基于机器学习的天冬酰胺内肽酶QSAR模型构建方法

N. Das, P. Achary
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摘要

近年来,化学计量学在定量构效关系(QSAR)研究中的重要性加快了从大型数据库中处理海量信息以发现潜在化合物的步伐。从大量的物理化学参数中选择描述符的过程在建立QSAR模型中变得非常关键。像进化算法这样的机器学习技术可以实现这个目的。由于遗传算法(GA)可以在最短时间内从大量描述符中选择最优描述符,本研究利用遗传算法(GA)建立QSAR模型来预测天冬酰胺内肽酶(AEP)的抑制活性,天冬酰胺内肽酶是治疗乳腺癌、结直肠癌、胃癌和肿瘤的重要酶。用60种与AEP酶具有良好实验相互作用的有机化合物建立模型。基于ga的分子对接也被用于验证所研究配体的抑制效力。配体4的结合能最小,为−8.9。配体4与蛋白形成5个氢键,对AEP有较强的抑制能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Approach in Building QSAR Models for the Study of Asparagine Endopeptidase
Recently the significance of chemometrics in Quantitative structure-activity relationship (QSAR) study has picked up the pace for dealing with a huge amount of information for discovering potential compounds from large databases. The process of selecting descriptors from a large number of physicochemical parameters has become very critical in building QSAR models. Machine learning techniques like evolutionary algorithms can be implemented for this purpose. As the Genetic algorithm (GA) can select optimal descriptors from a large set in minimum time with the help of its stochastic nature, in this work genetic algorithm(GA) has been used to develop QSAR models to predict the inhibition activity of Asparagine endopeptidase (AEP) which is an important enzyme having a key role in the treatment of breast cancer, colorectal cancer, gastric cancer, and tumors. Models were built using a set of 60 organic compounds showing excellent experimental interaction with the AEP enzyme. GA-based molecular docking has also been performed to validate the inhibition potency of the studied ligands. The ligand number 4 showed the least binding energy as −8.9. The ligand 4 formed 5 hydrogen bonds with the protein showing greater inhibition capability for AEP.
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