On some aspects of validation of predictive quantitative structure–activity relationship models
@article{Roy2007OnSA, title={On some aspects of validation of predictive quantitative structure–activity relationship models}, author={Kunal Roy}, journal={Expert Opinion on Drug Discovery}, year={2007}, volume={2}, pages={1567 - 1577}, url={https://api.semanticscholar.org/CorpusID:21305783} }
This review focuses on the importance of validation of quantitative structure–activity relationship models and different methods of validation.
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