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John B O Mitchell

Showing results (1-10 of 80) with videos related to

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Wiley Interdisciplinary Reviews. Computational Molecular Science|October 7, 2014
Machine learning methods in chemoinformaticsJohn B O Mitchell
ADMET & DMPK|March 18, 2022
Three machine learning models for the 2019 Solubility ChallengeJohn B O Mitchell
Future Medicinal Chemistry|April 2, 2011
Informatics, machine learning and computational medicinal chemistryJohn B O Mitchell
Bioinformatics (Oxford, England)|September 27, 2003
L/D Protein Ligand Database (PLD): additional understanding of the nature and specificity of protein-ligand complexesDushyanthan Puvanendrampillai, John B O Mitchell
Molecular Informatics|August 5, 2016
Greedy and Linear Ensembles of Machine Learning Methods Outperform Single Approaches for QSPR Regression ProblemsWilliam Kew, John B O Mitchell
Toxicology and Applied Pharmacology|July 1, 2008
Toxicological relationships between proteins obtained from protein target predictions of large toxicity databasesFlorian Nigsch, John B O Mitchell
Acta Crystallographica. Section B, Structural Science|October 31, 2003
Can we predict lattice energy from molecular structure?Carole Ouvrard, John B O Mitchell
BMC Bioinformatics|April 26, 2012
Is EC class predictable from reaction mechanism?Neetika Nath, John B O Mitchell
Journal of Chemical Information and Modeling|January 29, 2008
How to winnow actives from inactives: introducing molecular orthogonal sparse bigrams (MOSBs) and multiclass WinnowFlorian Nigsch, John B O Mitchell
Proteins|February 11, 2003
D-amino acid residues in peptides and proteinsJohn B O Mitchell, James Smith
Pageof 8

Showing results (1-10 of 80) with videos related to

Sort By:
Pageof 8
Wiley Interdisciplinary Reviews. Computational Molecular Science|October 7, 2014
Machine learning methods in chemoinformaticsJohn B O Mitchell
ADMET & DMPK|March 18, 2022
Three machine learning models for the 2019 Solubility ChallengeJohn B O Mitchell
Future Medicinal Chemistry|April 2, 2011
Informatics, machine learning and computational medicinal chemistryJohn B O Mitchell
Bioinformatics (Oxford, England)|September 27, 2003
L/D Protein Ligand Database (PLD): additional understanding of the nature and specificity of protein-ligand complexesDushyanthan Puvanendrampillai, John B O Mitchell
Molecular Informatics|August 5, 2016
Greedy and Linear Ensembles of Machine Learning Methods Outperform Single Approaches for QSPR Regression ProblemsWilliam Kew, John B O Mitchell
Toxicology and Applied Pharmacology|July 1, 2008
Toxicological relationships between proteins obtained from protein target predictions of large toxicity databasesFlorian Nigsch, John B O Mitchell
Acta Crystallographica. Section B, Structural Science|October 31, 2003
Can we predict lattice energy from molecular structure?Carole Ouvrard, John B O Mitchell
BMC Bioinformatics|April 26, 2012
Is EC class predictable from reaction mechanism?Neetika Nath, John B O Mitchell
Journal of Chemical Information and Modeling|January 29, 2008
How to winnow actives from inactives: introducing molecular orthogonal sparse bigrams (MOSBs) and multiclass WinnowFlorian Nigsch, John B O Mitchell
Proteins|February 11, 2003
D-amino acid residues in peptides and proteinsJohn B O Mitchell, James Smith
Pageof 8