Machine learning for skin permeability prediction: random forest and XG boost regression.

IF 4.3 4区 医学 Q1 PHARMACOLOGY & PHARMACY Journal of Drug Targeting Pub Date : 2024-12-01 Epub Date: 2024-01-12 DOI:10.1080/1061186X.2023.2284096
Kevin Ita, Joyce Prinze
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Abstract

Background: Machine learning algorithms that can quickly and easily estimate skin permeability (Kp) are increasingly being used in drug delivery research. The linear free energy relationship (LFER) developed by Abraham is a practical technique for predicting Kp. The permeability coefficients and Abraham solute descriptor values for 175 organic compounds have been documented in the scientific literature.Purpose: The purpose of this project was to use a publicly available dataset to make skin permeability predictions using the random forest and XBoost regression techniques.Methods: We employed Pandas-based methods in JupyterLab to predict permeability coefficient (Kp) from solute descriptors (excess molar refraction [E], combined dipolarity/polarizability [S], overall solute hydrogen bond acidity and basicity [A and B], and the McGowan's characteristic molecular volume [V]).Results: The random forest and XG Boost regression models established statistically significant association between the descriptors and the skin permeability coefficient.

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皮肤渗透性预测的机器学习:随机森林和XG Boost回归。
机器学习算法可以快速方便地估计皮肤渗透性(Kp),越来越多地用于药物输送研究。亚伯拉罕提出的线性自由能关系(LFER)是一种预测Kp的实用方法。175种有机化合物的渗透系数和亚伯拉罕溶质描述符值已在科学文献中得到记录。在本项目中,我们在JupyterLab中使用基于panda的方法,从溶质描述子(过量摩尔折射[E]、复合双极性/极化率[S]、总溶质氢键酸度和碱度[A和B]以及McGowan特征分子体积[V])中预测渗透系数(Kp)。机器学习中最有效的集成算法之一是随机森林,它的工作前提是应该建立几个独立的随机树,然后使用它们预测的平均值来形成推论。另一种方法是XGBoost回归。这是一个基于迭代梯度下降的集成学习算法,其中XGBoost的主要学习器决策树用于集成。由于其出色的准确性、效率和适应性,XGBoost已迅速成为开发预测模型最受欢迎的方法之一。在本报告中,我们利用一个公开可用的数据集,使用随机森林和XBoost回归技术进行皮肤渗透率预测。
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来源期刊
CiteScore
9.10
自引率
0.00%
发文量
165
审稿时长
2 months
期刊介绍: Journal of Drug Targeting publishes papers and reviews on all aspects of drug delivery and targeting for molecular and macromolecular drugs including the design and characterization of carrier systems (whether colloidal, protein or polymeric) for both vitro and/or in vivo applications of these drugs. Papers are not restricted to drugs delivered by way of a carrier, but also include studies on molecular and macromolecular drugs that are designed to target specific cellular or extra-cellular molecules. As such the journal publishes results on the activity, delivery and targeting of therapeutic peptides/proteins and nucleic acids including genes/plasmid DNA, gene silencing nucleic acids (e.g. small interfering (si)RNA, antisense oligonucleotides, ribozymes, DNAzymes), as well as aptamers, mononucleotides and monoclonal antibodies and their conjugates. The diagnostic application of targeting technologies as well as targeted delivery of diagnostic and imaging agents also fall within the scope of the journal. In addition, papers are sought on self-regulating systems, systems responsive to their environment and to external stimuli and those that can produce programmed, pulsed and otherwise complex delivery patterns.
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