27 results on '"Schaduangrat, Nalini"'
Search Results
2. StackER: a novel SMILES-based stacked approach for the accelerated and efficient discovery of ERα and ERβ antagonists
3. TIPred: a novel stacked ensemble approach for the accelerated discovery of tyrosinase inhibitory peptides
4. StackTTCA: a stacking ensemble learning-based framework for accurate and high-throughput identification of tumor T cell antigens
5. DeepAR: a novel deep learning-based hybrid framework for the interpretable prediction of androgen receptor antagonists
6. PSRQSP: An effective approach for the interpretable prediction of quorum sensing peptide using propensity score representation learning
7. Improved prediction and characterization of blood-brain barrier penetrating peptides using estimated propensity scores of dipeptides
8. Computational prediction and interpretation of druggable proteins using a stacked ensemble-learning framework
9. NEPTUNE: A novel computational approach for accurate and large-scale identification of tumor homing peptides
10. SAPPHIRE: A stacking-based ensemble learning framework for accurate prediction of thermophilic proteins
11. StackPR is a new computational approach for large-scale identification of progesterone receptor antagonists using the stacking strategy
12. ABCpred: a webserver for the discovery of acetyl- and butyryl-cholinesterase inhibitors
13. Leveraging a meta-learning approach to advance the accuracy of Nav blocking peptides prediction
14. The role of ncRNA regulatory mechanisms in diseases—case on gestational diabetes
15. TROLLOPE: A novel sequence-based stacked approach for the accelerated discovery of linear T-cell epitopes of hepatitis C virus
16. Leveraging a meta-learning approach to advance the accuracy of Nav blocking peptides prediction.
17. The role of ncRNA regulatory mechanisms in diseases—case on gestational diabetes.
18. Pretoria: An effective computational approach for accurate and high-throughput identification of CD8+ t-cell epitopes of eukaryotic pathogens
19. iAMAP-SCM: A Novel Computational Tool for Large-Scale Identification of Antimalarial Peptides Using Estimated Propensity Scores of Dipeptides
20. SCMRSA: a New Approach for Identifying and Analyzing Anti-MRSA Peptides Using Estimated Propensity Scores of Dipeptides
21. Empirical comparison and analysis of machine learning-based predictors for predicting and analyzing of thermophilic proteins
22. EMPIRICAL COMPARISON AND ANALYSIS OF MACHINE LEARNING-BASED APPROACHES FOR DRUGGABLE PROTEIN IDENTIFICATION.
23. RECENT DEVELOPMENT OF MACHINE LEARNING-BASED METHODS FOR THE PREDICTION OF DEFENSIN FAMILY AND SUBFAMILY.
24. MetaCGRP is a high-precision meta-model for large-scale identification of CGRP inhibitors using multi-view information.
25. Leveraging a meta-learning approach to advance the accuracy of Na v blocking peptides prediction.
26. Accelerating the identification of the allergenic potential of plant proteins using a stacked ensemble-learning framework.
27. Pretoria: An effective computational approach for accurate and high-throughput identification of CD8 + t-cell epitopes of eukaryotic pathogens.
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