Revisiting the Role of Sensors for Shaping Plant Research: Applications and Future Perspectives
Abstract
:1. Introduction
2. Application of Nanosensors in Agriculture
3. Application of Nanosensors for Pesticide Detection
4. Application of Nanosensors for the Detection of Heavy Metals
5. Role of Nanosensors for the Detection of Phytopathogens and Pests
6. Challenges and Future Perspectives of Sensor-Based Smart Farming
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Nanosensor Type | Sensor Types and Sensing Mechanism | Pesticide Detected and Trace Amounts | Purpose | Finding | References |
---|---|---|---|---|---|
| Imazapyr quenches the fluorescence intensity of aminopropyltriethoxysilane (APTES)-coated ytterbium oxide (Yb2O3) nanoparticles. | Imazapyr at 0.2 ppm | The hydrothermal production of ytterbium oxide (Yb2O3) nanoparticles was followed by surface modification with aminopropyltriethoxysilane (APTES) to create a biocompatible tunable fluorescent nanosensor for the accurate and effective monitoring of imazapyr. | Exhibited excellent efficiency in detecting imazapyr and demonstrating its potential for herbicide sensing in real field conditions. | [56] |
Introduction of glyphosate into the solution leads to the inhibition of the catalytic activity of Copper (II) oxide (CuO) by multiwall carbon nanotube (MWCNT) nanomaterials, resulting in a fluorescence response being turned off. | Glyphosate at 0.67 ppb | Turn-off fluorescence sensor that detects glyphosate by inhibiting the catalytic activity of CuO/MWCNTs. | A highly efficient and sensitive nanosensor for detecting glyphosate. | [62] | |
| Affinity sensor. Atrazine selectively binds to molecular imprinted nanoparticles on the gold surface of the SPR chip. | Atrazine at 0.7134 ng/mL | Atrazine-imprinted nanoparticles are synthesised using the emulsion polymerization process and subsequently affixed to the gold surface of the surface plasmon resonance system. | Selective atrazine detection using plastic antibody-based surface plasmon resonance nanosensors. | [68] |
Optic-sensor: interaction with silver film leading to change in refractive index. | Fenitrothion at 38 nM | Fenitrothion is determined by utilizing Ta2O5 nanostructures immobilized onto a reduced graphene oxide matrix. | Use of selective and sensitive optical fiber sensor utilizing SPR for the identification of fenitrothion pesticide. | [57] | |
| Luminescence sensor: glyphosate inhibits enzymatic reaction by competing with L-cysteine which in turn forms glyphosate-Cu (II). This complex inhibits the catalytic action of peroxidase-mimicking substances. | Glyphosate at 0.5 nM | An electrochemical luminescence sensor employing a double suppression mechanism for the highly sensitive detection of glyphosate. | The sensor detects glyphosate using a double inhibition approach with effective detection performance, accurate sensitivity, reproducibility and stability in detection of glyphosate. | [63] |
Electrochemical detection of methyl parathion using CuO-TiO2 complex nanocomposites coupled with a glass carbon electrode. | Methyl parathion at 1.21 ppb | Efficient detection of methyl parathion pesticide using non-enzymatic electrochemical sensor based on CuO-TiO2. | Using non-enzymatic electrochemical nanosensor with CuO-TiO2 hybrid nanocomposites for sensitive and selective detection of methyl parathion. | [64] | |
Aptasensor based sensor. Specific interaction between the biotinylated aptamer sequence of DNA and malathion molecules, immobilized onto the iron oxide-doped chitosan/FTO electrode. | Malathion at 0.001 ng/mL | Efficient sensors for the detection of malathion which provide a rapid and reliable method for analyzing malathion contamination in lettuce leaves and soil samples. | The successful fabrication and characterization of chitosan–iron oxide nanocomposite (CHIT–IO) layer on fluorine tin oxide (FTO) electrode as well as the detection of malathion in lettuce leaves and soil sample. | [65] | |
This nanosensor relies on the hindrance of the redox reaction of CuO nanoparticles by malathion. | Malathion at 0.01 nM | To provide an efficient electrochemical platform for the identification of malathion, utilizing copper oxide nanoparticles supported on 3D graphene as a non-enzymatic sensing interface. | In soil sample, malation detection was based on copper oxide nanoparticles supported by three-dimensional graphene used by the electrochemical sensor. | [69] | |
| The strength of the surface-enhanced Raman spectroscopy (SERS) signal rises accordingly with the concentration of dimethoate. | Dimethoate at 0.002 ppm | Surface-enhanced Raman spectroscopy (SERS) using silver nanodendrites on microsphere end-shape optical fibre for the identification of pesticide residues. | Enabling highly sensitive identification of Rhodamine-6-G and dimethoate pesticide at ultralow concentrations, demonstrating its potential for highly-sensitive chemo-sensing applications. | [66] |
To detect variations in the concentration of metribuzin, the distinctive luminescent capabilities of upconverting nanoparticles (UCNPs) are combined with the colorimetric response of a near infrared (NIR) dye contained in a polyvinyl chloride (PVC) matrix. | Metribuzin at 6.8 × 10−8 M | To enable the detection of metribuzin, a prevalent pesticide, within a low concentration range using a ratiometric and colorimetric optical sensor film. | Highly sensitive sensor with UCNPs’ distinctive luminous features and outstanding recognition abilities at extremely low detection limits. | [67] |
Nanosensor Type | Sensor Types and Sensing Mechanism | Detected Heavy Metal and Trace Amounts | Purpose | Finding | References |
---|---|---|---|---|---|
ICTS nanosensor | Monoclonal antibodies bind specifically to the cadmium-ethylenediaminetetraacetic acid (EDTA) complex, allowing for more selective detection of cadmium ions in aqueous samples. | Cadmium (Cd) at 0.35 µg/L | Using specific on-site screening tool utilizing an enhanced test strip for the quick identification of cadmium [Cd (II)] ions, particularly when the sample comprises the excess of ethylenediaminetetraacetic acid (EDTA) | Sensitive and specific colorimetric test strip that uses a monoclonal antibody for the cadmium-ethylenediaminetetraacetic acid (EDTA) complex, capable of detecting cadmium. | [95] |
Colorimetric nanosensor | Mn3O4 nanoparticles’ oxidase-mimicking activity via oligonucleotides, where heavy metal ions interfere with the inhibition of tetramethylbenzidine (TMB) oxidation, resulting in a color change from light green to yellow, allowing visual identification of heavy metal ions in solution. | Mercury (Hg (II)) at 3.8 μg·L−1 and cadmium [Cd (II)] at 2.4 μg·L−1 | A colorimetric test that uses Mn3O4 nanoparticles regulated by oligonucleotides to visually identify heavy metals, specifically mercury [Hg (II)] as well as cadmium [Cd (II)], with the aim of obtaining high sensitivity and selectivity. | Colorimetric technique using Mn3O4 nanoparticles regulated by oligonucleotides for visual detection of heavy metals, particularly mercury [Hg (II)] as well as Cd (II), with good sensitivity, selectivity, and validity in water samples. | [96] |
Etching silver-coated gold nanobipyramids causes a color shift that is used to detect Hg2+. | Mercury at 0.8 µM | The gold nanobundles Au NBs were created using the seed-mediated growth method, and then different quantities of AgNO3 were added to the colloidal solution to form Au NBs–Ag nanoparticles. The Au NBs were created using the seed-mediated growth method, and then different quantities of AgNO3 were added to the colloidal solution to form Au-NBs–Ag nanoparticles. | The strategy saves time and eliminates the need for difficult operations. | [97] | |
Hg (II) ions coupled with the dithioacetal-based stimulus–responsive molecular gates cause a colorimetric shift in the reporter dye placed onto the mechanized mesoporous silica nanoparticles (MSN), allowing for sensitive and selective detection of Hg (II) ions. | Mercury (Hg) at 60 pM | A highly efficient colorimetric nanosensor for detecting Hg (II) ions, using mechanized mesoporous silica nanoparticles functionalized with stimulus-responsive molecular gates. | Hg (II) is detected using a colorimetric nanosensor that uses mechanized mesoporous silica nanoparticles functionalized with dithioacetal-based molecular gates. | [98] | |
Pd (II) aggregated APP-AuNPs more readily than other metals, thereby eliminating the SPR. |
Palladium Pd (II) at 4.23 µM | To detect Pd(II), gold nanoparticles were stabilized using the cationic 1-(3-(acetylthio)propyl)pyrazin-1-ium ligand. | The nanosensors permit naked eye detection. | [96] | |
Optical nanosensor | Nanohybrid CdSe QDs. Following the addition of cadmium, green photoluminescence gradually returned. | Cadmium at 25 nM | Utilizing a modified reverse microemulsion technique, amino-capped CdTe–SiO2 core-shell-structured fluorescent silica nanoparticles were created. The CdTe–SiO2–CdSe ratiometric probes were made by covalently pairing green-emitting dual-stabilizer-capped CdSe to the silica membrane. | [96] | |
Multimodal nanosensor | Fluorescence quenching as the quantity of Hg2+ increases. | Mercury at 0.49 nM | Following their preparation using the chemical coprecipitation process, silica-coated Fe2O3 nanoparticles were electrostatically bonded to cysteamine-capped CdTe QDs. | The identified analyte can be eliminated with an external bar magnet, leaving no residual contamination. | [99] |
Surface plasmon resonance | When the metal bound to silver nanoparticles based on epicatechin, it displayed a hyperchromic change. | Lead at 1.52 μM | The epicatechin and AgNO3 ratios were mixed, and then the mixture was stirred magnetically to create the ECAgNPs, which were then employed for lead detection. | AgNPs can preferentially detect Pb2+ in the presence of additional interfering metal ions. | [100] |
Electrochemical sensor | As heavy metal concentrations rise, the peak current rises as well. | Cadmium at 8.5 nM, lead at 0.6 nM and copper at 0.8 nM | N-hydroxysuccinimide (NHS) and 1-ethyl-3-(3-dimethylaminopropyl) carbodiimide (EDC) were used as crosslinking agents to prepare Fc-NH2-UiO-66, which was then dispersed on the trGNO nanosheets, and NH2-UiO-66 which was synthesized hydrothermally. | Found to be an excellent platform for the identification of numerous heavy metal ions at once. | [96] |
Magnetic-fluorescent based nanosensor | Quenching of nanosensor’s fluorescence. | Mercury at 9.1 × 10−8 mol/L | Fe3O4 nanoparticles and QDs were encapsulated using carboxymethyl chitosan as an encapsulating agent, producing multifunctional magnetic–fluorescent nanoparticles that were subsequently employed as nanosensors. | The nanosensor exhibits improved Hg2+ ion selectivity and sensitivity. | [101] |
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Tyagi, A.; Mir, Z.A.; Ali, S. Revisiting the Role of Sensors for Shaping Plant Research: Applications and Future Perspectives. Sensors 2024, 24, 3261. https://doi.org/10.3390/s24113261
Tyagi A, Mir ZA, Ali S. Revisiting the Role of Sensors for Shaping Plant Research: Applications and Future Perspectives. Sensors. 2024; 24(11):3261. https://doi.org/10.3390/s24113261
Chicago/Turabian StyleTyagi, Anshika, Zahoor Ahmad Mir, and Sajad Ali. 2024. "Revisiting the Role of Sensors for Shaping Plant Research: Applications and Future Perspectives" Sensors 24, no. 11: 3261. https://doi.org/10.3390/s24113261
APA StyleTyagi, A., Mir, Z. A., & Ali, S. (2024). Revisiting the Role of Sensors for Shaping Plant Research: Applications and Future Perspectives. Sensors, 24(11), 3261. https://doi.org/10.3390/s24113261