| Literature DB >> 31637565 |
Darren V S Green1, Stephen Pickett2, Chris Luscombe2, Stefan Senger2, David Marcus2, Jamel Meslamani3, David Brett4, Adam Powell4, Jonathan Masson4.
Abstract
This paper introduces BRADSHAW (Biological Response Analysis and Design System using an Heterogenous, Automated Workflow), a system for automated molecular design which integrates methods for chemical structure generation, experimental design, active learning and cheminformatics tools. The simple user interface is designed to facilitate access to large scale automated design whilst minimising software development required to introduce new algorithms, a critical requirement in what is a very fast moving field. The system embodies a philosophy of automation, best practice, experimental design and the use of both traditional cheminformatics and modern machine learning algorithms.Entities:
Keywords: Active learning; Automated design; Cheminformatics; Experimental design
Year: 2019 PMID: 31637565 PMCID: PMC7292824 DOI: 10.1007/s10822-019-00234-8
Source DB: PubMed Journal: J Comput Aided Mol Des ISSN: 0920-654X Impact factor: 3.686
Fig. 1Overview of the BRADSHAW system
Fig. 2The BRADSHAW User Interface. Available Tasks are on the left, and are coloured if they can be added to the current workflow
Fig. 3Example of a sparse array design for a two component library
Scheme 1Molecule generation for Adenosine A2A antagonists
Scheme 2The core template for a 50 × 50 array targeted against MMP12
Compounds selected from the MMP12 Sparse Array design along with their biological data
Compounds from the MMP12 set predicted to be the best actives using the Fit & Predict Task, along with their MMP12 activity
Fig. 4MMP12 activity distribution across the MMP12 data set (yellow), the sparse design (red) and the Fit and Predict selections (blue)
Molecules from the full MMP12 data set selected by the Active Learning Task
Molecules generated by BRADSHAW and selected by the Active Learning Task