
pmid: 16952133
AbstractThis Review describes some of the approaches and techniques used today to derive in silico models for the prediction of ADMET properties. The article also discusses some of the fundamental requirements for deriving statistically sound and predictive ADMET relationships as well as some of the pitfalls and problems encountered during these investigations. It is the intension of the authors to make the reader aware of some of the challenges involved in deriving useful in silico ADMET models for drug development.
Pharmacology, Proteomics, Models, Statistical, Databases, Factual, Computational Biology, Genomics, Toxicology, Pharmaceutical Preparations, Predictive Value of Tests, Multivariate Analysis, Animals, Humans, Computer Simulation, Pharmacokinetics
Pharmacology, Proteomics, Models, Statistical, Databases, Factual, Computational Biology, Genomics, Toxicology, Pharmaceutical Preparations, Predictive Value of Tests, Multivariate Analysis, Animals, Humans, Computer Simulation, Pharmacokinetics
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