Department of Health and Rehabilitation Sciences, College of Applied Medical Sciences, Prince Sattam bin Abdulaziz University, P.O. Box 173, Al-Kharj 11942, Saudi Arabia.
Department of Physical Therapy, Kasr Al-Aini Hospital, Cairo University, Giza 12613, Egypt.
Molecules. 2022 Sep 2;27(17):5676. doi: 10.3390/molecules27175676.
The efficient production of solid-dosage oral formulations using eco-friendly supercritical solvents is known as a breakthrough technology towards developing cost-effective therapeutic drugs. Drug solubility is a significant parameter which must be measured before designing the process. Decitabine belongs to the antimetabolite class of chemotherapy agents applied for the treatment of patients with myelodysplastic syndrome (MDS). In recent years, the prediction of drug solubility by applying mathematical models through artificial intelligence (AI) has become known as an interesting topic due to the high cost of experimental investigations. The purpose of this study is to develop various machine-learning-based models to estimate the optimum solubility of the anti-cancer drug decitabine, to evaluate the effects of pressure and temperature on it. To make models on a small dataset in this research, we used three ensemble methods, Random Forest (RFR), Extra Tree (ETR), and Gradient Boosted Regression Trees (GBRT). Different configurations were tested, and optimal hyper-parameters were found. Then, the final models were assessed using standard metrics. RFR, ETR, and GBRT had R2 scores of 0.925, 0.999, and 0.999, respectively. Furthermore, the MAPE metric error rates were 1.423 × 10 7.573 × 10, and 7.119 × 10, respectively. According to these facts, GBRT was considered as the primary model in this paper. Using this method, the optimal amounts are calculated as: P = 380.88 bar, T = 333.01 K, Y = 0.001073.
使用环保型超临界溶剂高效生产固体制剂是开发具有成本效益的治疗药物的突破性技术。药物溶解度是在设计工艺之前必须测量的重要参数。地西他滨属于抗代谢化疗药物,用于治疗骨髓增生异常综合征(MDS)患者。近年来,通过人工智能(AI)应用数学模型预测药物溶解度已成为一个有趣的话题,因为实验研究的成本很高。本研究的目的是开发各种基于机器学习的模型来估算抗癌药物地西他滨的最佳溶解度,以评估压力和温度对其的影响。在这项研究中,为了在小数据集上建立模型,我们使用了三种集成方法,随机森林(RFR)、Extra Tree(ETR)和梯度提升回归树(GBRT)。测试了不同的配置,并找到了最佳的超参数。然后,使用标准指标评估最终模型。RFR、ETR 和 GBRT 的 R2 得分分别为 0.925、0.999 和 0.999。此外,MAPE 指标的误差率分别为 1.423×10 -7 、5.73×10 -7 和 7.119×10 -7 。根据这些事实,GBRT 被认为是本文的主要模型。使用该方法,计算出的最佳用量为:P=380.88 巴,T=333.01 K,Y=0.001073。