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Your search keyword '"Akutsu, Tatsuya"' showing total 17 results

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17 results on '"Akutsu, Tatsuya"'

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1. DiCleave: a deep learning model for predicting human Dicer cleavage sites.

2. iAMPCN: a deep-learning approach for identifying antimicrobial peptides and their functional activities.

3. PFresGO: an attention mechanism-based deep-learning approach for protein annotation by integrating gene ontology inter-relationships.

4. DeepBL: a deep learning-based approach for in silico discovery of beta-lactamases.

5. DeepVF: a deep learning-based hybrid framework for identifying virulence factors using the stacking strategy.

6. DeepCleave: a deep learning predictor for caspase and matrix metalloprotease substrates and cleavage sites.

7. SMG: self-supervised masked graph learning for cancer gene identification.

8. ResNetKhib: a novel cell type-specific tool for predicting lysine 2-hydroxyisobutylation sites via transfer learning.

9. Critical assessment of computational tools for prokaryotic and eukaryotic promoter prediction.

10. Assessing the performance of computational predictors for estimating protein stability changes upon missense mutations.

11. Computational identification of eukaryotic promoters based on cascaded deep capsule neural networks.

12. Comprehensive review and assessment of computational methods for predicting RNA post-transcriptional modification sites from RNA sequences.

13. Causalcall: Nanopore Basecalling Using a Temporal Convolutional Network.

14. Large-scale comparative assessment of computational predictors for lysine post-translational modification sites.

15. Twenty years of bioinformatics research for protease-specific substrate and cleavage site prediction: a comprehensive revisit and benchmarking of existing methods.

16. Convolutional neural network approach to lung cancer classification integrating protein interaction network and gene expression profiles.

17. Deep learning with evolutionary and genomic profiles for identifying cancer subtypes.

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