In Silico Approach for Prediction of Antifungal Peptides
2018
This paper describes in silico models developed using a wide range of peptide features for predicting antifungal peptides. Our analyses indicate that certain types of residue (e.g., C, G, H, K, R, Y) are more abundant in antifungal peptides. The positional residue preference analysis reveals the prominence of the particular type of residues (e.g., R, V, K) at N-terminus and a certain type of residues (e.g., C, H) at C-terminus. In this study, models have been developed for predicting antifungal peptides using a wide range of peptide features (like residue composition, binary profile, terminal residues). The support vector machine based model developed using compositional features of peptides achieved maximum accuracy of 88.78% on the training dataset and 83.33% on independent or validation dataset. Our model developed using binary patterns of terminal residues of peptides achieved maximum accuracy 84.88% on training and 84.64% on validation dataset. We benchmark models developed in this study and existing methods on a dataset contain compositionally similar antifungal and non-antifungal peptides. It was observed that binary based model developed in this study preforms better than any model/method. In order to facilitate scientific community, we developed a mobile app, standalone and a user-friendly web server ‘Antifp' (http://webs.iiitd.edu.in/raghava/antifp).
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