Abstract

Empirical force-field calculations on biological molecules represent an effective method to obtain atomic detail information on the relationship of their structure to their function. Results from those calculations depend on the quality of the force field. In this manuscript, optimization of the CHARMM27 all-atom empirical force field for nucleic acids is presented together with the resulting parameters. The optimization procedure is based on the reproduction of small molecule target data from both experimental and quantum mechanical studies and condensed phase structural properties of DNA and RNA. Via an iterative approach, the parameters were primarily optimized to reproduce macromolecular target data while maximizing agreement with small molecule target data. This approach is expected to ensure that the different contributions from the individual moieties in the nucleic acids are properly balanced to yield condensed phase properties of DNA and RNA, which are consistent with experiment. The quality of the presented force field in reproducing both crystal and solution properties are detailed in the present and an accompanying manuscript (MacKerell and Banavali, J Comput Chem, this issue). The resultant parameters represent the latest step in the continued development of the CHARMM all-atom biomolecular force field for proteins, lipids, and nucleic acids. © 2000 John Wiley & Sons, Inc. J Comput Chem 21: 86–104, 2000

Keywords

Nucleic acidForce field (fiction)MacromoleculeMoleculeChemistryAtom (system on chip)Field (mathematics)Small moleculeRNADNAFunction (biology)Computational chemistryChemical physicsStatistical physicsPhysicsComputer scienceQuantum mechanicsMathematicsOrganic chemistry

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Publication Info

Year
2000
Type
article
Volume
21
Issue
2
Pages
86-104
Citations
1583
Access
Closed

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Nicolas Foloppe, Alexander D. MacKerell (2000). All-atom empirical force field for nucleic acids: I. Parameter optimization based on small molecule and condensed phase macromolecular target data. Journal of Computational Chemistry , 21 (2) , 86-104. https://doi.org/10.1002/(sici)1096-987x(20000130)21:2<86::aid-jcc2>3.0.co;2-g

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DOI
10.1002/(sici)1096-987x(20000130)21:2<86::aid-jcc2>3.0.co;2-g