Personalized Nutritional and Wellness Assistant
20180235480 ยท 2018-08-23
Inventors
Cpc classification
G16H20/30
PHYSICS
G16Z99/00
PHYSICS
Y02A90/10
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
A61B5/082
HUMAN NECESSITIES
A61B2560/0223
HUMAN NECESSITIES
A61B2560/0431
HUMAN NECESSITIES
G16H50/30
PHYSICS
A61B5/053
HUMAN NECESSITIES
A61B5/02438
HUMAN NECESSITIES
A61B5/222
HUMAN NECESSITIES
H02J2310/23
ELECTRICITY
A61B5/0205
HUMAN NECESSITIES
International classification
A61B5/0205
HUMAN NECESSITIES
A61B5/1455
HUMAN NECESSITIES
G06Q50/22
PHYSICS
A61B5/00
HUMAN NECESSITIES
A61B5/22
HUMAN NECESSITIES
A61B5/08
HUMAN NECESSITIES
Abstract
The invention pertains to the establishment, implementation and management of a personalized information system pertinent to a user's general health, wellness and/or sport performance. A set of portable device with calorimetric, metabolic sensing, computing and communication capabilities are used for real-time measurement and display as well as long-term logging of highly accurate information about a user's metabolic state. In an aspect, the invention comprises a portable and hand-held indirect calorimetric device with the capacity to obtain the metabolic parameters of a subject by analyzing the composition of both inspired air and/or expired air of the user.
Claims
1.-58. (canceled)
59. A portable device for analyzing a composition of a respired gas of a subject, wherein the device comprises: (a) a body adapted to be held in a hand of the subject; (b) at least one air flow conduit through which the subject can inspire or expire air through the body of the device; (c) a sample analysis chamber contained within the body of the device; (d) at least one sampling portal connected to the sample analysis chamber and through which the air may move into or out of the sample analysis chamber, wherein the at least one sampling portal is configured to favor a net inflow of expired air into the sample analysis chamber as a result of a diodicity generated by the design of the at least one air flow conduit and the at least one sampling portal; (e) an oxygen sensor within the body of the device, the oxygen sensor configured for measuring the oxygen concentration of air inside the sample analysis chamber; and (f) at least one flow sensor within the body of the device, the at least one flow sensor configured for measuring the flow of inspired or expired air through the portable device.
60. The device of claim 59, further comprising an affixed connector for extending the at least one air flow conduit beyond an outer perimeter of the body of the device.
61. The device of claim 59, further comprising a removable connector for extending the at least one air flow conduit beyond an outer perimeter of the body of the device.
62. The device of claim 59, further comprising at least one purge portal through which the gasses may move into or out of the sample analysis chamber.
63. The device of claim 62, wherein a unidirectional valve is positioned across an opening of the at least one purge portal, such that fluid forces of an exhalation of the subject causes some of the exhaled air to enter the sample analysis chamber through the at least one sampling portal, at the same time forcing some of the gasses inside of the sample analysis chamber to exit the sample analysis chamber through the unidirectional valve.
64. The device of claim 62, wherein a unidirectional sampling valve is positioned across an opening of the at least one sampling portal and across an opening of the at least one purge portal such that fluid forces of an exhalation causes some of the exhaled air to enter the sample analysis chamber through the unidirectional sampling valve, at the same time forcing some of the gas inside of the sample analysis chamber to exit the sample analysis chamber through the at least one purge portal.
65. The device of claim 59, wherein a unidirectional sampling valve is positioned across an opening of the at least one sampling portal, such that fluid forces of an exhalation causes some of the exhaled air to enter the sample analysis chamber through the unidirectional sampling valve.
66. The device of claim 59, wherein the at least one sampling portal is designed such that fluid forces of an exhalation causes some of the exhaled air to enter the sample analysis chamber through the at least one sampling portal without the need for a unidirectional valve.
67. The device of claim 59, further comprising at least one active sampling mechanism for diverting exhaled air from the at least one air flow conduit into the sample analysis chamber during or right after an exhalation.
68. The device of claim 67, wherein the at least one active sampling mechanism may be selected from the group consisting of at least one controllable valve, at least one controllable sampling pump, at least one controllable vacuum pump, and at least one plunger, wherein the at least one active sampling mechanism causes a negative pressure inside the sample analysis chamber.
69. The device of claim 59, further configured to actively force fresh air into the sample analysis chamber or the at least one air flow conduit, thereby pushing the accumulated sampled gasses, vapors or condensates out of the sample analysis chamber.
70. The device of claim 59, further configured to actively force the accumulated sampled gasses, vapors or condensates out of the sample analysis chamber, thus allowing fresh air to enter the sample analysis chamber.
71. The device of claim 59, further comprising a flap or disk that can be opened for allowing fresh air to move into the sample analysis chamber or the at least one air flow conduit, while the accumulated sampled gas, vapors or condensates dissipate from the sample analysis chamber.
72. The device of claim 59, further comprising a CO.sub.2 sensor for measuring the carbon dioxide (CO.sub.2) concentration of the air inside the sample analysis chamber.
73. The device of claim 72, wherein the CO.sub.2 sensor makes use of at least one principle selected from the group consisting of electrochemistry, spectrophotometry, colorimetry, and chemistry.
74. The device of claim 59, further comprising a temperature sensor for measuring the temperature of the air inside the sample analysis chamber.
75. The device of claim 59, further comprising a humidity sensor for measuring the humidity of the air inside the sample analysis chamber.
76. The device of claim 59, wherein the oxygen sensor makes use of at least one principle selected from the group consisting of electrochemistry, spectrophotometry, colorimetry, and chemistry.
77. The device of claim 59, further comprising at least one sensor, wherein the at least one sensor comprises the oxygen sensor, and vapor scrubbers for sequestering water vapor from the expired gasses to ensure that the at least one sensor of the sample analysis chamber may operate under conditions of humidity conductive to their correct performance.
78. The device of claim 77, wherein the vapor scrubbers may be positioned alongside the air flow conduit, across the air flow conduit, inside the removable connector, inside the sampling portal, or inside the sample analysis chamber.
79. The device of claim 59, further comprising at least one component for storing or transforming at least one detected signal of at least one sensor into data useful for further processing wherein the at least one sensor comprises the oxygen sensor and the at least one flow sensor.
80. The device of claim 59, further comprising a component suitable for storing or executing or transmitting or receiving at least one mathematical function for generating at least one value of at least one parameter of physiology from at least one detected sensor signal.
81. The device of claim 80, wherein the at least one parameter of physiology may be selected from the group consisting of oxygen content of the expired gasses, carbon dioxide content of the expired gasses, breathing rate, minute volume, VO.sub.2, VCO.sub.2, Respiratory Exchange Ratio, Respiratory Quotient, Body Fat Percentage, Current Body Composition, Heart Rate and Overtraining.
82. The device of claim 80, further comprising at least one component suitable for storing the data generated by at least one mathematical function for subsequent retrieval or display.
83. The device of claim 80, further comprising at least one component by which the at least one parameter of physiology may be transmitted to another device to be relayed to the subject.
84. The device of claim 59, further comprising at least one light producing module and at least one light detecting module for measuring the cardiorespiratory profile of the subject to obtain information about the subject's heart rate, heart rate variability, pulse profile, left-right hand pulse profile comparison or breathing rate.
85. The device of claim 59, further comprising at least two surface electrodes for measuring the bioelectrical impedance of a subject for calculating its body composition.
86. The device of claim 59, further comprising a power source for providing power to the components of the device.
87. The device of claim 59, further comprising at least one component for detecting a moment at which a detected signal from at least one sensor in the device has stabilized sufficiently to warrant that data generated by the at least one sensor will be suitable for accurate estimation of at least one parameter of physiology of the subject.
88. The device of claim 59, further comprising at least one component for detecting a moment at which a respiration cycle of the subject has stabilized to a point which indicates that the subject has reached a physiological state suitable for commencement or termination of gas analysis in the sample analysis chamber.
89. The device of claim 59, wherein the at least one air flow conduit or the at least one sampling portal are configured such that air flowing through the at least one air flow conduit as a result of an inhalation will pass by the at least one sampling portal with only a negligible amount entering the sample analysis chamber, while air flowing through the at least one air flow conduit as a result of an exhalation will be subject to forces that causes a portion of the expired air to move through the at least one sampling portal and into the sample analysis chamber.
90. A method for analyzing the composition of respired gas of a subject, wherein the method comprises the steps of: (g) providing at least one air flow conduit through which the subject can inspire or expire air through the body of the device; (h) providing a sample analysis chamber positioned within the body; (i) providing at least one sampling portal through which air may move into or out of the sample analysis chamber; (j) providing an oxygen sensor for measuring the oxygen concentration of the air inside the sample analysis chamber; and (k) providing at least one flow sensor for measuring the flow of inspired or expired air through the device.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0023] The preferred embodiment of the invention will now be described, by way of example only, with reference to the accompanying representations in which:
[0024]
[0025]
[0026]
[0027]
[0028]
[0029]
[0030]
[0031]
[0032]
[0033]
[0034]
[0035]
DETAILED DESCRIPTION OF THE INVENTION
[0036] The following detailed description and appended drawings describe and illustrate various aspects of the invention. The description and drawings serve to enable one skilled in the art to make and use the invention, and are not intended to limit the scope of the invention in any manner. In respect of the methods disclosed, the steps presented are exemplary in nature, and thus, the order of the steps is not necessary or critical.
[0037] Before the present methods and systems are disclosed and described, it is to be understood that the methods and systems are not limited to specific methods, specific components, or to particular implementations. It is also to be understood that the terminology used herein is for the purpose of describing particular aspects only and is not intended to be limiting.
[0038] As used in the specification and the appended claims, the singular forms a, an, and the also include plural elements unless the context clearly dictates otherwise. Optional or optionally means that the subsequently described event or circumstance may or may not occur, and that the description includes instances where said event or circumstance occurs and instances where it does not.
[0039] Throughout the description and claims of this specification, the word comprise and variations of the word, such as comprising and comprises, means including but not limited to, and is not intended to exclude, for example, other components or steps. Exemplary means an example of and is not intended to convey an indication of a preferred or ideal embodiment. Such as is not used in a restrictive sense, but for explanatory purposes.
[0040] Disclosed are components that can be used to perform the disclosed methods and systems. These and other components are disclosed herein, and it is understood that when combinations, subsets, interactions, groups, etc. of these components are disclosed that while specific reference of each various individual and collective combinations and permutation of these may not be explicitly disclosed, each is specifically contemplated and described herein, for all methods and systems. This applies to all aspects of this application including, but not limited to, steps in disclosed methods. Thus, if there are a variety of additional steps that can be performed it is understood that each of these additional steps can be performed with any specific embodiment or combination of aspects of the disclosed methods.
[0041] The present methods and systems may be understood more readily by reference to the following detailed description of preferred embodiments and the examples included therein and to the Figures and their previous and following description.
[0042] As will be appreciated by one skilled in the art, the methods and systems may take the form of an entirely hardware embodiment, an entirely software embodiment, or an embodiment combining software and hardware aspects. Furthermore, the methods and systems may take the form of a computer program product on a computer-readable storage medium having computer-readable program instructions (e.g., computer software) embodied in the storage medium. The present methods and systems may also take the form of web-implemented computer software. Any suitable computer-readable storage medium may be utilized including hard disks, CD-ROMs, optical storage devices, solid state memory devices, magnetic storage devices, etc.
[0043] Embodiments of the methods and systems are described below with reference to block diagrams and flowchart illustrations of methods, systems, apparatuses and computer program products. It will be understood that each block of the block diagrams and flowchart illustrations, and combinations of blocks in the block diagrams and flowchart illustrations, respectively, can be implemented by computer program instructions.
[0044] These computer program instructions may also be stored in a computer-readable memory that can direct a computer or other programmable data processing apparatus to function in a particular manner, such that the instructions stored in the computer-readable memory produce an article of manufacture including computer-readable instructions for implementing the function specified in the flowchart block or blocks. The computer program instructions may also be loaded onto a computer or other programmable data processing apparatus to cause a series of operational steps to be performed on the computer or other programmable apparatus to produce a computer-implemented process such that the instructions that execute on the computer or other programmable apparatus provide steps for implementing the functions specified in the flowchart block or blocks.
[0045] Accordingly, blocks of the block diagrams and flowchart illustrations support combinations of means for performing the specified functions, combinations of steps for performing the specified functions and program instruction means for performing the specified functions. It will also be understood that each block of the block diagrams and flowchart illustrations, and combinations of blocks in the block diagrams and flowchart illustrations, can be implemented by special purpose hardware-based computer systems that perform the specified functions or steps, or combinations of special purpose hardware and computer instructions.
[0046] One embodiment of the present invention uses a Continuous Real-time Measuring Device (CrtMD)
Continuous Real-Time Measuring Device (CrtMD)
[0047]
[0048] Interpolation of continuous wavelength spectra in a desired wavelength region (such as, but not limited to, 300-1100 nm) from the spectral data received from the respective photodiodes mounted on the photodiode array 9.
[0049] Pre-processing of the obtained spectral data to increase the signal-to-noise (S/N) ratio. The preferred method can be a low pass filter method such as the Savitsky-Golay filter, but other methods such as multiple spectra averaging or mean-centering can be used to increase the S/N ratio.
[0050] Using several regression algorithms to construct a mathematical model that can use x-y data (where x is optical wavelengths or frequencies and y is reflective or absorptive intensities corresponding to these wavelengths or frequencies) to predict a physiological parameter from the pre-processed data. In practice, one may obtain spectral data along with measured physiological parameters at different physiological conditions (e.g. during rest or during different levels of physical exertion) and use a regression algorithm such as Multiple linear regression, principal component analysis (PCA), non-linear iterative partial least squares (NIPALS) and/or partial least squares (PLS) regression to construct a mathematical model to predict the physiological parameter at hand.
[0051] Validating the mathematical model constructed for each physiological parameter to see whether it has predictive ability for a validation data set (obtained at different physiological conditions, such as during rest and during different levels of physical exertion). In one embodiment, it is advisable that the constructed mathematical model yield an R.sup.2 value greater than 0.96 (R.sup.2>0.96).
[0052] Saving the mathematical models to the online server and/or on the local storage module 101 of the CrtMD, to ensure rapid conversion of all subsequent raw photodiode signals to physiologically relevant data.
[0053] In one embodiment, this method may be performed once only, and can be used without prior knowledge of the molecular mechanism underlying the physiological parameter's quantification by spectrometry. This provides a unique advantage over other methods of spectral data resolution currently in use (near-infrared determination of oxyhemoglobin (HbO.sub.2) concentration, for instance, relies on the spectral signature of the oxygenated heme-groups contained within the hemoglobin protein complex. It is therefore known that HbO.sub.2 concentrations can be determined by considering 660 nm and 940 nm spectra, as the spectral differences for different HbO.sub.2 concentrations are most pronounced at these wavelengths). By overcoming the requirement for prior knowledge of such underlying molecular mechanisms, the method of the current invention has the capacity to discover physiological parameters of interest from the unresolved spectral signal and, as such is more versatile than current methodologies in its capacity to resolve physiological parameters from spectral data.
[0054] The CrtMD is able to deduce mood, sleep and stress states of a user by monitoring the cardiorespiratory system (and possibly adjusting the conclusions drawn from the measured data with mood/stress/sleep information that is manually provided by the user). This is possible because both the mood and the circadian rhythm (i.e. sleep/wake cycle) of human beings are reflected in their real-time metabolic and cardiorespiratory data. Sleep, for instance, is indicated by a reduction in cardiorespiratory activity (i.e. a reduction in respiratory frequency and pulse rate), while mood and stress levels are indicated by changes in photoplethysmographic data (e.g. changes in heart rate variability).
[0055] One feature of the CrtMD is its ability to distill the user's instantaneous oxygen consumption rate (VO.sub.2) and instantaneous carbon dioxide production rate (VCO.sub.2) from the resolved spectral data. This ability provides the CrtMD with the capacity to continuously calculate the real-time respiratory quotient (rtRQ) of the user, which in its turn is used to determine the real-time energy uptake of the user.
[0056] The following is a detailed description of the mathematical logic used for the distillation of the instantaneous oxygen consumption rate (VO.sub.2) and instantaneous carbon dioxide production rate (VCO.sub.2) from the resolved real-time spectral data, according to one embodiment of the present invention. The procedure involves manually specified parameters (e.g. age), as well as initial calibration of the CrtMD (refer to Calibration of the CrtMD using the RICU, described further below) to obtain the resting physiological parameters necessary for substitution into functions 36a-36x (functions 36a-36x being representative of the mathematical logic underlying functions 35 and 36):
[0057] The user's VO.sub.2max is determined from the ratio of the user's maximum heart rate (HR.sub.max) and resting heart rate (HR.sub.rest) using the method of Uth et al. This requires expression of the user's VO.sub.2 in terms of the cardiac output (Q) and the arterio-venous O.sub.2 difference (C.sub.aO.sub.2C.sub.vCO.sub.2), using the Fick principle:
{dot over (V)}O.sub.2={dot over (Q)}.Math.(C.sub.aO.sub.2C
where cardiac output (Q)=heart rate (HR)stroke volume (SV), such that:
{dot over (V)}O.sub.2=HR.Math.SV.Math.(C.sub.aO.sub.2C
and the formula is true for a user at rest:
{dot over (V)}O.sub.2rest=HR.sub.rest.Math.SV.sub.rest.Math.(C.sub.aO.sub.2C
or at maximal exertion:
{dot over (V)}O.sub.2max=HR.sub.max.Math.SV.sub.max.Math.(C.sub.aO.sub.2C
Combining the above equations, we get:
[0058] According to Nottin et al. (2002) the average value for SV.sub.max/SV.sub.rest is 1.28 and in an independent study, Chapman et al. (1960) reported the average SV.sub.max/SV.sub.rest value to be 1.29. By substituting the average of these two values (1.285) along with the average ratio of the arterio-venous oxygen difference at maximal oxygen consumption and at rest (3.4, as determined by Chapman et al. (1960)) into the equation, we get a reduced equation:
[0059] The reduced equation is combined with a function relating HR proportional to HR.sub.max (HR/HR.sub.max) to VO.sub.2 proportional to VO.sub.2max (VO.sub.2NO.sub.2max):
to obtain a complex equation:
where HR.sub.max can be replaced with 220age (as HR.sub.max can be approximated by using the formula 220age).
[0060] The function is generalized to a form (e.g. a second order polynomial, or other regression equations) where several additional resting and real-time physiological parameters can be considered. An example of such a function would be:
where a, b and c are functions of resting and/or real-time values for parameters such as (but not limited to) tissue hydrogen ion concentration (pH), hemoglobin concentration (Hb), breathing rate (BR), oxygen saturation (SaO.sub.2), and oxyhemoglobin concentration (HbO.sub.2). These functions can be formally written as:
a=f.sub.1((pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.rest,(pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.RT)[36j]
b=f.sub.2((pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.rest,(pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.RT)[36k]
c=f.sub.3((pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.rest,(pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.RT)[36l]
where the functions f.sub.1, f.sub.2 and f.sub.3 are determined by a parameter estimation approach (e.g. using neural networks).
[0061] The user's VCO.sub.2 may be obtained in a similar manner as described for VO.sub.2. The user's resting VCO.sub.2 is first expressed in terms of the cardiac output (Q) and the arterio-venous CO.sub.2 difference (C.sub.aCO.sub.2C.sub.vCO.sub.2):
{dot over (V)}CO.sub.2rest=HR.sub.rest.Math.SV.sub.rest.Math.(C.sub.aCO.sub.2C
where heart rate (HR.sub.rest)stroke volume (SV.sub.rest) replaces cardiac output (Q) in the original formula. Similarly, the user's VCO.sub.2 at maximal exertion is expressed as:
{dot over (V)}CO.sub.2max=HR.sub.max.Math.SV.sub.max.Math.(C.sub.aCO.sub.2C
and the two formulas are combined to give:
[0062] Although the SV.sub.max/SV.sub.rest ratio can be replaced by 1.285 as before, the ratio of the arterio-venous carbon dioxide difference at maximal exertion and at rest is not known. The missing value is calculated from the arterio-venous oxygen difference at rest and maximal exertion, and the respiratory quotient at rest and maximal exertion, using the following procedure:
[0063] The user's resting respiratory quotient (RQ.sub.rest) is written in terms of his/her arterio-venous oxygen and arterio-venous carbon dioxide differences at rest:
(C.sub.aCO.sub.2C
which could also be written as:
(C.sub.aCO.sub.2C
because the respiratory quotient (RQ, representing gas exchange at the cellular level) is equal to the respiratory exchange ratio (RER, representing gas exchange in the lungs) when measured at rest.
[0064] Similarly, the user's respiratory quotient at maximal exertion (RQ.sub.max) is written in terms of his/her arterio-venous oxygen and arterio-venous carbon dioxide differences at maximal exertion:
(C.sub.aCO.sub.2C
which could also be written as:
(C.sub.aCO.sub.2C
because the cellular respiratory quotient at maximal expenditure equals one (i.e. RQ.sub.max=1). In this case, use of the maximal respiratory quotient (RQ.sub.max) is preferred over substitution with the maximal respiratory exchange ratio (RER.), because the latter is influenced by metabolic acidosis and other CO.sub.2 liberating processes that occur when the user's metabolic rate increases. These processes allow RER-values to vary from 0.7 to more than 1.2, while RQ-values remain in the range of 0.7 to 1.0.
[0065] The modified equations are substituted into equation 36o to obtain a complex equation:
[0066] which can be reduced to:
by substituting the literature values for SV.sub.maxSV.sub.rest.sup.1 (1.285) and the average ratio of the arterio-venous oxygen difference at maximal oxygen consumption and at rest (3.4) into the equation.
[0067] It should be noted that the VCO.sub.2max value obtained by this procedure is representative of respiration at the cellular level only. It should also be noted that VCO.sub.2 values exceeding the VCO.sub.2max value are representative of cellular respiration as well as non-metabolic CO.sub.2 liberation from the hemoglobin molecules as a result of metabolic acidosis and other CO.sub.2 liberating processes.
[0068] A polynomial function is then developed, using a method similar to the one described in Saalasti (2003). The function describes the relationship between pHR and VCO.sub.2 proportional to VCO.sub.2max (pVO2):
where n is the order of the polynomial.
[0069] Combining equations 36u and 36v, and substituting HR.sub.max with 220age, we get:
where a.sub.i is a function of resting and real time values for tissue pH (pH), hemoglobin concentration (Hb), breathing rate (BR), tissue oxygen saturation (SaO.sub.2) and oxyhemoglobin concentration (HbO.sub.2), and is formally written as:
a.sub.i=f.sub.t((pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.rest,(pH,Hb,BR,SO.sub.2,HbO.sub.2).sub.RT)[36x]
where 1in, and the function f.sub.i is determined by a parameter estimation approach (e.g. neural networks or genetic algorithms).
[0070]
[0071] a. Real-time respiratory quotient (using real-time VO.sub.2- and VCO.sub.2-values):
[0072] b. Total energy expenditure (substituting the real-time VO.sub.2- and VCO.sub.2-values into the Abbreviated Weir Formula):
TEE=1.44.Math.(3.9.Math.VO.sub.2+1.1.Math.VCO.sub.2)
[0073] c. Resting energy expenditure (substituting VO.sub.2rest.sup.and VCO.sub.2rest into the Abbreviated Weir Formula):
REE=1.44.Math.(3.9.Math.VO.sub.2rest+1.1.Math.VCO.sub.2rest)
[0074] d. Physical activity energy expenditure:
PAEE=TEEREE
[0075] In one embodiment, all of the functions used are stored on a server, while all raw and/or resolved and/or locally calculated parameter data are stored on the local storage module 101. All values are time-stamped, and in one embodiment the most recently calculated supposed current body composition value (CBC.sub.s) always replaces the previously saved supposed current body composition value (CBC.sub.s-1) on the storage module 101. The data on the local storage module 101 can be directly transmitted to a server by means of a wireless transmitter 4 or a non-wireless communication port (not shown), or in step-wise fashion through the use of a smartphone or similar relaying device. A rechargeable battery and/or energy-harvesting device 6 serves as a power source for all of the energy dependent components of the CrtMD.
[0076] In one embodiment of the invention, the calculated metabolic parameters may be displayed on a smartphone application, tablet application, website, or the like, along with the resolved physiological parameter data of interest (e.g. heart rate, breathing rate, hemoglobin oxygen saturation, whole blood pH). In another embodiment of the invention, the resolved physiological data can be relayed to the user by means of a digital display (not shown), which also could be used as an interface to the user's social networks and/or web based, local and/or social network gaming environments. The user's progress with regards to his/her personal goal (refer to description of Nutritional & Wellness Assistant) can also be indicated by progressive illumination of a colored light array (not shown).
[0077] Other embodiments of the CrtMD include: Incorporating the electronics of the CrtMD into a patch like form factor (i.e. a reusable or disposable patch that can be directly stuck onto the user's body) or into textiles or other materials that have direct contact with the body (e.g. normal clothing such as a sweater, shorts or shoes); allowance for different wavelengths to be measured in series by powering a set of LEDs sequentially; multi-step transmission of data to and from the server (e.g. the wearable device could transmit raw or resolved spectral data to a mobile phone, smartwatch (e.g. Pebble/i'm Watch), or any similar device using a wireless/wired communication protocol 26, from where it can be transmitted to an online server using GPRS/EDGE/3G/4G or any other wireless/wired modalities 27; data processing and/or display can occur either on the wearable CrtMD device or on the intermediary device (such as a mobile phone) or on the server; allowance for wireless/wired transference of data between hardware components, as well as data display by any of the components; allowance for audible communication of information to the user; allowance for verbal communication of queries and commands from the user to the device, etc.
CrtMD Data Processing
[0078] In one embodiment, the light detecting module 9 on the CrtMD generates a voltage or current proportional to the intensity of the light signal detected by the module 9. The level and amplitude of this signal is fed as parameters to a mathematical function which calculates the values that a PGA (programmable gain amp) has to be set at to create the specific level and gain adjustment necessary to amplify the detected light signal in order to make optimal use of the range of voltages sampled by a microcontroller or ADC (Analog to Digital Controller). The procedure is performed once, periodically or continuously to ensure that the signal remains in the microcontroller or analog-to-digital converter (ADC) sampling range. The signals measured by the microcontroller can be converted back to the original voltage or current as measured by the light-sensing module by reversing the calculation operations and taking into consideration the specific subtraction and gain adjustment. The original voltage or current can then be standardized by considering the sensing capability of the light detecting module 9, the distance of the light source from the light detecting module 9, as well as the luminosity of the light source generating the light measured by the light detecting module 9. This standardization enables one to compare the signal obtained by the light detecting module 9 when different intensities, position of luminosity and wavelengths of light are shone in the vicinity of the light detecting module 9.
Dual Battery System
[0079]
Regular Interval Calibration Unit (RICU)
[0080] The Regular Interval Calibration Unit (RICU) comprises a portable and hand-held indirect calorimetric device with the capacity to obtain the metabolic parameters of a subject (i.e. a human, animal, plant or any other organism or process involving respiration or combustion). The RICU can determine important physiological parameters such as the carbon dioxide production rate (CO.sub.2prod) and the oxygen consumption rate (O.sub.2cons) of the user by analyzing the composition of both inspired air and/or expired air in the sampling chamber 26. In the preferred embodiment
[0081]
[0082]
[0083] Regardless of the sampling method, the sampling chamber is equipped with sensors capable of measuring the O.sub.2 content 22, and/or CO.sub.2 content 23, and/or temperature 24 and/or pressure 25 of the air inside. The O.sub.2 and/or CO.sub.2 sensors could be based on principles of electrochemistry (e.g. electrochemical cell); spectrophotometry (e.g. a nondispersive infrared (NDIR) CO.sub.2 sensor); colorimetry (e.g. the blue discoloration which occurs when CO.sub.2 reacts with bromophenol blue); or any other method sensitive enough to provide accurate results. It will be appreciated that the current invention includes the use of any combined sensors that are able to measure any combination of the specified measured parameters. Also that the invention does not necessarily require the use of a flow meter 15, O.sub.2 sensor 22, CO.sub.2 sensor 23, thermometer 24 and pressure sensor 25, but could make use of only a select few of these to obtain data useful to calculate the unknown values. Similarly, some of the values may be assumed rather than measurede.g. ambient pressure, temperature and/or humidity. In another embodiment of the invention, the accuracy of gas composition measurements is enhanced by reducing the amount of water vapor in air samples. In such an embodiment, the device includes water vapor scrubbers (not shown) positioned alongside or across the air flow path 11, inside the mouth piece 14, inside the sampling valve 18 or inside the sampling chamber 26. Temperature sensors (not shown) may also be positioned adjacent or inside the airflow path 11 to enable the measurement of local variations in temperature which could affect the accuracy of flow measurements.
[0084]
[0085]
[0086]
[0087] Although not essential for the passive sampling of expired gasses, the embodiment depicted in this figure further comprises a handheld body 10, a fan or pump for purging the sample analysis chamber 901, a power source 19 for powering the electronic components of the device (including those components useful for generating, receiving, transmitting or storing data 904), a sensor for measuring the ambient pressure 903 outside of the sample analysis chamber, and sensors capable of measuring the O.sub.2 content 22, CO.sub.2 content 23, temperature 24, humidity 25, or pressure 902 of the air inside the sample analysis chamber 26.
[0088] Regardless of the embodiment, all mechanical and electronic parts in the RICU may be powered by an internal and/or external power source 19. In one embodiment (regardless of the sampling method), the RICU includes a processing module 20 for processing the raw signals obtained from the flow meter 15, O.sub.2 sensor 22, CO.sub.2 sensor 23, thermometer 24 and pressure sensor 25. In such an embodiment, the processing module 20 may be able to calculate relevant metabolic parameters from the processed information, using a set of functions stored on the local storage unit 21, and raw signal data is stored on the local storage unit 21 along with all measured and calculated values. The data can be transmitted to a smartphone and/or server and/or similar device with suitable capabilities by means of a wireless transmitter 28 or a non-wireless communication port (not shown). As is illustrated in
[0089]
O.sub.2cons=MV.sub.inh% O.sub.2inhMV.sub.exh% O.sub.2exh[46],[49],[51]
CO.sub.2prod=MV.sub.inh% CO.sub.2exhMV.sub.exh% CO.sub.2inh[47],[48],[50]
[0090] The carbon dioxide production rate (CO.sub.2prod) and oxygen consumption rate (O.sub.2cons) measured by the current invention provides a very good approximation of the user's actual resting RQ, because the volume of the sampling chamber reflects the number of molecules in the sampling chamber when measured at standard temperature and pressure. The resting Respiratory Quotient (RQ) of the user is calculated from these values:
RQ=CO.sub.2prod/O.sub.2cons[55]
[0091] After which the amount of energy produced by the user (Q) can be calculated, using an equation from Blanc, S. et al. (1998):
Q=RQ1.331+3.692[60]
[0092] The Resting Metabolic Rate (RMR, in Kcal per day) can then be determined by multiplying the subject's energy production capacity (Q, in Kcal produced per liter of oxygen consumed by the user at rest) with the amount of oxygen consumed per day (S, measured in liters):
RMR=QS[62]
[0093] And using the Katch-McArdle equation and the calculated Resting Metabolic Rate (RMR), it is then possible to determine the subject's fat free mass (FFM):
FFM=(RMR370)/21.6[64]
[0094] By combining the FFM with the user's weight, his/her/its body fat percentage can be determined:
% Body Fat=100(WeightTotalFFM)/WeightTotal[66]
[0095] If measured at rest, and given that the user does not have an atypical metabolic profile, this value is analogous to the user's current body composition (CBC). As an optional internal control for the device, the user's parameters could be determined by means of bioelectrical impedance as well, and the values thus measured (e.g. % BodyFat, FFM and/or CBC) could also be used as input to the model.
Calibration of the CrtMD Using the RICU
[0096]
REE=1.44.Math.(3.9.Math.VO.sub.2rest+1.1.Math.VCO.sub.2rest)
which can also be written in terms of VO.sub.2rest and RQ.sub.rest as:
REE=1.44.Math.(3.9.Math.VO.sub.2rest+1.1.Math.(RQ.sub.rest.Math.VO.sub.2rest))
where VO.sub.2rest=oxygen consumption (ml/min), VCO.sub.2rest=carbon dioxide production (ml/min), RQ.sub.rest=respiratory quotient=VCO.sub.2rest/VO.sub.2.sub._.sub.rest and REE=resting energy expenditure (kcal/day). At the same time, the server will use the latest dataset obtained from the CrtMD to calculate the latest supposed current body composition (CBC.sub.s), using functions f(x).sub.n-1, f(y).sub.n-1, f(z).sub.n-1, and f(w).sub.n-1 (corresponding to functions 35, 36, 37 and 41 stored on the local storage module 101 of the CrtMD). The first step of the calibration procedure occurs when the actual CBC-value (calculated from weight and RICU data) is compared 69 to the supposed CBC-value (CBC.sub.s, calculated from the CrtMD sensor data) and the discrepancy is used to train a function updater 71 to optimize functions f(z).sub.n-1, and f(w).sub.n-1 for future calculations of CBC.sub.s. In a parallel process, CrtMD and RICU data is combined 72 to train a second function updater to optimize functions f(x).sub.n-1, and f(y).sub.n-1 for future calculations of CBC.sub.s. Process 74 illustrates how the improved functions f(x), f(y), f(z) and f(w) are used to update the server database, while processes 75 and 77 illustrates how outdated functions 35, 36, 37 and 41 (corresponding to functions f(x).sub.n-1, f(y).sub.n-1, f(z).sub.n-1, and f(w).sub.n-1 on the server) on the Smartphone Application and/or the storage module 101 of the CrtMD can be updated if, in fact, these functions are stored on the devices themselves. Similarly, processes 67, 76 and 77 illustrate how the latest actual CBC-value is used to update the server database and replace the last stored supposed CBC.sub.s-value (CBC.sub.s-t) on the CrtMD storage module 101. Updated functions and values can be transmitted from the server to the devices via a wireless receiver 5 or a non-wireless communication port (not shown).
[0097] It will be appreciated that, although the RICU and CrtMD device suite has been designed to be complimentary, calibration of the CrtMD with any data similar to that provided by the RICU (e.g. VO.sub.2, VCO.sub.2, CBC, % BF, etc.) is also envisioned. Also, calibration of any other measuring device (e.g. Polar heart rate monitors, Garmin watches, Fitbit, BodyMedia Fit, etc.) by means of the data obtained from the RICU and/or CrtMD may also be performed.
[0098] It will also be appreciated that the RICU could be designed for single-user or multi-user purposes (in which case the device would include medical grade filters and removable mouth pieces).
[0099]
[0100] In this figure, at least one light source is used to illuminate the subject's skin and underlying tissue 801, while at least one light detector receives the wavelengths reflected from the subject's skin and underlying tissue 802. The reflected wavelengths are converted to analog signals by the light detector, and may then serve as input 803 to an analog-to-digital-converter (ADC). The ADC may convert 804 the analog signals into digital values, which may subsequently be used as input 805 for one or more mathematical formulas by which the concentrations of various molecules (e.g. hemoglobin, carbaminohemoglobin, oxyhemoglobin, etc.) may be calculated 806. The calculated molecular concentrations may then serve as input 807 to yet more mathematical formulas by which physiological parameters such as heart rate (HR), breathing rate (BR) and oxygen saturation (SpO2) may be calculated 808, 809, 829. Alternatively, the calculated molecular concentrations may serve as input 810 into mathematical models by which the oxygen consumption rate (VO.sub.2) and carbon dioxide production rate (VCO.sub.2) of the subject may be resolved 811. In order to validate the accuracy of these mathematical model(s), the CrtMD may be used simultaneously with an indirect calorimeter (e.g. the RICU). The VO.sub.2 and VCO.sub.2 values measured by the CrtMD may then be compared 812 to the VO.sub.2 and VCO.sub.2 values measured 813 by the indirect calorimeter (e.g. the RICU). Whenever a discrepancy may occur between the calculated and the measured VO.sub.2 and VCO.sub.2 values, the measured VO.sub.2 and VCO.sub.2 values may be used to train 816 the mathematical models such that they become increasingly personalized (more accurate) over timehence, the procedure described above is considered a calibration procedure for the CrtMD. The calibrated VO.sub.2 and VCO.sub.2 values obtained 817 from a calibrated CrtMD may subsequently serve as input 818 into at least one mathematical formula by means of which a number of metabolic parameters (e.g. the resting metabolic rate (RMR), the fat free mass (FFM) and the current body composition (CBC)) may be calculated. These parameters may also be calculated 814 from the VO.sub.2 and VCO.sub.2 values obtained 815 from an indirect calorimeter (such as the RICU) when used at rest. At the same time, the calibrated VO.sub.2 and VCO.sub.2 values may be used as input into at least one mathematical model by which the real-time respiratory quotient (RQ) and/or the energy expenditure (EE, i.e. calories burnt) may be calculated 819, while these values may in its turn serve as input into at least one mathematical model by which the food quotient (FQ) may be calculated 820. Similarly, energy uptake (EU, i.e. calories taken up into the body from the gut) may be calculated from FQ using at least one mathematical model 821. The calculated energy uptake and energy expenditure values may subsequently be used as input into a simple mathematical formula in order to calculate 822 the energy balance (EB) of the subject. The calculated energy balance value(s) may in its turn be used as input into at least one mathematical model by which the weight loss/gain of a subject may be predicted 823 for a defined time span. Similarly, the calculated energy balance value(s) may be used as input into at least one mathematical model by which the body composition of a subject may be predicted 826 for a defined time span.
[0101] Values obtained from other accurate and trustworthy measuring devices (e.g. another type of indirect calorimeter, body impedance measuring devices, a weighing scale, etc.) or food logging (where the quantity of food consumed and the macromolecular composition of the food consumed is provided) may be used to validate the accuracy of at least one of the mathematical models used to perform processes 819, 820, 821, 823 and 826. This may be done by comparing the calculated values (e.g. predicted weight, or predicted body composition) to the measured values (e.g. weight as measured by a weighing scale, or body composition as measured by a bio-electrical impedance measuring device). Whenever a discrepancy may occur between the calculated and the measured values, the measured values may be used to train 825, 828 at least one mathematical model in order for it to become more personalized (more accurate) over time. Note that, since the RICU can be used to calculate body composition for a subject at rest, this value may be used as a second calibration tier in the calibration procedure when simultaneously using the RICU and CrtMD at rest. Moreover, information such as age, gender, race, genetic markers, etc. may be introduced at any stage during the process in order to determine the values of at least one new parameter, or to make model parameterization more accurate (i.e. to train at least one mathematical model).
Personalized Nutritional & Wellness Assistant
[0102] An important aspect of the present invention is the supportive information system (henceforth called the Personalized Nutritional & Wellness Assistant) which complements the use of the CrtMD and RICU of the current invention. The Personalized Nutritional & Wellness Assistant represents all raw, measured and calculated data, as well as their transmission between any current or future electronic devices capable of data transformation and/or information display (e.g. the CrtMD, RICU, smartphones, tablets, personal computers, laptops, servers, etc.). The Personalized Nutritional & Wellness Assistant may also include manual input relevant to the metabolic assessment of the user (e.g. the height, weight and age of the user), as well as the personal health, wellness and/or sport performance goal(s) of the user.
[0103] The Personalized Nutritional & Wellness Assistant presents a novel and unique implementation of the field of Computational Systems Biology (a scientific field where multi-reaction biological systems and mathematical modeling are integrated), by utilizing the output of sensing devices (such as, but not limited to, the CrtMD and the RICU) as input variables and/or parameters into mathematical models designed to describe biological systems in silico. In one embodiment, the mathematical model(s) may comprise ordinary or partial differential equations, but the models can also be constructed with other discrete formulations, statistical formulations and stochastic formulations. Regardless of the method used, these mathematical models may use variables (i.e. model entities not staying constante.g. temperature; breathing rate; heart rate; enzyme rates; equilibrium driven reactions) and parameters (i.e. values describing the properties of the entities that are part of the model and that enable variables in the model to change over time). In a typical scenario, sensor data from a subject will be transmitted wirelessly (for instance via a smartphone), or non-wirelessly to a server (or any other device capable of computation) where it will serve as input variable(s) and/or parameter(s) to a computational platform of mathematical models and/or systems models that describe physiological and/or physical characteristics of that subject at enzyme level, tissue level, organ level, and/or whole body level. With the sensor data incorporated, these models may then generate output variables and/or parameters that can be stored on the server and/or transmitted from the server to a different location (i.e. the sensor device, a smartphone, tablet, other server etc.). In an alternative embodiment, sensor data will not be transmitted to remote computer systems, but will be analyzed locally on the processing module of the measuring device itself. One application of this method, for example, would be to use data obtained from the RICU and the CrtMD as input for variables and/or parameters to mathematical models of metabolism to predict and/or analyze several system variables and parameters such as, but not limited to, projected weight loss, projected body fat, projected energy uptake, Energy Balance, Excess Postexercise Oxygen Consumption, VO2, VCO2, Respiratory Exchange Ratio, Respiratory Quotient, Total Energy Expenditure, Resting Energy Expenditure, Physical Activity Energy Expenditure, etc.
[0104] The most basic function of the Personalized Nutritional & Wellness Assistant is to provide the user with a means to predict, track, calculate, analyze and display his/her wellness- and lifestyle related parameters in a number of ways and on a variety of devices. The Personalized Nutritional & Wellness Assistant is also able to assist the user in his/her decision making process with regards to a number of wellness related factors (e.g. whether or not to lose weight, how to improve fitness, deciding on a type of diet, knowing which exercise and sports programs will assist in attaining a personal health goal, etc.). In one embodiment, the Personalized Nutritional & Wellness Assistant is able to guide and motivate its user towards improved health, wellness and/or sport performance through the use of motivational feedback loops that are responsive to the user's continuously measured and calculated physiological and metabolic parameters. In such an embodiment, the efficiency of the motivational feedback loops may be improved on a continuous basis by altering the focus, frequency and type of motivators supplied to the user. A generalized description of a genetic algorithm approach suitable for such improvement would be as follows:
[0105] 1. The user database is divided into subgroups (randomly, or according to user type), where each subgroup is of a sufficient size to perform statistical analysis.
[0106] 2. Each subgroup is exposed to motivational feedback from the Personalized Nutritional & Wellness Assistant, but feedback differs with regards to type, timing, frequency, style and focus.
[0107] 3. The efficiency by which each subgroup attains its various user-specified goals provides an indication of the effectiveness of the motivational messages sent to the users (i.e. the fitness function of the optimization algorithm, e.g. genetic algorithm or evolutionary strategy, uses consumer compliance, consumer satisfaction and consumer goal achievement as variables).
[0108] 4. Subgroups displaying the greatest overall improvements are regarded as those that received the most effective motivational feedback from Personalized Nutritional & Wellness Assistant.
[0109] 5. The type, timing, frequency, style and focus of motivational feedback provided to the top performing subgroups are paired and the offspring traits are assigned to all of the subgroups of the specific user type (or the complete user base). The cycle is repeated until all discernible differences between the performances of subgroups are minimized.
[0110] 6. Statistical analysis (e.g. cluster analysis) can be used to identify user types that favorably respond to a general set of motivational prompt and data parameters.
[0111] 7. New users can be assigned user types according to their personal profiles and therefore immediately benefit from the motivational prompt and data style (as well as other parameters) that is most likely to be beneficial to them.
[0112] 8. The specific user's motivational prompt style can be fine-tuned or altered with further cycles of the above optimization algorithms.
[0113] 9. Exclusion of tired and ineffective motivational strategies is ensured by continuously introducing new means of motivation (discovered from scientific literature, for instance) into the current motivational framework and allowing them to compete with the existing framework. The cycle can be continuous and can make use of artificial intelligence methods to perform an automated improvement cycle).
[0114] Body weight has a natural tendency to fluctuate because of fluid balance changes in an individual's body. This can cause abrupt measurable weight changes that do not reflect the actual change in body tissue weight of an individual as he/she progresses towards his/her goal. In order to prevent a user from losing motivation due to inconsequential weight fluctuations, the Personalized Nutritional & Wellness Assistant can employ a regular moving or rolling average to indicate the trend of weight change. The moving or rolling average acts as a general trend indicator and informs the user about his/her progress towards his/her goal by, for example, color coding the area between the moving average and weight input curve (the weight curve not averaged) when the user's weight fluctuates above or below the moving or rolling average trend line. In one embodiment of the invention, the area is colored red whenever the user makes negative progress with regards to his/her goal, and green whenever the user makes positive progress with regards to his/her goal. It will be appreciated, however, that the scope of the current invention is not limited to the use of red and green only, but could utilize any color scheme or visual cues deemed suitable to indicate positive and/or negative and/or neutral progress with regards to a user's goal.
[0115] As a result of the CrtMD's unique capacity to monitor the real-time respiratory quotient of the user, the Personalized Nutritional & Wellness Assistant has the capacity to provide the user with continuous real-time feedback about his/her current nutritional state (i.e. how much of which resource the user is utilizing for metabolic energy production at any given moment), energy uptake levels (i.e. amount of calories consumed within a given time frame), energy expenditure levels, and energy balance. Energy balance zones can be identified in accordance with the user's wellness goals, and the Personalized Nutritional & Wellness Assistant could be programmed to provide warning signals to a user whenever the user trespasses his/her personal energy balance boundaries, and/or motivational feedback to help the user stay within the specified boundaries. The Personalized Nutritional & Wellness Assistant can therefore also provide the user with instantaneous advice regarding the most suitable food sources to eat at any given time.
[0116] The Personalized Nutritional & Wellness Assistant is also able to discover and educate a user about patterns in his/her behavior that triggers unwanted and/or desirable physiological responses (e.g: A user might always feel tired when he/she ate a carbohydrate dense meal the night before. This might not always be evident to the user, but the Personalized Nutritional & Wellness Assistant would be able to discover these hidden patterns by continuously and/or intermittently considering all the system variables (i.e. user inputs, CrtMD data and RICU data)). By integrating the above mentioned discovery capacity of the Personalized Nutritional & Wellness Assistant with geological data (e.g. GPS), behavioral data (i.e. online social interaction and purchase behavior), third party devices/services (e.g. Facebook or foursquare) and mood data, user feedback can be tailored to be more personalized and parameters of importance for other purposes (e.g. health risk analysis, sport performance and/or targeted advertising) could be identified.
[0117] In one embodiment, the Personalized Nutritional & Wellness Assistant is able to use the user's personal physiological and/or metabolic data to control an avatar in a web based, local and/or social network gaming environment. In a further preferred embodiment, the Personalized Nutritional & Wellness Assistant may be used to link to the user's social networks (e.g. Facebook, Twitter, or any similar current and future networks) to enable social relations and interactions between users of any of the technologies described in the current invention.
[0118] Besides the above characteristics, the Personalized Nutritional & Wellness Assistant may also include a function store containing three categories of functionalities: (i) free functions, (ii) paid functions and (iii) subscription functions. As with Apple's appstore and Android's apps, devices may be issued with a default set of functions, while additional functions may downloaded from the function store. Third-party development of functions will encouraged by making the data obtained from the device suite accessible via an API.