A novel method for mining highly imbalanced high-throughput screening data in PubChem
Open Access
- 13 October 2009
- journal article
- research article
- Published by Oxford University Press (OUP) in Bioinformatics
- Vol. 25 (24) , 3310-3316
- https://doi.org/10.1093/bioinformatics/btp589
Abstract
Motivation: The comprehensive information of small molecules and their biological activities in PubChem brings great opportunities for academic researchers. However, mining high-throughput screening (HTS) assay data remains a great challenge given the very large data volume and the highly imbalanced nature with only small number of active compounds compared to inactive compounds. Therefore, there is currently a need for better strategies to work with HTS assay data. Moreover, as luciferase-based HTS technology is frequently exploited in the assays deposited in PubChem, constructing a computational model to distinguish and filter out potential interference compounds for these assays is another motivation. Results: We used the granular support vector machines (SVMs) repetitive under sampling method (GSVM-RU) to construct an SVM from luciferase inhibition bioassay data that the imbalance ratio of active/inactive is high (1/377). The best model recognized the active and inactive compounds at the accuracies of 86.60% and 88.89 with a total accuracy of 87.74%, by cross-validation test and blind test. These results demonstrate the robustness of the model in handling the intrinsic imbalance problem in HTS data and it can be used as a virtual screening tool to identify potential interference compounds in luciferase-based HTS experiments. Additionally, this method has also proved computationally efficient by greatly reducing the computational cost and can be easily adopted in the analysis of HTS data for other biological systems. Availability: Data are publicly available in PubChem with AIDs of 773, 1006 and 1379. Contact: ywang@ncbi.nlm.nih.gov; bryant@ncbi.nlm.nih.gov Supplementary information: Supplementary data are available at Bioinformatics online.Keywords
This publication has 31 references indexed in Scilit:
- A Basis for Reduced Chemical Library Inhibition of Firefly Luciferase Obtained from Directed EvolutionJournal of Medicinal Chemistry, 2009
- Developing and validating predictive decision tree models from mining chemical structural fingerprints and high–throughput screening data in PubChemBMC Bioinformatics, 2008
- A maximum common substructure-based algorithm for searching and predicting drug-like compoundsBioinformatics, 2008
- Characterization of Chemical Libraries for Luciferase Inhibitory ActivityJournal of Medicinal Chemistry, 2008
- Utilizing high throughput screening data for predictive toxicology models: protocols and application to MLSCN assaysJournal of Computer-Aided Molecular Design, 2008
- Bioluminescent Assays for High-Throughput ScreeningASSAY and Drug Development Technologies, 2007
- Deriving Knowledge through Data Mining High-Throughput Screening DataJournal of Medicinal Chemistry, 2004
- Strategies for learning in class imbalance problemsPattern Recognition, 2003
- Improving the Odds in Discriminating “Drug-like” from “Non Drug-like” CompoundsJournal of Chemical Information and Computer Sciences, 2000
- Support-vector networksMachine Learning, 1995