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Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals

The combination of the generic mobile technology and inherent stability, versatility and cost-effectiveness of the synthetic receptors allows producing optical sensors for potentially any analyte of interest, and, therefore, to qualify as a platform technology for a fast routine analysis of a large...

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Autores principales: Sergeyeva, Tetyana, Yarynka, Daria, Dubey, Larysa, Dubey, Igor, Piletska, Elena, Linnik, Rostyslav, Antonyuk, Maksym, Ternovska, Tamara, Brovko, Oleksandr, Piletsky, Sergey, El’skaya, Anna
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7435851/
https://www.ncbi.nlm.nih.gov/pubmed/32752255
http://dx.doi.org/10.3390/s20154304
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author Sergeyeva, Tetyana
Yarynka, Daria
Dubey, Larysa
Dubey, Igor
Piletska, Elena
Linnik, Rostyslav
Antonyuk, Maksym
Ternovska, Tamara
Brovko, Oleksandr
Piletsky, Sergey
El’skaya, Anna
author_facet Sergeyeva, Tetyana
Yarynka, Daria
Dubey, Larysa
Dubey, Igor
Piletska, Elena
Linnik, Rostyslav
Antonyuk, Maksym
Ternovska, Tamara
Brovko, Oleksandr
Piletsky, Sergey
El’skaya, Anna
author_sort Sergeyeva, Tetyana
collection PubMed
description The combination of the generic mobile technology and inherent stability, versatility and cost-effectiveness of the synthetic receptors allows producing optical sensors for potentially any analyte of interest, and, therefore, to qualify as a platform technology for a fast routine analysis of a large number of contaminated samples. To support this statement, we present here a novel miniature sensor based on a combination of molecularly imprinted polymer (MIP) membranes and a smartphone, which could be used for the point-of-care detection of an important food contaminant, oestrogen-like toxin zearalenone associated with Fusarium contamination of cereals. The detection is based on registration of natural fluorescence of zearalenone using a digital smartphone camera after it binds to the sensor recognition element. The recorded image is further processed using a mobile application. It shows here a first example of the zearalenone-specific MIP membranes synthesised in situ using “dummy template”-based approach with cyclododecyl 2, 4-dihydroxybenzoate as the template and 1-allylpiperazine as a functional monomer. The novel smartphone sensor system based on optimized MIP membranes provides zearalenone detection in cereal samples within the range of 1–10 µg mL(−1) demonstrating a detection limit of 1 µg mL(−1) in a direct sensing mode. In order to reach the level of sensitivity required for practical application, a competitive sensing mode is also developed. It is based on application of a highly-fluorescent structural analogue of zearalenone (2-[(pyrene-l-carbonyl) amino]ethyl 2,4-dihydroxybenzoate) which is capable to compete with the target mycotoxin for the binding to zearalenone-selective sites in the membrane’s structure. The competitive mode increases 100 times the sensor’s sensitivity and allows detecting zearalenone at 10 ng mL(−1). The linear dynamic range in this case comprised 10–100 ng mL(−1). The sensor system is tested and found effective for zearalenone detection in maize, wheat and rye flour samples both spiked and naturally contaminated. The developed MIP membrane-based smartphone sensor system is an example of a novel, inexpensive tool for food quality analysis, which is portable and can be used for the “field” measurements and easily translated into the practice.
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spelling pubmed-74358512020-08-25 Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals Sergeyeva, Tetyana Yarynka, Daria Dubey, Larysa Dubey, Igor Piletska, Elena Linnik, Rostyslav Antonyuk, Maksym Ternovska, Tamara Brovko, Oleksandr Piletsky, Sergey El’skaya, Anna Sensors (Basel) Article The combination of the generic mobile technology and inherent stability, versatility and cost-effectiveness of the synthetic receptors allows producing optical sensors for potentially any analyte of interest, and, therefore, to qualify as a platform technology for a fast routine analysis of a large number of contaminated samples. To support this statement, we present here a novel miniature sensor based on a combination of molecularly imprinted polymer (MIP) membranes and a smartphone, which could be used for the point-of-care detection of an important food contaminant, oestrogen-like toxin zearalenone associated with Fusarium contamination of cereals. The detection is based on registration of natural fluorescence of zearalenone using a digital smartphone camera after it binds to the sensor recognition element. The recorded image is further processed using a mobile application. It shows here a first example of the zearalenone-specific MIP membranes synthesised in situ using “dummy template”-based approach with cyclododecyl 2, 4-dihydroxybenzoate as the template and 1-allylpiperazine as a functional monomer. The novel smartphone sensor system based on optimized MIP membranes provides zearalenone detection in cereal samples within the range of 1–10 µg mL(−1) demonstrating a detection limit of 1 µg mL(−1) in a direct sensing mode. In order to reach the level of sensitivity required for practical application, a competitive sensing mode is also developed. It is based on application of a highly-fluorescent structural analogue of zearalenone (2-[(pyrene-l-carbonyl) amino]ethyl 2,4-dihydroxybenzoate) which is capable to compete with the target mycotoxin for the binding to zearalenone-selective sites in the membrane’s structure. The competitive mode increases 100 times the sensor’s sensitivity and allows detecting zearalenone at 10 ng mL(−1). The linear dynamic range in this case comprised 10–100 ng mL(−1). The sensor system is tested and found effective for zearalenone detection in maize, wheat and rye flour samples both spiked and naturally contaminated. The developed MIP membrane-based smartphone sensor system is an example of a novel, inexpensive tool for food quality analysis, which is portable and can be used for the “field” measurements and easily translated into the practice. MDPI 2020-08-01 /pmc/articles/PMC7435851/ /pubmed/32752255 http://dx.doi.org/10.3390/s20154304 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sergeyeva, Tetyana
Yarynka, Daria
Dubey, Larysa
Dubey, Igor
Piletska, Elena
Linnik, Rostyslav
Antonyuk, Maksym
Ternovska, Tamara
Brovko, Oleksandr
Piletsky, Sergey
El’skaya, Anna
Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals
title Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals
title_full Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals
title_fullStr Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals
title_full_unstemmed Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals
title_short Sensor Based on Molecularly Imprinted Polymer Membranes and Smartphone for Detection of Fusarium Contamination in Cereals
title_sort sensor based on molecularly imprinted polymer membranes and smartphone for detection of fusarium contamination in cereals
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7435851/
https://www.ncbi.nlm.nih.gov/pubmed/32752255
http://dx.doi.org/10.3390/s20154304
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