LocTree3 prediction of localization

Tatyana Goldberg(Isotopen Technologien München (Germany)), Maximilian Hecht(Technical University of Munich), Tobias Hamp(Technical University of Munich), Timothy Karl(Technical University of Munich), Guy Yachdav(New York School of Regional Anesthesia), Nadeem Ahmed(Technical University of Munich), Uwe Altermann(Technical University of Munich), Philipp Angerer(Technical University of Munich), Sonja Ansorge(Technical University of Munich), Kinga Balasz(Technical University of Munich), Michael Bernhofer(Technical University of Munich), Alexander Betz(Technical University of Munich), Laura Cizmadija(Technical University of Munich), Kieu Trinh(Technical University of Munich), Julia S. Gerke(Technical University of Munich), Robert Greil(Technical University of Munich), Vadim Joerdens(Technical University of Munich), Maximilian Hastreiter(Technical University of Munich), Katharina Hembach(Technical University of Munich), Max Herzog(Technical University of Munich), Maria Kalemanov(Technical University of Munich), Michael Kluge(Technical University of Munich), Alice Meier(Technical University of Munich), Hassan Nasir(Technical University of Munich), Ulrich Neumaier(Technical University of Munich), Verena M. Prade(Technical University of Munich), Jonas Reeb(Technical University of Munich), Aleksandr Sorokoumov(Technical University of Munich), Ilira Troshani(Technical University of Munich), Susann Vorberg(Technical University of Munich), Sonja Waldraff(Technical University of Munich), Jonas Zierer(Technical University of Munich), Henrik Nielsen(Technical University of Denmark), Burkhard Rost(Weihenstephan-Triesdorf University of Applied Sciences)
Nucleic Acids Research
May 21, 2014
Cited by 351Open Access
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Abstract

The prediction of protein sub-cellular localization is an important step toward elucidating protein function. For each query protein sequence, LocTree2 applies machine learning (profile kernel SVM) to predict the native sub-cellular localization in 18 classes for eukaryotes, in six for bacteria and in three for archaea. The method outputs a score that reflects the reliability of each prediction. LocTree2 has performed on par with or better than any other stateof-the-art method. Here, we report the availability of LocTree3 as a public web server. The server includes the machine learning-based LocTree2 and improves over it through the addition of homology-based inference. Assessed on sequence-unique data, LocTree3 reached an 18-state accuracy Q18 = 80 3% for eukaryotes and a six-state accuracy Q6 = 89 4% for bacteria. The server accepts submissions ranging from single protein sequences to entire proteomes. Response time of the unloaded server is about 90 s for a 300-residue eukaryotic protein and a few hours for an entire eukaryotic proteome not considering the generation of the alignments. For over 1000 entirely sequenced organisms, the predictions are directly available as downloads.


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