Abstract
Motivation: In silico identification of linear B-cell epitopes represents an important step in the development of diagnostic tests and vaccine candidates, by providing potential high-probability targets for experimental investigation. Current predictive tools were developed under a generalist approach, training models with heterogeneous datasets to develop predictors that can be deployed for a wide variety of pathogens. However, continuous advances in processing power and the increasing amount of epitope data for a broad range of pathogens indicate that training organism or taxonspecific models may become a feasible alternative, with unexplored potential gains in predictive performance. Results: This article shows how organism-specific training of epitope prediction models can yield substantial performance gains across several quality metrics when compared to models trained with heterogeneous and hybrid data, and with a variety of widely used predictors from the literature. These results suggest a promising alternative for the development of custom-tailored predictive models with high predictive power, which can be easily implemented and deployed for the investigation of specific pathogens.
Cite
CITATION STYLE
Ashford, J., Reis-Cunha, J., Lobo, I., Lobo, F., & Campelo, F. (2021). Organism-specific training improves performance of linear B-cell epitope prediction. Bioinformatics, 37(24), 4826–4834. https://doi.org/10.1093/bioinformatics/btab536
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