Computational function prediction of bacteria and phage proteins
Publication date
2025-09
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Abstract
SUMMARYUnderstanding protein functions is crucial for interpreting microbial life; however, reliable function annotation remains a major challenge in computational biology. Despite significant advances in bioinformatics methods, ~30% of all bacterial and ~65% of all bacteriophage (phage) protein sequences cannot be confidently annotated. In this review, we examine state-of-the-art bioinformatics tools and methodologies for annotating bacterial and phage proteins, particularly those of unknown or poorly characterized function. We describe the process of identifying protein-coding regions and the systems to classify protein functionalities. Additionally, we explore a range of protein annotation methods, from traditional homology-based methods to cutting-edge machine learning models. In doing so, we provide a toolbox for confidently annotating previously unknown bacterial and phage proteins, advancing the discovery of novel functions and our understanding of microbial systems.
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Grigson, S R, Bouras, G, Dutilh, B E, Olson, R D & Edwards, R A 2025, 'Computational function prediction of bacteria and phage proteins', Microbiology and Molecular Biology Reviews, vol. 89, no. 3, e0002225. https://doi.org/10.1128/mmbr.00022-25