Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.

Design of proteins with desired thermal properties is important for scientific and biotechnological applications. Here we developed a theoretical approach to predict the effect of mutations on protein stability from non-equilibrium unfolding simulations. We establish a relative measure based on appa...

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Main Authors: Jian Tian, Jaie C Woodard, Anna Whitney, Eugene I Shakhnovich
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-04-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1004207
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spelling doaj-0de565c5f8ba4e83acf0d1ba075a78932021-04-21T15:00:37ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582015-04-01114e100420710.1371/journal.pcbi.1004207Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.Jian TianJaie C WoodardAnna WhitneyEugene I ShakhnovichDesign of proteins with desired thermal properties is important for scientific and biotechnological applications. Here we developed a theoretical approach to predict the effect of mutations on protein stability from non-equilibrium unfolding simulations. We establish a relative measure based on apparent simulated melting temperatures that is independent of simulation length and, under certain assumptions, proportional to equilibrium stability, and we justify this theoretical development with extensive simulations and experimental data. Using our new method based on all-atom Monte-Carlo unfolding simulations, we carried out a saturating mutagenesis of Dihydrofolate Reductase (DHFR), a key target of antibiotics and chemotherapeutic drugs. The method predicted more than 500 stabilizing mutations, several of which were selected for detailed computational and experimental analysis. We find a highly significant correlation of r=0.65-0.68 between predicted and experimentally determined melting temperatures and unfolding denaturant concentrations for WT DHFR and 42 mutants. The correlation between energy of the native state and experimental denaturation temperature was much weaker, indicating the important role of entropy in protein stability. The most stabilizing point mutation was D27F, which is located in the active site of the protein, rendering it inactive. However for the rest of mutations outside of the active site we observed a weak yet statistically significant positive correlation between thermal stability and catalytic activity indicating the lack of a stability-activity tradeoff for DHFR. By combining stabilizing mutations predicted by our method, we created a highly stable catalytically active E. coli DHFR mutant with measured denaturation temperature 7.2°C higher than WT. Prediction results for DHFR and several other proteins indicate that computational approaches based on unfolding simulations are useful as a general technique to discover stabilizing mutations.https://doi.org/10.1371/journal.pcbi.1004207
collection DOAJ
language English
format Article
sources DOAJ
author Jian Tian
Jaie C Woodard
Anna Whitney
Eugene I Shakhnovich
spellingShingle Jian Tian
Jaie C Woodard
Anna Whitney
Eugene I Shakhnovich
Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
PLoS Computational Biology
author_facet Jian Tian
Jaie C Woodard
Anna Whitney
Eugene I Shakhnovich
author_sort Jian Tian
title Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
title_short Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
title_full Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
title_fullStr Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
title_full_unstemmed Thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
title_sort thermal stabilization of dihydrofolate reductase using monte carlo unfolding simulations and its functional consequences.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2015-04-01
description Design of proteins with desired thermal properties is important for scientific and biotechnological applications. Here we developed a theoretical approach to predict the effect of mutations on protein stability from non-equilibrium unfolding simulations. We establish a relative measure based on apparent simulated melting temperatures that is independent of simulation length and, under certain assumptions, proportional to equilibrium stability, and we justify this theoretical development with extensive simulations and experimental data. Using our new method based on all-atom Monte-Carlo unfolding simulations, we carried out a saturating mutagenesis of Dihydrofolate Reductase (DHFR), a key target of antibiotics and chemotherapeutic drugs. The method predicted more than 500 stabilizing mutations, several of which were selected for detailed computational and experimental analysis. We find a highly significant correlation of r=0.65-0.68 between predicted and experimentally determined melting temperatures and unfolding denaturant concentrations for WT DHFR and 42 mutants. The correlation between energy of the native state and experimental denaturation temperature was much weaker, indicating the important role of entropy in protein stability. The most stabilizing point mutation was D27F, which is located in the active site of the protein, rendering it inactive. However for the rest of mutations outside of the active site we observed a weak yet statistically significant positive correlation between thermal stability and catalytic activity indicating the lack of a stability-activity tradeoff for DHFR. By combining stabilizing mutations predicted by our method, we created a highly stable catalytically active E. coli DHFR mutant with measured denaturation temperature 7.2°C higher than WT. Prediction results for DHFR and several other proteins indicate that computational approaches based on unfolding simulations are useful as a general technique to discover stabilizing mutations.
url https://doi.org/10.1371/journal.pcbi.1004207
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