Automatic discovery of cross-family sequence features associated with protein function |
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Authors: | Markus Brameier Josien Haan Andrea Krings Robert M MacCallum |
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Affiliation: | (1) Stockholm Bioinformatics Center, Stockholm University, 106 91 Stockholm, Sweden;(2) Bioinformatics Research Center, University of Aarhus, 8000 Aarhus C, Denmark;(3) Division of Cell and Molecular Biology, Imperial CollegeLondon, London, SW7 2AZ, UK |
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Abstract: | Background Methods for predicting protein function directly from amino acid sequences are useful tools in the study of uncharacterised protein families and in comparative genomics. Until now, this problem has been approached using machine learning techniques that attempt to predict membership, or otherwise, to predefined functional categories or subcellular locations. A potential drawback of this approach is that the human-designated functional classes may not accurately reflect the underlying biology, and consequently important sequence-to-function relationships may be missed. |
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