Matches in SemOpenAlex for { <https://semopenalex.org/work/W4382203508> ?p ?o ?g. }
- W4382203508 endingPage "4622" @default.
- W4382203508 startingPage "4611" @default.
- W4382203508 abstract "The abuse of traditional antibiotics has led to increased resistance of bacteria and viruses. Efficient therapeutic peptide prediction is critical for peptide drug discovery. However, most of the existing methods only make effective predictions for one class of therapeutic peptides. It is worth noting that currently no predictive method considers sequence length information as a distinct feature of therapeutic peptides. In this article, a novel deep learning approach with matrix factorization for predicting therapeutic peptides (DeepTPpred) by integrating length information are proposed. The matrix factorization layer can learn the potential features of the encoded sequence through the mechanism of first compression and then restoration. And the length features of the sequence of therapeutic peptides are embedded with encoded amino acid sequences. To automatically learn therapeutic peptide predictions, these latent features are input into the neural networks with self-attention mechanism. On eight therapeutic peptide datasets, DeepTPpred achieved excellent prediction results. Based on these datasets, we first integrated eight datasets to obtain a full therapeutic peptide integration dataset. Then, we obtained two functional integration datasets based on the functional similarity of the peptides. Finally, we also conduct experiments on the latest versions of the ACP and CPP datasets. Overall, the experimental results show that our work is effective for the identification of therapeutic peptides." @default.
- W4382203508 created "2023-06-28" @default.
- W4382203508 creator A5039292739 @default.
- W4382203508 creator A5054096753 @default.
- W4382203508 creator A5060025507 @default.
- W4382203508 creator A5062540383 @default.
- W4382203508 creator A5086358231 @default.
- W4382203508 date "2023-09-01" @default.
- W4382203508 modified "2023-10-16" @default.
- W4382203508 title "DeepTPpred: A Deep Learning Approach With Matrix Factorization for Predicting Therapeutic Peptides by Integrating Length Information" @default.
- W4382203508 cites W1854791334 @default.
- W4382203508 cites W1969191557 @default.
- W4382203508 cites W1972327767 @default.
- W4382203508 cites W1983428057 @default.
- W4382203508 cites W1991720510 @default.
- W4382203508 cites W1992063896 @default.
- W4382203508 cites W1992450378 @default.
- W4382203508 cites W2001088761 @default.
- W4382203508 cites W2005393061 @default.
- W4382203508 cites W2005443451 @default.
- W4382203508 cites W2006707914 @default.
- W4382203508 cites W2034265369 @default.
- W4382203508 cites W2049322319 @default.
- W4382203508 cites W2097834518 @default.
- W4382203508 cites W2112862199 @default.
- W4382203508 cites W2119297694 @default.
- W4382203508 cites W2129115651 @default.
- W4382203508 cites W2168639488 @default.
- W4382203508 cites W2308853031 @default.
- W4382203508 cites W2414310543 @default.
- W4382203508 cites W2568893370 @default.
- W4382203508 cites W2588262749 @default.
- W4382203508 cites W2608969085 @default.
- W4382203508 cites W2724823461 @default.
- W4382203508 cites W2751570459 @default.
- W4382203508 cites W2754252319 @default.
- W4382203508 cites W2766725728 @default.
- W4382203508 cites W2778179010 @default.
- W4382203508 cites W2793606732 @default.
- W4382203508 cites W2794956775 @default.
- W4382203508 cites W2806146459 @default.
- W4382203508 cites W2884031225 @default.
- W4382203508 cites W2887063112 @default.
- W4382203508 cites W2904711643 @default.
- W4382203508 cites W2913709367 @default.
- W4382203508 cites W2918929658 @default.
- W4382203508 cites W2936599975 @default.
- W4382203508 cites W2944812497 @default.
- W4382203508 cites W2949342052 @default.
- W4382203508 cites W2971874382 @default.
- W4382203508 cites W2987660980 @default.
- W4382203508 cites W2999580270 @default.
- W4382203508 cites W3001892650 @default.
- W4382203508 cites W3007215678 @default.
- W4382203508 cites W3011093340 @default.
- W4382203508 cites W3017630416 @default.
- W4382203508 cites W3097173804 @default.
- W4382203508 cites W3110828293 @default.
- W4382203508 cites W3111593274 @default.
- W4382203508 cites W3153138486 @default.
- W4382203508 cites W4225008496 @default.
- W4382203508 cites W4225665657 @default.
- W4382203508 cites W4283333071 @default.
- W4382203508 cites W4289525677 @default.
- W4382203508 cites W4316339986 @default.
- W4382203508 cites W994255587 @default.
- W4382203508 doi "https://doi.org/10.1109/jbhi.2023.3290014" @default.
- W4382203508 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/37368803" @default.
- W4382203508 hasPublicationYear "2023" @default.
- W4382203508 type Work @default.
- W4382203508 citedByCount "0" @default.
- W4382203508 crossrefType "journal-article" @default.
- W4382203508 hasAuthorship W4382203508A5039292739 @default.
- W4382203508 hasAuthorship W4382203508A5054096753 @default.
- W4382203508 hasAuthorship W4382203508A5060025507 @default.
- W4382203508 hasAuthorship W4382203508A5062540383 @default.
- W4382203508 hasAuthorship W4382203508A5086358231 @default.
- W4382203508 hasConcept C103278499 @default.
- W4382203508 hasConcept C108583219 @default.
- W4382203508 hasConcept C115961682 @default.
- W4382203508 hasConcept C119857082 @default.
- W4382203508 hasConcept C121332964 @default.
- W4382203508 hasConcept C152671427 @default.
- W4382203508 hasConcept C154945302 @default.
- W4382203508 hasConcept C158693339 @default.
- W4382203508 hasConcept C2778112365 @default.
- W4382203508 hasConcept C2779281246 @default.
- W4382203508 hasConcept C41008148 @default.
- W4382203508 hasConcept C42355184 @default.
- W4382203508 hasConcept C54355233 @default.
- W4382203508 hasConcept C55493867 @default.
- W4382203508 hasConcept C62520636 @default.
- W4382203508 hasConcept C70721500 @default.
- W4382203508 hasConcept C86803240 @default.
- W4382203508 hasConceptScore W4382203508C103278499 @default.
- W4382203508 hasConceptScore W4382203508C108583219 @default.
- W4382203508 hasConceptScore W4382203508C115961682 @default.
- W4382203508 hasConceptScore W4382203508C119857082 @default.