PLoS Computational Biology (Jan 2012)

Prediction of mutational tolerance in HIV-1 protease and reverse transcriptase using flexible backbone protein design.

  • Elisabeth Humphris-Narayanan,
  • Eyal Akiva,
  • Rocco Varela,
  • Shane Ó Conchúir,
  • Tanja Kortemme

DOI
https://doi.org/10.1371/journal.pcbi.1002639
Journal volume & issue
Vol. 8, no. 8
p. e1002639

Abstract

Read online

Predicting which mutations proteins tolerate while maintaining their structure and function has important applications for modeling fundamental properties of proteins and their evolution; it also drives progress in protein design. Here we develop a computational model to predict the tolerated sequence space of HIV-1 protease reachable by single mutations. We assess the model by comparison to the observed variability in more than 50,000 HIV-1 protease sequences, one of the most comprehensive datasets on tolerated sequence space. We then extend the model to a second protein, reverse transcriptase. The model integrates multiple structural and functional constraints acting on a protein and uses ensembles of protein conformations. We find the model correctly captures a considerable fraction of protease and reverse-transcriptase mutational tolerance and shows comparable accuracy using either experimentally determined or computationally generated structural ensembles. Predictions of tolerated sequence space afforded by the model provide insights into stability-function tradeoffs in the emergence of resistance mutations and into strengths and limitations of the computational model.