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Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory.
For a database of 826 chemicals tested for carcinogenicity, we fragmented the structural formula of the chemicals into all possible contiguous-atom fragments with size between two and eight (nonhydrogen) atoms. The fragmentation was obtained using a new software program based on graph theory. We use...
Autores principales: | , , , |
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Formato: | Texto |
Lenguaje: | English |
Publicado: |
1993
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1519819/ https://www.ncbi.nlm.nih.gov/pubmed/8275991 |
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author | Malacarne, D Pesenti, R Paolucci, M Parodi, S |
author_facet | Malacarne, D Pesenti, R Paolucci, M Parodi, S |
author_sort | Malacarne, D |
collection | PubMed |
description | For a database of 826 chemicals tested for carcinogenicity, we fragmented the structural formula of the chemicals into all possible contiguous-atom fragments with size between two and eight (nonhydrogen) atoms. The fragmentation was obtained using a new software program based on graph theory. We used 80% of the chemicals as a training set and 20% as a test set. The two sets were obtained by random sorting. From the training sets, an average (8 computer runs with independently sorted chemicals) of 315 different fragments were significantly (p < 0.125) associated with carcinogenicity or lack thereof. Even using this relatively low level of statistical significance, 23% of the molecules of the test sets lacked significant fragments. For 77% of the molecules of the test sets, we used the presence of significant fragments to predict carcinogenicity. The average level of accuracy of the predictions in the test sets was 67.5%. Chemicals containing only positive fragments were predicted with an accuracy of 78.7%. The level of accuracy was around 60% for chemicals characterized by contradictory fragments or only negative fragments. In a parallel manner, we performed eight paired runs in which carcinogenicity was attributed randomly to the molecules of the training sets. The fragments generated by these pseudo-training sets were devoid of any predictivity in the corresponding test sets. Using an independent software program, we confirmed (for the complex biological endpoint of carcinogenicity) the validity of a structure-activity relationship approach of the type proposed by Klopman and Rosenkranz with their CASE program. |
format | Text |
id | pubmed-1519819 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 1993 |
record_format | MEDLINE/PubMed |
spelling | pubmed-15198192006-07-26 Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. Malacarne, D Pesenti, R Paolucci, M Parodi, S Environ Health Perspect Research Article For a database of 826 chemicals tested for carcinogenicity, we fragmented the structural formula of the chemicals into all possible contiguous-atom fragments with size between two and eight (nonhydrogen) atoms. The fragmentation was obtained using a new software program based on graph theory. We used 80% of the chemicals as a training set and 20% as a test set. The two sets were obtained by random sorting. From the training sets, an average (8 computer runs with independently sorted chemicals) of 315 different fragments were significantly (p < 0.125) associated with carcinogenicity or lack thereof. Even using this relatively low level of statistical significance, 23% of the molecules of the test sets lacked significant fragments. For 77% of the molecules of the test sets, we used the presence of significant fragments to predict carcinogenicity. The average level of accuracy of the predictions in the test sets was 67.5%. Chemicals containing only positive fragments were predicted with an accuracy of 78.7%. The level of accuracy was around 60% for chemicals characterized by contradictory fragments or only negative fragments. In a parallel manner, we performed eight paired runs in which carcinogenicity was attributed randomly to the molecules of the training sets. The fragments generated by these pseudo-training sets were devoid of any predictivity in the corresponding test sets. Using an independent software program, we confirmed (for the complex biological endpoint of carcinogenicity) the validity of a structure-activity relationship approach of the type proposed by Klopman and Rosenkranz with their CASE program. 1993-09 /pmc/articles/PMC1519819/ /pubmed/8275991 Text en |
spellingShingle | Research Article Malacarne, D Pesenti, R Paolucci, M Parodi, S Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
title | Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
title_full | Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
title_fullStr | Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
title_full_unstemmed | Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
title_short | Relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
title_sort | relationship between molecular connectivity and carcinogenic activity: a confirmation with a new software program based on graph theory. |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1519819/ https://www.ncbi.nlm.nih.gov/pubmed/8275991 |
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