by Antoine Daina (Editor), Michael Przewosny (Editor), Vincent Zoete (Editor)
Open Access Databases and Datasets for Drug Discovery
Timely resource discussing the future of data-driven drug discovery and the growing number of open-source databases
With an overview of 90 freely accessible databases and datasets on all aspects of drug design, development, and discovery, Open Access Databases and Datasets for Drug Discovery is a comprehensive guide to the vast amount of “free data” available to today’s pharmaceutical researchers. The applicability of open-source data for drug discovery and development is analyzed, and their usefulness in comparison with commercially available tools is evaluated.
The most relevant databases for small molecules, drugs and druglike substances, ligand design, protein 3D structures (both experimental and calculated), and human drug targets are described in depth, including practical examples of how to access and work with the data. The first part is focused on databases for small molecules, followed by databases for macromolecular targets and diseases. The final part shows how to integrate various open-source tools into the academic and industrial drug discovery and development process.
Contributed to and edited by experts with long-time experience in the field, Open Access Databases and Datasets for Drug Discovery includes information on:
Unmatched in scope and thoroughly reviewing small and large open data sources relevant for rational drug design, Open Access Databases and Datasets for Drug Discovery is an essential reference for medicinal and pharmaceutical chemists, and any scientists involved in the drug discovery and drug development.
Year | 2024 |
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Pages | 344 |
Language | English |
Format | |
Size | 11 MB |
ASIN | B0CK4B6TSL |
ISBN-10 | 3527348395 |
ISBN-13 | 9783527348398, 9783527830473, 9783527830480, 9783527830497, 978-3527348398, 978-3527830473, 978-3527830480, 978-3527830497, 978-3-527-34839-8, 978-3-527-83047-3, 978-3-527-83048-0, 978-3-527-83049-7 |