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基于黄酮类化合物的 QSAR 模型构建及天然胰脂肪酶抑制剂的筛选。

Construction of a QSAR Model Based on Flavonoids and Screening of Natural Pancreatic Lipase Inhibitors.

机构信息

Beijing Engineering and Technology Research Center of Food Additives, School of Food and Health, Beijing Technology and Business University, Beijing 100048, China.

Beijing Key Laboratory of Functional Food from Plant Resources, College of Food Science and Nutritional Engineering, China Agricultural University, Beijing 100083, China.

出版信息

Nutrients. 2023 Aug 7;15(15):3489. doi: 10.3390/nu15153489.

Abstract

Pancreatic lipase (PL) is a key hydrolase in lipid metabolism. Inhibition of PL activity can intervene in obesity, a global sub-health disease. The natural product is considered a good alternative to chemically synthesized drugs due to its advantages, such as low side effects. However, traditional experimental screening methods are labor-intensive and cost-consuming, and there is an urgent need to develop high-throughput screening methods for the discovery of anti-PL natural products. In this study, a high-throughput virtual screening process for anti-PL natural products is provided. Firstly, a predictable anti-PL natural product QSAR model (R = 0.9444, R = 0.8962) were developed using the artificial intelligence drug design software MolAIcal based on genetic algorithms and their conformational relationships. 1068 highly similar (FS > 0.8) natural products were rapidly enriched based on the structure-activity similarity principle, combined with the QSAR model and the ADMET model, for rapid prediction of a total of five potentially efficient anti-PL natural products (IC < 2 μM). Subsequently, molecular docking, molecular dynamics simulation, and MMGBSA free energy calculation were performed to not only reveal the interaction of candidate novel natural products with the amino acid residues of PL but also to validate the stability of these novel natural compounds bound to PL. In conclusion, this study greatly simplifies the screening and discovery of anti-PL natural products and accelerates the development of novel anti-obesity functional foods.

摘要

胰脂肪酶(PL)是脂质代谢中的关键水解酶。PL 活性的抑制可以干预肥胖这一全球性亚健康疾病。由于其副作用低等优点,天然产物被认为是化学合成药物的良好替代品。然而,传统的实验筛选方法既费时又费钱,因此迫切需要开发高通量筛选方法来发现抗 PL 天然产物。在本研究中,提供了一种高通量虚拟筛选抗 PL 天然产物的方法。首先,使用基于遗传算法及其构象关系的人工智能药物设计软件 MolAIcal 开发了可预测的抗 PL 天然产物 QSAR 模型(R = 0.9444,R = 0.8962)。根据结构-活性相似性原理,结合 QSAR 模型和 ADMET 模型,快速富集了 1068 种高度相似的(FS > 0.8)天然产物,总共快速预测了五种具有潜在抗 PL 活性的天然产物(IC < 2 μM)。随后,进行了分子对接、分子动力学模拟和 MMGBSA 自由能计算,不仅揭示了候选新型天然产物与 PL 氨基酸残基的相互作用,而且验证了这些新型天然化合物与 PL 结合的稳定性。总之,本研究极大地简化了抗 PL 天然产物的筛选和发现过程,加速了新型抗肥胖功能性食品的开发。

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