DRREP: deep ridge regressed epitope predictor

Título

DRREP: deep ridge regressed epitope predictor

Autor

Gene Sher, Degui Zhi, Shaojie Zhang

Descripción

Abstract Introduction The ability to predict epitopes plays an enormous role in vaccine development in terms of our ability to zero in on where to do a more thorough in-vivo analysis of the protein in question. Though for the past decade there have been numerous advancements and improvements in epitope prediction, on average the best benchmark prediction accuracies are still only around 60%. New machine learning algorithms have arisen within the domain of deep learning, text mining, and convolutional networks. This paper presents a novel analytically trained and string kernel using deep neural network, which is tailored for continuous epitope prediction, called: Deep Ridge Regressed Epitope Predictor (DRREP). Results DRREP was tested on long protein sequences from the following datasets: SARS, Pellequer, HIV, AntiJen, and SEQ194. DRREP was compared to numerous state of the art epitope predictors, including the most recently published predictors called LBtope and DMNLBE. Using area under ROC curve (AUC), DRREP achieved a performance improvement over the best performing predictors on SARS (13.7%), HIV (8.9%), Pellequer (1.5%), and SEQ194 (3.1%), with its performance being matched only on the AntiJen dataset, by the LBtope predictor, where both DRREP and LBtope achieved an AUC of 0.702. Conclusion DRREP is an analytically trained deep neural network, thus capable of learning in a single step through regression. By combining the features of deep learning, string kernels, and convolutional networks, the system is able to perform residue-by-residue prediction of continues epitopes with higher accuracy than the current state of the art predictors.

Fecha

2017

Materia

epitope prediction, deep network, Neural network, Analytical learning, linear epitope, Continuous epitope

Identificador

DOI: 10.1186/s12864-017-4024-8

Fuente

BMC Genomics

Editor

BMC

Cobertura

Genetics, Biotechnology

Idioma

EN

Archivos

https://socictopen.socict.org/files/to_import/pdfs/article 867.pdf

Colección

Citación

Gene Sher, Degui Zhi, Shaojie Zhang, “DRREP: deep ridge regressed epitope predictor,” SOCICT Open, consulta 17 de abril de 2026, https://www.socictopen.socict.org/items/show/832.

Formatos de Salida

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