Javascript must be enabled to continue!
APPLICATION OF QSPR APPROACH FOR DEVELOPMENT OF NOVEL METAL-THIOSEMICARBAZONE COMPLEXES
View through CrossRef
Twenty novel metal-thiosemicarbazone complexes (ML2) were calculated the stability constants (log12) based on the quantitative structure-property relationship (QSPR) models. The QSPR models were developed using multivariate linear regression (MLR), support vector regression (SVR), and artificial neural network (ANN) methods. Descriptors of the models were calculated from the PM7 and PM7/sparkle semi-empirical quantum mechanisms. The quality of the QSPR models was tightly controlled by the statistical values of OECD instructions and Tropsha’s standards. As a result, the best QSPRMLR model includes five variables: Dipole, xv2, xch5, SHBa, and 5C, with statistical values such as R2train = 0.922, Q2LOO = 0.861, and RMSE = 0.759. Besides, the best QSPRSVR model consists of capacity C = 10.0, gamma = 0.10, and epsilon = 0.1 with the number of support vectors equal to 42 and suitable regression parameters: R2 = 0.925, and RMSECV = 0.536. The QSPRANN model with network architecture I(5)-HL(6)-O(1) and exponential transfer function was trained from descriptors of the MLR model and showed impressive results as R2train = 0.986; Q2test = 0.876 and Q2validation = 0.921. In addition, this study used an external validation (EV) dataset of 25 log12 experimental values to build complete QSPR models with Q2EV-MLR, Q2EV-SVR, and Q2EVANN values of 0.834, 0.865, and 0.881, respectively. The positive results of the models can be used to find other new thiosemicarbazone and their complexes for applications in chemical, analytical, and environmental fields.
Ho Chi Minh City University of Industry and Trade
Title: APPLICATION OF QSPR APPROACH FOR DEVELOPMENT OF NOVEL METAL-THIOSEMICARBAZONE COMPLEXES
Description:
Twenty novel metal-thiosemicarbazone complexes (ML2) were calculated the stability constants (log12) based on the quantitative structure-property relationship (QSPR) models.
The QSPR models were developed using multivariate linear regression (MLR), support vector regression (SVR), and artificial neural network (ANN) methods.
Descriptors of the models were calculated from the PM7 and PM7/sparkle semi-empirical quantum mechanisms.
The quality of the QSPR models was tightly controlled by the statistical values of OECD instructions and Tropsha’s standards.
As a result, the best QSPRMLR model includes five variables: Dipole, xv2, xch5, SHBa, and 5C, with statistical values such as R2train = 0.
922, Q2LOO = 0.
861, and RMSE = 0.
759.
Besides, the best QSPRSVR model consists of capacity C = 10.
0, gamma = 0.
10, and epsilon = 0.
1 with the number of support vectors equal to 42 and suitable regression parameters: R2 = 0.
925, and RMSECV = 0.
536.
The QSPRANN model with network architecture I(5)-HL(6)-O(1) and exponential transfer function was trained from descriptors of the MLR model and showed impressive results as R2train = 0.
986; Q2test = 0.
876 and Q2validation = 0.
921.
In addition, this study used an external validation (EV) dataset of 25 log12 experimental values to build complete QSPR models with Q2EV-MLR, Q2EV-SVR, and Q2EVANN values of 0.
834, 0.
865, and 0.
881, respectively.
The positive results of the models can be used to find other new thiosemicarbazone and their complexes for applications in chemical, analytical, and environmental fields.
Related Results
Development of new metal-thiosemicarbazone complexes using visual screening methods and in silico models
Development of new metal-thiosemicarbazone complexes using visual screening methods and in silico models
The stability constants (logb11) of forty-two new metal-thiosemicarbazone complexes were predicted based on the results of the quantitative structure-property relationship (QSPR). ...
QSPR MODELING OF THE DIELECTRIC CONSTANT BASED ON MONTE CARLO OPTIMIZATION METHOD
QSPR MODELING OF THE DIELECTRIC CONSTANT BASED ON MONTE CARLO OPTIMIZATION METHOD
Monte Carlo Optimization method has been used to develop QSPR models for the prediction of the dielectric constant of organic compounds. The QSPR models were developed from the dat...
Ionic complexes of biodegradable polyelectrolytes
Ionic complexes of biodegradable polyelectrolytes
Biopolymers are polymers produced by living organisms. A more broad classification would embrace also those polymers synthesized from renewable sources which are able to display bi...
Antibacterial, DFT and molecular docking studies of Rh(III) complexes of Coumarinyl‐Thiosemicarbazone nuclei based ligands
Antibacterial, DFT and molecular docking studies of Rh(III) complexes of Coumarinyl‐Thiosemicarbazone nuclei based ligands
Coumarinyl thiosemicarbazone derivatives (1E)‐1‐(1‐(2‐oxo‐2H‐chromen‐3‐yl)ethylidene)thiosemicarbazide (OCET), (1E)‐1‐(1‐(6‐bromo‐2‐ oxo‐2H‐chromen‐3‐yl)ethylidene)thiosemicarbazid...
Collapses and persistent homology
Collapses and persistent homology
Effondrements et homologie persistante
Dans cette thèse, nous introduisons deux nouvelles approches pour calculer l'homologie persistante(HP) d'une séquence de comp...
Synthesis, characterization and host-guest complexes of supramolecular assemblies based on calixarenes and cucurbiturils
Synthesis, characterization and host-guest complexes of supramolecular assemblies based on calixarenes and cucurbiturils
The field of supramolecular chemistry has grown large and wide in both deepness of understanding, range of topics covered and scope and applications. Supramolecular self-assemblies...
Sulfonamide derived Schiff base Mn (II), Co (II), and Ni (II) complexes: Crystal structures, density functional theory and Hirshfeld surface analysis
Sulfonamide derived Schiff base Mn (II), Co (II), and Ni (II) complexes: Crystal structures, density functional theory and Hirshfeld surface analysis
The three transition metal complexes of the ligand named as 2,4‐dibromo‐6‐{[2‐(1,1‐dioxo‐1H‐benzoisothiazole‐3‐yl‐amino)‐ethylimino]‐methyl}‐phenol 3 were synthesized with divalent...
Synthesis, Characterization, and Antibacterial Study of Cadmium (II) Thiosemicarbazone Complexes
Synthesis, Characterization, and Antibacterial Study of Cadmium (II) Thiosemicarbazone Complexes
The reaction of CdI2with thiosemicarbazone-based ligands such as (benztsczH)2 and (benzoptsczH)2resulted inCdI2(benztsczH)2 and CdI2(benzoptsczH)2 complexes where benztsczH and ben...

