BACKGROUND: Hydrogen bonds (H-bonds) play a key role in both the formation and stabilization of protein structures. They form and break while a protein deforms, for instance during the transition from a non-functional to a functional state. The intrinsic strength of an individual H-bond has been studied from an energetic viewpoint, but energy alone may not be a very good predictor. METHODS: This paper describes inductive learning methods to train protein-independent probabilistic models of H-bond stability from molecular dynamics (MD) simulation trajectories of various proteins. The training data contains 32 input attributes (predictors) that describe an H-bond and its local environment in a conformation c and the output attribute is the probability that the H-bond will be present in an arbitrary conformation of this protein achievable from c within a time duration Î. We model dependence of the output variable on the predictors by a regression tree. RESULTS: Several models are built using 6 MD simulation trajectories containing over 4000 distinct H-bonds (millions of occurrences). Experimental results demonstrate that such models can predict H-bond stability quite well. They perform roughly 20% better than models based on H-bond energy alone. In addition, they can accurately identify a large fraction of the least stable H-bonds in a conformation. In most tests, about 80% of the 10% H-bonds predicted as the least stable are actually among the 10% truly least stable. The important attributes identified during the tree construction are consistent with previous findings. CONCLUSIONS: We use inductive learning methods to build protein-independent probabilistic models to study H-bond stability, and demonstrate that the models perform better than H-bond energy alone.
Learning probabilistic models of hydrogen bond stability from molecular dynamics simulation trajectories.
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作者:Chikalov Igor, Yao Peggy, Moshkov Mikhail, Latombe Jean-Claude
| 期刊: | BMC Bioinformatics | 影响因子: | 3.300 |
| 时间: | 2011 | 起止号: | 2011 Feb 15; 12 Suppl 1(Suppl 1):S34 |
| doi: | 10.1186/1471-2105-12-S1-S34 | ||
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