Improved method for predicting protein fold patterns with ensemble classifiers.

نویسندگان

  • W Chen
  • X Liu
  • Y Huang
  • Y Jiang
  • Q Zou
  • C Lin
چکیده

Protein folding is recognized as a critical problem in the field of biophysics in the 21st century. Predicting protein-folding patterns is challenging due to the complex structure of proteins. In an attempt to solve this problem, we employed ensemble classifiers to improve prediction accuracy. In our experiments, 188-dimensional features were extracted based on the composition and physical-chemical property of proteins and 20-dimensional features were selected using a coupled position-specific scoring matrix. Compared with traditional prediction methods, these methods were superior in terms of prediction accuracy. The 188-dimensional feature-based method achieved 71.2% accuracy in five cross-validations. The accuracy rose to 77% when we used a 20-dimensional feature vector. These methods were used on recent data, with 54.2% accuracy. Source codes and dataset, together with web server and software tools for prediction, are available at: http://datamining.xmu.edu.cn/main/~cwc/ProteinPredict.html.

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عنوان ژورنال:
  • Genetics and molecular research : GMR

دوره 11 1  شماره 

صفحات  -

تاریخ انتشار 2012