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14 results

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1. Improved structure-related prediction for insufficient homologous proteins using MSA enhancement and pre-trained language model.

2. MITNet: a fusion transformer and convolutional neural network architecture approach for T-cell epitope prediction.

3. MARPPI: boosting prediction of protein–protein interactions with multi-scale architecture residual network.

4. Grain protein function prediction based on self-attention mechanism and bidirectional LSTM.

5. ACP_MS: prediction of anticancer peptides based on feature extraction.

6. SADeepcry: a deep learning framework for protein crystallization propensity prediction using self-attention and auto-encoder networks.

7. CRISPRCasStack: a stacking strategy-based ensemble learning framework for accurate identification of Cas proteins.

8. iDRNA-ITF: identifying DNA- and RNA-binding residues in proteins based on induction and transfer framework.

9. Predicting binding affinities of emerging variants of SARS-CoV-2 using spike protein sequencing data: observations, caveats and recommendations.

10. Learning protein subcellular localization multi-view patterns from heterogeneous data of imaging, sequence and networks.

11. MathFeature: feature extraction package for DNA, RNA and protein sequences based on mathematical descriptors.

12. Deep-AFPpred: identifying novel antifungal peptides using pretrained embeddings from seq2vec with 1DCNN-BiLSTM.

13. PHIAF: prediction of phage-host interactions with GAN-based data augmentation and sequence-based feature fusion.

14. PreDTIs: prediction of drug–target interactions based on multiple feature information using gradient boosting framework with data balancing and feature selection techniques.