WEARABLE AUTONOMOUS BIOMIMETIC SWEAT SENSOR FOR PRECISION NUTRITION
20220378342 · 2022-12-01
Assignee
Inventors
- Wei Gao (Pasadena, CA, US)
- Minqiang Wang (Pasadena, CA, US)
- Yiran Yang (Pasadena, CA, US)
- Jihong Min (Pasadena, CA, US)
Cpc classification
A61B5/0002
HUMAN NECESSITIES
A61B5/14521
HUMAN NECESSITIES
A61B5/14532
HUMAN NECESSITIES
A61B5/14546
HUMAN NECESSITIES
A61B2562/125
HUMAN NECESSITIES
International classification
A61B5/145
HUMAN NECESSITIES
A61B5/00
HUMAN NECESSITIES
Abstract
Systems and methods for a microfluidic biosensor patch and health monitoring system may include an iontophoresis module, a multi-inlet microfluidic sweat collection and sampling module, and a molecularly imprinted polymer (MIP) organic compound sensor module. An iontophoresis module may provide for stimulation of a biofluid sample. A biofluid may be a sweat sample. Stimulation may be achieved via electrostimulation and/or application of hydrogel. A microfluidic sweat collection and sample module may include several adhesive layers with carefully designed inlets, channels, a reservoir, and an outlet for the efficiently collection and sampling of biofluid. A MIP sensor module may quickly and accurately identify concentrations of key metabolites present in a biofluid sample which may indicate certain health conditions.
Claims
1. A biosensor patch comprising: an iontophoresis module configured to stimulate production of a biofluid sample; a microfluidic collection and sampling module configured to collect and sample the biofluid sample stimulated by the iontophoresis module; and an electrochemical analyte sensor module configured with recognition elements to bind to and detect target molecules present in the biofluid sample stimulated by iontophoresis module and collected in the microfluidic collection and sampling module.
2. The biosensor patch of claim 1 wherein the analyte detection module comprises a molecularly imprinted polymer (MIP) organic compound sensor module, wherein the MIP is imprinted to match binding sites of target molecule to detect target molecules present in the biofluid sample collected in the multi-inlet microfluidic collection and sampling module.
3. The biosensor patch of claim 2 wherein the MIP organic compound sensor module is configured to detect a target molecule by: regenerating the target molecule; recognizing of the target molecule; oxidizing of the target molecule; and detecting the concentration of the target molecule based directly on the measured oxidation peak of the target molecule.
4. The biosensor patch of claim 2 wherein the MIP organic compound sensor module is configured to detect the target molecule by: performing electro-deposition of a redox-active nanoreporter (“RAW”) layer onto the LEG; regenerating the target molecule; recognizing the target molecule; measuring a decrease in oxidation peak at the RAR layer; and detecting the concentration of the target molecule based indirectly on the measured decreased oxidation peak.
5. The biosensor patch of claim 1 wherein the microfluidic collection and sampling module comprises: inlets, each inlet providing a channel for the inflow of a biofluid sample; and a reservoir connected to the inlets such that refreshed biofluid samples accumulate in the reservoir; and an outlet providing a channel for the outflow of the biofluid sample.
6. The biosensor patch of claim 5 comprising a multi-inlet configuration wherein the inlets are positioned relative to the reservoir at a selected angular span and wherein the inlet channels follow a selected orientation relative to the reservoir
7. The biosensor patch of claim 6 wherein the microfluidic collection and sampling module comprises seven inlets and wherein: the selected angular span of the inlets is about 180 degrees; and the selected orientation requires that the inlet channels are aligned toward the outlet.
8. The biosensor patch of claim 1 wherein the patch further comprises: an accumulation layer having accumulation wells and adhesive, wherein the accumulation layer is directly affixed to a skin area with the adhesive and wherein biofluid accumulating on the skin surface is collected in the accumulation wells; an inlet layer directly affixed to the accumulation layer, the inlet layer having inlets wherein biofluid flows from the accumulation wells into the inlets; a reservoir layer directly affixed to the inlet layer, the reservoir layer having a reservoir and an outlet and wherein biofluid flows from the channels into the reservoir and, after sampling of the biofluid, the biofluid exits through the outlet; and a flexible plastic electrode layer directly affixed to the reservoir layer configured with an outlet providing for the exit of the biofluid.
9. The biosensor patch of claim 8 further comprising a channel layer directly affixed to the inlet layer, the channel layer having a plurality of channels wherein biofluid flows from the inlets into the channels.
10. The biosensor patch of claim 1 wherein the analyte sensor module is fabricated using laser-engraved graphene (“LEG”) technology.
11. The biosensor patch of claim 1 further comprising an in situ signal processing and wireless communication module.
12. The biosensor patch of claim 1 further comprising adhesive backing for direct application to skin.
13. A method for configuring a MIP to detect a target molecule comprising: polymerizing functional monomers with template molecules; forming a complex with the target molecule using the functional monomer and a crosslinker; embedding the functional groups of the functional monomer and crosslinker in a polymeric structure on laser engraved graphene (“LEG”); extracting the target molecule; revealing binding sites on the LEG-MIP electrode that are complementary in size, shape, and charge to the target molecule.
14. A continuous health monitoring system comprising: a biofluid induction agent, wherein the biofluid induction agent stimulates production of biofluid; a biofluid sampling and collection module, wherein the module collects the induced biofluid sample for analysis; a metabolite detection module, wherein the metabolite detection module identifies concentrations of target metabolites present in the collected biofluid sample; and a smart device, wherein the smart device displays collected health information.
15. The system of claim 14 wherein all components are fully integrated into a wearable smart watch device.
16. The system of claim 14 wherein the mobile device is equipped with a mobile application for displaying, processing, and storing collected health data.
17. The health monitoring system of claim 14 wherein target metabolites comprise amino acids.
18. The health monitoring system of claim 14 wherein target metabolites comprise hormones.
19. The health monitoring system of claim 14 wherein a target metabolite comprises glucose.
20. The health monitoring system of claim 14 wherein a target metabolite comprises uric acid.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0021] The technology disclosed herein, in accordance with one or more various embodiments, is described in detail with reference to the following figures. The drawings are provided for purposes of illustration only and merely depict typical or example embodiments of the disclosed technology. These drawings are provided to facilitate the reader's understanding of the disclosed technology and shall not be considered limiting of the breadth, scope, or applicability thereof. It should be noted that for clarity and ease of illustration these drawings are not necessarily made to scale.
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[0031] The figures are not intended to be exhaustive or to limit the invention to the precise form disclosed. It should be understood that the invention can be practiced with modification and alteration, and that the disclosed technology be limited only by the claims and the equivalents thereof.
DETAILED DESCRIPTION
[0032] Wearable devices may offer highly desirable, non-invasive, and continuous monitoring of key health indicators. One type of desirable wearable is a sweat sensor. A carefully designed sweat sensor is particularly desirable because it may allow continuous on body monitoring of key health indicators. This kind of continuous analysis may allow for personalized medical care and nutrition for an individual based on that individual's particular balance of detected metabolites. Key metabolites may include essential amino acids and vitamins. Applications for a wearable sweat sensor may include dietary nutrition intake monitoring, evaluation of stress and central fatigue, evaluation for risk of metabolic syndrome, and evaluation for risk of severe viral infection, including COVID-19.
[0033] A laser-engraved graphene (LEG) sensor may be advantageous because it may be printed using a modified conventional printer. Printable wearable sensor patches may 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, for instance twelve to twenty-four hours, and which may be replaced on a daily level. Low cost printable, wearable, and disposable patches offer the opportunity to replace a patch daily on a human subject and collect health information over a period of several days or weeks without invasive testing and the need for a human patient to come in to a physical laboratory for repeated testing. Monitoring may occur both during periods of exercise and at rest.
[0034] Continuous Sweat Induction and Collection
[0035] Referring now to
[0036] The electrodes 106 may provide a brief electrostimulation to the sweat glands of a human subject in a particular skin area. The electrostimulation may trigger the flow of sweat stimulating agents into the skin. A hydrogel agent (not shown in
[0037] The sweat sensor patch 100 may also include biosensors 108. Biosensors 108 may be configured to detect a wide variety of inorganic and organic compounds present in a biofluid sample. For example, metabolites, amino acids, vitamins, minerals, hormones, antibodies, and other compounds may be detected. A biosensor 108 may be a sodium sensor. A biosensor 108 may also be a glucose sensor. A sweat sensor patch 100 may also include a T sensor 110. The T sensor 110 may be a temperature sensor. A temperature reading, in conjunction with detected concentrations of key organic compounds, may provide an indication of health status. Additionally, a temperature measurement over time, along with correlated measurements of concentrations of key organic compounds, may provide indication about changing health status or may reveal fluctuations indicative of a disease or other health condition that would not be revealed by a one-time test, such as a blood test. An electrolyte reading (from sodium sensor, for example) may indicate a patient's hydration status and/or electrolyte balance. As with a temperature measurement, an electrolyte measurement, especially over a continuous period and in conjunction with other measurements, may reveal changing health status or fluctuations indicative of disease or a particular health condition.
[0038] The sweat sensor patch 100 may also include an outlet 112. The outlet 112 allows for the outflow of a collected sweat sample. The outlet 112 is configured such that the outflowing sweat sample does not interference with an incoming sweat sample. The sweat sensor patch 100 is configured to allow for collection and sample of refreshed sweat samples over an extended period of time. For example, the combination of electrode stimulation and hydrogel stimulation may induce a flow of sweat for a period of about 2 to 24 hours. The sweat sensor patch 100 may also include inlets 114 (not shown directly in
[0039] A sweat sensor patch 100 may also include a MIP organic compound detection module. The MIP module may include a plurality of electrodes 116. MIP molecules may be added to two middle electrodes 118. The MIP module may comprise a layer on top of the LEG layer and may be carefully designed to achieve selective binding to identify the amounts of organic compounds and/or target molecules present in a collected sweat sample. The MIP may include a functional monomer and a crosslinker. The functional monomer may be, for example, pyrrole. The crosslinker may be, for example, 3-Aminophenylboronic acid. The functional monomer and the crosslinker may form a complex with a target molecule. After polymerization, the functional groups formed by the monomer, crosslinker, and target molecule may be embedded in the LEG. The target molecule can then be extracted such that the LEG has a binding site perfectly corresponding to the target molecule in size, shape, and charge, and in this way can detect the target molecule in the future.
[0040] In an embodiment, a sweat sensor patch 100 may include a miniature iontophoresis control module. The iontophoresis control module may allow a user to implement electrostimulation using the electrodes 106 to begin inducing a sweat flow. The electrostimulation may trigger sweat stimulating agents which may trigger the flow of sweat. The iontophoresis control module may also allow a user to implement release of a hydrogel agent to continue to induce a sweat flow. The iontophoresis control module may also allow a user to set a duration for the collection of refreshed sweat samples.
[0041] Referring now to
[0042] Referring now to
[0043] Referring now to
[0044] Referring now to
[0045] A sweat sensor patch and sweat sensor system, as described in reference to
[0046] In another embodiment, a sweat sensor may measure concentrations of amino acids in addition to other organic compounds, including vitamins and minerals. For example, imbalances with Tryptophan (Trp), tyrosine (Tyr) and phenylalanine (Phe), which are needed to support neurotransmitters such as serotonin, dopamine, norepinephrine, and epinephrine, may indicate neurological and/or mental health conditions. Other metabolic indicators involving, for example, Leu, Phe, and vitamin D, may be linked with severity, vulnerability, and mortality related to viral infections including COVID-19. Other compounds, like glucose and uric acid may also be measure to determine risk of developing and/or severity of a particular health condition.
[0047] In another embodiment, amino acids, vitamins, and mineral concentrations may be measured to develop a personalized nutrition plan. After measurement of initial concentrations, a human patient may be advised to make dietary modifications to account for deficiencies and/or excesses of key amino acids, vitamins, and minerals. The human patients adherence to a nutritional plan and progress may be monitored continuously with the sweat sensor patch.
[0048] In another embodiment, stress and fatigue detection and evaluation may be made based on concentrations of relevant metabolites. An object model for stress and fatigue may be trained. For example, the object model may be trained with standard stress and fatigue questionnaires. Then, machine learning methods may be used to optimize detection and evaluation of stress and fatigue through metabolic analysis, using questionnaires as an object model. For example, a machine learning model may optimize which metabolites are most accurately correlated with stress and fatigue determinations. A machine learning model may further optimize the level of detected metabolites which correlate most accurately to noteworthy stress and fatigue related health conditions. A machine learning model may be leveraged to determine at which point a human patient is experiencing too much stress and fatigue to be effective in a given role.
[0049] In another embodiment a sweat sensor may detect and measure drug compounds present in the sweat sample. Drug compounds may be measured to assess compliance with a drug treatment regimen. Drug compounds may also be measured to assess successful metabolization of a treatment drug. Drug compounds may also be measured to determine the risk and/or severity of drug toxicity due to a drug treatment regimen.
[0050] In another embodiment, the sweat sensor patch may measure the concentration of certain hormones. In another embodiment, the sweat sensor patch may measure the concentration of antibodies present in a human patient which may indicate an infection, the degree of immune response to a viral, bacterial, or fungal agent, an autoimmune disease, or another health condition.
[0051] A sweat sensor patch 100 may employ various power sources. For example, in one embodiment, a sweat sensor patch may be equipped with a lightweight battery. In another embodiment, the sweat sensor patch may leverage a biofluid powering system to power the device with the collected sweat flow itself. In another embodiment, the sweat sensor patch may be powered with a small solar panel. In another embodiment, the sweat sensor patch may be powered by human motion.
[0052] Polymer Detection
[0053] A MIP organic compound detection module may optimize polymer detection by creating a binding site layer in an LEG-MIP electrode. Preferred monomers may be identified for target molecules which are desirable to measure. In an embodiment, the module may use machine learning to optimize polymer detection. For example, machine learning methods may include gradient-boosted decision trees, neural networks, support vector machines, and other types of machine learning methods. Machine learning techniques may involve training an object model with template molecules to perform optimal distinction between template molecules. Selection of parameters including the monomer, crosslinker, template ratio, incubation period, and other factors may be optimized in the MIP module to achieve sensitive and selective detection of analytes. In an embodiment, polymer detection may be accomplished using a selective binding MIP layer on the LEG. MIPs may be chemically synthesized biomimetic receptors.
[0054] Referring now to
[0055] Next, a complex may be formed using the template molecule 502, monomer 500, and crosslinker 508. The functional monomer may be, for example, pyrrole. The crosslinker may be, for example, 3-Aminophenylboronic acid. Then, after polymerization, the functional groups of the functional monomer 500, crosslinker 508, and template molecule 502 may be embedded into the polymeric structure 512 on a LEG electrode 514. Next, the template molecule 502 may extracted. Extracting the template molecule 502 may reveal a binding site in the LEG electrode 514 that is complementary in size, shape, and charge to the template molecule 502. The LEG electrode 514 may, through this process, become a LEG-MIP electrode equipped to detect the desired target molecule corresponding to the template molecule. The detection may be accomplished without washing steps.
[0056] Referring now to
[0057] For the direct detection approach, the first step may be electro-polymerization of a monomer 500, crosslinker 508, and template molecule 502. The next step may be extraction 702 of the template molecule 502. The next step may be a cycle of regeneration 704 and recognition 706 of the template molecule 502. The final step may be oxidation 708, at which point the oxidation peak of a target molecule may be measured to determine the concentration of the target molecule.
[0058] In another embodiment, a target molecule may be detected indirectly. An indirect detection method may include deposition of a redox-active nanoreporter (RAR) layer between LEG and MIP layers. The RAR layer may comprise, for example, Prussian blue nanoparticles. The RAR layer may enable rapid quantification. Target molecules may then be selectively absorbed into the MIP layer which may decrease exposure of the RAR layer to the sample. In such an instance, a RAR layer may experience a diminished oxidation peak in the presence of a selectively absorbed target molecule. Therefore, using a DPV technique, as above, the RAR oxidation peak height decrease (instead of increase in the direct measurement case) may correspond to a target molecule. An indirect approach may be effective for detecting the levels of non-electroactive metabolites.
[0059] Referring again to
[0060] In an embodiment of direct LEG-MIP sensing, discussed above, a DPV scan in sweat may occur even before target molecule recognition which may lead to an oxidation peak as a small amount of electroactive molecules. This may be oxidized on the surface of the MIP layer. After recognition and binding of the target molecule into the MIP cavities, a substantially higher current peak may be obtained. Measuring the difference in height between the initial oxidation peak and the higher peak may allow for more accurate bound target molecule measurement directly in a biofluid with high selectivity. Further, the influence of temperature and ionic strength on the metabolite sensor may be calibrated in real time based on readings from the LEG-based temperature sensor and electrolyte sensor. Calibrating these measurements may allow for continuous, accurate readings on the body during use of the sensor.
Optimization of Microfluidic Sweat Collection Patch
[0061] 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 inlets relative to each other and a reservoir, the number of inlets, the orientation of the inlet channels, the distance between the inlets, the distance between each inlet and the reservoir, and other factors.
[0062] Referring now to
[0063] A microfluidic sweat collection patch may also 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.
[0064] Referring now to
[0065] While various embodiments of the present invention 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 invention, which is done to aid in understanding the features and functionality that can be included in the invention. The invention 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 invention. 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.
[0066] Although the invention 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 invention, 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 invention should not be limited by any of the above-described exemplary embodiments.
[0067] 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.
[0068] 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. The use of the term “module” does not imply that the components or functionality described or claimed as part of the module are all configured in a common package. Indeed, any or all of the various components of a module, whether control logic or other components, can be combined in a single package or separately maintained and can further be distributed in multiple groupings or packages or across multiple locations.
[0069] 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.
[0070] The terms “substantially,” “approximately,” and “about” are 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%.