1. Introduction
The development of new technologies and approaches that significantly increase the sensitivity of optical fiber-based sensors has been the subject of several studies over the last decade [
1]. Interferometric methods and refractive index (RI) measurements deserve special attention due to their high sensitivity and precision [
2]. One of the key optical characteristics of any material that establishes its electromagnetic characteristics and influences the speed at which light propagates in phase space is its RI [
3]. Highly sensitive sensors capable of detecting the slightest changes in RI are especially important in biosensor applications. They make it possible to identify biomarkers with high accuracy [
4,
5].
Fiber-optic (FO) technologies represent an attractive platform for measuring RI due to their high sensitivity, compactness, and ability to integrate. In such systems, both internal and external probes can be used, which register changes in RI in the environment [
6]. One of the most common methods in FO sensors is interferometry, which is highly accurate and capable of detecting changes at the 10
−6 refractive index unit (RIU) level [
7,
8]. What’s more, FO sensors use different interferometric configurations such as Mach-Zehnder, Michelson, or Fabry–Perot (F-P), where these configurations convert changes in the RI into phase shifts and spectral variations that occur due to changes in the optical path difference between the branches of the interferometer. In alternative schemes, the fiber probe can act as a reflective element [
9]. Its optical properties vary depending on the environment, which opens up additional possibilities for measuring the RI. Alternatively, the tip of the fiber can be used as a mirror, the reflectivity of which depends on the RI. This causes significant changes in the reflection or transmission spectra. In the case of label-free biosensors, the surface of the sensors is subjected to special treatment [
10], such as silanization or coating with nanomaterials. As a result, platforms are being created on which bioreceptors capable of detecting certain biomolecules can be integrated. These biosensors operate on the principle of interferometry and are highly sensitive. They can measure phase changes that occur when biomolecules interact, which, in turn, is associated with changes in the RI.
It has been reported that single-mode fibers (SMFs) equipped with semi-distributed interferometers (SDIs) are successfully used to detect protein biomarkers [
10,
11]. In addition, F-P optical fiber sensors, which operate based on the principles of optical interference, have become widely used to determine biochemical parameters [
12,
13]. These F-P sensors combine the advantages of fiber-optic devices, such as compactness and resistance to electromagnetic interference, with practical advantages, including ease of production, cost-effectiveness, and the possibility of probe-based configuration.
Combining the interferometric detection method with nanoparticle-enhanced sensor surfaces opens up new horizons. Using various strategies for functionalizing, the surface of nanoparticles, sensitive biomolecules such as proteins, nucleic acids, peptides, and small molecules can be attached to their surface. This makes it possible to create biosensors without tags that respond to changes in RI in their immediate vicinity [
14]. These devices, combining cutting-edge materials science and sensors, open up new horizons in the field of biomarker detection. Coatings made of nanomaterials of complex metal oxides, such as Cu [
15], Zn [
16], and Co [
17], are used in biosensor technologies in the interferometer design. For instance, the main advantages of cobalt Co MNP [
17] coatings are their fast response in detecting the test substance, detection efficiency due to the significant linear range, and the structure of the synthesized nanoparticle. These materials are especially effectively combined with surface modification methods, which makes it possible to achieve maximum RI sensitivity.
Nanomaterials in biosensors can be used in different structures. For example, magnetic cobalt oxide nanoparticles can be an effective coating for an optical fiber sensor, significantly increasing the linear range and reducing the response time for biomarker concentration detection [
18]. Nanopowders based on copper [
15], zinc [
16], and cobalt metal oxides [
17] are used as coatings in biosensing applications due to their excellent electrical conductivity, optical properties, high surface area, and stability. Nanopowders based on copper, zinc, and cobalt oxide metals are promising materials for the use of various types of biosensors due to the simple and environmentally friendly nature of the material [
17] and the low-cost hydrothermal synthesis method. The main distinctive advantages of metal oxide nanomaterials are good electric field [
19], selectivity, sensitivity, stability, active surface area, and interaction with other substances in an alkaline environment, without deforming the basic parameters and functions of biosensors [
20]. Applying these nanomaterials to optical fiber sensors is carried out in a real environment [
19], with intensive interaction of the sensor surface with nanomaterials in the form of solution. The obtained sensors with modification improve their properties and characteristics and create favorable conditions for protein detection and other biomarkers.
Table 1 shows a comparative analysis of composite metal oxide nanomaterials used as coatings to improve sensor properties. Thus, it should be noted that the characterization of the developed materials is in line with current technologies and other sensors used in similar applications.
In this study, we introduce an SMF-based label-free optical F-P interferometric biosensor coated with Zn, Cu, and Co metal oxide nanopowders for the selective and sensitive detection of a model protein biomarker—kidney injury molecule 1 (KIM-1), a biomarker of acute kidney injury and chronic kidney disease. Metal oxide nanostructures were synthesized and applied to the sensors using a dip-coating technique in order to enhance the surface available for biomolecular interactions, thereby improving sensitivity. While the same sensor platform has been previously employed for KIM-1 detection [
21], in this study, we utilize metal oxide nanopowders to enhance performance. To build a biosensor, the fabricated and calibrated sensors were functionalized with antibodies specific to KIM-1 using silanization, enhancing its surface for biomolecular interactions.
Table 1.
Comparison of the developed composite metal oxide nanomaterials with other types of sensors.
Table 1.
Comparison of the developed composite metal oxide nanomaterials with other types of sensors.
Nanomaterials | Sensor Type | Limit of Detection, LoD | Detection Range | References |
---|
Co6(CO3)2 (OH)8 H2O | Enzyme-free glucose sensors | 16 µM | 0.2–2 mM | [22] |
ZnO/Co3O4 | Non-enzymatic electrochemical amperometry glucose sensor | 0.043 μM | 0.015–10 mM | [23] |
Co3O4/SWCNT | Non-enzymatic electrochemical amperometry glucose sensor | 0.25 μM | 1–5 mM | [24] |
ZnO nanowires | Optical fiber plasmonic biosensors | 0.51 pg/mL | 0.01 pg/mL–1 ng/mL | [25] |
Zn(1−x)CuCo2O4 | Optical fiber biosensors | 126 fM | 1 aM to 100 nM | This study |
2. Materials and Methods
2.1. Chemicals
Zinc nitrate hexahydrate (Zn(NO3)2·6H2O), cobalt nitrate hexahydrate (Co(NO3)2·6H2O), silicon nitrate hexahydrate (Si(NO3)2·6H2O), and urea (CH4N2O) were purchased from Sigma-Aldrich (St. Louis, MO, USA), while nickel foam, acetone, and ethanol were obtained from local suppliers. Distilled water (18.2 MΩ·cm), obtained using an ARIUM 611 DI water purification system (Sartorius Group), was used for the synthesis of nanopowders.
2.2. Hydrothermal Synthesis Process of the Nanopowders for Biosensors
Zn
(1−x)CuCo
2O
4 on nickel foam was synthesized using the hydrothermal method. A 2 cm by 1 cm piece of nickel foam was first purified through multiple stages. Initially, it was treated with 3% hydrochloric acid in an ultrasonic bath for 20 min, followed by multiple rinses in distilled water [
26]. The foam was then immersed in acetone for 10 min and in ethanol for 10 min and washed again in distilled water before being dried at 80 °C in a drying oven. For the precursor solution, a mixture of zinc nitrate, cobalt nitrate, copper nitrate, urea (in varying molar concentrations), and distilled water was prepared. Hydrothermal synthesis took place in an autoclave, where the nitrates were dissolved in 10 mL of distilled water per solution, with nickel foam placed vertically. The sealed autoclave was then placed in a muffle furnace preheated to 140 °C [
26]. The synthesis temperature was set at 120 °C for 6 h. Afterward, the autoclave was cooled to room temperature. The treated nickel foam was placed in an ultrasonic bath, washed several times with distilled water to remove any remaining powders, and then processed in a centrifuge.
Figure 1 shows the experimental setup used for the synthesis of Zn, Cu, and Co composite metal oxide nanopowders.
Three samples with different molar ratios of cobalt, zinc, and copper precursors were synthesized. For sample No. 1, the molar ratio of Co:Zn:Cu precursors was 4:1.8:0.2. For samples No. 2 and No. 3, the molar ratio of precursors was 4:0.2:1.8 and 4:1:1, respectively. The molar concentration of urea was always twice the molar concentration of cobalt. This rinsing procedure was repeated 2–3 times. Finally, the collected powders were dried in an oven for 24 h.
2.3. Characterization Techniques
Copper, zinc, and cobalt metal oxide nanopowders were characterized using different analytical techniques. X-Ray diffraction (XRD) analysis was performed on a MiniFlex X-ray diffractometer (Rigaku, Tokyo, Japan) using CuKα radiation at a wavelength of 1.5418 Å. Raman spectroscopy studies were performed on a Ntegra Spectra spectrometer (NT-MDT, Apeldoorn, Nertherlands) under excitation at 473 nm. Morphology and microstructure of the nanomaterials were studied using a scanning electron microscope (SEM), Quanta 200 microscope (FEI, Hillsboro, OR, USA). In order to analyze the heat resistance and reliability of the samples, they were analyzed after annealing at 200 °C for 5 h in air using the same characterization techniques.
2.4. Fabrication of Interferometer-Based Sensors
The biosensors created in this study utilized SDI sensors as the sensing component, and sensors were manufactured based on the methods outlined in the previous research, which can be called a “splice-and-cleave” method. Manufacturing a reflecting probe sensitive to RI change only needs two operations: (1) splicing two fibers and (2) cleaving at the area close to the spliced region to create a mirror at the tip. Initially, to fabricate an SDI sensor, a conventional single-mode fiber (SMF-28, Corning, NY, USA) was used. It was connected to an EBF, which acts as the reflective element. The splicing was performed using a standard telecommunication fiber splicer (Fujikura 12-S, Tokyo, Japan) using the SMF-SMF protocol. The input SMF has a core with a diameter of 8.2 μm and a cladding with a diameter of 125 μm with corresponding refractive indices of 1.4682 and 1.4628, respectively. These values were the same for all fiber segments used in the sensors. While the EBF used in this study is based on the standard SMF structure, it has the addition of MgSiO
3 nanoparticles to the core. These nanoparticles enhance backscattering but do not significantly change the bulk refractive index of the core, which remains approximately equal to 1.464.
Figure 2 shows the algorithm of sensor preparation for nanopowder coating by the dip-coating method.
2.5. Calibration of Sensors
To assess the sensor’s responsiveness to RI changes, calibration was performed. Following production, each sensor underwent calibration using six distinct sucrose solutions with RI values ranging from 1.3476 to 1.3585. The lowest RI corresponded to a 10% sucrose solution. Other samples were prepared by adding 400 μL of 40% sucrose to a plastic vial containing 6 mL of 10% sucrose at each step. All solutions were prepared and used at room temperature (~25 °C), under which the solubility limit of sucrose is approximately 200 g per 100 mL (68%
w/
v). The highest sucrose concentration used in this calibration (approximately 13.9%) was well below the solubility limit, ensuring complete dissolution and avoiding crystallization or instability. This concentration range was selected to generate refractive indices relevant to typical biological and diagnostic fluids. The RI values were confirmed using a digital refractometer (Abbemat refractometer 3000, Anton Paar, Ashland, VA, USA) to ensure accurate sensor calibration across the intended detection range. Linear regression was used to analyze RI sensitivity, which was determined for peaks and valleys with R
2 > 0.90. The sensor was linked to the interrogator, incorporating a fiber Bragg grating (FBG) for temperature control and to enhance spectral detection [
27]. Sensors coated with the nanopowders were calibrated in a similar manner. Following calibration, comparative analysis between the sensors before and after nanoparticle modification was performed.
2.6. Optical Fiber Surface Coating with the ZnCuCo2O4 Nanopowder Thin Layer
Before coating with ZnCuCo2O4 (No. 1 sample), the surface of the optical fibers was cleaned in 20 mL of Piranha solution (H2SO4:H2O2 = 4:1) for 15 min to remove organic impurities and increase -OH groups. Then, the sensors were washed with distilled water and dried with nitrogen gas, followed by silanization in a 1% solution of (3-aminopropyl) trimethoxysilane (APTMS) in methanol solution for 30 min. Next, the optical fibers were heat-treated at 110 °C for 60 min and then coated with a layer of ZnCuCo2O4 (No. 1 sample) using the dip-coating technique. The nanopowder was deposited by dissolving 0.5 g of ZnCuCo2O4 (No. 1 sample) in 10 mL of ethanol at room temperature on a shaker overnight. Afterwards, the solution was uniformly applied to the surface of the fibers by dip-coating technique, and then the sensors were washed with distilled water and were dried in a muffle furnace at 110 °C for 10 min.
2.7. Biofunctionalization of Sensors
The modification of SDI sensors involves a series of steps to prepare fully functionalized sensors. After calibration of optical fiber sensors with nanopowders, they were washed again in PBS solution and were immersed in a 95% MUA (11-Mercaptoundecanoic acid) solution prepared in ethanol and incubated at −4 °C for 16 h to optimize cross-linking. The fibers were then washed with ethanol, incubated in an EDC (1-Ethyl-3-(3-dimethylaminopropyl) carbodiimide)/NHS (N-Hydroxysuccinimide) solution for 15 min, and rinsed with ethanol [
28]. For antibody immobilization, the fibers were incubated in 500 µL of anti-KIM-1 monoclonal antibody solution (2 µg/mL) overnight at 4 °C. To block any unreacted carboxyl groups, the fibers were treated with 1% bovine serum albumin (BSA) for one hour and then rinsed with PBS before protein detection.
2.8. Protein Detection
Figure 3b demonstrates an experimental overview of measuring the KIM-1 biomarker using the biofunctionalized optical fiber biosensor coated with nanopowders. To detect protein levels using the functionalized biosensors, a series of recombinant KIM-1 protein dilutions were prepared in PBS, spanning concentrations from 1 aM to 100 nM. In total, twelve concentrations of protein were prepared from 100 nM to 1aM, and seven of these concentrations were used (100 nM, 10 nM, 100 pM, 1 pM, 10 fM, 100 aM, and 1 aM) for detection. The measurements started with a blank solution as a control. For each concentration, experiments were conducted by taking 10 readings, at one-minute intervals under stable room temperature (25 °C) conditions to reduce potential interferences.
The interrogation of the SDI sensors was performed using a dynamic FBG interrogator (Micron Optics si255, Roanoke, VA, USA) operating in spectral scanning mode. This interrogator integrates a swept laser source and an array of photodetectors, with each sensing channel physically separated for parallel analysis. Briefly, the sensor operates entirely based on the properties of the EBF, which is spliced to a SMF. The EBF contains intrinsic scattering centers that function as multiple partially reflective interfaces, enabling a distributed interferometric response. At the distal end, the cleaved tip of the EBF creates a Fresnel reflection at the interface with the protein solution, forming an RI-dependent reflective surface. On the proximal side, the EBF exhibits an increased Rayleigh scattering profile compared to a standard SMF, which provides the necessary reflection to establish a cavity. Along the length of the EBF, the continuous distribution of scattering centers forms intermediate reflection layers that modulate the spectral response. When light from the interrogator is launched into the SMF, it propagates through the fiber and enters the EBF region. Inside the EBF, the light experiences multiple distributed back-reflections due to the microstructural inhomogeneities, effectively forming a Fabry–Perot cavity. These reflections interfere coherently, generating a measurable interferometric signal that shifts in response to changes in the surrounding refractive index caused by protein binding.
4. Conclusions
In this article, we present an optical fiber biosensor platform based on an SDI coated with Zn, Cu, and Co metal oxide nanopowders to detect the KIM-1 protein biomarker. The sensor’s design is simple to fabricate, which makes its production not only fast but also economically profitable. In addition, the use of a nanopowder coating makes it possible to improve the sensor’s performance while maintaining its simplicity and increasing the reproducibility of measurements. The biosensor has shown impressive results in terms of sensitivity. The average sensitivity of the coated sensors was 160.8 ± 51.5 dB/RIU, which is comparable to modern optical biosensor platforms. Moreover, in the course of our systematic research, we have identified unique detection capabilities for KIM-1 with the theoretical detection limit of 126 fM, and the experimental detection capability reached the attomolar range (1 aM). The wide dynamic range of the system, which covers from 1 aM to 100 nM, is particularly impressive. This is a significant step forward in the development of biosensor technologies. Comprehensive specificity checks and reproducibility analyses confirm the reliability and practical usefulness of the sensor. The nanopowder coating strategy not only ensures the consistency of measurements but also contributes to the stability of the biosensor, which demonstrates the potential of the platform for reliable detection of biomarkers in complex biological matrices. The results obtained using several sensors indicate high measurement accuracy. The maximum standard deviation is only ± 0.24 dB, which indicates the reliability of our approach.
The sensitivity and performance of this sensor system can be significantly strengthened through the use of innovative fiber designs and nanotechnology. Tapered optical fibers and fibers with a D-shaped profile or polished on the sides can significantly increase the interaction with the biomolecules targeted by the sensor. Meantime, specialized architectures, such as photonic crystal fibers, open up additional possibilities for optimizing the interaction of light with matter. Post-processing techniques such as surface etching, plasmonic coatings of nanoparticles, and localized amplification of surface plasmonic resonance can significantly increase sensor sensitivity, potentially reducing detection limits below the current attomolar range. This will allow us to create optimized sensor options for various applications based on machine learning algorithms.
The proposed sensor is characterized by simplicity of manufacture, high sensitivity, and good reproducibility. Due to these qualities, it is perfectly suited for real-time on-site diagnostics and continuous monitoring of biomarkers. The sensor has femtomolar sensitivity, which makes it ideal for single-use applications in clinical settings where cost-effectiveness is important. The interferometric setup provides accurate real-time detection, surpassing traditional intensity-based methods. Overall, this sensor is characterized by reliability, reproducibility, and high sensitivity, making it an excellent choice for clinical diagnostics and medical applications.