Teaching computers to fold proteins
Abstract
A new general algorithm for optimization of potential functions for protein folding is introduced. It is based upon gradient optimization of the thermodynamic stability of native folds of a training set of proteins with known structure. The iterative update rule contains two thermodynamic averages which are estimated by (generalized ensemble) Monte Carlo. We test the learning algorithm on a Lennard-Jones (LJ) force field with a torsional angle degrees-of-freedom and a single-atom side-chain. In a test with 24 peptides of known structure, none folded correctly with the initial potential functions, but two-thirds came within 3Å to their native fold after optimizing the potential functions.
- Publication:
-
Physical Review E
- Pub Date:
- September 2004
- DOI:
- arXiv:
- arXiv:cond-mat/0309497
- Bibcode:
- 2004PhRvE..70c0903W
- Keywords:
-
- 87.15.Cc;
- 07.05.Mh;
- 05.10.-a;
- 87.15.Aa;
- Folding and sequence analysis;
- Neural networks fuzzy logic artificial intelligence;
- Computational methods in statistical physics and nonlinear dynamics;
- Theory and modeling;
- computer simulation;
- Condensed Matter;
- Quantitative Biology - Biomolecules
- E-Print:
- 4 pages, 3 figures