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使用堆叠机器学习模型估算抗癌药物在超临界二氧化碳中的溶解度

Estimating the Dissolution of Anticancer Drugs in Supercritical Carbon Dioxide with a Stacked Machine Learning Model.

作者信息

Najmi Maryam, Ayari Mohamed Arselene, Sadeghsalehi Hamidreza, Vaferi Behzad, Khandakar Amith, Chowdhury Muhammad E H, Rahman Tawsifur, Jawhar Zanko Hassan

机构信息

Faculty of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran 1584715414, Iran.

Department of Civil and Architectural Engineering, Qatar University, Doha 2713, Qatar.

出版信息

Pharmaceutics. 2022 Aug 5;14(8):1632. doi: 10.3390/pharmaceutics14081632.

Abstract

Synthesizing micro-/nano-sized pharmaceutical compounds with an appropriate size distribution is a method often followed to enhance drug delivery and reduce side effects. Supercritical CO (carbon dioxide) is a well-known solvent utilized in the pharmaceutical synthesis process. Reliable knowledge of a drug's solubility in supercritical CO is necessary for feasible study, modeling, design, optimization, and control of such a process. Therefore, the current study constructs a stacked/ensemble model by combining three up-to-date machine learning tools (i.e., extra tree, gradient boosting, and random forest) to predict the solubility of twelve anticancer drugs in supercritical CO. An experimental databank comprising 311 phase equilibrium samples was gathered from the literature and applied to design the proposed stacked model. This model estimates the solubility of anticancer drugs in supercritical CO as a function of solute and solvent properties and operating conditions. Several statistical indices, including average absolute relative deviation ( = 8.62%), mean absolute error ( = 2.86 × 10), relative absolute error ( = 2.42%), mean squared error ( = 1.26 × 10), and regression coefficient ( = 0.99809) were used to validate the performance of the constructed model. The statistical, sensitivity, and trend analyses confirmed that the suggested stacked model demonstrates excellent performance for correlating and predicting the solubility of anticancer drugs in supercritical CO.

摘要

合成具有适当尺寸分布的微米/纳米级药物化合物是一种常用于增强药物递送和减少副作用的方法。超临界CO₂(二氧化碳)是药物合成过程中常用的一种溶剂。对于此类过程的可行性研究、建模、设计、优化和控制而言,了解药物在超临界CO₂中的溶解度的可靠知识是必要的。因此,当前的研究通过结合三种最新的机器学习工具(即极端随机树、梯度提升和随机森林)构建了一个堆叠/集成模型,以预测12种抗癌药物在超临界CO₂中的溶解度。从文献中收集了一个包含311个相平衡样本的实验数据库,并将其应用于设计所提出的堆叠模型。该模型根据溶质和溶剂性质以及操作条件来估计抗癌药物在超临界CO₂中的溶解度。使用了几个统计指标,包括平均绝对相对偏差( = 8.62%)、平均绝对误差( = 2.86 × 10)、相对绝对误差( = 2.42%)、均方误差( = 1.26 × 10)和回归系数( = 0.99809)来验证所构建模型的性能。统计、敏感性和趋势分析证实,所建议的堆叠模型在关联和预测抗癌药物在超临界CO₂中的溶解度方面表现出色。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5c2f/9416672/38f825c94b92/pharmaceutics-14-01632-g001.jpg

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