Back to Search Start Over

Modeling genome-wide enzyme evolution predicts strong epistasis underlying catalytic turnover rates.

Authors :
Heckmann, David
Heckmann, David
Zielinski, Daniel C
Palsson, Bernhard O
Heckmann, David
Heckmann, David
Zielinski, Daniel C
Palsson, Bernhard O
Source :
Nature communications; vol 9, iss 1, 5270; 2041-1723
Publication Year :
2018

Abstract

Systems biology describes cellular phenotypes as properties that emerge from the complex interactions of individual system components. Little is known about how these interactions have affected the evolution of metabolic enzymes. Here, we combine genome-scale metabolic modeling with population genetics models to simulate the evolution of enzyme turnover numbers (kcats) from a theoretical ancestor with inefficient enzymes. This systems view of biochemical evolution reveals strong epistatic interactions between metabolic genes that shape evolutionary trajectories and influence the magnitude of evolved kcats. Diminishing returns epistasis prevents enzymes from developing higher kcats in all reactions and keeps the organism far from the potential fitness optimum. Multifunctional enzymes cause synergistic epistasis that slows down adaptation. The resulting fitness landscape allows kcat evolution to be convergent. Predicted kcat parameters show a significant correlation with experimental data, validating our modeling approach. Our analysis reveals how evolutionary forces shape modern kcats and the whole of metabolism.

Details

Database :
OAIster
Journal :
Nature communications; vol 9, iss 1, 5270; 2041-1723
Notes :
application/pdf, Nature communications vol 9, iss 1, 5270 2041-1723
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367480780
Document Type :
Electronic Resource