Contribution To The Molecular Lipophilicity Scale By Qspr Models Of Lipophilicity Prediction

Abstract

This work deals with the prediction of the lipophilicity of forty-four (44)aromatic substances whoseexperimental values of lipophilicity are non-existent to date. Using QSPR models of lipophilicpredictionbased on empirical and quantum descriptorsat the AM1 level, the lipophilicity of these 44 molecules has been predicted by quantum chemistrymethods, thuscontributing to the increase in scale of molecularlipophilicity. The reliability of the prediction of lipophilicity by model 1 at the level of the empiricaldescriptorsis 97.84%. The prediction by the model 2 at the level of the quantum descriptors of the AM1 levelis 95.60%.

Authors and Affiliations

Ouanlo Ouattara, Mamadou Guy-Richard Kone, Thomas Sopi Affi, Kafoumba Bamba, Yafigui Traore, Nahossé Ziao

Keywords

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  • EP ID EP394494
  • DOI 10.9790/9622-0807015561.
  • Views 128
  • Downloads 0

How To Cite

Ouanlo Ouattara, Mamadou Guy-Richard Kone, Thomas Sopi Affi, Kafoumba Bamba, Yafigui Traore, Nahossé Ziao (2018). Contribution To The Molecular Lipophilicity Scale By Qspr Models Of Lipophilicity Prediction. International Journal of engineering Research and Applications, 8(7), 55-61. https://europub.co.uk./articles/-A-394494