DANIELE DE MARTINO
Fecha: Lunes, 27 de enero de 2020
Hora: 12:30
Lugar: Instituto de Biología Integrativa de Sistemas (I2SYSBIO) Sala Seminarios.
Organiza: Instituto de Biología Integrativa de Sistemas I2SysBio (UV-CSIC).
Resumen:
How much is the metabolic state of bacteria optimal for growth?
Optimality is a standard modeling assumption
(FBA or flux balance analysis, based on linear programming & exponential
growth takeover) but this contrasts with observed single cell growth rate
variability. In this seminar I will present a statistical mechanics approach to
single cell metabolism based on maximum entropy modeling.
The model, applied to the bacterium E coli, provides a better match to
measured fluxes with respect to FBA and it makes a wide range of predictions: on flux variability, regulation, and correlations; on the relative importance of stoichiometry vs. optimization; on scaling relations for growth rate distributions, the latter being verified by single cell experiments. Why not optimal? Statistical mechanics approaches hint at minimum information costs to achieve a certain optimization and show a tradeoff between
optimization and adaptation in the form of a fluctuation theorem.
Reference: De Martino, D. et al. (2018) Statistical mechanics for metabolic
networks during steady state growth. Nature communications 9: 1-9.