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用于药物结晶的利伐沙班在混合溶剂中溶解度的机器学习分析

Machine learning analysis of rivaroxaban solubility in mixed solvents for application in pharmaceutical crystallization.

作者信息

Alqarni Mohammed, Alqarni Ali

机构信息

Department of Pharmaceutical Chemistry, College of Pharmacy, Taif University, P.O. Box 11099, 21944, Taif, Saudi Arabia.

Department of Oral & Maxillofacial Surgery and Diagnostic Sciences, Faculty of Dentistry, Taif University, 21944, Taif, Saudi Arabia.

出版信息

Sci Rep. 2025 Jan 17;15(1):2241. doi: 10.1038/s41598-024-84741-1.

Abstract

This study investigates the use of machine learning models to predict solubility of rivaroxaban in binary solvents based on temperature (T), mass fraction (w), and solvent type. Using a dataset with over 250 data points and including solvents encoded with one-hot encoding, four models were compared: Gradient Boosting (GB), Light Gradient Boosting (LGB), Extra Trees (ET), and Random Forest (RF). The Jellyfish Optimizer (JO) algorithm was applied to tune hyperparameters, enhancing model performance. The LGB model achieved the best results, with an R of 0.988 on the test set and low error rates (RMSE of 9.1284E-05 and MAE of 5.85322E-05), surpassing other models in predictive accuracy and generalizability. Parity plots confirmed the LGB model's close alignment between predicted and actual solubility values, highlighting its robust performance. Furthermore, 3D surface plots and partial effect plots demonstrated LGB's capacity to model solubility across different solvent systems, capturing complex interactions between T, w, and solvent effects. Finally, the LGB model predicted maximum solubility at a temperature of 305.76 K and a mass fraction of 0.753 in a dichloromethane + methanol mixture, providing valuable insights for solubility optimization in solvent selection. This work underscores the effectiveness of the LGB model for solubility prediction, with potential applications in formulation and experimental planning.

摘要

本研究探讨了基于温度(T)、质量分数(w)和溶剂类型,使用机器学习模型预测利伐沙班在二元溶剂中的溶解度。利用一个包含250多个数据点的数据集,其中包括采用独热编码的溶剂,比较了四种模型:梯度提升(GB)、轻梯度提升(LGB)、极端随机树(ET)和随机森林(RF)。应用水母优化器(JO)算法来调整超参数,提高模型性能。LGB模型取得了最佳结果,在测试集上的R值为0.988,错误率较低(均方根误差为9.1284E - 05,平均绝对误差为5.85322E - 05),在预测准确性和泛化能力方面超过了其他模型。残差图证实了LGB模型预测的溶解度值与实际溶解度值紧密吻合,突出了其稳健的性能。此外,三维表面图和偏效应图展示了LGB在不同溶剂体系中对溶解度进行建模的能力,捕捉了T、w和溶剂效应之间的复杂相互作用。最后,LGB模型预测在二氯甲烷 + 甲醇混合物中,温度为305.76 K且质量分数为0.753时溶解度最大,为溶剂选择中的溶解度优化提供了有价值的见解。这项工作强调了LGB模型在溶解度预测方面的有效性,在制剂和实验规划中具有潜在应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/efab/11742050/b0cd834cfa09/41598_2024_84741_Fig1_HTML.jpg

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