Abstract
Antimicrobial peptides (AMPs) are components of natural immunity against invading pathogens. They are polymers that fold into a variety of three-dimensional structures, enabling their function, with an underlying sequence that is best represented in a non-flat space. The structural data of AMPs exhibits non-Euclidean characteristics, which means that certain properties, e.g., differential manifolds, common system of coordinates, vector space structure, or translation-equivariance, along with basic operations like convolution, in non-Euclidean space are not distinctly established. Geometric deep learning (GDL) refers to a category of machine learning methods that utilize deep neural models to process and analyze data in non-Euclidean settings, such as graphs and manifolds. This emerging field seeks to expand the use of structured models to these domains. This review provides a detailed summary of the latest developments in designing and predicting AMPs utilizing GDL techniques and also discusses both current research gaps and future directions in the field.
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Fernandes, F. C., Cardoso, M. H., Gil-Ley, A., Luchi, L. V., da Silva, M. G. L., Macedo, M. L. R., … Franco, O. L. (2023). Geometric deep learning as a potential tool for antimicrobial peptide prediction. Frontiers in Bioinformatics. Frontiers Media SA. https://doi.org/10.3389/fbinf.2023.1216362
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