Issue 22, 2004

Optimising the EVA descriptor for prediction of biological activity

Abstract

EVA is a multivariate molecular descriptor for use in QSAR studies. It is constructed from vibrational eigenvalues derived from either a quantum theoretical or molecular mechanical treatment of molecular structure. This paper applies the method to biological-activity data using measures of the inotropic potential of a range of Calcium channel agonists. The performance of the descriptor, as both an explanatory and a predictive tool, is analysed in relation to the way in which it is constructed using a rigorous statistical treatment. Its capabilities are examined in relation to those of previously published methodology which used a composite descriptor. It is shown to have improved performance and several procedural advantages, such as ease of calculation and operation. It is a 3-D structural descriptor which does not require prior co-alignment of structures for a QSAR study.

Graphical abstract: Optimising the EVA descriptor for prediction of biological activity

Article information

Article type
Paper
Submitted
05 Jul 2004
Accepted
11 Oct 2004
First published
27 Oct 2004

Org. Biomol. Chem., 2004,2, 3301-3311

Optimising the EVA descriptor for prediction of biological activity

M. Ford, L. Phillips and A. Stevens, Org. Biomol. Chem., 2004, 2, 3301 DOI: 10.1039/B410053K

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