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首页> 外文期刊>New Journal of Chemistry >In silico modelling, identification of crucial molecular fingerprints, and prediction of new possible substrates of human organic cationic transporters 1 and 2
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In silico modelling, identification of crucial molecular fingerprints, and prediction of new possible substrates of human organic cationic transporters 1 and 2

机译:在硅建模中,鉴定关键的分子指纹,以及预测人有机阳离子转运蛋白的新可能底物1和2

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摘要

There is a great demand to utilize different in silico tools to address unwanted drug metabolism and pharmacokinetics issues in drug discovery. There is also a demand to optimize existing drug therapeutics by understanding their interactions with various transporters in the body. The cation membrane transporter is among one of the major crucial transporters within the body to regulate movement of foreign molecules/drugs across the cell membrane. The prime objective of this study is to find out the structural fingerprints within molecules to be recognized as substrate/non-substrate against human organic cation transporters (hOCTs). This study may pave the way for a more detailed understanding of the physiological and pharmacological roles of transporters as well as in predicting pharmacokinetics and pharmacodynamics in the design and development of better cationic drugs. The in silico study involving physicochemical parameter analysis revealed a trend that was distinct for substrate and non-substrate molecules present in the dataset. A hyperfine geometric distribution based strategy was also utilized for obtaining the detailed distribution of different functional moiety in substrates and non-substrates for hOCTs. Classification QSAR study by Monte-Carlo optimization and Bayesian modelling methods were used for the identification of crucial structural fingerprints important for substrate activity. Classification QSAR study with the help of Monte-Carlo optimization in case of hOCT1 revealed important structural attributes like aromatic rings with branching, two aromatic rings at one bond distance, presence of sulphur atom in the compound, etc. These seemed to have vital roles of hOCT1 substrate activity. Similarly, a Bayesian classification model was also generated which gave important fingerprints for the analysis of substrates in the case of hOCT1. Models built for hOCT2 by Monte Carlo optimization and Bayesian classification study have not given significant results from the dataset. Finally, various machine learning methods (kNN, ASNN, WEKA RF, XG-BOOST) with the combination of various descriptors were utilized for the development of models and consensus models were generated separately using the best models for both hOCT1 and hOCT2. The consensus models were utilized to predict some recently FDA approved drugs for possibly hOCT1 and hOCT2 substrates. To confirm further, the predicted compounds were docked and the analysis showed that they may bind to the different binding sites of the transporter.
机译:在硅工具中有很大的需求,以解决药物发现中不需要的药物代谢和药代动力学问题。还需要通过了解与身体中各种运输司机的相互作用来优化现有的药物治疗剂。阳离子膜转运蛋白是体内的主要关键转运蛋白之一,以调节外部分子/药物穿过细胞膜的运动。本研究的主要目的是在分子中找出分子内的结构指纹,以识别为对人有机阳离子转运蛋白(HOCTS)的底物/非衬底。本研究可以更详细地了解转运蛋白的生理和药理学作用以及预测药代动力学和药效学的设计和开发的更好的阳离子药物。涉及物理化学参数分析的硅研究表明,在数据集中存在的基材和非底物分子不同的趋势。还用于基于血清的几何分布的策略用于获得底物和非基板中不同官能部分的详细分布。 Monte-Carlo优化和贝叶斯建模方法的分类QSAR研究用于鉴定对底物活性重要的关键结构指纹。分类QSAR研究借助Monte-Carlo优化在HOCT1的情况下,在一个带有分支的芳香环等芳香环等重要的结构属性,在一个键距离,化合物中存在硫原子等。这些似乎具有重要的作用HOCT1底物活性。类似地,还产生了贝叶斯分类模型,其为亨克特1的情况下分析基板的重要指纹。由Monte Carlo优化和贝叶斯分类研究构建的模型没有给出数据集的显着结果。最后,使用各种描述符组合的各种机器学习方法(KNN,ASNN,WEKA RF,XG-BOOST)用于开发模型的开发,并使用HOCT1和HOCT2的最佳模型分开生成共识模型。共识模型用于预测最近FDA批准的药物可能是亨克特1和HOCT2基材。为了进一步确认,对接预测的化合物对接,分析显示它们可以与转运蛋白的不同结合位点结合。

著录项

  • 来源
    《New Journal of Chemistry 》 |2020年第10期| 共15页
  • 作者单位

    Dr Hari Singh Gour Vishwavidyalaya Lab Drug Design &

    Discovery Dept Pharmaceut Sci Sagar MP India;

    Dr Hari Singh Gour Vishwavidyalaya Lab Drug Design &

    Discovery Dept Pharmaceut Sci Sagar MP India;

    Jadavpur Univ Dept Pharmaceut Technol Div Med &

    Pharmaceut Chem Nat Sci Lab POB 17020 Kolkata India;

    Jadavpur Univ Dept Pharmaceut Technol Div Med &

    Pharmaceut Chem Nat Sci Lab POB 17020 Kolkata India;

    BITS Pilani Translat Pharmaceut Lab Dept Pharm Hyderabad Campus Hyderabad 500078 India;

    Jadavpur Univ Dept Pharmaceut Technol Div Med &

    Pharmaceut Chem Nat Sci Lab POB 17020 Kolkata India;

    Dr Hari Singh Gour Vishwavidyalaya Lab Drug Design &

    Discovery Dept Pharmaceut Sci Sagar MP India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 化学 ;
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