institute of Biotechnology, School of Chemical Engineering and Analytical Sciences (CEAS), Manchester Centre for Integrative Systems Biology (MCISB), The University of Manchester, Manchester, United Kingdom; Synthetic Systems Biology, Swammerdam Institute for Life Sciences, University of Amsterdam, Amsterdam, The Netherlands; Molecular Cell Physiology, FALW, VU University Amsterdam, Amsterdam, The Netherlands.
700    1_
$a Teusink, Bas $u Systems Bioinformatics IBIVU and Netherlands Institute for Systems Biology (NISB), VU University Amsterdam, Amsterdam, The Netherlands.
700    1_
$a Steuer, Ralf $u CzechGlobe - Global Change Research Center, Academy of Sciences of the Czech Republic, Brno, Czech Republic; Humboldt-University Berlin, Institute for Theoretical Biology, Berlin, Germany.
773    0_
$w MED00180950 $t PloS one $x 1932-6203 $g Roč. 9, č. 9 (2014), s. e106453
856    41
$u https://pubmed.ncbi.nlm.nih.gov/25268481 $y Pubmed
910    __
$a ABA008 $b sig $c sign $y a $z 0
990    __
$a 20150709 $b ABA008
991    __
$a 20150709122725 $b ABA008
999    __
$a ok $b bmc $g 1083333 $s 905987
BAS    __
$a 3
BAS    __
$a PreBMC
BMC    __
$a 2014 $b 9 $c 9 $d e106453 $i 1932-6203 $m PLoS One $n PLoS One $x MED00180950
LZP    __
$a Pubmed-20150709

Find record

Citation metrics

Loading data ...

Archiving options

Loading data ...