SMILES-based QSAR and molecular docking study of xanthone derivatives as α-glucosidase inhibitors.

IF 2.6 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Journal of Receptors and Signal Transduction Pub Date : 2022-08-01 Epub Date: 2021-08-12 DOI:10.1080/10799893.2021.1957932
Shahin Ahmadi, Zohreh Moradi, Ashwani Kumar, Ali Almasirad
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引用次数: 8

Abstract

Increasing diabetic population is one of the major health concerns all over the world. Inhibition of α-glucosidase is a clinically proved and attractive strategy to manage diabetes. In this study, robust and reliable QSAR models to predict α-glucosidase inhibitory potential of xanthone derivatives are developed by the Monte Carlo technique. The chemical structures are represented by SMILES notation without any 3D-optimization. The significance of the index of ideality correlation (IIC) with applicability domain (AD) is also studied in depth. The models developed using CORAL software by considering IIC criteria are found to be statistically more significant and robust than simple balance of correlation. The QSAR models are validated by both internal and external validation methods. The promoters of increase and decrease of activity are also extracted and interpreted in detail. The interpretation of developed models explains the role of different structural attributes in predicting the pIC50 of xanthone derivatives as α-glucosidase inhibitors. Based on the results of model interpretation, modifications are done on some xanthone derivatives and 15 new molecules are designed. The α-glucosidase inhibitory activity of novel molecules is further supported by docking studies.

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基于smiles的山酮类α-葡萄糖苷酶抑制剂QSAR与分子对接研究。
糖尿病人口的增加是全世界关注的主要健康问题之一。α-葡萄糖苷酶的抑制是一种临床证明和有吸引力的策略来管理糖尿病。本研究利用蒙特卡罗技术建立了稳健可靠的QSAR模型来预测山酮衍生物的α-葡萄糖苷酶抑制潜力。化学结构用SMILES符号表示,没有任何3d优化。并对理想相关指数(IIC)与适用域(AD)的意义进行了深入研究。通过考虑IIC标准,使用CORAL软件开发的模型在统计上比简单的相关平衡更显著和稳健。通过内部和外部验证方法对QSAR模型进行了验证。并对活性增减的促进因子进行了提取和详细解释。建立的模型解释了不同结构属性在预测山酮衍生物作为α-葡萄糖苷酶抑制剂的pIC50中的作用。在模型解释的基础上,对部分山酮衍生物进行了修饰,设计了15个新分子。对接研究进一步支持了新分子的α-葡萄糖苷酶抑制活性。
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来源期刊
Journal of Receptors and Signal Transduction
Journal of Receptors and Signal Transduction 生物-生化与分子生物学
CiteScore
6.60
自引率
0.00%
发文量
19
审稿时长
>12 weeks
期刊介绍: Journal of Receptors and Signal Tranduction is included in the following abstracting and indexing services: BIOBASE; Biochemistry and Biophysics Citation Index; Biological Abstracts; BIOSIS Full Coverage Shared; BIOSIS Previews; Biotechnology Abstracts; Current Contents/Life Sciences; Derwent Chimera; Derwent Drug File; EMBASE; EMBIOLOGY; Journal Citation Reports/ Science Edition; PubMed/MedLine; Science Citation Index; SciSearch; SCOPUS; SIIC.
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