Title
Minimizing and learning energy functions for side-chain prediction.
Abstract
Side-chain prediction is an important subproblem of the general protein folding problem. Despite much progress in side-chain prediction, performance is far from satisfactory. As an example, the ROSETTA program that uses simulated annealing to select the minimum energy conformations, correctly predicts the first two side-chain angles for approximately 72% of the buried residues in a standard data set. Is further improvement more likely to come from better search methods, or from better energy functions? Given that exact minimization of the energy is NP hard, it is difficult to get a systematic answer to this question. In this paper, we present a novel search method and a novel method for learning energy functions from training data that are both based on Tree Reweighted Belief Propagation (TRBP). We find that TRBP can obtain the global optimum of the ROSETTA energy function in a few minutes of computation for approximately 85% of the proteins in a standard benchmark set. TRBP can also effectively bound the partition function which enables using the Conditional Random Fields (CRF) framework for learning. Interestingly, finding the global minimum does not significantly improve side-chain prediction for an energy function based on ROSETTA's default energy terms (less than 0:1%), while learning new weights gives a significant boost from 72% to 78%. Using a recently modified ROSETTA energy function with a softer Lennard-Jones repulsive term, the global optimum does improve prediction accuracy from 77% to 78%. Here again, learning new weights improves side-chain modeling even further to 80%. Finally, the highest accuracy (82.6%) is obtained using an extended rotamer library and CRF learned weights. Our results suggest that combining machine learning with approximate inference can improve the state-of-the-art in side-chain prediction.
Year
DOI
Venue
2008
10.1089/cmb.2007.0158
Journal of computational biology : a journal of computational molecular cell biology
Keywords
Field
DocType
energy function,better energy function,minimum energy conformation,prediction accuracy,rosetta program,default energy term,side-chain prediction,new weight,rosetta energy function,sidechain prediction,simulated annealing,conditional random field,partition function,lennard jones,belief propagation,machine learning,protein folding
Simulated annealing,Conditional random field,Mathematical optimization,Force field (chemistry),Computer science,Partition function (statistical mechanics),Approximate inference,Minification,Bioinformatics,Graphical model,Belief propagation
Journal
Volume
Issue
ISSN
15
7
1557-8666
Citations 
PageRank 
References 
40
2.25
17
Authors
3
Name
Order
Citations
PageRank
Chen Yanover139130.06
Ora Schueler-Furman21027.74
Yair Weiss310240834.60