Chromatographia DOI 10.1007/s10337-016-3116-y
ORIGINAL
Automated Mini‑Column Solid‑Phase Extraction Cleanup for High‑Throughput Analysis of Chemical Contaminants in Foods by Low‑Pressure Gas Chromatography—Tandem Mass Spectrometry Copyright information
Steven J. Lehotay1 · Lijun Han1,2 · Yelena Sapozhnikova1
©The Author(s) 2016
Received: 8 April 2016 / Accepted: 24 May 2016 © The Author(s) 2016. This article is published with open access at Springerlink.com
Abstract This study demonstrated the application of an automated high-throughput mini-cartridge solid-phase extraction (mini-SPE) cleanup for the rapid low-pressure gas chromatography—tandem mass spectrometry (LPGCMS/MS) analysis of pesticides and environmental contaminants in QuEChERS extracts of foods. Cleanup efficiencies and breakthrough volumes using different mini-SPE sorbents were compared using avocado, salmon, pork loin, and kale as representative matrices. Optimum extract load volume was 300 µL for the 45 mg mini-cartridges containing 20/12/12/1 (w/w/w/w) anh. MgSO4/PSA (primary secondary amine)/C18/CarbonX sorbents used in the final method. In method validation to demonstrate high-throughput capabilities and performance results, 230 spiked extracts of 10 different foods (apple, kiwi, carrot, kale, orange, black olive, wheat grain, dried basil, pork, and salmon) underwent automated mini-SPE cleanup and analysis over the Mention of brand or firm name does not constitute an endorsement by the US Department of Agriculture above others of a similar nature not mentioned. USDA is an equal opportunity provider and employer. Published in the topical collection 5th Latin American Pesticide Residue Workshop with guest editor Steven J. Lehotay. Electronic supplementary material The online version of this article (doi:10.1007/s10337-016-3116-y) contains supplementary material, which is available to authorized users. * Steven J. Lehotay
[email protected] 1
US Department of Agriculture, Agricultural Research Service, Eastern Regional Research Center, 600 East Mermaid Lane, Wyndmoor, PA 19038, USA
2
College of Science, China Agricultural University, Beijing 100193, China
Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/ licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
course of 5 days. In all, 325 analyses for 54 pesticides and 43 environmental contaminants (3 analyzed together) were conducted using the 10 min LPGC-MS/MS method without changing the liner or retuning the instrument. Merely, 1 mg equivalent sample injected achieved <5 ng g−1 limits of quantification. With the use of internal standards, method validation results showed that 91 of the 94 analytes including pairs achieved satisfactory results (70–120 % recovery and RSD ≤ 25 %) in the 10 tested food matrices (n = 160). Matrix effects were typically less than ±20 %, mainly due to the use of analyte protectants, and minimal human review of software data processing was needed due to summation function integration of analyte peaks. This study demonstrated that the automated mini-SPE + LPGCMS/MS method yielded accurate results in rugged, highthroughput operations with minimal labor and data review. Keywords High-throughput automation · Solid-phase extraction cleanup · Pesticide residue analysis · QuEChERS sample preparation · Fast GC-MS/MS · Analyte protectants · Environmental contaminants · Foods
Introduction Trade of food products continues to increase globally [1], which is leading to greater food safety concerns [2, 3], and recent legislation [4] places greater emphasis on a higher rate of monitoring by private as well as regulatory laboratories to test for pesticide residues and other contaminants in the commodities. However, the cost of monitoring adds to the price of the food to the consumer, and delays in the analysis of perishable items reduces shelf life and sales of the product. Yet, more pesticides are being registered monthly for different crops worldwide [5], while human health and
13
S. J. Lehotay et al.
ecotoxicological risk assessment studies lead to frequent modifications of maximum residue limits (MRLs) [6], which places great demands on labs and methods to achieve high quality results, including analyte identification [7] of an ever expanding scope of ultra-trace contaminants in diverse, complicated food matrices. High economic, legal, and health risks are at stake, and the goal of the routine monitoring lab is to provide accurate results in the most efficient (cost-effective, high-throughput, automated) process possible. Streamlined sample preparation with approaches such as QuEChERS (quick, easy, cheap, effective, rugged, and safe) [8, 9], and expanding scope of analytes to include environmental and emerging contaminants as well as pesticides [10], provides value in both higher sample throughput and savings by performing fewer methods for the same samples. Automation of sample cleanup conducted in parallel with the analytical step typically decreases labor, improves precision, and yields higher sample throughput. As a result, a number of different robotic instruments and approaches are available for automated sample preparation in food analysis applications [11]. Morris and Schriner [12] described an automated mini-cartridge solid-phase extraction (mini-SPE) cleanup approach called “instrument top sample preparation” (ITSP). They developed and demonstrated automated miniSPE of QuEChERS extracts for liquid chromatography– tandem mass spectrometry (LC–MS/MS) analysis of 263 pesticide analytes in avocado, citrus and buttercup squash [12]. Cartridge-based SPE (c-SPE) usually provides better cleanup than dispersive-SPE (d-SPE) that is often incorporated in QuEChERS sample preparation [9]. In manual batch applications, d-SPE is usually cheaper, easier, and faster than traditional c-SPE, especially filter-vial d-SPE which conveniently cleans and filters extracts in autosampler vials [13]. However, online SPE techniques that perform cleanup at the same time as the analytical step have the added potential to reduce analyte degradation possible in batch operations when many hours can pass before final extracts are analyzed in long sequences. Ultrahigh-performance (UHP) LC–MS/MS usually takes about 10–15 min for analysis of hundreds of analytes [14, 15], but conventional gas chromatography (GC)–MS/ (MS) commonly entails 25–50 min per sample [16]. However, low-pressure (LP) GC-MS(/MS) only takes 10 min per analysis of the same number of analytes with an acceptably small loss of separation efficiency, while providing increased sample capacity, sensitivity, and ruggedness [17]. In high-throughput analyses involving both LC- and GCamenable analytes, the sample throughput is limited by the slower method, and LPGC-MS/MS is fast enough to keep pace with UHPLC-MS/MS [18]. The aim of this study was to evaluate, optimize, and validate automated mini-SPE cleanup of QuEChERS extracts,
13
and demonstrate the feasibility of the robotic sample preparation coupled with fast LPGC-MS/MS using analyte protectants and summation function integration to provide high-throughput monitoring of pesticides and other residues in foods with minimal human involvement. A stateof-the-art GC-MS/MS was used to reduce the amount of equivalent sample injected and extend maintenance-free operation of the instrument while still meeting <10 ng g−1 quantification limit requirements.
Experimental Chemicals and Materials HPLC-grade acetonitrile (MeCN) was purchased from Fisher Scientific (Pittsburgh, PA; USA) and deionized water of 18.2 MΩ-cm came from a Barnstead/Thermolyne (Dubuque, IA; USA) E-Pure Model D4641. Ammonium formate (HCO2NH4) was purchased from Sigma-Aldrich (Saint Louis, MO; USA). Pesticide standards were obtained from the Environmental Protection Agency’s National Pesticide Repository (Fort Meade, MD; USA), ChemService (West Chester, PA; USA), or Dr. Ehrenstorfer GmbH (Augsburg; Germany). Standards of 14 flame retardants (FRs), 14 polychlorinated biphenyls (PCBs), and 15 polycyclic aromatic hydrocarbons (PAHs) were purchased from Sigma-Aldrich, AccuStandard (New Haven, CT; USA), and Santa Cruz Biotechnology (Santa Cruz, CA; USA). Table 1 lists all the analytes in the different categories (pesticides, FRs, PCBs, and PAHs). A working standard of the 97 pesticides and environmental contaminants was prepared at 5 ng µL−1 (0.5 ng µL−1 for PCBs) in MeCN solution. This mixed standard served as the highest level spiking solution (100 ng mL−1 in extracts), and it was also used to prepare the 2.5, 1.25, and 0.5 ng µL−1 standard solutions for lower spiking levels (50, 25, and 10 ng mL−1, respectively). For use as internal standards (IS), atrazine-d5 and fenthion-d6 were from C/D/N Isotopes (Pointe-Claire, Quebec; Canada). 13C12-PCB 153 and a PAH mixture of acenaphthylene-d8, benzo[a]pyrene-d12, benzo[g,h,i]perylened12, fluoranthene-d10, naphthalene-d8, phenanthrene-d10, and pyrene-d10 were purchased from Cambridge Isotope Laboratories (Andover, MA; USA). Another IS, 5′-fluoro3,3′,4,4′,5-pentabromodiphenyl ether (FBDE 126), was obtained from AccuStandard. The IS mixture solution was prepared in MeCN solution at 5 ng µL−1 except 0.5 ng µL−1 for 13C12 PCB 153. Analyte protectants (APs) [19] containing 25 mg mL−1 ethylglycerol, 2.5 mg mL−1 each of gulonolactone and d-sorbitol, and 1.25 mg mL−1 shikimic acid (all from Sigma-Aldrich) was prepared in 3/2 (v/v) MeCN/water
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of… Table 1 Parameters in LPGC-MS/MS analysis of the 94 analytes including three pairs (CE collision energy) Nos.
Analyte
MS/MS segment
tR (min)
Quantifier ion (m/z)
CE (V)
Qualifier ion (m/z)
CE (V) Internal standard (IS)
Pesticides 1
Acephate
2
3.275
136 → 42
10
136 → 94
10
Atrazine-d5
2
Aldrin
4
4.600
263 → 193
40
263 → 228
20
Atrazine-d5
3
Atrazine
3
3.999
215 → 200
10
215 → 138
10
Atrazine-d5
4
Bifenthrin
7, 8
5.479
181 → 165
30
181 → 166
15
Atrazine-d5
5
Carbofuran
3
3.985
164 → 103
25
164 → 149
5
Atrazine-d5
6
Carbophenothion
6
5.259
342 → 157
5
157 → 75
40
Atrazine-d5
7
Chlorothalonil
3
4.220
266 → 133
40
266 → 168
25
Atrazine-d5
8
Chlorpyrifos
4
4.581
199 → 171
20
314 → 258
20
Atrazine-d5
9
Coumaphos
8, 9
5.890
362 → 109
15
362 → 81
40
Atrazine-d5
10
Cyfluthrina
8
5.857
163 → 127
5
163 → 91
15
Atrazine-d5
11
Cypermethrina
9
6.043
181 → 152
20
163 → 91
15
Atrazine-d5
12
Cyprodinil
4
4.712
224 → 208
25
224 → 197
25
Atrazine-d5
13
o,p′-DDE
4
4.867
246 → 176
35
318 → 248
25
Atrazine-d5
14
p,p′-DDE Deltamethrina
5
5.004
246 → 176
35
318 → 248
25
Atrazine-d5
15
8, 9
6.435
181 → 152
25
181 → 127
25
Atrazine-d5
16
Diazinon
3
4.111
179 → 137
20
304 → 179 15
Atrazine-d5
17
Dicrotophos
2
3.828
127 → 109
10
127 → 95
15
Atrazine-d5
18
Dimethoate
3
3.978
93 → 63
5
125 → 93
15
Atrazine-d5
19
Diphenylamine
2
3.736
169 → 168
10
169 → 140
40
Atrazine-d5
20
Endosulfan I
4
4.956
241 → 206
15
241 → 170
30
Atrazine-d5
21
Endosulfan II
5, 6
5.165
241 → 206
15
241 → 170
30
Atrazine-d5
22
Endosulfan sulfate
6, 7
5.323
387 → 253
15
387 → 206
30
Atrazine-d5
23
Esfenvaleratea
9
6.259
167 → 125
5
167 → 89
35
Atrazine-d5
24
Ethalfluralin
2, 3
3.771
276 → 202
15
276 → 105
25
Atrazine-d5
25
Ethoprop
2
3.749
242 → 158
5
242 → 127
10
Atrazine-d5
26
Fenpropathrin
7, 8
5.493
181 → 152
20
181 → 77
40
Atrazine-d5
27
Fipronil
4
4.751
367 → 213
35
367 → 255
20
Atrazine-d5
28
Flutriafol
4, 5
4.954
219 → 123
20
219 → 95
40
Atrazine-d5
29
Heptachlor
4
4.430
272 → 237
20
272 → 117
35
Atrazine-d5
30
Heptachlor epoxide
4
4.775
353 → 263
15
353 → 253
25
Atrazine-d5
31
Heptenophos
2
3.611
124 → 89
10
124 → 63
35
Atrazine-d5
32
Hexachlorobenzene (HCB)
3
3.981
284 → 214
35
284 → 249
20
Atrazine-d5
33
Imazalil
5
4.986
215 → 173
10
215 → 145
30
Atrazine-d5
34
Kresoxim-methyl
5
5.019
116 → 89
20
206 → 131
20
Atrazine-d5
35
Lindane (γ-BHC or γ-HCH)
3
4.092
219 → 183
5
183 → 147
15
Atrazine-d5
36
Methamidophos
1
2.855
141 → 95
5
95 → 79
10
Atrazine-d5
37
Methoxychlor
7, 8
5.507
227 → 169
30
227 → 141
30
Atrazine-d5
38
Mirex
8
5.728
272 → 237
15
272 → 143
40
Atrazine-d5
39
Myclobutanil
5
5.016
179 → 125
15
179 → 90
35
Atrazine-d5
40
cis-Nonachlor
6
5.208
409 → 300
25
409 → 145
15
Atrazine-d5
41
5 2
4.962
409 → 300
25
409 → 145
15
Atrazine-d5
42
trans-Nonachlor Omethoate
3.666
110 → 79
15
156 → 110
5
Atrazine-d5
43
Penconazole
4
4.742
159 → 89
35
248 → 157
25
Atrazine-d5
44
Pentachlorothioanisole
3
3.996
280 → 237
20
280 → 265
10
Atrazine-d5
8, 9
5.835
183 → 168
15
183 → 153
15
Atrazine-d5
2
3.485
170 → 115
35
170 → 141
20
Atrazine-d5
6, 7
5.357
176 → 103
25
176 → 131
10
Atrazine-d5
45
Permethrin (cis + trans)
46
o-Phenylphenol Piperonyl butoxide
47
a
13
S. J. Lehotay et al. Table 1 continued Analyte
MS/MS segment
tR (min)
Quantifier ion (m/z)
CE (V)
Qualifier ion (m/z)
CE (V) Internal standard (IS)
48
Propargite
6, 7
5.353
135 → 107
10
135 → 95
10
Atrazine-d5
49
Pyridaben
8, 9
5.865
147 → 117
20
147 → 91
40
Atrazine-d5
50
Pyriproxyfen
8
5.634
136 → 78
30
136 → 96
10
Atrazine-d5
51
Tebuconazole
6, 7
5.357
251 → 125
20
251 → 127
25
Atrazine-d5
52
Tetraconazole
4
4.599
336 → 218
15
336 → 156
30
Atrazine-d5
53
Thiabendazole
4
4.939
201 → 174
15
174 → 65
30
Atrazine-d5
54
Tribufos
5
4.982
169 → 113
10
169 → 95
30
Atrazine-d5
10 11 9 6, 7
7.205 8.300 6.315 5.289
720 → 562 272 → 237 468 → 308 500 → 406
20 20 40 40
720 → 560 272 → 235 468 → 310 500 → 261
20 20 30 40
FBDE 126 FBDE 126 FBDE 126
6 8, 9
5.210 5.994
486 → 407 421 → 393
30 10
486 → 326 421 → 314
30 20
FBDE 126 FBDE 126
4, 5
4.901
267 → 105
30
267 → 91
30
Atrazine-d5
4
4.702
267 → 79
40
267 → 105
40
Atrazine-d5
Nos.
Flame retardants (FRs) 1 BDE 183 2 Dechlorane plus (syn and anti)a 3 PBB 153 4 Pentabromoethylbenzene (PBEB) 5 Pentabromotoluene (PBT) 6 2-Ethylhexyl-2,3,4,5-tetrabromobenzoate (TBB) 7 1,2,5,6-Tetrabromocyclooctane (TBCO) 8 1,2-Dibromo-4-(1,2-dibromoethyl) cyclohexane (TBECH)
Atrazine-d5
9
Tribromoneopentyl alcohol (TBNPA)
2
3.665
214 → 133
10
214 → 135
10
Atrazine-d5
10
1,2,4,5-Tetrabromo-3,6-dimeth- 4 ylbenzene (TBX)
4.809
422 → 102
40
422 → 182
40
Atrazine-d5
11
tris(2-chloroethyl)phosphate (TCEP)
3
4.015
249 → 63
20
249 → 99
20
Atrazine-d5
12
tris(1-chloro-2-propyl)phosphate (TCPP)
3
4.127
277 → 125
20
277 → 99
20
Atrazine-d5
13
tris(1,3-dichloro-2-propyl) phosphate (TDCPP)
6, 7
5.248
381 → 159
20
381 → 79
20
Atrazine-d5
14
Triphenyl phosphate (TPP)
6, 7
5.380
326 → 169
30
326 → 77
30
Atrazine-d5
2
3.465
153 → 152
30
153 → 151
30
Acenaphthalened8
Polycyclic aromatic hydrocarbons (PAHs) 1 Acenaphthene 2
Acenaphthylene
2
3.380
152 → 151
30
152 → 126
20
Acenaphthylene-d8
3
Anthracene
4
4.183
178 → 176
40
178 → 152
40
Phenanthrened10
4
Benz(a)anthracene + chrysene
7, 8
5.563
228 → 226
25
228 → 227
25
5
Benzo(a)pyrene
9
6.231
252 → 250
40
252 → 226
40
Pyrene-d10 Benzo(a)pyrened12
6
Benzo(b + k)fluoranthene
8
6.064
252 → 250
40
252 → 226
40
Benzo(a)pyrened12
7
Benzo(g,h,i)perylene
10
7.115
276 → 274
40
276 → 275
40
Benzo(g,h,i) perylene-d12
8
Dibenz(a,h)anthracene
10
6.985
278 → 252
40
278 → 250
40
Benzo(a)pyrened12
9
Fluoranthene
4
4.809
202 → 200
40
202 → 201
40
10
Fluorene
2
3.675
165 → 164
30
165 → 163
30
Fluoranthene-d10 Phenanthrened10
13
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of… Table 1 continued Analyte
MS/MS segment
tR (min)
Quantifier ion (m/z)
CE (V)
Qualifier ion (m/z)
CE (V) Internal standard (IS)
11
Indeno(1,2,3-c,d)pyrene
10
6.926
276 → 274
30
276 → 275
30
Benzo(g,h,i) perylene-d12
12
Naphthalene
1
2.775
128 → 102
20
128 → 127
20
13
Phenanthrene
3
4.160
178 → 176
40
178 → 152
40
Naphthalene-d8 Phenanthrened10
14
Pyrene
5
4.943
202 → 200
40
202 → 201
40
Pyrene-d10
6
5.049
292 → 222
40
292 → 220
25
13
25 30 30 30 40 40 40 40 40 40 40
13
Nos.
Polychlorinated biphenyls (PCBs) 1 PCB 77 PCB 81 2 3 PCB 105 PCB 114 4 5 PCB 118 + 123 PCB 126 6 7 PCB 156 + 157 8 PCB 167 9 PCB 169 10 PCB 170 11 PCB 180 12 PCB 189 Internal standards (IS) and quality control (QC) standard 13 1 C12-PCB 153 (IS)
5 7 6 5 7 7 8 8 7, 8 8 9
5.010 5.251 5.193 5.144 5.366 5.538 5.421 5.650 5.695 5.575 5.786
292 → 222 326 → 256 326 → 256 326 → 254 326 → 256 360 → 288 360 → 290 360 → 288 394 → 324 394 → 324 394 → 324
40 30 30 30 40 40 40 40 40 40 40
6 2
5.185 3.339
372 → 302 160 → 158
40 30
2
Acenaphthalene-d8 (IS)
3
Atrazine-d5 (IS)
3
3.956
205 → 105
15
4
Benzo(a)pyrene-d12 (IS)
8, 9
6.261
264 → 260
40
5
Benzo(g,h,i)perylene-d12 (IS) FBDE 126 (IS)
10
7.122
288 → 284
40
9 4
6.223 4.500
582 → 315 284 → 115
40 20
6 7
Fenthion-d6 (IS)
8
Fluoranthene-d10 (IS)
4
4.89
212 → 208
40
9
Naphthalene-d8 (IS)
1
2.744
136 → 80
40
10
Phenanthrene-d10 (IS)
3
4.11
188 → 160
20
11
Pyrene-d10 (IS)
5
4.89
212 → 210
40
12
p-Terphenyl-d14 (QC)
5
4.985
244 → 212
40
292 → 220 326 → 254 326 → 254 326 → 256 326 → 254 360 → 290 360 → 288 360 → 290 394 → 322 394 → 322 394 → 322
C12-PCB 153 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153 13 C12-PCB 153
All ion transitions used wide resolution setting and 4 ms dwell times. Segment start times were: 1 = 2.35 min; 2 = 3.1; 3 = 3.9; 4 = 4.35; 5 = 4.9; 6 = 5.15; 7 = 5.35; 8 = 5.5; 9 = 6; 10 = 6.75; and 11 = 8; end 9 min a
Multiple peaks
containing 1.1 % formic acid to enhance pesticide stability of final extract [20]. As a post-cleanup quality control (QC) standard, p-terphenyl-d14 (from AccuStandard) was included in the APs mixture at 0.88 ng µL−1. Eleven different food matrices including Gala apple, kiwi, kale, carrot, navel orange, canned black olives, wheat grain, dried basil, pork loin, salmon, and avocado were purchased from local grocery stores. The samples were comminuted with dry ice using a Robot Coupe (Ridgeway, MS;
USA) RSI 2Y1 chopper and stored in glass jars at −20 °C until analysis. Sample Extraction Comminuted samples of apple, kiwi, carrot, kale, orange, black olive, pork loin, salmon, and avocado (15 g) were individually weighed in 50 mL polypropylene tubes along with 7.5 g HCO2NH4, which was extracted for 10 min with
13
S. J. Lehotay et al. Table 2 Steps and time for the 8 min automated mini-SPE method
Step
Description
Time (s)
1 2 3 4 5 6 7 8 9 10 11 12
Wash the 1 mL syringe with MeCN (2 pumps of 0.5 mL each) Load 300 µL extract from AS vial in Tray1 into 1 mL syringe Place mini-cartridge above collection AS vial (with glass insert) in Tray2 Elute extract through mini-cartridge at 2 µL s−1 Discard mini-cartridge into waste receptacle Wash the 1 mL syringe with 1/1/1 MeCN/MeOH/water (2 pumps of 0.5 mL each) Wash the 1 mL syringe with MeCN (4 pumps of 0.5 mL each) Switch to 100 µL syringe and wash with MeCN (2 pumps of 50 µL each) Add 25 µL MeCN to collection AS vial (with glass insert) in Tray2 Add 25 µL AP + QC sol’n to collection AS vial (with glass insert) in Tray2 Wash the 100 µL syringe with 1/1/1 MeCN/MeOH/water (5 pumps of 50 µL each) Wash the 100 µL syringe with MeCN (3 pumps of 50 µL each)
30 10 10 150 5 30 45 50 10 10 50 40
13
Switch to 1 mL syringe and move to home position
40
The cleanup itself only took ≈3 min, and syringe wash and exchange steps took ≈5 min
15 mL MeCN using a Glas-Col (Terre Haute, IN; USA) platform pulse mixer at 80 % setting with maximum pulsation. For wheat grain and dried basil, 5 g sample + 15 mL water + 7.5 g HCO2NH4 was added to the tubes with 15 mL MeCN and extraction time was 60 min using the platform shaker (capacity of 50 tubes at a time). For reagent blanks, 15 mL water represented the sample. Then, centrifugation at 4150 rpm (3711 rcf) at room temperature for 3 min was conducted using a Thermo Fisher (Waltham, MA; USA) Sorvall Legend RT centrifuge (capacity of twenty 50 mL tubes at a time). Extracts of individual matrices were combined and spiked (or not) with the analytes and IS to evaluate the automated mini-SPE cleanup step. The initial extracts (spiked or not) were transferred to 1.8 mL standard ambler glass autosampler (AS) vials, which were closed with split septa caps. Automated Mini‑SPE Cleanup As previously described [12], two different types of SPE mini-cartridges were purchased for evaluation from ITSP solutions (Hartwell, GA; USA): (1) 45 mg anh. MgSO4/primary secondary amine (PSA)/C18/CarbonX (in the ratio of 20/12/12/1, w/w/w/w, respectively); and (2) 30 mg C18/ZSep/CarbonX (20.7/8.3/1, w/w/w, respectively). The minicartridges, as shown in the Table of Contents graphic and Supplemental information, were 3.5 cm long with a 0.8 cm diameter. Automated mini-SPE was conducted using a Gerstel (Linthicum, MD; USA) robotic MultiPurpose Sampler (MPS) liquid handling system [also known as a PAL3-RTC from CTC Analytics (Zwingen, Switzerland)]. PAL Sample Control (CTC Analytics) software was used to program and operate the device. The steps in the final automated miniSPE cleanup method using the 45 mg 4-sorbent mixture
13
(#1 above) are shown in Table 2. For matrix-matched calibration standards, Step 9 to add 25 µL MeCN was not done (Step 10 to add the APs + QC solution was still done), and instead, 25 µL of the appropriate calibration standard solutions were added manually to the matrix blank extracts. Procedurally, the AS vials containing the initial extracts were placed into a 54 position tray (Tray1), and the corresponding collection AS vials with glass micro-inserts (300 µL) and split septa caps were placed into a second 54 position tray (Tray2). An ITSP vial guide cover for the minicartridges was placed atop the vials in Tray2. A third tray (Tray3) contained 96 mini-cartridges placed above a solvent waste drain (if pre-conditioning with solvent is desired). The same tray holder contained all 3 trays, and our system was fitted with two tray holders for a potential capacity of 108 samples for sequential unattended automated cleanup. The robotic liquid handler was fitted with 3 interchangeable glass syringes (gastight with 57 mm long, 22 gage, straight tip needles) in different slots: 10, 1, and 0.1 mL. As shown in Table 2, only the 1 and 0.1 mL syringes were used in the experiments, and if we had chosen to install the device onto the LPGC-MS/MS instrument as designed as an option by the manufacturers, we would have chosen to replace the 10 mL syringe with a 5–10 µL syringe for direct injection of final extracts after cleanup. Instead, we chose to use the device in stand-alone fashion at this time (greater flexibility in independent operations for both LC and GC analyses). The collection vials were pre-weighed to the nearest mg prior to and after conducting mini-SPE, and weight differences were recorded to assess consistency of the liquid transfers and final extract volumes. After weighing and preparation of calibration standards, the vials were recapped with non-slit septa, vortexed ≈1 s to mix, and placed on the autosampler tray for LPGC-MS/MS analysis.
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of…
Equivalent sample concentrations of final extracts dehydrated by anh. MgSO4 in mini-SPE were 1 g mL−1 for fruits and vegetables, and 0.33 g mL−1 for wheat grain and dried basil. Fast LPGC‑MS/MS Analysis Table 1 lists the 97 targeted analytes (three analyzed together) plus 12 internal and quality control standards and their conditions in LPGC-MS/MS analysis. An Agilent (Little Falls, DE; USA) 7890A/7010 gas chromatograph/ triple quadrupole mass spectrometer was employed using electron ionization (EI) at −70 eV and 100 µA filament current. The separation was achieved on a 15 m × 0.53 mm i.d. × 1 µm film thickness Phenomenex (Torrance, CA; USA) ZB-5MSi analytical column connected using an Agilent Ultimate union to a 5 m × 0.18 mm, i.e., uncoated restrictor/guard column from Restek (Bellefonte, PA, USA). The calculated virtual column length was 5.5 m × 0.18 mm, i.e., and constant flow rate of He (99.999 %) carrier gas was 2 mL min−1. Details about the theory and practice of LPGC-MS/MS have been reported previously [17]. The GC oven temperature program was 70 °C for 1.5 min, ramped at 80–180 °C min−1, then 40–250 °C min−1, followed by 70–320 °C min−1, held for 4.4 min (10.025 min total). Cool down and re-equilibration time was 3 min. The transfer line temperature was 280 °C, ion source was 320 °C, and quadrupoles were kept at 150 °C. Collision gas flow rate was 1.5 mL min−1 N2 and quench gas was 2.25 mL min−1 He. The Agilent multimode inlet conditions were the same as reported previously [10, 18], except injection volume was reduced to 1.0 µL plugged between 1.5 μL air above and below in the syringe. An Agilent Ultra-inert 2 mm dimpled splitless liner was placed in the inlet and Agilent Mass Hunter version B07 software was used for instrument control and data processing. When using APs, extensive post-injection washing of the syringe with aqueous solution is very important to avoid sticking of the plunger if the sugar derivatives precipitate onto surfaces. In this study, the wash steps of the 10 µL syringe entailed 10 × 5 µL of 1/1/1 (v/v/v) MeCN/ MeOH/water followed by 10 × 5 µL of MeCN after every injection. The pre-injection wash steps called for another 5 µL of the aqueous wash solution and 2 × 5 µL of MeCN, each contained in 100 mL wash bottles. Method Optimization and Validation Experiments To evaluate the consistency and performance of the automated mini-SPE application, and to assess cleanup efficiency and analyte retention vs. elution volumes for the two different cartridges, the 97 analytes were spiked into
extracts of four different matrices (kale, avocado, pork, and salmon). Spiking level was 100 ng mL−1 (10 ng mL−1 for PCBs), and five different volumes (200, 300, 400, 500, and 600 µL) of extracts in triplicate were loaded into the cartridges at 2 µL s−1. Proportional amounts of AP + QC mix were added to the final extracts depending on elution volumes, and the cleanup efficiency was compared in full scan LPGC-MS and UV–Vis measurements. A Synergy HT Multi-detection microplate reader from Bio-Tek (Winooski, VT; USA) was used for optical density measurements. Relative recoveries of the analytes vs. extract load/elution volumes were measured using LPGC-MS/MS. The final mini-SPE cleanup method was validated by spiking QuEChERS extracts of 10 sample matrices (Gala apple, kiwi, kale, carrot, navel orange, canned black olive, wheat grain, dried basil, pork loin, and salmon) at 10, 25, 50, and 100 ng mL−1 (ten times lower for PCBs) with n = 4 at each level and matrix. A pair of chemists prepared and analyzed 47 samples (65 injections) of two matrices per day (LPGC-MS/MS sequences took ≈14 h). The recoveries and RSDs were determined from peak areas generated from summation function integration normalized (or not, for comparison purposes) to the corresponding IS listed in Table 1 for each analyte. Matrix-matched (MM) and reagent-only (RO) calibration standards (7 levels each: 0, 5, 10, 25, 50, 100, and 150 ng mL−1; tenfold lower for PCBs) were prepared by adding 25 µL calibration standards to final matrix blank extracts (MM) or 220 µL MeCN + 25 µL AP + QC solution (RO). The calibration solutions in MeCN each contained 0.88 ng µL−1 IS and 0, 0.044, 0.088, 0.22, 0.44, 0.88, and 1.32 ng µL−1 concentrations of the analytes (tenfold lower for PCBs and 13C12-PCB 153 as the IS) to yield the seven levels listed above. Matrix effects (MEs) were calculated as the % difference in least-linear squared calibration slopes of the MM vs. RO calibration standards.
Results and Discussion LPGC‑MS/MS Analysis In previous LPGC-MS/MS studies in our group, we used a 7000A MS/MS instrument [10, 21], which was upgraded to a 7000B [13, 18], and now to a 7010 system. In regulatory monitoring of pesticide residues in foods, the need of analysis calls for LOQ <10 ng g−1 [22]. The injection of the least amount of sample equivalent to meet the desired LOQ improves the ruggedness of the method and reduces instrument maintenance demands. Originally with the 7000A instrument, 10 mg sample equivalent (1 mg µL−1 QuEChERS extracts in MeCN) was injected [10, 21], which was reduced to 2.5 mg when using the 7000B [18]. In this
13
S. J. Lehotay et al.
study, the 7010 upgrade enabled injection of 1 mg (1 µL) sample equivalent to still achieve <5 ng g−1 LOQs for all analytes in the fruit and vegetable matrices. Cold inlet conditions using programmable temperature vaporization were used in each method thus far, but in the near future, we plan to investigate hot split mode injections to further speed the analysis, possibly improve performance, and reduce the amount of matrix components being introduced into the instrument [23]. We started to estimate LOQs from the final method in this study, but recognized quickly that the calculations were inaccurate due to ultra-trace carry over or artifacts that infiltrated the background for nearly all analytes in MeCN, reagent, and matrix blanks. The carry over averaged 0.4 % of the previous injection, and likely originated from the injection syringe needle contaminating the 100 mL wash bottles on the autosampler, not from the mini-SPE procedure which prepared 14 blank extracts prior to the reagent blank in its sequence. Peak integration was conducted using the summation function in the Agilent MassHunter software, which simply drew a baseline at the lowest point between analyst-defined start and stop times to cover the tR and peak width for each analyte. The integration start and stop times were set by ensuring that they fully covered the analyte peaks for all 325 injections over the course of all five sequences in the validation study. The peak area was always positive using this software’s summation integration function, which led to positive responses even when only noise was present. However, inspection of the MRM chromatograms and ion ratios clearly indicated that the background peaks in reagent and solvent blanks originated from the analytes in most cases, not simply electronic or chemical noise. The equivalent background concentrations of analytes in RO blanks averaged 0.5 ng mL−1 for the pesticides, FRs, and PAHs, and 0.05 ng mL−1 for PCBs, which did not affect the results of the study, but also did not permit an accurate estimation of LOQs. The likely source of carryover can be eliminated using a newer type of flowing solvent wash station that rinses the analytes coating the needle to waste rather than allowing them to contaminate the fixed volume wash solutions. LOQs can be better estimated after this issue is resolved, but the 1 µL injection clearly met analytical purposes in this application. We can conclude that the LPGC-MS/MS method yielded LOQs <0.5 ng g−1 (<0.05 ng g−1 for PCBs) for all but a few analytes, such as fenpropathrin, endosulfans, and BDE 183 which gave LOQs ≈1 ng g−1. Automated Mini‑SPE Morris and Schriner [12] reported that mini-SPE cartridges containing 20 mg anh. MgSO4, 12 mg PSA and C18 each,
13
and 1 mg CarbonX (45 mg total) provided satisfactory cleanup and recoveries for a wide range of pesticides and matrices in GC-MS/MS analysis. For LC-MS/MS, they chose to use cartridges containing 20.7 mg C18, 8.3 mg Z-Sep, and 1 mg CarbonX (30 mg total), which provided acceptable cleanup and pesticide recoveries for monitoring purposes [12]. In their method, they pre-conditioned the mini-cartridge with 150 µL MeCN, added 150 µL QuEChERS extract, then eluted with another 150 µL elution solvent. In d-SPE of QuEChERS extracts, no pre-conditioning or extra solvent elution steps are done, and the MeCN extract itself serves as the elution solvent. Ideally, the sorbents only adsorb co-extracted matrix components and not analytes. We decided to streamline and speed the method of Morris and Schriner [12] by eliminating the MeCN pre-conditioning and solvent elution steps for the same mini-cartridges they developed, which are commercially available. They conducted very thorough studies to set the sorbent combinations, and we had previously found similar sorbent mixtures work well for cleanup and analysis pesticides and environmental contaminants in seafood matrices using filter-vial d-SPE [13]. We have since extended the filter-vial d-SPE method to other animal tissues (cattle, pork, and chicken muscle), but found that only filtering of initial extracts was needed for analysis of the 99 LC-amenable pesticides in our recent approach [18]. In this evaluation, we focused on 97 representative GCamenable analytes and compared the two different minicartridges for their analysis in QuEChERS extracts of kale, salmon, pork, and avocado, and using extract load volumes of 200, 300, 400, 500, and 600 µL. To determine elution and dead volumes of the mini-cartridges, weights of the collection vials were compared before and after cleanup. Figure 1 shows the results in which measured dead volume (based on measured solution densities) was found to increase slightly as more extract was loaded into the mini-cartridges at 2 µL s−1. The reason for this observance was very likely because more interstitial spaces in the sorbent beds were being filled as more solution was passed through the cartridges. In any case, the dead volumes were much the same for both types of mini-cartridges, and averaged 75 ± 5 to 90 ± 8 µL from 200 to 600 µL extract load volumes, respectively. Thus, the measured extract elution volumes were 125 ± 5 to 510 ± 8 µL from 200 to 600 µL extract load volumes, respectively, which provided known and rather consistent elution volumes in the method. In the validation study involving 235 mini-SPE cartridges, final extracts averaged 278 ± 5 μL (1.9 % RSD), in which only 4 final extracts had ≈25 μL reduced volume. The robotic liquid handler operated flawlessly throughout the study, and perhaps vial weights were transcribed
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of…
450 400
145
Vol. Eluted Dead Vol. "Dead vol. increase" = 3.6 µL per 100 µL
350
135 125 115
y = 0.964x - 68 R² = 0.9999
300 250
105
200
95
150
85
100
y = 0.036x + 68 R² = 0.957
50 0 100
200
300
400
500
Dead Volume (µL)
Eluted Extract Volume (µL)
500
75 65
600
Extract Volume Added (µL)
Fig. 1 Eluted extract and dead volumes of the mini-SPE cartridges in cleanup of QuEChERS extracts of kale, avocado, pork, and salmon (n = 12 for each extract load volume)
improperly, bubbles materialized in the syringe, or minicartridge dead volumes were larger, which caused those four outliers. Mini‑SPE Cleanup Full scan LPGC-MS chromatograms of the reagent blank, kale, avocado, salmon, and pork QuEChERS extracts were compared before and after the mini-SPE cleanup using the 200–600 µL load volumes. Results indicated that the 30 mg C18/Z-Sep/CarbonX (20.7/8.3/1, w/w/w) mini-cartridges provided little cleanup for any of the 4 matrices independent of extract load/elution volumes (see Supplemental information). The chromatograms appeared much the same in each injection. These mini-cartridges were devised for LC-MS/MS [12], and this LPGC-MS result is probably due to the lack of anh. MgSO4 in the cartridges to reduce water content in the final extracts. Density measurements of final extracts indicated that the 45 mg mini-cartridges containing 20 mg anh. MgSO4 led to cleaned extracts (before addition of AP + QC solution) of ≈2 % water (0.79 mg μL−1 density of the MeCN extracts) and the 30 mg cartridges without anh. MgSO4 maintained the same extract density (0.82 mg μL−1) as the initial extracts, which were ≈15 % moisture. Drier solutions are better for GC analyses and provide stronger adsorption properties for common sorbents (e.g. PSA, Z-Sep, silica, Florisil, Alumina). In the case of the 45 mg mini-cartridges of 20/12/12/1 anh. MgSO4/PSA/C18/CarbonX, significant removal of matrix co-extractives was observed in the LPGC-MS chromatograms of kale, pork, and salmon, but little difference was observed for avocado (see Fig. 2). As would be expected, greater cleanup took place using smaller load/elution volumes before breakthrough began to occur. Depending on analyte recoveries, 200–300 µL would be
preferably chosen to provide more cleanup and shorter time than achieved with larger volumes. Unlike LPGC-MS, UV–Vis absorbance spectrometry of the 200–600 µL final extracts (200 µL of combined replicates in 96-well plates) showed similar cleanup efficiencies using either the 45 or 30 mg mini-cartridges (see Supplemental information). As shown in Fig. 3, chlorophyll and xanthophyll co-extractives from the kale in particular were nearly eliminated by the sorbents, mainly due to CarbonX. Salmon and pork extracts were nearly colorless, and measured UV–Vis cleanup efficiency was small compared to full scan LPGC-MS results. In the case of avocado as shown in Fig. 2, LPGC-MS showed little differences in full scan chromatograms, but UV–Vis spectra exhibited strong reduction in absorbance readings from 300 to 700 nm (see Supplemental information). Kale co-extractives were dramatically reduced in both types of measurement; especially by the 45 mg mini-cartridges (see Figs. 2, 3). Analyte Retention in Mini‑SPE The extract elution volume not only affected the cleanup efficiency in mini-SPE, but analyte recoveries also depend on load/elution volume. LPGC-MS/MS was used to compare relative recoveries (w/o using IS) normalized to the average 600 μL result with respect to extract load volumes in triplicate for each of the four matrices. Figure 4 shows an example of typical results that were representative of nearly all of the pesticides, demonstrating that neither load/ elution volume nor matrix made a significant difference in recoveries. The 30 mg 3-sorbent mixture mini-cartridges also gave similar analyte results as the 45 mg 4-sorbent mini-cartridges. Figure 5 shows the results for the IS with respect to extract load volumes. Only PAHs and a few other analytes with co-planar chemical structures gave less than complete elution, mainly due to partial retention on CarbonX. Hexachlorobenzene (HCB) is one the few pesticides that gave incomplete elution at 200 μL extract load volume. Figure 6 shows how 300 μL load volume (≈220 μL elution) yielded ≈80 % relative HCB recovery while still removing ≈95 % of co-extracted chlorophyll from initial QuEChERS extracts of kale. PBDE 183 and co-planar PCBs (126 and 169) yielded similar results as HCB, but large PAHs (≥3 rings) did not fully elute even with >500 μL load volumes. Similar results were achieved with the 30 mg mini-cartridges, indicating that 1 mg CarbonX was mostly responsible for the retention of the PAHs. As shown in Supplemental information, no significant differences were observed in the relative recoveries for the analytes when using either type of mini-cartridge. Independent of extract volumes, isotopically labeled IS of several PAHs were expected to help compensate for reduced actual recoveries in the final method (see Fig. 5).
13
S. J. Lehotay et al.
Kale
No Cleanup
Avocado No Cleanup
Extract Volume 600 µL
Extract Volume 600 µL
500 µL
500 µL
400 µL
400 µL
300 µL
300 µL
200 µL
200 µL
MeCN
MeCN
Salmon
Pork
No Cleanup
No Cleanup Extract Volume 600 µL
Extract Volume 600 µL
500 µL
500 µL 400 µL
400 µL
300 µL
300 µL
200 µL
200 µL
MeCN MeCN
Peak area vs. that for 600 µL
Fig. 2 Total ion chromatograms in full scan LPGC-MS of the QuEChERS extracts of 4 matrixes before and after cleanup with the 45 mg miniSPE cartridges using different extract load volumes
4.0 3.5 3.0 2.5 2.0 1.5 1.0 0.5
4.0 3.5 3.0 2.5 2.0 1.5 1.0 0.5 300
110% 100% 90% 80%
Kale Pork
70% 60% 50% 150
200
250
300
350
400
450
Salmon Avocado
500
550
600
650
Extract Load Volume (µL)
Fig. 4 Relative recoveries of bifenthrin in extracts of the 4 matrices (100 ng mL−1, n = 3 each) after automated cleanup using the 45 mg mini-cartridges 350
400
450
500
550
600
650
700
we chose to use 300 µL load volumes with those mini-cartridges in the final method. Fig. 3 Comparison of the UV–Vis spectra before and after cleanup of kale extracts using the 45 mg anh. MgSO4/PSA/C18/CarbonX mini-SPE cartridges
Considering the notable cleanup efficiency observed in both UV–Vis and LPGC-MS for the 45 mg mini-cartridges, especially at smaller load/elution volumes, and lack of retention of most analytes in QuEChERS extracts,
13
Method Validation and Summation Integration For validation of the automated high-throughput cleanup and LPGC-MS/MS method, 10 representative food matrices were chosen using SANTE/11945/2015 [22] as a guide. The final method was conducted for two matrices per day in the following sequence: Day (1) Gala
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of… 200
300
400
500
120%
Relave Recovery
100% 80% 60% 40% 20% 0%
100%
100%
90%
90%
80%
80% 70%
70% 60%
% vs. Max HCB Chlorophyll removal
60%
%Removed based on Absorbance at 680 nm
HCB Peak Area vs. Max
Fig. 5 Relative recoveries vs. the 600 μL extract load volumes of the 11 IS spiked at 100 ng mL−1 in the avocado, kale, pork, and salmon extracts using different load volumes with the 45 mg mini-cartridges (n = 12 each)
50%
50% 150 200 250 300 350 400 450 500 550 600 650
Extract Load Volume (µL) Fig. 6 Elution of hexachlorobenzene (HCB) and removal of chlorophyll from kale extracts passed through the 45 mg anh. MgSO4/PSA/ C18/CarbonX mini-SPE cartridges
apple and kiwi; (2) carrot and kale; (3) navel orange and canned black olive; (4) wheat grain and dried basil; and (5) pork loin and salmon. QuEChERS has been extensively validated [24] and implemented in many labs [25], and to isolate the mini-SPE cleanup step in this study, initial QuEChERS extracts were spiked (or not) with the 97 analytes at 10, 25, 50, and 100 ng mL−1 (n = 4 at each level and matrix). Each sequence began with seven blanks of each matrix, which were used for MM calibration standards, followed by the reagent blank and 16 spiked extracts of each matrix, for a total of 47 samples daily, and 235 altogether in 5 days sequentially. The LPGC-MS/ MS sequences were conducted each day overnight, which included an additional 7 RO standards conducted at the beginning and end of each sequence, plus a system suitability standard as the first injection and 3 MeCN blanks injected after the 150 ng mL−1 (ng g−1) RO standards to
check for carry over. A total of 65 LPGC-MS/MS analyses were conducted each night, and 325 within 5 days. The same injection liner and autotune parameters were used in each sequence. Summation integration function start and stop times for each analyte were set after the conclusion of all 325 analyses by ensuring that all analyte peaks fell within the integration windows. The use of APs in LPGC-MS/MS led to highly consistent tR and peak shapes for all analytes, and relatively few chemical interferences in the chromatograms for each MS/MS ion transition provided leeway to each side of the peak without significantly impacting the integrated peak areas. Figure 7 and Supplemental information show many examples of how the summation integration approach worked for different analytes and matrices. Dechlorane plus, (es)fenvalerate, permethrin, deltamethrin, cyfluthrin, and cypermethrin gave multiple peaks with the same ion transitions, several of which could have been integrated separately, but we chose to integrate them together as a single analyte. Sapozhnikova and Lehotay previously presented several examples of LPGC-MS/MS separations of different closely eluting analytes with isobaric ion transitions comparing columns from different manufacturers [17] (Figs. 4, 5, 6). The Agilent summation function does not find the deflection point between unresolved peaks, which does not always occur at the exact same time in each chromatogram. Thus, benz(a)anthracene + chrysene and PCBs 118 + 123 and 156 + 157 could be distinguished individually by tR, but were integrated together because they closely co-eluted. We could have also integrated phenanthrene and anthracene together, but we chose to treat them separately and apply the default Agile2 integrator for purposes of comparison.
13
S. J. Lehotay et al.
acephate apple
pyriproxyfen kiwi
kiwi
apple
carrot
carrot
kale
kale
orange
orange
black olive
wheat grain
pork
dried basil
salmon
wheat grain
pork
black olive
dried basil
salmon
Fig. 7 Summation integration of 10 ng mL−1 spikes for acephate and pyriproxyfen in the 10 matrices over the course of 5 days. The qualifier ion met the ±10 % ratio relative to the fixed reference ratio for
all, but acephate in black olive and dried basil in these examples, as shown by the horizontal lines
Dozens of manual re-integrations each of phenanthrene and anthracene were needed, especially at the lowest levels, to correct the mistakes by the default program when it selected the wrong peak or used an inconsistent baseline. In the case of the other 107 analytes, IS, and QC standard,
only spot-checking of integrations was conducted out of curiosity and no manual adjustments were made. The 5-day validation experiment generated 66,950 data points (ion transition peaks) that would have taken an analyst several days to check that each peak was integrated
13
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of…
(or not) appropriately and consistently. Using the summation integration function, the analyst spent only a few hours to set parameters, and all results were generated within a matter of minutes. Not only was human review of results not needed, the consistency of the summation integrations was superior to human capabilities and led to reliable quantitative results (see Supplemental information). Chemical interferences could be observed, especially in dried basil, orange, and black olive, but such interferants complicate peak integrations and worsen quality of results for any integration function. Different means of post-run data processing batches were considered before settling on the final approach to report results calculated with and without normalization to the IS (see Table 1) using MM calibration standards for the same matrix. Potentially better results could have been obtained by narrowing the summation integration time windows to exactly accommodate the peak widths for each matrix, which were analyzed within hours of each other, but the wider windows that fully covered all peaks for all 325 injections were used in all cases. One drawback of the current software version was that the reported analyte tR was the midpoint between the integration start and stop times rather than the actual apex of the peak, and this should be corrected in the future. Validation Results Table 3 lists the compiled results with normalization to the IS for all 94 analytes (including pairs) in the 10 matrices spiked at different levels (n = 40 each), as well as overall results for all levels and matrices (n = 160). Underlined font emphasizes when overall results yielded 100 % ± 10 % recoveries, and bold text indicates when <70 or >120 % recovery and ≥25 % RSD were obtained. When using the IS, 42 out of 97 analytes gave 90–110 % recoveries and ≤10 % RSD, which is exceptional considering that 230 injections of 10 complex matrices at ultra-trace spiking levels were made without manual re-integrations or instrument maintenance over 5 days sequentially. For comparison, the overall average recoveries and RSD for each analyte without normalization to the IS are also presented in Table 3. Clearly, the IS were needed to provide better precision in the results, and to account for partial retention of the larger PAHs. For nearly all pesticides and most FRs and PCBs, the IS only helped to account for volume fluctuations in the mini-SPE cleanup step. The variability of the elution volume can be observed in Fig. 1, and Table 3 shows how well the IS compensated for these fluctuations from day-to-day and matrix-to-matrix. The differing amounts of water in the different matrices and initial and final extracts also likely contributed substantially to the variations without the IS.
When using the IS, only three analytes (PBEB, benz(a) anthracene + chrysene, and thiabendazole) had <70 % overall average recoveries (64, 68, and 67 %, respectively) and only six analytes (naphthalene, TPP, TBCO, fenpropathrin, deltamethrin, and thiabendazole) had overall RSDs >25 %. TPP and naphthalene were ubiquitous in all of the reagent blanks at varying concentrations averaging 7 and 75 ng mL−1, respectively, and similar levels in the final matrix extracts. Analytical conditions for fenpropathrin were not optimal, and an interferant averaging 18 ng g−1 equivalent response adversely affected its results. Deltamethrin is known to degrade in the injection inlet [20], which was the main cause of its more variable results, which was also the case for methoxychlor to a lesser extent. Last, thiabendazole and TBCO (and TBECH) gave very broad chromatographic peaks. Despite the inconsistent results for those six analytes, the chromatographic peak shapes and results were very good for other notoriously difficult analytes in GC, such as methamidophos, acephate, omethoate, dimethoate, carbofuran, chlorothalonil, imazalil, and myclobutanil (see Supplemental information). In fact, dimethoate was among those analytes that gave the best results, and cyfluthrin was another analyte that gave surprisingly high quality results. Despite the much greater variability, the overall recoveries without normalization to the IS were the same as when using the IS except PBEB and PCB 169 were 67 and 63 %, respectively, and 8 PAHs had 14–63 % uncompensated recoveries. As stated earlier, the 1 mg CarbonX was probably the cause for the lower recoveries of structurally (co-) planar analytes, but the isotopically labeled IS worked well to improve accuracy in all cases, albeit an ideal IS was not obtained for benz(a)anthracene + chrysene or benzo(b + k) fluoranthene. In addition to its high quality of results, the automated mini-SPE + LPGC-MS/MS method provided excellent ruggedness in the analysis of all 325 samples. Due to the clean extracts, small injection volumes, mega-bore analytical column, and use of APs, the same injection liner and septum was used for all 325 injections in 10 matrices over the course of 5 days. A picture of the used liner and septum appears in Supplemental information. Even the fatty salmon matrix, which was analyzed last, showed very good peak shapes and perfectly linear calibration with the same high quality results as the other matrices (see Supplemental information). Matrix Effects (MEs) MEs were measured both with and without normalization of integrated peak areas to the IS. As in the case of recoveries, the IS helped to greatly reduce imprecision in the measurements. As shown in Supplemental information, the PCBs,
13
S. J. Lehotay et al. Table 3 Average mini-SPE % recoveries (and %RSD) of the 94 analytes (including three pairs) in 10 matrices at four spiking levels (n = 40 at each level, and n = 160 overall) in the validation study Nos.
Analyte
Pesticides 1 Acephate 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46
Aldrin Atrazine Bifenthrin Carbofuran Carbophenothion Chlorothalonil Chlorpyrifos Coumaphos Cyfluthrin Cypermethrin Cyprodinil Deltamethrin o,p′-DDE p,p′-DDE Diazinon Dicrotophos Dimethoate Diphenylamine Endosulfan I Endosulfan II Endosulfan sulfate Esfenvalerate Ethalfluralin Ethoprop Fenpropathrin Fipronil Flutriafol Heptachlor Heptachlor epoxide Heptenophos Hexachlorobenzene Imazalil Kresoxim-methyl Lindane Methamidophos Methoxychlor Mirex Myclobutanil cis-Nonachlor trans-Nonachlor Omethoate o-Phenylphenol Penconazole Pentachlorothioanisole Permethrin
13
10 ng mL−1
25 ng mL−1
50 ng mL−1
100 ng mL−1
Overall vs. IS
Overall w/o IS
98 (16) 91 (12) 99 (8) 93 (8) 102 (11) 99 (10) 95 (16) 96 (8) 94 (10) 92 (8) 95 (14) 87 (8) 111 (50) 94 (7) 92 (8)
90 (14) 89 (10) 95 (5) 91 (5) 97 (9) 94 (5) 87 (14) 93 (4) 91 (8) 91 (7) 88 (8) 86 (5) 92 (22) 91 (5) 89 (7)
93 (20) 91 (11) 96 (3) 93 (9) 98 (9) 97 (9) 88 (16) 95 (4) 92 (12) 92 (10) 92 (13) 87 (7) 93 (19) 92 (5) 92 (5)
92 (20) 93 (8) 97 (4) 93 (9) 101 (11) 97 (9) 90 (17) 97 (4) 91 (11) 92 (9) 91 (11) 88 (7) 88 (22) 94 (4) 93 (4)
95 (17) 90 (11) 98 (6) 93 (9) 101 (11) 98 (10) 91 (16) 96 (6) 93 (11) 92 (9) 93 (13) 88 (7) 98 (34) 93 (6)
103 (41) 93 (24) 104 (26) 99 (30) 106 (34) 105 (32) 97 (31) 101 (25) 101 (30) 100 (29) 100 (37) 93 (28) 119 (59) 98 (24)
91 (7)
98 (30)
101 (10) 109 (20) 101 (8) 102 (15) 98 (14) 97 (8) 96 (18) 96 (11) 101 (12) 99 (24) 91 (70) 105 (12) 99 (9) 94 (14) 98 (9) 103 (15) 83 (20) 83 (21) 100 (10) 100 (11) 97 (16) 95 (25) 83 (9) 99 (7) 96 (9)
96 (7) 97 (11) 96 (5) 97 (8) 93 (6) 93 (8) 95 (9) 91 (8) 96 (9) 98 (12) 93 (34) 98 (10) 95 (5) 92 (13) 95 (8) 96 (10) 87 (10) 81 (13) 96 (6) 97 (7) 91 (15) 92 (23) 82 (10) 95 (5) 91 (6)
95 (5) 94 (9) 96 (6) 98 (8) 94 (6) 94 (8) 96 (11) 93 (12) 96 (10) 97 (9) 89 (26) 99 (13) 96 (11) 93 (11) 95 (6) 97 (12) 89 (11) 83 (14) 97 (8) 97 (7) 92 (16) 94 (26) 85 (12) 96 (9) 92 (6)
97 (5) 96 (9) 98 (6) 100 (6) 95 (6) 95 (6) 97 (8) 93 (11) 97 (7) 98 (8) 89 (17) 98 (12) 96 (9) 94 (10) 97 (5) 100 (8) 90 (11) 83 (10) 98 (7) 99 (6) 95 (16) 91 (25) 85 (12) 96 (8) 94 (6)
98 (8) 101 (15) 99 (7) 100 (11) 95 (9) 96 (8) 98 (13) 94 (12) 98 (10) 98 (15) 92 (41) 101 (12) 98 (9) 94 (12) 97 (8) 100 (13) 86 (14) 83 (15) 99 (8) 99 (9) 96 (16) 93 (25) 83 (11) 98 (8) 94 (7)
105 (29) 107 (35) 106 (30) 106 (25) 100 (26) 102 (28) 104 (31) 103 (33) 105 (25) 104 (28) 119 (90) 109 (32) 105 (32) 99 (25) 102 (23) 105 (27) 88 (26) 87 (37) 106 (29) 104 (23) 103 (35) 101 (39) 88 (33) 105 (30) 101 (28)
93 (8)
91 (6)
92 (6)
94 (5)
93 (7)
98 (25)
103 (15) 102 (19)
96 (12) 97 (11)
90 (20) 98 (11)
93 (15) 100 (8)
94 (8) 93 (15) 92 (16)
92 (4) 92 (10) 92 (7)
93 (8) 94 (11) 93 (10)
94 (7) 96 (9) 92 (8)
97 (16) 100 (14) 94 (7) 93 (11) 93 (11)
106 (35) 104 (30) 101 (29) 96 (22) 101 (36)
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of… Table 3 continued Nos.
Analyte
10 ng mL−1
25 ng mL−1
50 ng mL−1
100 ng mL−1
Overall vs. IS
Overall w/o IS
47
Piperonyl butoxide
96 (8)
92 (6)
94 (10)
93 (9)
48
Propargite Pyridaben Pyriproxyfen Tebuconazole Tetraconazole Thiabendazole Tribufos
101 (15) 93 (8) 93 (8) 93 (14) 99 (7) 63 (31) 95 (11)
94 (9) 89 (6) 91 (6) 87 (9) 97 (5) 64 (25) 88 (7)
95 (14) 91 (11) 92 (11) 90 (13) 97 (7) 69 (26) 91 (11)
97 (14) 91 (9) 92 (9) 89 (10) 98 (7) 70 (25) 90 (8)
95 (9) 97 (16) 92 (10) 93 (9) 91 (12) 99 (7) 67 (27) 92 (10)
103 (31) 103 (30) 100 (31) 102 (31) 100 (34) 105 (27) 71 (41) 99 (32)
BDE 183 Dechlorane plus (syn + anti) PBB 153 PBEB PBT TBB TBCO TBECH TBNPA TBX TCEP TCPP TDCPP Triphenylphosphate
101 (36) 99 (12) 103 (11) 63 (20) 92 (11) 86 (10) 102 (43) 100 (25) 106 (26) 70 (12) 101 (5) 100 (7) 101 (9) 90 (39)
100 (18) 99 (14) 101 (10) 63 (11) 91 (9) 85 (7) 93 (28) 94 (17) 98 (14) 69 (8) 97 (4) 96 (4) 97 (7) 96 (27)
100 (13) 99 (11) 103 (9) 67 (10) 93 (10) 87 (6) 91 (24) 96 (16) 98 (16) 73 (7) 96 (3) 97 (3) 98 (11) 98 (25)
101 (10) 100 (10) 105 (9) 67 (15) 96 (12) 87 (8) 93 (21) 95 (12) 100 (11) 74 (10) 98 (5) 98 (4) 98 (10) 98 (23)
100 (21) 98 (11) 102 (10) 64 (15) 92 (11) 86 (8) 96 (30) 97 (18) 101 (18) 70 (11) 99 (5) 99 (6) 99 (10) 96 (28)
76 (37) 80 (32) 81 (31) 67 (33) 72 (29) 69 (33) 104 (43) 104 (32) 103 (34) 73 (26) 105 (28) 105 (28) 107 (32) 105 (46)
Acenaphthene Acenaphthalene Anthracene Benz(a)anthracene + Chrysene Benzo(a)pyrene Benzo(b + k)fluoranthene Benzo(g,h,i)perylene Dibenz(ah)anthracene Fluoranthene Fluorene Indeno(1,2,3-c,d)pyrene Naphthalene Phenanthrene Pyrene
100 (16) 97 (6) 100 (11) 69 (13) 109 (9) 123 (6) 120 (15) 100 (13) 104 (5) 115 (17) 117 (14) 128 (95) 114 (16) 108 (6)
99 (6) 96 (5) 92 (5) 66 (12) 97 (6) 115 (5) 103 (8) 84 (8) 97 (4) 116 (10) 109 (12) 118 (78) 101 (5) 99 (5)
100 (5) 97 (3) 95 (5) 67 (13) 95 (3) 113 (3) 100 (4) 82 (5) 96 (3) 113 (7) 108 (8) 117 (29) 99 (4) 97 (2)
101 (5) 98 (3) 96 (4) 68 (13) 97 (4) 115 (3) 102 (4) 82 (5) 97 (3) 114 (8) 114 (12) 108 (28) 99 (3) 98 (3)
100 (9) 97 (5) 96 (8) 68 (13) 100 (8) 117 (6) 106 (12) 87 (13) 99 (5) 114 (12) 113 (12) 115 (63) 104 (11) 101 (6)
100 (27) 99 (22) 85 (27) 40 (44) 22 (53) 27 (48) 14 (64) 19 (58) 63 (32) 98 (24) 17 (61) 114 (71) 89 (30) 57 (36)
PCB 77 PCB 81 PCB 105 PCB 114 PCB 118 + 123 PCB 126 PCB 156 + 157 PCB 167 PCB 169
97 (17) 100 (8) 106 (7) 106 (5) 103 (8) 88 (12) 100 (8) 98 (7) 75 (19)
96 (7) 96 (8) 104 (8) 104 (7) 102 (7) 85 (9) 98 (8) 96 (8) 72 (13)
97 (8) 97 (6) 107 (6) 106 (7) 106 (7) 87 (11) 100 (9) 100 (8) 75 (13)
98 (9) 99 (7) 108 (6) 108 (8) 107 (7) 88 (11) 101 (9) 100 (9) 74 (14)
97 (11) 98 (8) 106 (7) 106 (7) 104 (8) 86 (11) 99 (9) 97 (9) 74 (15)
85 (29) 85 (27) 91 (26) 90 (26) 89 (28) 75 (29) 85 (26) 83 (28) 63 (30)
49 50 51 52 53 54 FRs 1 2 3 4 5 6 7 8 9 10 11 12 13 14 PAHs 1 2 3 4 5 6 7 8 9 10 11 12 13 14 PCBs 1 2 3 4 5 6 7 8 9
13
S. J. Lehotay et al. Table 3 continued Nos.
Analyte
10 ng mL−1
25 ng mL−1
50 ng mL−1
100 ng mL−1
10 11 12
PCB 189
PCB 170
98 (8)
97 (9)
99 (9)
100 (10)
PCB 180
100 (8)
95 (9)
99 (9)
98 (11)
98 (9) 96 (10)
83 (29) 82 (28)
92 (12)
91 (16)
93 (15)
91 (15)
76 (25)
92 (16)
Overall vs. IS
Overall w/o IS
Bold text indicates recovery <70 % or RSD >25 % Underlining emphasizes overall recoveries of 90–110 % and RSD of 10 % or less
100
Apple
80
Kiwi
60
Carrot
%ME (vs. IS)
40
Kale
20
Orange
0 -20
Olive
-40
Wheat
-60
Basil
-80 -100 2.75
Pork 3.00
3.25
3.50
3.75
4.00
4.25
4.50
4.75
5.00
5.25
5.50
5.75
6.00
6.25
6.50
Salmon
Retenon Time (min) Fig. 8 Matrix effects (MEs) of the 54 pesticides plotted vs. tR in LPGC-MS/MS using APs after automated mini-SPE cleanup of QuEChERS extracts of 10 matrixes
PAHs, and nearly all FRs did not undergo MEs (<|±20 %|), mainly due to their nonpolar nature (relatively polar analytes are more susceptible to MEs). Figure 8 shows MEs in the case of pesticides in each matrix plotted vs. increasing tR. When MEs <|±20 %| occur (shown by the box in the figure), then RO standards can be used to yield similar results as MM calibration standards. Despite the common practice in residue analysis to use MM standards, they require storage of many blank matrices and take more time for sample preparation, plus the extra materials, labor, and costs involved, than simply preparing RO calibration standards. Use of MM standards also causes more matrixes to be introduced to the instrument during analytical batches, as well as complications to match given matrices when different commodities are analyzed in the same sequence. Calibration using RO standards is more advantageous in practice, provided that MEs do not lead to unacceptable accuracy. Unlike LC–MS/MS in which ion suppression occurs due to MEs [26], signal enhancement commonly occurs to susceptible analytes in GC analysis [27]. However, as shown in
13
Fig. 8, basil induced a severe response diminishment effect, presumably due to the sheer amount of co-extractives from the dried herb even after mini-SPE cleanup. Herbs and spices are unique matrices that require MM calibration even after extensive cleanup in any GC-MS or LC–MS method. With few exceptions between 2.5 and 5.5 min tR, MEs for the analytes fell within |±20 %| (see Fig. 8). As described previously [19], the APs can overcome MEs for the analytes with tR less than about permethrin, but a good AP for the late-eluting pyrethroids has not been found yet. The current mixture of APs (and their breakdown products) is too volatile to coelute with the late-eluting analytes, which is shown clearly in Fig. 8. In this study, 10 pesticides underwent >20 % MEs for all matrices except the least complex fruits and vegetables (apple, kiwi, and carrot). These analytes consist of coumaphos, pyridaben, methoxychlor, and the pyrethroids: bifenthrin, fenpropathrin, permethrin, cyfluthrin, cypermethrin, esfenvalerate, and deltamethrin). Similarly, late-eluting PCBs, PAHs, and FRs yielded insignificant MEs, especially when using IS with tR near the analytes. Despite the
Automated Mini-Column Solid-Phase Extraction Cleanup for High-Throughput Analysis of…
nonpolar nature of these PCBs, PAHs, and FRs, MEs were observed to a greater extent without normalization to the IS, which leads us to hypothesize that use of an appropriate IS for pyrethroids may solve this problem with excessive MEs.
Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
Conclusions The automated mini-SPE cleanup coupled with LPGCMS/MS analysis not only achieved high quality results for diverse type of analytes and foods, the approach also enabled reliable, high-throughput operations without much labor or instrument maintenance. The use of a state-of-theart GC-MS/MS instrument permitted injection of merely 1 mg sample equivalent while still achieving <5 ng g−1 LOQs for all analytes (LOQ < 0.5 ng g−1 for most analytes). The use of APs also helped lead to very consistent tR and peak shape for the analytes, even after hundreds of sample injections, which enabled use of summation function integration to eliminate human review of chromatographic peak integrations. This data processing approach saved many hours of analyst time, which is usually the rate limiting in real-world practice. Using the final method in unattended instrument operation, two analysts conducted the full validation study involving 235 samples in 5 days. One of the analysts performed initial QuEChERS extractions, and because we do not have barcode reading, the other analyst’s time in the lab was spent labeling vials and entering sample names into long sequences. In the final method, the automated mini-SPE step took 8 min per sample, and the LPGC-MS/MS step was 13 min including oven re-equilibration. In the future, we intend to substantially reduce the time needed for both operations. Last, some incurred analytes were quantified and identified >10 ng g−1 in the tested commodities: imazalil (1243 ng g−1) and thiabendazole (640 ng g−1) were detected in the oranges, p,p′-DDE (56 ng g−1) was determined in kale, and diphenylamine (17 ng g−1) and thiabendazole (16 ng g−1) were detected in the Gala apple. A few other pesticides were identified between the 5 ng g−1 lowest calibrated level and 10 ng g−1 reporting level. The practical application of this automated approach has been demonstrated to meet real-world monitoring needs. Acknowledgments Thanks to CTC Analytics for the firmware, communications board, software, and training to operate the robotic liquid handler. Thanks also to ITSP Solutions and Hill Laboratories for devising initial methods as a template. Lijun Han’s sabbatical funding was provided by the China Scholarship Council (CSC). Compliance with Ethical Standards Conflict of interest All authors declare no conflicts of interest. This article does not contain any studies with human participants or animals performed by any of the authors.
References 1. World Trade Organization (2014) International trade statistics 2014 2. European Food Safety Authority (2015) The 2013 European Union report on pesticide residues in food. EFSA J 13:1–169 3. USDA Agricultural Marketing Service (2014) Pesticide data program annual summary, calendar year 2014. https://www.ams. usda.gov/sites/default/files/media/2014%20PDP%20Annual%20 Summary.pdf 4. Food Safety Modernization Act (FSMA). http://www.gpo.gov/ fdsys/pkg/PLAW-111publ353/pdf/PLAW-111publ353.pdf 5. Global MRL database. https://www.globalmrl.com/ 6. European Food Safety Authority (EFSA) Pesticide MRL harmonisation programme. http://www.efsa.europa.eu/en/mrls/ mrlharmonisation 7. Lehotay SJ, Sapozhnikova Y, Mol HGJ (2015) Current issues involving screening and identification of chemical contaminants in foods by mass spectrometry. TrAC. Trends Anal Chem 69:62–75 8. Anastassiades M, Lehotay SJ, Stajnbaher D, Schenck FJ (2003) Fast and easy multiresidue method employing acetonitrile extraction/partitioning and “dispersive solid-phase extraction” for the determination of pesticide residues in produce. J AOAC Int 86:412–431 9. Gonzalez-Curbelo MA, Socas-Rodriguez B, Herrera-Herrera AV, Gonzalez-Salamo J, Hernandez-Borges J, Rodriguez-Delgado MA (2015) Evolution and applications of the QuEChERS method. TrAC. Trends Anal Chem 71:169–185 10. Sapozhnikova Y, Lehotay SJ (2013) Multi-class, multi-residue analysis of pesticides, polychlorinated biphenyls, polycyclic aromatic hydrocarbons, polybrominated diphenyl ethers and novel flame retardants in fish using fast, low-pressure gas chromatography–tandem mass spectrometry. Anal Chim Acta 758:80–92 11. Raynie D (2016) Trends in sample preparation. LCGC North Am 34:174–188 12. Morris BD, Schriner RB (2015) Development of an automated column solid-phase extraction cleanup of QuEChERS extracts, using a zirconia-based sorbent, for pesticide residue analyses by LC-MS/MS. J Agric Food Chem 63:5107–5119 13. Han L, Sapozhnikova Y, Lehotay SJ (2014) Streamlined sample cleanup using combined dispersive solid-phase extraction and invial filtration for analysis of pesticides and environmental pollutants in shrimp. Anal Chim Acta 827:40–46 14. Alder L, Greulich K, Kempe G, Vieth B (2006) Residue analysis of 500 high priority pesticides: better by GC-MS or LC–MS/ MS? Mass Spectrom. Rev. 25:838–865 15. Wang J, Chow W, Chang J, Wong JW (2014) Ultrahigh-performance liquid chromatography electrospray ionization Q-Orbitrap mass spectrometry for the analysis of 451 pesticide residues in fruits and vegetables: method development and validation. J Agric Food Chem 62:10375–10391 16. Zhang ZL, Rhind SM (2011) Optimized determination of polybrominated diphenyl ethers and polychlorinated biphenyls in sheep serum by solid-phase extraction-gas chromatography-mass spectrometry. Talanta 84:487–493
13
S. J. Lehotay et al. 17. Sapozhnikova Y, Lehotay SJ (2015) Review of recent developments and applications in low-pressure (vacuum outlet) gas chromatography. Anal Chim Acta 899:13–22 18. Han L, Sapozhnikova Y, Lehotay SJ (2016) Method validation for 243 pesticides and environmental contaminants in meats and poultry by tandem mass spectrometry coupled to low-pressure gas chromatography and ultrahigh-performance liquid chromatography. Food Control 66:270–282 19. Mastovska K, Lehotay SJ, Anastassiades M (2005) Combination of analyte protectants to overcome matrix effects in routine GC analysis of pesticide residues in food matrixes. Anal Chem 77:8129–8137 20. Mastovska K, Lehotay SJ (2004) Evaluation of common organic solvents for gas chromatographic analysis and stability of multiclass pesticide residues. J Chromatogr A 1040:259–272 21. Koesukwiwat U, Lehotay SJ, Leepipatpiboon N (2011) Fast, low-pressure gas chromatography triple quadrupole tandem mass spectrometry for analysis of 150 pesticide residues in fruits and vegetables. J Chromatogr A 1218:7039–7050 22. [SANTE/11945/2015] Guidance document on analytical quality control and method validation procedures for pesticides residues
13
23. 24. 25.
26. 27.
analysis in food and feed. http://ec.europa.eu/food/plant/docs/ plant_pesticides_mrl_guidelines_wrkdoc_11945_en.pdf Klee MS, Blumberg LM (2002) Theoretical and practical aspects of fast gas chromatography and method translation. J Chromatogr Sci 40:234–247 Lehotay SJ (2007) Determination of pesticide residues in foods by acetonitrile extraction and partitioning with magnesium sulfate: collaborative study. J AOAC Int 90:485–520 Medina-Pastor P, Rodriguez-Torreblanca C, Andersson A, Fernandez-Alba AR (2010) European Commission proficiency tests for pesticide residues in fruits and vegetables. TrAC. Trends Anal Chem 29:70–83 Hajslova J, Zrostlikova J (2003) Matrix effects in (ultra)trace analysis of pesticide residues in food and biotic matrices. J Chromatogr A 1000:181–197 Erney DR, Gillespie AM, Gilvydis DM, Poole CF (1993) Explanation of the matrix-induced chromatographic response enhancement of organophosphorus pesticides during open tubular column gas chromatography with splitless or hot on-column injection and flame photometric detection. J Chromatogr 638:57–63