Predicting the carcinogenic potential of pharmaceuticals in rodents using molecular structural similarity and E-state indices

MDL QSAR (formerly SciVision QSAR IS) software is one of the several software systems under evaluation by the Informatics and Computational Safety Analysis Staff (ICSAS) of the FDA Center for Drug Evaluation and Research for regulatory and scientific decision support applications. MDL QSAR software...

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Veröffentlicht in:Regulatory toxicology and pharmacology 2003-12, Vol.38 (3), p.243-259
Hauptverfasser: Contrera, Joseph F, Matthews, Edwin J, Daniel Benz, R
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creator Contrera, Joseph F
Matthews, Edwin J
Daniel Benz, R
description MDL QSAR (formerly SciVision QSAR IS) software is one of the several software systems under evaluation by the Informatics and Computational Safety Analysis Staff (ICSAS) of the FDA Center for Drug Evaluation and Research for regulatory and scientific decision support applications. MDL QSAR software contains an integrated set of tools for similarity searching, compound clustering, and modeling molecular structure related parameters that includes 240 electrotopological E-state, connectivity, and other descriptors. These molecular descriptors can be statistically correlated with toxicological or biological endpoints. The goal of this research was to evaluate the feasibility of using MDL QSAR software to develop structure–activity relationship (SAR) models that can be used to predict the carcinogenic potential of pharmaceuticals and organic chemicals. A validation study of 108 compounds that include 86 pharmaceuticals and 22 chemicals that were not present in a control rodent carcinogenicity data set of 1275 compounds demonstrated that MDL QSAR models had excellent coverage (93%) and good sensitivity (72%) and specificity (72%) for rodent carcinogenicity. The software correctly predicted 72% of non-carcinogenic compounds and compounds with carcinogenic findings. E-state descriptors contributed to more than half of the SAR models used to predict carcinogenic activity. W e believe that electrotopological E-state descriptors and QSAR IS (MDL QSAR) software are promising new in silico approaches for modeling and predicting rodent carcinogenicity and may have application for other toxicological endpoints.
doi_str_mv 10.1016/S0273-2300(03)00071-0
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source MEDLINE; ScienceDirect Journals (5 years ago - present)
subjects Algorithms
Animals
Carcinogenicity
Carcinogenicity Tests - methods
Carcinogens - toxicity
Computational toxicology
Computers
Database Management Systems
Drug Approval
Drug Evaluation, Preclinical
Drug-Related Side Effects and Adverse Reactions
E-state descriptors
Electrotopological
Female
Forecasting
In silico
Male
Methylthiouracil - chemistry
Methylthiouracil - toxicity
Mice
Organic Chemicals - toxicity
Predictive modeling
Quantitative Structure-Activity Relationship
Quantitative structure–activity relationship (QSAR)
Rats
Reproducibility of Results
Software
United States
title Predicting the carcinogenic potential of pharmaceuticals in rodents using molecular structural similarity and E-state indices
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