Coarse-Grained Models for Automated Fragmentation and Parametrization of Molecular Databases.

JOURNAL OF CHEMICAL INFORMATION AND MODELING(2016)

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Abstract
We calibrate coarse-grained interaction potentials suitable for screening large data sets in top-down fashion. Three new algorithms are introduced: (i) automated decomposition of molecules into coarse-grained units (fragmentation); (ii) Coarse Grained Reference Interaction Site Model-Hypernetted Chain (CG RISM-HNC) as an 8 intermediate proxy for dissipative particle dynamics. (DPD); and (iii) a simple top-down coarse-grained interaction potential/model based on activity coefficient theories from engineering (using COSMO-RS). We find that the fragment distribution follows Zipf and Heaps scaling laws. The accuracy in Gibbs energy of mixing calculations is a few tenths of a kilocalorie per mole. As a final proof of principle, we use full coarse-grained sampling through DPD thermodynamics integration to calculate log P-OW for 4627 compounds with an average error of 0.84 log unit. The computational speeds per calculation are a few seconds for CG RISM-HNC and a few minutes for DPD thermodynamic integration.
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Key words
molecular databases,automated fragmentation,coarse-grained
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