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Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming.
The machine learning program Progol was applied to the problem of forming the structure-activity relationship (SAR) for a set of compounds tested for carcinogenicity in rodent bioassays by the U.S. National Toxicology Program (NTP). Progol is the first inductive logic programming (ILP) algorithm to...
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Formato: | Texto |
Lenguaje: | English |
Publicado: |
1996
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Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1469678/ https://www.ncbi.nlm.nih.gov/pubmed/8933051 |
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author | King, R D Srinivasan, A |
author_facet | King, R D Srinivasan, A |
author_sort | King, R D |
collection | PubMed |
description | The machine learning program Progol was applied to the problem of forming the structure-activity relationship (SAR) for a set of compounds tested for carcinogenicity in rodent bioassays by the U.S. National Toxicology Program (NTP). Progol is the first inductive logic programming (ILP) algorithm to use a fully relational method for describing chemical structure in SARs, based on using atoms and their bond connectivities. Progol is well suited to forming SARs for carcinogenicity as it is designed to produce easily understandable rules (structural alerts) for sets of noncongeneric compounds. The Progol SAR method was tested by prediction of a set of compounds that have been widely predicted by other SAR methods (the compounds used in the NTP's first round of carcinogenesis predictions). For these compounds no method (human or machine) was significantly more accurate than Progol. Progol was the most accurate method that did not use data from biological tests on rodents (however, the difference in accuracy is not significant). The Progol predictions were based solely on chemical structure and the results of tests for Salmonella mutagenicity. Using the full NTP database, the prediction accuracy of Progol was estimated to be 63% (+/- 3%) using 5-fold cross validation. A set of structural alerts for carcinogenesis was automatically generated and the chemical rationale for them investigated- these structural alerts are statistically independent of the Salmonella mutagenicity. Carcinogenicity is predicted for the compounds used in the NTP's second round of carcinogenesis predictions. The results for prediction of carcinogenesis, taken together with the previous successful applications of predicting mutagenicity in nitroaromatic compounds, and inhibition of angiogenesis by suramin analogues, show that Progol has a role to play in understanding the SARs of cancer-related compounds. |
format | Text |
id | pubmed-1469678 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 1996 |
record_format | MEDLINE/PubMed |
spelling | pubmed-14696782006-06-01 Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. King, R D Srinivasan, A Environ Health Perspect Research Article The machine learning program Progol was applied to the problem of forming the structure-activity relationship (SAR) for a set of compounds tested for carcinogenicity in rodent bioassays by the U.S. National Toxicology Program (NTP). Progol is the first inductive logic programming (ILP) algorithm to use a fully relational method for describing chemical structure in SARs, based on using atoms and their bond connectivities. Progol is well suited to forming SARs for carcinogenicity as it is designed to produce easily understandable rules (structural alerts) for sets of noncongeneric compounds. The Progol SAR method was tested by prediction of a set of compounds that have been widely predicted by other SAR methods (the compounds used in the NTP's first round of carcinogenesis predictions). For these compounds no method (human or machine) was significantly more accurate than Progol. Progol was the most accurate method that did not use data from biological tests on rodents (however, the difference in accuracy is not significant). The Progol predictions were based solely on chemical structure and the results of tests for Salmonella mutagenicity. Using the full NTP database, the prediction accuracy of Progol was estimated to be 63% (+/- 3%) using 5-fold cross validation. A set of structural alerts for carcinogenesis was automatically generated and the chemical rationale for them investigated- these structural alerts are statistically independent of the Salmonella mutagenicity. Carcinogenicity is predicted for the compounds used in the NTP's second round of carcinogenesis predictions. The results for prediction of carcinogenesis, taken together with the previous successful applications of predicting mutagenicity in nitroaromatic compounds, and inhibition of angiogenesis by suramin analogues, show that Progol has a role to play in understanding the SARs of cancer-related compounds. 1996-10 /pmc/articles/PMC1469678/ /pubmed/8933051 Text en |
spellingShingle | Research Article King, R D Srinivasan, A Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
title | Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
title_full | Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
title_fullStr | Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
title_full_unstemmed | Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
title_short | Prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
title_sort | prediction of rodent carcinogenicity bioassays from molecular structure using inductive logic programming. |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1469678/ https://www.ncbi.nlm.nih.gov/pubmed/8933051 |
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