Predicting stability of Arc repressor mutants with protein stochastic moments

[Display omitted] As more and more protein structures are determined and applied to drug manufacture, there is increasing interest in studying their stability. In this study, the stochastic moments ( SR π k ) of 53 Arc repressor mutants were introduced as molecular descriptors modeling protein stabi...

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Veröffentlicht in:Bioorganic & medicinal chemistry 2005-01, Vol.13 (2), p.323-331
Hauptverfasser: González-Díaz, Humberto, Uriarte, Eugenio, Ramos de Armas, Ronal
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Sprache:eng
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Zusammenfassung:[Display omitted] As more and more protein structures are determined and applied to drug manufacture, there is increasing interest in studying their stability. In this study, the stochastic moments ( SR π k ) of 53 Arc repressor mutants were introduced as molecular descriptors modeling protein stability. The Linear Discriminant Analysis model developed correctly classified 43 out of 53, 81.13% of proteins according to their thermal stability. More specifically, the model classified 20/28 (71.4%) proteins with near wild-type stability and 23/25 (92%) proteins with reduced stability. Moreover, validation of the model was carried out by re-substitution procedures (81.0%). In addition, the stochastic moments based model compared favorably with respect to others based on physicochemical and geometric parameters such as D-Fire potential, surface area, volume, partition coefficient, and molar refractivity, which presented less than 77% of accuracy. This result illustrates the possibilities of the stochastic moments’ method for the study of bioorganic and medicinal chemistry relevant proteins.
ISSN:0968-0896
1464-3391
DOI:10.1016/j.bmc.2004.10.024