Yang Ling-Ling, Yang Xiao, Li Guo-Bo, Fan Kai-Ge, Yin Peng-Fei, Chen Xiang-Gui
School of Food and Bioengineering, Xihua University, Sichuan, 610039, China.
State Key Laboratory of Biotherapy and Cancer Center, West China Hospital, Sichuan University, Sichuan, 610041, China.
J Sci Food Agric. 2016 Apr;96(6):2184-92. doi: 10.1002/jsfa.7335. Epub 2015 Aug 3.
The enzymatic chemistry method is currently the most widely used method for the rapid detection of organophosphorus (OP) pesticides, but the enzymes used, such as cholinesterases, lack sufficient sensitivity to detect low concentrations of OP pesticides present in given samples. Serine hydrolase is considered an ideal enzyme source in seeking high-sensitivity enzymes used for OP pesticide detection. However, it is difficult to systematically evaluate sensitivities of various serine hydrolases to OP pesticides by in vitro experiments. This study aimed to establish an in silico method to predict the sensitivity spectrum of various serine hydrolases to OP pesticides.
A serine hydrolase database containing 219 representative serine hydrolases was constructed. Based on this database, an integrated molecular docking and rescoring method was established, in which the AutoDock Vina program was used to produce the binding poses of OP pesticides to various serine hydrolases and the ID-Score method developed recently by us was adopted as a rescoring method to predict their binding affinities. In retrospective case studies, this method showed good performance in predicting the sensitivities of known serine hydrolases to two OP pesticides: paraoxon and diisopropyl fluorophosphate. The sensitivity spectrum of the 219 collected serine hydrolases to 37 commonly used OP pesticides was finally obtained using this method.
Overall, this study presented a promising in silico tool to predict the sensitivity spectrum of various serine hydrolases to OP pesticides, which will help in finding high-sensitivity serine hydrolases for OP pesticide detection.
酶化学法是目前快速检测有机磷(OP)农药应用最广泛的方法,但所使用的酶,如胆碱酯酶,对检测给定样品中低浓度的OP农药缺乏足够的灵敏度。丝氨酸水解酶被认为是寻找用于OP农药检测的高灵敏度酶的理想酶源。然而,通过体外实验系统评估各种丝氨酸水解酶对OP农药的敏感性是困难的。本研究旨在建立一种计算机模拟方法来预测各种丝氨酸水解酶对OP农药的敏感性谱。
构建了一个包含219种代表性丝氨酸水解酶的数据库。基于该数据库,建立了一种集成分子对接和重评分方法,其中使用AutoDock Vina程序生成OP农药与各种丝氨酸水解酶的结合构象,并采用我们最近开发的ID-Score方法作为重评分方法来预测它们的结合亲和力。在回顾性案例研究中,该方法在预测已知丝氨酸水解酶对两种OP农药(对氧磷和氟磷酸二异丙酯)的敏感性方面表现良好。最终使用该方法获得了219种收集的丝氨酸水解酶对37种常用OP农药的敏感性谱。
总体而言,本研究提出了一种有前景的计算机模拟工具来预测各种丝氨酸水解酶对OP农药的敏感性谱,这将有助于寻找用于OP农药检测的高灵敏度丝氨酸水解酶。