By generating classes of random structures for trypsin inhibitor and carp myogen, each consistent with a given set of experimental o r theoretical information, we have assessed the relative utility of various experiments and theories in deducing the conformation ofmacromolecules. We compare the calc
Prediction of protein conformational freedom from distance constraints
β Scribed by B.L. de Groot; D.M.F. van Aalten; R.M. Scheek; A. Amadei; G. Vriend; H.J.C. Berendsen
- Publisher
- John Wiley and Sons
- Year
- 1997
- Tongue
- English
- Weight
- 218 KB
- Volume
- 29
- Category
- Article
- ISSN
- 0887-3585
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β¦ Synopsis
A method is presented that generates random protein structures that fulfil a set of upper and lower interatomic distance limits. These limits depend on distances measured in experimental structures and the strength of the interatomic interaction. Structural differences between generated structures are similar to those obtained from experiment and from MD simulation. Although detailed aspects of dynamical mechanisms are not covered and the extent of variations are only estimated in a relative sense, applications to an IgG-binding domain, an SH3 binding domain, HPr, calmodulin, and lysozyme are presented which illustrate the use of the method as a fast and simple way to predict structural variability in proteins. The method may be used to support the design of mutants, when structural fluctuations for a large number of mutants are to be screened. The results suggest that motional freedom in proteins is ruled largely by a set of simple geometric constraints.
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