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Original Articles

Validation of counter propagation neural network models for predictive toxicology according to the OECD principles: a case study

, , , , , , , , , , , , , , , , , & show all
Pages 265-284 | Received 19 Jan 2006, Accepted 25 Apr 2006, Published online: 01 Feb 2007
 

Abstract

The OECD has proposed five principles for validation of QSAR models used for regulatory purposes. Here we present a case study investigating how these principles can be applied to models based on Kohonen and counter propagation neural networks. The study is based on a counter propagation network model that has been built using toxicity data in fish fathead minnow for 541 compounds. The study demonstrates that most, if not all, of the OECD criteria may be met when modeling using this neural network approach.

Acknowledgement

MV acknowledges receipt of Senior Researcher Visitor grant from the ECB, Institute for Health and Consumer Protection, European Commission Joint Research Centre. C. Helma was funded by a grant (1328-179) of the Centre for Documentation and Evaluation of Alternatives to Animal Experiments (ZEBET) of the Federal Institute for Risk Assessment (BfR).

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