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Signal-CF: a subsite-coupled and window-fusing approach for predicting signal peptides
Authors:Chou Kuo-Chen  Shen Hong-Bin
Institution:Gordon Life Science Institute, 13784 Torrey Del Mar Drive, San Diego, CA 92130, USA. kchou@san.rr.com
Abstract:We have developed an automated method for predicting signal peptide sequences and their cleavage sites in eukaryotic and bacterial protein sequences. It is a 2-layer predictor: the 1st-layer prediction engine is to identify a query protein as secretory or non-secretory; if it is secretory, the process will be automatically continued with the 2nd-layer prediction engine to further identify the cleavage site of its signal peptide. The new predictor is called Signal-CF, where C stands for "coupling" and F for "fusion", meaning that Signal-CF is formed by incorporating the subsite coupling effects along a protein sequence and by fusing the results derived from many width-different scaled windows through a voting system. Signal-CF is featured by high success prediction rates with short computational time, and hence is particularly useful for the analysis of large-scale datasets. Signal-CF is freely available as a web-server at http://chou.med.harvard.edu/bioinf/Signal-CF/ or http://202.120.37.186/bioinf/Signal-CF/.
Keywords:Peptidase cleavage site  Subsite-coupled effect  Flexible scaled window  Fusion  2-Layer predictor  PseAA
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