ESP: a Method to Predict Toxicity and Pharmacological Properties of Chemicals Using Multiple MCASE Databases
Overview
Medical Informatics
Affiliations
We describe here the development of a computer program which uses a new method called Expert System Prediction (ESP), to predict toxic end points and pharmacological properties of chemicals based on multiple modules created by the MCASE artificial intelligence system. The modules are generally based on different biological models measuring related end points. The purpose is to improve the decision making process regarding the overall activity or inactivity of the chemicals and also to enable rapid in silico screening. ESP evaluates the significance of the biophores from a different viewpoint and uses this information for predicting the activity of new chemicals. We have used a unique encoding system to represent relevant features of a chemical in the form of a pattern vector and a genetic artificial neural network (GA-ANN) to gain knowledge of the relationship between these patterns and the overall pharmacological property. The effectiveness of ESP is illustrated in the prediction of general carcinogenicity of a diverse set of chemicals using MCASE male/female rats and mice carcinogenicity modules.
Hwang J, Kim S, Shin T, Jang Y, Kwon D, Lee G Pharmaceutics. 2022; 14(5).
PMID: 35631583 PMC: 9147327. DOI: 10.3390/pharmaceutics14050997.
Automated detection of structural alerts (chemical fragments) in (eco)toxicology.
Lepailleur A, Poezevara G, Bureau R Comput Struct Biotechnol J. 2014; 5:e201302013.
PMID: 24688706 PMC: 3962211. DOI: 10.5936/csbj.201302013.
New public QSAR model for carcinogenicity.
Fjodorova N, Vracko M, Novic M, Roncaglioni A, Benfenati E Chem Cent J. 2010; 4 Suppl 1:S3.
PMID: 20678182 PMC: 2913330. DOI: 10.1186/1752-153X-4-S1-S3.
Huang R, Southall N, Xia M, Cho M, Jadhav A, Nguyen D Toxicol Sci. 2009; 112(2):385-93.
PMID: 19805409 PMC: 2777082. DOI: 10.1093/toxsci/kfp231.
Fjodorova N, Vracko M, Tusar M, Jezierska A, Novic M, Kuhne R Mol Divers. 2009; 14(3):581-94.
PMID: 19685274 DOI: 10.1007/s11030-009-9190-4.