A machine learning approach for the prediction of DNA and peptide HPLC retention times

نویسندگان

  • Marc Sturm
  • Oliver Kohlbacher
  • Sascha Quinten
  • Christian G. Huber
چکیده

Here we present a method for prediction of HPLC retention times based on support vector regression. In contrast to existing prediction methods for DNA, our method takes the secondary structure of DNA into account. The method is also well suited for retention time prediction of peptides.

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تاریخ انتشار 2006