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New public QSAR model for carcinogenicity.

Fjodorova N, Vracko M, Novic M, Roncaglioni A, Benfenati E - Chem Cent J (2010)

Bottom Line: In present paper models for classification of carcinogenic compounds using MDL and Dragon descriptors were developed.Models could be used to set priorities among chemicals for further testing.The models at the CAESAR site were implemented in java and are publicly accessible.

View Article: PubMed Central - HTML - PubMed

Affiliation: National Institute of Chemistry, Hajdrihova 19, SI-1001 Ljubljana, Slovenia. natalja.fjodorova@ki.si.

ABSTRACT

Background: One of the main goals of the new chemical regulation REACH (Registration, Evaluation and Authorization of Chemicals) is to fulfill the gaps in data concerned with properties of chemicals affecting the human health. (Q)SAR models are accepted as a suitable source of information. The EU funded CAESAR project aimed to develop models for prediction of 5 endpoints for regulatory purposes. Carcinogenicity is one of the endpoints under consideration.

Results: Models for prediction of carcinogenic potency according to specific requirements of Chemical regulation were developed. The dataset of 805 non-congeneric chemicals extracted from Carcinogenic Potency Database (CPDBAS) was used. Counter Propagation Artificial Neural Network (CP ANN) algorithm was implemented. In the article two alternative models for prediction carcinogenicity are described. The first model employed eight MDL descriptors (model A) and the second one twelve Dragon descriptors (model B). CAESAR's models have been assessed according to the OECD principles for the validation of QSAR. For the model validity we used a wide series of statistical checks. Models A and B yielded accuracy of training set (644 compounds) equal to 91% and 89% correspondingly; the accuracy of the test set (161 compounds) was 73% and 69%, while the specificity was 69% and 61%, respectively. Sensitivity in both cases was equal to 75%. The accuracy of the leave 20% out cross validation for the training set of models A and B was equal to 66% and 62% respectively. To verify if the models perform correctly on new compounds the external validation was carried out. The external test set was composed of 738 compounds. We obtained accuracy of external validation equal to 61.4% and 60.0%, sensitivity 64.0% and 61.8% and specificity equal to 58.9% and 58.4% respectively for models A and B.

Conclusion: Carcinogenicity is a particularly important endpoint and it is expected that QSAR models will not replace the human experts opinions and conventional methods. However, we believe that combination of several methods will provide useful support to the overall evaluation of carcinogenicity. In present paper models for classification of carcinogenic compounds using MDL and Dragon descriptors were developed. Models could be used to set priorities among chemicals for further testing. The models at the CAESAR site were implemented in java and are publicly accessible.

No MeSH data available.


Related in: MedlinePlus

Counter propagation neural network architecture.
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Figure 5: Counter propagation neural network architecture.

Mentions: CP ANN algorithm was used in modeling. In this chapter we give a brief description of the method employed. CP ANN consists of two layers of neurons arranged in a two-dimensional rectangular matrix. The architecture of CP ANN is presented in Figure 5.


New public QSAR model for carcinogenicity.

Fjodorova N, Vracko M, Novic M, Roncaglioni A, Benfenati E - Chem Cent J (2010)

Counter propagation neural network architecture.
© Copyright Policy - open-access
Related In: Results  -  Collection

License
Show All Figures
getmorefigures.php?uid=PMC2913330&req=5

Figure 5: Counter propagation neural network architecture.
Mentions: CP ANN algorithm was used in modeling. In this chapter we give a brief description of the method employed. CP ANN consists of two layers of neurons arranged in a two-dimensional rectangular matrix. The architecture of CP ANN is presented in Figure 5.

Bottom Line: In present paper models for classification of carcinogenic compounds using MDL and Dragon descriptors were developed.Models could be used to set priorities among chemicals for further testing.The models at the CAESAR site were implemented in java and are publicly accessible.

View Article: PubMed Central - HTML - PubMed

Affiliation: National Institute of Chemistry, Hajdrihova 19, SI-1001 Ljubljana, Slovenia. natalja.fjodorova@ki.si.

ABSTRACT

Background: One of the main goals of the new chemical regulation REACH (Registration, Evaluation and Authorization of Chemicals) is to fulfill the gaps in data concerned with properties of chemicals affecting the human health. (Q)SAR models are accepted as a suitable source of information. The EU funded CAESAR project aimed to develop models for prediction of 5 endpoints for regulatory purposes. Carcinogenicity is one of the endpoints under consideration.

Results: Models for prediction of carcinogenic potency according to specific requirements of Chemical regulation were developed. The dataset of 805 non-congeneric chemicals extracted from Carcinogenic Potency Database (CPDBAS) was used. Counter Propagation Artificial Neural Network (CP ANN) algorithm was implemented. In the article two alternative models for prediction carcinogenicity are described. The first model employed eight MDL descriptors (model A) and the second one twelve Dragon descriptors (model B). CAESAR's models have been assessed according to the OECD principles for the validation of QSAR. For the model validity we used a wide series of statistical checks. Models A and B yielded accuracy of training set (644 compounds) equal to 91% and 89% correspondingly; the accuracy of the test set (161 compounds) was 73% and 69%, while the specificity was 69% and 61%, respectively. Sensitivity in both cases was equal to 75%. The accuracy of the leave 20% out cross validation for the training set of models A and B was equal to 66% and 62% respectively. To verify if the models perform correctly on new compounds the external validation was carried out. The external test set was composed of 738 compounds. We obtained accuracy of external validation equal to 61.4% and 60.0%, sensitivity 64.0% and 61.8% and specificity equal to 58.9% and 58.4% respectively for models A and B.

Conclusion: Carcinogenicity is a particularly important endpoint and it is expected that QSAR models will not replace the human experts opinions and conventional methods. However, we believe that combination of several methods will provide useful support to the overall evaluation of carcinogenicity. In present paper models for classification of carcinogenic compounds using MDL and Dragon descriptors were developed. Models could be used to set priorities among chemicals for further testing. The models at the CAESAR site were implemented in java and are publicly accessible.

No MeSH data available.


Related in: MedlinePlus