IN SILICO MODEL QSPR FOR PREDICTION OF STABILITY CONSTANTS OF METAL-THIOSEMICARBAZONE COMPLEXES

Nguyen Minh Quang, Tran Xuan Mau, Pham Van Tat, Tran Nguyen Minh An, Vo Thanh Cong
2018 HUE UNIVERSITY JOURNAL OF SCIENCE NATURAL SCIENCE  
In the present work, the stability constants logb<sub>11</sub> and the concentration of metal ion and thiosemicarbazone in complex solutions were determined by using in silico models. The 2D, 3D, physicochemical and quantum descriptors of complexes were generated from the molecular geometric structure and semi-empirical quantum calculation PM7 and PM7/sparkle. The quantitative structure and property relationships (QSPRs) were constructed by using the ordinary linear regression (OLR) and
more » ... al neural network (ANN). The best linear model QSPR<sub>OLR</sub> (with k of 6) involved descriptors k0, core-core repulsion, xp5, xch5, valence, and SHHBd. The quality of model QSPR<sub>OLR</sub> had the statistical values: R<sup>2</sup><sub>train</sub> = 0.898, R<sup>2</sup><sub>adj</sub> = 0.889, Q<sup>2</sup><sub>LOO</sub> = 0.846, MSE = 1.136, and F<sub>stat</sub> = 91.348. The neural network model QSPR<sub>ANN</sub> with architecture I(6)-HL(6)-O(1) had the statistical values: R<sup>2</sup><sub>train</sub> = 0.9768, and Q<sup>2</sup><sub>LOO</sub> = 0.8687. The predictability of QSPR models for complexes of the test group turned out to be in good agreement with those from the experimental data in the literature.
doi:10.26459/hueuni-jns.v127i1a.4791 fatcat:hvywl7ph55fmvpgbc3lokau27i