PhANNs, a fast and accurate tool and web server to classify phage structural proteins

Abstract

For any given bacteriophage genome or phage-derived sequences in metagenomic data sets, we are unable to assign a function to 50–90% of genes, or more. Structural protein-encoding genes constitute a large fraction of the average phage genome and are among the most divergent and difficult-to-identify genes using homology-based methods. To understand the functions encoded by phages, their contributions to their environments, and to help gauge their utility as potential phage therapy agents, we have developed a new approach to classify phage ORFs into ten major classes of structural proteins or into an “other” category. The resulting tool is named PhANNs (Phage Artificial Neural Networks). We built a database of 538,213 manually curated phage protein sequences that we split into eleven subsets (10 for cross-validation, one for testing) using a novel clustering method that ensures there are no homologous proteins between sets yet maintains the maximum sequence diversity for training. An Artificial Neural Network ensemble trained on features extracted from those sets reached a test F1-score of 0.875 and test accuracy of 86.2%. PhANNs can rapidly classify proteins into one of the ten structural classes or, if not predicted to fall in one of the ten classes, as “other,” providing a new approach for functional annotation of phage proteins. PhANNs is open source and can be run from our web server or installed locally.

Document Details

Document Type
Pub Defense Publication
Publication Date
Nov 02, 2020
Source ID
10.1371/journal.pcbi.1007845

Entities

People

  • Anca M Segall
  • David Salamon
  • Jackson Redfield
  • Peter Salamon
  • Robert A Edwards
  • Victor Seguritan
  • Vito Adrian Cantu

Organizations

  • Intelligence Advanced Research Projects Activity
  • National Science Foundation Division of Mathematical Sciences

Tags

Fields of Study

  • Biology

Readers

  • Computational Modeling and Simulation
  • Molecular Genetics
  • Neural Network Machine Learning.

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks