4.5 Review

A structural feature-based computational approach for toxicology predictions

Journal

EXPERT OPINION ON DRUG METABOLISM & TOXICOLOGY
Volume 6, Issue 4, Pages 505-518

Publisher

INFORMA HEALTHCARE
DOI: 10.1517/17425250903499286

Keywords

computational toxicology; preclinical toxicity; QSAR; safety assessment; SAR

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Importance of the field: Evaluation of pharmaceutical-related toxicities using quantitative structure activity relationship (QSAR) software as decision support tools is becoming practical and is of keen interest to scientists in both product safety and discovery. QSARs can be used to predict preclinical and clinical endpoints, drug metabolism, pharmacokinetics and mechanisms responsible for toxicity. These in silico tools are of interest in supporting regulatory review processes, and priority setting in research and product development. Areas covered in this review: A critical assessment of the current capabilities of a new technology, the Leadscope Model Applier, is presented. Possible strengths and limitations of this technology with emphasis on the chemoinformatics method are described, and supporting literature citations date back to 1983. What the reader will gain: Insight will be gained into the Leadscope Model Applier technology for structural feature-based QSAR models and its potential capability for chemical inference if the training sets are transparently open. Currently, however, there is a lack of transparency due to the protection of the proprietary training set. Take home message: Further research and development is needed in the creation of more stringently validated models with greater transparency and better balance between sensitivity and specificity.

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