首页> 外文期刊>Food additives & contaminants >Optimisation using the finite element method of a filter-based microfluidic SERS sensor for detection of multiple pesticides in strawberry
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Optimisation using the finite element method of a filter-based microfluidic SERS sensor for detection of multiple pesticides in strawberry

机译:利用基于滤光片的微流体SERS传感器的有限元方法进行优化,用于检测草莓多种农药

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摘要

This study developed an in-field analytical technique for food samples by integrating filtration into a surface-enhanced Raman spectroscopy (SERS) microchip. This microchip embedded a filter membrane in the chip inlet to eliminate interfering particulates and enrich target analytes. The design and geometry of the channel were optimised by finite-elemental method (FEM) to tailor variations of flow velocity (within 0-24 μL/s) and facilitate efficient mixing of the filtrate with nanoparticles in two steps. Four pesticides (thiabendazole, thiram, endosulfan, and malathion) were successfully detected either individually or as a mixture in strawberries using this sensor. Strong Raman signals were obtained for the four studied pesticides and their major peaks were clearly observable even at a low concentration of 5 μg/kg. Limits of detection of four pesticides in strawberry extract were in the range of 44-88 μg/kg, showing good sensitivity of the sensor to the target analytes. High selectivity of the sensor was also proved by successful detection of each individual pesticide as a mixture in strawberry matrices. High recoveries (90-122%) were achieved for the four pesticides in the strawberry extract. This sensor is the first filter-based SERS microchip for identification and quantification of multiple target analytes in complex food samples.
机译:本研究通过将过滤集成到表面增强的拉曼光谱(SERS)微芯片,开发了一种用于食物样品的现场分析技术。该微芯片在芯片入口处嵌入过滤膜,以消除干扰颗粒并富集靶分析物。通道的设计和几何是通过有限元素(FEM)进行优化的,以定制流速的变化(在0-24μl/ s之内),并促进滤液与纳米颗粒的两个步骤混合。使用该传感器成功地检测到四种农药(Thiabadazole,硫唑,硫丹,硫丹和马拉硫磷)或作为草莓中的混合物。对于四种研究的杀虫剂获得了强大的拉曼信号,即使以低浓度为5μg/ kg,它们的主要峰明显明显。草莓提取物中四种农药的检测限范率为44-88μg/ kg,显示对靶分析物的良好敏感性。还通过成功地检测每种单独的农药作为草莓矩阵中的混合物来证明传感器的高选择性。对于草莓提取物中的四种农药来实现高回收率(90-122%)。该传感器是第一种基于过滤器的SERS微芯片,用于识别和定量复杂食物样品中的多个靶分析物。

著录项

  • 来源
    《Food additives & contaminants》 |2021年第4期|646-658|共13页
  • 作者单位

    Food Science Program Division of Food System & Bioengineering University of Missouri Columbia MO USA;

    Institute of Materials Science University of Connecticut Mansfield CT USA;

    Qlibrium Inc. Woburn MA USA;

    Institute of Materials Science University of Connecticut Mansfield CT USA;

    Food Science Program Division of Food System & Bioengineering University of Missouri Columbia MO USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Food microfluldics; SERS; filtration; FEM; pesticides;

    机译:食物微流体;套;过滤;FEM;杀虫剂;

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