Computational protein design is a challenge for implicit solvation models.

TitleComputational protein design is a challenge for implicit solvation models.
Publication TypeJournal Article
Year of Publication2005
AuthorsJaramillo, A., and Wodak S. J.
JournalBiophys J
Volume88
Issue1
Pagination156-71
Date Published2005 Jan
ISSN0006-3495
KeywordsAlgorithms, Amino Acid Sequence, Amino Acids, Biophysics, Calibration, Computer Simulation, Crystallography, X-Ray, Lysine, Models, Molecular, Models, Statistical, Models, Theoretical, Molecular Sequence Data, Protein Conformation, Protein Folding, Proteins, Sequence Homology, Amino Acid, Software, Solvents, Static Electricity, Statistics as Topic, Thermodynamics, Threonine, Valine, Water
Abstract

Increasingly complex schemes for representing solvent effects in an implicit fashion are being used in computational analyses of biological macromolecules. These schemes speed up the calculations by orders of magnitude and are assumed to compromise little on essential features of the solvation phenomenon. In this work we examine this assumption. Five implicit solvation models, a surface area-based empirical model, two models that approximate the generalized Born treatment and a finite difference Poisson-Boltzmann method are challenged in situations differing from those where these models were calibrated. These situations are encountered in automatic protein design procedures, whose job is to select sequences, which stabilize a given protein 3D structure, from a large number of alternatives. To this end we evaluate the energetic cost of burying amino acids in thousands of environments with different solvent exposures belonging, respectively, to decoys built with random sequences and to native protein crystal structures. In addition we perform actual sequence design calculations. Except for the crudest surface area-based procedure, all the tested models tend to favor the burial of polar amino acids in the protein interior over nonpolar ones, a behavior that leads to poor performance in protein design calculations. We show, on the other hand, that three of the examined models are nonetheless capable of discriminating between the native fold and many nonnative alternatives, a test commonly used to validate force fields. It is concluded that protein design is a particularly challenging test for implicit solvation models because it requires accurate estimates of the solvation contribution of individual residues. This contrasts with native recognition, which depends less on solvation and more on other nonbonded contributions.

DOI10.1529/biophysj.104.042044
Alternate JournalBiophys. J.
PubMed ID15377512
PubMed Central IDPMC1304995