AI Article Synopsis

  • An artificial neural network was used to analyze the anti-invasive activity of 139 compounds, focusing on molecular structure descriptors calculated with CODESSA Pro.
  • The QSAR model achieved a classification accuracy of 71% for the training set and 70% for the validation set, demonstrating good predictive capability.
  • This model can aid in virtually screening large databases of anticancer drugs to predict anti-invasive activity in new compounds.

Article Abstract

The anti-invasive activity of 139 compounds was correlated by an artificial neural network approach with descriptors calculated solely from the molecular structures using CODESSA Pro. The best multilinear regression method implemented in CODESSA Pro was used for a pre-selection of descriptors. The resulting nonlinear (artificial neural network) QSAR model predicted the exact class for 66 (71%) of the training set of 93 compounds and 32 (70%) of validation set of 46 compounds. The standard deviation ratios for the both training and validation sets are less than unity, indicating a satisfactory predictive capability for classification of the nature of the anti-invasive activity data. The proposed model can be used for the prediction of the anti-invasive activity of novel classes of compounds enabling a virtual screening of large databases of anticancer drugs.

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Source
http://dx.doi.org/10.1016/j.bmc.2006.06.036DOI Listing

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