A hybrid expert system prototype using artificial neural networks (ANN) and classical rules has been developed for predicting toxicology of compounds. Modularity was a must for the architecture of the system. The study of chemicals was approached by establishing classes. When appropriate descriptors are calculated for the molecule, the ANN classifier assigns the chemical class to the compound. Then the toxic activity is quantitatively predicted of by one of the trained ANN in the system. After that, a qualitative prediction (active/non-active) is made by a rule-based system, calling only the correct knowledge base (KB) for the assigned class. This last step enabled us to give an explanation of the results. All the rules in the KBs have been obtained with automated learning techniques

Gini, G., Testaguzza, V., Benfenati, E., Todeschini, R. (1998). Hybrid toxicology expert system: Architecture and implementation of a multi-domain hybrid expert system for toxicology. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 43(1-2), 135-145 [10.1016/S0169-7439(98)00125-7].

Hybrid toxicology expert system: Architecture and implementation of a multi-domain hybrid expert system for toxicology

TODESCHINI, ROBERTO
1998

Abstract

A hybrid expert system prototype using artificial neural networks (ANN) and classical rules has been developed for predicting toxicology of compounds. Modularity was a must for the architecture of the system. The study of chemicals was approached by establishing classes. When appropriate descriptors are calculated for the molecule, the ANN classifier assigns the chemical class to the compound. Then the toxic activity is quantitatively predicted of by one of the trained ANN in the system. After that, a qualitative prediction (active/non-active) is made by a rule-based system, calling only the correct knowledge base (KB) for the assigned class. This last step enabled us to give an explanation of the results. All the rules in the KBs have been obtained with automated learning techniques
Articolo in rivista - Articolo scientifico
Artificial neural networks, Automated role extraction, Expert systems, Feature selection, QSAR models, Toxicology, WHIM descriptors
English
1998
43
1-2
135
145
none
Gini, G., Testaguzza, V., Benfenati, E., Todeschini, R. (1998). Hybrid toxicology expert system: Architecture and implementation of a multi-domain hybrid expert system for toxicology. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 43(1-2), 135-145 [10.1016/S0169-7439(98)00125-7].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/32593
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