Efficient Extraction and Determination of Carbamate Pesticides in Vegetables Based on a Covalent Organic Frameworks with Acylamide Sites

化学 氨基甲酸酯 色谱法 杀虫剂 萃取(化学) 检出限 固相萃取 吸附 共价有机骨架 农药残留 残留物(化学) 环境化学 线性范围 共价键 有机化学 农学 生物
作者
Hongying Guo,An Chen,Jinghui Zhou,Yijun Li,Xiwen He,Langxing Chen,Yukui Zhang
出处
期刊:Journal of Chromatography A [Elsevier]
卷期号:1664: 462799-462799 被引量:44
标识
DOI:10.1016/j.chroma.2021.462799
摘要

It is an important challenge to effectively extract and determine pesticides in complex samples. Covalent organic frameworks (COFs) are burgeoning porous crystalline organic materials with good environmental resistance, thus demonstrating great potential as adsorbents in contaminants detection. In this work, we design and synthesize a novel COF-TpDB via 1,3,5-triformylphloroglucinol (Tp) and 4,4'-diaminobenzoylanilide (DB) as well as its packed cartridge for solid phase extraction (SPE) of carbamate pesticides. Simulation calculations showed H-bonding facilitates the adsorption interactions between the carbamate pesticides and TpDB. A method was developed by coupling TpDB as SPE sorbents with high performance liquid chromatography-ultraviolet (HPLC-UV) detection to determine trace carbamate pesticides in vegetables. The established method showed a wide linear range of 0.1-200 ng mL-1 and low limit of detections (0.005-0.05 ng mL-1) for four carbamate pesticides. The applicability of TpDB as adsorbent was investigated for determination of trace carbamate pesticides residue in vegetables with satisfactory recoveries of four carbamates in the range of 80.4-101.2%. The results demonstrated that the COF-TpDB offer great potential for efficient extraction of carbamate pesticides from complicate matrices.
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