Aditya Dileep
Kurdekar
a,
Chelli
Sai Manohar
b,
L. A. Avinash
Chunduri
c,
Mohan Kumar
Haleyurgirisetty
d,
Indira K.
Hewlett
d and
Venkataramaniah
Kamisetti
*a
aDepartment of Physics, Sri Sathya Sai Institute of Higher Learning, Prasanthinilayam 515134, India. E-mail: vrkamisetti@gmail.com
bDepartment of Chemistry, Sri Sathya Sai Institute of Higher Learning, Prasanthinilayam 515134, India
cAndhra Pradesh MedTech Zone, Vishakhapatnam, 530045, India
dLaboratory of Molecular Virology, Center for Biologics Evaluation and Research (CBER), Food and Drug Administration, Silver Spring, MD 2099, USA
First published on 3rd December 2019
Nanoparticle based sensors are good alternatives for non-enzymatic sensing applications due to their high stability, superior photoluminescence, biocompatibility and ease of fabrication, with the only disadvantage being the cost of the synthesis process (owing to the expensive precursors and infrastructure). For the first time, we report the design of an immunosensor employing streptavidin conjugated copper nanocluster, developed at a much lower cost compared to other nanomaterials like noble metal nanoparticles and quantum dots. Using in silico tools, we have tried to establish the dynamics of conjugation of nanocluster to the streptavidin protein, based on EDC-NHS coupling. The computational simulations have successfully explained the crucial role played by the components of the immunosensor leading to an efficient design capable of high sensitivity. In order to demonstrate the functioning of the Copper Nanocluster ImmunoSensor (CuNIS), HIV-1 p24 biomarker test was chosen as the model assay. The immunosensor was able to achieve an analytical limit of detection of 23.8 pg mL−1 for HIV-1 p24 with a linear dynamic range of 27–1000 pg mL−1. When tested with clinical plasma samples, CuNIS based p24 assay showed 100% specificity towards HIV-1 p24. With the capability of multiplexed detection and a cost of fabrication 100 times lower than that of the conventional metal nanoclusters, CuNIS has the potential to be an essential low-cost diagnostic tool in resource-limited settings.
In the quest to develop fluorescent nanomaterials with high performance and efficiency, metal-based nanomaterials have been designed which have been successfully implemented in biodetection.4 As a result, significant attention has been focused on the utilization of metal nanoparticles in analytical chemistry as nanosized biosensing and immunosensing probes. In recent years, noble metal nanoparticles like gold, platinum, silver, etc. have been extensively used in the fabrication of novel biosensors due to their unique optical and electrocatalytic properties.5,6 However, while these noble metal nanomaterials are multifunctional, the economics of their extraction, synthesis, and application are not favorable for their application to routine and cost-effective diagnostic assays. This necessitates the quest for an inexpensive substitute which mitigates the costs involved while offering comparable detection sensitivities, similar or preferably better, compared to the currently used methods. We demonstrate in this intuitive study that a suitable alternative which satisfies all these requirements with low cost and high efficiency is copper.
Copper is one of the most widely used metals in the world. It is reported that the availability of copper in the crust is around 0.0068%.7 Copper-based nanomaterials have been widely used in different fields due to their environmentally friendly properties, economical cost of manufacturing, ease of obtainability and very high efficiency in sensing and electrocatalytic applications.8 Among the copper-based nanomaterials, the most well-known nanoparticles are Cu nanoparticles which are a prevalent fraction given their facile synthesis via the straightforward reduction of the low cost and readily available salts of copper.9 Further restriction of the size of these nanomaterials leads to the formation of atomic clusters of copper, which are called copper nanoclusters (CuNCs).10 Based on their tailored properties, copper nanoclusters are one of the most important materials derived from copper.
CuNCs are clusters of copper atoms of diameter up to 2 nm, which consist of a metallic core containing tens to hundreds of atoms protected by ligands.11 These CuNCs have exceptional physicochemical properties such as chemical stability, excellent photostability, ultra-small size and good biocompatibility which have attracted wide attention due to their applications in clinical diagnostics, nanotherapeutics, chemical catalysis, biosensing and bioimaging, luminescence-based spectroscopy and nano-optical devices.12 It is worth noting that due to quantum confinement effects, CuNCs have fascinating core size based optical and electronic properties, the most significant of them being photoluminescence which can be applied in diagnostics and monitoring of diseases.13 Combining the photoluminescence properties of CuNCs with the current need for low-cost, affordable and sensitive immunosensor, we report the development of a versatile copper nanocluster immunosensor.
In this study, we have computationally designed and experimentally tested the working of a low-cost Copper Nanocluster Immunosensor (CuNIS) in a clinical setting. The mechanistic rationale of the functioning of CuNCs vis-à-vis its conjugation was probed using simulated modeling where the factors influencing the interactions of CuNCs with streptavidin were studied using in silico tools. We attempted to rationalize the immunosensing by the CuNIS assay starting from the thermodynamics of formation of the bio-functionalized CuNC systems to their impact on the formation of streptavidin conjugated CuNCs. We also probed the role of surface functionalization by determining how glutathione functionalization affects the stability of streptavidin conjugated CuCNs. Finally, the impact of Cu nanocluster conjugated streptavidin on the interactions with biotin was evaluated. Based on the design studies, we have attempted the bioconjugation of CuNCs to the streptavidin protein which can be used for detection of any antigen or antibody using the corresponding biotin labeled antibody or antigen respectively. This immunosensor was fabricated and its potential for the detection of pathogens was evaluated with one of the most fatal diseases, AIDS which has HIV-1 as the causative virus.
In order to demonstrate the working of CuNIS in clinical settings, we chose HIV-1 p24, the biomarker for early detection of HIV, as the model analyte. A final comparison analysis of the sensitivity and cost against the other works of similar strategy highlights the significance of this endeavor. The outcome of this study will pave the way for the development of CuNC immunosensor based screening protocols with multiplexing capabilities, which can perhaps be implemented in the detection of biomarkers for any disease.
To establish the design that enhances the immunosensing capabilities via in silico studies, the representative Cux structures ranging from Cu1 to Cu57 were optimized to the least energy conformation using Gaussian 09.14 The neutral Cu atom, icosahedral Cu13, tetrahedral Cu20 and the icosahedral-core modeled Cu57 cluster were evaluated for their energetics in MOE computational software using the MMFX94 force field.15 We further simulated the consequences of an increase in glutathione groups present on the surface of the Cu13 as a capping agent to study the influence of glutathione functionalization on the streptavidin–CuNC interactions via the HEX molecular docking studies.16 Cu nanoclusters of varying sizes were docked with the streptavidin protein obtained from the protein data bank without its solvent and ligands using the Hex 8.0.0 software. The different docking conditions were set where the output searched for the top 100 best energy clusters, with shape only correlation type, 3D FFT mode, grid dimension of 0.6, distance range of 40, and a translation step of 0.8. These molecular docking studies also helped determine the impact of conjugated streptavidin in its interaction with the biotin that was visualized using PyMol to capture the active site residues in the protein.17
To evaluate the morphology and size of the CuNC dispersion, TEM characterization was carried out using a Joel 1400 Transmission Electron Microscope operated at 80 kV. The UV-visible absorbance and photoluminescence based characterization experiments and measurements were carried out using Shimadzu 2450 UV-vis spectrophotometer and SpectraMax M5 microplate reader. The samples were accordingly diluted by 100 folds for recording the spectra.
(1) 20 mg of CuNC was dispersed in 10 mM PBS and washed in a NanoSep centrifugal ultrafiltration device (MWCO 300 kDa).
(2) After washing, CuNCs were mixed with EDC (10 mM) and sulpho-NHS (20 mM) in PBS buffer for 30 min. This step activates the carboxyls of glutathione on CuNCs.
(3) The activated CuNCs were washed with glycine buffer. 50 μL of streptavidin protein (1 mg mL−1) prepared in carbonate buffer was added to the activated CuNCs.
(4) After an incubation period of 24 hours at 37 °C followed by multiple washes with glycine buffer, streptavidin conjugated CuNCs, which are the functional Copper Nanocluster Immunosensors (CuNIS), were obtained which were diluted to 0.1 mg mL−1 concentration in PBS. The CuNIS was kept at 4 °C for storage for future experimentation.
Post the completion of the above procedure, the next step is confirmation of conjugation. A simple way to ascertain whether the process of bioconjugation has produced conjugated nanoparticles is the fluorescence polarization (FP) method. The I∥ and I⊥ were measured for the as produced nanoclusters in the fluorescence polarization mode by SpectraMax M5 plate reader and the FP ratio was calculated. Conjugation is confirmed by the larger value of fluorescence polarization for CuNIS in comparison to the unconjugated nanoclusters.
(1) 55 μL of capture antibodies of concentration 2 μg mL−1, diluted in carbonate–bicarbonate buffer, were coated in a 96 well plate. The plates were left at 4 °C for incubation for 24 hours.
(2) Post incubation step, the coated wells were washed 5 times with wash buffer. This was followed by blocking the wells with 300 μL Casein Blocking Buffer (CBB) per well. Incubation was continued for 30 minutes at 37 °C to ensure the blocking of nonspecific adsorption sites.
(3) Stock antigen p24 solution was diluted with CBB to prepare different concentrations of antigen. 100 μL of the antigen was introduced in each microwell and incubated at 37 °C with stirring for 60 minutes.
(4) After washing the microwells 5 times with wash buffer, 100 μL of biotinylated detector antibody was added per well and incubated at 37 °C for 30 minutes.
(5) To this antibody–antigen–antibody complex, 100 μL per well of CuNIS was added and the mixture was incubated at 37 °C with vigorous stirring for a period of 30 minutes.
(6) A final round of washing was performed with PBST buffer for 5 times to avoid nonspecific interactions and reduce background noise. Finally, measurements of the fluorescence signal from CuNIS were obtained via the SpectraMax microplate reader (excitation at 394 nm and emission at 598 nm).
All experiments were performed in triplicate for statistical significance. The calibration curve was obtained by plotting the measured signal intensity values against the concentration of HIV-1 p24 antigen.
(1) Copper nanoclusters which function as the signal transducers.
(2) Glutathione which function as the conjugating element.
(3) Streptavidin which function as the sensing element.
Designing and optimization of the performance of every component of the CuNIS is vital to its functioning. In order to predict the outcome of the proposed design strategy, we have computationally analyzed each element of the sensor and estimated the role played by them in the efficiency of CuNIS.
In our quest to understand the energetics involved in the fabrication of streptavidin conjugated Cu nanoclusters, we evaluated the thermodynamics of the reaction pathway involved with conjugation of streptavidin to copper nanoclusters (Scheme 1). Gaussian 09 is the software of choice to build and optimize the structures across the three steps as noted by the following sequence:
Cux-gluta + EDC + NHS → Cux-gluta-EDC + NHS → Cux-gluta-NHS |
Scheme 1 Schematic illustration of the reaction pathway involved in EDC-NHS activation of glutathione functionalized copper nanoclusters. |
The individual reactant and product energies for the aforementioned processes were determined for their minimized least energy MMFX94 states which are tabulated in Table 1. We observed that with the increase in nanocluster size, we obtain more stable conformations. This can be reasoned based on the fact that as the size of copper nanoclusters increase, there is an accompanying increase in the negative Gibbs free energy of the reaction (as seen from Table 1), making the reaction more spontaneous. Furthermore, we note that the combined free energy (energy gain in Table 1) is positive when the number of copper atoms is less. Thus, a larger copper core makes the reaction more feasible.
Process steps | ΔE0 | ΔE1 | ΔE6 | ΔE13 | ΔE20 |
---|---|---|---|---|---|
Cux-glutathione + EDC + NHS | 44.47 | 42.367 | 43.204 | 954.901 | 835.448 |
Cux-glutathione-EDC | 26.93 | 15.762 | 16.69 | 901.957 | 896.757 |
Cux-glutathione-NHS | 46.307 | 23.112 | 23.92 | 863.514 | 825.632 |
Energy gain (step 2) | 19.377 | 7.35 | 7.23 | −38.443 | −71.125 |
Net energy gain (step 1 + step 2) | −25.09 | −35.02 | −35.974 | −993.34 | −906.57 |
Ligand | Cu1 | Cu6 | Cu13 | Cu20 | Cu57 |
Hex docking score | −276.49 | −275.59 | −301.06 | −344.62 | −388.80 |
No of glutathione tails | HEX docking score |
---|---|
Cu13-glutathione-NHS | −317.76 |
Cu13-2 glutathione-NHS | −388.24 |
Cu13-4 glutathione-NHS | −301.06 |
Cu13-6 glutathione-NHS | −344.62 |
The driving force in this conjugation is the large negative total free energy that leads to the stability of the conjugated product. Therefore, to determine the stability of the conjugation, the binding affinity of the metal nanocluster interactions with streptavidin was calculated in the presence and also the absence of glutathione across various cluster sizes. The marked difference observed, as recorded in Table 4, confirms the role played by glutathione in the enhanced binding affinity. This is especially pronounced for the copper nanoclusters of smaller size as compared to the larger one. We can therefore ascertain the need of the glutathione conjugation as an important factor for the designed immunoassay.
Nanocluster | Binding affinity in absence of glutathione-NHS tail (kcal mol−1) | Binding affinity in presence of glutathione-NHS (kcal mol−1) |
---|---|---|
Cu1 | −37.70 | −276.49 |
Cu6 | −114.95 | −275.59 |
Cu13 | −137.85 | −301.06 |
Cu20 | −185.36 | −344.62 |
Cu57 | −294.07 | −388.80 |
Nanocluster | BA_biotin (kcal mol−1) | Interacting active site residues |
---|---|---|
Cu0 | −224.65 | Gly 16, Glu 98 |
Cu1 | −264.78 | Gly 16, Gly 68, Gly 98, Thr 71 |
Cu6 | −265.58 | Gly 16, Gly 68, Gly 98, Thr 71 |
Cu13 | −254.13 | Gly 16, Gly 98, Thr 71 |
Cu20 | −273.37 | Gly 16, Ile 17, Gly 68, Gly 98, Thr 71 |
Cu57 | −234.20 | Gly 16, Glu 98 |
Fig. 2 The best docked pose for the interactions of the biotin with the streptavidin-Cu20 simulated through Pymol. |
Based on this study, we can predict that as the particle size increases, the interactions also increase between streptavidin and the biotin ligand.
The mechanism of formation of copper nanoclusters involves hydrazine. The copper salt and glutathione are allowed to react first to form the hydrogel. Following this, hydrazine is added to the mixture and stirred for 15 minutes at 45 °C to reduce the hydrogel to generate the desired copper nanoclusters.18 The stirring which redistributes the heat in the system is vital, for it supports the formation of stable nanoclusters. The reaction is depicted in the equation below:
The TEM characterization of the copper nanocluster is presented in the ESI Fig. S1,† while the UV-vis absorbance and photoluminescence spectroscopy is presented in ESI Fig. S2 in the ESI.†
The process of conjugation of streptavidin to copper nanocluster was carried out using the 1-ethyl-3-(3-dimethylaminopropyl) carbodiimide (EDC)-N-hydroxysuccinimide (NHS) coupling mechanism which is well established.23 EDC reacts and activates the carboxylic acid groups present in glutathione leading to the formation of a reactive O-acylisourea intermediate. When the amino groups on the streptavidin attack the nanocluster, the intermediate is easily displaced allowing the primary amine groups to form an amide bond with the carboxyl groups form glutathione. The intermediate is an unstable by-product which doesn't undergo any further reaction with non-amine groups, thus ensuring that no other moieties interfere in this reaction.
The EDC-NHS methodology was chosen as the preferred method of bioconjugation due to two main reasons:
(1) The EDC-NHS method is a very well-known method which can be easily repeated in any setting given the protocol is followed. This allows for standardization of the protocol to a great extent allowing a minimal variation in sensitivity of the assay with every new batch of nanoclusters.
(2) The EDC-NHS establishes a very strong and stable amide bond between the conjugating entities. In the course of the conjugation, EDC-NHS are eliminated from the end product. This also helps in keeping the chemical identity of the conjugating molecules intact.
The as-obtained product of the coupling reaction can be ascertained for conjugation using the method of fluorescence polarization (FP). Fluorescent polarization is defined as a phenomenon where a fluorophore radiates light in different axes of polarization with different intensities. This anisotropy is dependent on the size and motion of the fluorophore, which can be tuned by the conjugation and surface functionalization.24 Thus, fluorescence polarization can be used to confirm the conjugation of biomolecules to fluorophores.
We, therefore, adopted the FP method to test the conjugation of streptavidin to copper nanocluster. The FP measurements were made in SpectraMax M5 microplate reader in the fluorescence polarization mode.
The change in the FP value corresponds to the increase in the size of the fluorophore after conjugation. The binding of the protein to the nanoclusters increases its dimensions, which slows down its molecular rotation compared to the nanoclusters which are unconjugated.25,26 This causes the FP value to be higher for streptavidin conjugated nanoclusters compared to unconjugated nanoclusters. I∥ and I⊥ values were obtained from the spectrophotometer. The calculation of the FP values was done based on the formula
The corresponding data is tabulated in Table 6. As it can be inferred, the FP value increases with size of the particles. Thus, FP becomes an easy tool to monitor the functionalization of any moiety where an increase in the size is expected. The FP value of the copper nanocluster conjugated to streptavidin was higher than unconjugated copper nanocluster (CuNCs), which confirmed the conjugation of streptavidin to CuNCs.
Sample | I ∥ | I ⊥ | FP |
---|---|---|---|
Unconjugated CuNCs | 94 | 78 | 0.093 |
Conjugated CuNCs (CuNIS) | 132 | 99 | 0.143 |
The as-obtained structure post-EDC-NHS based streptavidin conjugation protocol is the functional Copper Nanocluster ImmunoSensor (CuNIS) which can be tested for implementation in various immunodiagnostic applications.
HIV-1 p24 biomarker test was chosen as the model assay to study the real world performance of CuNIS. The HIV-1 p24 immunoassay that we have adopted is a sandwich format assay wherein a sandwich of antibody–antigen–antibody complex is formed. The detector antibodies are biotinylated which interact with the streptavidin from CuNIS in the detection step (Scheme 2). The strong interactions between biotin and streptavidin attach the CuNIS to the sandwich complex which emits when excited with the excitation energy. The signal intensity measured using the SpectraMax M5 microplate reader is dependent on HIV-1 p24 concentration in the sample. The measured signal intensity was plotted against the concentration of p24 antigen to obtain the calibration curve as depicted in Fig. 3(a) and (b).
Fig. 3 (a) Calibration curve of CuNIS based HIV-1 p24 assay (b) the calibration curve of CuNIS based HIV-1 p24 assay with resolved axis showing the lower end of the linear dynamic range. |
The optimization of the concentration of CuNIS has been presented in the ESI through ESI Fig. S3.†
Fluorescence intensity = 1.26 × concentration of p24 + 10.71 |
A good correlation was observed between p24 antigen concentrations and the signal count from CuNIS. The value of the coefficient of correlation was r2 = 0.99541, which leads to the inference that this assay can be explained as a linear dose dependent-model. Thus, it can be reported from this study that the CuNIS based assays could achieve detection sensitivity at the picogram per milliliter level. To our knowledge, this is one of the highest sensitivity reported using copper nanoclusters in biochemical sensing. This high value of sensitivity can be attributed to the utilization of highly specific streptavidin–biotin interaction as the sensing reaction. Table 7 compares the detection sensitivities of other copper nanocluster based detection methodologies with CuNIS based detection protocol.
The specificity was further assessed by performing the assay on samples from HIV positive individuals. In this regard, the plasma samples were first diluted 100 times prior to the analysis. We tested 30 samples confirmed as HIV positive and 30 samples confirmed as HIV negative (tested by 4th gen commercial ELISA kits) using CuNIS and no false negatives or false positive were observed. We tested the performance of immunosensor for cross-reactivity with 10 HBV positive and 10 HCV positive plasma samples, all of which were confirmed as HIV negative. We observed that the signal intensity from these samples was as low as the negative control. The comparison of the signal intensities from the samples is presented in Fig. 4(a–c). This allowed us to conclude that the CuNIS based p24 assay is very specific to p24 antigen and is not susceptible to interference from other pathogen biomarkers. As it is clearly evident, the CuNIS has very high specificity with negligible cross-reactivity.
Fig. 4 (a) Results for CuNIS based p24 assay for (a) 10 HIV +ve samples (b) 10 HIV −ve samples (c) HIV −ve, HBV +ve/HIV −ve, and HCV +ve/HIV −ve. |
S. No | Nanocluster | Precursor | Costa per milligramb ($ per US) |
---|---|---|---|
a All the costs have been based on the commercial prices for the chemicals from Sigma-Aldrich. b The equivalent masses were calculated taking into account the amount of precursor used for each reaction. | |||
1 | Platinum | Chloroplatinic acid hexahydrate | 1.33 |
2 | Gold | Tetrachloroauric(III) acid | 1.07 |
3 | Silver | Silver nitrate | 0.175 |
4 | Copper | Copper(II) sulphate pentahydrate | 0.012 |
The important facet of CuNIS is that it could achieve pg mL−1 sensitivity without the need for any highly specialized instruments or expensive chemicals and reagents, like those required in PCR based methods. Based on the performance of the CuNIS, it can be said that CuNIS is a robust and sensitive immunosensor because of its good signal strength and high signal to noise ratio. Also, there are no requirements for sophisticated equipments and specific storage conditions as CuNIS is not an enzyme-based immunosensor. Due to the high specificity of CuNIS, it could be developed into a multifunctional biosensor applicable in any detection protocol where biotinylated biomolecules are in use. This feature of CuNIS makes it possible to develop it as a universal label which can be used for detection of any pathogen just by changing the capture antibodies and detector antibodies specific to the disease biomarker. This allows for multiplexed detection of diseases as specific antibodies can be used specifically to detect a disease biomarker. This kind of multiplexed platform for clinical diagnostics can greatly benefit in reducing the wait time for an assay as multiple diseases can be detected simultaneously. Interestingly, there is no need for specific training of technicians to employ CuNIS in immunoassays as it is similar to traditional ELISA which is widely practiced across various laboratories and clinics.
One important observation is that the CuNIS, with a limit of detection of 23.8 pg mL−1 for HIV-1 p24, has a sensitive comparable to the current generation ELISA.43 The matter of fact is that this experiment was a pilot study to demonstrate the working of the conjugation and the immunosensing strategy of CuNIS. We have not really focused on optimization of the parameters to the best possible conditions. We believe that on further optimization of conditions such as the method of synthesis, bioconjugation protocol and optimization of concentrations of components involved, CuNIS can actually break the 5 pg mL−1 barrier. With further application of plasmonic enhancers and microfluidic platforms, we foresee that it can even detect the analyte at sub-picogram level. Presently, these modifications are being implemented by our group to enhance the sensitivity of CuNIS to the highest possible level.
Thus, we predict that on optimization and simplification, CuNIS could be developed into a rapid and ultra-sensitive immunodiagnostic tool for real-world diagnostics which can even be deployed in resource-constrained regions.
The presented results in this study pave the way for new methodologies that can be applied for the detection of various disease-causing agents. Based on our findings, we conclude that CuNIS can offer high sensitivity and specificity which can be deployed for improved point-of-care diagnostics at minimal fabrication cost.
Footnote |
† Electronic supplementary information (ESI) available: Characterization of copper nanoclusters, optimization of the CuNIS concentration, the effects of interfering biomolecules and recovery concentration study. See DOI: 10.1039/c9na00503j |
This journal is © The Royal Society of Chemistry 2020 |