Tucker, I.G

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  • Tucker, I.G (4)
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Author's Bibliography

Prediction of drug transfer into human milk from theoretically derived descriptors

Agatonović-Kuštrin, Snežana; Tucker, I.G; Zečević, Mira; Živanović, LJ

(Elsevier Science BV, Amsterdam, 2000)

TY  - JOUR
AU  - Agatonović-Kuštrin, Snežana
AU  - Tucker, I.G
AU  - Zečević, Mira
AU  - Živanović, LJ
PY  - 2000
UR  - https://farfar.pharmacy.bg.ac.rs/handle/123456789/232
AB  - The goal of this study was to develop a genetic neural network (GNN) model to predict the degree of drug transfer into breast milk, depending on the molecular structure descriptors, and to compare it with the current model. A supervised network with back-propagation learning rule and multilayer perceptron (MLP) architecture was used to correlate activity with descriptors that were preselected by a genetic algorithm. The set of 60 drug compounds and their experimentally derived MIP values used in this study were gathered from Literature. A total of 61 calculated structural features including constitutional, topological, chemical, geometrical and quantum chemical descriptors were generated for each of the 60 compounds. The MIP Values were used as the ANNs output and calculated molecular descriptors as the inputs. The best GNN model with 26 input descriptors is presented, and the chemical significance of the chosen descriptors is discussed. Strong correlation of predicted versus experimentally derived M/P values (R-2>0.96) for the best ANN model (26-5-5-1) confirms that there is a link between structure and MIP values. The strength of the link is measured by the quality of the external prediction set. With the RMS error of 0.425 and a good visual plot, the external prediction set ensures the quality of the model. Unlike previously reported models, the GNN model described here does not require experimental parameters and could potentially provide useful prediction of M/P ratio of new potential drugs and reduce the need for actual compound synthesis and experimental M/P ratio determination.
PB  - Elsevier Science BV, Amsterdam
T2  - Analytica Chimica Acta
T1  - Prediction of drug transfer into human milk from theoretically derived descriptors
VL  - 418
IS  - 2
SP  - 181
EP  - 195
UR  - https://hdl.handle.net/21.15107/rcub_farfar_232
ER  - 
@article{
author = "Agatonović-Kuštrin, Snežana and Tucker, I.G and Zečević, Mira and Živanović, LJ",
year = "2000",
abstract = "The goal of this study was to develop a genetic neural network (GNN) model to predict the degree of drug transfer into breast milk, depending on the molecular structure descriptors, and to compare it with the current model. A supervised network with back-propagation learning rule and multilayer perceptron (MLP) architecture was used to correlate activity with descriptors that were preselected by a genetic algorithm. The set of 60 drug compounds and their experimentally derived MIP values used in this study were gathered from Literature. A total of 61 calculated structural features including constitutional, topological, chemical, geometrical and quantum chemical descriptors were generated for each of the 60 compounds. The MIP Values were used as the ANNs output and calculated molecular descriptors as the inputs. The best GNN model with 26 input descriptors is presented, and the chemical significance of the chosen descriptors is discussed. Strong correlation of predicted versus experimentally derived M/P values (R-2>0.96) for the best ANN model (26-5-5-1) confirms that there is a link between structure and MIP values. The strength of the link is measured by the quality of the external prediction set. With the RMS error of 0.425 and a good visual plot, the external prediction set ensures the quality of the model. Unlike previously reported models, the GNN model described here does not require experimental parameters and could potentially provide useful prediction of M/P ratio of new potential drugs and reduce the need for actual compound synthesis and experimental M/P ratio determination.",
publisher = "Elsevier Science BV, Amsterdam",
journal = "Analytica Chimica Acta",
title = "Prediction of drug transfer into human milk from theoretically derived descriptors",
volume = "418",
number = "2",
pages = "181-195",
url = "https://hdl.handle.net/21.15107/rcub_farfar_232"
}
Agatonović-Kuštrin, S., Tucker, I.G, Zečević, M.,& Živanović, L.. (2000). Prediction of drug transfer into human milk from theoretically derived descriptors. in Analytica Chimica Acta
Elsevier Science BV, Amsterdam., 418(2), 181-195.
https://hdl.handle.net/21.15107/rcub_farfar_232
Agatonović-Kuštrin S, Tucker I, Zečević M, Živanović L. Prediction of drug transfer into human milk from theoretically derived descriptors. in Analytica Chimica Acta. 2000;418(2):181-195.
https://hdl.handle.net/21.15107/rcub_farfar_232 .
Agatonović-Kuštrin, Snežana, Tucker, I.G, Zečević, Mira, Živanović, LJ, "Prediction of drug transfer into human milk from theoretically derived descriptors" in Analytica Chimica Acta, 418, no. 2 (2000):181-195,
https://hdl.handle.net/21.15107/rcub_farfar_232 .
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56

Structure-retention relationships of diuretics in reversed-phase liquid chromatography

Agatonović-Kuštrin, Snežana; Zečević, Mira; Živanović, Ljiljana; Tucker, I.G

(John Wiley and Sons Ltd, 2000)

TY  - JOUR
AU  - Agatonović-Kuštrin, Snežana
AU  - Zečević, Mira
AU  - Živanović, Ljiljana
AU  - Tucker, I.G
PY  - 2000
UR  - https://farfar.pharmacy.bg.ac.rs/handle/123456789/279
PB  - John Wiley and Sons Ltd
T2  - Biomedical Chromatography
T1  - Structure-retention relationships of diuretics in reversed-phase liquid chromatography
VL  - 14
IS  - 1
SP  - 41
EP  - 43
DO  - 10.1002/(SICI)1099-0801(200002)14:1 41::AID-BMC964>3.0.CO;2-9
ER  - 
@article{
author = "Agatonović-Kuštrin, Snežana and Zečević, Mira and Živanović, Ljiljana and Tucker, I.G",
year = "2000",
publisher = "John Wiley and Sons Ltd",
journal = "Biomedical Chromatography",
title = "Structure-retention relationships of diuretics in reversed-phase liquid chromatography",
volume = "14",
number = "1",
pages = "41-43",
doi = "10.1002/(SICI)1099-0801(200002)14:1 41::AID-BMC964>3.0.CO;2-9"
}
Agatonović-Kuštrin, S., Zečević, M., Živanović, L.,& Tucker, I.G. (2000). Structure-retention relationships of diuretics in reversed-phase liquid chromatography. in Biomedical Chromatography
John Wiley and Sons Ltd., 14(1), 41-43.
https://doi.org/10.1002/(SICI)1099-0801(200002)14:1 41::AID-BMC964>3.0.CO;2-9
Agatonović-Kuštrin S, Zečević M, Živanović L, Tucker I. Structure-retention relationships of diuretics in reversed-phase liquid chromatography. in Biomedical Chromatography. 2000;14(1):41-43.
doi:10.1002/(SICI)1099-0801(200002)14:1 41::AID-BMC964>3.0.CO;2-9 .
Agatonović-Kuštrin, Snežana, Zečević, Mira, Živanović, Ljiljana, Tucker, I.G, "Structure-retention relationships of diuretics in reversed-phase liquid chromatography" in Biomedical Chromatography, 14, no. 1 (2000):41-43,
https://doi.org/10.1002/(SICI)1099-0801(200002)14:1 41::AID-BMC964>3.0.CO;2-9 . .

Application of artificial neural networks in HPLC method development

Agatonović-Kuštrin, Snežana; Zečević, Mira; Živanović, L; Tucker, I.G

(Pergamon-Elsevier Science Ltd, Oxford, 1998)

TY  - JOUR
AU  - Agatonović-Kuštrin, Snežana
AU  - Zečević, Mira
AU  - Živanović, L
AU  - Tucker, I.G
PY  - 1998
UR  - https://farfar.pharmacy.bg.ac.rs/handle/123456789/187
AB  - The use of artificial neural networks (ANNs) for response surface modelling in HPLC method development for amiloride and methychlothiazide separation is reported. The independent input variables were pH and methanol percentage in mobile phase. The outputs were capacity factors. The results were compared with a statistical method (multiple nonlinear regression analysis). Networks were able to predict the experimental responses more accurately than the regression analysis.
PB  - Pergamon-Elsevier Science Ltd, Oxford
T2  - Journal of Pharmaceutical and Biomedical Analysis
T1  - Application of artificial neural networks in HPLC method development
VL  - 17
IS  - 1
SP  - 69
EP  - 76
DO  - 10.1016/S0731-7085(97)00170-2
ER  - 
@article{
author = "Agatonović-Kuštrin, Snežana and Zečević, Mira and Živanović, L and Tucker, I.G",
year = "1998",
abstract = "The use of artificial neural networks (ANNs) for response surface modelling in HPLC method development for amiloride and methychlothiazide separation is reported. The independent input variables were pH and methanol percentage in mobile phase. The outputs were capacity factors. The results were compared with a statistical method (multiple nonlinear regression analysis). Networks were able to predict the experimental responses more accurately than the regression analysis.",
publisher = "Pergamon-Elsevier Science Ltd, Oxford",
journal = "Journal of Pharmaceutical and Biomedical Analysis",
title = "Application of artificial neural networks in HPLC method development",
volume = "17",
number = "1",
pages = "69-76",
doi = "10.1016/S0731-7085(97)00170-2"
}
Agatonović-Kuštrin, S., Zečević, M., Živanović, L.,& Tucker, I.G. (1998). Application of artificial neural networks in HPLC method development. in Journal of Pharmaceutical and Biomedical Analysis
Pergamon-Elsevier Science Ltd, Oxford., 17(1), 69-76.
https://doi.org/10.1016/S0731-7085(97)00170-2
Agatonović-Kuštrin S, Zečević M, Živanović L, Tucker I. Application of artificial neural networks in HPLC method development. in Journal of Pharmaceutical and Biomedical Analysis. 1998;17(1):69-76.
doi:10.1016/S0731-7085(97)00170-2 .
Agatonović-Kuštrin, Snežana, Zečević, Mira, Živanović, L, Tucker, I.G, "Application of artificial neural networks in HPLC method development" in Journal of Pharmaceutical and Biomedical Analysis, 17, no. 1 (1998):69-76,
https://doi.org/10.1016/S0731-7085(97)00170-2 . .
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39

Application of neural networks for response surface modeling in HPLC optimization

Agatonović-Kuštrin, Snežana; Zečević, Mira; Živanović, L; Tucker, I.G

(Elsevier Science BV, Amsterdam, 1998)

TY  - JOUR
AU  - Agatonović-Kuštrin, Snežana
AU  - Zečević, Mira
AU  - Živanović, L
AU  - Tucker, I.G
PY  - 1998
UR  - https://farfar.pharmacy.bg.ac.rs/handle/123456789/183
AB  - The usefulness of artificial neural networks for response surface modeling in HPLC optimization is compared with multiple regression methods. The results show that neural networks offer promising possibilities in HPLC method development. The predicted capacity factors of analytes were better to those obtained with multiple regression method.
PB  - Elsevier Science BV, Amsterdam
T2  - Analytica Chimica Acta
T1  - Application of neural networks for response surface modeling in HPLC optimization
VL  - 364
IS  - 1-3
SP  - 265
EP  - 273
DO  - 10.1016/S0003-2670(98)00121-4
ER  - 
@article{
author = "Agatonović-Kuštrin, Snežana and Zečević, Mira and Živanović, L and Tucker, I.G",
year = "1998",
abstract = "The usefulness of artificial neural networks for response surface modeling in HPLC optimization is compared with multiple regression methods. The results show that neural networks offer promising possibilities in HPLC method development. The predicted capacity factors of analytes were better to those obtained with multiple regression method.",
publisher = "Elsevier Science BV, Amsterdam",
journal = "Analytica Chimica Acta",
title = "Application of neural networks for response surface modeling in HPLC optimization",
volume = "364",
number = "1-3",
pages = "265-273",
doi = "10.1016/S0003-2670(98)00121-4"
}
Agatonović-Kuštrin, S., Zečević, M., Živanović, L.,& Tucker, I.G. (1998). Application of neural networks for response surface modeling in HPLC optimization. in Analytica Chimica Acta
Elsevier Science BV, Amsterdam., 364(1-3), 265-273.
https://doi.org/10.1016/S0003-2670(98)00121-4
Agatonović-Kuštrin S, Zečević M, Živanović L, Tucker I. Application of neural networks for response surface modeling in HPLC optimization. in Analytica Chimica Acta. 1998;364(1-3):265-273.
doi:10.1016/S0003-2670(98)00121-4 .
Agatonović-Kuštrin, Snežana, Zečević, Mira, Živanović, L, Tucker, I.G, "Application of neural networks for response surface modeling in HPLC optimization" in Analytica Chimica Acta, 364, no. 1-3 (1998):265-273,
https://doi.org/10.1016/S0003-2670(98)00121-4 . .
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