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用于预测ABCG2抑制作用的简单且准确的基于计算机配体模型的开发。

Development of Simple and Accurate in Silico Ligand-Based Models for Predicting ABCG2 Inhibition.

作者信息

Huang Shuheng, Gao Yingjie, Zhang Xuelian, Lu Ji, Wei Jun, Mei Hu, Xing Juan, Pan Xianchao

机构信息

Department of Medicinal Chemistry, School of Pharmacy, Southwest Medical University, Luzhou, China.

Key Laboratory of Biorheological Science and Technology (Ministry of Education), College of Bioengineering, Chongqing University, Chongqing, China.

出版信息

Front Chem. 2022 May 18;10:863146. doi: 10.3389/fchem.2022.863146. eCollection 2022.

Abstract

The ATP binding cassette transporter ABCG2 is a physiologically important drug transporter that has a central role in determining the ADMET (absorption, distribution, metabolism, elimination, and toxicity) profile of therapeutics, and contributes to multidrug resistance. Thus, development of predictive in silico models for the identification of ABCG2 inhibitors is of great interest in the early stage of drug discovery. In this work, by exploiting a large public dataset, a number of ligand-based classification models were developed using partial least squares-discriminant analysis (PLS-DA) with molecular interaction field- and fingerprint-based structural description methods, regarding physicochemical and fragmental properties related to ABCG2 inhibition. An in-house dataset compiled from recently experimental studies was used to rigorously validated the model performance. The key molecular properties and fragments favored to inhibitor binding were discussed in detail, which was further explored by docking simulations. A highly informative chemical property was identified as the principal determinant of ABCG2 inhibition, which was utilized to derive a simple rule that had a strong capability for differentiating inhibitors from non-inhibitors. Furthermore, the incorporation of the rule into the best PLS-DA model significantly improved the classification performance, particularly achieving a high prediction accuracy on the independent in-house set. The integrative model is simple and accurate, which could be applied to the evaluation of drug-transporter interactions in drug development. Also, the dominant molecular features derived from the models may help medicinal chemists in the molecular design of novel inhibitors to circumvent ABCG2-mediated drug resistance.

摘要

ATP结合盒转运蛋白ABCG2是一种具有重要生理意义的药物转运蛋白,在决定治疗药物的ADMET(吸收、分布、代谢、排泄和毒性)特征方面起着核心作用,并导致多药耐药性。因此,开发用于识别ABCG2抑制剂的预测性计算机模拟模型在药物发现的早期阶段备受关注。在这项工作中,通过利用一个大型公共数据集,使用偏最小二乘判别分析(PLS-DA)以及基于分子相互作用场和指纹的结构描述方法,开发了一些基于配体的分类模型,涉及与ABCG2抑制相关的物理化学和片段性质。从最近的实验研究中汇编的内部数据集被用于严格验证模型性能。详细讨论了有利于抑制剂结合的关键分子性质和片段,并通过对接模拟进一步探索。确定了一种信息量丰富的化学性质作为ABCG2抑制的主要决定因素,并据此推导出一条简单规则,该规则具有很强的区分抑制剂和非抑制剂的能力。此外,将该规则纳入最佳PLS-DA模型显著提高了分类性能,特别是在独立的内部数据集上实现了高预测准确率。该综合模型简单且准确,可应用于药物开发中药物-转运蛋白相互作用的评估。此外,从模型中得出的主要分子特征可能有助于药物化学家进行新型抑制剂的分子设计,以规避ABCG2介导的耐药性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4c8c/9159808/408364736613/fchem-10-863146-g001.jpg

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