The present disclosure relates generally to systems and methods for biomarker monitoring using a wearable biosensor device. Particular implementations are directed to automatic and non-invasive monitoring of protein or hormone biomarkers using a wearable microfluidic bioaffinity sensor that collects sweat samples.
Recent advances in flexible electronics and digital health have transformed conventional laboratory tests into remote wearable molecular sensing that enables real-time monitoring of physiological biomarkers. Sweat contains abundant biochemical molecules ranging from electrolytes and metabolites, to large proteins, and importantly, it is readily accessible by non-invasive techniques. However, currently reported wearable biosensors are largely restricted to the detection of a limited selection of biomarkers such as electrolytes and metabolites at μM or greater concentrations via ion-selective and enzymatic sensors or direct oxidation/reduction. For example, the majority of clinically relevant protein biomarkers including C-reactive protein (CRP) are present at nM to pM levels in blood while the anticipated levels of proteins in sweat are expected to be much lower than in blood. Commercial point-of-care biomarker monitors are still bulky in size and cannot reach picomolar-level sensitivity to assess biomarker levels in non-invasively accessible alternative biofluids such as sweat and saliva.
The technology described herein relates to wearable bioaffinity sensor systems and methods capable of automatic and real-time monitoring of low levels of biomarkers such as hormone and protein biomarkers.
In one embodiment, a wearable biosensor device comprises: an iontophoresis module configured to stimulate production of a sweat sample from skin of a user, the sweat sample including biomarkers; a microfluidic module configured to collect the sweat sample, mix the sweat sample with labeled detection reagents to obtain a mixture including the biomarkers bound to the labeled detection reagents, and route the mixture to a detection reservoir of the microfluidic module; and a sensor assembly comprising a bioaffinity sensor configured to quantify the biomarkers of the mixture in the detection reservoir to determine a concentration of the biomarkers present in the sweat sample, the bioaffinity sensor comprising an electrode functionalized to bind to the biomarkers of the mixture.
In some implementations, the labeled detection reagents comprise first nanoparticles conjugated with detection antibodies that bind to the biomarkers; and a surface of the electrode comprises second nanoparticles conjugated with capture antibodies that bind to the biomarkers.
In some implementations, first nano particles and second nanoparticles are gold nanoparticles (AuNPs). In some implementations, the biomarkers comprise protein biomarkers or hormone biomarkers. In particular implementations, the biomarkers comprise CRP.
In some implementations, the wearable biosensor device is configured to quantify the biomarkers of the mixture to determine the concentration with a sensitivity of 1 micromole or less, 100 nanomoles or less, 10 nanomoles or less, 1 nanomole or less, 100 picomoles or less, or 10 picomoles or less.
In some implementations, the microfluidic module comprises: an inlet for collecting the sweat sample; a reagent reservoir including the labeled detection reagents, the reagent reservoir configured to refresh the sweat sample with the labeled detection reagents; a mixing channel for mixing the sweat sample refreshed with the labeled detection reagents to form the mixture including the labeled detection reagents bound to the biomarkers; the detection reservoir for receiving the mixture from the mixing channel; and an outlet for providing an outflow of the sweat sample from the detection reservoir.
In some implementations, the sensor assembly further comprises: a temperature sensor configured to measure a temperature of the skin; an ionic strength sensor configured to measure an ionic strength of the sweat sample; and/or a pH sensor configured to measure a pH level of the sweat sample. In some implementations, the wearable biosensor device is configured to calibrate readings from the bioaffinity sensor based on measurements made by the temperature sensor, the ionic strength sensor, and/or the pH sensor.
In some implementations, the sensor assembly comprises a multiplexed sensor array fabricated using laser-engraved graphene (LEG), the multiplexed sensor array including the bioaffinity sensor, the temperature sensor, the ionic strength sensor, and/or the pH sensor.
In some implementations, the wearable biosensor device comprises: a disposable patch including the iontophoresis module, the microfluidic module, and the sensor assembly, the disposable patch comprising an adhesive to directly adhere the disposable patch to the skin; and a flexible printed circuit board (FPCB) coupled to the patch, the FPCB configured to receive signals from the sensor assembly and power the wearable biosensor device.
In some implementations, the FPCB is reusable and configured to removably couple to the patch; and the FPCB comprises a processor configured to perform in situ signal processing of signals received from the sensor assembly, and a wireless communication module configured to wirelessly communicate, in real-time, with a mobile device.
In one embodiment, a method comprises: receiving, via an inlet of a microfluidic module, a sweat sample collected from skin, the sweat sample including protein or hormone biomarkers; reconstituting, within a reagent reservoir of the microfluidic module, the sweat sample with detection reagents configured to bind with the protein or hormone biomarkers, the detection regents comprising electroactive label molecules; binding, within a mixing channel of the microfluidic module, the detection reagents with the protein or hormone biomarkers to form a mixture including the protein or hormone biomarkers bound with the detection reagents; collecting, within a detection reservoir of the microfluidic module, the mixture of the protein or hormone biomarkers bound to the detection reagents, to bind the protein or hormone biomarkers to an electrode of a sensor assembly; refreshing the microfluidic module with one or more additional sweat samples not containing detection reagents to remove, via an outlet of the microfluidic module, unbound detection reagents; and estimating a concentration of the protein or hormone biomarkers present in the sweat sample by measuring an amount of the electroactive labels present at a surface of the electrode.
In some implementations, estimating the concentration of the protein or hormone biomarkers present in the sweat sample, comprises: estimating the concentration of the protein or hormone biomarkers with a sensitivity of 1 micromole or less, 100 nanomoles or less, 10 nanomoles or less, 1 nanomole or less, 100 picomoles or less, or 10 picomoles or less.
In some implementations, the method further comprises: obtaining, using one or more additional sensors of the sensor assembly, one or more additional biophysical sensor measurements comprising a temperature of the skin, a pH level of the sweat sample, or an ionic strength of the sweat sample; and calibrating, based on the one or more additional biophysical sensor measurements, the estimated concentration of the protein or hormone biomarkers.
In some implementations, the method further comprises: prior to receiving the sweat sample via the inlet, inducing, using an iontophoresis module in contact with the skin, the sweat sample.
In some implementations, the protein biomarkers are CRP. In some implementations, the detection reagents further comprise first nanoparticles conjugated with detection antibodies that bind to the CRP; and a surface of the electrode comprises second nanoparticles conjugated with capture antibodies that bind to the CRP.
In some implementations, the first nanoparticles and second nanoparticles are gold nanoparticles; and the electroactive label molecules are redox molecules.
In one embodiment, a method comprises: adhering, to skin of a user, a patch that includes a microfluidic module and sensor assembly; collecting, in the microfluidic module, a sweat sample obtained from the skin; mixing, within the microfluidic module, the sweat sample with reagents to obtain a mixture that comprises the reagents bound to protein or hormone biomarkers contained in the sweat sample; and estimating, from the mixture, using the sensor assembly, a concentration of the protein or hormone biomarkers in the sweat sample.
In some implementations, the method further comprises: monitoring, in real-time, based on the concentration of the protein or hormone biomarkers estimated using the sensor assembly, a health condition of the user.
In some implementations, monitoring in real-time, the health condition of the user, comprises: comparing the concentration of the protein or hormone biomarkers estimated using the sensor assembly to a threshold to determine a biological condition of the user. For example, the concentration of CRP or some other inflammatory biomarker that was estimated using the sensor assembly can be compared to a threshold to determine whether the user is presently experiencing an inflammatory response.
In some implementations, the health condition comprises: heart disease, chronic obstructive pulmonary disease, inflammatory bowel disease, an active infection, or a past infection.
In some implementations, the method further comprises: presenting to the user, in real-time, via a mobile device communicatively coupled to the patch via a wireless communication medium, the concentration of the protein or hormone biomarkers estimated using the sensor assembly.
Other features and aspects of the disclosed technology will become apparent from the following detailed description, taken in conjunction with the accompanying drawings, which illustrate, by way of example, the features in accordance with implementations of the disclosed technology. The summary is not intended to limit the scope of any inventions described herein, which are defined by the claims and equivalents.
The present disclosure, in accordance with one or more implementations, is described in detail with reference to the following figures. The figures are provided for purposes of illustration only and merely depict example implementations. Furthermore, it should be noted that for clarity and ease of illustration, the elements in the figures have not necessarily been drawn to scale.
15A includes a plot showing the measured admittance response of an impedimetric ionic strength sensor in NaCl solutions.
The figures are not exhaustive and do not limit the present disclosure to the precise form disclosed.
Despite recent efforts in the development of wearable bioaffinity biosensors for trace-level biomarkers such as cortisol, the accurate and in situ detection of biomarkers such as sweat protein or hormone biomarkers remains a major challenge due to their extremely low concentrations (e.g., nM or pM levels) and the large interpersonal and intrapersonal variations in sweat compositions. For example, the detection of protein biomarkers usually requires integrating bioaffinity receptors such as antibodies and aptamers. However, such techniques typically require lengthy target incubation, labor-intensive washing steps, and the addition of redox solutions for signal transduction. In addition, the current turnaround time (1 day or more) of high-sensitivity clinical biomarker tests such as the high-sensitivity CRP Test (hsCRP) may not meet the need for frequent assessments. For example, in addition to hospitalized cases that require close monitoring of inflammatory state, many chronic diseases, such as COPD and inflammatory bowel disease, could benefit from at-home, daily or frequent, fully automatic, and non-invasive assessment of CRP for disease management.
As such, there is a need for a wearable biosensing technology that allows automatic in situ monitoring of ultra-low-level circulating biomarkers at home and in community settings. To this end, some implementations of disclosure are directed to systems and methods for wearable and real-time electrochemical detection of low-concentration protein and hormone biomarkers such as inflammatory biomarkers in sweat. In accordance with some implementations of the disclosure, a biosensor device for biomarker sampling can include: an iontophoresis module that stimulates production of sweat, a microfluidic module for sweat sampling and for labeled reagent routing and replacement, and an electrochemical bioaffinity sensor (including, but not limited to an immunosensor, DNA sensor, and aptamer sensor) for quantifying a biomarker contained in the sweat. Particular implementations are directed to a wearable and wireless patch that includes the aforementioned components for the real-time electrochemical detection of low level concentrations of biomarkers in sweat. During on-body operation, the patch can conformally adhere to the skin through medical adhesive with in situ biomarker sensing performed in the microfluidics without direct sensor-skin contact. In a particular embodiment, the inflammatory biomarker CRP can be monitored in sweat samples.
In accordance with some particular implementations, the biosensor device can utilize a bioaffinity sensor (e.g., CRP sensor) for quantifying the biomarker (e.g., CRP) via an electrode functionalized with nanoparticle-conjugated capture antibodies (e.g., anti-CRP capture antibodies). In accordance some particular implementations, the bioaffinity sensor can be part of a graphene-based sensor array that also includes sensors for ionic strength, pH, and/or temperature measurements, for the real-calibration of the bioaffinity sensor.
Various benefits can be realized by implementing the systems and methods described herein. First the wearable biosensor device described herein can enable real-time, non-invasive, and wireless biomarker analysis in both healthy and patient populations. This could facilitate the management and/or detection of chronic diseases by providing real-time sensitive analysis of biomarkers present in sweat of a user. Second, by virtue of combining particular nanomaterials and chemistry techniques (e.g., a combination of capture receptor such as antibody immobilized mesoporous graphene-Au nanoparticles for efficient target recognition and thionine-tagged detector antibody-conjugated Au nanoparticles for signal transduction and amplification), the technology described herein could realize sweat CRP or other biomarker analysis with high sensitivity, selectivity, and efficiency. For example, in contrast to previous wearable technologies for monitoring biomarkers previously reported LEG-based sensors that detect metabolites at μM or higher level, the technology described herein could be used to realize highly sensitive detection of ultra-low-level biomarkers in situ with a 6 orders-of-magnitude (e.g., picomolar level) improvement in sensitivity.
Third, biosensor device modules described herein can enable autonomous sweat induction, sampling, reagent routing, and fully automatic bioaffinity sensing in situ on the skin of a user. Further, by virtue of utilizing multiple sensor modalities in some implementations, the influence of interpersonal variations on wearable sensing can be mitigated and allow real-time biomarker data calibration. These additional sensor modalities could also be used to provide a more comprehensive assessment of the physiological status.
Further still, utilizing the technology described herein to perform experiments involving measurement of CRP levels in patients, the presence of CRP was confirmed in human sweat from healthy subjects, and elevated CRP levels were discovered in sweat from patients with various chronic and acute inflammations associated with health conditions including heart failure, COPD, and active and past infections (e.g., COVID-19). Moreover, by virtue of utilizing the technology described herein to perform experiments involving measurement of CRP levels in patients, a strong correlation between sweat and blood serum CRP levels was discovered in both healthy and patient populations, indicating the utility of the technology described herein in non-invasive disease classification, monitoring, and/or management.
These and other benefits realized by implementing the technology described herein are further describe below.
During operation, the biosensor device 300 is configured to collect biophysical data corresponding to the user, including data associated with biomarkers collected from the user's sweat 30, and communicate the data to a mobile device 50 via a wireless communication link 20. The wireless communication link 20 can be a radio frequency link such as a Bluetooth® or Bluetooth® low energy (LE) link, a Wi-Fi® link, a ZigBee link, or some other suitable wireless communication link. In some embodiments, a low energy and/or short-range wireless communication link can preferably be used for data transfer. The mobile device 50 can be a smartphone, a smartwatch, a head mounted display (HMD), or other suitable mobile device that can run an application that displays health information (e.g., inflammatory biomarker data, temperature data, etc.) associated with the data received from the biosensor device 300. In some implementations, the application can analyze and/or organize data collected from the biosensor device 300.
As shown, the sensor assembly 120 can include a bioaffinity sensor 121a-121c as well as additional sensors 122-124. The bioaffinity sensor 121a-121c can include a working electrode 121a including a coating that selectively binds to the biomarker of interest present in a sweat sample, a reference electrode 121b, and a counter electrode 121c for sweat biomarker capturing and electrochemical analysis. In a particular embodiment, the bioaffinity sensor 121a-121c is an inflammatory biomarker sensor (e.g., a CRP sensor) that binds to an inflammatory biomarker of interest (e.g., CRP). In some implementations, the working electrode 121a can be coated with nanoparticles conjugated with antibodies that bind to the biomarker of interest. In particular implementations, the working electrode 121a is functionalized with AuNPs conjugated with capture antibodies (cAbs). For example, the cAbs can be anti-CRP cAbs. The AuNP can be electrodeposited. In particular implementations, the reference electrode 121b is an Ag/AgCl reference electrode. The aforementioned design can enable highly sensitive and efficient electrochemical detection of trace-level sweat biomarkers such as hormones or proteins, including CRP, in situ on the skin. For example, in some implementations, the sensor assembly 120 including bioaffinity sensor 121a-121c is configured to determine the concentration of the biomarkers with a sensitivity of 1 micromole or less, 100 nanomoles or less, 10 nanomoles or less, 1 nanomole or less, 100 picomoles or less, or even 10 picomoles or less. Other nanoparticles that can be conjugated with an antibody that binds to the biomarker can include iron oxide nanoparticles, quantum dots, silver nanoparticles, copper nanoparticles, copper oxide nanoparticles, etc.
The additional sensors can include a temperature sensor 122, a pH sensor 123, and an ionic strength sensor 124. In one implementation, temperature sensor 122 is a strain-insensitive temperature sensor. In one implementation, pH sensor is a potentiometric sweat pH sensor. In one implementation, ionic strength sensor is an impedimetric ionic strength sensor. As further described below, having additional, integrated pH, temperature, and ionic strength sensors can enable real-time personalized biomarker data calibration to mitigate the interpersonal sample matrix variation-induced sensing error, and provide a more comprehensive assessment of the physiological status. In some implementations, the combination of sensors, including bioaffinity sensor 121a-121c and sensors 122-124 can be implemented as a multiplexed sensor array. In other implementations, some of the additional sensors can be excluded, or other additional sensors can be included to enable calibration.
The sensor assembly 120, including electrodes 129, bioaffinity sensor 121a-121c, and sensors 122-124, can be formed as LEG sensor assembly. LEG fabrication may enable large scale production of biosensor systems, via CO2 laser engraving, at relatively low cost. An LEG sensor can be advantageous because it can be printed using a modified conventional printer. Printable wearable sensor patches can be fabricated on a large scale at a relatively low cost. This may allow for disposable sensor patches which may be worn by an individual for an extended of time (e.g., 12-24 hrs), which can be replaced on a daily level, and which can collect health information without invasive testing and the need for a human patient to come in to a physical laboratory for repeated testing.
The FPCB 200 can be configured for iontophoretic sweat induction, sensor data acquisition and/or wireless communication with a mobile device 50. During assembly, the FPCB 200 can interface on top of the patch 100 to form the fully integrated wearable biosensor device 300. The FPCB 200 can be configured as a reusable electronic system that interfaces with disposable, point-of-care sensor patches 100. A battery 251 (e.g., lithium battery) can power the system, enabling functions such as wireless communication. In other implementations, the biosensor device 300 can be powered by other or additional means such as by human motion, by a small solar panel, and/or by a biofluid powering system that powers the device using collected sweat flow.
Each of the reservoir layer 210 and collection layer 230 can be a patterned medical adhesive such as medical tape that can be double-sided. The inlet layer 220 can be formed of a thermoplastic polymer resin such as Polyethylene terephthalate (PET). As depicted, the inlet layer 220 can be stacked/adhered over the reservoir layer 210 to form assembly 225. The collection layer 230 can be stacked/adhered over the assembly 225 to form an assembly 235 corresponding to the microfluidic module 130.
Also depicted in
In some implementations, the biosensor device 300 can be designed to have good mechanical flexibility and stability toward practical usage during physical activities. For example, each individual sensor could be designed such that it shows minimal variations under a moderate radius of bending curvature (e.g., 5 cm). In addition, more strain-insensitive sensor designs could be included as needed.
It should be appreciated that other methods of assembly are contemplated other than the one illustrated in
Operation 510 includes receiving, via an inlet 131, a biofluid sample that includes biomarkers. The biofluid sample can be a sweat sample that is autonomously induced using an iontophoresis module as described above (e.g., using electrodes 129 and carbagel 140), and it can flow into the microfluidic module 130 via inlet 131.
Operation 520 includes, reconstituting, within the reagent reservoir 132, the biofluid sample with detection reagents configured to bind with biomarkers contained in the biofluid, the detection regents comprising electroactive label molecules. The detection reagents can be deposited in the reagent reservoir 132 prior to biofluid collection. As the biofluid enters the reagent reservoir 132, it carries away the deposited detection reagents. For example,
Operation 530 includes, binding, within the mixing channel 133, the detection reagents with the biomarkers contained in the biofluid sample to form a mixture.
Operation 540 includes, collecting, within the detection reservoir 134, the mixture from the mixing channel 133 to bind the biomarkers, previously bound to the labeled detection reagents, to the working electrode 121a. For example,
Operation 550 includes, refreshing the microfluidic module 130 with one or more additional biofluid samples not containing detection reagents to remove unbound detection reagents from detection reservoir 134 via outlet 135. For example, a fresh sweat stream can continue to enter and refresh the microfluidics to remove unbound detection reagents and achieve removal of passive labels prior to detection. By way of example,
Operation 560 includes measuring an amount of electroactive label present at the working electrode surface to estimate a concentration of the biomarker. Any one of a number of voltammetric techniques that correlate current to concentration can be applied to make the measurement of the amount of electroactive label bound at the electrode surface. For example, differential pulse voltammetry (DPV), SWV, linear sweep voltammetry (LSV), or some other voltammetric technique can be used to make the measurement. It should be noted that because the electroactive label molecules are directly conjugated to the detection reagents, their amount can be directly correlated to the amount of biomarker between cAbs at the electrode surface and dABs. By way of example,
Depending on the binding environment, there may be significant interpersonal variations in the composition of the biofluid sample, which could affect the rate that biomarkers bind to detection reagents, and affect the accuracy of the estimated concentration of the biomarker. For example, as further discussed below, it was found during experimentation that pH, electrolyte concentration, and temperature can all influence the sensor readout of CRP concentration expressed as a current measurement. As such, in some implementations, to further improve the quantification of biomarkers contained in the biofluid sample, the influence of temperature, pH, and/or ionic strength on the biomarker sensor readings can be calibrated in real-time based on readings from temperature sensor 122, pH sensor 123, and/or ionic strength sensor 124 of the biofluid sample in detection reservoir 134.
In some implementations, to mitigate the difference in binding environment, electrolytes can be introduced into the detection reservoir 134. For example, high-level buffering salts can be deposited with dAbs in a reagent reservoir to mitigate potential binding environment changes caused by sweat composition variations.
In some implementations, the mobile application can itself perform, prior to user display, processing of sensor measurements received from a biosensor device 300. For example, in one implementation, the mobile application can be configured to convert a biomarker concentration based on an obtained voltammogram (e.g., SWV voltammogram) and corresponding real-time obtained values of calibration sensors such as an ionic strength sensor, pH sensor, and temperature sensor.
In some implementations, sweat samples can be collected without reapplication of a hydrogel agent for a period of time. A period of time may be from about two hours up to a full, twenty-four hour day. Refreshed samples can be periodically or continuously collected in the microfluidic patch, mixed with labeled reagents, channeled into a detection reservoir, analyzed, and then flushed out through an outlet. The entire process illustrated above can be merged and integrated on a single sweat sensor patch. After a full day or other time period, a new sweat sensor patch with a new hydrogel agent may be applied and the foregoing process for biomarker detection repeated. The process can be repeated on a daily basis for an extended period of several days, weeks, or even months. The process can also be resumed after a break of a period of days, weeks, or months, to evaluate a change in a medical condition.
In some implementations, a microfluidic sweat collection patch may be optimized to achieve the most rapid refreshing time between samples. Several parameters may be selected for optimization. These parameters may include, for example, the placement of inlet(s) relative to each other and a reagent reservoir, the shape and distance of the mixing channel, a number of inlet(s), the distance between an inlet and reagent reservoir, the shape and distance of the mixing channel, the shape and size of the detection reservoir, the placement and distance of an outlet relative to a detection reservoir, and other factors.
In some implementations, a microfluidic sweat collection patch may be designed to eliminate leakage of a sweat sample. For example, the electrostimulation may be applied to several neighboring sweat glands while avoiding the sweat glands directly underneath inlets. The patch may be designed to allow for collection of a sweat sample from only glands not in touch with the hydrogels and prevent leakage of sweat from the neighboring sweat glands (which mixed with hydrogel). This may be achieved through application of pressure on the gland the sample is taken from and through application of specialized adhesive taping of the neighboring glands and use of secure adhesive to attach the skin patch. The application of hydrogel may also be limited to optimal parts of the patch to minimize interference.
In some implementations, when necessary, dynamic and automatic wearable biomarker sensing could be realized by incorporating capillary bursting valves and sensor arrays into a single disposable sensor patch.
Various experiments and simulations were performed using a biosensor device 300 and/or components thereof used to wirelessly, autonomously, and non-invasively monitor CRP levels, in accordance with a particular embodiment of the disclosure. The design of this particular biosensor device 300, and its associated experimental and simulations results, are further detailed below. Although these experimental and simulation results exemplify some of the advantages of utilizing the technology described herein, it should be appreciated that the disclosure is not limited by the discussion that follows, which describes results and observations of utilizing particular example embodiments. For example, besides CRP, this wearable approach could be adapted to assess other trace-level disease-relevant protein biomarkers on-demand. Additionally, the operation principle described herein could be readily adapted to survey a broad array of biomarkers (e.g., proteins, hormones, cytokines, etc.), including biomarkers that indicate the presence of inflammation or some other biological condition.
Fabrication of a Multiplex Microfluidic Sensor Patch
A particular embodiment of a microfluidic sensor patch was fabricated as follows. A PI film was raster engraved at focus height (8% Power, 15% Speed, 1000 Points Per Inch) to fabricate LEG-based iontophoresis IP electrodes, connection leads, impedance, CRP working, counter and reference electrodes using a 50 W CO2 laser cutter. pH electrode and temperature sensors were engraved using vector mode with 1% and 3% Power, respectively (15% Speed, 1000 Points Per Inch (PPI)). The working electrode of the pH sensor was prepared by electrochemically cleaning the LEG electrode in 1M HCl via cyclic voltammetry from −0.2 to 1.2 V at 0.1V s−1 for 10 cycles followed by electrodeposition of polyaniline pH sensing membrane via cyclic voltammetry from −0.2 to 1.2 V at 0.1 V s−1 for 10 cycles. A shared Ag/AgCl reference electrode was fabricated by electrodeposition of Ag on the LEG electrode in a solution containing silver nitrate, sodium thiosulfate, and sodium bisulfite (250 mM, 750 mM, and 500 mM, respectively) using multi-current steps (30 s at −1 μA, 30 s at −5 μA, 30 s at −10 μA, 30 s at −50 μA, 30 s at −0.1 mA and 30 s at −0.2 mA), followed by drop casting 10 μL-aliquot of 0.1M iron chloride (III) for 1 minute. AuNPs were electrodeposited on the LEG CRP working electrode via pulse deposition (two 0.5 s pulses at −0.2 V separated by a 0.5 s pulse at 0 V) for 40 cycles in the presence of 0.1 mM gold(III) chloride trihydrate and 10 mM sulfuric acid.
Iontophoresis hydrogels containing cholinergic agent carbachol (placed on the IP electrodes) were prepared by dissolving agarose (3% w/w) in deionized water using a microwave oven. After the agarose was fully dissolved, the mixture was cooled down to 165° C. and 1% carbachol for anode (or 1% KCl for cathode) was added to the above mixture and stirred to homogeneity. The cooled mixture was casted into cylindrical molds or assembled microfluidic patch and solidified at room temperature. The hydrogels were stored at 4° C. until use.
A microfluidic module was prepared with an assembly of thin PET film (50 μm) sandwiched between double-sided medical adhesives (180 μm top layer, 260 μm bottom layer with a 50 μm PET backing) that was attached to a substrate and cut through to make channels and reagent reservoirs using a laser cutter at 2.7% power, 1.8% speed, 1000 PPI vector mode. Next, 4% power, 10% speed, 1000 PPI vector mode was used to cut a circular outline through only the top layer of medical adhesive (180 μm). The circular top layer was peeled off to make the detection reservoir. A sweat accumulation layer was prepared by cutting through a 130 μm adhesive. Labeled dAb-AuNPs were drop-casted and dried in the reagent reservoir and stored in dry state at 4° C. before assembly with the sensor patch.
LEG-AuNPs CRP Working Electrode Functionalization
In one particular embodiment, LEG-AuNPs CRP working electrodes were functionalized as follows. LEG-AuNPs working electrodes were immersed in 0.5 mM mercaptoundecanoic acid (MUA) and 1 mM mercaptohexanol (MCH) in proof 200 ethanol overnight for SAM formation. After rinsing with ethanol followed by deionized (DI) water and drying under airflow, electrodes were incubated with 10 μL of a mixture solution containing 0.4 M N-(3-Dimethylaminopropyl)-N′-ethylcarbodiimide (EDC) and 0.1 M N-hydroxysulfosuccinimide sodium salt (sulfo-NHS) in 25 mM 2-(N-morpholino)ethanesulfonic acid hydrate (MES) buffer, pH 5.0, for 35 minutes at room temperature in a humid chamber. Covalent attachment of CRP cAbs was carried out by drop casting 10 μL of anti-CRP solution (250 μg mL−1 in phosphate-buffered saline (PBS), pH 7.4) and incubated at room temperature for 2.5 hours, followed by a 1-hour blocking step with 1.0% bovine serum albumin (BSA) prepared in PBS. Electrodes were stored in 1% BSA in PBS until use.
CRP Detector Antibody Conjugation
In one particular embodiment, CRP detector antibody conjugation was achieved as follows. 20 nm carboxylic acid functionalized PEGylated gold AuNPs were activated with EDC/Sulfo-NHS mix solution (30 mg mL −1 and 36 mg mL−1 respectively) in 10 mM MES buffer (pH 5.5) for 30 minutes. The conjugates were washed with 1×PBS containing 0.1% Tween® 20 (PBST) and centrifuged at 6500 relative centrifugal force (rcf) for 30 minutes. After supernatant removal, 50 μg mL−1 polystreptavidin R (PS-R) was added and allowed to crosslink for 1 hour at room temperature. Following centrifugation at 3500 rcf for 30 minutes and supernatant removal, 5 μg mL−1 biotinylated anti-CRP dAb in 1% BSA prepared in 1×PBS (pH 7.4) was incubated for 1 hour at room temperature. After another round of washing (centrifugation at 2000 rcf), the carboxyl groups of PS-R and dAb on AuNP were activated with EDC/Sulfo-NHS mix solution (30 mg mL −1 and 36 mg mL−1 respectively) in 10 mM MES buffer (pH 5.5) for 30 minutes. After the washing step using centrifugation at 1500 rcf, 100 μM thionine was incubated for 1 hour. The final conjugate was washed with PBST, centrifuged at 1250 rcf, reconstituted in 1% BSA and filtered through 0.2 μm syringe filter to remove all aggregates.
For direct redox probe conjugation to antibodies, 100 μg mL−1 dAb was buffer exchanged by concentrating with a 100K MWCO protein concentrator and reconstituted in 10 mM MES buffer (pH 5.5). The carboxyl groups of dAb were activated with EDC/Sulfo-NHS mix solution (30 mg mL−1 and 36 mg mL−1 respectively) in 10 mM MES buffer (pH 5.5) for 30 minutes in column. Following buffer exchange with 1×PBS (pH 7.4), 100 μM thionine was incubated for 1 hour. The final conjugate was buffer exchanged with PBS, reconstituted in 1% BSA, and filtered through 0.2 μm syringe filter to remove all aggregates.
Electronic System Design and Integration
In one particular embodiment, the electronic system was designed as follows. A 2-layer flexible printed circuit board FPCB was designed. The FPCB outline was designed as a rounded rectangle (31.7 mm×25.5 mm), the same size as the microfluidic sensor patch such that the patch can be inserted directly underneath the FPCB via a cutout (10 mm×3.8 mm). The electronic system was composed of a magnetic reed and a voltage regulator for power management; a boost converter, BJT array, and analog switch for iontophoretic induction; an electrochemical front-end, an operational amplifier, and a voltage divider for sensor array interface; and a BLE module for system control and Bluetooth wireless communication. A BLE connection was established with the wearable device and to wirelessly acquire sensor data for calibration and voltammogram analysis. A rechargeable 3.8 V lithium button cell battery with capacity of 8 mAh was used to power the electronic system. To reduce the existing noise caused by motion artifacts, filtering and smoothing techniques were employed. On the hardware side, the electrochemical AFE filtered noise from the ADC via digital filters. On the software side, smoothing algorithms (moving average filter/median filter) were automatically applied in real-time.
Electrochemical Characterizations of LEG-AuNPs Immunosensor
As depicted by
The formation of LEG-AuNPs composite was observed through the increased ratio of the intensity of D and G bands in the Raman spectra due to the presence of AuNPs. The individual sensor modification steps on the LEG electrodes were characterized with X-ray photoelectron spectroscopy. It was observed that the intensity of Au4f increases substantially after the deposition of AuNPs while N1s increases only after the cAb immobilization step, indicating successful electrode preparation. DPV and electrochemical impedance spectroscopy (EIS) were used to further characterize the LEG surface electrochemically after each modification step. It was observed that there was a decrease in peak current height in DPV voltammograms and increased resistance in Nyquist plots after SAM and cAb protein immobilization, indicating that SAM and cAb impeded the electron transfer at the interface. This was due to the increase in surface coverage by non-conductive species. Moreover, it was found that negatively charged carboxylate functional groups in the SAM layered result in the repulsion of the negatively charged redox indicator, ferricyanide, and further reducing the electron transfer rate. Subsequent modification of the SAM layer with EDC/NHS chemistry replaces the negatively charged carboxylate groups with neutral NHS-ester groups. This was empirically observed as an increase in peak current height. As depicted by
In this particular embodiment, to realize trace-level sweat CRP analysis, PEGylated AuNPs that possess large surface area-to-volume ratio were functionalized with PS-R to increase the loading of biotinylated-dAbs and subsequently enhance sensitivity. For example,
In this particular embodiment, one-step direct electrochemical detection was enabled by crosslinking the redox label TH onto the carboxylate residues on the dAb-loaded AuNPs. As the TH-labeled dAb-loaded AuNPs bound to the mesoporous graphene electrode upon CRP recognition, TH located on the external sites of the proteins were in close proximity to the graphene surface in each mesopores for electron transfer. The successful immobilization of the dAbs was confirmed based on a variety of observations. For example, the successful immobilization was confirmed from observed increases in hydrodynamic sizes of the PEGylated AuNPs after each conjugation step by dynamic light scattering: PS-R immobilization, biotinylated dAb binding and redox molecule TH conjugation followed by BSA deactivation. The successful immobilization of the dAbs was also confirmed from observed shifts of ultraviolet-visible (UV-Vis) absorbance of the AuNPs conjugate after each modification step, and from a TEM image showing dispersed dAb-loaded AuNPs with protein corona shells (
The performance of the CRP in this particular embodiment was evaluated with SWV in CRP spiked PBS solutions (
It was also observed that the LEG-AuNPs CRP immunosensor demonstrated high selectivity over other potential interference proteins and hormones attributed to the sandwich assay format. For example,
Evaluation of Sweat CRP for Non-Invasive Monitoring of Systemic Inflammation
Inflammatory processes and immune responses are associated with a broad spectrum of physical and mental disorders that contribute substantially to modern morbidity and mortality globally. The top three leading causes of death worldwide, namely, ischemic heart disease, stroke, and COPD, are each characterized by chronic inflammation. Although the acute inflammatory response is a critical survival mechanism, chronic inflammation contributes to long-term silent progression of disease through irreversible tissue damage. Delayed diagnosis and treatment of chronic diseases impose heavy financial burdens on patients and the healthcare systems.
Although there is no canonical standard biomarker for the measurement and prediction of systemic chronic inflammation, CRP, an acute-phase protein synthesized by hepatocytes in response to a wide range of both acute and chronic stimuli, has a close association with chronic inflammation and respective risks of mortality in several disease states. The stable nature of CRP in plasma, the absence of circadian variation, and its insensitivity to common medications such as corticosteroids render it extremely attractive to clinicians as a handy means to assess a patient's physiological inflammatory state. There is also a growing interest in exploring the effectiveness of serial CRP measurements for therapeutic decision-making.
At present, circulating CRP levels are clinically assessed in specific laboratories that rely on invasive blood draws from patients. Commercial point-of-care CRP monitors are still bulky in size and cannot reach picomolar-level sensitivity to assess CRP levels in non-invasively accessible alternative biofluids such as sweat and saliva. A readily available means of monitoring inflammatory biomarkers such as CRP at home could improve patient outcomes and lower cost factors by monitoring disease progression and initiating early treatment and intervention.
As such, the use of LEG-AuNPs CRP sensors for the assessment of sweat CRP as a universal, cost-effective, and non-invasive approach to monitor systemic inflammation in various disease states was evaluated. For example,
Prior to performing these evaluations, a proteomic characterization of different types of sweat samples using bottom-up proteomic analysis was conducted to affirm the presence of CRP in sweat generated by iontophoresis and by vigorous exercise. Using a recombinant CRP protein standard as the reference, CRP was identified in both exercise and iontophoretic sweat samples from human subjects.
In one study, using the LEG AuNPs CRP sensor, CRP levels were evaluated in healthy subjects grouped according to smoking status (current, former, and never smokers). Results of the study are illustrated by
In another, preliminary study, using the LEG AuNPs CRP sensor, CRP levels were evaluated in heart failure (HF) patients. Chronic systemic inflammation can be related to increased risks of cardiovascular events. Results of the study are illustrated by
In addition to chronic infections in COPD and HF, acute infections (such as COVID-19) could lead to severe inflammatory responses. In a further, pilot study, using the LEG AuNPs CRP sensor, CRP levels were evaluated in hospitalized patients with active infections for two consecutive days. Results of the study are illustrated by
In a further study, using the LEG AuNPs CRP sensor, CRP levels were analyzed in samples from healthy subjects and patient populations with various inflammatory conditions. Results of the study are illustrated by
Clinical On-Body Evaluation
Clinical on-body evaluation of a wearable biosensor system including a multiplexed LEG sensor array was performed on healthy subjects (involving both never smokers and current smokers) as well as patients with COPD and post-COVID-19 infection. Some of the results of on-body evaluation of the multiplexed sensor patch toward noninvasive automatic inflammation monitoring are illustrated in
Characterization of Multiplexed Microfluidic Patch for Automatic Immunosensing
As the microfluidic module routes sweat passively on the skin, the impedimetric ionic strength sensor can automatically capture the state of the detection reservoir (reagent flow and refreshment).
As sweat samples containing CRP molecules enter the microfluidic patch, it was expected that detector antibodies deposited in solid state would dissolve and diffuse within the detection chamber along the concentration gradient. The collision between CRP molecules with antibodies would lead to the antigen-antibody binding events along the microfluidic channels before they eventually reach the detection chamber. The introduction of a serpentine microfluidic channel was also expected to facilitate the mixing and binding of the antigen-antibody complex.
To visualize and estimate the time scale of the binding events at various locations of the microfluidic module, simulation of the CRP-antibody reversible binding reaction and the mass transport process of reactant and product were conducted through finite element analysis (FEA). Using FEA, tetrahedral elements with refined meshes allowed modeling of the source diffusion in 3D space with testified accuracy. The chemical reaction rate can be described by law of mass action
r=k
f
C
CRP
·C
antibody
−k
r
C
complex
Where r, kf, kr, CCRP, Cantibody, and C complex denote reaction rate, forward reaction coefficient, reverse reaction coefficient, concentration of CRP, concentration of antibody and concentration of CRP-antibody complex, respectively. The forward and reverse reaction coefficients were assumed to be 5.96×104 M−1s−1 and 2.48×10−3 s−1, respectively. The concentration of CRP in sweat was assumed to be 1 ng mL−1. The fluid behavior can be described by the Navier-Stokes equation for incompressible flow
Where ρ, v, p, and μ denote liquid density, flow velocity, pressure, and viscosity, respectively. The sweat flow rate is 1.5 μg mL−1. And the convection diffusion is described by
Where c and D denote concentration and diffusion coefficient. The diffusion coefficient of CRP is 5×10−11 m−2s−1, the diffusion coefficient of antibody and CRP-antibody complex are set to be the same as gold nanoparticles which is 1×10−12 m−2s−1.
Based on the observed results, the binding and transport of CRP with detection antibodies can be categorized into four stages. The maps of
Based on the observed FEA results, after all the pre-deposited detection antibodies in the reagent reservoir are reconstituted, formed antigen-antibody complex with sweat CRP or flushed into the detection reservoir, the concentration of detection antibodies in the reagent reservoir is gradually depleted. The continuous flow of sweat into the microfluidic module will no longer lead to the formation of more antibody-antigen complexes as indicated by concentration in the reagent reservoir during the refreshment stage. Hence, fresh sweat stream deplete of antigen-antibody complexes continues to enter the detection chamber and flush the unbound antibody-antigen complexes in the chamber towards the outlet. Eventually, all unbound antibody-antigen complexes and detection antibodies (which are labeled with electroactive molecules) will be refreshed out of the detection chamber as shown in the detection stage. At this stage, detection is performed, and the electrochemical signal obtained is specific and correlated to the antigen-antibody complexes bound on the working electrode surface since the concentration of the complex in the detection chamber converges to zero (indicated by the concentration).
Based on a microfluidic flow test using artificial sweat (0.2× PBS) under a mean physiological sweat rate (1.5 μL min−1), it was observed that the admittance signal is close to zero initially when no fluid enters the chamber during the reconstitution stage; as reconstituted, high-salt loaded detection reagents flow into the detection chamber, admittance reaches its peak value and gradually decreases as high-salt loaded reagents are flushed out of the detection chamber by newly secreted sweat. This is illustrated by
The performance of CRP sensors based on this automated electrolyte monitoring mechanism was evaluated in multiple microfluidic flow tests.
Although the binding condition is pre-adjusted with deposited salts, the flow test with different initial electrolyte concentrations (0.1× and 0.2× PBS were chosen as artificial sweat to simulate interpersonal variations in sweat electrolyte concentrations) showed slightly decreased SWV signals at the lower electrolyte concentration due to the influence of electrolyte levels on the rate of TH reduction. Similar to in vitro selectivity results, no major interferences on the CRP detection signal were observed in the flow test. Additionally, flow tests using artificial sweat with different pH levels lead to varied SWV signals. These results indicate that sweat rate calibration may not be needed while additional in situ signal calibrations with sweat pH and electrolyte levels may be needed to mitigate the interpersonal variations on CRP detection accuracy. Compared to previously reported passive wearable microfluidic sensors that rely on vigorous exercise to induce sweat and cannot reach sensitivities below mM levels, the technology described herein can an attractive fully automated microfluidic sweat induction, harvesting, and high-accuracy quantitative analysis solution, suitable for at-home monitoring of clinically relevant trace-level biomarkers.
Real-Time CRP Sensor Calibration During On-Body Studies
The influence of pH, electrolyte and temperature were investigated, and all were found to be factors that could influence the sensor readout of CRP. To account for the influences from binding environments, in a particular embodiment a multivariate model consisting of four independent variables: temperature, pH, electrolyte, CRP concentration ([CRP]) and a dependent variable: peak current expressed in potential (mV) was constructed based on the following equation:
peak current=A×[CRP]×pHm×[electrolyte]n×temperaturej
In a particular embodiment, the coefficients were solved using non-linear least square fitting and found to be: A=−0.5117; m=0.6862; n=0.1068; j=−0.6135. The model demonstrated good accuracy in predicting signals measured by the sensors (r2=0.94). During on-body operation, readings from the pH, temperature, electrolyte, and CRP sensors can thus be used to real-time back-calculate the actual concentration of CRP based on the fitted model.
In this document, a “processing device” may be implemented as a single processor that performs processing operations or a combination of specialized and/or general-purpose processors that perform processing operations. A processing device may include a CPU, GPU, APU, DSP, FPGA, ASIC, SOC, and/or other processing circuitry.
The terms “substantially” and “about” used throughout this disclosure, including the claims, are used to describe and account for small fluctuations, such as due to variations in processing. For example, they can refer to less than or equal to ±5%, such as less than or equal to ±2%, such as less than or equal to ±1%, such as less than or equal to ±0.5%, such as less than or equal to ±0.2%, such as less than or equal to ±0.1%, such as less than or equal to ±0.05%.
To the extent applicable, the terms “first,” “second,” “third,” etc. herein are merely employed to show the respective objects described by these terms as separate entities and are not meant to connote a sense of chronological order, unless stated explicitly otherwise herein.
Terms and phrases used in this document, and variations thereof, unless otherwise expressly stated, should be construed as open ended as opposed to limiting. As examples of the foregoing: the term “including” should be read as meaning “including, without limitation” or the like; the term “example” is used to provide exemplary instances of the item in discussion, not an exhaustive or limiting list thereof; the terms “a” or “an” should be read as meaning “at least one,” “one or more” or the like; and adjectives such as “conventional,” “traditional,” “normal,” “standard,” “known” and terms of similar meaning should not be construed as limiting the item described to a given time period or to an item available as of a given time, but instead should be read to encompass conventional, traditional, normal, or standard technologies that may be available or known now or at any time in the future. Likewise, where this document refers to technologies that would be apparent or known to one of ordinary skill in the art, such technologies encompass those apparent or known to the skilled artisan now or at any time in the future.
The presence of broadening words and phrases such as “one or more,” “at least,” “but not limited to” or other like phrases in some instances shall not be read to mean that the narrower case is intended or required in instances where such broadening phrases may be absent.
Additionally, the various embodiments set forth herein are described in terms of exemplary block diagrams, flow charts and other illustrations. As will become apparent to one of ordinary skill in the art after reading this document, the illustrated embodiments and their various alternatives can be implemented without confinement to the illustrated examples. For example, block diagrams and their accompanying description should not be construed as mandating a particular architecture or configuration.
The terms “substantially” and “about” used throughout this disclosure, including the claims, are used to describe and account for small fluctuations, such as due to variations in processing. For example, they can refer to less than or equal to ±5%, such as less than or equal to ±2%, such as less than or equal to ±1%, such as less than or equal to ±0.5%, such as less than or equal to ±0.2%, such as less than or equal to ±0.1%, such as less than or equal to ±0.05%.
To the extent applicable, the terms “first,” “second,” “third,” etc. herein are merely employed to show the respective objects described by these terms as separate entities and are not meant to connote a sense of chronological order, unless stated explicitly otherwise herein.
While various embodiments of the present disclosure have been described above, it should be understood that they have been presented by way of example only, and not of limitation. Likewise, the various diagrams may depict an example architectural or other configuration for the disclosure, which is done to aid in understanding the features and functionality that can be included in the disclosure. The disclosure is not restricted to the illustrated example architectures or configurations, but the desired features can be implemented using a variety of alternative architectures and configurations. Indeed, it will be apparent to one of skill in the art how alternative functional, logical or physical partitioning and configurations can be implemented to implement the desired features of the present disclosure. Also, a multitude of different constituent module names other than those depicted herein can be applied to the various partitions. Additionally, with regard to flow diagrams, operational descriptions and method claims, the order in which the steps are presented herein shall not mandate that various embodiments be implemented to perform the recited functionality in the same order unless the context dictates otherwise.
Although the disclosure is described above in terms of various exemplary embodiments and implementations, it should be understood that the various features, aspects and functionality described in one or more of the individual embodiments are not limited in their applicability to the particular embodiment with which they are described, but instead can be applied, alone or in various combinations, to one or more of the other embodiments of the disclosure, whether or not such embodiments are described and whether or not such features are presented as being a part of a described embodiment. Thus, the breadth and scope of the present disclosure should not be limited by any of the above-described exemplary embodiments.
It should be appreciated that all combinations of the foregoing concepts (provided such concepts are not mutually inconsistent) are contemplated as being part of the inventive subject matter disclosed herein. In particular, all combinations of claimed subject matter appearing in this disclosure are contemplated as being part of the inventive subject matter disclosed herein.
This application claims the benefit of U.S. Provisional Patent Application No. 63/391,669, filed Jul. 22, 2022, and titled “Wearable Microfluidic Bioaffinity Sensor For Automatic Molecular Analysis.” This application also claims the benefit of U.S. Provisional Patent Application No. 63/521,418, filed Jun. 16, 2023, and titled “Wearable Microfluidic Bioaffinity Sensor For Automatic Molecular Analysis.” All of the above applications are incorporated herein by reference in their entirety.
Number | Date | Country | |
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63391669 | Jul 2022 | US | |
63521418 | Jun 2023 | US |