In silico prediction of the peroxisomal proteome in fungi,plants and animals |
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Authors: | Emanuelsson Olof Elofsson Arne von Heijne Gunnar Cristóbal Susana |
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Affiliation: | Stockholm Bioinformatics Center, AlbaNova University Center, Department of Biochemistry and Biophysics, Stockholm University, S-106 91, Stockholm, Sweden. |
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Abstract: | In an attempt to improve our abilities to predict peroxisomal proteins, we have combined machine-learning techniques for analyzing peroxisomal targeting signals (PTS1) with domain-based cross-species comparisons between eight eukaryotic genomes. Our results indicate that this combined approach has a significantly higher specificity than earlier attempts to predict peroxisomal localization, without a loss in sensitivity. This allowed us to predict 430 peroxisomal proteins that almost completely lack a localization annotation. These proteins can be grouped into 29 families covering most of the known steps in all known peroxisomal pathways. In general, plants have the highest number of predicted peroxisomal proteins, and fungi the smallest number. |
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Keywords: | peroxisome proteome prediction protein sorting subcellular location |
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