Synchronous spectrofluorimetry and chemometric modeling: A synergistic approach for analyzing simeprevir and daclatasvir, with application to pharmacokinetics evaluation

[Display omitted] •Merge synchronous spectrofluorimetry with chemometrics for precise for simeprevir and daclatasvir determination.•Chemometric models include PLS optimized with firefly algorithms for feature selection.•The models' accuracy and precision were confirmed by validation set for qua...

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Veröffentlicht in:Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy Molecular and biomolecular spectroscopy, 2024-07, Vol.315, p.124245, Article 124245
Hauptverfasser: Serag, Ahmed, Alnemari, Reem M., Abduljabbar, Maram H., Alosaimi, Manal E., Almalki, Atiah H.
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Sprache:eng
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Zusammenfassung:[Display omitted] •Merge synchronous spectrofluorimetry with chemometrics for precise for simeprevir and daclatasvir determination.•Chemometric models include PLS optimized with firefly algorithms for feature selection.•The models' accuracy and precision were confirmed by validation set for quantifying these antivirals in complex samples.•Lay groundwork for further research and clinical use in pharmacokinetics monitoring. Simeprevir and daclatasvir represent a cornerstone in the management of Hepatitis C Virus infection, a global health concern that affects millions of people worldwide. In this study, we propose a synergistic approach combining synchronous spectrofluorimetry and chemometric modeling i.e. Partial Least Squares (PLS-1) for the analysis of simeprevir and daclatasvir in different matrices. Moreover, the study employs firefly algorithms to further optimize the chemometric models via selecting the most informative features thus improving the accuracy and robustness of the calibration models. The firefly algorithm was able to reduce the number of selected wavelengths to 47–44% for simeprevir and daclatasvir, respectively offering a fast and sensitive technique for the determination of simeprevir and daclatasvir. Validation results underscore the models' effectiveness, as evidenced by recovery rates close to 100% with relative root mean square error of prediction (RRMSEP) of 2.253 and 2.1381 for simeprevir and daclatasvir, respectively. Moreover, the proposed models have been applied to determine the pharmacokinetics of simeprevir and daclatasvir, providing valuable insights into their distribution and elimination patterns. Overall, the study demonstrates the effectiveness of synchronous spectrofluorimetry coupled with multivariate calibration optimized by firefly algorithms in accurately determining and quantifying simeprevir and daclatasvir in HCV antiviral treatment, offering potential applications in pharmaceutical formulation analysis and pharmacokinetic studies for these drugs.
ISSN:1386-1425
1873-3557
DOI:10.1016/j.saa.2024.124245