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Rapid and Simultaneous Analysis of 360 Pesticides in Brown Rice, Spinach, Orange, and Potato using Microbore GC-MS/MS Jonghwa Lee, Leesun Kim, Yongho Shin, Junghak Lee, Jiho Lee, Eunhye Kim, Joon-Kwan Moon, and Jeong-Han Kim J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.7b00576 • Publication Date (Web): 27 Mar 2017 Downloaded from http://pubs.acs.org on March 28, 2017
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Manuscript for Journal of Agricultural and Food Chemistry.
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Articles
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Rapid and Simultaneous Analysis of 360 Pesticides in Brown Rice,
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Spinach, Orange, and Potato using Microbore GC-MS/MS
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Jonghwa Lee,1 Leesun Kim,2 Yongho Shin,1 Junghak Lee,1 Jiho Lee,1 Eunhye Kim,1 Joon-
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Kwan Moon,3 and Jeong-Han Kim1*
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Republic of Korea.
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of Korea
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Anseong 17579, Republic of Korea
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* Corresponding author. Phone: +82-2-880-4644. Fax: +82-2-873-4415. E-mail:
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[email protected].
Department of Agricultural Biotechnology, Seoul National University, Seoul 08826,
School of Applied Biosciences, Kyungpook National University, Daegu 41566, Republic
Department of Plant Life and Environmental Sciences, Hankyong National University,
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ABSTRACT
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A multi-residue method for simultaneous and rapid analysis of 360 pesticides in
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representative agricultural produce (brown rice, orange, spinach, and potato) was developed
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using a modified QuEChERS procedure combined with gas chromatography tandem mass
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spectrometry (GC-MS/MS). Selected reaction monitoring transition parameters (e.g.,
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collision energy, precursor and product ions) in MS/MS were optimized to achieve the best
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selectivity and sensitivity for a wide range of GC amenable pesticides. A short (20 m)
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microbore (0.18 mm i.d.) column resulted in better signal-to-noise ratio with reduced
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analysis time than a conventional narrowbore column (30 m × 0.25 mm i.d.). The priming
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injection dramatically increased peak areas by masking effect on a new GC liner. Limit of
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quantitation was lower than 0.01 mg/kg and the correlation coefficients (r2) of matrix-
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matched standards was > 0.99 within the range of 0.0025–0.1 mg/kg. Acetonitrile with 0.1%
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formic acid without additional buffer salts was used for pesticide extraction, while only
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primary secondary amine (PSA) was used for dispersive solid phase extraction (dSPE)
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cleanup, to achieve good recoveries for most of the target analytes. The recoveries ranged
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from 70 to 120% with relative standard deviations of ≤ 20 % at 0.01 and 0.05 mg/kg
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spiking levels (n=6) in all samples, indicating acceptable accuracy and precision of the
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method. Seventeen real samples from the local markets were analyzed by the optimized
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method and 14 pesticides in incurred 11 samples were found at below the maximum residue
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limits.
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KEYWORDS: pesticide multi-residues, GC-MS/MS, QuEChERS, brown rice, orange,
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spinach, potato
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INTRODUCTION
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Pesticide residue level of agricultural produce is one of the most important issues
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because it is directly related with human health safety. To ensure that levels of pesticide
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residues on grain, fruit, and vegetable meet current tolerances or maximum residue limits
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(MRLs) of individual countries, they are strictly monitored by authorities. Therefore, a fast
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and simultaneous analytical method of many pesticide residues is critically in need because
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those residues in imported, exported or domestic foodstuff should be determined as rapidly
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as possible with reliable accuracy and precision for food safety.
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Conventional gas chromatography (GC) or high-performance liquid chromatography
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(HPLC) have several limitations in fast and simultaneous multi-residual analysis. Extensive
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partitioning and cleanup procedures are also required to remove co-extractives for base line
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separation of peaks on GC or HPLC, often causing low recoveries and precisions by loss of
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analytes. However, GC or LC combined with tandem mass spectrometry (MS/MS) plays a
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vital role recently in monitoring multi-residual pesticides in food matrices. Selected
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reaction monitoring (SRM, operating as “molecular cleanup”) by MS/MS enables the
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simultaneous analysis of hundreds of pesticides1-2 in a short time with high sensitivity and
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selectivity.
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For the GC analysis, a narrowbore (0.2 mm ≤ i.d. < 0.3 mm)3 column such as 30-m
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columns with 0.25 mm i.d. has been widely used for separation of various pesticides.
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However, it generally requires more than 30 min run time for one sample. For faster
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analysis, a low pressure-GC method uses a short megabore column (e.g. 10 m × 0.53 mm
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i.d.) for multi-residual analysis with an advantage of large sample loading capacity but it
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requires an additional restriction column to maintain positive pressure in inlet. In addition, 3
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the negative influence on vacuum state of MS spectrometer caused by the large volume of
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carrier gas flow may give rise to increase detection limit.4 On the other hand, a microbore
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column (0.1 mm ≤ i.d. < 0.2 mm) was not widely studied for fast and simultaneous analysis
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despite its good performance with higher signal-to-noise (S/N) ratio3. The column also
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provides increased efficiency and higher sensitivity by reducing resistance to mass
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transfer.5 Furthermore, it can provide enough linear velocity with low carrier gas flow for
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narrow chromatographic bands. However, it should be noted that narrow peaks should be
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supported by a detector (e.g. MS/MS) with fast scan speed or cycle time (or loop time)
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because it requires sufficient data points across the peak width for reliable and repeatable
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chromatographic data. The GC-MS/MS instruments recently released are known to be
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capable of producing consistent chromatographic data by rapidly providing sufficient points
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for narrow peaks while maintaining quantitative accuracy.
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For multi-residual sample preparation combined with the MS or MS/MS techniques, the
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QuEChERS (quick, easy, cheap, effective, rugged, and safe) method has widely replaced
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the traditional sample treatment methods such as column chromatography or solid phase
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extraction (SPE) since it was first introduced by Anastassiades and coworkers in 2003.6-7
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Especially, dispersive SPE (dSPE) cleanup is simple but offers high accuracy and
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precision.1,8-9 The dSPE typically uses primary secondary amine (PSA) sorbent for removal
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of some organic acids, sugars, and fatty acid.7, 10 Optional sorbents such as graphitized
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carbon black (GCB)8, 11 and ChloroFiltr12-13 can be applied with PSA to remove pigment
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like chlorophyll or carotenoid. Recently, multi-walled carbon nanotube (MWCNT) was
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also introduced as co-sorbents for reduction of matrix interferences.14-15
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Currently, the combination of QuEChERS and the MS/MS technique is one of the most 4
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popular analytical approaches for the multi-residual analysis in various food matrices.16-18
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GC-MS/MS and LC-MS/MS can generally play a complimentary role for each other
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because some unique compounds are only amenable to one of the techniques. A wide range
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of multi-residual analysis using LC-MS/MS has been carried out, but with GC-MS/MS not
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many studies on multi-residual analysis (over 300 pesticides) were not performed9,
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while 541 pesticides were reported to be GC amenable on GC-MS by Pang G. et al..20
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Recent study on multi-residues in botanical samples identified 310 pesticides with GC-
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MS/MS but considered each isomer peak as an individual compound.21 In addition, not
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many studies have focused on the optimization of GC-MS/MS to increase the number of
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the GC amenable pesticides. Therefore, several GC and MS/MS conditions (e.g. column,
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selection of precursor and product ions) still need to be optimized for maximization of the
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number of GC amenable pesticides without compromising sensitivity and selectivity.
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This study aimed to develop a multi-residual screening method for simultaneous analysis
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of 360 GC amenable pesticides in representative food commodities (brown rice, orange,
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spinach, and potato) using GC-MS/MS. The QuEChERS extraction and dSPE cleanup
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procedures were modified for more practical and efficient analysis without compromising
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of these advantages or recoveries. Optimum instrumental conditions were established for
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enhancement of sensitivity and selectivity. In terms of limit of quantitation (LOQ),
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accuracy and precision, the developed method was validated before finally applied for the
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screening of multiclass pesticides in real samples collected at Korean local markets.
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MATERIALS AND METHODS
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Chemicals and Consumables. HPLC grade acetonitrile (ACN) was purchased from
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Fisher Scientific (Seoul, South Korea) while formic acid (for mass spectrometry) and acetic 5
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acid (purity >99.7%) from Sigma-Aldrich (St, Louis, MO, USA). QuEChERS extraction
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packets (4 g of magnesium sulfate, MgSO4 and 1 g of sodium chloride, NaCl), 2 mL dSPE
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tubes containing 25 mg of PSA and 150 mg of MgSO4 and dSPE containing GCB (2.5 and
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7.5 mg) were obtained from Restek (Bellefonte, PA, USA). The other QuEChERS salt
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packages including AOAC and EN15662 methods were also from Restek. The ChloroFiltr®
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dSPE tube (2 mL) containing PSA, MgSO4, and 50 mg of ChloroFiltr was from UCT
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(Bristol, PA, USA). Ceramic homogenizers to aid extraction were purchased from Agilent
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Technologies (Seoul, South Korea). Certified organic brown rice, orange, spinach, and
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potato for recoveries and real samples were obtained from the local markets.
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Analytical Standard. Analytical reference (over 360 compounds), internal and quality
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control standards with high purity ( > 98%) were purchased from Sigma-Aldrich (St, Louis,
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MO, USA), Chemservice (West Chester, PA, USA), Wako (Osaka, Japan), Dr. Ehrenstorfer
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(Augsburg, Germany) and Ultra Scientific (North Kingstown, RI, USA). Individual
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pesticide stock solutions (1000 µg/mL) were prepared in acetone or ACN and then 20
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groups of intermediate standard mixtures (containing about 20 pesticides for each group)
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were prepared at 50 µg/mL from each stock solution. Finally, working standard mixture at
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2 µg/mL was used for matrix-matched calibration standards (0.01–1.0 µg/mL) by serial
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dilution. An internal standard, tris(1, 3-dichloroisopropyl)phosphate (TDCPP) was prepared
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at 0.5 µg/mL and the quality control (QC) standards mixture containing triphenyl phosphate
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(TPP), alpha-BHC-d6 and chlorpyrifos-d10 were also prepared at 10 µg/mL.
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Selection of GC Column and instrumental conditions. GC-MS/MS analysis was
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carried out on a Shimadzu GCMS-TQ8040 triple quadrupole system equipped with an
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AOC-20i auto-sampler (Kyoto, Japan). GC/MS solution software (version 4.3) was used for 6
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data processing. A solvent standard mixture (1 µL) at 0.1 µg/mL containing 360 analytes
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was injected onto narrowbore (Rxi-5Sil MS; 30 m × 0.25 mm i.d., 0.25 µm df), and
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microbore column (Rxi-5SIL MS; 20 m × 0.18 mm i.d., 0.18 µm film thickness, df)
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installed in the same GC system, respectively. Oven temperature program for the
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narrowbore was as follows: 70 °C for 2 min, up to 160 °C at 15 °C/min, then up to 260 °C
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at 5 °C/min and finally up to 300 °C at 15 °C/min (held for 8 min). Program for microbore
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column was as follows: 50 °C for 1 min and increased to 200 °C at 25 °C/min, then ramped
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to 300 °C at 10 °C/min (held for 8 min). Total run time was 25.0 min with microbore and
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38.7 min with narrowbore column. To effectively transfer the target analytes to the column,
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the pulsed injection was employed at pressure of 250 kPa with inlet temperature of 280 °C.
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Helium (≥ 99.999%) was used as carrier gas at a constant flow (1.0 mL/min) and argon was
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used as collision gas. The ion source and transfer line temperature were 230 and 280 °C
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respectively. The electron ionization energy was -70 eV and detector voltage was set at 1.4
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kV.
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For MS/MS analysis, two transitions (quantifier and qualifier) were chosen for scheduled
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SRM mode after automatic optimization procedure. The SRM detection window was ± 0.15
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min and dwell times were adjusted automatically based upon loop time (0.15 s) for the
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maximized data acquisition. Quantitation of individual compounds was performed using an
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internal standard based on peak area of quantifier transition. To choose a proper column for
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more efficient analysis, GC run time, peak shapes, and S/N ratios of representative
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pesticides obtained from the narrowbore column were compared with those from the
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microbore.
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Optimization of Sample Preparation. In order to optimize an extraction method, a 7
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preliminary test was performed with brown rice. The powdered sample (5.0 ± 0.1 g)
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fortified at 0.01 mg/kg (n=3) was extracted with different combination of extraction
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solvents, salts, and buffers based on QuEChERS method as follows. : (A) original method
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(ACN), (B) 0.1% formic acid in ACN, (C) 1% formic acid in ACN, (D) 0.1% acetic acid in
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ACN, (E) 1% acetic acid in ACN, (F) AOAC method,22 and (G) EN 15662 method.23 For
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cleanup procedure, general dSPE containing MgSO4 and PSA was employed. Each final
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extract (400 µL) from seven different extraction methods was mixed with ACN (100 µL)
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for matrix-matched quantification. Extraction efficiency of each system was calculated on
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the basis of the matrix-matched standards employing single-point calibration (0.005 mg/kg).
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For the optimization of dSPE cleanup, spinach containing a high amount of chlorophyll
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was used in comparison with several dSPE cleanup procedures. After spiking at 0.01 mg/kg,
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the homogenized spinach samples (n=3) were extracted with ACN (0.1% formic acid) and
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partitioned by MgSO4 and NaCl. After partitioning, supernatant (1 mL) were transferred to
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four different dSPE sorbents as follows: (a) general dSPE (PSA only) (b) 2.5 mg of GCB
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(c) 7.5 mg of GCB and (d) 50 mg of ChloroFiltr. All dSPE sorbents contained 25 mg of
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PSA and 150 mg of MgSO4. Cleanup efficiency of each dSPE sorbent was calculated based
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on the matrix-matched standards employing single-point calibration (0.005 mg/kg).
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Final Optimized Sample Preparation method. Frozen samples (brown rice, orange,
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spinach, and potato) were homogenized with dry ice into fine particles using a blender. The
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sample (10.0 ± 0.1 g) into a 50 mL centrifuge tube was fortified with pesticide standards at
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0.01 and 0.05 mg/kg, and the QC standard (50 µL) at 10 µg/mL was also added for
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monitoring the extraction efficiency. For brown rice, deionized water (5 mL) was added to
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5.0 ± 0.1 g of the powdered samples, allowing soaking for 1 h after fortification. ACN (10 8
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mL) with 0.1% formic acid was added to each tube and the tubes were vigorously shaken
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(1500 rpm) using a Geno Grinder (1600 MiniG SPEX Sample Prep, Metuchen, NJ, USA)
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for 1 min. And then, the tubes were cooled down in an ice bath to prevent the thermal
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degradation of some pesticides due to MgSO4 before adding the salt packet. After the
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mixture was shaken vigorously for another 1 min, the tube was centrifuged at 3500 rpm (5
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min). The supernatant (1 mL) was transferred into a general dSPE tube and vortexed (1 min)
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on a Multi Speed Vortex (MSV-3500, Biosan, Riga, Latvia) before centrifugation at 15000
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rpm (5 min). Finally, the supernatant (400 µL), ACN (50 µL), and an internal standard
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(TDCPP; 50 µL) at 0.5 µg/mL were transferred into a GC vial for GC-MS/MS injection.
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The final concentration of each sample was 0.8 g/mL (0.4 g/mL for brown rice).
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Priming effects. Untreated spinach (10 g) sample was prepared by the final optimized
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extraction procedure. After changing a new deactivated liner, solvent standard mixtures
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(0.1 µg/mL) were analyzed by GC-MS/MS three times. Then, spinach extracts were
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injected with the same GC conditions for priming treatment, followed by solvent standard
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mixture injection again. The priming extracts and solvent standard mixture were injected
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alternately more than two times. The signal intensities obtained from six solvent standard
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mixtures and priming runs were compared to investigate the priming effect on inlet system.
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Validation of Analytical Methods. Method validation was conducted based on the
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criteria of the document SANTE/11945/2015.24 Accuracy and precision of the optimized
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method were evaluated using mean recovery rate (%) and relative standard deviation
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(RSD, %) respectively, at fortification levels 0.01 and 0.05 mg/kg. Since matrix
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components generally result in signal enhancement or suppression, matrix-matched
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standards are used to solve such problems by mixing solvent standard solution and blank 9
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matrix extracts. Therefore, in this study, the matrix-matched standards for calibration (1,
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2.5. 5, 10, 25, 50, and 100 µg/kg) were prepared by adding the solvent standard solution,
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quality control and internal standards to blank matrix extracts. To minimize calculation
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error at low concentration, a weighting regression factor of 1/x was used for quantitation.
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Linearity, limit of quantitation (LOQ) were evaluated by each matrix-matched calibration.
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Matrix-dependent LOQ was determined to be the lowest concentration having S/N ratio of
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a quantifier ion peak above 10.
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Because errors can occur during sample preparation procedures including extraction,
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partitioning, and cleanup, three QC standards (TPP, alpha-BHC-d6, and chlorpyrifos-d10)
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were used as quality control of the data. When recoveries for the QC standards were in the
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range of 80–120%,25 it meant that sample preparation was considered to be properly
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performed. TDCPP was used as an internal standard for quantitation.
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Matrix Effects (ME). ME (%) was calculated as average percent suppression or
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enhancement by comparing slope of calibration curve of the matrix-matched standards with
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that of the solvent only calibration curve in ACN, using the following equation: ME, % =
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Slope of matrix matched calibration curve − 1 × 100 Slope of solvent only calibration curve
RESULTS AND DISCUSSIONS
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Selected reaction monitoring (SRM) optimization. Total number of 360 pesticides was
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chosen after full scan and SRM optimization of initially selected 392 pesticides including
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several metabolites and isomers. Full scan spectrum of individual compound was obtained
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in the mass range of 50–500 m/z. Compounds of no detection (e.g., chloridazone,
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pymetrozine, cyromazine, TCMTB, and inabenfide) or poor response (lufenuron,
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fluoroimide, bistrifluron, anilazine, trinexapac-ethyl, flupyradifuron, cycloprothrin, 10
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probenazole, allethrin, and bioresmethrin) or very low m/z value of base peak ion (73 m/z;
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methoprene) were excluded from the target analytes in this step.
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Based on selectivity rather than signal intensity, specific precursor ions were then selected
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out of the following ions; (1) the base ion with the highest intensity in the scan spectrum
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and (2) the ions with higher specificity to separate the target compound from other
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neighboring pesticides or interferences. For most of the target analytes, several ions could
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be potentially used as one of the precursor ions, but ions with the higher mass (m/z > 200)
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preferred to be selected, whenever available, because those ions generally produced the
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highest S/N ratios for their product ions26 to give minimum matrix interferences. The most
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selective and sensitive transition was used for quantifier and the second most selective was
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for qualifier. In the selected target analytes, the diastereoisomers (17 pesticides) giving two
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or more peaks (e.g., cypermethrin, dimethomorph, and fenvalerate) were quantitated by the
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sum of each peak area. Interestingly, chlorobenzilate (m/z 325.2) and chloropropylate (m/z
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339.2) were not distinguished by SRM transitions due to the analogous structure (one
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methyl group differences) and patterns of fragmentation with the same retention time. The
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details of SRM transitions, collision energies and retention times for 360 pesticides are
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presented in Supporting Table S1.
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Selection of GC Column. To find out an efficient column in terms of better peak shape,
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sensitivity, and shorter analysis time, two columns of 30-m narrowbore (0.25 mm)9-11 and
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20-m microbore (0.18 mm) were compared using solvent standard solution (mixture of 360
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pesticides) at 0.1 µg/mL. The 20-m column saved 15 min of the analysis time compared
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with the 30-m column based on the latest-eluting compound, as expected. Figure 1 shows
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individual chromatograms of representative compounds (profuralin, fenthion, procymidone, 11
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and bifenthrin) obtained from the 30-m (Figure 1-I) and the 20-m column (Figure 1-II).
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The chromatograms from the 20-m column showed higher peak height and much higher
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S/N compared with the 30-m column conditions, resulting in much lower LOQ.
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Furthermore, despite the short runtime (20 min) for 360 pesticides, sufficient data points (>
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15) for each peak were obtained due to the fast scan speed. Judging from these results, the
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microbore column was chosen in this study for higher sensitivity and shorter rum time.
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Priming effects. In the GC system, it is typically observed that the target molecules in
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solvent standards could be adsorbed to the active sites (e.g., silanol group) of a liner or
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column, causing low responses.27 As a different technology from analyte protectants, the
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DG SANTE guideline24 recommended that, after a new column or a new inlet liner is
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installed, a couple of matrix-matched blanks should be injected before running matrix-
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matched standards because the blank would deactivate the GC system, leading to the
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maximized transmission of target compounds to the detector. This phenomenon occurs due
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to “priming effects”, where matrices in the samples can mask the active sites of a new
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column or inlet liner.27-28 In this study, solvent standards, blank spinach and orange extracts
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were injected into the GC system after a new inlet liner (deactivated) was installed to
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evaluate the practical priming effect. The results showed that when the standard mixture
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was injected after the spinach extract injections, the peak responses of all the target
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compounds increased compared with that from the first injection after a new liner was
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installed (Figure 2), however, priming effect was not observed after the orange extract
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injections (Supporting Figure S1). These findings indicated that the active sites in a new
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GC liner seemed to be effectively masked by chlorophyll or other ingredients with
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nonvolatile property. It should be also noted that the increased peak response maintained 12
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over the analysis time even after one priming injection. Therefore, a priming injection after
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changing a liner must be essential to achieve analytical results with higher sensitivity and
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precision. In this study, a priming injection with spinach extracts was always applied after a
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GC liner was changed.
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Modification of Sample Extraction Solvent. Citrate (EN15662)23 and acetate buffered
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QuEChERS methods (AOAC 2007.1)22 are usually used to efficiently extract hundreds of
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pesticides including base-sensitive pesticides, and several modified QuEChERS methods
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were also reported.16,
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extraction solvent to protect pH-sensitive pesticides.32-34 In addition, several studies used
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formic acid to stabilize the pesticide in standard working solution or final extracts.12, 18, 32, 35
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In this study, therefore, addition of formic acid to extraction solvent was evaluated to
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increase the recovery efficiency of the target pesticides.
29-31
Formic as well as acetic acid10 was used as an additive in
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Table 1 shows the ratio of pesticides, which satisfied the recovery ranges between 70–
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120% with RSD ≤ 20% in the applied extraction procedures. Original method A, 0.1%
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formic acid method B, and citrate buffered method G showed relatively better recoveries
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and repeatability than the others did. No great differences in the number of the analyte with
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satisfactory rates were also observed, showing 93.6% (337 analytes) from method A, 93.9%
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(338 analytes) from method B, and 93.6% (337 analytes) from method G. On the other
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hand, ACN extract with 1% formic or 1% acetic acid gave undesirable tailing peaks for
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some compounds such as penycuron, simetryn and terbutryn. Flusilazole exhibited broad
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peaks (Supporting Figure S2) with unstable recoveries. This result was consistent with the
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previous studies, reporting that PSA may react with acid rather than absorb matrix
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interferences.10, 36 A high amount of acid in extraction solvent possibly prevented PSA from 13
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removing matrix interferences, leading to deterioration of peak shapes.
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Base sensitive pesticides such as tolylfluanid, dichlofluanid and chlorothalonil, still
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showed poor recoveries despite lowered pH in extraction solvent by AOAC method and 1%
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acetic or formic acid. For example, recoveries of tolylfluanid from AOAC method, 1%
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formic and acetic acid (25.3, 18.4 and 26.4%, respectively) were slightly higher than those
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from other extraction solvents (< 10%) but still gave poor recoveries (< 30%). Therefore,
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ACN with 0.1% formic acid was selected as optimized extraction solvent because the
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appropriate amount of formic acid in extracting solvent was expected to give stable and
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consistent results for applying various sample types without additional buffer salts.
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Optimization of Sample Cleanup with dSPE. After extraction solvent was optimized
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as above, various dSPE sorbents were tested for optimum cleanup. Several types of dSPE in
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QuEChERS are generally adopted as cleanup procedures for robust and simple pesticide
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analysis. Green samples with a high amount of chlorophyll (e.g. lettuce, spinach or tea) are
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challenging in multi-pesticide analysis because the chlorophyll in final extracts may cause
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chromatographic problem as well as increased GC maintenance cost.12,
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pigments like chlorophyll, GCB sorbent has been used11, 38-41and recently, ChloroFiltr was
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introduced for the same purpose.12, 42 In this study, using spinach (a representative green
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sample) extract with ACN with 0.1% formic acid, four different types of dSPE sorbents
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were investigated to compare their effectiveness in terms of removing co-extractives from
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green matrices, chromatographic separation, and recoveries.
37
To remove
312
It was observed that the green color of chlorophyll was greatly decreased in final extracts
313
by GCB or ChloroFiltr (data not shown) as expected but at the same time, recoveries of
314
some pesticides including planar pesticides (e.g., chinomethionat, coumaphos, cyprodinil, 14
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dimethipin, hexachlorobenzene and pentachlorothioanisole) were greatly reduced (Table 2).
316
This result was consistent with previous studies, showing that GCB interacted with not only
317
chlorophyll but also planar structure pesticides.7, 39, 41, 43 The planar solvents (e.g., toluene)
318
are known to enhance the recoveries of planar pesticide in GCB cleanup8,
319
undesirable matrix impurities may be also extracted.44 Furthermore, it should be noted that
320
addition of large amount of acid can have an even larger effect on the clean-up procedure
321
than toluene, as shown by Lehotay45. After ChlorFiltr cleanup, some pesticides such as
322
bendiocarb, edifenphos, ethiofencarb, formothion, pentachlorothioanisole and quintozene
323
were not even recovered, and many compounds showed deteriorated peak shapes possibly
324
due to interference from ChlorFiltr. If those pesticides are not target analyte in the analysis,
325
GCB or ChloroFiltr can be used as an effective chlorophyll-remover.
10, 43
but the
326
Considering acceptance criteria for accuracy and precision (70–120%, RSD ≤ 20 %), the
327
general dSPE containing PSA gave a slightly higher satisfactory ratio for overall pesticides.
328
The percentage of acceptance criteria were 93.8% in PSA only, followed by 2.5 mg of GCB
329
with PSA (92.2 %), 7.5 mg of GCB with PSA (85.5 %) and ChloroFiltr with PSA (74.5 %).
330
To demonstrate whether the remaining chlorophyll and interferences in the sample
331
extract affect analysis after the simple general dSPE containing PSA clean-up, spinach
332
samples (0.01 mg/kg of matrix-matched standard) were injected into GC 50 times,
333
consecutively. The results (Supporting Figure S3) showed that the average area of 360
334
pesticides was not changed with 3.0% of RSD. These data indicated that co-extractives
335
(chlorophyll) from the spinach would not affect repeatability or recoveries in routine
336
analysis as Lehotay et al. reported that the chlorophyll had no influence on the GC-MS
337
analysis.10 Furthermore, it was expected that chlorophyll in extracts may help to keep the 15
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338
priming effects mentioned above. As a result, it was confirmed that the general dSPE
339
containing PSA and MgSO4 was the best cleanup option for this multi-residual analysis.
340
Finally, the general dSPE was used for the method validation in this study.
341
Method Validation. To validate the optimized sample treatment method (ACN with 0.1%
342
formic acid extraction and clean-up with the general dSPE containing PSA and MgSO4),
343
recoveries of each compound were investigated by fortifying 360 pesticides into four
344
untreated samples (brown rice, orange, spinach, and potato) at 0.05 and 0.01 mg/kg (n=6).
345
Matrix-dependent LOQ and linearity (r2) were calculated by matrix-matched calibration
346
from each commodity (Supporting Table S2). For the most pesticides (349, 344, 349, and
347
347 in brown rice, orange, spinach, and potato, respectively) out of 360 compounds, LOQs
348
were < 0.01 mg/kg. Twelve pesticides (binapacryl, captafol, captan, carbofuran,
349
carbosulfan, cinmethylin, dichlofluanid, hexythiazox, imazalil, propargite, tolfenpyrad, and
350
vernolate) were not separated properly due to matrix interference, degradation and broad
351
and tailing peak shape. Base-sensitive and thermally unstable compounds (e.g., captan,
352
captafol, dichlofluanid, and imazalil) gave no detectable peaks at low concentration in all
353
the matrices, which was consistent with the results from previous studies.10, 32, 36, 41, 46 The
354
linear correlation coefficients (r2) were > 0.99 within the range of 1–100 µg/kg for all the
355
pesticides except chlorothalonil, etridiazole, fluazinam, nitrapyrin, phenothrin, and
356
problematic compounds mentioned in LOQ estimation.
357
Based on the acceptability criteria of DG-SANTE guideline24, the recoveries in four
358
commodities were summarized in Figure 3. The percentages (of 360 pesticides) satisfied
359
the validation criteria (recovery; 70 to 120% with RSD < 20%) were in the range of 88.6–
360
95.3% (0.01 mg/kg level) and 93.6–97.2% (0.05 mg/kg level), indicating that excellent 16
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results were achieved. Details of the accuracy and precision data in all of the samples and
362
analytes are also presented in Supporting Table S3.
363
Because of low sample amount (5 g) of brown rice comparing to the other crop samples
364
(10 g), recoveries from brown rice sample at the low spiking level (0.01 mg/kg level)
365
showed a relatively low frequency (88.6%). For example, at the low spiking level in brown
366
rice, some compounds such as bendiocarb, ethiofencarb, fosthiazate, phosphamidon,
367
tetrachlorvinphos, and zoxamide gave low signal intensities, resulting in insufficient
368
recoveries, however these pesticides at higher spiking level (0.05 mg/kg) were successful
369
quantified.
370
Apart from the problematic pesticides in LOQ estimation and linearity calculation, some
371
pesticides including carbaryl, chlorothalonil, cafenstrole, cyflumetofen, and folpet gave
372
lower recoveries in all the crop samples. Chlorothalonil is known to be degraded in
373
QuEChERS methods due to its base-labile property9-10, 37 and it was reported that the ethyl
374
acetate extraction or acetone extraction with EDTA as a stabilizing reagent could improve
375
the recoveries of chlorothalonil.47-48 Carbamate pesticides (e.g., carbaryl and carbosulfan)
376
easily break down on GC injector, causing relatively low responses and unstable recoveries
377
in GC-MS/MS. Therefore, it was concluded that these pesticides are more LC amenable as
378
reported in the other studies. 25, 43, 49-50 Ethoxyquin and fluazinam also gave poor recoveries
379
in all the matrices except orange due to matrix interferences, as previously reported.36, 38, 51
380
Real samples including domestic or imported agricultural produce (brown rice (5),
381
spinach (3), oranges (4), and potatoes (5)) were analyzed using the optimized method. Out
382
of 360 pesticides, 14 pesticides were identified in 11 incurred samples (Supporting Table
383
S4). No pesticide was detected in potato samples. The levels of pesticides identified in all 17
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384
samples were lower than MRLs by Korean legislation.52 Trace levels of several pesticides
385
including azoxystrobin, difenoconazole, fenoxanil, tebuconazole, thifluzamide, triazophos,
386
hexaconazole, and isoprothiolane were found in four brown rice samples. Dimethomorph
387
was detected in all the spinach samples (0.004–7.60 mg/kg). Indoxacarb was also found in
388
one spinach sample with the highest concentration (0.81 mg/kg).
389
Matrix Effect. ME (%) is a major concern in GC-MS/MS because it has been observed
390
significantly due to interaction between active sites of liner or column and target analytes or
391
matrix components. The ME depends on the nature of pesticide, extraction method, and
392
analytical instrument as well as the sample matrix.53-55
393
To evaluate the ME, the slope of each matrix-matched calibration curve for individual
394
pesticides was compared with that from solvent-only calibration curve. A positive value of
395
ME was considered as signal enhancement, whereas negative value was considered as
396
signal suppression. Figure 4 shows the distribution of MEs of the target analytes in four
397
matrices. Absolute values of ME are listed in Supporting Table S3. Except a few
398
pesticides, the significant enhancement was observed for the most of the target analytes in
399
all the matrices. When the MEs are divided into several ranges (1–300%) (Figure 4), many
400
out of 360 pesticides analyzed in brown rice (40% out of 360 pesticides), orange (38%),
401
and spinach (38%) were in the 50–100% ME ranges. However, 54% of the target pesticides
402
in potato was in the range of 0–50%, indicating relatively low MEs. This was also
403
consistent with other studies showing that potato gave a relatively low ME in the GC
404
analysis.41, 56 The strong enhancements (more than 100% of ME value) were observed for
405
43, 40, 37, and 23% of the target compounds in brown rice, orange, spinach, and potato,
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respectively. These results strongly confirmed the importance of matrix-matched
407
calibration for proper quantitation of compounds. High matrix effects in GC-MS/MS were not surprising as previous studies showed.18, 41,
408 409
57
410
and metal ion), leading to decreased signal intensity. On the other hand, matrix components
411
could shield active sites and help to deliver pesticide to GC detector. Consequently,
412
increased peak intensities were obtained in matrix matched standard. The use of analyte
413
protectant (AP) has been known to compensate the matrix effect, providing improved peak
414
intensity and shape. However, we did not use the AP because it requires additional
415
analytical step (adding AP solution) and specific management for a GC syringe to prevent
416
contamination by AP as well as it could increase the undesirable complexity in
417
chromatograms.41 Because pesticide-free matrices or the exactly same matrix as the target
418
sample is not always available for preparation of matrix-matched standards in routine
419
analysis, AP would play an important role in decreasing matrix effects.
420
Supporting Information Available: The optimized GC-MS/MS parameters; Matrix-
421
dependent limits of quantitation (LOQs), linearity, and matrix effects (MEs); Validation
422
data and matrix effects (MEs); Result of real sample analysis (Table S1-S4), Relative peak
423
area of orange extracts for priming effects; SRM chromatograms in different extraction
424
solvents; Distribution of relative peak area during 50 consecutive injections of spinach
425
matrix matched standard (Figure S1-S3).
Many active sites presented in the GC system might interact with analytes (e.g. silanol
19
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426
FUNDING SOURCES
427
This study was carried out under the financial support by the Korean Ministry of Food and
428
Drug Safety (13162foodsafety010).
429
NOTES
430
The authors declare no competing financial interest.
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Journal of Agricultural and Food Chemistry
REFERENCES (1)
Alder, L.; Greulich, K.; Kempe, G.; Vieth, B., Residue analysis of 500 high priority
pesticides: Better by GC–MS or LC–MS/MS? Mass Spectrom. Rev. 2006, 25, 838-865. (2)
Rajski, Ł.; Lozano, A.; Uclés, A.; Ferrer, C.; Fernández-Alba, A. R., Determination
435
of pesticide residues in high oil vegetal commodities by using various multi-residue
436
methods and clean-ups followed by liquid chromatography tandem mass spectrometry. J.
437
Chromatogr. A 2013, 1304, 109-120.
438 439 440
(3)
Mastovská, K.; Lehotay, S. J., Practical approaches to fast gas chromatography-
mass spectrometry. J. Chromatogr. A 2003, 1000, 153-180. (4)
Rossi, S.-A.; Johnson, J. V.; Yost, R. A., Optimization of short-column gas
441
chromatography/electron ionization mass spectrometry conditions for the determination of
442
underivatized anabolic steroids. Biol. Mass Spectrom. 1992, 21, 420-430.
443
(5)
Banerjee, K.; Utture, S., Recent developments in gas chromatography–mass
444
spectrometry. In Mass Spectrometry for the Analysis of Pesticide Residues and Their
445
Metabolites, John Wiley & Sons, Inc: Hoboken, NJ, 2015; pp 91-112.
446
(6)
Anastassiades, M.; Maštovská, K.; Lehotay, S. J., Evaluation of analyte protectants
447
to improve gas chromatographic analysis of pesticides. J. Chromatogr. A 2003, 1015, 163-
448
184.
449
(7)
Anastassiades, M.; Lehotay, S. J.; Stajnbaher, D.; Schenck, F. J., Fast and easy
450
multiresidue method employing acetonitrile extraction/partitioning and "dispersive solid-
451
phase extraction" for the determination of pesticide residues in produce. J. AOAC Int. 2003,
452
86, 412-431.
21
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
453
(8)
Wong, J. W.; Zhang, K.; Tech, K.; Hayward, D. G.; Makovi, C. M.; Krynitsky, A. J.;
454
Schenck, F. J.; Banerjee, K.; Dasgupta, S.; Brown, D., Multiresidue pesticide analysis in
455
fresh produce by capillary gas chromatography−mass spectrometry/selective ion
456
monitoring (GC-MS/SIM) and −tandem mass spectrometry (GC-MS/MS). J. Agric. Food
457
Chem. 2010, 58, 5868-5883.
458
(9)
Chamkasem, N.; Ollis, L. W.; Harmon, T.; Lee, S.; Mercer, G., Analysis of 136
459
pesticides in avocado using a modified QuEChERS method with LC-MS/MS and GC-
460
MS/MS. J. Agric. Food Chem. 2013, 61, 2315-2329.
461
(10) Lehotay, S. J.; Maštovská, K.; Lightfield, A. R., Use of buffering and other means
462
to improve results of problematic pesticides in a fast and easy method for residue analysis
463
of fruits and vegetables. J. AOAC Int. 2005, 88, 615-629.
464
(11) Li, L.; Li, W.; Qin, D.; Jiang, S.; Liu, F., Application of graphitized carbon black to
465
the QuEChERS method for pesticide multiresidue analysis in spinach. J. AOAC Int. 2009,
466
92, 538-547.
467
(12) Walorczyk, S.; Drożdżyński, D.; Kierzek, R., Determination of pesticide residues in
468
samples of green minor crops by gas chromatography and ultra performance liquid
469
chromatography coupled to tandem quadrupole mass spectrometry. Talanta 2015, 132, 197-
470
204.
471
(13) Walorczyk, S.; Drożdżyński, D.; Kierzek, R., Two-step dispersive-solid phase
472
extraction strategy for pesticide multiresidue analysis in a chlorophyll-containing matrix by
473
gas chromatography–tandem mass spectrometry. J. Chromatogr. A 2015, 1412, 22-32.
474
(14) Zou, N.; Han, Y.; Li, Y.; Qin, Y.; Gu, K.; Zhang, J.; Pan, C.; Li, X., Multiresidue
475
Method for Determination of 183 Pesticide Residues in Leeks by Rapid Multiplug 22
ACS Paragon Plus Environment
Page 22 of 38
Page 23 of 38
Journal of Agricultural and Food Chemistry
476
Filtration Cleanup and Gas Chromatography–Tandem Mass Spectrometry. J. Agric. Food
477
Chem. 2016, 64, 6061-6070.
478
(15) Han, Y.; Song, L.; Zou, N.; Qin, Y.; Li, X.; Pan, C., Rapid multiplug filtration
479
cleanup method for the determination of 124 pesticide residues in rice, wheat, and corn. J.
480
Sep. Sci. 2017, 40, 878-884.
481
(16) He, Z.; Chen, S.; Wang, L.; Peng, Y.; Luo, M.; Wang, W.; Liu, X., Multiresidue
482
analysis of 213 pesticides in leek and garlic using QuEChERS-based method and gas
483
chromatography-triple quadrupole mass spectrometry. Anal. Bioanal. Chem. 2015, 407,
484
2637-2643.
485
(17) He, Z.; Wang, L.; Peng, Y.; Luo, M.; Wang, W.; Liu, X., Multiresidue analysis of
486
over 200 pesticides in cereals using a QuEChERS and gas chromatography–tandem mass
487
spectrometry-based method. Food Chem. 2015, 169, 372-380.
488
(18) Cho, J.; Lee, J.; Lim, C.-U.; Ahn, J., Quantification of pesticides in food crops using
489
QuEChERS approaches and GC-MS/MS. Food Addit. Contam., Part A 2016, 33, 1803-
490
1816.
491
(19) Holmes, B.; Dunkin, A.; Schoen, R.; Wiseman, C., single-laboratory ruggedness
492
testing and validation of a modified QuEChERS approach To quantify 185 pesticide
493
residues in salmon by liquid chromatography– and gas chromatography–tandem mass
494
spectrometry. J. Agric. Food Chem. 2015, 63, 5100-5106.
495
(20) Pang, G.-F.; Cao, Y.-Z.; Fan, C.-L.; Jia, G.-Q.; Zhang, J.-J.; Li, X.-M.; Liu, Y.-M.;
496
Shi, Y.-Q.; Li, Z.-Y.; Zheng, F.; Lian, Y.-J., Analysis Method Study on 839 Pesticide and
497
Chemical
498
Chromatography Cleanup, GC/MS, and LC/MS/MS. J. AOAC Int. 2009, 92, S1-S72.
Contaminant
Multiresidues
in
Animal
Muscles
23
ACS Paragon Plus Environment
by
Gel
Permeation
Journal of Agricultural and Food Chemistry
Page 24 of 38
499
(21) Hayward, D. G.; Wong, J. W.; Shi, F.; Zhang, K.; Lee, N. S.; DiBenedetto, A. L.;
500
Hengel, M. J., Multiresidue Pesticide Analysis of Botanical Dietary Supplements Using
501
Salt-out Acetonitrile Extraction, Solid-Phase Extraction Cleanup Column, and Gas
502
Chromatography–Triple Quadrupole Mass Spectrometry. Anal. Chem. 2013, 85, 4686-4693.
503
(22) Lehotay, S. J., Determination of pesticide residues in foods by acetonitrile
504
extraction and partitioning with magnesium sulfate: collaborative study. J. AOAC Int. 2007,
505
90, 485-520.
506
(23) Foods of plant origin-determination of pesticide residues using GC–MS and/or LC–
507
MS/MS following acetonitrile extraction/partitioning and clean-up by dispersive SPE-
508
QuEChERS-method. In EN 15662, 2008; Vol. EN 15662.
509
(24) Guidance document on analytical quality control and validation procedures for
510
pesticide
residues
analysis
in
food
and
feed
SANTE/11945/2015.
511
https://ec.europa.eu/food/sites/food/files/plant/docs/pesticides_mrl_guidelines_wrkdoc_119
512
45.pdf (accessed Mar 1, 2017).
513
(25) Lozano, A.; Kiedrowska, B.; Scholten, J.; de Kroon, M.; de Kok, A.; Fernández-
514
Alba, A. R., Miniaturisation and optimisation of the Dutch mini-Luke extraction method for
515
implementation in the routine multi-residue analysis of pesticides in fruits and vegetables.
516
Food Chem. 2016, 192, 668-681.
517
(26) Walorczyk, S., Development of a multi-residue screening method for the
518
determination of pesticides in cereals and dry animal feed using gas chromatography–triple
519
quadrupole tandem mass spectrometry. J. Chromatogr. A 2007, 1165, 200-212.
24
ACS Paragon Plus Environment
Page 25 of 38
Journal of Agricultural and Food Chemistry
520
(27) Schenck, F. J.; Lehotay, S. J., Does further clean-up reduce the matrix enhancement
521
effect in gas chromatographic analysis of pesticide residues in food? J. Chromatogr. A 2000,
522
868, 51-61.
523
(28) Patel, K.; Fussell, R. J.; Hetmanski, M.; Goodall, D. M.; Keely, B. J., Evaluation of
524
gas chromatography-tandem quadrupole mass spectrometry for the determination of
525
organochlorine pesticides in fats and oils. J. Chromatogr. A 2005, 1068, 289-296.
526
(29) Rizzetti, T. M.; Kemmerich, M.; Martins, M. L.; Prestes, O. D.; Adaime, M. B.;
527
Zanella, R., Optimization of a QuEChERS based method by means of central composite
528
design for pesticide multiresidue determination in orange juice by UHPLC–MS/MS. Food
529
Chem. 2016, 196, 25-33.
530
(30) Bresin, B.; Piol, M.; Fabbro, D.; Mancini, M. A.; Casetta, B.; Del Bianco, C.,
531
Analysis of organo-chlorine pesticides residue in raw coffee with a modified “quick easy
532
cheap effective rugged and safe” extraction/clean up procedure for reducing the impact of
533
caffeine on the gas chromatography–mass spectrometry measurement. J. Chromatogr. A
534
2015, 1376, 167-171.
535
(31) Grande-Martínez, Á.; Arrebola-Liébanas, F. J.; Martínez-Vidal, J. L.; Hernández-
536
Torres, M. E.; Garrido-Frenich, A., Optimization and validation of a multiresidue pesticide
537
method in rice and wheat flour by modified QuEChERS and GC–MS/MS. Food Anal.
538
Methods 2016, 9, 548-563.
539
(32) Koesukwiwat, U.; Lehotay, S. J.; Leepipatpiboon, N., Fast, low-pressure gas
540
chromatography triple quadrupole tandem mass spectrometry for analysis of 150 pesticide
541
residues in fruits and vegetables. J. Chromatogr. A 2011, 1218, 7039-7050.
25
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
542
(33) Sack, C.; Vonderbrink, J.; Smoker, M.; Smith, R. E., Determination of acid
543
herbicides using modified QuEChERS with fast switching ESI+/ESI– LC-MS/MS. J. Agric.
544
Food Chem. 2015, 63, 9657-9665.
545
(34) Vázquez, P. P.; Lozano, A.; Uclés, S.; Ramos, M. M. G.; Fernández-Alba, A. R., A
546
sensitive and efficient method for routine pesticide multiresidue analysis in bee pollen
547
samples using gas and liquid chromatography coupled to tandem mass spectrometry. J.
548
Chromatogr. A 2015, 1426, 161-173.
549
(35) Walorczyk, S., Application of gas chromatography/tandem quadrupole mass
550
spectrometry to the multi-residue analysis of pesticides in green leafy vegetables. Rapid
551
Commun. Mass Spectrom. 2008, 22, 3791-3801.
552
(36) Jadhav, M. R.; Oulkar, D. P.; Shabeer T. P, A.; Banerjee, K., Quantitative screening
553
of agrochemical residues in fruits and vegetables by buffered ethyl acetate extraction and
554
LC-MS/MS analysis. J. Agric. Food Chem. 2015, 63, 4449-4456.
555
(37) Walorczyk, S.; Drożdżyński, D., Improvement and extension to new analytes of a
556
multi-residue method for the determination of pesticides in cereals and dry animal feed
557
using gas chromatography–tandem quadrupole mass spectrometry revisited. J. Chromatogr.
558
A 2012, 1251, 219-231.
559
(38) Chen, Y.; Lopez, S.; Hayward, D. G.; Park, H. Y.; Wong, J. W.; Kim, S. S.; Wan, J.;
560
Reddy, R. M.; Quinn, D. J.; Steiniger, D., Determination of multiresidue pesticides in
561
botanical dietary supplements using gas chromatography–triple-quadrupole mass
562
spectrometry (GC-MS/MS). J. Agric. Food Chem. 2016, 64, 6125-6132.
26
ACS Paragon Plus Environment
Page 26 of 38
Page 27 of 38
Journal of Agricultural and Food Chemistry
563
(39) Hayward, D. G.; Wong, J. W.; Park, H. Y., Determinations for pesticides on black,
564
green, oolong, and white teas by gas chromatography triple-quadrupole mass spectrometry.
565
J. Agric. Food Chem. 2015, 63, 8116-8124.
566
(40) Hou, X.; Lei, S.; Guo, L.; Qiu, S., Optimization of a multi-residue method for 101
567
pesticides in green tea leaves using gas chromatography–tandem mass spectrometry. Rev.
568
Bras. Farmacogn. 2016, 26, 401-407.
569
(41) Koesukwiwat, U.; Lehotay, S. J.; Miao, S.; Leepipatpiboon, N., High throughput
570
analysis of 150 pesticides in fruits and vegetables using QuEChERS and low-pressure gas
571
chromatography–time-of-flight mass spectrometry. J. Chromatogr. A 2010, 1217, 6692-
572
6703.
573
(42) Aznar, R.; Albero, B.; Sánchez-Brunete, C.; Miguel, E.; Martín-Girela, I.; Tadeo, J.
574
L., Simultaneous determination of multiclass emerging contaminants in aquatic plants by
575
ultrasound-assisted matrix solid-phase dispersion and GC-MS. Environ. Sci. Pollut. Res.
576
2016, 23, 1-10.
577
(43) Mol, H. G. J.; Rooseboom, A.; van Dam, R.; Roding, M.; Arondeus, K.; Sunarto, S.,
578
Modification and re-validation of the ethyl acetate-based multi-residue method for
579
pesticides in produce. Anal. Bioanal. Chem. 2007, 389, 1715-1754.
580
(44) Shimelis, O.; Yang, Y.; Stenerson, K.; Kaneko, T.; Ye, M., Evaluation of a solid-
581
phase extraction dual-layer carbon/primary secondary amine for clean-up of fatty acid
582
matrix components from food extracts in multiresidue pesticide analysis. J. Chromatogr. A
583
2007, 1165, 18-25.
584 585
(45) Lehotay, S. J.; Mastovska, K.; Yun, S. J., Evaluation of two fast and easy methods for pesticide residue analysis in fatty food matrixes. J AOAC Int 2005, 88, 630-638. 27
ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
586
(46) Savant, R. H.; Banerjee, K.; Utture, S. C.; Patil, S. H.; Dasgupta, S.; Ghaste, M. S.;
587
Adsule, P. G., Multiresidue Analysis of 50 Pesticides in Grape, Pomegranate, and Mango
588
by Gas Chromatography−Ion Trap Mass Spectrometry. J. Agric. Food Chem. 2010, 58,
589
1447-1454.
590
(47) Belmonte Valles, N.; Retamal, M.; Martinez-Uroz, M. A.; Mezcua, M.; Fernandez-
591
Alba, A. R.; de Kok, A., Determination of chlorothalonil in difficult-to-analyse vegetable
592
matrices using various multiresidue methods. Analyst 2012, 137, 2513-2520.
593
(48) Peruga, A.; Barreda, M.; Beltrán, J.; Hernández, F., A robust GC-MS/MS method
594
for the determination of chlorothalonil in fruits and vegetables. Food Addit. Contam., Part
595
A 2013, 30, 298-307.
596
(49) Morris, B. D.; Schriner, R. B., Development of an automated column solid-phase
597
extraction cleanup of QuEChERS extracts, using a zirconia-based sorbent, for pesticide
598
residue analyses by LC-MS/MS. J. Agric. Food Chem. 2015, 63, 5107-5119.
599
(50) Niell, S.; Cesio, V.; Hepperle, J.; Doerk, D.; Kirsch, L.; Kolberg, D.; Scherbaum, E.;
600
Anastassiades, M.; Heinzen, H., QuEChERS-based method for the multiresidue analysis of
601
pesticides in beeswax by LC-MS/MS and GC×GC-TOF. J. Agric. Food Chem. 2014, 62,
602
3675-3683.
603
(51) Zhao, M.-A.; Feng, Y.-N.; Zhu, Y.-Z.; Kim, J.-H., Multi-residue method for
604
determination of 238 pesticides in chinese cabbage and cucumber by liquid
605
chromatography–tandem mass spectrometry: comparison of different purification
606
procedures. J. Agric. Food Chem. 2014, 62, 11449-11456.
28
ACS Paragon Plus Environment
Page 28 of 38
Page 29 of 38
607
Journal of Agricultural and Food Chemistry
(52) Korean
Pesticides
MRLs
in
Food;
2016;.
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http://www.mfds.go.kr/eng/eng/download.do?boardCode=17837&boardSeq=71065&fileSe
609
q=1 (last accessed Dec 12, 2016).
610
(53) Kittlaus, S.; Schimanke, J.; Kempe, G.; Speer, K., Assessment of sample cleanup
611
and matrix effects in the pesticide residue analysis of foods using postcolumn infusion in
612
liquid chromatography–tandem mass spectrometry. J. Chromatogr. A 2011, 1218, 8399-
613
8410.
614
(54) Ferrer, C.; Lozano, A.; Agüera, A.; Girón, A. J.; Fernández-Alba, A. R.,
615
Overcoming matrix effects using the dilution approach in multiresidue methods for fruits
616
and vegetables. J. Chromatogr. A 2011, 1218, 7634-7639.
617
(55) De Sousa, F. A.; Guido Costa, A. I.; de Queiroz, M. E. L. R.; Teófilo, R. F.; Neves,
618
A. A.; de Pinho, G. P., Evaluation of matrix effect on the GC response of eleven pesticides
619
by PCA. Food Chem. 2012, 135, 179-185.
620
(56) Uclés, S.; Belmonte, N.; Mezcua, M.; Martínez, A. B.; Martinez-Bueno, M. J.;
621
Gamón, M.; Fernández-Alba, A. R., Validation of a multiclass multiresidue method and
622
monitoring results for 210 pesticides in fruits and vegetables by gas chromatography-triple
623
quadrupole mass spectrometry. J. Environ. Sci. Health, Part B 2014, 49, 557-568.
624
(57) Lozano, A.; Rajski, Ł.; Uclés, S.; Belmonte-Valles, N.; Mezcua, M.; Fernández-
625
Alba, A. R., Evaluation of zirconium dioxide-based sorbents to decrease the matrix effect in
626
avocado and almond multiresidue pesticide analysis followed by gas chromatography
627
tandem mass spectrometry. Talanta 2014, 118, 68-83.
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FIGURE CAPTIONS
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Figure 1. SRM TIC of 360 pesticides at 0.01 µg/mL solvent standard mixture (a) and
631
individual chromatograms of profuralin (b), fenthion (c), procymidone (d), and bifenthrin (e)
632
corresponding to 30-m narrow bore (I) and 20-m microbore column (II).
633 634
Figure 2. Priming effects after replacing a new inlet liner in GC. Relative peak area of
635
solvent standard mixture (0.1 mg/kg) before (grey bars) and after (dark grey bars) spinach
636
extract injections. The intensities were compared after each area was normalized by the
637
area of the first injection as 100%. The top arrows indicated the sequence of sample
638
injection.
639 640
Figure 3. Percentages of pesticides satisfying the recovery rates of 70-120% and RSD≤20%
641
at 0.01 and 0.05 mg/kg spike levels, using the optimized method in this study.
642 643
Figure 4. Distribution of matrix effects (MEs) in each commodity. The MEs were assessed
644
by the slope ratios of the matrix-matched calibration curves to solvent-only calibration
645
curves.
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TABLES
647 648 649 650
Table 1. Number of pesticides and percentages with recoveries between 70–120 % with RSD ≤ 20% in recovery results from different extraction solvents for brown rice sample (spiked at 0.01 m/kg, n=3). no. of method
extraction solvent
A
added salts and buffers in partitioning
no. of analytes
% of analytes
ACN
337
93.6
B
0.1% formic acid in ACN
338
93.9
C
1% formic acid in ACN
297
82.5
D
0.1% acetic acid in ACN
321
89.2
E
1% acetic acid in ACN
295
81.9
F
1% acetic acid in ACN
286
79.4
G
ACN
337
93.6
4 g of MgSO4 and 1 g of NaCl
1.5 g of sodium acetate and 6 g of MgSO4 4 g of MgSO4, 1 g of NaCl, 1.5 g of trisodium citrate dehydrate, and 0.5 g of disodium hydrogen citrate sesquihydrate
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Table 2. Recovery results for representative pesticides including planar pesticides in
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spinach matrix (0.01 mg/kg spiking level, n=3) from clean-up with different types of dSPE
653
sorbents. pesticdes
PSA
bendiocarb
49.1 (16.3)
carbofuran chinomethionat
a
a
107.5 (3.9)
96.3 (4.4)
90.3 (5.3)
81.1 (5.7)
70.7 (8.5)
60 (16.9)
26.9 (27.6)
41.3 (51.5)
100.7 (7.8)
87.4 (6.2)
72.3 (12.9)
58.6 (19.5)
99.3 (1.3)
94.1 (3.1)
80.9 (11.4)
81.6 (16)
a
102.5 (3.3)
97.3 (3.8)
91 (4.1)
61.5 (7.7)
a
dimethipin
84.4 (7.9)
84.5 (16.3)
76.3 (4.9)
65.7 (3.9)
edifenphos
98 (8.4)
73.3 (7.1)
54.6 (44)
-b
ethiofencarb
81.9 (5)
68 (13.8)
44.1 (29.9)
-b
formothion
83.1 (4.6)
56.3 (27)
47.3 (21.2)
-b
coumaphos cyprodinil
a
87.7 (5.4)
77.5 (11.9)
68.3 (16.1)
83.1 (0.7)
a
77.3 (6.8)
64.7 (22.7)
65.5 (22.6)
-b
Quintozene % of pesticides (70-120%, ≤20% RSD)
83.1 (5.6)
69.8 (12.2)
58.4 (23.7)
-b
93.8
92.2
85.5
74.5
hexachlorobenzene
pentachlorothioanisole a
654 655
PSA+ 50 mg ChloroFiltr -b
a
chlorothalonil
a
Recovery, % (RSD, %) PSA+ PSA+ 2.5 mg GCB 7.5 mg GCB 44.7 (22.2) 32.6 (36.9)
b
Planar structure pesticides, Pesticides which couldn’t be quantitated due to matrix interference.
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FIGURE GRAPHICS
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Figure 1
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Figure 2
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Journal of Agricultural and Food Chemistry
Figure 3
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Figure 4 brown rice
orange
spinach
potato
60 54
Percentages of pesticides, %
50 40 40
38 38
30 20 21
21
20 12
19 17 17
17 16
14
11 7 7 6 5
10 4 0
7
2 2
0
300
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