| Literature DB >> 28257198 |
Andreas Verras1, Chris L Waller2, Peter Gedeck3, Darren V S Green4, Thierry Kogej5, Anandkumar Raichurkar6, Manoranjan Panda6, Anang A Shelat7, Julie Clark7, R Kiplin Guy7, George Papadatos8, Jeremy Burrows9.
Abstract
The development of new antimalarial therapies is essential, and lowering the barrier of entry for the screening and discovery of new lead compound classes can spur drug development at organizations that may not have large compound screening libraries or resources to conduct high-throughput screens. Machine learning models have been long established to be more robust and have a larger domain of applicability with larger training sets. Screens over multiple data sets to find compounds with potential malaria blood stage inhibitory activity have been used to generate multiple Bayesian models. Here we describe a method by which Bayesian quantitative structure-activity relationship models, which contain information on thousands to millions of proprietary compounds, can be shared between collaborators at both for-profit and not-for-profit institutions. This model-sharing paradigm allows for the development of consensus models that have increased predictive power over any single model and yet does not reveal the identity of any compounds in the training sets.Entities:
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Year: 2017 PMID: 28257198 DOI: 10.1021/acs.jcim.6b00572
Source DB: PubMed Journal: J Chem Inf Model ISSN: 1549-9596 Impact factor: 4.956