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食品源α-淀粉酶抑制肽的统计特征:计算机模拟与偏最小二乘回归分析。

Statistical Characterization of Food-Derived α-Amylase Inhibitory Peptides: Computer Simulation and Partial Least Squares Regression Analysis.

机构信息

China Food Flavor and Nutrition Health Innovation Center, Beijing Technology and Business University (BTBU), Beijing 100048, China.

University of Chinese Academy of Sciences, Beijing 100049, China.

出版信息

Molecules. 2024 Jan 13;29(2):395. doi: 10.3390/molecules29020395.

Abstract

α-Amylase inhibitory peptides are used to treat diabetes, but few studies have statistically characterized their interaction with α-amylase. This study performed the molecular docking of α-amylase with inhibitory peptides from published papers. The key sites, side chain chargeability, and hydrogen bond distribution characteristics were analyzed. Molecular dynamics simulated the role of key sites in complex stability. Moreover, partial least squares regression (PLSR) was used to analyze the contribution of different amino acids in the peptides to inhibition. The results showed that, for the α-amylase molecule, His201 and Gln63, with the highest interaction numbers (INs, 15, 15) and hydrogen bond values (HBVs, 11.50, 10.33), are the key sites on α-amylase, and amino acids with positively charged side chains were important for inhibitory activity. For the inhibitory peptides, Asp and Arg had the highest HBVs, and amino acids with charged side chains were more likely to form hydrogen bonds and exert inhibitory activity. In molecular dynamics simulations, peptides involving key binding sites formed more stable complexes with α-amylase than α-amylase alone, suggesting enhanced inhibitory effects. Further, PLSR results showed that amino acids close to the N-terminus of the inhibitory peptide, located in the third and fifth positions, were significantly correlated with its inhibitory activity. In conclusion, this study provides a new approach to developing and screening α-amylase inhibitors.

摘要

α-淀粉酶抑制剂被用于治疗糖尿病,但很少有研究从统计学角度表征其与α-淀粉酶的相互作用。本研究对已发表文献中α-淀粉酶抑制肽进行了分子对接。分析了关键结合位点、侧链荷电性和氢键分布特征。分子动力学模拟了关键结合位点在复合物稳定性中的作用。此外,还使用偏最小二乘回归(PLSR)分析了肽中不同氨基酸对抑制作用的贡献。结果表明,对于α-淀粉酶分子,His201 和 Gln63 的相互作用数(IN,15,15)和氢键值(HBV,11.50,10.33)最高,是α-淀粉酶上的关键结合位点,带正电荷侧链的氨基酸对抑制活性很重要。对于抑制肽,Asp 和 Arg 具有最高的 HBV,带电荷侧链的氨基酸更容易形成氢键并发挥抑制活性。在分子动力学模拟中,涉及关键结合位点的肽与α-淀粉酶形成的复合物比α-淀粉酶本身更稳定,表明抑制作用增强。此外,PLSR 结果表明,抑制肽中靠近 N 端的氨基酸,位于第三和第五位,与抑制活性显著相关。总之,本研究为开发和筛选α-淀粉酶抑制剂提供了新方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81f6/10819330/cb6dfdce6f64/molecules-29-00395-g001.jpg

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