TransportTP: A two-phase classification approach for membrane transporter prediction and characterization |
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Authors: | Haiquan Li Vagner A Benedito Michael K Udvardi Patrick Xuechun Zhao |
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Affiliation: | (1) Plant Biology Division, The Samuel Roberts Noble Foundation, Inc, Ardmore, OK 73401, USA |
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Abstract: | Background Membrane transporters play crucial roles in living cells. Experimental characterization of transporters is costly and time-consuming. Current computational methods for transporter characterization still require extensive curation efforts, especially for eukaryotic organisms. We developed a novel genome-scale transporter prediction and characterization system called TransportTP that combined homology-based and machine learning methods in a two-phase classification approach. First, traditional homology methods were employed to predict novel transporters based on sequence similarity to known classified proteins in the Transporter Classification Database (TCDB). Second, machine learning methods were used to integrate a variety of features to refine the initial predictions. A set of rules based on transporter features was developed by machine learning using well-curated proteomes as guides. |
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