Today's large, public databases of protein-small molecule interaction data are creating important new opportunities for data mining and integration. At the same time, new graphical user interface-based workflow tools offer facile alternatives to custom scripting for informatics and data analysis. Here, we illustrate how the large protein-ligand database BindingDB may be incorporated into KNIME workflows as a step toward the integration of pharmacological data with broader biomolecular analyses. Thus, we describe a collection of KNIME workflows that access BindingDB data via RESTful webservices and, for more intensive queries, via a local distillation of the full BindingDB dataset. We focus in particular on the KNIME implementation of knowledge-based tools to generate informed hypotheses regarding protein targets of bioactive compounds, based on notions of chemical similarity. A number of variants of this basic approach are tested for seven existing drugs with relatively ill-defined therapeutic targets, leading to replication of some previously confirmed results and discovery of new, high-quality hits. Implications for future development are discussed. Database URL: www.bindingdb.org.
Connecting proteins with drug-like compounds: Open source drug discovery workflows with BindingDB and KNIME.
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作者:Nicola George, Berthold Michael R, Hedrick Michael P, Gilson Michael K
| 期刊: | Database-The Journal of Biological Databases and Curation | 影响因子: | 3.600 |
| 时间: | 2015 | 起止号: | 2015 Sep 16; 2015:bav087 |
| doi: | 10.1093/database/bav087 | ||
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