sAMP‐VGG16: Force‐field assisted image‐based deep neural network prediction model for short antimicrobial peptides

Author:

Pandey Poonam1,Srivastava Anand1ORCID

Affiliation:

1. Molecular Biophysics Unit Indian Institute of Science Bangalore Karnataka India

Abstract

AbstractDuring the last three decades, antimicrobial peptides (AMPs) have emerged as a promising therapeutic alternative to antibiotics. The approaches for designing AMPs span from experimental trial‐and‐error methods to synthetic hybrid peptide libraries. To overcome the exceedingly expensive and time‐consuming process of designing effective AMPs, many computational and machine‐learning tools for AMP prediction have been recently developed. In general, to encode the peptide sequences, featurization relies on approaches based on (a) amino acid (AA) composition, (b) physicochemical properties, (c) sequence similarity, and (d) structural properties. In this work, we present an image‐based deep neural network model to predict AMPs, where we are using feature encoding based on Drude polarizable force‐field atom types, which can capture the peptide properties more efficiently compared to conventional feature vectors. The proposed prediction model identifies short AMPs (≤30 AA) with promising accuracy and efficiency and can be used as a next‐generation screening method for predicting new AMPs. The source code is publicly available at the Figshare server sAMP‐VGG16.

Funder

Ministry of Education, India

Department of Biotechnology, Ministry of Science and Technology, India

Department of Science and Technology, Ministry of Science and Technology, India

The Wellcome Trust DBT India Alliance

Publisher

Wiley

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