1. Predicting bacteriophage hosts based on sequences of annotated receptor-binding proteins
- Author
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Dimitri Boeckaerts, Michiel Stock, Yves Briers, Bernard De Baets, Hans Gerstmans, and Bjorn Criel
- Subjects
0301 basic medicine ,Science ,030106 microbiology ,Computational biology ,medicine.disease_cause ,Article ,Host Specificity ,Machine Learning ,Bacteriophage ,03 medical and health sciences ,Similarity (network science) ,Bacteriocin ,Escherichia coli ,medicine ,Animals ,Humans ,Bacteriophages ,Sequence (medicine) ,Multidisciplinary ,Bacteria ,biology ,Clostridioides difficile ,Basic Local Alignment Search Tool ,Virion ,Biology and Life Sciences ,Salmonella enterica ,Sequence Analysis, DNA ,Viral Tail Proteins ,biology.organism_classification ,030104 developmental biology ,Metagenomics ,Medicine ,Protein Binding - Abstract
Nowadays, bacteriophages are increasingly considered as an alternative treatment for a variety of bacterial infections in cases where classical antibiotics have become ineffective. However, characterizing the host specificity of phages remains a labor- and time-intensive process. In order to alleviate this burden, we have developed a new machine-learning-based pipeline to predict bacteriophage hosts based on annotated receptor-binding protein (RBP) sequence data. We focus on predicting bacterial hosts from the ESKAPE group, Escherichia coli, Salmonella enterica and Clostridium difficile. We compare the performance of our predictive model with that of the widely used Basic Local Alignment Search Tool (BLAST). Our best-performing predictive model reaches Precision-Recall Area Under the Curve (PR-AUC) scores between 73.6 and 93.8% for different levels of sequence similarity in the collected data. Our model reaches a performance comparable to that of BLASTp when sequence similarity in the data is high and starts outperforming BLASTp when sequence similarity drops below 75%. Therefore, our machine learning methods can be especially useful in settings in which sequence similarity to other known sequences is low. Predicting the hosts of novel metagenomic RBP sequences could extend our toolbox to tune the host spectrum of phages or phage tail-like bacteriocins by swapping RBPs.
- Published
- 2021