Journal Pre-proof Molecularly imprinted polymer-based photonic crystal sensor array for the discrimination of sulfonamides Zheng-zhong Lin, Lei Li, Guiyu Fu, Zhu-zhi Lai, Ai-hong Peng, Zhi-yong Huang PII:
S0003-2670(19)31483-7
DOI:
https://doi.org/10.1016/j.aca.2019.12.032
Reference:
ACA 237315
To appear in:
Analytica Chimica Acta
Received Date: 10 October 2019 Revised Date:
11 December 2019
Accepted Date: 12 December 2019
Please cite this article as: Z.-z. Lin, L. Li, G. Fu, Z.-z. Lai, A.-h. Peng, Z.-y. Huang, Molecularly imprinted polymer-based photonic crystal sensor array for the discrimination of sulfonamides, Analytica Chimica Acta, https://doi.org/10.1016/j.aca.2019.12.032. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Published by Elsevier B.V.
conceptualization: Zheng-zhong Lin methodology: Zheng-zhong Lin software: validation: Guiyu Fu formal analysis: Lei Li; Ai-hong Peng investigation: Lei Li; Guiyu Fu resources: Zhu-zhi Lai data curation: writing (original draft preparation): Lei Li writing (review and editing): Zheng-zhong Lin visualization: supervision: Zhi-yong Huang project administration: funding acquisition:
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Molecularly imprinted polymer-based photonic crystal sensor array for the
2
discrimination of sulfonamides
3
Zheng-zhong Lin1, Lei Li1, Guiyu Fu1, Zhu-zhi Lai2, Ai-hong Peng1, Zhi-yong
4
Huang1,3,*
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1. College of Food and Biological Engineering, Jimei University, Xiamen, 361021, China
6
2. College of Chemistry and Chemical Engineering, Xiamen University, Xiamen, 361005, China
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3. Fujian Provincial Key Laboratory of Food Microbiology and Enzyme Engineering, Xiamen, Fujian Province, 361021, China
8 9
Abstract:
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In this paper, molecular imprinting and photonic crystal techniques were combined to construct
11
a four-channel sensor array for the simultaneous identification of various sulfonamides. The assay
12
was composed of four units. Three of these units were prepared using sulfaguanidine,
13
sulfamethazine, or sulfathiazole as template molecules. The fourth unit was prepared without a
14
template molecule. The preparation was optimized to obtain maximum identification with a molar
15
ratio of template, monomer, and cross-linker of 1:50:10. The response time was as short as 10 mins.
16
For demonstration, six sulfonamides were selected as analytes. The Bragg diffraction patterns of
17
analytes at different concentrations were measured using the sensor array. Data obtained were
18
analyzed using linear discrimination analysis (LDA) and principal component analysis (PCA). LDA
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can be applied for SAs discrimination. The message ratios of 87.6%, 94.4%, and 95.8% for six SAs
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at 10-4 mol L-1, 10-6 mol L-1, and 10-8 mol L-1 were achieved using LDA. The sensor array identified
*
Corresponding author,Zhengzhong Lin, Tel.:
[email protected]; Zhiyong Huang, Tel.:
[email protected] 1
+86-592-6181912;fax: +86-592-6181912;fax:
+86-592-6180470.E-mail: +86-592-6180470.E-mail:
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the mixture containing various SAs with an LDA coefficient of 86.1%, thereby indicating that the
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sensor array had a strong anti-interference ability. The sensor array was used to identify six SAs in
23
fish samples. The measured data in spiked samples were consistent with the fingerprint collected
24
from standard solutions. The accuracy rate reached 90.9%, indicating that the array can be used to
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identify SAs from food samples.
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Keywords: Photonic crystal; Molecular imprinting; Sulfonamides; Sensor array
27
1. Introduction
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Sulfonamides (SAs) are a class of drugs with aminophenylsulfonamide chemical structure.
29
SAs are widely used in animal husbandry and aquaculture, because they can prevent or treat
30
bacterial infections. This kind of drug has many advantages, such as broad antibacterial spectrum,
31
cheap price, and high stability [1]. However, long-term consumption of SAs may accumulate
32
residues in the human and animal body, which may cause diseases, such as liver poisoning, urinary
33
stones, kidney failure, or allergic reactions [2]. Various SAs have different maximum residue limits
34
due to their potential hazards. For most SAs, the maximum residue limit is 0.1 mg/kg. Sulfathiazole
35
and sulfaguanidine are non-detectable. However, SA residues in aquatic products are frequently
36
reported because of the non-standard use of SAs in the breeding process [3]. Currently, the methods
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used to detect SAs in food are based on high performance liquid chromatography (HPLC), such as
38
HPLC-MS [4], HPLC-UV[5], HPLC-DAD [6], HPLC-FL [7] and others (MS= mass spectrometry,
39
UV= UV visible, DAD= diode array,FL= fluorescence) owing to their advantages, such as high
40
sensitivity and accuracy. These methods have steep requirements, such as high cost, large
41
instruments, and relatively long detection processes. Enzyme-linked immunosorbent assay (ELISA)
42
is a common technique used to detect SAs. ELISA requires antibodies from certain SAs, but
2
43
antibodies are unstable and difficult to prepare. Therefore, it is necessary to develop a rapid method
44
suitable for the screening of SA residues from several sample batches.
45
Molecular imprinting (MI) is a well-established technique through which molecularly
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imprinted polymers (MIPs) are synthesized and applied with specific shape, size, and binding sites
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for the certain substance, especially template molecules. The imprinted cavities in MIPs can act as
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synthetic receptors and exhibit high selectivity toward template molecules [8]. The specific
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response of MIPs after adsorption of templates can be obtained through optical or electrical signal.
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MIPs are widely applied to the detection of drug residues in food due to its simple preparation, high
51
efficiency, and reusability [9,10].
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The present MIP sensors generally adopt visible light, fluorescence, or chemiluminescence as
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its signal resource. Using this strategy, fluorescence or chemiluminescence groups should be
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designed and attached to the MIP skeletons, thereby increasing preparation difficulty and lowering
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universality. In recent years, a kind of sensor called photonic crystal molecularly imprinted polymer
56
(PCMIP), which combines MIP and photonic crystal, was developed to obtain self-reporting
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(label-free) sensor signal. The adsorption of template molecules by MIP corresponds to change in
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lattice parameters or refractive index of photonic crystal. The diffraction peak of the photonic
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crystal, which depends on lattice parameters and refractive index, also shifts. Through structure and
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size modification, diffraction peaks of PCMIPs vary across the visible light region to attain visual
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detection. Furthermore, PCMIP sensors exhibit high sensitivity, selectivity, repeatability, stability,
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fast-response and have been used in the detection of organic molecules, metal ions, and even
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biomacromolecules. Wang et al. [11] used a PCMIP sensor to detect doxycycline, tetracycline, and
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aureomycin from milk and honey. Zhao et al. [12] obtained colorimetric measurement of bovine
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hemoglobin. Hu et al. [13] achieved super-sensitive detection of ephedrine/pseudoephedrine and 3
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theophylline/caffeine in urine. Wu et al. [14] prepared a PCMIP for visual detection of atrazine with
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an LOD of 10-16 mol/L. We developed a PCMIP sensor for the analysis of sulfaguanidine in fish
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samples with a LOD of 2.8×10-10mol L-1 [15]. The linear range was from 10-8 mol L-1 to 10-3 mol
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L-1. Zhang et al. [16] used sulfamerazine or sulfamethazine as imprinting molecules to prepare a
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PCMIP sensor with a linear range of 3.8 µM to 22.8 µM. The sensor was applied successfully to
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detect sulfonamides from egg white samples. Chen et al. [17] developed a PCMIP sensor for the
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rapid detection of sulfamethazine. The debye-ring diameter of this sensor increased with increasing
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sulfamethazine concentration. However, the debye-ring diameter was estimated with the naked
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eyes.
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MIPs usually show specificity at different extents towards the template and its structural
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analogs. Sensor arrays can be established based on this MIP characteristic. Cross-reactive sensor
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arrays have become a powerful tool for the identification and classification of various analytes
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through distinct patterns [18]. In the construction of the sensor array, a suitable signal source is
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necessary. The introduction of fluorescence group is a common strategy. Greene [19] integrated
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seven MIPs and blank polymers into an eight-channel array, which adopted UV-Vis, to distinguish
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six different aryl amines and their diastereomers. This was the first MIP-based array. They [20] also
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introduced benzofuran dyes to construct an eight-channel MIP array and used dye substitution
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method to perform color recognition for seven aromatic amines. Tan et al. [21] used a three-channel
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fluorescence MIP sensor array to identify five metal ions. Qiu et al. [22] used a three-channel
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chemiluminescent graphite magnetic MIP sensor array to simultaneously detect diphenol isomers.
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The adoption of fluorescence group as signal resource usually requires fluorescent labeling,
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which increases preparation difficulty and cost. Photonic crystal is an ideal signal source, and the
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sensor array combined photonic crystal and MIP are emerging research subjects. Xu. et al.[23] 4
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proposed the first PCMIP sensor array, and the team established a four-channel PCMIP sensor array
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to identify six kinds of contaminants at a wide range of concentrations with 100% accuracy. Also,
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they [24] established a sensor array, including three PCMIP and one PCNIP elements for the
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discrimination of trace levels of five poly-brominated diphenyl ethers against a high background of
93
interference with 100% accuracy. However, the research works on PCMIP sensor arrays have
94
seldom been reported in spite of its good performance.
95
Principal component analysis (PCA) is a mathematical process to extract important
96
information from a multivariate data table and to express these information as a set of few new
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variables called principal components. PCA reduces dimensionality of a multivariate data to two or
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three principal components that can be visualized graphically, with minimal loss of information.
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Linear discriminant analysis (LDA) is a type of linear combination, a mathematical process that
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uses various data items and applies functions to separately analyze multiple classes of objects or
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items. PCA and LDA are commonly used to analyze a dataset collected from a sensor array to
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obtain discrimination results for various analytes [23-25].
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Based on a previous study [15], our group determined a PCMIP prepared from a distinct SA
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template exhibited diffraction signals varying with different SAs. This finding proved that the
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adoption of PCMIPs as array elements for SAs discrimination is feasible. In this paper, a
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four-channel PCMIP sensing array was constructed, and the sensor data for different SAs were
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collected. The data were analyzed through PCA and LDA analysis to achieve the discrimination of
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six SAs. This study is the first example of using the PCMIP array for the discrimination of SAs. The
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constructed array could also be applied for the discrimination of SAs in food samples with high
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accuracy.
5
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2. Experimental
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2.1 Reagents and materials
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Sulfaguanidine
(SG),
sulfathiazole
(ST),
sulfamethazine
(SM2),
sulfadiazine
(SD),
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sulfadimethoxine (SDM), and sulfanilamide (SA) were obtained from Shanghai Macklin
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biochemical Co., Ltd. (Shanghai, China). Azobisisobutyronitrile (AIBN) was purchased from
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Sinopharm Chemical Reagent Co., Ltd. (Shanghai, China). Tetraethoxysilane (TEOS), ethylene
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glycol dimethacrylate (EGDMA), and methacrylic acid (MAA) were purchased from Aladdin
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Reagent Co., Ltd. (Shanghai, China). Ethanol, methanol, and acetic acid were purchased from
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Xilong Chemical Co., Ltd. (Guangdong, China). All chemicals were analytical grade and were
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directly used without further purification. The water used in all experiments was purified using
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TKA Ultra (18.2 MΩ cm, Germany).
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2.2 Apparatus
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Diffraction spectra were measured on a fiber optic spectrometer (MAX2000-Pro, Wyoptics Co.
124
Ltd., Shanghai, China). Absorbance spectra were measured using an ultraviolet-visible
125
spectrophotometer (UV-Vis) (Lambda 265, South East Chemicals & Instruments Ltd., Hong Kong,
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China). The drying of products was carried out using vacuum dryer (DZF-6030, The CIMO
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Medical Instrument Manufacturing Co., Ltd., Shanghai, China) with a turbine pump (2RK-2B,
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Boerkang Vacuum Electronics Co., Ltd., Shanghai, China). Microwave heating was conducted
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using microwave digestion system (MDS-10, Sineo, Microwave Chemistry Technology Co., Ltd.
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Shanghai, China). Scanning electron microscopy (SEM) images were recorded using JEM-2100
131
microscope (JEOL, Japan) operating at an accelerating voltage of 200 kV. The pH values were 6
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measured using a pH510 meter (EUTECH, Shanghai, China). Photonic crystal was grown in an
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incubator with constant temperature and humidity (Yiheng Science Instrument Co. Ltd., Shanghai,
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China).
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2.3 Synthesis of disperse SiO2 microsphere
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SiO2 microspheres with uniform particle size were synthesized using the improved Stöber
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method [26]. We added 37.5 mL of ethanol and 8.75 mL of ammonia into a 100-mL round-bottom
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flask. The mixture was sealed with a rubber stopper and stirred magnetically for 5 mins at 30 °C for
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full mixing. Then, 2.35 mL of TEOS was added into the reaction system at a stirring speed of 1,100
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rpm within 1 min. Stirring speed was then lowered for enhancing formation of SiO2 microspheres.
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The product was washed with ethanol and centrifuged trice. Finally, the product was vacuum dried
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for 6 h at 40 °C. SiO2 microspheres with different particle sizes were obtained by adjusting the ratio
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of the reactants.
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2.4 Preparation of photonic crystal film
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Photonic crystal (PC) film was prepared by vertical deposition method. The dried SiO2
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microspheres were mixed with ethanol to achieve a mass fraction of 0.5%, which was fully
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dispersed under ultrasound and then poured into a container. Several glass slides previously cleaned
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using 7:3 H2SO4:H2O2 (v/v) solution were placed vertically in the container. The container was
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placed into an incubator at a constant temperature of 40 °C and a constant humidity of 60% for 5
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days to allow the spontaneous growth of the photonic crystal film. Thus, SiO2 particles
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systematically self-assembled on the glass slide surface with the natural evaporation of ethanol.
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2.5 Synthesis of PCMIP sensor array 7
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Three PCMIPs were prepared using thermal-initiated polymerization method with different
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templates molecules of SAs [27]. SG was used as an example to illustrate the preparation process.
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SG at 0.072 mmol was dissolved in 1 mL of methanol, which was then mixed with 346 µL of MAA
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and 154 of µL EGDMA. The mixture was placed in a refrigerator at 4 °C for 12 h to facilitate the
157
formation of hydrogen bonds between MAA and SG template molecules. AIBN at 0.01 g was then
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added as a polymerization initiator. The mixture was bubbled with nitrogen for 10 mins for oxygen
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removal to obtain a pre-polymerization solution. A photonic crystal film was stacked with a
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polymethyl methacrylate (PMMA) plate to form a sandwich-plate. The sandwich-plate was dipped
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into the pre-polymerization solution, and the solution was absorbed into the gaps between SiO2
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microspheres under capillary action. The sandwich-plate was placed in a sealed container for
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polymerization for 6 h at 60 °C. The imprinted polymer produced was distributed among the gaps
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between the SiO2 microspheres. Then, the sandwich-plate was treated with HF solution (1%) for 5
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mins to peel off the glass plate. The SiO2 microspheres and the imprinted polymer were left on the
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PMMA plate. The PMMA plate was treated with 1% HF solution for another 6 h to remove the SiO2
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microspheres, thereby creating a polymer film with an inverse opal structure. The SG molecules in
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the polymer film were eluted with methanol and acetic acid solution (v:v=18:1) until the SG in the
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elution cannot be detected through UV-Vis. The obtained SG-PCMIP was stored in a buffer solution
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of NaH2PO4/Na2HPO4 (0.01 mol L-1, pH 7.6). The SM2-PCMIP and ST-PCMIP were prepared
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following the same method as SG-PCMIP but using SM2 and ST as template molecules. In addition,
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a PCNIP film was prepared using the same method but without any template molecules. The
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detailed experimental scheme was illustrated in Figure 1. Experimental conditions, such as solvent,
174
ratio of template to monomer, and ratio of template to cross-linker, were optimized because they
175
affected the sensitivity of the sensor and the discrimination ability of the array [14-16]. These 8
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conditions were optimized based on the signal response value and by changing the various solvents
177
and ratios with single factor analysis method.
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2.6 Diffraction spectra measurement
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In a typical assay, PCMIP and PCNIP films were respectively immersed in 20 mL of
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NaH2PO4/Na2HPO4 buffer solutions (0.01 mol L-1, pH 7.6) containing SG, SM2, or ST at different
181
concentrations with an incident angle of 0°. After incubation for 10 mins at room temperature, the
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intensity and wavelength of diffraction peaks of PCMIP and PCNIP films were measured using a
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fiber optic spectrometer.
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2.7 Principal component analysis and linear discriminant analysis
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PCA is a multivariate statistical analysis method that selects fewer important variables through
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linear transformation of multiple variables to reduce the dimension of data [23,24]. LDA is a
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multivariate statistical analysis method for identification [25]. Generally, LDA is expected to have
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an identification or group function superior to that of PCA.
189
In this experiment, the data in five parallel tests about diffraction peak shift values (∆λ)
190
against six sulfonamide substances at three concentrations (10-4 mol L-1, 10-6 mol L-1, and 10-8 mol
191
L-1) were collected from four sensor units (3 PCMIP and 1 PCNIP), which were analyzed through
192
PCA and LDA using SPSS Statistics 19 software.
193
3. Results and Discussion
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3.1 Particle size selection
9
195
According to the Bragg equation (λmax=1.633D(n2avg - sin2θ)1/2), the wavelength of diffraction
196
peak of photonic crystal has a linear relationship with lattice constant. In this experiment, SiO2
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microspheres with different particle sizes were prepared using the Stöber method. These
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microspheres were characterized using SEM and particle size statistical analysis. The results are
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shown in Figure 2. The particle sizes of SiO2 prepared were centered at 246, 330, 375, 450, and 625
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nm, respectively (Figure 2A-2E). The SEM diagram of PC membrane prepared with SiO2
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microspheres (375 nm) is shown in Figure 2F, in which the periodical structure was clearly
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observed. The corresponding reflection peaks of photonic crystal film were measured at 510, 600,
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660, 775, and 890 nm, as shown in Figure 3A. The wavelengths of diffraction peaks were basically
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proportional to the particle sizes (Figure 3B), thereby implying that the SiO2 microspheres in
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photonic films were arranged in a periodical array, as shown in Figure 2. The wavelengths
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diffraction peaks of photonic crystals are affected by the SiO2 microsphere arrangement, which is
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dependent on the growth environment. Therefore, the key to this experiment is to control the growth
208
environment and the size of SiO2 microspheres. By comparing the diffraction intensity and peak
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shape of five photonic crystal films (A-E in Figure 3A) under different growth environments, C and
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D resulted in in high intensity and narrow half-peak width, and the PCMIP prepared with C was
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more stable than D. Therefore, the particle size of SiO2 microspheres was controlled at 375 nm.
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3.2 Optimization of preparation conditions of PCMIPs
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Generally, the optimal index for a single sensor is its response value for high sensitivity. In this
214
case, high wavelength shift value (△λ) indicated that the sensor unit had high responsibility for the
215
analyte. However, the sensor array was used to perform a thorough discrimination of analytes.
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Therefore, the optimal index was chosen to obtain the maximum difference between wavelength 10
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shifts from three sensor units for their corresponding sulfonamide template molecules to ensure
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highest identification of different SAs [22].
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Reaction solvent plays an important role in MI [28]. An ideal solvent has sufficiently high
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solubility for template molecules and does not or slightly interfere with the interaction between
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functional monomers and template molecules. The optimization result of solvents showed that
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acetonitrile has the highest shift value (Figure S1a) and difference (Figure S1b), whereas methanol’s
223
performance was a bit lower than acetonitrile. However, acetonitrile has corrosive effect on PMMA
224
plate to an extent that would damage the integrity of PCMIP film. Comprehensive consideration
225
suggested that methanol was the best solvent.
226
As shown in Figure S2, the molar ratio of MAA and EGDMA was optimized in this experiment.
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Excessive EGDMA enabled the formation of a rigid framework structure of PCMIP film to ensure
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sharp diffraction peak with desensitization. Alternatively, excessive MAA was beneficial for high
229
flexibility and sensitivity of PCMIP film, but it caused a vulnerable framework with poor diffraction
230
peak [29]. The molar ratio of MAA to EGDMA of 5:1 had the highest shift value (Figure S2a) and
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difference (Figure S2b). The PCMIP film prepared at the ratio showed moderate rigidity and
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flexibility.
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The ratio of template molecule to functional monomer produced a distinct effect on the
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adsorption amount of PCMIP films [30]. As shown in Figure S3 at a molar ratio of 1:50, the
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differences for the three PCMIPs that reached the maximum and the shift values were the highest
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(SG-PCMIP) or the second higher (SM2 and ST-PCMIP). In addition, SM2 and ST cannot be fully
237
dissolved at ratios exceeding 1:50. Thus, the optimal ratio of template molecule to functional
238
monomer was 1:50.
11
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In conclusion, the conditions were optimized as the molar ratio of SAs, MAA, and EGDMA
240
(1:50:10) with methanol as solvent.
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3.3 Characterization of PCMIPs
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According to the SEM images in Figure 4A, SiO2 microspheres were evenly and orderly
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arranged on the surface of the glass slide, forming an opal structure with symmetry of face-centered
244
cube. According to particle size statistics, the average particle size of SiO2 microspheres was
245
approximately 375 nm with a diffraction peak at 660 nm. In Figure 4B, the PCMIPs film presented
246
an inverse opal structure packing in a manner of ABAB…. Intersecting cavities caused by the
247
elution of SiO2 microspheres were observed. This multi-layer porous structure had high surface area,
248
which facilitated the transfer of target molecules among the PCMIP film. The average period of the
249
PCMIPs film was measured at approximately 270 nm in length from SEM images. The
250
corresponding diffraction peak located at 550 nm from diffraction spectrum is shown in Figure 4C.
251
The blue shift of diffraction peak indicated that the size of cavities in PCMIP was smaller than SiO2
252
microspheres in PC, and such difference was caused by framework contraction after elution of SiO2
253
microspheres.
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3.4 Response time
255
The kinetic experiments of sensor units for their template SAs were performed to determine
256
their equilibrium response time. The concentrations of all the SAs were 10-4 mol L-1. The kinetic
257
curves were shown in Figure 5. The three PCMIPs had the similar response curves. The peak shift
258
values noticeably increased and became stable. The equilibrium response time was hypothesized to
259
be 10 min. The peak shift value of SG PC-MIP was the highest and SM2 PC-MIP was the lowest at 12
260
similar response time, which may have arisen from different molecular structure and size of SAs.
261
SM2 was the SA with the most complex molecular structure, whereas SG was the simplest among
262
the three SAs, according to the response sequence in the kinetics experiments.
263
3.5 Responses of sensor units
264
The sensor array, constructed from four sensor units, SG-PCMIP, SM2-PCMIP, ST-PCMIP, and
265
PCNIP, was used to collect signals from six SAs (SG, SM2, ST, SA, SDM, and SD) at
266
concentrations of 10-4, 10-6, and 10-8 mol L-1 with five parallel tests to obtain their corresponding
267
fingerprints. The diffraction patterns of SG-PCMIP, SM2-PCMIP, and ST-PCMIP of the six SAs at
268
the concentrations of 10-4 mol L-1 were shown in Figure 6A. The SG-PCMIP, SM2-PCMIP, and
269
ST-PCMIP exhibited the highest signal response toward their template molecules, such as SG, SM2,
270
and ST, respectively. The three PCMIPs had abundant imprinted sites for their corresponding
271
template molecules. Thus, the PCNIP had the lowest shift values and the slightest signal difference
272
for six SAs than any one of the PCMIPs, probably because of the absence of imprinted sites for SAs
273
in PCNIP. Each sensor unit had its individual signal set for the six SAs to construct a set of
274
fingerprints that can distinguish the six SAs. The sensor array exhibited the similar fingerprint set at
275
the concentrations of 10-6 mol L-1 and 10-8 mol L-1, as shown in Figure S4A and S5A, which
276
indicated that the sensor array was capable to distinguish six SAs in a wide concentration range.
277
3.5 Principal component analysis
278
PCA was used to reduce the above multi-dimensional data to 2D or 3D dataset [23, 24]. PCA
279
reduced the complexity and size of the training data (4 polymers–6 analytes–5 replicates) and
280
transformed them into roots that were linear combinations of the response patterns. Based on the
281
above signals collected from four sensor units at a concentration of 10-4 mol L-1, two principal 13
282
components (PC1 and PC2) were extracted after PCA analysis. The coefficients from PC1 and PC2
283
were greater than one, and the cumulative percentage reached 88.0%, which indicated that PC1 and
284
PC2 almost contained the total information of the four variables. According to the statistical law, the
285
sum of information amount for principal components greater than 80% indicated that these principal
286
components can represent all variables [31]. A PCA scatter plot was shown in Figure 6B, in which
287
the signals from different SAs were clustered in different areas. This fact implied that the PCA
288
could discriminate various SAs. The signals from another two concentrations at 10-6 and 10-8 mol
289
L-1 were also treated by PCA and the PCA scatter plots, as shown in Figures S4B and S5B. The
290
signals from different SAs were also distinctly distributed. The percentages of PC1 and PC2
291
decreased and increased, respectively, with the concentration of SAs, thereby indicating that the
292
characteristic values from original information disappeared [32].
293
3.6 Linear discrimination analysis
294
The data matrix obtained from sensor units can likely be intuitively represented through the
295
two-dimensional LDA plot, in which each point represented a measurement result, and each ellipse
296
represented the confidence interval of a certain analyte [33,34]. The responses of the assay for six
297
SAs at the concentration of 10-4 mol L-1 were clustered into six tight groups, which were
298
individually separated in the LDA plot (Figure 6C), indicating that the sensor assay exhibited
299
excellent discrimination for the six SAs. The extracted two functions, LD1 and LD2, occupied 87.6%
300
of the total information. This value was a bit lower than PCA (88.0%) at a similar concentration.
301
However, the data in a certain ellipses of LDA were distributed more closely than PCA, thereby
302
indicating that LDA provided discrimination results better than PCA. Similarly, Figures S4C and
303
S5C showed the LDA plots at lower SA concentrations (10-6 and 10-8 mol L-1). The responses of the 14
304
assay for six analytes were distinctly classified with 94.4% and 95.8% of the total information. The
305
extracted information percentages were over 85% at different concentrations, which implied that the
306
array could discriminate various SAs even at low concentrations.
307
LDA is a supervised method for separating classes of objects and for assigning new
308
components to appropriate classes [25]. The LDA results exhibited a satisfying classification
309
performance, which achieved 100% accuracy for both original groups and cross-validation
310
procedure for all three concentrations.
311
The application of the array for the sensor of complex solutions, such as mixtures of analogues
312
is crucial [23-25]. To demonstrate, six SAs were grouped according to their positions in the LDA
313
plots, two neighboring SAs in the LDA plots were assigned in a group, as follows: SG and SA were
314
in group 1; SM2 and SDM were in group 2; and ST and SD were in group 3. They were
315
discriminated by using the LDA method. The result is shown in Figure 7A. Each group was
316
represented by an individual ellipse in the plot. The extracted two functions, namely, LD1 and LD2,
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occupied as high as 100% of the total information. In group 1, SG and SA had close molecular
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structure with small size and steric hindrance. In group 2, SM2 and SDM only had a slight
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difference in molecular structure (–CH3 and –OCH3). In group 3, ST and SD had similar structures.
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Thus, the array exhibited similar signal responses for SAs in the same group. However, even for the
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two SAs in one group (ellipse), distinct distribution difference was also observed, indicating that the
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array was able to discriminate SAs with tight structure differences.
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The discrimination experiments of the array for SA mixtures were also performed to
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investigate the anti-interference ability of the approach in the presence of other SAs. Four solutions
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were chosen, as follows: single analyte of SG; two-analyte mixture of SG + SM2; three-analyte
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mixture of SG+SM2+ST; and four-analyte mixture of SG+SM2+ST+SA. The discrimination result 15
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is shown in Figure 7B. The extracted functions, LD1 and LD2, occupied 86.1% of the total
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information, thereby indicating that the array achieved the discrimination for 4 mixtures with
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growing interfering substances.
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3.7 Sample analysis
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The application of the array for sensing complex solutions, such as food sample is a huge
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challenge. The practical application of the array was investigated through SA residues’
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discrimination in fish. The results were shown in Figure 8. The solid ellipses of 1-6 represented the
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discrimination of the spiked SAs, and the dotted ellipses represented the predicted areas at which
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the spiked SAs should be. Clearly, the expected areas and the measured areas matched well with a
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discrimination accuracy of 90.9% in spite of the interference from complex components in the fish
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matrix. Food analysis using MIP arrays is seldom reported. Thus, the as-prepared array proposed a
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strategy applicable in food analysis.
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4. Conclusions
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A sensor array combining MI technology and optical self-reporting was prepared. The array
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was composed of four kinds of sensor units that had various diffraction signals against six SAs. The
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response time was only 10 mins. A molar ratio of 1:50:10 of template, monomer, and cross-linker
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was proposed based on the optimum experiments. The signals of the array for six SAs were
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collected and processed using PCA and LDA methods. The array was confirmed to discriminate six
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individual SAs or their mixtures at three concentrations. Moreover, the array can be applied to the
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SA discrimination of fish samples with an accuracy of 90.9%.
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Acknowledgements
16
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This research was supported by the Natural Science Foundation of Fujian Province of China
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(2018J01432, 2017J01633), the Open Foundation from Key Laboratory of Food Microbiology and
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Enzyme Engineering of Fujian Province (B18097-5), cultivation project in Jimei University for
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national foundation (ZP2020029), and the National Undergraduate Training Programs for
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Innovation and Entrepreneurship (201910390017, 201810390024, 201710390300).
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Interest statement
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Declaration of interest: none
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Figure Captions
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Figure 1. Schematic illustration of a four-channel array fabrication based on colloidal-crystal molecular
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imprinting.
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Figure 2. A–E: SEM and particle size distribution of SiO2 with different particle sizes (A: 264.72 nm, B: 329.56
435
nm, C: 375.23 nm, D: 449.76 nm, and E: 623.65 nm). F: SEM and particle size distribution of a PC membrane
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prepared with SiO2 microspheres (375 nm).
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Figure 3. (A) Reflection peak of PC membrane obtained from SiO2 microspheres with different particle sizes
438
(where S is the SiO2 microspheres at 200 nm purchased for comparison, and A–E are the SiO2 microspheres with 20
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different particle sizes obtained by adjusting reaction conditions). (B) Linear relationship between the particle size
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of SiO2 microsphere and the reflection peak position of PC membrane.
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Figure 4. SEM and particle size distribution of the PC film (A), PCMIP film (B), and their reflection spectra (C).
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Figure 5. Dynamic response curve of sensor unit (The concentration of SG/SM2/ST is 10-4 mol L-1).
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Figure 6. Discrimination ability of the sensor array for 6 SAs at 10-4 mol L-1 (n=5). (A) Characteristic shift values
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of each sensor unit for the six SAs used to perform PCA and LDA. (B) PCA plot at two principal components with
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a cumulative eigenvalue of 88.0%. (C) LDA plot at two discrimination functions with a cumulative eigenvalue of
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87.6%.
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Figure 7. Linear discriminant diagrams (A) for SAs in the three groups (1:SG+SA; 2: SM2 + SDM; 3: ST + SD;
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C=10-4 mol L-1, n=5) and (B) for SA mixtures (1:SG, 2:SG+SM2, 3:SG+SM2+ST, 4:SG+SM2+ST+SA; C=10-4
449
mol L-1, n=5).
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Figure 8. Linear discriminant diagrams for SAs in fish samples (n=5, C= 10-4 mol L-1).
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Molecularly imprinted polymer-based photonic crystal sensor array for the discrimination of sulfonamides Zheng-zhong Lin1, Lei Li1, Guiyu Fu1, Zhu-zhi Lai2, Ai-hong Peng1, Zhi-yong Huang1,3,*
Figure S1. (a) Wavelength shifts from three sensor units for their corresponding sulfonamide template molecules in various solvents, for example SG-PCMIP vs SG. High wavelength shift value indicates the sensor unit behaves high responsibility for its template.(b) Differences of wavelength shifts from three sensor units in various solvents. High difference indicates that the sensor array (three sensor units) behaves high discrimination ability for different sulfonamides.(DMSO represented dimethyl sulfoxide, MeCN represented acetonitrile, MeOH represented methanol, TM represented trichloromethane). The concentrations of sulfonamides (SG/SM2/ST) were 10-4 mol L-1. The molar ratio of MAA to EGDMA was fixed at 7.5:1 and sulfonamides to MAA was at 1:70.
Figure S2. (a) Wavelength shifts from three sensor units for their corresponding sulfonamide template molecules under different molar ratios of MAA to EGDMA.(b) Differences of
wavelength shifts from three sensor units under different molar ratios of MAA to EGDMA. The concentrations of SG/SM2/ST were 10-4 mol L-1. The solvents were MeOH, The molar ratio of sulfonamides to MAA was at 1:70.
Figure S3. (a) Wavelength shifts from three sensor units for their corresponding sulfonamide template molecules under different molar ratios of SAs to MAA.(b) Differences of wavelength shifts from three sensor units under different molar ratios of SAs to MAA. The concentration of SG/SM2/ST is 10-4 mol L-1. The solvents were MeOH, The molar ratio of MAA to EGDMA was fixed at 7.5:1.
Figure S4. Discrimination ability of the sensor array for 6 SAs at a concentration of 10-6mol L-1. (n=5). (a) Characteristic shift values of each sensor unit for 6 SAs that were used to perform PCA and LDA. (b) PCA plot at two principal components with a cumulative eigenvalue of 88.7%. (c)
LDA plot at two discrimination functions with a cumulative eigenvalue of 94.4%.
Figure S5. Discrimination ability of the sensor array for 6 SAs at a concentration of 10-8mol L-1. (n=5). (a) Characteristic shift values of each sensor unit for 6 SAs that were used to perform PCA and LDA. (b) PCA plot at two principal components with a cumulative eigenvalue of 86.2%. (c) LDA plot at two discrimination functions with a cumulative eigenvalue of 95.8%.
Photonic crystal imprinting array was firstly reported for sulfonamide discrimination The applicable concentration range of sulfonamide is wide (10-4~10-8 mol/L) The response is rapid and label-free The array was applicable in food analysis
Declaration of interests ☐The authors declare that they have no known competing financialinterestsor personal relationships that could have appeared to influence the work reported in this paper. ☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: