A Novel Approach for Therapeutic Drug Monitoring of Valproic Acid Using FT-IR Spectroscopy and Nonlinear Support Vector Regression

Author:

El Orche Aimen1ORCID,Cheikh Amine2ORCID,Johnson Joel B3ORCID,Elhamdaoui Omar4ORCID,Jawhari Samira2,El Abbes Faouzi Moulay5ORCID,Cherrah Yahia2ORCID,Mbarki Mohamed1,Bouatia Mustapha4ORCID

Affiliation:

1. University of Sultan Moulay Slimane, Faculty of Sciences and Techniques , Beni Mellal 23000, Morocco

2. Abulcasis University, Department of Pharmacy , Rabat 10000, Morocco

3. Central Queensland University, School of Health, Medical and Applied Sciences , Bruce Hwy , North Rockhampton, Queensland 4701, Australia

4. Mohammed V University, Laboratory of Analytical Chemistry, Faculty of Medicine and Pharmacy , Rabat 10100, Morocco

5. Mohammed University V, Laboratory of Pharmacology and Toxicology, Biopharmaceutical and Toxicological Analysis Research Team, Faculty of Medicine and Pharmacy , Rabat 10100, Morocco

Abstract

Abstract Background Recent technological progress has bolstered efforts to bring personalized medicine from theory into clinical practice. However, progress in areas such as therapeutic drug monitoring (TDM) has remained somewhat stagnant. In drugs with well-known dose-response relationships, TDM can enhance patient outcomes and reduce health care costs. Traditional monitoring methods such as chromatography-based or immunoassay techniques are limited by their higher costs and slow turnaround times, making them unsuitable for real-time or onsite analysis. Objective In this work, we propose the use of a fast, direct, and simple approach using Fourier transform infrared spectroscopy (FT-IR) combined with chemometric techniques for the therapeutic monitoring of valproic acid (VPA). Method In this context, a database of FT-IR spectra was constructed from human plasma samples containing various concentrations of VPA; these samples were characterized by the reference method (immunoassay technique) to determine the VPA contents. The FT-IR spectra were processed by two chemometric regression methods: partial least-squares regression (PLS) and support vector regression (SVR). Results The results provide good evidence for the effectiveness of the combination of FT-IR spectroscopy and SVR modeling for estimating VPA in human plasma. SVR models showed better predictive abilities than PLS models in terms of root-mean-square error of calibration and prediction RMSEC, RMSEP, R2Cal, R2Pred, and residual predictive deviation (RPD). Conclusions This analytical tool offers potential for real-time TDM in the clinical setting. Highlights FTIR spectroscopy was evaluated for the first time to predict VPA in human plasma for TDM. Two regressions were evaluated to predict VPA in human plasma, and the best-performing model was obtained using nonlinear SVR.

Funder

Local Ethics Committee of Sheikh Zaid Hospital, Rabat, Morocco

Publisher

Oxford University Press (OUP)

Subject

Pharmacology,Agronomy and Crop Science,Environmental Chemistry,Food Science,Analytical Chemistry

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