Title :
Protein Design by Sampling an Undirected Graphical Model of Residue Constraints
Author :
Thomas, John ; Ramakrishnan, Naren ; Bailey-Kellogg, Chris
Author_Institution :
Dept. of Comput. Sci., Dartmouth Coll., Hanover, NH, USA
Abstract :
This paper develops an approach for designing protein variants by sampling sequences that satisfy residue constraints encoded in an undirected probabilistic graphical model. Due to evolutionary pressures on proteins to maintain structure and function, the sequence record of a protein family contains valuable information regarding position-specific residue conservation and coupling (or covariation) constraints. Representing these constraints with a graphical model provides two key benefits for protein design: a probabilistic semantics enabling evaluation of possible sequences for consistency with the constraints, and an explicit factorization of residue dependence and independence supporting efficient exploration of the constrained sequence space. We leverage these benefits in developing two complementary MCMC algorithms for protein design: constrained shuffling mixes wild-type sequences positionwise and evaluates graphical model likelihood, while component sampling directly generates sequences by sampling clique values and propagating to other cliques. We apply our methods to design WW domains. We demonstrate that likelihood under a model of wild-type WWs is highly predictive of foldedness of new WWs. We then show both theoretical and rapid empirical convergence of our algorithms in generating high-likelihood, diverse new sequences. We further show that these sequences capture the original sequence constraints, yielding a model as predictive of foldedness as the original one.
Keywords :
bioinformatics; molecular biophysics; proteins; MCMC algorithm; probabilistic semantics; protein design; protein function; protein structure; residue constraints; undirected graphical model; Bioinformatics (genome or protein) databases; Biology and genetics; Computer Applications; Database Applications; Database Management; Information Tech; Life and Medical Sciences; Markov chain Monte Carlo (MCMC).; Protein design; graphical models; residue coupling; Algorithms; Amino Acid Sequence; Artificial Intelligence; Markov Chains; Monte Carlo Method; Protein Engineering; Protein Folding; Proteins; ROC Curve; Sequence Alignment;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2008.124