Developing lateral flow immunochromatography (LFIA) peptide-based test strips for rapid detection of antigens and antibodies against specific antigens
11994520 ยท 2024-05-28
Assignee
Inventors
- Charlotte A. E. Hauser (Thuwal, SA)
- Panagiotis BILALIS (Thuwal, SA)
- Dana Alhattab (Thuwal, SA)
- Hepi Hari SUSAPTO (Thuwal, SA)
- Manola Moretti (Thuwal, SA)
- Salwa ALSHEHRI (Thuwal, SA)
- Ali Aldoukhi (Thuwal, SA)
- Hamed Albalawi (Thuwal, SA)
- Hattan Boshah (Thuwal, SA)
- Abdulelah Alrashoudi (Thuwal, SA)
- Alexander Valle Perez (Thuwal, SA)
- Rosario Perez Pedroza (Thuwal, SA)
Cpc classification
G01N2469/20
PHYSICS
International classification
G01N33/543
PHYSICS
Abstract
The present disclosure relates a method of fabricating a literal flow immunoassay (LFIA) for the diagnosis of diseases, including COVID-19. The present disclosure further relates to a fusion-epitopes peptide that can be used in the LFIA test to improve sensitivity, specificity and accuracy of the test.
Claims
1. A method of fabricating a lateral flow immunoassay (LFIA) comprising: synthesizing and screening at least one peptide antigen; conjugating the peptide antigen with at least one tag; printing a test strip; determining the minimum thickness of a test cassette; and assembling the LFIA, wherein the peptide antigen binds specifically to at least one analyst, wherein at least one control line and at least one test line are printed on the test strip, and wherein the material in the test line binds the complex formed by the analyst and the peptide antigen conjugated with the tag, wherein the epitopes are at least one selected from the group consisting of peptides with amino acid sequences provided in SEQ ID Nos. 1-10 and 10-19.
2. The method of claim 1, wherein the at least one peptide antigen is at least one fusion-epitopes peptide.
3. The method of claim 2, wherein the epitopes are whole or part of at least one antigenic protein of Acute Respiratory Syndrome Corona Virus 2 (SARS-CoV-2).
4. The method of claim 2, wherein the at least one fusion-epitopes peptide is obtained by fusing the peptide provided in SEQ ID No. 5 and at least one peptide provided in the group consisting SEQ ID Nos. 10, 13 and 19 or by fusing the peptide provided in SEQ ID No. 7 and the peptide provided in SEQ ID No. 8.
5. The method of claim 2, wherein the at least one fusion-epitopes peptide is provided in SEQ ID No. 11.
6. The method of claim 1, wherein the at least one analyst is at least one antibody.
7. The method of claim 1, wherein the at least one analyst is at least one anti-SARS-CoV-2 antibody.
8. The method of claim 1, wherein the minimum thickness of the test cassette is determined by a finite element analysis (FEA) simulation.
9. The method of claim 1, wherein the test cassette with the minimum thickness uses the least amount of materials to fabricate, when the cassettes does not break under handling forces of 5 N.
10. The method of claim 1, wherein the test cassette is printed.
11. The method of claim 1, wherein the at least one tag is at least one selected from the group consisting of colored nano-particle, silver nano-particle, carbon nano-particle, magnetic nano-particle, or quantum dot.
12. The method of claim 1, wherein the at least one tag is at least one selected from a gold nano-particle (AuNP) or a iron oxide nano-particle (Fe.sub.2O.sub.3).
13. The method of claim 1, further comprising: adding at least one agent binds to the control line but not the test line to the at least one tag conjugated peptide antigen.
14. The method of claim 1, wherein the at least one peptide antigen detects the at least one analyst with sensitivity of at least 85%, a specificity of at least 95%, and an accuracy of at least 85%.
15. The method of claim 1, wherein the at least one peptide antigen has at least 20 interactions with the at least one analyst and is determined using docking simulation.
16. A fusion-peptide for immunoassay comprising at least two epitopes of SARS-CoV-2, wherein the epitopes are linked by peptide bond, wherein the epitopes are at least one selected from the group consisting of peptides with amino acid sequences provided in SEQ ID Nos. 1-10 and 10-19.
17. The fusion-peptide of claim 16, wherein the epitopes are different.
18. The fusion-peptide as in claim 16, wherein the fusion-epitopes peptide is obtained by fusing the peptide provided in SEQ ID No. 5 and at least one peptide provided in the group consisting SEQ ID Nos. 10, 13 and 19 or by fusing the peptide provided in SEQ ID No. 7 and the peptide provided in SEQ ID No. 8.
19. The fusion-peptide as in claim 16, wherein the fusion-epitopes peptide is provided in SEQ ID No. 11.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
(1) The accompanying drawings, which are incorporated herein and constitute part of this specification, illustrate exemplary embodiments of the invention, and, together with the general description given above and the detailed description given below, serve to explain the features of the invention.
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DETAILED DESCRIPTION OF THE INVENTION
Definitions
(52) Where the definition of terms departs from the commonly used meaning of the term, applicant intends to utilize the definitions provided below, unless specifically indicated.
(53) Unless defined otherwise, all technical and scientific terms used herein have the same meaning as is commonly understood to which the claimed subject matter belongs. In the event that there is a plurality of definitions for terms herein, those in this section prevail. All patents, patent applications, publications and published nucleotide and amino acid sequences (e.g., sequences available in GenBank or other databases) referred to herein are incorporated by reference. Where reference is made to a URL or other such identifier or address, it is understood that such identifiers can change and particular information on the internet can come and go, but equivalent information can be found by searching the internet. Reference thereto evidences the availability and public dissemination of such information.
(54) It is to be understood that the foregoing general description and the following detailed description are exemplary and explanatory only and are not restrictive of any subject matter claimed. In this application, the use of the singular includes the plural unless specifically stated otherwise. It must be noted that, as used in the specification and the appended claims, the singular forms a, an and the include plural referents unless the context clearly dictates otherwise. In this application, the use of or means and/or unless stated otherwise. Furthermore, use of the term including as well as other forms, such as include, includes, and included, is not limiting.
(55) For purposes of the present disclosure, the term comprising, the term having, the term including, and variations of these words are intended to be open-ended and mean that there may be additional elements other than the listed elements.
(56) For purposes of the present disclosure, directional terms such as top, bottom, upper, lower, above, below, left, right, horizontal, vertical, up, down, etc., are used merely for convenience in describing the various embodiments of the present disclosure. The embodiments of the present disclosure may be oriented in various ways. For example, the diagrams, apparatuses, etc., shown in the drawing figures may be flipped over, rotated by 90? in any direction, reversed, etc.
(57) For purposes of the present disclosure, a value or property is based on a particular value, property, the satisfaction of a condition, or other factor, if that value is derived by performing a mathematical calculation or logical decision using that value, property or other factor.
(58) For purposes of the present disclosure, it should be noted that to provide a more concise description, some of the quantitative expressions given herein are not qualified with the term about. It is understood that whether the term about is used explicitly or not, every quantity given herein is meant to refer to the actual given value, and it is also meant to refer to the approximation to such given value that would reasonably be inferred based on the ordinary skill in the art, including approximations due to the experimental and/or measurement conditions for such given value.
(59) For purposes of the present disclosure, the term sensitivity refers to the probability that a test correctly identifies a true positive sample. Sensitivity can be calculated using formula (1) in Example 17.
(60) For purposes of the present disclosure, the term specificity refers to the probability that a test correctly identifies a true negative sample. Specificity can be calculated using formula (2) in Example 17.
(61) For purposes of the present disclosure, the term accuracy refers to the probability that a test correctly identifies a true negative sample and true positive samples. Accuracy can be caulculated using formula (3) in Example 17.
(62) For purposes of the present disclosure, the term epitope refers to the part of an antigen that is recognized by the immune system.
(63) For purposes of the present disclosure, the term RBD refers to receptor-binding domain in SARS-CoV-2 spike protein. The part of the SARS-CoV-2 spike protein corresponding to RBD is illustrated in
(64) For purposes of the present disclosure, the term iteration challenge refers to the size of the first iteration in the absence of the buffer well.
(65) Description
(66) In one embodiment, a successful LFIA test that detects IgG antibodies developed by assembling all the components as detailed below. First, SARS-CoV-2 spike protein was conjugated to gold nanoparticles (AuNP) to capture SARS-CoV-2 antibodies in the sample tube. Then, the testing lines consisting of secondary antibodies were printed on the nitrocellulose membrane to capture primary antibodies, and the strip was placed in a 3D-printed housing cassette after careful design and strain simulation.
(67) In one embodiment, a material extrusion-based 3D bioprinting technique was utilized during the testing strip development where microfluidic pumps and a robotic arm were used to print different antibodies. The microfluidic pump system was used to dispense the capturing material on the nitrocellulose membrane as it offers an easier and efficient way to test multiple proteins. In a preferred embodiment, the capturing material is a secondary antibodies capable of capturing primary antibodies. In a preferred embodiment, the material printed on the nitrocellulose membrane can capture antibodies against SARS-COV-2.
(68) In one embodiment, the robotic arms provide fine control of the nozzle when dispensing the material, while the pumps ensure consistent volume of the material to be dispensed on the nitrocellulose membrane.
(69) In one embodiment, 3D printing was used to fabricate cassettes for rapid in-field assays. 3D printing technology provides the freedom to fabricate and prototype any designs in a standard laboratory setting, and saves the time and effort of many researchers.
(70) In one embodiment, the 3D technologies used to prototype and print the housing unit include material extrusion 3D printing and vat photopolymerization 3D printing. These.
(71) In one embodiment, a LFIA test was developed using multiple technologies to efficiently optimize the testing strips.
(72) In one embodiment, bioprinting and 3D printing techniques were used during the development of a rapid test for the detection of antibodies against various diseases. In a preferred embodiment, the rapid test developed using bioprinting and 3D printing techniques can detect antibodies against COVID-19.
(73) In one embodiment, a material extrusion-based bioprinting setup utilizing a robotic arm was used during the construction of the strips to aid the dispensing of the capturing materials.
(74) In one embodiment, an additive manufacturing technology was used to build a housing unit for the strip in a layer-by-layer manner using photopolymerization technique. The design of the cassette was modified as needed to adapt with the rapid changes in the testing strip during the optimization process.
(75) In one embodiment, the physical strains on the designed cassette was simulated to determine its minimum thickness while ensuring the practicality of use and durability when conducting the test. In a preferred embodiment, the simulation was conducted using finite element analysis (FEA)
(76) LFIA Cassette Designs and 3D Printing
(77) In one embodiment, the housing unit design went through different iterations for adapting the changes and requirements for the test. In a preferred embodiment, these iterations were designed, fabricated, and assembled in the laboratory using specific requirements.
(78) In a preferred embodiment, two iterations are illustrated in
(79)
(80) In one embodiment, the cassette designs in the above embodiments were made for testing using a full strip setup which includes the conjugate pad.
(81) In another embodiment, the third iteration was a dipstick design which was made to house a strip that does not contain a conjugate pad. This provides a faster way to test the strip by removing an extra step that adds the conjugated AuNP to the conjugate pad.
(82) In one embodiment, two 3D printing technologies were used to print the proposed cassettes. Material extrusion 3D printing technology using thermoplastic filament was developed in the early 1990's..sup.28 In the material extrusion 3D printing technique, a thermoplastic filament is fused using a mounted motor, which heats and melts the filament to be extruded during the printing process. On the other hand, vat photopolymerization technique uses a liquid photopolymer resin as a printing material, which is subjected to polymerization initiated by a projected laser. This process would selectively solidify the liquid resin against the platform, creating a 3D construct in a layer-by-layer fashion..sup.29 The advantages of using vat photopolymerization over material extrusion 3D printing are the higher printing resolution and smoother finish surface..sup.30 Table below provides a summary comparing the two 3D printing technologies, in which PLA refers to Polylactic acid; ABS refers to Acrylonitrile butadiene styrene; ASA refers to Acrylonitrile styrene acrylate; and PETG refers to Polyethylene terephthalate glycol.
(83) TABLE-US-00001 Additive Average manufacturing cost of Printing technologies Materials Speed materials (kg) resolution Limitation Material Plastic filaments Fast Affordable; $40 Low Support material extrusion.sup.[31, 32] (PLA, ABS, ASA, PETG, and nylon) Vat photo Liquid photopolymers Slow Average; $100 High Support material and polymerization.sup.[32, 33] and resins post-curing required
(84)
(85) Dipstick Housing Unit
(86) In one embodiment, the dipstick housing unit design consists of a smaller unit with an opening 704 from one side to be used for dipping the strip in the test solution as demonstrated in
(87) In one embodiment, this unit was engineered and designed by taking into consideration the security of the testing strip, as shown in
(88) Since this design has a wide opening, it was essential to secure the strip, especially during the testing process. Therefore, in one embodiment, a pressing locking 902 mechanism was designed inside the housing unit, as shown in
(89) In one embodiment, the dipstick design was 3D printed using Form 3 printer (FormLabs?) while taking into consideration the resolution of the used material.
(90) FEA Simulation for the Final Iteration of the Cassette
(91) In one embodiment, the simulation was conducted on the same software. Therefore, it made the process of changing and modifying the design more straightforward.
(92) In one embodiment, the thickness of the dipstick was changed several times to reduce the use of any unnecessary material in the printing process.
(93) In one embodiment, a cassette with thickness of 0.8 mm was used and printed, and is the minimum thickness needed considering the simulation result.
(94) In one embodiment, the mass applied on the edge of the cassette during the simulation was set to be twice the normal handling force, where the normal handling force was assumed to be 2.5N.
(95) In one embodiment, the assumption and location of the applied force were selected based on the actual state of a person applying pressure using one hand, as illustrated in
(96) In one embodiment, the cassette undergoes deformation with the application of forces.
(97) In one embodiment, the maximum deformation value was observed to be 13.4 mm. Comparing the deformation result to the dimension of the model, the value range of the deformation is acceptable.
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(99) In one embodiment, the dipstick design will tolerate the expected use.
(100) Testing of the Assembled Strip
(101) In one embodiment, LFIA dipstick strips were assembled to be tested with commercial SARS-CoV-2 antibodies to simulate positive or negative tests. The schematic of the test without the housing cassette is illustrated in
(102) In one embodiment, if only the control line shows a red signal, then the sample is negative, which is shown in
(103) In another embodiment, if both control line and test line show a red signal, then the sample is positive, which is shown in
(104) In one embodiment, the LFIA provides a faster way to assess the test and ensure that all the test components are working as desired, using a dipstick design in prototyping. When designing a new protein or modifying an existing one to enhance the sensitivity of the test, it is time-efficient to test the conjugated material using a dipstick LFIA before proceeding with further optimization processes to be used as a standard LFIA.
(105) Thus, in one embodiment of the present disclosure, it is demonstrated that the prototyping, printing, and assembly of an LFIA test are feasible using an laboratory developed setup.
(106) In one embodiment, the test cassette could be prototyped to sustain mechanical stress applied to it by hand even if it was designed to be printed with minimum thickness to reduce material.
(107) In one embodiment, bioprinting of the test lines with a robotic arm and microfluidic pump was accurate enough to detect IgG antibodies, when tested with protein-conjugated AuNP and commercially available antibodies.
(108) Additive manufacturing technologies can be a great tool for prototyping and fabricating medical devices and diagnostics tools. These technologies can accelerate the optimization process by quickly adjusting to the designs and then 3D printing the device as needed. During the development phase of a new medical device and diagnostic tools, 3D printing can provide on-demand solutions despite the challenges.
(109) In one embodiment, the peptide epitopes conjugated to AuNP can be used in serological assays to detect SARS-CoV-2 antibodies.
(110) In one embodiment, peptide epitopes from the spike and nucleocapsid proteins with reported immunogenicity.sup.41-43,51,52 were first synthesized and used to optimize an ELISA test with high sensitivity, specificity, and accuracy. The selected peptides were tested as individuals to determine the sensitivity and specificity for detecting SARS-CoV-2 antibodies.
(111) In one embodiment, a simulation of the docking/binding between the peptide epitopes and the crystal structure of reported SARS-CoV-2 antibodies was performed, which confirmed the interaction between peptide epitope and antibodies and defined the amino acids binding sites.
(112) In one embodiment, the sequences of the peptides were modified to achieve a higher sensitivity level, while not compromising the specificity and accuracy of the peptide-based ELISA and LFIA test.
(113) In one embodiment, sequences from single peptides that showed high sensitivity and specificity were combined and synthesized into one longer peptide, which is a fusion-epitopes peptide. In a preferred embodiment, the single peptides with high sensitivity and specificity were four peptide epitopes that reacted strongly with SARS-CoV-2 antibodies with the highest sensitivity level of 78%.
(114) In one embodiment, tests with the modified peptides improved the sensitivity level of antibodies detection to 88% when fusion-epitopes peptide was used. This data could help in understanding factors that can be utilized to improve the sensitivity, specificity, and accuracy for detecting SARS-CoV-2 antibodies. Furthermore, the result of this study could be used in developing peptide-based serological assays for commercial and clinical use.
(115) Patients' Samples
(116) In one embodiment, a total of 145 patients' serum samples were included in this study consisting of 35 negative pre-covid samples and 110 Covid-19 IgG positive samples. Pre-covid samples were deidentified and archived before November 2019. Regarding the positive samples, 95% were collected between July and September of 2020 and 5% were collected between January and February of 2021. Moreover, females and males represented 55% and 45% of the sample with positive Covid-19 IgG, respectively. The mean age of patients was 40 years (?13.4), and the mean duration between positive PCR test and sample collection was 27.5 days (?13.3).
(117) Screening all Antigens
(118) In one embodiment, 10 peptides listed in the table below were screened with 24 random samples including 18 positive and 6 negative pre-covid samples, to select the peptides with high sensitivity and specificity. The mapping of the synthesized peptides in the table below against the full spike and nucleocapsid protein sequences is shown in
(119) TABLE-US-00002 Amino acid Peptide Aminoacidsequence Protein positions P4 K(Biotin)CNGVEGFNCYFPLQSYGFQPTNGVGY S 480-505 P5 K(Biotin)NLDSKVGGNYNYLYRLFRKSN S 440-460 P6 K(Biotin)VLLPLVSSQCVNLTTRTQLPPAYTN S 6-30 P7 K(Biotin)SFSTFKCYGVSPTKLNDL S 373-390 P10 K(Biotin)GTGVLTESNKKFLPFQQFGRDIA S 548-570 P11 K(Biotin)TQLNRALTGIAVEQDKNTQEVFAQVK S 761-786 P12 K(Biotin)FSQILPDPSKPSKRSFIEDLLFNKV S 802-826 P13 K(Biotin)NNAAIVLQLPQGTTLPKGFYA N 153-172 P14 K(Biotin)NTQEVFAQVKQIYKTPPIKDFGGFNF S 777-802 P15 K(Biotin)KTFPPTEPKKDKKKKADETQALPQRQ N 361-386 P15-P10 K(Biotin)KTFPPTEPKKDKKKKADETQALPQRQ- N-S 361- SGSGS-GTGVLTESNKKFLPFQQFGRDIA 386(N)- 548-570(S)
(120) In one embodiment, the interaction between the serum samples and synthetic peptides are tested using ELISA and measured as fluorescent signal intensity (OD signal). The differences in fluorescent signal intensity (OD signal) among the different peptides and S1 subunit of the spike protein are shown in
(121) In one embodiment, there is a threshold to determine positive and negative OD signals for each peptide. In
(122) In one embodiment, the OD values of P5 peptide were high for both positive and negative samples, which resulted in a high threshold value.
(123) In one embodiment, the synthetic peptides show different sensitivity of detecting SARS-CoV-2 antibodies. The sensitivity of the tested peptides in detecting Covid-19 antibodies from positive samples is shown in
(124) In one embodiment, some patients' samples had higher OD signal with peptides from the nucleocapsid protein while others with the peptides from the spike region.
(125) In one embodiment, all peptides tested and described above had a specificity of 100%. The high specifity for these peptides was a result of the high threshold used to determine positive and negative samples.
(126) In one embodiment, pooling or combining at least two peptides from P4, P10, P11, P12, P13, and P15 could improve the sensitivity for detecting Covid-19 antibodies.
(127) In a preferred embodiment, pooling or combining at least two peptides from P10, P12, P13, and P15 could improve the sensitivity for detecting Covid-19 antibodies.
(128) Docking Simulation
(129) In one embodiment, the peptides interact with antibodies differently. The peptide-antibody interactions were evaluated by an in-silico analysis based on protein docking performed on P4, P5, P7, and P13. The binding and number of interactions between peptides and antibodies are shown in the graphical flowchart illustrated in
(130) In one embodiment, the differences among the initial conformations of P4, P5 and P7 are low, while P13 has a highly variable initial conformation among the proposed initial structures. The initial conformation for the docking was obtained by comparing manually sequence-aligned secondary structures for the same peptide using PyMOL's residue alignment tools. Moreover, root-mean-square deviation was calculated for each conformation, with the results shown in
(131) In one embodiment, the initial conformations have the lowest difference among the complexe 7KS9, as obtained by the root-mean-square deviation. Thus, in a preferred embodiment, the selected configurations were derived from 7KS9 for P4, P5 and P7. The redundancy in this assay had the aim to evaluate if both complexes, although similar in conformation, had different residue interactions with the proposed peptides. The results obtained showed an identical behavior from both antibody complexes, 7KS9, with each peptide of interest. On the other hand, limited data are currently available regarding antibodies complexed to the N-terminal area of the nucleocapsid. Furthermore, representations of the obtained peptides P4 (2702), P5 (2704) and P7 (2706) are shown in
(132) In one embodiment, the initial conformation of P13 (2708) is also shown in
(133) In one embodiment, all the spike-derived peptides were paired with the antibody 7KS9, after obtaining the initial conformations. In one embodiment, the nucleocapsid derived peptide (P13) was paired with the antibody 7CR5. Using these pairings, the interactions of the spike-derived peptides with 7KS9 and P13 with 7CR5 were further analyzed and shown in
(134) In one embodiment, the top ten models from each docking simulation, those with the lowest energy according to the Z-Score normalization, were used for further individual analysis. Top ten generated simulations for the docking between the peptides and antibodies is shown in
(135) In one embodiment, the interactions between the peptide and the active site of the antibody were quantified for both the spike-derived peptides and the nucleocapsid-derived peptide, selected from the top ten clusters. The quantified interactions for the spike-derived peptides is shown in
(136) In one embodiment, P13 and P4 could get the strongest binding, as the top ten clusters presented more interactions (33 and 29, respectively) with 7CR5 and 7KS9 antibodies, respectively, as shown in
(137) In one embodiment, as shown in the heat map in
(138) In one embodiment, P13 should be the peptide with the strongest binding from all of them, followed by P4s, P5s, and P7s, from the above analysis.
(139) In one embodiment, all RBD-derived peptides are less reactive, compared to the peptide from the nucleocapsid, which is confirmed in silico.
(140) In one embodiment, the docking representation of each of the top ten simulations between each peptide and the antibodies including 7KS9 and 7CR5 were generated and demonstrated in
(141) In one embodiment, the simulation was used as a complementary tool to confirm the binding between the peptide epitopes and anti-RBD and anti-nucleocapsid antibodies.
(142) In one embodiment, the peptide epitopes are selective for SARS-CoV-2 antibodies but do not interact with control antibodies, according to the results of the simulation.
(143) In one embodiment, the results obtained from screening all the peptides correlated well with the docking simulation data.
(144) In one embodiment, the Nucleocapsid peptide P13 had the highest sensitivity and the highest number of interactions among the tested peptides in the docking simulation.
(145) In another embodiment, peptides from the RBD region and P6 peptide, which is derived from spike N-terminal domain, had a lower sensitivity compared to other peptides when tested with ELISA.
(146) In one embodiment, among RBD peptides including P4, P5, and P7, P4 was found to have the highest number of interactions with the antibodies and the highest sensitivity in ELISA.
(147) The above description is consistent with the other published studies in which most of the peptides that were found to detect SARS-CoV-2 antibodies with high sensitivity were from outside the RBD region..sup.41, 41, 53 Additionally, peptide epitopes that elicit antibodies response and can be used as a potential target for vaccine development were also from outside the RBD region..sup.54 Li et al. suggest that the confirmation of the RBD protein could be the reason these epitopes are less reactive to serum antibodies..sup.48
(148) Screening all Samples
(149) In one embodiment, peptides with the highest sensitivity and specificity are P10 and P15 peptides.
(150) In one embodiment, P10 and P15 peptides were selected from the peptide screening and tested with all 110 positive Covid-19 and 35 negative pre-covid samples.
(151) In another embodiment, a fusion-epitopes peptide combining the sequences of P10 and P15 peptides was synthesized as one long peptide.
(152) In one embodiment, were tested with single (P10, P15), mixed (P10+P15), and fusion (P15-P10) peptides had a statistically significant difference in fluorescence signal intensity between positive and negative pre-covid samples (p-value <0.0001), when tested with all patients' serum samples. The optical density results of single, mixed and fusion peptides with positive samples are shown in
(153) In one embodiment, the fusion-epitopes peptide is a better antigen for the detection of antibody compared to non-fused peptides, since the fusion-epitopes peptide had a higher OD signal when compared to all other peptides. Statistical comparison showed significantly higher OD for the fusion-epitopes peptide when compared with P10 (p-value <0.0001), P15 (p-value <0.0001), and mixed P10+P15 (p-value <0.05), as shown in
(154) In one embodiment, the fusion-epitopes peptide had the highest Area Under the Curve (AUC) compared to all other peptides, as shown in the receiver operating characteristics (ROC) curve in
(155) TABLE-US-00003 Fusion- Mixed epitopes peptide peptide P10 P15 P10 + P15 P10 ? P15 Sensitivity 76.3% 70.9% 80% 88.2% (95% CI) (64.5-84.5%) (60-80%) (70-88.1%) (80.9-96.3%) Specificity 91.4% 100% 100% 100% (95% CI) (82.9-100%) (91.4-100%) (91.4-100%) (91.4-100%) Accuracy 79.3% 77.2% 84.1% 90.3% (95% CI) (71.7-86.2%) (69.7-84.1) (77.2-90.3%) (85.5-95.9%)
(156) A mixture of peptides can potentially improve the sensitivity and specificity for detecting Covid-19 antibodies based on information obtained using bioinformatics tools..sup.43 The sensitivity could reach 100% when using a mixture of 4 peptides..sup.43 This enhancement in sensitivity and specificity can also be achieved for a chemiluminescent immunoassay that uses multiple antigens for detecting Covid-19 antibodies..sup.55 This is consistent with the findings in the present disclosure, in which we experimentally demonstrated that the sensitivity and specificity increase when using a mixture of multiple peptides.
(157) In one embodiment, a fusion-epitopes peptide combining sequences from different viral protein regions would further improve the sensitivity and specificity. Combining different sequences has been demonstrated, in which cell-penetrating peptides were combined with peptides that have DNA binding activities in order to design multifunctional peptides..sup.56
(158) SARS-CoV-2 is an RNA virus that is susceptible to mutations. Since the beginning of the pandemic, several mutations have been identified; four have been identified as variants of concern by the WHO, which are Alpha, Beta, Gama, and Delta, which are summarized in the table below..sup.24
(159) TABLE-US-00004 Variant Peptide Mutation Protein Alpha P4 N501Y Spike P10 A570D Spike Beta P4 E484K Spike P4 N501Y Spike Gamma P6 L18F Spike P6 T20N Spike P6 P26S Spike P4 E484K Spike P4 N501Y Spike Delta P5 L452R Spike P15 D377Y Nucleocapsid
(160) In one embodiment, the amino acids sequences used in the immunoassays in the present disclosure are changed as a result of some of the mutations in these variants.
(161) In a preferred embodiment, the Alpha variant has resulted in a change to the spike protein that affected the P10 peptide (A570D), and the Delta variant has resulted in a change to the nucleocapsid protein that affected the P15 peptide (D377Y)..sup.57
(162) In one embodiment, using a fusion-epitopes peptide containing multiple sequences from different variants minimize the impact of mutations in amino acid sequences and detect antibodies against any variant.
(163) In one embodiment, antigens in the present disclosure either as individual or fusion-epitopes peptides could be used to develop serological tests for commercial applications.
(164) In one embodiment, the serological test is an ELISA test similar to examples in the present disclosure. In a preferred embodiment, the ELISA test is developed as an already coated plate to detect serum antibodies in all clinical laboratories.
(165) In another embodiment, magnetic beads is conjugated with the above described peptide epitopes to detect serum antibodies using a magnetic chemiluminescence immunoassay which is used in more advanced clinical laboratories..sup.58
(166) In another embodiment, the above described peptide epitopes could be used to develop rapid serological tests to detect SARS-CoV-2 antibodies. In a preferred embodiment, a Lateral Flow Immunoassay (LFIA) can be developed for the rapid detection of SARS-CoV-2 antibodies..sup.59 In another embodiment, conjugating peptide epitopes to gold nanoparticles could be used as a nanosensor for rapid detection of antibodies by a colorimetric assay..sup.60
(167) In one embodiment, these rapid tests can be used as point-of-care tests where access to a clinical laboratory is limited.
(168) In one embodiment, several peptide epitopes from the SARS-CoV-2 spike and nucleocapsid proteins and identified several peptide epitopes were tested and can be used to detect serum antibodies with high sensitivity and specificity. The experimental results were consistent with docking simulations in which a higher number of interactions between the antibodies and peptides corresponded to higher detection sensitivity using ELISA.
(169) In another embodiment, combining amino acid sequences from different epitopes into one peptide enhanced the sensitivity and specificity of the test compared to a single or mixture of peptides.
(170) In a preferred embodiment, peptide epitopes are used to design immunoassays to detect Covid-19 antibodies either as a point of care or laboratory-based tests.
(171) In one embodiment, due to the flexibility of peptide synthesis, peptide epitopes could be modified to reflect changes in the SARS-CoV-2 sequence due to mutations. In a preferred embodiment, fusion-epitopes peptides could also be designed to detect antibodies from different variants of SARS-CoV-2.
(172) Having described the many embodiments of the present disclosure in detail, it will be apparent that modifications and variations are possible without departing from the scope of the invention defined in the appended claims. Furthermore, it should be appreciated that all examples in the present disclosure, while illustrating many embodiments of the invention, are provided as non-limiting examples and are, therefore, not to be taken as limiting the various aspects so illustrated.
EXAMPLES
Example 1
(173) Materials
(174) Forty nanometers Gold NanoSpheres 2 mM citrate (OD=1) was purchased from Nanohybrids?. SARS-CoV-2 (2019-nCoV) Spike S1-His Recombinant Protein (HPLC-verified) (Cat. No.: 40591-V08H) and Normal Rabbit Control IgG (Cat. No.: CR1) were purchased from Sino Biological?. SARS-CoV-2 Spike Protein (S-ECD/RBD) Monoclonal Antibody (bcb03) (Cat. No.: MA5-35950) and Goat Anti-Rabbit IgG (H+L) Superclonal Secondary Antibody (Cat. No.: A27033) were purchased from Fisher Scientific?. Mouse monoclonal (JDC-10) Anti-Human IgG Fc (HRP) (Ab99759) was purchased from Abcam?. 1?Phosphate-buffered saline (PBS), sucrose, TWEEN 20, and bovine serum albumin (BSA), potassium carbonate, and Tris buffer were purchased from Sigma-Aldrich?. All chemicals were used as received, without purification or modification. Cellulose fiber sample pads, glass fiber conjugate pads, and high-flow nitrocellulose membrane were purchased from EMD Millipore? Corporation. Sample pads, conjugate pads, and absorbent pads of different sizes were purchased from Ahlstrom-Munksjo. Backing cards KN-2211? were purchased from Kenosha. FormLabs? Photopolymer Resin White (FLGPWH04) was purchased from FormLabs?.
Example 2
(175) Conjugation of the Gold Nanoparticles
(176) To conjugate the gold nanoparticles (AuNP) (4402) with S1 spike protein (4404) (40591-V08H, Sino Biological?) and Rabbit antibody, as shown in
(177) To confirm the conjugation of the protein to the gold nanoparticles, UV-Vis Spectrometer (PerkinElmer? Lambda 1050) was used to compare the UV-Vis spectra of the conjugated AuNP with ligand-free AuNP. The red shift in peak absorbance between the conjugated AuNP and ligand-free AuNP was assessed, which can be used to confirm the conjugation. The sample was scanned from 800 nm to 250 nm with a data interval of 1 nm and a scanning speed of 266.75 nm/min. To assess the attachment of the proteins to the gold nanoparticles, UV-VIS absorption scan was performed, in which AuNP-S1, AuNP-rabbit antibody conjugates to ligand-free AuNP were compared. The conjugated nanoparticles showed a 3 nm shift compared to the ligand-free nanoparticles, as shown in
Example 3
(178) Assembly of the Strip
(179) To assemble the strip, first, the high-flow nitrocellulose membrane was mounted on the backing cards. Dispensing of the antibodies to the nitrocellulose membrane was done using a setup consisting of a robotic arm (Dobot? Magician, Dobot?, China) and a microfluidic pump (ExiGo?, Cellix, Ireland), as depicted in
Example 4
(180) Designing and 3D Printing of the LFIA Strip Cassettes
(181) NX computer-aided design (CAD) software was used in designing the housing units, along with SolidWorks? as a supporting program. NX CAD was mainly used to design several iterations due to its capability in designing small features. NX CAD provided the simulation tools needed to test the assembly of the design before printing; the simulation of the designed structure was needed to design the locking mechanism as it requires a precise sizing to ensure proper locking after printing.
(182) Multiple 3D printing technologies were used to ensure the design's maximum potential in prototyping these small housing units. Material extrusion 3D printing is the traditional 3D printing method, and vat photopolymerization 3D printing was used in prototyping the cassette designs. Using vat photopolymerization, 3D printing was about its ability to print a small housing unit with fine features in a short period of time. Furthermore, cassettes were printed with FormLabs? white liquid resin and commercially available thermoplastic filament to keep the housing unit price reasonable. The vat photopolymerization 3D printer, FormLabs? (Form 3), which was used in printing the housing unit, is capable of printing a hundred units a day.
(183) Several design iterations were devolved to complement the rapid changes during the test development. The first iteration of the designs started with mimicking the commercially available rapid tests.sup.27. While modifying the test, the cassette design was modified as well leading to the final iteration design. Using different 3D printing technologies allowed the testing and changing of different features while developing the test.
Example 5
(184) FEA Simulation for the Final Iteration of the Cassette
(185) LFIA test strips are usually single-use tests, and the housing units are there to protect the strip. The designing process in the present disclosure was to reduce the amount of material needed to build the cassette, thus reducing wasted and discarded material from each cassette used. FEA simulation was used to study the proposed design before printing to ensure that the design can sustain handling forces without breaking. The durability of the cassette is not essential in single-use devices. However, a minimum thickness for the proposed cassette is required to prevent it from breaking during the test and handling when polyethylene is used as a material for the designed cassette.
(186) The FEA simulation was conducted using NX software. As NX was the CAD software used to design the cassette, it was also used to perform the FEA simulation to ensure accurate simulations results for the proposed design. Furthermore, before FEA simulation, the two sides of the cassette were assembled without restricting the locking mechanisms to mimic the printing assembly. This setting gave a better understanding of the behavior of the dipsticks while exerting force (F). The type of element applied during this simulation was tetrahedral, with an element size equal to 1.43 mm. During the simulation, one side of the cassette was fixed, while the other side was the location of the applied force to the negative z-axis. The force distribution is illustrated in
Example 6
(187) Testing of the Assembled Strip
(188) The assembled strip was added to the cassette. A solution of AuNP-S1 and AuNP-rabbit antibody at a concentration of 10 OD was mixed together at a ratio of 1:1. The solution was then used by adding 10 ?l of the mixture into an Eppendorf tube, as shown in
Example 7
(189) Materials for Peptide Selection and Peptide Synthesis
(190) MBHA Rink Amide resin, 9-Fluorenylmethoxycarbonyl (Fmoc) protected amino acids, (2-(1H-Benzotriazol-1-yl)-1,1,3,3-tetramethyluronium hexafluorophosphate (TBTU), Hydroxy benzotriazole (HOBt) were obtained from GL Biochem, China. N,N dimethylformamide (DMF), dichloromethane (DCM), N,N-diisopropylethylamine (DIPEA), piperidine, trifluoroacetic acid (TFA), triisopropylsilane (TIS), diethyl ether, acetonitrile, and formic acid were purchased from Sigma-Aldrich?.
Example 8
(191) Peptide Design
(192) B-cell epitopes were selected from the SARS-CoV-2 proteins based on emerging computational and experimental epitope mapping studies..sup.41-43,51,52 Biotin tag was incorporated into the peptide epitopes at the N-terminal site.
Example 9
(193) Peptide Synthesis and Purification
(194) All peptide epitopes were synthesized via a solid-phase peptide synthesis (SPPS) using a CS136X CS Biopeptide synthesizer. The peptide coupling was conducted on MBHA Rink Amide resin by agitating in a mixture of TBTU (3 eq.), HOBt (3 eq.) DIPEA (6 eq.) and Fmoc-protected amino acid (3 eq.) for an hour. Then, the resin was washed with DMF (3?), DCM (3?), and DMF (3?). 20% (v/v) piperidine/DMF was subsequently added to remove the Fmoc-protecting group from the sequence. The steps of coupling, washing and fmoc deprotection were repeated until the desired sequence was achieved. In every sequence, the last amino acid coupled was Fmoc-Lys(Biotin)-OH. The resin was then transferred out of the synthesizer and cleaved with an acidic solution of TFA:TIS:water (95:2.5:2.5). After 2 hours of mixing, the solution was collected, dispersed in cold diethyl ether, and stored at 4? C. overnight. The precipitated peptide was then centrifuged and dried in a vacuum desiccator prior to purification. The peptide purification was performed in reversed-phase prep-HPLC using the C-18 column. The purity of the synthesized peptides was calculated to be higher than 95%. A representative example of liquid chromatogram and mass spectrum of biotin-P13 is shown in
Example 10
(195) Liquid Chromatography-Mass Spectroscopy (LC-MS)
(196) The peptide purity was determined using an Agilent? 1260 Infinity LC equipped with Agilent? 6130 Quadrupole MS and Agilent? Zorbax? SB-C18 4.6?250 mm column. 0.1% (v/v) formic acidwater (A) and 0.1% (v/v) formic acidacetonitrile (B) were chosen as the mobile phase with the flow rate of 1.5 ml/min. The chromatogram was acquired at a wavelength of 220 nm.
Example 11
(197) Patients' Samples
(198) Patients' serum samples were obtained from King Khalid Teaching Hospital and King Fahad Medical City in Riyadh, Saudi Arabia. This study was approved by the institutional review board committee (IRB) at both institutions and the institutional ethics and biosafety committee (IBEC) at King Abdullah University of Science and Technology (KAUST). One hundred forty-five samples were used, including 110 samples collected from PCR confirmed Covid-19 patients and 35 pre-covid samples collected and archived before November 2019 to be used as a negative control. All samples collected from Covid-19 patients tested positive for the presence of Covid-19 antibodies using a commercial antibodies test (Abbott? COVID IgG test) at King Khalid Teaching Hospital clinical laboratory. In addition, for each sample: age, gender, date of PCR testing, and date of blood sample collection were recorded.
Example 12
(199) ELISA Protocol
(200) Different ELISA plates and protocols were tested, the following protocol was optimized for the ELISA experiments. For peptide, streptavidin ELISA plates (Thermo Fisher?, 15120) were first washed two times with Tris washing buffer (tris buffer+0.05% Tween-20) and then coated with 60 ?l peptide solution per well at a concentration of 1 ?M for 90 minutes with gentle shaking; peptides were dissolved in tris washing buffer. Then the plates were washed 3 times with tris washing buffer. For S1 Spike protein (Sino Biological?, 40591-V08H), MaxiSorp ELISA plates (Thermo Fisher?, 44-2404-21) were coated with 60 ?l of the protein at a concentration of 2 ?g/ml and incubated overnight at 4? C.; protein was diluted in a coating buffer (carbonate-bicarbonate buffer). After the overnight incubation the plates were washed three times with tris buffer and blocked with Superblocker blocking buffer (Thermo Fisher?, Cat #37515) for 1.5 hours at room temperature. Serum samples were diluted to 1:500 in Superblocker blocking buffer, and 60 ?l of the diluted samples were added to the corresponding wells; 4 replicates of each sample were added to each plate. Each sample was tested with antigen control wells in which no peptide or protein coating were done to account for the background signal. Samples were incubated for 1-hour at room temperature then the plates were washed 3 times with the washing buffer. Sixty microliters of the secondary anti-human antibodies (Abcam?, ab99759) were added to each well at a 300 ng/ml concentration and incubated at room temperature for 1-hour. Afterward, the plates were washed 3 times with washing buffer, and 60 ?l of the TMB substrate (Abcam?, 171523) was added to each well and incubated for 30 minutes before adding the stop solution (Invitrogen?, SS04). Finally, plate absorbance was measured at 450 nm using an ELISA plate reader (PHERAstar?, BMGLABOTECH).
Example 13
(201) ELISA Experiment: All Antigens Screening
(202) ELISA was performed using streptavidin-coated plates (Thermo Fisher?, Cat #15120). Detailed ELISA protocol is provided in Example 12. Initially, experiments with single peptide coating at a concentration of 1 ?M and S1 spike protein (Sino Biological?, 40591-V08H) at a concentration of 2 ?g/ml were conducted in which randomly selected 18 positives and 6 negative samples were tested. The mapping of tested peptides included P4, P5, P6, P7, P10, P11, P12, P13, P14, and P15 is illustrated in
Example 14
(203) Docking Simulation
(204) Docking between the peptides and antibodies was simulated to further elucidate the binding of the peptides to the spike and nucleocapsid regions. Three peptides based on the RBD region of the SARS-CoV-2 spike protein (P4, P5, P7) and one peptide from the nucleocapsid protein (P13) were used as targets for reported antibodies. These peptides were selected because the antibodies (7KS9 and 7CR5) reported in the literature corresponded to these regions only..sup.62-64 The sequence of the peptides was aligned to an appropriate antigen-antibody complex via PyMol, to obtain an initial three-dimensional conformation of the peptides (P4, P5 and P7). The conformation for P4, P5, and P7 was obtained from previously reported, RBD-directed, spike-antibody complexes..sup.65 All these were compared using PyMOL's alignment tool; root-mean-square deviation (RMSD) was calculated for all unbound configurations..sup.66 The configurations with the lowest average RMSD were chosen for docking with the antibodies. On the other hand, the initial conformation of P13 was generated from the sequence alignment of P13 and the nucleocapsid protein antibody.
(205) Then, the docking simulations between the resultant peptide configurations and the isolated antibodies were performed according to the ClusPro protein-protein antibody docking methodology..sup.67-71 A negative control was developed by docking antibodies for the nucleocapsid to the spike protein-derived peptides and vice versa. The interactions were visualized and analyzed using PyMOL (v4.6.0). Next, the top 10 simulations of each docking were determined through their energy scores with Z-Score normalization and the number of interactions between the peptides and antibodies was analyzed. The only interactions between the peptide and the antibody considered in this evaluation were those pertaining to the active site of the antibody.
Example 15
(206) ELISA Experiment: All Samples Screening
(207) One peptide from the spike protein (P10) and one from the nucleocapsid protein (P15) were selected to be tested with all 110 positive samples and 35 negative pre-covid samples. Additionally, the sequences from P10 and P15 peptides were combined and synthesized as one longer fusion-epitopes peptide. The fusion-epitopes peptide and a mixture of the two single peptides (P10 and P15) were tested with all samples. The data from the single peptides, single peptides mixture, and fusion-epitopes peptide were compared to assess any change in the sensitivity, specificity, and accuracy.
Example 16
(208) ELISA Data Analysis
(209) Optical density (OD) data correction was done for all tested samples. Mean optical density (OD) signal from wells coated with a peptide was calculated and subtracted from the mean OD signal for peptide control wells, wells with no peptide coating. The corrected data from negative pre-covid samples were used to calculate the threshold value for each peptide.
Example 17
(210) All Antigens Screening Analysis
(211) For the peptide screening experiment, the threshold to determine positive and negative results were determined using the following formula: mean of OD signal+(3?SD)..sup.72 Any sample with an OD result above the threshold would be considered positive, and any sample with an OD result below the threshold would be considered negative. Furthermore, sensitivity and specificity were calculated, for each peptide, using the following formulas:
(212)
Example 18
(213) All Samples Screening
(214) OD results for all samples tested with the single, mixed, and fusion-epitopes peptides were compared using Mann-Whitney U test (Wilcoxon Rank Sum Test).
(215) Furthermore, ROC (Receiver Operating Characteristics) curves were computed and analyzed to assess the AUC (Area Under the Curve) for each peptide..sup.73 Moreover, the optimal threshold was determined using Youden's J statistics.sup.74 to determine the sensitivity, specificity, and accuracy for each peptide; 95% confidence interval was calculated with 2000 bootstrap. Statistical analysis was done with R 4.1.0.
(216) It is intended that the invention not be limited to the particular embodiment disclosed herein contemplated for carrying out this invention, but that the invention will include all embodiments falling within the scope of the claims.
(217) All documents, patents, journal articles and other materials cited in the present application are incorporated herein by reference.
(218) The many features and advantages of the invention are apparent from the detailed specification, and thus, it is intended by the appended claims to cover all such features and advantages of the invention which fall within the true spirit and scope of the invention. Further, since numerous modifications and variations will readily occur to those skilled in the art, it is not desired to limit the invention to the exact construction and operation illustrated and described, and accordingly, all suitable modifications and equivalents may be resorted to, falling within the scope of the invention.
REFERENCES
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(220) The foregoing applications, and all documents cited therein or during their prosecution (appln cited documents) and all documents cited or referenced in the appln cited documents, and all documents cited or referenced herein (herein cited documents), and all documents cited or referenced in herein cited documents, together with any manufacturer's instructions, descriptions, products specifications, and product sheets for any products mentioned herein or in any document incorporated by reference herein, are hereby incorporated herein by reference, and may be employed in the practice of the invention. More specifically, all referenced documents are incorporated by reference to the same extent as if each individual document was specifically and individually indicated to be incorporated by reference.
(221) While the present disclosure has been disclosed with references to certain embodiments, numerous modifications, alterations, and changes to the described embodiments are possible without departing from the sphere and scope of the present disclosure, as defined in the appended claims. Accordingly, it is intended that the present disclosure is not limited to the described embodiments, but that it has the full scope defined by the language of the following claims, and equivalents thereof.