6533b870fe1ef96bd12d0636

RESEARCH PRODUCT

Drugs and Nondrugs:  An Effective Discrimination with Topological Methods and Artificial Neural Networks

Maria Jose Castro-bledaMa. Teresa Salabert‐salvadorWladimiro Diaz-villanuevaMiguel Murcia-solerFrancisco J. Garcia‐marchFacundo Perez‐gimenez

subject

PharmacologyArtificial neural networkChemistryComputer scienceValue (computer science)Biological activityGeneral MedicineGeneral ChemistryInterval (mathematics)Function (mathematics)TopologyPlot (graphics)Computer Science ApplicationsSet (abstract data type)Structure-Activity RelationshipPharmaceutical PreparationsComputational Theory and MathematicsDiscriminative modelData DisplayNeural Networks ComputerInformation Systems

description

A set of topological and structural descriptors has been used to discriminate general pharmacological activity. To that end, we selected a group of molecules with proven pharmacological activity including different therapeutic categories, and another molecule group without any activity. As a method for pharmacological activity discrimination, an artificial neural network was used, dividing molecules into active and inactive, to train the network and externally validate it. The following plot frequency distribution diagrams were used: a function of the number of drugs within a value interval, and the output value of the neural network versus these values. Pharmacological distribution diagrams (PDD) were used as a visualizing technique for the identification of drug and nondrug molecules. The results confirmed the discriminative capacity of the topological descriptors proposed.

https://doi.org/10.1021/ci0302862