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Active learning for computational chemogenomics.

Publication ,  Journal Article
Reker, D; Schneider, P; Schneider, G; Brown, JB
Published in: Future medicinal chemistry
March 2017

Computational chemogenomics models the compound-protein interaction space, typically for drug discovery, where existing methods predominantly either incorporate increasing numbers of bioactivity samples or focus on specific subfamilies of proteins and ligands. As an alternative to modeling entire large datasets at once, active learning adaptively incorporates a minimum of informative examples for modeling, yielding compact but high quality models. Results/methodology: We assessed active learning for protein/target family-wide chemogenomic modeling by replicate experiment. Results demonstrate that small yet highly predictive models can be extracted from only 10-25% of large bioactivity datasets, irrespective of molecule descriptors used.Chemogenomic active learning identifies small subsets of ligand-target interactions in a large screening database that lead to knowledge discovery and highly predictive models.

Duke Scholars

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Published In

Future medicinal chemistry

DOI

EISSN

1756-8927

ISSN

1756-8919

Publication Date

March 2017

Volume

9

Issue

4

Start / End Page

381 / 402

Related Subject Headings

  • Proteins
  • Models, Chemical
  • Medicinal & Biomolecular Chemistry
  • Machine Learning
  • Ligands
  • Genomics
  • Drug Discovery
  • Databases, Chemical
  • Computer Simulation
  • Computational Biology
 

Citation

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Reker, D., Schneider, P., Schneider, G., & Brown, J. B. (2017). Active learning for computational chemogenomics. Future Medicinal Chemistry, 9(4), 381–402. https://doi.org/10.4155/fmc-2016-0197
Reker, Daniel, Petra Schneider, Gisbert Schneider, and J. B. Brown. “Active learning for computational chemogenomics.Future Medicinal Chemistry 9, no. 4 (March 2017): 381–402. https://doi.org/10.4155/fmc-2016-0197.
Reker D, Schneider P, Schneider G, Brown JB. Active learning for computational chemogenomics. Future medicinal chemistry. 2017 Mar;9(4):381–402.
Reker, Daniel, et al. “Active learning for computational chemogenomics.Future Medicinal Chemistry, vol. 9, no. 4, Mar. 2017, pp. 381–402. Epmc, doi:10.4155/fmc-2016-0197.
Reker D, Schneider P, Schneider G, Brown JB. Active learning for computational chemogenomics. Future medicinal chemistry. 2017 Mar;9(4):381–402.
Journal cover image

Published In

Future medicinal chemistry

DOI

EISSN

1756-8927

ISSN

1756-8919

Publication Date

March 2017

Volume

9

Issue

4

Start / End Page

381 / 402

Related Subject Headings

  • Proteins
  • Models, Chemical
  • Medicinal & Biomolecular Chemistry
  • Machine Learning
  • Ligands
  • Genomics
  • Drug Discovery
  • Databases, Chemical
  • Computer Simulation
  • Computational Biology