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Monitoring of fosinopril sodium impurities by liquid chromatography-mass spectrometry including the neural networks in method evaluation

Samo za registrovane korisnike
2008
Autori
Jančić, Biljana
Medenica, Mirjana
Ivanović, D.
Janković, Saša
Malenović, Anđelija
Članak u časopisu (Objavljena verzija)
Metapodaci
Prikaz svih podataka o dokumentu
Apstrakt
In this paper, the mass spectrometry (MS) detection has been applied for screening of fosinopril sodium impurities which arise during forced stress study. Before MS analysis, liquid chromatographic method with suitable mobile phase composition was developed. The separation was done on SunFire 100 turn x 4.6 mm 3.5 mu m particle size column. The mobile phases which consisted of methanol-ammonium acetate buffer-acetic acid, in different ratios, were used in a preliminary study. Flow rate was 0.3 mL min(-1). Under these conditions, percent of methanol, concentration of ammonium acetate buffer and acetic acid content were tested simultaneously applying central composite design (CCD) and artificial neural network (ANN). The combinations of experimental design (ED) and ANN present powerful technique in method optimization. Input and output variables from CCD were used for network training, verification and testing. Multiple layer perceptron (MLP) with back propagation (BP) algorithm was chos...en for network training. When the optimal neural topology was selected, network was trained by adjusting strength of connections between neurons in order to adapt the outputs of whole network to be closer to the desired outputs, or to minimize the sum of the squared errors. From the method optimization the following mobile phase composition was selected as appropriate: methanol-10 mM ammonium acetate buffer-acidic acid (80:19.5:0.5 v/v/v). This mobile phase was used as inlet for MS. According to molecular structure and literature data, electrospray positive ion mode was applied for analysis of fosinopril sodium and its impurities. The proposed method could be used for screening of fosinopril sodium impurities in bulk and pharmaceuticals, as well as for tracking the degradation under stress conditions.

Ključne reči:
fosinopril sodium / impurity profiling / artificial neural networks / MS detection / forced degradation studies
Izvor:
Journal of Chromatography A, 2008, 1189, 1-2, 366-373
Izdavač:
  • Elsevier Science BV, Amsterdam
Finansiranje / projekti:
  • Formulisanje i Karakterizacija separacionih sistema za modelovanje retencionog ponašanja lekovitih supstancija uz hemometrijsku evaluaciju (RS-142077)

DOI: 10.1016/j.chroma.2007.11.076

ISSN: 0021-9673

PubMed: 18154978

WoS: 000255698000036

Scopus: 2-s2.0-41949101118
[ Google Scholar ]
16
15
URI
https://farfar.pharmacy.bg.ac.rs/handle/123456789/1068
Kolekcije
  • Radovi istraživača / Researchers’ publications
Institucija/grupa
Pharmacy
TY  - JOUR
AU  - Jančić, Biljana
AU  - Medenica, Mirjana
AU  - Ivanović, D.
AU  - Janković, Saša
AU  - Malenović, Anđelija
PY  - 2008
UR  - https://farfar.pharmacy.bg.ac.rs/handle/123456789/1068
AB  - In this paper, the mass spectrometry (MS) detection has been applied for screening of fosinopril sodium impurities which arise during forced stress study. Before MS analysis, liquid chromatographic method with suitable mobile phase composition was developed. The separation was done on SunFire 100 turn x 4.6 mm 3.5 mu m particle size column. The mobile phases which consisted of methanol-ammonium acetate buffer-acetic acid, in different ratios, were used in a preliminary study. Flow rate was 0.3 mL min(-1). Under these conditions, percent of methanol, concentration of ammonium acetate buffer and acetic acid content were tested simultaneously applying central composite design (CCD) and artificial neural network (ANN). The combinations of experimental design (ED) and ANN present powerful technique in method optimization. Input and output variables from CCD were used for network training, verification and testing. Multiple layer perceptron (MLP) with back propagation (BP) algorithm was chosen for network training. When the optimal neural topology was selected, network was trained by adjusting strength of connections between neurons in order to adapt the outputs of whole network to be closer to the desired outputs, or to minimize the sum of the squared errors. From the method optimization the following mobile phase composition was selected as appropriate: methanol-10 mM ammonium acetate buffer-acidic acid (80:19.5:0.5 v/v/v). This mobile phase was used as inlet for MS. According to molecular structure and literature data, electrospray positive ion mode was applied for analysis of fosinopril sodium and its impurities. The proposed method could be used for screening of fosinopril sodium impurities in bulk and pharmaceuticals, as well as for tracking the degradation under stress conditions.
PB  - Elsevier Science BV, Amsterdam
T2  - Journal of Chromatography A
T1  - Monitoring of fosinopril sodium impurities by liquid chromatography-mass spectrometry including the neural networks in method evaluation
VL  - 1189
IS  - 1-2
SP  - 366
EP  - 373
DO  - 10.1016/j.chroma.2007.11.076
ER  - 
@article{
author = "Jančić, Biljana and Medenica, Mirjana and Ivanović, D. and Janković, Saša and Malenović, Anđelija",
year = "2008",
abstract = "In this paper, the mass spectrometry (MS) detection has been applied for screening of fosinopril sodium impurities which arise during forced stress study. Before MS analysis, liquid chromatographic method with suitable mobile phase composition was developed. The separation was done on SunFire 100 turn x 4.6 mm 3.5 mu m particle size column. The mobile phases which consisted of methanol-ammonium acetate buffer-acetic acid, in different ratios, were used in a preliminary study. Flow rate was 0.3 mL min(-1). Under these conditions, percent of methanol, concentration of ammonium acetate buffer and acetic acid content were tested simultaneously applying central composite design (CCD) and artificial neural network (ANN). The combinations of experimental design (ED) and ANN present powerful technique in method optimization. Input and output variables from CCD were used for network training, verification and testing. Multiple layer perceptron (MLP) with back propagation (BP) algorithm was chosen for network training. When the optimal neural topology was selected, network was trained by adjusting strength of connections between neurons in order to adapt the outputs of whole network to be closer to the desired outputs, or to minimize the sum of the squared errors. From the method optimization the following mobile phase composition was selected as appropriate: methanol-10 mM ammonium acetate buffer-acidic acid (80:19.5:0.5 v/v/v). This mobile phase was used as inlet for MS. According to molecular structure and literature data, electrospray positive ion mode was applied for analysis of fosinopril sodium and its impurities. The proposed method could be used for screening of fosinopril sodium impurities in bulk and pharmaceuticals, as well as for tracking the degradation under stress conditions.",
publisher = "Elsevier Science BV, Amsterdam",
journal = "Journal of Chromatography A",
title = "Monitoring of fosinopril sodium impurities by liquid chromatography-mass spectrometry including the neural networks in method evaluation",
volume = "1189",
number = "1-2",
pages = "366-373",
doi = "10.1016/j.chroma.2007.11.076"
}
Jančić, B., Medenica, M., Ivanović, D., Janković, S.,& Malenović, A.. (2008). Monitoring of fosinopril sodium impurities by liquid chromatography-mass spectrometry including the neural networks in method evaluation. in Journal of Chromatography A
Elsevier Science BV, Amsterdam., 1189(1-2), 366-373.
https://doi.org/10.1016/j.chroma.2007.11.076
Jančić B, Medenica M, Ivanović D, Janković S, Malenović A. Monitoring of fosinopril sodium impurities by liquid chromatography-mass spectrometry including the neural networks in method evaluation. in Journal of Chromatography A. 2008;1189(1-2):366-373.
doi:10.1016/j.chroma.2007.11.076 .
Jančić, Biljana, Medenica, Mirjana, Ivanović, D., Janković, Saša, Malenović, Anđelija, "Monitoring of fosinopril sodium impurities by liquid chromatography-mass spectrometry including the neural networks in method evaluation" in Journal of Chromatography A, 1189, no. 1-2 (2008):366-373,
https://doi.org/10.1016/j.chroma.2007.11.076 . .

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