A nearest neighbor approach for automated transporter prediction and categorization from protein sequences

نویسندگان

  • Haiquan Li
  • Xinbin Dai
  • Patrick Xuechun Zhao
چکیده

MOTIVATION Membrane transport proteins play a crucial role in the import and export of ions, small molecules or macromolecules across biological membranes. Currently, there are a limited number of published computational tools which enable the systematic discovery and categorization of transporters prior to costly experimental validation. To approach this problem, we utilized a nearest neighbor method which seamlessly integrates homologous search and topological analysis into a machine-learning framework. RESULTS Our approach satisfactorily distinguished 484 transporter families in the Transporter Classification Database, a curated and representative database for transporters. A five-fold cross-validation on the database achieved a positive classification rate of 72.3% on average. Furthermore, this method successfully detected transporters in seven model and four non-model organisms, ranging from archaean to mammalian species. A preliminary literature-based validation has cross-validated 65.8% of our predictions on the 11 organisms, including 55.9% of our predictions overlapping with 83.6% of the predicted transporters in TransportDB.

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عنوان ژورنال:
  • Bioinformatics

دوره 24 9  شماره 

صفحات  -

تاریخ انتشار 2008