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Solubility of Glibenclamide in supercritical solvent versus pressure and temperature via development of machine learning and rain optimization algorithm

Hadil Faris AlotaibiDepartment of Pharmaceutical Sciences, College of Pharmacy, Princess Nourah Bint AbdulRahman University, 11671, Riyadh, Saudi Arabia. [email protected]Chou-Yi HsuThunderbird School of Global Management, Arizona State University Tempe Campus, Phoenix, AZ, 85004, USA. [email protected]Fadhil Faez SeadDepartment of Dentistry, College of Dentistry, The Islamic University, Najaf, IraqAnupam YadavDepartment of Computer Engineering and Application, GLA University Mathura, Bharthia, 281406, IndiaS. Renuka JyothiDepartment of Biotechnology and Genetics, School of Sciences, JAIN (Deemed to Be University), Bangalore, Karnataka, IndiaSwati MishraDepartment of Pharmacology, IMS and SUM Hospital, Siksha 'O' Anusandhan (Deemed to Be University), Bhubaneswar, Odisha, 751003, IndiaBhavi PurohitCentre for Research Impact & Outcome, Chitkara University Institute of Engineering and Technology, Chitkara University, Rajpura, 140401, Punjab, IndiaAnorgul I. AshirovaDepartment of General Professional Sciences, Mamun University, Khiva, UzbekistanTemur EshchanovUrgench State University Named After Abu Rayhon Beruni, Urgench, UzbekistanAshish Singh ChauhanDivision of Research and Innovation, Uttaranchal Institute of Pharmaceutical Sciences, Uttaranchal University, Dehradun, Uttarakhand, India
Scientific Reportsjournal2026en
ABI

Аннотация

This study develops machine-learning models for predicting the solubility of Glibenclamide and the density of supercritical CO₂ under varying temperature and pressure conditions. Three regression techniques—Polynomial Kernel Ridge Regression (PKR), Weighted Least Squares (WLS), and Gradient Boosting Trees (GBT)—were employed, with hyperparameters optimized via the Rain Optimization Algorithm (ROA). PKR delivered the highest solubility-prediction accuracy, achieving an R2 of 0.98689, RMSE of 3.1884 × 10⁻1, MAE of 2.73613 × 10⁻1, and MAPE of 1.33900 × 10⁰. For density prediction, PKR also performed best, with an R2 of 0.98169, RMSE of 2.0935 × 101, MAE of 1.70231 × 101, and MAPE of 2.92063 × 10⁻2. GBT showed competitive performance (R2 = 0.93256 for solubility; 0.91889 for density), while WLS produced moderate accuracy. In comparison with previous studies that modeled Glibenclamide solubility using simpler machine-learning methods, the present work introduces an advanced PKR–ROA framework capable of accurately predicting both solubility and supercritical-fluid density. The proposed approach provides a practical computational tool for optimizing SC-CO₂-based pharmaceutical processing.

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