We describe a method based on neural networks for predicting contact maps of proteins using as input chemico-physical and evolutionary information. Neural networks are trained on a data set comprising the contact maps of 200 non-homologous proteins of well resolved three-dimensional structures. The systems learn the association rules between the covalent structure of each protein and its correspondent contact map by means of a standard back propagation algorithm. Validation of the predictor on the training set and on 408 proteins of known structure which are not homologous to those contained in the training set indicate that this method scores higher than statistical approaches previously described and based on correlated mutations and sequence information.

A neural network based predictor of residue contacts in proteins

Fariselli, Piero;
1999

Abstract

We describe a method based on neural networks for predicting contact maps of proteins using as input chemico-physical and evolutionary information. Neural networks are trained on a data set comprising the contact maps of 200 non-homologous proteins of well resolved three-dimensional structures. The systems learn the association rules between the covalent structure of each protein and its correspondent contact map by means of a standard back propagation algorithm. Validation of the predictor on the training set and on 408 proteins of known structure which are not homologous to those contained in the training set indicate that this method scores higher than statistical approaches previously described and based on correlated mutations and sequence information.
1999
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3184025
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