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26 results

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1. DGDTA: dynamic graph attention network for predicting drug–target binding affinity.

2. Prediction of hot spots towards drug discovery by protein sequence embedding with 1D convolutional neural network.

3. Drug-target binding affinity prediction using message passing neural network and self supervised learning.

4. CCL-DTI: contributing the contrastive loss in drug–target interaction prediction.

5. SubMDTA: drug target affinity prediction based on substructure extraction and multi-scale features.

6. Improving prediction of drug-target interactions based on fusing multiple features with data balancing and feature selection techniques.

7. BiComp-DTA: Drug-target binding affinity prediction through complementary biological-related and compression-based featurization approach.

8. Deep generative model for drug design from protein target sequence.

9. Principal Component and Structural Element Analysis Provide Insights into the Evolutionary Divergence of Conotoxins.

10. Molecular Assessment of Domain I of Apical Membrane Antigen I Gene in Plasmodium falciparum: Implications in Plasmodium Invasion, Taxonomy, Vaccine Development, and Drug Discovery.

11. Multi-scaled self-attention for drug–target interaction prediction based on multi-granularity representation.

12. GEFormerDTA: drug target affinity prediction based on transformer graph for early fusion.

13. When Protein Structure Embedding Meets Large Language Models.

14. Advancing drug–target interaction prediction: a comprehensive graph-based approach integrating knowledge graph embedding and ProtBert pretraining.

15. Accelerating the Discovery of Anticancer Peptides through Deep Forest Architecture with Deep Graphical Representation.

16. Improved compound–protein interaction site and binding affinity prediction using self-supervised protein embeddings.

17. Toward Establishing an Ideal Adjuvant for Non-Inflammatory Immune Enhancement.

18. cACP-DeepGram: Classification of anticancer peptides via deep neural network and skip-gram-based word embedding model.

19. ICAN: Interpretable cross-attention network for identifying drug and target protein interactions.

20. Cross-modality and self-supervised protein embedding for compound–protein affinity and contact prediction.

21. Fine-tuning of BERT Model to Accurately Predict Drug–Target Interactions.

22. Characterization, Biological Activity, and Mechanism of Action of a Plant-Based Novel Antifungal Peptide, Cc-AFP1, Isolated From Carum carvi.

23. Direct Identification of Urinary Tract Pathogens by MALDI-TOF/TOF Analysis and De Novo Peptide Sequencing

24. Multi-scaled self-attention for drug-target interaction prediction based on multi-granularity representation

25. Switching the N-Capping Region from all-L to all-D Amino Acids in a VEGF Mimetic Helical Peptide

26. Graph Neural Network for Protein–Protein Interaction Prediction: A Comparative Study