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1. In Vitro Evaluation of In Silico Screening Approaches in Search for Selective ACE2 Binding Chemical Probes.

2. Consensus QSAR models estimating acute toxicity to aquatic organisms from different trophic levels: algae, Daphnia and fish.

3. QSAR modeling and chemical space analysis of antimalarial compounds.

4. Predictive Models for the Free Energy of Hydrogen Bonded Complexes with Single and Cooperative Hydrogen Bonds.

5. QSPR Modeling of the AmIII/EuIII Separation Factor: How Far Can we Predict ?

6. GTM-Based QSAR Models and Their Applicability Domains.

7. Structure-property modelling of complex formation of strontium with organic ligands in water.

8. Continuous indicator fields: a novel universal type of molecular fields.

9. DMSO Solubility Assessment for Fragment-Based Screening.

10. An Evolutionary Optimizer of libsvm Models.

11. Computational chemogenomics: Is it more than inductive transfer?

12. Online chemical modeling environment (OCHEM): web platform for data storage, model development and publishing of chemical information.

13. A REPRESENTATION TO APPLY USUAL DATA MINING TECHNIQUES TO CHEMICAL REACTIONS - ILLUSTRATION ON THE RATE CONSTANT OF SN2 REACTIONS IN WATER.

15. QSPRpred: a Flexible Open-Source Quantitative Structure-Property Relationship Modelling Tool.

16. Comprehensive hepatotoxicity prediction: ensemble model integrating machine learning and deep learning.

17. Machine learning accelerates pharmacophore-based virtual screening of MAO inhibitors.

18. Modeling of Benzimidazole Derivatives as Antimalarial Agents using QSAR Analysis.

19. A SAR and QSAR study on 3CLpro inhibitors of SARS-CoV-2 using machine learning methods.

20. Topological regression as an interpretable and efficient tool for quantitative structure-activity relationship modeling.

21. HT_PREDICT: a machine learning-based computational open-source tool for screening HDAC6 inhibitors.

22. Merging Counter-Propagation and Back-Propagation Algorithms: Overcoming the Limitations of Counter-Propagation Neural Network Models.

23. Development of a standardized methodology for transfer learning with QSAR models: a purely data-driven approach for source task selection.

24. q-RASTR modelling for prediction of diverse toxic chemicals towards T. pyriformis.

25. A unified approach to the applicability domain problem of QSAR models.

26. Quantitative Structure–Activity Relationship in the Series of 5-Ethyluridine, N2-Guanine, and 6-Oxopurine Derivatives with Pronounced Anti-Herpetic Activity.

27. Predicting absolute aqueous solubility by applying a machine learning model for an artificially liquid-state as proxy for the solid-state.

28. 2D‐Quantitative structure–activity relationship modeling for risk assessment of pharmacotherapy applied during pregnancy.

29. Insights into the quantitative structure–activity relationship for ionic liquids: a bibliometric mapping analysis.

30. In Silico Modeling and Structural Analysis of Soluble Epoxide Hydrolase Inhibitors for Enhanced Therapeutic Design.

31. ADis-QSAR: a machine learning model based on biological activity differences of compounds.

32. HDAC6 detector: online application for evaluating compounds as potential histone deacetylase 6 inhibitors.

33. Applicability Domains and Consistent Structure Generation.

34. 6D-QSAR for predicting biological activity of human aldose reductase inhibitors using quasar receptor surface modeling.

35. Prediction of bioactivities of microsomal prostaglandin E2 synthase‐1 inhibitors by machine learning algorithms.

36. New Insights on the Activity and Selectivity of MAO-B Inhibitors through In Silico Methods.

37. Quantitative Structure-Activity Relationship of Fluorescent Probes and Their Intracellular Localizations.

38. Selection of optimal validation methods for quantitative structure–activity relationships and applicability domain.

39. Exploring QSAR models for activity-cliff prediction.

40. A comparison between 2D and 3D descriptors in QSAR modeling based on bio‐active conformations.

41. Quantitative structure–activity relationship modeling of hydroxylated polychlorinated biphenyls as constitutive androstane receptor agonists.

42. A Quantitative Structure-Activity Relationship Approach to Determine Biotoxicity of Amide Herbicides for Ecotoxicological Risk Assessment.

43. Efficient predictions of cytotoxicity of TiO2-based multi-component nanoparticles using a machine learning-based q-RASAR approach.

44. Synthesis, QSAR modeling, and molecular docking of novel fused 7‐deazaxanthine derivatives as adenosine A2A receptor antagonists.

45. HDAC1 PREDICTOR: a simple and transparent application for virtual screening of histone deacetylase 1 inhibitors.

46. MolPredictX: Online Biological Activity Predictions by Machine Learning Models.

47. Pharmacophore Synergism in Diverse Scaffold Clinches in Aurora Kinase B.

48. Relationships Between Aquatic Toxicity, Chemical Hydrophobicity, and Mode of Action: Log Kow Revisited.

49. QSPR Modeling and Experimental Determination of the Antioxidant Activity of Some Polycyclic Compounds in the Radical-Chain Oxidation Reaction of Organic Substrates.

50. SMILES-based 2D-QSAR and similarity search for identification of potential new scaffolds for development of SARS-CoV-2 MPRO inhibitors.

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