PTPD: predicting therapeutic peptides by deep learning and word2vec
Título
PTPD: predicting therapeutic peptides by deep learning and word2vec
Autor
Chuanyan Wu, Rui Gao, Yu-Sen Zhang, Yang De Marinis
Descripción
Abstract * Background In the search for therapeutic peptides for disease treatments, many efforts have been made to identify various functional peptides from large numbers of peptide sequence databases. In this paper, we propose an effective computational model that uses deep learning and word2vec to predict therapeutic peptides (PTPD). * Results Representation vectors of all k-mers were obtained through word2vec based on k-mer co-existence information. The original peptide sequences were then divided into k-mers using the windowing method. The peptide sequences were mapped to the input layer by the embedding vector obtained by word2vec. Three types of filters in the convolutional layers, as well as dropout and max-pooling operations, were applied to construct feature maps. These feature maps were concatenated into a fully connected dense layer, and rectified linear units (ReLU) and dropout operations were included to avoid over-fitting of PTPD. The classification probabilities were generated by a sigmoid function. PTPD was then validated using two datasets: an independent anticancer peptide dataset and a virulent protein dataset, on which it achieved accuracies of 96% and 94%, respectively. * Conclusions PTPD identified novel therapeutic peptides efficiently, and it is suitable for application as a useful tool in therapeutic peptide design.
Fecha
2019
Materia
therapeutic peptide, deep learning, word2vec
Identificador
DOI: 10.1186/s12859-019-3006-z
Fuente
BMC Bioinformatics
Editor
BMC
Cobertura
Biology (General), Computer applications to medicine. Medical informatics
Idioma
EN
Colección
Citación
Chuanyan Wu, Rui Gao, Yu-Sen Zhang, Yang De Marinis, “PTPD: predicting therapeutic peptides by deep learning and word2vec,” SOCICT Open, consulta 23 de abril de 2026, https://socictopen.socict.org/items/show/1985.
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