New approaches to QSAR: Neural networks and machine learning |
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Authors: | Ross D. King Jonathan D. Hirst Michael J. E. Sternberg |
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Affiliation: | (1) Biomolecular Modelling Laboratory, Imperial Cancer Research Fund, 44 Lincoln's Inn Fields, P.O. Box 123, WC2A 3PX London, UK |
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Abstract: | Summary Neural networks and machine learning are two methods that are increasingly being used to model QSARs. They make few statistical assumptions and are nonlinear and nonparametric. We describe back-propagation from the field of neural networks, and GOLEM from machine learning, and illustrate their learning mechanisms using a simple expository problem. Back-propagation and GOLEM are then compared with multiple linear regression (using the parameters and their squares) on two real drug design problems: the inhibition ofEscherichia coli dihydrofolate reductase (DHFR) by pyrimidines and the inhibition of rat/mouse tumour DHFR by triazines. |
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Keywords: | Artificial intelligence Drug design |
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