Better understanding and prediction of antiviral peptides through primary and secondary structure feature importance

Abstract

The emergence of viral epidemics throughout the world is of concern due to the scarcity of available effective antiviral therapeutics. The discovery of new antiviral therapies is imperative to address this challenge, and antiviral peptides (AVPs) represent a valuable resource for the development of novel therapies to combat viral infection. We present a new machine learning model to distinguish AVPs from non-AVPs using the most informative features derived from the physicochemical and structural properties of their amino acid sequences. To focus on those features that are most likely to contribute to antiviral performance, we filter potential features based on their importance for classification. These feature selection analyses suggest that secondary structure is the most important peptide sequence feature for predicting AVPs. Our Feature-Informed Reduced Machine Learning for Antiviral Peptide Prediction (FIRM-AVP) approach achieves a higher accuracy than either the model with all features or current state-of-the-art single classifiers. Understanding the features that are associated with AVP activity is a core need to identify and design new AVPs in novel systems. The FIRM-AVP code and standalone software package are available at https://github.com/pmartR/FIRM-AVP with an accompanying web application at https://msc-viz.emsl.pnnl.gov/AVPR.

Document Details

Document Type
Pub Defense Publication
Publication Date
Nov 06, 2020
Source ID
10.1038/s41598-020-76161-8

Entities

People

  • Abu Sayed Chowdhury
  • Barney M Bishop
  • Bobbie-jo M. Webb-robertson
  • Kylene Kehn-Hall
  • Sarah M. Reehl

Tags

Fields of Study

  • Biology

Readers

  • Neural Network Machine Learning.
  • Systems Analysis and Design
  • Virology (or Medical Virology).

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks