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Structure-response relationship in electrospray ionization-mass spectrometry of sartans by artificial neural networks

Authorized Users Only
2016
Authors
Golubović, Jelena
Birkemeyer, Claudia
Protić, Ana
Otašević, Biljana
Zečević, Mira
Article (Published version)
Metadata
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Abstract
Quantitative structure-property relationship (QSPR) methods are based on the hypothesis that changes in the molecular structure are reflected in changes in the observed property of the molecule. Artificial neural network is a technique of data analysis, which sets out to emulate the human brain's way of working. For the first time a quantitative structure-response relationship in electrospray ionization mass spectrometry (ESI-MS) by means of artificial neural networks (ANN) on the group of angiotensin II receptor antagonists - sartans has been established. The investigated descriptors correspond to different properties of the analytes: polarity (logP), ionizability (pKa), surface area (solvent excluded volume) and number of proton acceptors. The influence of the instrumental parameters: methanol content in mobile phase, mobile phase pH and flow rate was also examined. Best performance showed a multilayer perceptron network with the architecture 6-3-3-1, trained with backpropagation alg...orithm. It showed high prediction ability on the previously unseen (test) data set with a coefficient of determination of 0.994. High prediction ability of the model would enable prediction of ESI-MS responsiveness under different conditions. This is particularly important in the method development phase. Also, prediction of responsiveness can be important in case of gradient-elution LC-MS and LC-MS/MS methods in which instrumental conditions are varied during time. Polarity, chargeability and surface area all appeared to be crucial for electrospray ionization whereby signal intensity appeared to be the result of a simultaneous influence of the molecular descriptors and their interactions. Percentage of organic phase in the mobile phase showed a positive, while flow rate showed a negative impact on signal intensity.

Source:
Journal of Chromatography A, 2016, 1438, 123-132
Publisher:
  • Elsevier Science BV, Amsterdam
Funding / projects:
  • Synthesis, Quantitative Structure and Activity Relationship, Physico-Chemical Characterisation and Analysis of Pharmacologically Active Substances (RS-172033)
  • German Academic Exchange Service (DAAD)

DOI: 10.1016/j.chroma.2016.02.021

ISSN: 0021-9673

PubMed: 26884139

WoS: 000371941500013

Scopus: 2-s2.0-84959177424
[ Google Scholar ]
23
21
URI
https://farfar.pharmacy.bg.ac.rs/handle/123456789/2541
Collections
  • Radovi istraživača / Researchers’ publications
Institution/Community
Pharmacy
TY  - JOUR
AU  - Golubović, Jelena
AU  - Birkemeyer, Claudia
AU  - Protić, Ana
AU  - Otašević, Biljana
AU  - Zečević, Mira
PY  - 2016
UR  - https://farfar.pharmacy.bg.ac.rs/handle/123456789/2541
AB  - Quantitative structure-property relationship (QSPR) methods are based on the hypothesis that changes in the molecular structure are reflected in changes in the observed property of the molecule. Artificial neural network is a technique of data analysis, which sets out to emulate the human brain's way of working. For the first time a quantitative structure-response relationship in electrospray ionization mass spectrometry (ESI-MS) by means of artificial neural networks (ANN) on the group of angiotensin II receptor antagonists - sartans has been established. The investigated descriptors correspond to different properties of the analytes: polarity (logP), ionizability (pKa), surface area (solvent excluded volume) and number of proton acceptors. The influence of the instrumental parameters: methanol content in mobile phase, mobile phase pH and flow rate was also examined. Best performance showed a multilayer perceptron network with the architecture 6-3-3-1, trained with backpropagation algorithm. It showed high prediction ability on the previously unseen (test) data set with a coefficient of determination of 0.994. High prediction ability of the model would enable prediction of ESI-MS responsiveness under different conditions. This is particularly important in the method development phase. Also, prediction of responsiveness can be important in case of gradient-elution LC-MS and LC-MS/MS methods in which instrumental conditions are varied during time. Polarity, chargeability and surface area all appeared to be crucial for electrospray ionization whereby signal intensity appeared to be the result of a simultaneous influence of the molecular descriptors and their interactions. Percentage of organic phase in the mobile phase showed a positive, while flow rate showed a negative impact on signal intensity.
PB  - Elsevier Science BV, Amsterdam
T2  - Journal of Chromatography A
T1  - Structure-response relationship in electrospray ionization-mass spectrometry of sartans by artificial neural networks
VL  - 1438
SP  - 123
EP  - 132
DO  - 10.1016/j.chroma.2016.02.021
ER  - 
@article{
author = "Golubović, Jelena and Birkemeyer, Claudia and Protić, Ana and Otašević, Biljana and Zečević, Mira",
year = "2016",
abstract = "Quantitative structure-property relationship (QSPR) methods are based on the hypothesis that changes in the molecular structure are reflected in changes in the observed property of the molecule. Artificial neural network is a technique of data analysis, which sets out to emulate the human brain's way of working. For the first time a quantitative structure-response relationship in electrospray ionization mass spectrometry (ESI-MS) by means of artificial neural networks (ANN) on the group of angiotensin II receptor antagonists - sartans has been established. The investigated descriptors correspond to different properties of the analytes: polarity (logP), ionizability (pKa), surface area (solvent excluded volume) and number of proton acceptors. The influence of the instrumental parameters: methanol content in mobile phase, mobile phase pH and flow rate was also examined. Best performance showed a multilayer perceptron network with the architecture 6-3-3-1, trained with backpropagation algorithm. It showed high prediction ability on the previously unseen (test) data set with a coefficient of determination of 0.994. High prediction ability of the model would enable prediction of ESI-MS responsiveness under different conditions. This is particularly important in the method development phase. Also, prediction of responsiveness can be important in case of gradient-elution LC-MS and LC-MS/MS methods in which instrumental conditions are varied during time. Polarity, chargeability and surface area all appeared to be crucial for electrospray ionization whereby signal intensity appeared to be the result of a simultaneous influence of the molecular descriptors and their interactions. Percentage of organic phase in the mobile phase showed a positive, while flow rate showed a negative impact on signal intensity.",
publisher = "Elsevier Science BV, Amsterdam",
journal = "Journal of Chromatography A",
title = "Structure-response relationship in electrospray ionization-mass spectrometry of sartans by artificial neural networks",
volume = "1438",
pages = "123-132",
doi = "10.1016/j.chroma.2016.02.021"
}
Golubović, J., Birkemeyer, C., Protić, A., Otašević, B.,& Zečević, M.. (2016). Structure-response relationship in electrospray ionization-mass spectrometry of sartans by artificial neural networks. in Journal of Chromatography A
Elsevier Science BV, Amsterdam., 1438, 123-132.
https://doi.org/10.1016/j.chroma.2016.02.021
Golubović J, Birkemeyer C, Protić A, Otašević B, Zečević M. Structure-response relationship in electrospray ionization-mass spectrometry of sartans by artificial neural networks. in Journal of Chromatography A. 2016;1438:123-132.
doi:10.1016/j.chroma.2016.02.021 .
Golubović, Jelena, Birkemeyer, Claudia, Protić, Ana, Otašević, Biljana, Zečević, Mira, "Structure-response relationship in electrospray ionization-mass spectrometry of sartans by artificial neural networks" in Journal of Chromatography A, 1438 (2016):123-132,
https://doi.org/10.1016/j.chroma.2016.02.021 . .

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