Author/Authors :
Humberto Gonz?lez-D?az، نويسنده , , Eugenio Uriarte، نويسنده ,
Abstract :
Classic physicochemical and topological indices have been largely used in small molecules QSAR but less in proteins QSAR. In this study, a Markov model is used to calculate, for the first time, average electrostatic potentials ξk for an indirect interaction between aminoacids placed at topologic distances k within a given protein backbone. The short-term average stochastic potential ξ1 for 53 Arc repressor mutants was used to model the effect of Alanine scanning on thermal stability. The Arc repressor is a model protein of relevance for biochemical studies on bioorganics and medicinal chemistry. A linear discriminant analysis model developed correctly classified 43 out of 53, 81.1% of proteins according to their thermal stability. More specifically, the model classified 20/28, 71.4% of proteins with near wild-type stability and 23/25, 92.0% of proteins with reduced stability. Moreover, predictability in cross-validation procedures was of 81.0%. Expansion of the electrostatic potential in the series ξ0, ξ1, ξ2, and ξ3, justified the use of the abrupt truncation approach, being the overall accuracy >70.0% for ξ0 but equal for ξ1, ξ2, and ξ3.The ξ1 model compared favorably with respect to others based on D-Fire potential, surface area, volume, partition coefficient, and molar refractivity, with less than 77.0% of accuracy [Ramos de Armas, R.; González-Díaz, H.; Molina, R.; Uriarte, E. Protein Struct. Func. Bioinf.2004, 56, 715]. The ξ1 model also has more tractable interpretation than others based on Markovian negentropies and stochastic moments. Finally, the model is notably simpler than the two models based on quadratic and linear indices. Both models, reported by Marrero-Ponce et al., use four-to-five time more descriptors. Introduction of average stochastic potentials may be useful for QSAR applications; having ξk amenable physical interpretation and being very effective.
Keywords :
MARCH-INSIDE , protein stability , QSAR , electrostatic potential , Markov model