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Mohammad Hossein Fatemi

Mohammad Hossein Fatemi

Academic rank: Professor
ORCID:
Education: PhD.
ScopusId:
Faculty: Faculty of Chemistry
Address: http://rms.umz.ac.ir/~mhfatemi/en/
Phone: 01135342931

Research

Title
Prediction of micelle–water partition coefficient from the theoretical derived molecular descriptors
Type
JournalPaper
Keywords
Micelle–water partition coefficient; Multiple linear regressions; Artificial neural network; Quantitative structure–property relationship; Theoretical molecular descriptor
Year
2007
Journal Journal of Colloid and Interface Science
DOI
Researchers Mohammad Hossein Fatemi ، Hanieh Karimiyan

Abstract

he micelle–water partition coefficients of 81 organic compounds in SDS solution were predicted by quantitative structure–property relationship method. The multiple linear regression (MLR) and artificial neural network (ANN) techniques were used to build linear and nonlinear model, respectively. In this work the proposed QSPR models, both by MLR and ANN, contain identical descriptors which are zero order of Kier–Hall index, count of Hydrogen donors site [Zefirovs PC], average valency of a C atom, atomic charge weighted by partial positively charged surface area and minimum one electron reaction index for a C atom. The MLR model gave a root mean square (RMS) of 0.166, 0.25, and 0.289 for training, prediction and test sets, respectively, whereas ANN gave an RMS error of 0.06, 0.21, and 0.20 for training, prediction, and test sets, respectively. Comparison the results of these two methods reveals that those obtained by the ANN model are much better.