Fabrication of a colorimetric sensor using acetic acid-capped drug-mediated copper oxide nanoparticles for nitrite biosensing in processed food

1 Introduction

Among nitrogen-containing inorganic ions, three ions, i.e., NH4+, NO2−, and NO3−, in the environment are essential nutrients for the growth of plants and in the food industry (Flores and Toldrá, 2021). Sodium and potassium salts of nitrite and nitrate have long been used in the meat industry as food preservatives. They work by prolonging the shelf life of processed meat, giving it a better taste, and fixing its color (Majou and Christieans, 2018). Nitrite is more frequently detected in groundwater than in surface water. Livestock waste, artificial fertilizers, and erosion of natural deposits are its main sources (Greer et al., 2005). The Environmental Protection Agency (EPA) of the United States has defined the maximum contamination level (MCL) of nitrite in drinking water and food products to be 21.7 mM (Ozdestan and Uren, 2010) and 125 mg/kg, respectively (Singh et al., 2019). The excess intake of NO2− reported different medical issues, such as birth defects and methemoglobinemia, commonly known as blue baby syndrome (Brender, 2020), affecting the nervous system (Wang et al., 2016), spleen, and kidneys, and also causing esophageal cancer (Ozdestan and Uren, 2010). Due to the strong reactivity of nitrite, rapid and accurate analytical techniques are required to reduce human health risks. It is vital to identify and monitor the NO2− concentration of food products and environmental, organic, and inorganic samples.

Carboxylic acids are the most common organic compounds and belong to the class of green solvents, possessing no or low toxicity and being relatively inexpensive (Teles et al., 2017). They have significant applications in the petrochemical, food, dye, and stabilizer industries, as well as in nanotechnology (Odedairo et al., 2013). In addition to stabilizing nanoparticles, they can also affect the solubility, reactivity, size, and shape of nanoparticles, as well as the surface modification of nanostructures (Sarkar et al., 2005). Carboxylic acids are used as stabilizers because they can easily coordinate with the surface of nanoparticles (Hosseini-Monfared et al., 2015). Moreover, the functionalization of nanoparticles with the carboxylic group produces more active sites for sensing (Sáenz-Galindo et al., 2018).

Numerous methods have been employed to detect nitrite, such as chromatographic (Lim et al., 2022), chemiluminescence (Basu et al., 2022), electroanalytical (Gao et al., 2020), and spectrophotometric methods (Karrat et al., 2022). However, the aforementioned analytical techniques have some limitations when used on a daily basis for nitrite detection. Due to complicated sample preparation procedures, expensive and complicated instruments, and highly trained operators, these techniques have become undesirable in laboratories, especially with limited financial resources. Therefore, it is desirable to develop such techniques, which could be more efficient, more fruitful, and less expensive. Usually, scientists try to translate the analyte signals into colors, which can be easily detected with the naked eye. A very simple and cheap colorimetric sensor is particularly attractive for nitrite detection in food and water samples (Zhang et al., 2012). Simple, cost-effective design, and quick response are the cornerstones of colorimetric sensors (Nishan et al., 2021a). Prior to becoming a bulky and complicated device, a sensor’s various functional components, such as the transducer, recycling unit, and discovery unit, were crucial to a delayed detector response (Cheng et al., 2014). Recently, electrocatalyst materials have played important roles in colorimetric sensors due to their desirable characteristics, including strong surface plasmon resonance and distance-dependent optical properties, as well as the fact that their performance events may be seen with the naked eye (Nishan et al., 2021b). Currently, a number of electrocatalytic materials, including metallic oxides, carbon nanomaterials, and metal nanomaterials, have been employed to create nitrite sensors (Lin et al., 2011; Wang et al., 2014).

For the colorimetric detection of nitrite, various nanomaterials have been reported, such as Au NPs-rGO (Amanulla et al., 2017), Ag/Au NPs (Li et al., 2015), MTT-G NPs (Nam et al., 2014), Au NPs (Ye et al., 2015), Er2O3 NPs@RGO (Rajaji et al., 2019), Fe3O4@SiO2/Au magnetic nanoparticles (Chen et al., 2016), shell-isolated nanoparticles (Zhang et al., 2013), Pd NPs (Pourreza and Abdollahzadeh, 2019), Ag NPs (Kumar and Anthony, 2014), Fe3O4/MWCNTs (Qu et al., 2015), AuNP-CeO2 NP@GO (Adegoke et al., 2021), and MnO2 NPs (Nishan et al., 2022). Compared to different inorganic oxides, such as V2O5, NiO, and Co3O4, copper oxide nanoparticles (CuO NPs) have gained much attention because of their low cost, availability, and lack of toxicity (Jaiswal et al., 2017). CuO NPs are exceptional materials for the optical detection of nitrite due to their surface plasmon properties.

The current research reports the drug-mediated production of CuO nanostructures via using the Augmentin drug as a reducing and stabilizing agent. It is the first study on the production of CuO NPs via drug-mediated means without the need for any additional reduction agents. Furthermore, to overcome the problem of agglomeration of the nanoparticles and the availability of surface area for reactions, acetic acid has been employed as a deagglomerating and capping agent. The platform of acetic acid-capped CuO NPs has been successfully used as a colorimetric sensor for the detection of nitrite. Comprehensive optimization of various parameters, such as loading of nanoparticles, pH, reaction time, and concentration of nitrite, was carried out. The sensing platform was also successfully applied to real samples.

2 Experimental

2.1 Reagents

All the required chemicals, including acetic acid (CH3COOH, 98.4%), copper sulfate (CuSO4, 99.4%), and sodium nitrite (NaNO2, 98.2%), were analytical-grade reagents and were purchased from Sigma-Aldrich, and 1 g of Augmentin drug tablets (GSK) were purchased from a local medical store.

2.2 Instrumentation

An FTIR spectrometer (Agilent Technologies, Danbury, Connecticut, United States) was used to observe the characteristic peaks of CuO NPs. Samples were analyzed for their thermal stability by simultaneous thermal analysis (STA) (PerkinElmer, Waltham, Massachusetts, United States) and thermal gravimetric analysis (TGA) at temperatures ranging from 30°C-800°C. An energy-dispersive X-ray spectrometer (EDX) (Model JSM 6390) was used for the confirmation of the chemical composition of the synthesized CuO NPs (SEM-EDS) with a TESCAN VEGA (LMU) SEM with INCAx-act (Brno, Czech Republic). X-ray diffraction was used for the analysis and phase identification of CuO NPs (Shimadzu, Kyoto, Japan, LabX XRD-6100) with Cu-Kα radiation at a scan range of 10°C-80°C. Absorption spectra were measured through UV-visible spectroscopy (Agilent Shimadzu, UV-1800, Kyoto, Japan).

2.3 Synthesis of CuO NPs

Two 1 g Augmentin tablets were mechanically ground into a fine powder, and 50 mM of Augmentin solution was prepared (50 mL) in distilled water followed by filtration. The clear filtrate was added to the 50 mM copper nitrate solution dropwise for 5 h under stirring, and the solution was centrifuged for 15 min at 4,000 rpm at 4°C. The prepared nanoparticles were kept in an oven for drying at 50°C for 4 h. The dried nanoparticles were kept in an Eppendorf tube at room temperature for further use (Nishan et al., 2020; Asad et al., 2022).

2.4 Deagglomeration of CuO nanostructures with acetic acid

Copper oxide nanoparticles were coated with acetic acid. Acetic acid has been used as a dispersion medium and stabilizing agent to avoid the agglomeration of the nanoparticles. In this process, 1 mL of acetic acid and 6 mg of copper oxide nanoparticles were combined and stirred for 30 min with a glass rod for uniform dispersion. The acquired mixture of copper oxide nanoparticles coated with acetic acid was stored and used for the colorimetric detection of nitrite. One of the methods used is to cover colloids with a protective agent that may be bound to the surface of the particles in order to keep the nanoparticles suspended and, thus, prevent aggregation (Deng et al., 2013).

2.5 Colorimetric detection of nitrite

For the colorimetric detection of nitrite ions, the reaction was conducted at ambient temperature and in acidic media. For the proposed assay, 100 μL of nitrite solution (2.4 × 10−6 M) and 100 μL of CH3COOH-capped copper oxide nanoparticles were taken in an Eppendorf tube at room temperature. After the addition of nitrite solution, the brown color of the acetic acid-coated copper oxide nanoparticles changed into a light yellow color. The proposed assay response was observed with the naked eye and also assessed using a UV-Vis spectrophotometer.

3 Results and discussion

3.1 Characterization of CuO NPs

Prior to the investigation of the potential sensing application of the proposed CuO NPs, it was characterized by the following techniques.

3.1.1 UV-Vis spectrophotometry

The UV-visible spectrum of the synthesized CuO NPs is shown in Figure 1. The recorded main peak at 350 nm is consistent with the literature-reported values of corresponding CuO NPs (Fernández-Arias et al., 2020).

3.1.2 The synthesized nanostructures’ FTIR analysis

The produced nanoparticles’ FTIR spectrum is depicted in Figure 2. FTIR confirms the existence of various functional groups. The broad band in the region of 3,238-2,500 cm−1 indicated the presence of the OH group of the carboxylic group. The band at 1,592 cm−1 is assigned to the C-O stretching vibrations of the carboxylic group. The 1,242 cm−1 and 1,373 cm−1 absorption band regions were assigned to C-N bending vibration and S = O stretching, respectively. The absorption band in the 655 cm−1 region indicated a Cu-O stretching vibration, confirming the formation of CuO NPs (Ethiraj and Kang, 2012).

3.1.3 XRD analysis

The XRD pattern shows the high crystalline nature of the drug-induced CuO NPs with prominent sharp peaks, as shown in Figure 3. The diffraction peaks ascribed to the Miller indices 110, 111, 200, 220, 311, and 222.68 at 2ϴ are 29.86°C, 36.58°C, 42.60°C, 61.84°C, 73.85°C, and 77.68°C. The XRD analysis shows the peculiar purity of CuO NPs with no additional peaks. By using the Debye-Scherrer equation, the average crystalline size of CuO NPs is 22 nm. The findings were intimately associated with the results for nanoparticles of cuprous oxide (Shi et al., 2019).

3.1.4 EDX analysis

Figure 4 displays the produced nanoparticles’ EDX spectrum. The EDX of the copper oxide nanoparticles spectrum indicates that the weight composition of copper and oxygen is 87.2% and 12.72%, respectively. The EDX spectrum with no other peak reflects the high purity of the synthesized copper oxide nanoparticles. The elemental analysis is shown in Table 1. The EDX results are in good conformity with the available literature for CuO nanoparticles (Hosseini-Koupaei et al., 2019).

3.1.5 TGA analysis

The thermal stability of the copper oxide nanoparticles was confirmed by TGA, as shown in Figure 5. The first TGA curve between 100°C-150°C curve shows a 0.7 percent loss in weight, indicating the loss of water, while the loss of organic moieties is in the range of 170°C-250°C, with a weight loss of 2.7 percent. Owing to the surface oxidation reactions taking place in the reacting atmosphere, the curve also shows weight gain in the sample (Loganathan et al., 2017).

3.1.6 SEM analysis

Figure 6 shows the SEM images of the cross-section of the prepared CuO NPs. SEM images confirm the morphology of the prepared nanoparticles. The SEM images clearly show that due to the agglomeration propensity, the nanoparticles are formed in cubical, crystalline, and clustered forms and are compatible with the cited literature (Lanje et al., 2010).

3.2 Colorimetric detection of nitrite

Acetic acid-coated CuO NPs have been used as a sensing platform for the colorimetric detection of nitrite. For the sensing of nitrite, 100 µL of CH3COOH-capped CuO nanoparticles were mixed with an equal volume (100 μL; 2.4 × 10−6 M) of sodium nitrite solution. The process was carried out at an ambient temperature, resulting in the color changing from brown to yellow after adding nitrite solution, as shown in Figure 7. The absorption spectra of the proposed assay were recorded using a UV-Vis spectrophotometer, as shown in Figure 7.

3.3 Potential method of CuO NP-based nitrite detection

The suggested mechanism for nitrite sensing by the well-characterized acetic acid-coated CuO NPs is shown in Scheme 1. In brief, the acetic acid-coated CuO NPs reduce the sodium nitrite salt into sodium acetate and nitrite acid (as shown in reaction 1). Then, the nitrite acid is oxidized into NO and NO2 in the presence of CuO (as shown in reaction 2), resulting in the color changing to yellow.

3.4 Optimization of various factors affecting the parameters

3.4.1 Effect of copper oxide nanoparticle loading

Normally, colloids of nanoparticles appear to aggregate in a solution. In order to keep the nanoparticles suspended and prevent them from aggregating, one of the strategies is to cover colloids with a protective agent that can be associated with the surface of the particle (Sun and Luo, 2005). Acetic acid serves as a stabilizing agent in the present work. Visual color change was observed in the colorimetric approach using copper oxide nanoparticles. To obtain the best colorimetric response of the proposed sensor, different amounts of acetic acid-capped nanoparticles (50-300 µL) were used. The color of the solution does not improve at a higher concentration of nanoparticle dispersion with 100 μL of nitrite ions (2.4 × 10−6 M); it remains brown because the analyte cannot completely bind to the surface of the nanoparticles. As the amount of dispersion decreases, the color slowly changes from brown to yellow. In nanoparticle dispersion at 100 µL, the colorimetric detection of nitrite was clearly seen by the naked eye, where the dark brown color changed to a yellow color along with the bubbles of nitric oxide gas formation. The solution of nitrite ions in 100 μL interacts promptly with the dispersion of CH3COOH-coated copper oxide nanoparticles in 100 µL, as shown in Figure 8.

3.4.2 Effect of PH

The sensor’s response was also evaluated at different pH ranges (3-11) using standard HCl and NaOH solutions for pH calibration in the fabrication of the proposed sensor, as shown in Figure 9. The proposed sensor’s best response was observed at pH 5, which resulted in a complete color change of the mixture from brown to yellow. Therefore, pH 5 was considered optimal for the proposed sensor for further experiments. When compared to the literature, the pH value is 1.3 for the colorimetric detection of nitrite (Li et al., 2015).

3.4.3 Effect of time

The optimization of time is a key factor in biosensors. To find the optimum time for the proposed sensor, the response was examined at various time intervals ranging from 1-6 min, as shown in Figure 10. The excellent response of the proposed sensor was observed at 4 min because all the available Cuo NPs were used for the sensing of nitrite at this time. After 4 min, the color completely changed from brown to yellow. So, 4 min is the optimum time for the proposed sensor for further experiments. According to the literature, the incubation time for the sensing of nitrite is 5 min (Daniel et al., 2009).

3.4.4 Analytical characteristics with the fabricated sensor

The analytical performance of the fabricated sensor is shown in Figure 11. The absorption peak of the proposed sensor gradually decreased with the increase in NO2− concentration. Under optimum conditions, with the increase in the concentration of nitrite solution, the color changes from brown to yellow, and the UV-Vis spectra are shown in Figure 11A. Using nitrite solution with a linear concentration ranging from 1 × 10−8 to 2.4 × 10−6 M at 350 nm, a drop in absorbance spectra was observed. Additionally, this probe may be utilized to accurately detect nitrate ions with a linear range of 1 × 10−8 to 2.40 × 10−6 M, with a limit of detection (LOD) of 2.69 × 10−7 M, limit of quantitation (LOQ) of 8.9 × 10−7 M, and regression coefficient (R2) of 0.997, as shown in Figure 11B. The outcomes of the suggested assay were also evaluated using previously reported colorimetric sensors for the detection of nitrite based on various nanomaterials, as shown in Table 2. For the proposed sensor, the response time was 4 min. Furthermore, the practical performance of the proposed assay was tested on meat samples. In comparison with the previously reported sensors, the analytical results obtained from our sensor were correlated and comparable to the reported nitrite sensors (Hu et al., 2019).

3.5 Selectivity study analysis

The selectivity of the proposed biosensor was checked with other co-existing ions, such as SO42-, CO32-, PO43-, Cl−, I−, Br -, tar, Ca2+ and NO2−, at the same concentration of 2.40 × 10−6 M (100 μL). No colorimetric response has been observed with other ions, and only the addition of nitrite can lead to a substantial reduction in absorption at 350 nm, as shown in Figure 12. It is clearly shown that the fabricated sensor is only specific for NO2− determination, with an obvious color change from brown to yellow when other ions are present at an equivalent concentration, as shown in Figure 12. The sensitivity of acetic acid-coated copper oxide nanoparticles for nitrite detection is significantly higher. From the results, it is clear that the fabricated test can be used to detect nitrite specifically, both using UV-Visible spectra and the naked eye. The outcomes of the suggested assay were consistent with the published literature (Ye et al., 2015).

3.6 Real sample assay analyses

In real samples, no direct NO2− was detected. The proposed sensor was alternatively tested by the recovery of spiked NO2− solution, and standard additions, such as 0.54, 0.97, and 2.7 μM, are spiked into real samples of meat solution, as can be seen in Figure 13. It indicates that in aqueous solutions, such a method is applicable for the quantification of NO2−. By employing various concentrations of NO2− solution utilizing the optimal conditions, the actual concentration of NO2− in real samples is calculated using a calibrated graph that has already been produced. The obtained results with the help of percentage recovery formula are summarized in Table 3 (Nishan et al., 2021c).

Recovery % = nitrite found/nitrite added x 100 (Nishan et al., 2022).

4 Conclusion

In the present work, a simple and inexpensive colorimetric sensor was developed for the sensing and monitoring of nitrite employing acetic acid-coated CuO nanoparticles. The fabricated sensor could selectively detect nitrite ions by a distinct color change from brown to yellow, with a limit of detection of 2.69 × 10−7 M. In the present work, no sophisticated instrumentation is required for the colorimetric response. The proposed sensor gives the best colorimetric response under optimized conditions of 100 μL of capped CuO NPs, 100 μL of nitrite solution (2.40 × 10−6 M), 4 min, and pH 5 at room temperature. We believe that the proposed sensor, under optimized conditions, will be utilized to detect and measure the nitrite and nitrate ions on the spot.

Data availability statement

The original contributions presented in the study are included in the article/Supplementary Material; further inquiries can be directed to the corresponding authors.

Author contributions

UN, SR, NM, and MA conceived the idea. MS, RU, AB, SR, JI, and NM performed the experiments. UN, HK, AM, and SA analyzed the data. UN, NM, MA, and SA wrote the manuscript. NK and IH critically evaluated the manuscript.

Funding

This research work was supported by researchers supporting Project number RSP2023R346, King Saud University, Riyadh, Saudi Arabia.

Acknowledgments

The authors extend their appreciation to the researchers supporting Project number RSP2023R346, King Saud University, Riyadh, Saudi Arabia, for financial support.

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher’s note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors, and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

References

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