预测肽在不同屏障上的渗透性:系统调查

IF 4.5 2区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Xiaorong Tan, Qianhui Liu, Yanpeng Fang, Yingli Zhu, Fei Chen, Wenbin Zeng, Defang Ouyang and Jie Dong*, 
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引用次数: 0

摘要

肽类疗法在治疗各种疾病方面前景广阔。然而,由于细胞膜渗透性差,它们的疗效往往受到影响,从而阻碍了细胞内靶向给药和口服药物的开发。本研究通过引入新型图神经网络(GNN)框架和先进的机器学习算法来建立多肽渗透性预测模型,从而应对这一挑战。我们的模型对各种肽(天然肽、改良肽、线性肽和环形肽)和细胞系(Caco-2、Ralph Russ 犬肾 (RRCK) 和平行人工膜渗透性测定 (PAMPA))进行了系统评估。首次构建了 Caco-2 和 RRCK 细胞系中线性肽和环肽的预测模型,测试集的判定系数(R2)分别为 0.708、0.484、0.553 和 0.528,令人印象深刻。值得注意的是,随着数据集的增大,GNN 框架在渗透性预测方面表现得更好,并提高了 PAMPA 细胞系中环肽预测的准确性。与已报道的模型相比,R2 提高了约 0.32。此外,我们还解释了有助于良好渗透性的重要分子结构特征;成功揭示了细胞系、多肽修饰和环化对渗透性的影响。为了便于更广泛地使用,我们在用户友好的 KNIME 平台(https://github.com/ifyoungnet/PharmPapp)上部署了这些模型。这项工作为系统评估多肽的渗透性提供了一种快速可靠的策略,有助于研究人员优化给药,在药物发现过程中预选多肽,并有可能设计出基于多肽的靶向材料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting Peptide Permeability Across Diverse Barriers: A Systematic Investigation

Predicting Peptide Permeability Across Diverse Barriers: A Systematic Investigation

Peptide-based therapeutics hold immense promise for the treatment of various diseases. However, their effectiveness is often hampered by poor cell membrane permeability, hindering targeted intracellular delivery and oral drug development. This study addressed this challenge by introducing a novel graph neural network (GNN) framework and advanced machine learning algorithms to build predictive models for peptide permeability. Our models offer systematic evaluation across diverse peptides (natural, modified, linear and cyclic) and cell lines [Caco-2, Ralph Russ canine kidney (RRCK) and parallel artificial membrane permeability assay (PAMPA)]. The predictive models for linear and cyclic peptides in Caco-2 and RRCK cell lines were constructed for the first time, with an impressive coefficient of determination (R2) of 0.708, 0.484, 0.553, and 0.528 in the test set, respectively. Notably, the GNN framework behaved better in permeability prediction with larger data sets and improved the accuracy of cyclic peptide prediction in the PAMPA cell line. The R2 increased by about 0.32 compared with the reported models. Furthermore, the important molecular structural features that contribute to good permeability were interpreted; the influence of cell lines, peptide modification, and cyclization on permeability were successfully revealed. To facilitate broader use, we deployed these models on the user-friendly KNIME platform (https://github.com/ifyoungnet/PharmPapp). This work provides a rapid and reliable strategy for systematically assessing peptide permeability, aiding researchers in drug delivery optimization, peptide preselection during drug discovery, and potentially the design of targeted peptide-based materials.

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来源期刊
Molecular Pharmaceutics
Molecular Pharmaceutics 医学-药学
CiteScore
8.00
自引率
6.10%
发文量
391
审稿时长
2 months
期刊介绍: Molecular Pharmaceutics publishes the results of original research that contributes significantly to the molecular mechanistic understanding of drug delivery and drug delivery systems. The journal encourages contributions describing research at the interface of drug discovery and drug development. Scientific areas within the scope of the journal include physical and pharmaceutical chemistry, biochemistry and biophysics, molecular and cellular biology, and polymer and materials science as they relate to drug and drug delivery system efficacy. Mechanistic Drug Delivery and Drug Targeting research on modulating activity and efficacy of a drug or drug product is within the scope of Molecular Pharmaceutics. Theoretical and experimental peer-reviewed research articles, communications, reviews, and perspectives are welcomed.
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