Title of article :
An analysis of genetic toxicity, reproductive and developmental toxicity, and carcinogenicity data: II. Identification of genotoxicants, reprotoxicants, and carcinogens using in silico methods
Author/Authors :
Matthews، نويسنده , , Edwin J. and Kruhlak، نويسنده , , Naomi L. and Cimino، نويسنده , , Michael C. and Benz، نويسنده , , R. Daniel and Contrera، نويسنده , , Joseph F.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
14
From page :
97
To page :
110
Abstract :
This study examined a novel method to identify carcinogens that employed expanded data sets composed of in silico data pooled with actual experimental genetic toxicity (genetox) and reproductive and developmental toxicity (reprotox) data. We constructed 21 modules using the MC4PC program including 13 of 14 (11 genetox and 3 reprotox) tests that we found correlated with results of rodent carcinogenicity bioassays (rcbioassays) [Matthews, E.J., Kruhlak, N.L., Cimino, M.C., Benz, R.D., Contrera, J.F., 2005b. An analysis of genetic toxicity, reproductive and developmental toxicity, and carcinogenicity data: I. Identification of carcinogens using surrogate endpoints. Regul. Toxicol. Pharmacol.]. Each of the 21 modules was evaluated by cross-validation experiments and those with high specificity (SP) and positive predictivity (PPV) were used to predict activities of the 1442 chemicals tested for carcinogenicity for which actual genetox or reprotox data were missing. The expanded data sets had ∼70% in silico data pooled with ∼30% experimental data. Based upon SP and PPV, the expanded data sets showed good correlation with carcinogenicity testing results and had correlation indicator (CI, the average of SP and PPV) values of 75.5–88.7%. Conversely, expanded data sets for 9 non-correlated test endpoints were shown not to correlate with carcinogenicity results (CI values <75%). Results also showed that when Salmonella mutagenic carcinogens were removed from the 12 correlated, expanded data sets, only 7 endpoints showed added value by detecting significantly more additional carcinogens than non-carcinogens.
Keywords :
MC4PC , computational toxicology , Quantitative structure–activity relationships , Genetic toxicity , Genetox , Reproductive and developmental toxicity , Reprotox , carcinogenicity , Rodent carcinogenicity bioassay , surrogate , Predictive modeling
Journal title :
Regulatory Toxicology and Pharmacology
Serial Year :
2006
Journal title :
Regulatory Toxicology and Pharmacology
Record number :
1487781
Link To Document :
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