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Mapping of mutation-sensitive sites in protein-like chains

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 Added by Skorobogatiy Maksim
 Publication date 1998
  fields Physics
and research's language is English




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In this work we have studied, with the help of a simple on-lattice model, the distribution pattern of sites sensitive to point mutations (hot sites) in protein-like chains. It has been found that this pattern depends on the regularity of the matrix that rules the interaction between different kinds of residues. If the interaction matrix is dominated by the hydrophobic effect (Miyazawa Jernigan like matrix), this distribution is very simple - all the hot sites can be found at the positions with maximum number of closest nearest neighbors (bulk). If random or nonlinear corrections are added to such an interaction matrix the distribution pattern changes. The rising of collective effects allows the hot sites to be found in places with smaller number of nearest neighbors (surface) while the general trend of the hot sites to fall into a bulk part of a conformation still holds.

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