Fuzzy rough set as feature selection for QSAR modeling of 2,4,5-trisubstituted imidazoles, nontoxic modulators of P-glycoprotein mediated multidrug resistance

  • Vander Heyden, Yvan
  • Dejaegher, Bieke
  • Jensen, Richard
  • Funar-Timofei, Simona
  • Goodarzi, Mohammad
Publication date
July 2011

Abstract

In cancer chemotherapy, multidrug resistance (MDR) is a major clinical problem which occurs by an influential mechanism and which leads to the failure of cancer chemotherapy and/or a relapse of the cancer. In this study, Fuzzy Rough Set and Genetic Algorithms were compared as variable selection techniques, while both linear and nonlinear 2D QSAR models were constructed for predicting the multidrug resistance modulating potency (expressed as ED50 values) of 2,4,5-trisubstituted imidazoles, as potent and nontoxic modulators of P-glycoprotein mediated multidrug resistance. The variables to select are the proper molecular descriptors. The (linear) Multiple Linear Regression (MLR) and the nonlinear Radial Basis Function Neural Network (RBFNN) te...

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