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Predictions of tertiary stuctures of $alpha$-helical membrane proteins by replica-exchange method with consideration of helix deformations

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 Added by Yuko Okamoto
 Publication date 2014
  fields Biology Physics
and research's language is English




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We propose an improved prediction method of the tertiary structures of $alpha$-helical membrane proteins based on the replica-exchange method by taking into account helix deformations. Our method allows wide applications because transmembrane helices of native membrane proteins are often distorted. In order to test the effectiveness of the present method, we applied it to the structure predictions of glycophorin A and phospholamban. The results were in accord with experiments.



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