Computational Chemistry

Volume 5, Issue 1 (January 2017)

ISSN Print: 2332-5968   ISSN Online: 2332-5984

Google-based Impact Factor: 0.31  Citations  

Quantum Chemistry Prediction of Molecular Lipophilicity Using Semi-Empirical AM1 and Ab Initio HF/6-311++G Levels

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DOI: 10.4236/cc.2017.51004    1,909 Downloads   3,340 Views  Citations

ABSTRACT

Reliable prediction of lipophilicity in organic compounds involves molecular descriptors determination. In this work, the lipophilicity of a set of twenty-three molecules has been determined using up to eleven quantum various descriptors calculated by means of quantum chemistry methods. According to Quantitative Structure Property Relationship (QSPR) methods, a first set of fourteen molecules was used as training set whereas a second set of nine molecules was used as test set. Calculations made at AM1 and HF/6-311++G theories levels have led to establish a QSPR relation able to predict molecular lipophilicity with over 95% confidence.

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Ouattara, O. and Ziao, N. (2017) Quantum Chemistry Prediction of Molecular Lipophilicity Using Semi-Empirical AM1 and Ab Initio HF/6-311++G Levels. Computational Chemistry, 5, 38-50. doi: 10.4236/cc.2017.51004.

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