Background and purpose of the study. Multimodal distribution of descriptors makes it more difficult to fit a single global model to model the entire data set in quantitative structure activity relationship (QSAR) studies. Methods. The linear (Multiple linear regression; MLR), non-linear (Artificial neural network; ANN), and an approach based on "Extended Classifier System in Function approximation" (XCSF) were applied herein to model the biological activity of 658 caspase-3 inhibitors. Results: Various kinds of molecular descriptors were calculated to represent the molecular structures of the compounds. The original data set was partitioned into the training and test sets by the K-means classification method. Prediction error on the test data set indicated that the XCSF as a local model estimates caspase-3 inhibition activity, better than the global models such as MLR and ANN. The atom-centered fragment type CR§ssub§2§esub§X§ssub§2§ esub§, electronegativity, polarizability, and atomic radius and also the lipophilicity of the molecule, were the main independent factors contributing to the caspase-3 inhibition activity. Conclusions: The results of this study may be exploited for further design of novel caspase-3 inhibitors. © 2012 Firoozpour et al.; licensee BioMed Central Ltd.
CITATION STYLE
Firoozpour, L., Sadatnezhad, K., Dehghani, S., Pourbasheer, E., Foroumadi, A., Shafiee, A., & Amanlou, M. (2012). An efficient piecewise linear model for predicting activity of caspase-3 inhibitors. DARU, Journal of Pharmaceutical Sciences, 20(1). https://doi.org/10.1186/2008-2231-20-31
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