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Detection of Pesticide Residues in Food Using Surface-Enhanced Raman Spectroscopy: A Review Menglei Xu, Yu Gao, Xiao Xia Han, and Bing Zhao J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.7b02504 • Publication Date (Web): 20 Jul 2017 Downloaded from http://pubs.acs.org on July 21, 2017
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Detection of Pesticide Residues in Food Using
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Surface-Enhanced Raman Spectroscopy: A Review
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Meng-Lei Xu†, Yu Gao‡, Xiao Xia Han†*, Bing Zhao†*
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†
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Changchun 130012, PR China
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‡
State Key Laboratory of Supramolecular Structure and Materials, Jilin University,
College of Agriculture, Jilin Agricultural University, Changchun 130118, PR China.
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*Corresponding authors:
[email protected];
[email protected] 10
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ABSTRACT: Pesticides directly pollute the environment and contaminate foods
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ultimately being absorbed by the human body. Their residues contain highly toxic
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substances that have been found to cause serious problems to human health even at
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very low concentrations. The gold standard method, gas/liquid chromatography
15
combined with mass spectroscopy, has been widely used for the detection of pesticide
16
residues. However, these methods have some drawbacks such as complicated
17
pre-treatment
18
surface-enhanced Raman spectroscopy (SERS) has promoted the creation of
19
alternative detection techniques. SERS is a useful detection tool with ultrasensitivity
20
and simpler protocols. Present SERS-based pesticide residue detection often uses
21
standard solutions of target analytes in conjunction with theoretical Raman spectra
22
calculated by density functional theory (DFT), and actual Raman spectra detected by
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SERS. SERS is quite a promising technique for the direct detection of pesticides at
24
trace levels in liquid samples, or on the surface of solid samples following simple
25
extraction to increase the concentration of analytes. In this review, we highlight recent
26
studies on SERS-based pesticide detection, including SERS for pesticide standard
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solution detection and for pesticides in/on food samples. Moreover, deep analysis of
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pesticide chemical structures, structural alteration during food processing, interaction
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with SERS substrates, and selection of SERS-active substrates are involved.
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KEYWORDS: SERS, food, pesticide residue, detection, semiconductor
and
cleanup
steps.
Recent
technological
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INTRODUCTION
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Pesticides are natural or synthetic compounds, which are used to prevent, destroy,
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or control diseases, pests and weeds, or to adjust plants and insect growth. In fact, it
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has been estimated that less than 0.1% of the pesticides applied to crops actually
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reaches the target pest.(1) The rest enters the environment gratuitously, which may
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directly pollute the environment after application, and then enters into the food chain.
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Pesticide residues are any particular substance, which are found in food, agricultural
39
products, or animal feed due to the use of pesticides, such as their transformation
40
products, metabolites, reaction products and impurities to be of toxicological
41
significance.(2) Pesticide residues may be absorbed by humans via the digestive and
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respiratory systems or through the skin. Eating pesticide-contaminated food is one of
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the main ways of contacting pesticides. However, food poisoning incidents caused by
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pesticide residues in food may also happen occasionally.
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Detection of pesticide residues in food is an essential step in regulating and
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monitoring the levels of pesticides. Since the 1970s, most routine pesticide residue
47
determination has been conducted by gold standard chromatographic methods,
48
including gas/liquid chromatography combined with mass spectroscopy, however,
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there is now a clear demand for an increase in the number of rapid detection
50
methodologies.(3)
51
electrophoresis are common fast detection methods, and their advantages relative to
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chromatographic techniques have been widely discussed in other reviews.(4) However,
53
these methods still suffer from several inherent defects, such as solution instability
Immunoassays,
electrochemical
detection,
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and short storage time.
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SERS is an advanced Raman technique that enhances the vibrational spectrum of
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molecules adsorbed on or in the vicinity of metal particles and/or surfaces, which was
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firstly observed in 1970s.(5) This technique gives analytical identity information since
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it can provide characteristic vibrational fingerprints of molecules with nondestructive
59
testing. Its excellent sensitivity to the detection of a wide range of pesticides and
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single-molecule pesticides has promoted its use as an alternative detection technique
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for rapid pesticide analysis.(6) Since 1987, increasing studies have used SERS for fast
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detection of pesticide residues in food.(7) Food sample which may contain pesticide
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residues should be pretreated by extraction and clean-up before SERS measurements.
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A small amount of sample should subsequently be put into colloidal substrates, or
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dropped onto solid substrates. At last, Raman spectra are collected and analyzed.
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In this review, we first focus on the detection of pesticide standard solutions by
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SERS, and then review pesticide residue detection in food samples. Lastly, promising
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future trends and perspectives are also discussed.
69 70
Development and application of SERS for pesticide standard solution detection.
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The establishment of an analytical method usually begins with the study of standard
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products, and the same is true for SERS studies on pesticide residues in food. It
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includes the theoretical Raman spectra of analytes calculated by density functional
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theory (DFT) theory, in combination with the actual Raman spectra measured absent
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or present by SERS detection, and enhancement factor (EF) calculated at last.(9)
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DFT simulations of pesticide Raman spectra. DFT calculations using the post
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self-consistent field method have been used extensively to predict spectral
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information and molecular conformation. DFT calculations are carried out by
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assuming that the energy of a molecule is a function of the electron density. The
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energy is then minimized with respect to the density, and an optimized structure may
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then be obtained. This method can calculate the structural information of a molecule,
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which contains molecular bond length, bond angle and the size of the entire
83
molecule.(10) The theoretical Raman spectra could be investigated by DFT calculations,
84
and given reasonable explanations, which are optimized with the Gaussian suite of
85
programs.(11) For pesticide standard solution, its theoretical spectra can be obtained by
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caculating the states of molecules in pure solutions. Several studies about molecular
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vibration modes and the Raman characteristic peaks have been reported, such as
88
organophosphorus, organochlorine, carbamate, pyrethroid pesticides and so on.(12)-(15)
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DFT has become an accurate and computationally economical alternative approach to
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quantum mechanical calculations.(16) However, the real-world Raman spectral or
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SERS signals are so different from the theoretical ones, the reason could be due to
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different molecular structure of pesticide or substrates, and their interaction. Thus,
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further studies are needed to investigate real-world Raman spectral signals.(17)
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Chemical structure of SERS-active pesticides. Based on chemical structures,
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pesticides can be divided into inorganic and organic species. Inorganic pesticides
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include calcium arsenate, arsenate of lead, aluminum phosphide, lime sulphur, copper
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sulfate etc. Organic pesticides can either be natural (usually extracted from plants or
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bacteria) or synthetic. Synthetic pesticides can be classified into organochlorine (e.g.
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chlorobenzenes), organophosphorus (Fig. 1a), carbamate (Fig. 1b), pyrethroid
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pesticides (Fig. 1c).(18)
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SERS substrates selection. SERS can enhance Raman signals 104-105 times, when
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the target analyte is placed on an active substrate, thus, sensitive substrates are found
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to be a very influential factor in SERS detection.
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Different types of SERS substrates were reported, such as rough metal electrodes,
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noble metal, transition metal, semiconductor nanomaterials and composites. Rough
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metal electrodes were the earliest SERS substrate, but the whole electrode process is
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not controllable; thus, this substrate is not suitable for theoretical study. Metal
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colloid-based substrates, such as gold (Au) and silver (Ag) colloids, are widely used
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as substrates for their low cost, simple preparation and favorable enhancement
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compared to other substrates. There are also two typical ways to improve SERS
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signals effectively with colloid-based substrates. One is optimizing the physical
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properties of nanomaterials including shapes, sizes, and components.(19)(20) The other
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is improving the reproducibility and stability of the SERS-active substrate by using
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self-assembled structures of NPs, such as fractal-like, elastomeric templates, and
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colloidal silica crystals.(21)-(23) However, these noble metal colloid are stabilized by
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electrostatic repulsion, and once this stable state is broken, the colloid no longer has
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SERS activity, and therefore requires a more stable substrate.
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SERS-active nanomaterials have extended from noble metals, transition metals to
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semiconductor materials with the development of SERS for more than 40 years.
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Compared with metals, semiconductor materials have more controllable properties,
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such as band gap, photoluminescence, stability and resistance to degradation.(24)
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In recent years, some semiconductors (TiO2 and CdTe) were found to display a
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rather large enhancement (above 106) under optimized conditions.(25) (26) Moreover,
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metal-semiconductor hybrid nanomaterials were found to be capable of displaying
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higher enhancement than pure metal substrates ascribed to the synergetic contribution
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of metal and semiconductor to SERS. Pesticides with certain functional groups, such
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as carboxyl and thiol can strongly bind to substrates. Thus, such kind of SERS-active
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substrates have great potential for highly robust SERS sensing in pesticides.
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For solid surface-based substrates, more attention is paid to their positioning, in
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order to achieve more rapid and efficient extraction of targets from complex surfaces.
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There are two types of SERS substrates: “hard” and “flexible.” In “hard” SERS
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substrates, small SERS-active building blocks are self-assembled onto “rigid”
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substrates or films using various methods such as the Langmuir-Blodgett technique,
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layer-by-layer assembly, spin-casting and DNA assisted assembly.(27)-(31) However,
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these complicated processes require long fabrication times and sophisticated
136
equipment.(32) “Flexible” SERS substrates are made of polymers, papers, plastics,
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sandpaper, carbon fibers, and adhesive tape.(33)-(40) These reported flexible substrates
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are effective for SERS detection as they can swab the complex surface of a diverse
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array of actual analytes. Nevertheless, the opacity of the above-mentioned flexible
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substrates prevents the incident light from direct excitation of SERS on the opposite
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side.
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To select appropriate SERS-active substrates for pesticide detection, the following
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three key points should be considered before Raman measurements. To select
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appropriate SERS-active substrates for pesticide detection, the following three key
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points should be considered before Raman measurements.(41)-(43)
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1) The enhancement ability of the SERS-active materials. Noble metals (Ag and Au)
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are most commonly used substrates for universal analyte detection due to their
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relatively high enhancement ability. In recent years, metal-semiconductor hybrid
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nanomaterials were found to be capable of displaying higher enhancement than
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pure metal substrates.
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2) The affinity of target molecules to SERS-active materials. The surface selection
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rule of SERS determines selective enhancement for the absorbed molecules close
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to (within 10 nm) the substrate surface. In general, the interaction types between
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target molecules and substrates includes electrostatic, hydrophobic and covalent
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bindings.
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3) Resonance Raman effect. Resonance Raman scattering is an unique Raman effect
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and it occurs when the incident laser frequency is close in energy to an electronic
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transition of a compound, which can lead to remarkably (>102) enhanced intensity
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of the Raman scattering. Thus, surface-enhanced resonance Raman scattering
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(SERS) would exhibit further enhancement based on SERS, allowing
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single-molecule detection under optimized experimental condition.
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Interaction of SERS substrates and pesticide molecules. For present pesticide
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detection, Ag and Au nanoparticles (Au NPs) are the most common SERS substrate.(44)
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There are several reports about the interaction between Au or Ag NPs and pesticide
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molecules, such as chlorpyrifos, malathion, paraquat, and tricyclazole.(45)-(47) In recent
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years, a variety of semiconductor-metal nanocomposites were synthesized and found
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to show stronger Raman signal enhancement and multifunctionality for pesticide
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detection. Li et al.(48) and Yang et al.(49) reported a kind of Au-coated TiO2 nanotube
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arrays with dual functions of SERS substrate and photocatalytic property. In this case,
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2,4-D and methyl-parathion can be degraded into clean inorganic molecules by this
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substrate with UV-irradiation after detection. Ngan et al. synthesised silver
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nanodendrites on silicon, which could be used as SERS substrates to detect
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pyridaben.(50)
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The possible interactions between pesticide molecules and nanostructures can occur
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through the pesticides adsorbed on the substrates surfaces. Pesticides with certain
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functional groups, such as carboxyl, hydroxyl, thiol, amine that can bind to Au or Ag
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substrates strongly are also good targets.(51), (52) While, pesticide molecules without
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these functional groups could be coupled by some probe molecules (e.g., 4-MBA,
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PATP) and bind to the substrates indirectly .(19) For intrinsic vibrations, molecules
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with conjugated double bond systems and symmetric vibrational modes are more
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active than molecules without these characteristics.
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The ideal Raman signal of pesticide molecules can be obtained by SERS.
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Comparing theoretical Raman spectra calculated with DFT theory, we can get
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information on the chemical bond vibration, and interaction of SERS substrates and
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pesticide molecules. For pesticide molecules, its standard solution is usually dissolved
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in ultra-pure water or highly pure organic solvents. Thus, we can get ideal Raman
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spectra and develop standard data.
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SERS for detection of pesticides in food samples
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Detection of pesticides in real-world food samples is sometimes different from
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detection in standard solutions due to the complexity of food matrices. Food can be
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classified in different groups: grains, oil-producing plants, vegetables, fruits, nuts,
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sugars, beverages, edible fungi, flavorings, medicinal plants, foods with animal
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origins. Pesticide residues’ fate in food include their transformation products,
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metabolites, reaction products and impurities which are of toxicological
196
significance.(1) Accordingly, we discuss SERS-based pesticide detection by food
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category and their properties, pesticide residues’ fate in food, and distribution of
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pesticide residues.
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In different food category. In terms of food types, there are more reports in
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beverages, fruits, or vegetables than other groups on the detection of pesticide
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residues using SERS.(40) (53)-(88) Hou et al. developed an in situ SERS method to detect
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and discriminate four pesticides on plant surfaces directly without extracting.(53)
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Wijaya et al. detected acetamiprid without pre-treatment of apple juice samples by
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using Ag NPs as substrates.(61) He et al. combined a surface swab capture method and
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SERS for recovery and quantitative detection of thiabendazole on apple surfaces.(69)
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SERS is an ideal alternative method to detect chemical pesticides in liquid food
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samples, and also considered to be very powerful analytical method especially for
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field test after a simple extract process. For liquid food samples, pesticide residues
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and their transformation products may transfer into juice and thus become a potential
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risk to consumer health. Their uniform matrices are favorable for pesticide residue
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detection based on SERS (Figure 2a). For in situ SERS studies, pesticide residues are
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often distributed on the surface of these food-types, and could be detected by SERS.
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However, most foods are solid or solid liquid mixtures (Figure 2b).
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However, besides these three types of food, vegetables, fruits, or beverages, they
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are less reports on pesticides detection in grains, oil plants, animal origin food or other
216
types.(61), (89)-(93) In additional, there are also few studies on pesticides detection inside
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solid food were reported. The reason is that, a extraction process is needed in
218
detection to increase the analyte concentration to achieve a better SERS signal (Figure
219
2c). At present, commonly used extraction technologies include solvent extraction and
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SPE.(85)-(89) Xie et al. weighed and grinded vegetable samples to dry powder with
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Na2SO4, added activated carbon and acetone, and then shook and filtered the
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solution.(88) The filtrate was concentrated to 5 mL, and the solution was finally passed
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through 0.45 µm membranes for SERS detection. Luo et al. applied the QuEChERS
224
method as an extraction and purification technology in order to detect phosmet and
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thiabendazole in apples.(94)
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In different pesticide species. Based on their chemical structures, pesticides can
227
be divided into inorganic pesticides and organic pesticides. Organic pesticides can
228
either be natural (usually extracted from plants or bacteria) or synthetic. Synthetic
229
pesticides can be classified into organophosphorus, organochlorine, pyrethroid,
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carbamate pesticides. Generally, SERS-based methods are not suitable for analysis of
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inorganic pesticides with relatively low Raman cross-section. Botanical pesticides are
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environmentally friendly, and also highly bio-degradable, so they become inactive
233
within hours or a few days. While, many microbial pesticides are also believed to be
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low toxic and safe. On the other hand, increasing numbers of new pesticide molecules
235
have been developed to control diseases or pests in agriculture. Shen et al. detected
236
six pyrazole fungicides, which are a new group of pesticides with strong antifungal
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activities in grape wine by solid-phase extraction and gas chromatography-tandem
238
mass spectrometry.(96) However, among numbers of pesticides, only a fraction of these
239
molecules were detected with full peak assignments by Raman spectroscopy,
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especially for organic synthetic pesticides.
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Pesticides can also be classified according to their physiological effects, such as
242
contact, stomach toxicity, systemic effects etc. Systemic pesticides or herbicides are
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able to penetrate into the plant tissues and translocate from one site to other parts of
244
the plant.(97)-(99) Here in this review, besides synthetic pesticides we also introduced
245
non-systemic pesticides distributed on the surface of food. Kim et al. developed a
246
portable sensor system composed of high performance and reliable Au nanofinger
247
sensor strips to detect chlorpyrifos on apple skin.(64) Jiang et al. provided Ag NP
248
SERS substrates for the identification and detection of triphenyltin residues on apple
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peels without the requirement of complicated sample pretreatments.(72)
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In food processing. Concerns about the impact of pesticides on environment has
251
prompted studies on the fate of these agents.1 Pesticide residues or their
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transformation products, metabolites, reaction products and impurities are all of
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toxicological significance. However, the behavior of pesticides in food processing is
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different from that in plants or animals. Several factors such as high temperature for
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cooking or blanching, pH alteration, and decrease in moisture by drying, may cause
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the increase or decrease of pesticide concentration. In addition, pesticide residues
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might metabolize to new chemical substrances during food processing.(100) Regueiro
258
et al. reported pesticides residues in food could influence fermentative microbiota,
259
and then influence the sensory quality.(101) Although degradation of pesticides in
260
environmental have been well documented, studies about the development of
261
breakdown products and metabolite identification during cooking or processing food
262
are scarce due to low concentration and complex structure.(102),
263
approach has a higher sensitivity and selectively for target analytes than traditional
264
chromatographic methods, which could have a great potential in the application of
265
trace pesticide derivative identification during or after food processing.
(103)
SERS-based
266
A separation and purification technique, for example SPE, is still needed before
267
pesticide residue detection by SERS in solid food samples becomes more widespread.
268
The scope of testing using SERS still needs to be expanded due to the complexity of
269
food matrices. At the same time, an increasing variety of pesticides are used in
270
agriculture and absorbed by humans. However, detection based on SERS methods are
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still only focused on a few pesticide residues. In addition, pesticide residues might
272
metabolize to new chemical substances during food processing, however, studies
273
about the development of breakdown products and metabolite identification during
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cooking or processing food are scarce. Thus, more pesticides and their transformation
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products, metabolites, reaction products and impurities need to be regarded as
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analytes in SERS detection. Pesticide residues in different food matrices detected by
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SERS methods are summarized in Table 1.
278 279
FUTURE TRENDS AND PERSPECTIVES
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SERS detection methods have a high potential as rapid technique for the
281
determination of pesticide residues in food. SERS has many advantages such as
282
ultrasensitive detection, simpler protocols, and reduced cost. A spectral library of
283
pesticide molecules needs to be established. Additionally, pesticide residues might
284
metabolize to new chemical substances during food processing, however, there are
285
only few studies on their transformation products, metabolites, reaction products and
286
impurities during cooking or food-processing. In future studies, more attention should
287
be paid to the detection them in food by SERS. For different crops, registered
288
pesticides, which are allowed to be applied, are different. In real-world detection, the
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unregistered pesticides should also be studied. Ag or Au NPs are often the preferred
290
substrate for pesticide detection. However, there is still lack of cost-effective
291
commercial SERS substrates. Semiconductor-metal hybrid substrates have great
292
potential for highly robust SERS sensing in pesticides with high enhancement ability,
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good reproducibility, acceptable stability and reusability. Food matrices are complex
294
such that background interference is a big challenge for analysis of pesticides by
295
SERS. Although SERS is quite a promising technique for direct detection of
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pesticides at trace levels in liquid samples, or on the surface of solid samples (with a
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simple extraction to increase the analyte concentration at the outer surface), it is still
298
very challenging to apply SERS for the detection of internalized pesticides in complex
299
solid food matrices. Non-uniform distributions of pesticide molecules increase the
300
difficulty of detection. As SERS is not a separation method, analysis of internalized
301
pesticides still requires extraction and purification to avoid interference from
302
non-target components in food samples. Future study should expand the variety of
303
pesticides and food matrices studied, and extend substrates from metals to
304
semiconductor materials.
305 306
ACKNOWLEDGMENTS
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This work is supported by Key Laboratory of Integrated Pest Management on
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Crops in Northeast Open Project Fund (No. DB201505KF03) and the National
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Natural Science Fund (No. 31401486).
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CONFLICTS
311
The authors declare no competing financial interest.
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Table 1 Pesticide residues in different food matrices detected by SERS
642 Food groups
Grains
food matrices
Analyte
Substrates
Separation technique
Paddy Rice Rice Rice
Tricyclazole Chlorpyriphos Carbofuran Thiram, methyl parathion
Ag NPs Au NPs Ag NPs
SPE SPE Ethanol
Au-MBA@void@Au
Ethyl alcohol
Pepper, cucumber peels
Beverages
LOD
Ref.
0.002 mg/L 0.506 mg/L 0.446 mg/L 8 nM, 1.5 µM
(89) (90) (91) (92)
Tea leaves
Isocarbophos, phorate, imidacloprid, deltamethrin
Au NPs
None
0.25~0.50 mg/kg
(53)
Tea leaves surface
Thiram
Au NPs grafted on dendritic a-Fe2O3
None
5×10-6 M
(54)
Ultrapure water, tap water
Prometryn
Ag NPs
None
5×10-12, 5×10-9 mol/L
(55)
water
Methyl parathion
None
1 nM
(56)
Grape juice
Thiram
None
0.1 µM
(57)
Grape juice
Thiram
None
0.1 µM
(58)
Apple juice
Thiram
None, ethanol
10-7 M
(59)
Tap water, apple juice, vegetable juice
Thiram, ferbam
None
1.78~87.01 nM
(60)
Au/Ag-NPs@Al2O3-layer@Ag -nanoparticles Au@Ag NPs/GO/Au@Ag NPs sandwich structure Ag dendritic NPs TiO2 supported silver nanoparticles Au nanoparticle
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Journal of Agricultural and Food Chemistry
Food groups
Fruits
Page 32 of 37
food matrices
Analyte
Substrates
Separation technique
Orange, grapefruit juice
Carbaryl
Standing AuNR Arrays
Centrifugation
Apple juice
Acetamiprid
Swab sticks
None
Apple juice Drinking water
Carbaryl Chlorpyrifos, thiabendazole
Standing AuNR Arrays Au nanofingers
Apple, orange peels
Parathion-methyl, thiram, chlorpyrifos
Apple peels
LOD
Ref.
50 ppb 3 µg/mL
(61)
None Water
2.5 ppm 35 ppt
(63) (64)
“Paste and peel off” Au NPs
None
2.6, 0.24, 3.51 ng/cm2
(40)
Isocarbophos, phorate, imidacloprid, deltamethrin
Au NPs
None
0.01~0.02 mg/kg
(53)
Apple peels
Thiram
Au NPs grafted on dendritic a-Fe2O3
None
5×10-6 M
(54)
Apple peels
Thiram
TiO2 supported silver nanoparticles
None, ethanol
240 ng/cm2
(59)
Apple surfaces
Acetamiprid
Swab sticks
None
0.125 µg/cm2
(62)
Apple, grape, mango, pear, peach peels
Thiram, chlorpyrifos, methyl parathion
Au@Ag NPs
Ethanol
0.025~7.23 ng/cm2
(65)
Apple peels
Thiram
Ag nanoshells (Ag NSs)
None
38 ng/cm2
(66)
Apple skin
Thiabendazole
Au nanostar/ polydimethylsiloxane(PDMS) film
None
20 ppb
(67)
Apple peels
Thiram
Fe3O4@NR
None
10-7 M
(68)
Apples (Gala)
Thiabendazole
Ag dendrites
None
5 ppm µg/g per weight
(69)
ACS Paragon Plus Environment
(62)
Page 33 of 37
Journal of Agricultural and Food Chemistry
Food groups
food matrices
Analyte
Substrates
Separation technique
LOD
Apple, pear skin
Paraquat
Ag NPs
None
10-9 M
Apples, banana peels Apple peels
Thiram, paraoxon Triphenyltin
Ag NPs-decorated filter paper Ag NPs
None
Ref. (70) 2
7.2 ng/cm
None
6.25 ng/cm
(72)
-7
(73)
Apple peels
Chlorpyrifos
Ag2O@Ag NPs
None
10 M
Apples (Fuji) surface
Chlorpyrifos
Au NPs
None
0.13 mg/kg
Apple peels
(71)
2
9
−
(74) 2
Thiram
AgNRs embedded PDMS
Ethanol
2.4×10 g/cm
(75)
Oranges
Phosmet, disulfoton
Au NPs decorated glycidyl methacrylate-ethylene dimethacrylate material
None
8.25, 39.7 mg/kg
(76)
Orange
Methyl parathion
Ag film
None
10-6 M
(77)
Orange surface
Thiram, 4-polychlorinated biphenyl, Methyl Parathion
Ag-NC@PE composite film
None
10 nM, 1 µM, 10 nM
(78)
Pear surface
Triazophos
Ag-coated 3000 meshsandpaper
None
53.3 pM/cm2
(79)
Pear surface
Chlorpyrifos
Au nanopopcorn
SPE
0.35 mg/kg
(80)
Navel orange skin
Phosme, chlorpyrifos
Ag NPs
Acetonitrile
1.23 mg/L ,1.26 mg/L
(81)
Apples (Fuji)
Carbaryl
Au-coated Klarite
SFE
0.5 µg/g
(82)
Apple
Azinphosmethyl, phosmet, carbaryl
Au NPs
Acetonitrile, H2O mixed solvent
4.51~6.66 ppm
(83)
Apple
Thiabendazole
Cellulose nanofibers coated with Ag NPs
Acetonitrile-water solution
5 ppm
(84)
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Food groups
Page 34 of 37
food matrices
Analyte
Substrates
Separation technique
LOD
Ref.
Cucumbers, rape peels
Parathion-methyl, thiram, chlorpyrifos
“Paste and peel off” Au NPs
None
2.6, 0.24, 3.51 ng/cm2
(40)
Cucumber peels
Thiram, methyl parathion, malachite green
Ethanol
1.6~10 ng/cm2
(85)
Cabbage
Carbaryl
Ag NPs on the 3D poly(dimethylsiloxane) PDMS nanotentacle array Standing AuNR Arrays
Acetonitrile-water
2.5 ppm
(63)
Tomatoes
Carbaryl, phosmet, azinphos-methyl
Au NPs
Acetonitrile, H2O mixed solvent
(83)
Pak choi Red bell pepper Red amaranthus, little cabbage, Chinese cabbage, Leek, Spinach, Chinese little greens
Difenoconazole Thiophanate-methyl, carbendazim
Au NPs Ag NPs
SPE None
5.35, 2.91, 2.94 ppm 0.4143 mg/L 8 mg/kg
Methamidophos
Ag NPs
Acetone
0.01 µg/mL
(88)
Oil plants
Soybean
Carbofuran
Ag NPs
Ethanol
0.520 ppm
(91)
Animal origin food
Milk Honey
Carbaryl Dimethoate
Standing AuNR Arrays KlariteTM Au NPs
Centrifugation None
50 ppb 2 ppm
(61) (93)
Vegetables
643
ACS Paragon Plus Environment
(86) (87)
Page 35 of 37
Journal of Agricultural and Food Chemistry
644
Figure 1 R1
X P
R2
(c) Z3
(a)
N
Z1
(b)
O
R3
C
Z2
R4 O Z4 O O
645
R1, R2 = C2H5O-, CH3OR3, R4 = H-, CH3-, C2H5-, C3H7X = S or O Z1, Z2, Z3, Z4 = subsitituent groups
646
Figure 1. Chemical structure of pesticides, organophosphorus (a), carbamate (b),
647
pyrethroid pesticides (c)(18).
648
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
649
Figure 2
650 651
Figure 2. Pesticide residues detection in liquid (a), on the surface (b) or inside solid
652
foods by SERS.
653
ACS Paragon Plus Environment
Page 36 of 37
Page 37 of 37
Journal of Agricultural and Food Chemistry
654
Topic of Content
655
ACS Paragon Plus Environment