VHULK, a New Tool for Bacteriophage Host Prediction Based on Annotated Genomic Features and Neural Networks

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Abstract

Background: The experimental determination of a bacteriophage host is a laborious procedure. Thus, there is a pressing need for reliable computational predictions of bacteriophage hosts. Materials and Methods: We developed the program vHULK for phage host prediction based on 9504 phage genome features, which consider alignment significance scores between predicted proteins and a curated database of viral protein families. The features were fed to a neural network, and two models were trained to predict 77 host genera and 118 host species. Results: In controlled random test sets with 90% redundancy reduction in terms of protein similarity, vHULK obtained on average 83% precision and 79% recall at the genus level, and 71% precision and 67% recall at the species level. The performance of vHULK was compared against three other tools on a test data set with 2153 phage genomes. On this data set, vHULK achieved better performance at both the genus and the species levels than the other tools. Conclusions: Our results suggest that vHULK represents an advance on the state of art in phage host prediction.

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Amgarten, D., Iha, B. K. V., Piroupo, C. M., Da Silva, A. M., & Setubal, J. C. (2022). VHULK, a New Tool for Bacteriophage Host Prediction Based on Annotated Genomic Features and Neural Networks. PHAGE: Therapy, Applications, and Research, 3(4), 204–212. https://doi.org/10.1089/phage.2021.0016

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