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      Bioinformatics approaches for disulfide connectivity prediction.

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          Abstract

          Protein structure prediction with computational methods has gained much attention in the research fields of protein engineering and protein folding studies. Due to the vastness of conformational space, one of the major tasks is to restrain the flexibility of protein structure and reduce the search space. Many studies have revealed that, with the information of disulfide connectivity available, the search in conformational space can be dramatically reduced and lead to significant improvements in the prediction accuracy. As a result, predicting disulfide connectivity using bioinformatics approaches is of great interest nowadays. In this mini-review, the prediction of disulfide connectivity in proteins will be discussed in four aspects: (1) how the problem formulated and the computational techniques used in the literatures; (2) the effects of the features adopted to encode the information and the biological meanings implied; (3) the problems encountered and limitations of disulfide connectivity prediction; and (4) the practical usages of predicted disulfide bond information in molecular simulation and the prospects in the future.

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          Author and article information

          Journal
          Curr Protein Pept Sci
          Current protein & peptide science
          Bentham Science Publishers Ltd.
          1389-2037
          1389-2037
          Jun 2007
          : 8
          : 3
          Affiliations
          [1 ] Department of Chemical Engineering and Biotechnology and Graduate Institute of Biotechnology, National Taipei University of Technology, Taiwan.
          Article
          10.2174/138920307780831848
          17584119
          15ca3b44-7f32-4602-9ae8-36a94fd3a35f
          History

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