机器学习在预测药物通过血脑屏障的渗透性中的应用。

IF 1.8 4区 医学 Q3 PHARMACOLOGY & PHARMACY
Iranian Journal of Pharmaceutical Research Pub Date : 2024-11-24 eCollection Date: 2024-01-01 DOI:10.5812/ijpr-149367
Sogand Jafarpour, Maryam Asefzadeh, Ehsan Aboutaleb
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引用次数: 0

摘要

一些药物通过血脑屏障(BBB)的效率低下通常归因于它们较差的物理化学或药代动力学性质。最近的研究表明,使用机器学习算法来预测血脑屏障的药物渗透性,结果很有希望。鉴于这些发现,我们的研究旨在探索机器学习在预测药物穿过血脑屏障的渗透性方面的潜力。我们利用B3DB数据集(一个全面的血脑屏障渗透率分子数据库)建立机器学习模型。该数据集包含7,807个分子,包括其渗透率、立体化学和物理化学性质的信息。在预处理和清理之后,使用Python库Pycaret实现了各种机器学习算法来预测渗透率。当使用Morgan指纹和Mordred化学描述符(mcd)时,额外树分类器模型的表现优于其他分类器,在测试数据集上实现了0.93和0.95的曲线下面积(AUC)。此外,我们进行了一个实验来训练一个投票分类器,该分类器结合了表现最好的三个模型。在mcd上训练的最佳混合模型达到了0.96的AUC。此外,Shapley加性解释(SHAP)分析应用于我们表现最好的单一模型,即mcd训练的额外树分类器,确定Lipinski规则的五是预测血脑屏障渗透率的最重要特征。综上所述,我们在mcd上训练的组合模型的AUC为0.96,F1得分为0.91,MCC为0.74。这些结果与之前关于中枢神经系统药物渗透性的研究一致,突出了机器学习在这一领域的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Application of Machine Learning in Predicting the Permeability of Drugs Across the Blood Brain Barrier.

The inefficiency of some medications to cross the blood-brain barrier (BBB) is often attributed to their poor physicochemical or pharmacokinetic properties. Recent studies have demonstrated promising outcomes using machine learning algorithms to predict drug permeability across the BBB. In light of these findings, our study was conducted to explore the potential of machine learning in predicting the permeability of drugs across the BBB. We utilized the B3DB dataset, a comprehensive BBB permeability molecular database, to build machine learning models. The dataset comprises 7,807 molecules, including information on their permeability, stereochemistry, and physicochemical properties. After preprocessing and cleaning, various machine learning algorithms were implemented using the Python library Pycaret to predict permeability. The extra trees classifier model outperformed others when using Morgan fingerprints and Mordred chemical descriptors (MCDs), achieving an area under the curve (AUC) of 0.93 and 0.95 on the test dataset. Additionally, we conducted an experiment to train a voting classifier combining the top three performing models. The best-blended model, trained on MCDs, achieved an AUC of 0.96. Furthermore, Shapley additive exPlanations (SHAP) analysis was applied to our best-performing single model, the extra trees classifier trained on MCDs, identifying the Lipinski rule of five as the most significant feature in predicting BBB permeability. In conclusion, our combined model trained on MCDs achieved an AUC of 0.96, an F1 Score of 0.91, and an MCC of 0.74. These results are consistent with prior studies on CNS drug permeability, highlighting the potential of machine learning in this domain.

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来源期刊
CiteScore
3.40
自引率
6.20%
发文量
52
审稿时长
2 months
期刊介绍: The Iranian Journal of Pharmaceutical Research (IJPR) is a peer-reviewed multi-disciplinary pharmaceutical publication, scheduled to appear quarterly and serve as a means for scientific information exchange in the international pharmaceutical forum. Specific scientific topics of interest to the journal include, but are not limited to: pharmaceutics, industrial pharmacy, pharmacognosy, toxicology, medicinal chemistry, novel analytical methods for drug characterization, computational and modeling approaches to drug design, bio-medical experience, clinical investigation, rational drug prescribing, pharmacoeconomics, biotechnology, nanotechnology, biopharmaceutics and physical pharmacy.
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