System and method for blood and saliva optimized food consumption and delivery

Information

  • Patent Grant
  • 12039585
  • Patent Number
    12,039,585
  • Date Filed
    Monday, April 10, 2017
    7 years ago
  • Date Issued
    Tuesday, July 16, 2024
    7 months ago
  • Inventors
  • Original Assignees
    • CIRCLESX LLC (Houston, TX, US)
  • Examiners
    • Clow; Lori A.
    Agents
    • Pramudji Law Group PLLC
    • Pramudji; Ari
Abstract
A computer implemented method for use in conjunction with a computing device, system, network, and cloud with touch screen two dimension display or augmented/mixed reality three dimension display comprising: obtaining, analyzing and detecting user blood and saliva chemistry data and mapping the blood and saliva data into a database associated with a specific user, applying the data with optimization equations and mapping equations to food chemistry such that a user may order food and beverage from a food/beverage distribution point or have food/beverage delivered to the user which has been specifically optimized for their specific blood characteristic target ranges. The method and system uses recursive techniques and neural networks to learn how to optimize food and beverage nutrient efficiency into the users blood chemistry.
Description
BACKGROUND OF THE INVENTION
Field of the Invention

Implementations of various methods to utilize blood sampling and saliva sampling analysis to optimize personal food nutrition, health, variety, ethnicity, flavors and delivery using iterative artificial intelligence and data mining. Western civilization wastes nearly 40% of produced and harvested food. The Center for Disease Control and Prevention cites that 36.5% of adults in the West suffer from obesity. The estimated annual medical cost of obesity in the U.S. was $147 billion in 2008 U.S. dollars. The medical costs of the aforementioned obese individuals are $1,429 higher than for those of normal weight. While Western developed markets show quantitative data that points to excess, developing nations still suffer from stunted growth, lack of nutrition, agricultural shortfalls and lack of stability in food supply. There are tremendous opportunities to re-allocate nutrition using math, science and technology to meet the world's needs without necessarily producing more, but improving efficiency and utilization rates. The implementation of the method allows for unbiased measure of nutrition and body chemistry through blood work and saliva sampling analysis and computerized systems where artificial intelligence based optimization techniques for improvement of human condition and health are utilized. No two people are alike in our unique body chemistry and yet we ingest food to serve our unique chemistries without unbiased analysis that is at our fingertips with the proposed method and system. The implementation of the method uses biomarkers and chemistry in blood work and saliva to determine optimal personal food consumption, ingredient weighting, health, variety, flavoring, style, ethnicity, nutrition and delivery which does not rely on self-reporting problems of inaccurate recall or reluctance to give a candid report. The biomarker analysis provides for an unbiased yet statistically accurate history which is stable and more reliable than self-reporting. Implementations of the various methods to create optimal food nutrition, health, ingredient weighting, variety, ethnicity, flavor and delivery also may reduce food consumption by 5% to 70% depending on the variables. The method also provides unbiased ordering information that is based on science from the user to reduce food waste in grocery stores by as much as 5% to 40%, but not limited to those levels of reduction. Reduced food waste lowers food cost globally, reduces fossil fuel consumption and provides more resources for those who have very little resources or not enough resources. Implementations or various methods of optimizing personal food intake for blood chemistry and saliva analysis also provide optimal healthy food intake which improves the overall quality of a society. Implementations of methods to optimize food intake for blood chemistry and saliva analysis also reduce mood swings caused by excessive variation in blood chemistry. Lower amounts of mood swings due to lower variation in blood chemistry contribute positively to higher human productivity and lower amounts of societal stress. For the purpose of efficiency in this document we will interchangeably use the term “User” and “Foodie”.


Description of the Related Art

The following descriptions and examples are not admitted to be prior art by virtue of their inclusion within this section.


The current implementations of methods to use biomarkers, blood testing and saliva testing focus on treating specific conditions and diagnosing predispositions, but they are not used to optimize human health using algorithms and artificial intelligence neural networks to provide iterative system feedback from a user to then compare utility maximization equations over blood and saliva variables subject to a plurality of constraints, such as budget, nutrient matching to blood type and chemistry, over a computer system where users may have a simple way to order raw or cooked food over the application and arrange for delivery, yet harness the power of the calculus maximization equations and neural networks to optimize their blood chemistry and health in the background. Further, the system recommends various food options based on non-linear systems of vectors, neural networks and optimization formulas to optimize on all of user preference, health, ingredient weights, variety, flavoring, style, ethnicity, nutrition and delivery.


Implementations of methods have been made in systems that provide the identification of a biomarker for the analysis of certain conditions, but the implementations do not provide a solution for the user to have an integrated approach to their overall health and diet with feedback from artificial intelligence neural network algorithms or calculus maximization equations designed to optimize food intake based on analysis of the user's blood and saliva:

    • 1) U.S. Pat. No. 7,680,690 issued Mar. 16, 2010 to Anthony B. Catalano covers a methodology for customers seeking to purchase a meal from a food service vendor such as a restaurant, a cafeteria, or a vending machine, by ordering a food preparation based upon menu-selection. In addition to receiving ordered food, customers receive suggestions for optionally modifying their food orders based upon nutritional benefits and other criteria. Either during real-time customer-ordering or during post-ordering, a food-service vendor presents a customer's suggestions specific to a pending tentative or completed order, wherein the customer may enjoy purported nutritional benefits by electing to follow these suggestions and thereby modify the tentative order into a corresponding completed order. The preferred embodiment contemplates a restaurant environment in which customers typically approach a food-ordering counter and interface with both a menu display and with order-taking personnel. Other embodiments implicate kiosks, vending machines, remote access devices, and locally and remotely-accessed networked computers, wherein customers interact with automated computer-driven devices instead of, or in addition to, wait-staff or other food service personnel. The limitation and disadvantages of the prior art which seeks to have the user continually modify food choices is that the solution has no direct tie to the user's personal blood or saliva chemistry in the calculation, the prior art does not address a full composite of food attributes, and the prior art system and method does not consider that individual blood and saliva chemistry reacts differently to the plurality of menu ingredients, which renders the solution very limited in scope and use. By contrast, the prior art method of a computerized database of anonymous customer preference information is fundamentally different from the proposed method of a custom blood and saliva database that may provide specific calculations for each user. Also by contrast, the proposed method considers each food selection, considering a specific mathematic optimization equation of the relationship to blood and saliva chemistry of the specific user. Also by contrast, the proposed method has optimized the selection alternatives in advance of the order specifically for blood and saliva chemistry, whereas the aforementioned prior art method modifies a user's selection to pick healthier ingredients but does not consider that each user has fundamentally different blood and saliva chemistry. The process is fundamentally different. Additionally by contrast, the proposed method does not substitute food ordering based on healthier ingredients like the prior art, but recommends foods based on their specific relationship to the user's blood and saliva chemistry. Accordingly the premise and method of the prior art are completely unique and fundamentally different from the proposed method and system.
    • 2) U.S. Pat. Nos. 6,618,062 and 6,646,659 issued Sep. 9, 2003 to Brown, et al. discloses a method, system and program for specifying an electronic food menu with food preferences from a universally accessible database. The prior art relates to a method, system and program for specifying an electronic menu for a particular customer from food preferences received via a person integrated circuit. The technology taught in Brown covers a method, system and program retrieves unique customer preferences based upon a unique customer key which then improves the efficiency of special requests on a menu in the food industry. The proposed method and system is solely based on preferences which are input by the user and these preferences may or may not relate to blood or saliva chemistry. The proposed method and system uses an objective measurement of data from a sample of blood and saliva chemistry which is then utilized in a mathematic optimization equation to move the user's blood chemistry from its current state to a desired target range. Accordingly the premise and method of the prior art are completely unique and fundamentally different from the proposed method and system.
    • 3) U.S. Pat. No. 6,434,530 issued Aug. 13, 2002 to Sloane et al. discloses an interactive system adapted for use in a shopping venue to provide supplemental information related to an article available for selection by shoppers in a shopping venue. The prior art provides a method and system of retrieving helpful data for a consumer to guide their decision process. The prior art describes a method that shows a user that a can of tomato sauce is on sale, then it helps to determine a sort for the best price, lower amount of salt, a name brand, a store brand while referencing the users prior preferences from a database. While the system is interactive and intelligent, the underlying algorithms, purpose and content are different from the proposed method. The proposed method and system directly utilizes a proprietary and confidential blood and saliva sample from the user to then optimize hundreds of combinations and permutations of groupings of ingredients and recipes a user may enjoy that are selected upon reference for the user's consumption, health, variety, flavoring, style, nutrition and delivery, and which does not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location.
    • 4) U.S. Pat. No. 7,090,638 issued Aug. 15, 2006 to Edward Vidgen covers a dietary planning system that receives the personal characteristics and food preferences for a user. The prior art reviews personal characteristics such as a desired physiological rate of change for the individual and develops optimal dietary menus that maximize the palatability of the menu while satisfying dietary constraints that may relate to a user's preferences. The prior art requests the user to input a desired physiological rate of change such as one pound per week, and the user also inputs his or her energy expenditure by answering questions about the user's activity levels. The equation of the prior art uses a simple formula to target, such as, for example, one pound of weight loss per week as a requirement to produce a diet that reduces kilocalories by 500 units a day. The prior art labels equations that weight various ingredients that are subject to a kilocalorie inequality or a protein weight inequality. However the teaching does not make clear any actual optimization equation, so it is unclear that the system is optimizing anything other than giving weights that fall under a constraint, which does not qualify as optimization. Further, it does not handle potential non-linear relationships of food chemistry and blood chemistry. The prior art system does not discuss or handle any relationship of the user's blood or saliva chemistry with respect to various food ingredients.
    • 5) U.S. Pat. No. 9,410,963 issued Aug. 9, 2016 to Nestec S.A. covers the use of a biomarker to diagnose the likelihood to resist diet induced weight gain and the susceptibility of diet induced weight gain. The method is to determine the level of hexanoylglycine relative to a predetermined reference to determine the likelihood of resisting high fat diet induced weight gain. The proposed method is diagnostic, not prescriptive. The method attempts to diagnose predisposition of likelihood to reduce diet induced weight gain and likelihood to resist high fat diet induced weight gain. By contrast the proposed independent methods and systems form optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof to maximize nutrition of a user's consumption, health, variety, flavoring, style, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of linear and non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices.
    • 6) U.S. Pat. No. 6,663,564 issued Dec. 16, 2003 to Weight Watchers Limited covers a process for controlling body weight in which a selection of food servings is based on a calculated point value and a range of allotted daily points which is adjusted for weight change. The calculated point value is a function of measured calories, total fat and dietary fiber. A range of points allotted per day may be calculated based on current body weight, caloric reduction to be achieved, physical activity level and physical activity duration. While the process and method uses a math formula to count kilocalories, fiber, and fat, the equation is linear and therefore does not maximize for overall nutrition considering a more realistic but larger set of variables and the non-linear nature of the real life nutrition equation. Further the method is not customized by blood and saliva chemistry per each user. By contrast the proposed independent methods and systems form optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof to maximize nutrition of a user's consumption, health, variety, flavoring, style, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of linear and non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices in the background of the simple graphical user interface.
    • 7) U.S. Pat. No. 5,412,560 issued May 2, 1995 to Dine Systems, Inc. covers a process for evaluating an individual's food choices based upon selected factors and dietary guidelines. The invention analyzes the food an individual eats and determines certain predictor and follower nutrients that will give rise to an assessment of how a person's diet matches with various dietary guidelines established by governmental and/or other entities. The invention provides the results of the analysis to the individual complete with messages regarding over or under consumption of key nutrients so that the individual can correct the diet thereby resulting in better eating habits. The invention also gives the individual a “score” by which the person can immediately assess how well he or she is doing with respect to the various guidelines. The higher the number the better the diet. Further the method is not customized by blood and saliva chemistry per each user. By contrast the proposed independent methods and systems form optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof to maximize nutrition of a user's consumption, health, variety, flavoring, style, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location. Further, the proposed system and method is able to log each meal ingredient because the system has the ability to order the food raw or prepared and deliver the food to the user. The proposed system provides an integrated approach to holistic nutrition, and also provides food item intelligence to take a picture of a meal and then log into the database food that was not ordered or designed on the system. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of linear and non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices in the background of the simple graphical user interface.
    • 8) U.S. Pat. No. 9,528,972 issued Dec. 27, 2016 to Eugenio Minvielle covers nutritional substance systems and methods are disclosed enabling the tracking and communication of changes in nutritional, organoleptic, and aesthetic values of nutritional substances, and further enabling the adaptive storage and adaptive conditioning of nutritional substances. The system logs changes in nutrition as heat and cooling changes the nutritional values. Further the method is not customized by blood and saliva chemistry per each user. By contrast the proposed independent methods and systems form optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof to maximize nutrition of a user's consumption, health, variety, flavoring, style, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location. Further, the proposed system and method is able to log each meal ingredient because the system has the ability to order the food raw or prepared and deliver the food to the user. The proposed system provides an integrated approach to holistic nutrition and also provides food item intelligence to take a picture of a meal and then log into the database food that was not ordered or designed on the system. Further, the system recommends various food options based on linear and non-linear systems of vectors and optimization formulas to optimize on all of user preference, health, variety, flavoring, style, ethnicity, nutrition and delivery. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices in the background of the simple graphical user interface.
    • 9) U.S. Pat. No. 8,249,946 issued Aug. 21, 2012 to General Mills, Inc. covers a system and method for selecting, ordering and distributing customized food products is disclosed. In one embodiment, the method is a computer-implemented method comprising viewing a list of additives for creating a customized food product, selecting one or more additives from the list of additives to create the customized food product, and transmitting a request to purchase the customized food product, which is then distributed to the consumer. By communicating with the manufacturer as to personal needs and desires pertaining to health, activity level, organoleptic preferences and so forth, the consumer can now develop and order a customized food product to suit his or her particular tastes, using a real-time interactive communication link. Further the method is not customized by blood and saliva chemistry per each user. By contrast the proposed independent methods and systems form optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof to maximize nutrition of a user's consumption, health, variety, flavoring, style, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location. Further, the proposed system and method is able to log each meal ingredient because the system has the ability to order the food raw or prepared and deliver the food to the user. The proposed system provides an integrated approach to holistic nutrition and also provides food item intelligence to take a picture of a meal and then log into the database food that was not ordered or designed on the system. Further, the system recommends various food options based on linear and non-linear systems of vectors and optimization formulas to optimize on all of user preference, health, variety, flavoring, style, ethnicity, nutrition and delivery. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices in the background of the simple graphical user interface.
    • 10) U.S. Pat. No. 8,920,175 issued Dec. 30, 2014 to Thrive 365 International, Inc. covers a method is provided for assigning a relative score number to foods. Assignment of a relative score number to foods allows consumers to select foods that will provide a desirable diet. Equations are provided which are effective to yield a predicted raw score based on measured characteristics. The predicted raw score statistically correlates to a raw score that would be determined by an actual panel. The predicted raw scores are further processed to provide a relative score number that can be easily tracked by a consumer. Further the method is not customized by blood and saliva chemistry per each user. By contrast the proposed independent methods and systems form optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof to maximize nutrition of a user's consumption, health, variety, flavoring, style, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location. Further, the proposed system and method is able to log each meal ingredient because the system has the ability to order the food raw or prepared and deliver the food to the user. The proposed system provides an integrated approach to holistic nutrition and also provides food item intelligence to take a picture of a meal and then log into the database food that was not ordered or designed on the system. Further, the system recommends various food options based on linear and non-linear systems of vectors and optimization formulas to optimize on all of user preference, health, variety, flavoring, style, ethnicity, nutrition and delivery. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices in the background of the simple graphical user interface.


SUMMARY

The claimed subject matter is not limited to implementations that solve any or all of the noted disadvantages. Further, the summary section is provided to introduce a selection of concepts in a simplified form that are further described below in the detailed description section. The summary section is not intended to identify key features or essential features of the claimed subject matter, nor is it intended to be used to limit the scope of the claimed subject matter.


An independent method and system forming optimization algorithms (which are linear and non-linear systems of vectors) on individual food ingredients and the combinations thereof in recipe format for an order of food from a raw food distribution point or a prepared food distribution point to maximize nutrition of a user's consumption, health, variety, flavoring, style, ethnicity, nutrition and delivery, which do not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to further constraints of income, price, and location. Further, the proposed system and method is able to log each meal ingredient because the system has the ability to order the food raw or prepared and deliver the food to the user or allow the user to pick up the food at a food distribution point. The proposed system provides an integrated approach to holistic nutrition and also provides food item intelligence to take a picture of a meal and then log into the database food that was not ordered or designed on the system. Further, the system recommends various food options based on non-linear systems of vectors and optimization formulas to optimize on all of user preference, blood and saliva chemistry, health, variety, flavoring, style, ethnicity, nutrition and delivery among other variables but not limited to the aforementioned variables. Further, the proposed method and system is fully integrated to allow a user to have their meal selection with as few as three clicks on a graphical user interface while the computer based optimization calculations of linear and non-linear vectors alongside optimization maximization equations have solved for optimal healthy choices for the user. For the purpose of efficiency in this document we will interchangeably use the term “User” and “Foodie”.


In one implementation, the method and system for determining the optimal nutrition food intake solution may include receiving one or more parameters that describe the user's blood chemistry and saliva chemistry. The blood chemistry and saliva chemistry test data may then be submitted into a database that may be utilized to run a system of linear and non-linear systems of vectors alongside a system of vectors that considers food ingredients, flavor, ethnicity and style preferences in the context of a recipe that optimizes nutrition for a user's blood supply and body chemistry. The output of the applied math equation is a portfolio of blood and saliva optimized recipes or prepared dishes that are either raw or prepared which can then be delivered or picked up at the user's home, a raw food distribution point such as a grocery store or market, or a prepared food establishment such as a restaurant or prepared food kitchen distribution point. The user's budget is part of the optimization equation so that the food choices are optimized over a given budget or level of service.





BRIEF DESCRIPTION OF THE DRAWINGS

Implementations of various technologies will hereafter be described with reference to the accompanying drawings. It should be understood, however, that the accompanying drawings illustrate only the various implementations described herein and are not meant to limit the scope of various technologies described herein. For the purpose of efficiency in this document we will interchangeably use the term “User” and “Foodie”.



FIG. 1 illustrates a schematic diagram of the network configuration and implementations of methods which support the blood and saliva optimized algorithms for food ordering and consumption in accordance with some embodiments.



FIG. 2 illustrates a schematic diagram of the network configuration and implementations of methods which support the blood and saliva optimized algorithms for food ordering and consumption and the associated application graphical user interface designed for both 2d and 3d smart devices as well as augmented reality and mixed reality interface configurations in accordance with some embodiments.



FIGS. 3A and 3B illustrate the implementation of methods of a typical user selecting the ethnicity or style of food prior to the algorithms optimization calculations considering the blood and saliva chemistry of the user amongst other variables in accordance with some embodiments.



FIGS. 4A and 4B illustrate the implementation of methods of a typical user selecting a plurality of food distributors of prepared or raw food utilizing the graphical user interface of the blood and saliva nutrition optimized algorithms in accordance with some embodiments.



FIG. 5 illustrates the implementation of methods of a typical user selecting the style and ethnicity of the food choice prior to optimization of the nutrition content utilizing the graphical user interface of the associated application designed for both 2d and 3d smart devices as well as augmented reality and mixed reality interface configurations in accordance with some embodiments.



FIGS. 6A and 6B illustrate the implementation of methods of delivery of raw food or prepared food and beverage over the network of stores which are connected to the blood and saliva optimized network in accordance with some embodiments.



FIGS. 7A and 7B illustrate the implementation of methods of delivery of raw food or prepared food and beverage over the network of stores which are connected to the blood and saliva optimized network in accordance with some embodiments.



FIG. 8 illustrates the implementation of methods of delivery of raw food or prepared food and beverage over the network of stores which are connected to the blood and saliva optimized network in accordance with some embodiments.



FIG. 9 illustrates the implementation of methods dietary type of style choices in the delivery matrix of raw food or prepared food and beverage over the network of stores which are connected to the blood and saliva optimized network in accordance with some embodiments.



FIG. 10 illustrates the implementation of methods which may include a plurality of variables and constraint variables in the determining the optimal ingredients to improve the blood and saliva chemistry of a user through linear and non-linear vector maximization and minimization equations in accordance with some embodiments.



FIG. 11 illustrates a diagram of the mobile computer ball device in accordance with some embodiments.



FIG. 12 illustrates an exemplary user interface for selecting a plurality of applications in accordance with some embodiments.



FIG. 13 illustrates an exemplary flow chart of a plurality of applications and iterations of the blood and saliva chemistry of a user through linear and non-linear vector maximization and minimization equations in accordance with some embodiments in accordance with some embodiments.



FIGS. 14A and 14B and 14C and 14D illustrate an exemplary implementation of methods utilizing a plurality of linear and non-linear equations to maximize nutrition of a user's consumption, health, variety, flavoring, style, ethnicity, nutrition and delivery of prepared and raw food which does not rely on a single diagnostic test or self-reporting problems because of independent blood and saliva tests subject to the constraints of income, price, and location in accordance with some embodiments.



FIGS. 15A and 15B illustrate the embodiment of the method and system in FIG. 15A representing the tradeoff between the standard deviation of blood chemistry of a meal and the expected return of the blood chemistry of a meal while 15B represents the inequality condition.



FIG. 16A in the form of a graph and 16B in the form of a table illustrates the points along a Foodies indifference curve where meals have equal utility to the user or Foodie.



FIGS. 17A and 17B and 17C illustrate one exemplary probability distribution of a particular ingredient affecting the blood chemistry of a Foodie or user as well as the mean of the expected return of ingredients to blood chemistry and the variance of an ingredient to the blood chemistry.



FIGS. 18A and 18B and 18C and 18D illustrate the blood chemistry of a vector of ingredients is the weighted average of the blood chemistry of each individual ingredient and the standard deviation as well as the covariance of ingredients on blood chemistry.



FIGS. 19A and 19B and 19C illustrate how the covariance and correlation equations of food ingredients affect the blood chemistry of the Foodie or user.



FIGS. 20A and 20B illustrate some descriptive statistics of a partial implementation of a simple two ingredient embodiment of the system and method.



FIGS. 21A and 21B illustrate an exemplary scenario of an experiment with different proportions to observe the effect on the expected blood chemistry and variance of blood chemistry with various weightings.



FIGS. 22A and 22B illustrate an exemplary case of the meal combination blood chemistry standard deviation when correlation rho is at 0.30. FIG. 22B illustrates the ingredient combination opportunity set for various correlation factors.



FIGS. 23A and 23B illustrate the opportunity set generated from the joint probability distribution of the combination of ingredients of rapini and chocolate using the data from FIG. 20B as well as the slope of the reward to variability ratio or Foodie allocation line (A).



FIGS. 24A and 24B illustrate the highest sloping Foodie allocation line (C) at point P intersecting with the opportunity set.



FIGS. 25A and 25B and 25C illustrate the framework to maximize the slope of the foodie allocation line subject to the condition that the sum of the weight of all the ingredients will sum to one which is a standard calculus problem.



FIGS. 26A and 26B illustrate the graphical solution of FIGS. 25A and 25B and 25C as well as the summarization of a two or more ingredient embodiment to a general embodiment.



FIGS. 27A and 27B illustrate the graphical solution of the user ingredient allocation method as well as the minimum variance frontier of ingredients which is the graph of the lowest possible ingredient variance combination for a given target food chemistry and its effect on blood chemistry.



FIGS. 28A and 28B illustrate the expected movement of a users blood chemistry from the ingredient combination as well as the expected variance of blood chemistry.



FIG. 29 illustrates the expected general exemplary case of the method with vectors to illustrate any general combination of food chemistry components, ingredients and combinations and how they interact with any blood chemistry components or elements.



FIG. 30 illustrates a specific embodiment of the components of food chemistry elements and their expected values.



FIG. 31 illustrates additional data from the same specific embodiment shown in FIG. 30.



FIG. 32 illustrates additional data from the same specific embodiment shown in FIG. 30 and FIG. 31.



FIG. 33 illustrates a specific education center food establishment where both blood work and a restaurant that has the ability utilize the equations of the methods and teach the users how blood and food interact in the method embodiment.



FIG. 34 illustrates an embodiment of one potential flow chart of the method and system processes.





DETAILED DESCRIPTION

The discussion below is directed to certain specific implementations. It is to be understood that the discussion below is only for the purpose of enabling a person with ordinary skill in the art to make and use any subject matter defined now or later by the patent “claims” found in any issued patent herein.


The following paragraphs provide a brief summary of various techniques described herein, such as implementations illustrated in FIG. 1. For the purpose of efficiency in this document we will interchangeably use the term “User” and “Foodie”. In one implementation as illustrated in FIG. 1, a user 110 may provide a blood and saliva sample 170 to a certified laboratory 120 through a plurality of options. The certified laboratory then transmits the test results from the blood and saliva samples to a network 140 which then archives the data in a blood and saliva database server 130. The network 140 also interacts with the user 110 and a food database server 160, which has compiled a plurality of nutrition information on food ingredients from a plurality of global resources. Food providers of raw food ingredients or prepared dishes use the graphical user interface 180 to upload ingredient information to the network 140, which then stores the nutrition information in the food database server 160. The user 110 interacts with the network 140 through the graphical user interface 180 by selecting a plurality of options regarding nutrition, health, variety, flavoring, style, ethnicity and delivery of prepared and raw ingredients. The cloud based CPU 190 contains algorithms of linear and non-linear equations, which use a plurality of vectors to determine the optimal nutrition ingredients or prepared dishes that optimize the blood and saliva chemistry of the user 110 by interaction with the network 140 and pulling data recursively from the blood and saliva database server 130 and food database server 160. The user 110 may submit blood and saliva samples 170 to the certified laboratory 120 through a plurality of methods to update the network 140 and blood and saliva database server 130 in a plurality of frequencies to improve the ability of the algorithms in the cloud CPU 190 to optimize ingredients from the food database server. The food database server 160 contains a schema for individual ingredients, as well as combinations of ingredients from recipes, which have been uploaded by a plurality of users 110 through the graphical user interface 180. The graphical user interface 180 may be obtained on a stationary CPU, mobile device, augmented reality device, mixed reality device, or any device capable of presenting a graphical user interface 180 to a user 110. The form of the graphical user interface 180 may be a globe with flags of countries, a map with geographic location of countries, country listing, voice listing of countries or other representations of geographic and cultural areas 180. The user 110, network 140, and graphical user interface 180 may interact with the wireless GPS location network 150 to obtain position of the user 110 relative to other users to consider delivery mechanisms to the user 110 and to constrain the optimization equations for cost of delivery.


The embodiment illustrated in FIG. 2 illustrates further a user 210 interacting with a wireless network 250 and a network 230 that connects a blood and saliva database server 220 based on blood and saliva samples and test results from a user 210 with a food database server 240 containing nutrition data for raw ingredients and combinations of raw ingredients in the form of recipes and prepared food combinations of nutrition, health, variety, flavoring, style, ethnicity and delivery. The user 210 may access the wireless network 250, network 230, blood and saliva database server 220, food database server 240, cloud CPU 260 or other CPUs accessible through the network 230 through the graphical user interface 270. The user 210 continuously updates the blood and saliva database server 220, such as by having a certified laboratory or certified home collection kit collect blood and saliva samples on a plurality of intervals to optimize food selection from the food database server 240.


The embodiment illustrated in FIG. 3A illustrates further a user 310 selecting a country of origin for food flavor, variety, style, ethnicity preference from the graphical user interface 330. The user 310 may select the flavor, variety, style, ethnicity preference 340, which then initiates a method of setting up a recursive process of performing optimization equations on linear and nonlinear algebra vectors of various food combinations that optimize the chemistry of blood and saliva. The embodiment illustrated in FIG. 3B illustrates further that a user 310 directs a tool 380 from the graphical user interface 390 to select a plurality of prepared or raw food options, such as a combination of meat, potatoes and other vegetables 370, rice, Indian sauces, breads 360, and seafood pasta 350. The user 310 may scroll the suggested options 370, 360, 350 by sliding, rolling, swiping or other intuitive movements to the graphical user interface 390 user controlled pointer 380.


The embodiment illustrated in FIG. 4A illustrates further a user 410 selecting with the graphical user interface pointer 440 a store or brand of food 420 which carries raw food or prepared foods that have been uploaded by the vendor 420 so that the optimization equations may select raw ingredients, combinations of raw ingredients and prepared foods which optimize the user's 410 blood and saliva chemistry. The user 410 may also select restaurants 430 that have uploaded food menus or food choices that have been optimized for the user's 410 blood and saliva chemistry. The embodiment illustrated in FIG. 4B illustrates further a user 450 directing a graphical user interface pointer 480 in one configuration amongst many configurations where the user 450 may select a drink such as coffee, hot chocolate, tea, wine, milk, water, carbonated drink, juice, beer, cider, or spirit from a vendor 460, 470 who participates in the system.


The embodiment illustrated in FIG. 5 illustrates further a user 510 selecting with the graphical user interface pointer 540 a style, country, flavor, or ethnicity of food 530 as an input to the vector based system of linear and non-linear equations to optimize blood and saliva chemistry of a user 510, taking into account the style, country, flavor, or ethnicity that the user 510 desires


The embodiment illustrated in FIG. 6B illustrates further a user 660 selecting with the graphical user interface a drink 670 and combination of ingredients in the form of a recipe which includes raw ingredients or prepared food 690, which can then be picked up at a specified location or delivered to the user 660 via a drone 680 or a plurality of other delivery methods. The embodiment illustrated in FIG. 6A illustrates further a user 660 that may be connected to the network of stores that use the blood and saliva optimized database structure and schema 620 to optimize blood and saliva chemistry while considering food consumption. A plurality of pick up or delivery methods may be utilized that include, but are not limited to, programmed drones 610, 630, 640, 650. The drones 680 may be operated by humans or may be autonomous.


The embodiment illustrated in FIG. 7B illustrates further a user 760 selecting with the graphical user interface a drink 770 and combination of ingredients in the form of a recipe which includes raw ingredients or prepared food 790, which can then be picked up at a specified location or delivered to the user 760 via a vehicle 780 or a plurality of other delivery methods. The embodiment illustrated in FIG. 7A illustrates further a user 760 that may be connected to the network of stores that use the blood and saliva optimized database structure and schema 730 to optimize blood and saliva chemistry while considering food consumption. A plurality of pick up or delivery methods may be utilized that include but are not limited to programmed vehicles 710, 720, 740, 750. The vehicles 780 may be operated by humans or may be autonomous.


The embodiment illustrated in FIG. 8 illustrates further that a user 810 may select, with the graphical user interface, blood and saliva optimized food which is ready for pickup 820 from a store, restaurant, or cooking node that is connected to the blood and saliva optimized network 830. Grocery stores, food warehouses, co-ops, food distribution centers, restaurants, certified kitchens, or a plurality of other nodes capable of providing raw or prepared food may be connected to the blood and saliva optimized nutrition network 830. Grocery stores, food warehouses, co-ops, food distribution centers, restaurants, certified kitchens, or a plurality of other nodes capable of providing raw or prepared food may prepare the food for pickup 820 or distribute the food via drone or delivery vehicle.


The embodiment illustrated in FIG. 9 illustrates further that a user 910 may select, with the graphical user interface pointer 980, blood and saliva optimized food that may have a certain type of food designation such as gluten free 920, halal 930, kosher 940, peanut free 950, sugar free 960, vegetarian 970, or a plurality of other designations that would be in the preference portfolio vector of the user 910.


In one implementation as illustrated in FIG. 10, the system may provide a blood and saliva sample 170 to a certified laboratory 120 through a plurality of options.


The embodiment illustrated in FIG. 11 illustrates the mobile network based ball CPU projection device 1125. The blood and saliva optimized food methods and system may be used on any CPU device which is stationary or mobile with access to a network. One configuration of a CPU device which can process the blood and saliva optimized food methods and system may be the device 1125 which may include a memory 1102, a memory controller 1103, one or more processing units (CPUs) 1104, a peripherals interface 1105, RF circuitry 1106, audio circuitry 1108, one or more speakers 1107 and 1115, a microphone 1109, an input/output (I/O) subsystem 1110, input control devices 1111, an external port 1112, optical sensors 1116, camera 1113, one or more laser projection systems 1114, power supply 1117, battery 1118, wifi module 1119, GPS receiver 1120, accelerometer 1121, ambient light sensor 1122, location sensor 1123, barometer 1124, and USB port 1126. The device 1125 may include more or fewer components or may have a different configuration or arrangement of components. The CPUs 1104 run or execute various instructions compiled by software and applications, which are stored in the memory 1102, that perform various functions on the device 1125, such as the blood and saliva optimized food methods and system. The RF circuitry 1106 receives and sends RF signals. The RF circuitry 1106 converts electrical signals to/from electromagnetic signals and communicates with communications networks 140 and 150 and other communication devices via the electromagnetic signals. The instructions to perform the mathematic algorithm optimization may be on a local CPU such as 1104 or a cloud based CPU 190. The RF circuitry may be comprised of, but not limited to, an antenna system, a tuner, a digital signal processor, an analogue signal processor, various CODECs, a SIM card, memory, amplifiers, an oscillator and a transceiver. The wireless communication components may use a plurality of standard industry protocols, such as Global System for Mobile Communication (“GSM”), Voice over internet protocol (“VOIP”), long-term evolution (“LTE”), code division multiple access (“CDMA”), Wireless Fidelity (“WiFi”), Bluetooth, Post office Protocol (“POP”), instant messaging, Enhanced Data GSM Environment (“EDGE”), short message service (“SMS”), or other communication protocol invented or not yet invented as of the filing or publish date of this document. The input/output subsystem 1110 couples with input/output peripherals 1105, other control devices 1111, and other laser projection systems 1114 to control the device 1125. The laser projection system 1114 and camera 1113 take infrared tracking information feedback from the user 110 into the peripheral interface 1105 and CPU 1104 to combine the data with instructions in the CPU 1104 and memory 1102 that provide an iterative instruction for the graphical user interface after comparison with information in the memory from the database server 130. The input control devices 1111 may be controlled by user 110 movements that are recorded by the laser projection system 1114 and camera 1113. The audio circuitry 1108, one or more first speakers 1107, one or more second speakers 1115, and the microphone 1119 provide an audio interface between the user and the device 1125. The audio circuitry 1108 receives audio data from the peripherals interface 1105, converts the data to an electrical signal, and transmits the electrical signal to the speakers 1107 and 1115. The speakers 1107 and 1115 convert the electrical signals to human audible sound waves which are mechanotransducted into electrical impulses along auditory nerve fibers and further processed into the brain as neural signals. The audio circuitry 1108 also receives electrical signals converted by the microphone 1109 from sound waves. The audio circuitry 1108 converts the electrical signal to audio data and transmits the audio data to the peripherals interface 1105 for processing. Audio data may be retrieved and/or transmitted to memory 1102 and/or the RF circuitry 1106 by the peripherals interface 1105. In some embodiments the RF circuitry 1106 may produce ultra-high frequency waves that are transmitted to wireless headphones, which then convert the electrical signals to human audible sound waves which are mechanotransducted into electrical impulses along auditory nerve fibers and further processed into the brain as neural signals. The device 1125 also includes a power supply 1117 and battery 1118 for powering the various components. The USB port 1126 may be used for providing power to the battery 1118 for storage of power. The location sensor 1123 couples with the peripherals interface 1105 or input/output subsystem 1110 to disable the device if the device 1125 is placed in a pocket, purse or other dark area to prevent unnecessary power loss when the device 1125 is not being used. The software instructions stored in the memory 1102 may include an operating system (LINUX, OS X, WINDOWS, UNIX, or a proprietary operating system) of instructions of various graphical user interfaces.


The embodiment illustrated in FIG. 12 illustrates the graphical user interface of the system which may include a network based ball CPU projection device 1125. The system may include instructions for object hologram embodiments of a calendar 1201, photos, camera 1212, videos 1209, maps 1211, weather 1202, credit cards, banking 1215, crypto currency, notes, clocks 1213, music 1206, application hosting servers 1220, settings, physical fitness 1203, news 1216, video conferencing, home security 1208, home lighting, home watering systems, home energy or temperature settings, home cooking 1207, phone 1214, texting services, mail 1218, internet 1217, social networking, blogs, investments 1210, books, television, movies, device location, flashlights, music tuners, airlines, transportation 1205, identification 1219, translation, gaming 1221, real estate, shopping, food, commodities 1215, technology, memberships, applications, web applications, audio media, visual media, mapping or GPS, touch media, general communication, internet, mail 1218, contacts, cloud services, games, translation services 1223, virtual drive through with geofence location services for nearby restaurants to allow advance ordering of food and payment 1224, such as the food and saliva based algorithm to optimize personal nutrition, virtual shopping with custom measurements through infrared scans 1225, etc., and facilitates communication between various hardware and software components. The blood and saliva optimized food algorithm application may appear as represented in object 1207 or 1224. The application 1207 or 1224 may scan pictures of food which has been set for consumption by the user and which has not been ordered through the system so that the ingredients may be identified and the data included in the blood and saliva based optimization models of blood and saliva chemistry.


The process flow diagram in FIG. 13 illustrates implementations of methods and the system where a user uses the system and methods. A user starts 1310 the implementation of the methods and systems by selecting a plurality of options regarding nutrition, health, variety, flavoring, style, ethnicity and delivery. The system takes the inputs to execute on a processor instructions configured to 1320 complete the following instructions. In one implementation of the methods, the system maps systems of linear and non-linear blood and saliva vectors from databases in the system 1330. The map of the system of linear and non-linear blood and saliva vectors forms a matrix which will then form the basis of part of the system of optimization equations used to select food options for the user. The system and methods further map systems of linear and non-linear food ingredient vectors from databases in the system 1340 which form a matrix of food nutrition content. The matrices are then multiplied to optimize the weights of ingredients to ensure optimal blood and saliva chemistry for the user's body. The variance-covariance matrix is square and symmetric. The optimization equation weights have also considered groups of food ingredients that form the basis of prepared meals and recipes which are combinations of ingredients. The system then provides the user delivery and pick-up options for selected combinations of foods 1360. The implementation of methods is recursive and the optimal weights are being adjusted after each meal considering the historical ingredients consumed and blood and saliva sampling data that is submitted into the database of the system. The techniques and methods discussed herein may be devised with variations in many respects, and some variations may present additional advantages and/or reduce disadvantages with respect to other variations of these and other techniques and methods. Moreover, some variations may be implemented in combination, and some combinations may feature additional advantages and/or reduced disadvantages through synergistic cooperation and reweighting of the models through recursive optimization. The variations may be incorporated in various embodiments to confer individual and/or synergistic advantages upon such embodiments.


The embodiment of the method and system illustrated in FIGS. 14A, 14B, 14C, and 14D illustrate a representative food market with heterogeneous expectations. Traditionally, the buyer and seller have very different information. In an exemplary scenario, the seller, manufacturer, or cook knows the ingredient attributes, whereas the buyer may make a purchase without knowing the ingredient attributes or their chemistry effect on the blood. Surely, the buyer can do research on all of the ingredients, but generally the buyer does not have the same resources as the producer of the food, who has food scientists and research staff to understand the effects of the ingredient attributes on blood chemistry or other aspects of human health. Similarly, a mother or father may make a batch of cookies for their child, thinking that the act of making cookies is showing love to their child if consumed in reasonable quantities. However, if the father or mother did not know their child was gluten intolerant or had celiac disease, then, in fact, they were unknowingly inflicting pain on their child through the dietary choice. The implementation of the method considers that it is very costly for buyers and sellers of food to have homogeneous information, or even to reduce heterogeneous information, so that people make less sub-optimal food choices as consumers or that stores offer the wrong types of food to their primary demographics and customers. The implementation of the method has provided a solution for these problems and has greatly reduced or nearly eliminated the problem of heterogeneous information on food ingredients relative to personal blood chemistry and saliva chemistry. The implementation of the method allows both the restaurant and the customer to speak the same language of food chemistry for the respective blood and saliva chemistry while considering flavor, ethnicity, or style preferences. The implementation of the method allows both the grocery store and the customer to speak the same language of food chemistry for the respective blood and saliva chemistry while considering flavor, ethnicity, or style preferences. The implementation of the method allows both the family meal cook and the family member or friend to speak the same language of food chemistry for the respective blood and saliva chemistry while considering flavor, ethnicity, or style preferences. The implementation of the method allows both host of a party and all the guests to speak the same language of food chemistry for the respective blood and saliva chemistry of guests while considering flavor, ethnicity, or style preferences. Blood tests and saliva historically have been costly, which adds to the problem of heterogeneous information between food provider and food consumer. The implementation of the method and system covers the cost of the blood and saliva test, which can be self-administered with system equipment or administered by a lab in the system and method network. The method and system may reduce the overall food consumption of the user by providing mathematically rigorous and nutritional foods for the consumer's blood, which reduces food waste and wasted calorie consumption. The blood and saliva test may be self-administered through method and system equipment that is sent to the user or administered by a lab in the system. To quantify embodiments of the method and system, FIG. 14A illustrates a general utility function. The system and method assigns a utility function or “Foodie Score” 1410 to their diet preferences, which ranks through a series of neural network feedback on food styles, ethnicity, variety, and flavoring. The equation 1410 has the following variables: F(foodie score), which is the utility function, and E(Bblood chemistry), which is the current blood chemistry of a portfolio of ingredients minus 0.005, which is a scaling convention that allows the system and method to express the current blood chemistry of a portfolio of ingredients and the standard deviation of those ingredients to be a percentage rather than a decimal. The term A in 1410 is an index of the user's preference which is derived from using neural networks that have been trained on the users preferences. The term A in 1410 is continually updated in a recursive fashion to reflect the user's preferences in style, ethnicity, flavoring or other characteristics. The sigma term squared in 1410 is the variance of the blood chemistry of a portfolio of ingredients. The utility function or foodie score represents the notion that the foodie utility is enhanced or goes up when the blood chemistry is within target, and diminished or reduced by high variance blood chemistry or blood chemistry which brings the user out of target ranges. The extent by which the foodie or user is negatively affected by blood chemistry variance or blood chemistry outside of target ranges depends on the term A in 1410, which is the user's preference index. More dietary sensitive foodies or users may have a higher term A index value, as their blood chemistry is disadvantaged more by blood chemistry variance and out of range blood chemistry. A Foodie or user may pick meals or portfolios of ingredients based on the highest F(foodie score) in the equation in 1410. If a food ingredient or portfolio of ingredients has no variance to blood chemistry of the user, then a selection will have a utility or Foodie Score of the expected blood chemistry without variance as the sigma term in the equation in 1410 is equal to zero. The equation in 1410 provides a benchmark for the system and method to evaluate a meal's effect on blood chemistry. In the implementation of the method according to the equation in 1410, the term A determines preferences of the user, which then may cause a certain meal to be accepted or rejected based upon the effect to blood chemistry.


The implementation of the system and method is further represented in 1420 to take a simple two state case of blood chemistry for an exemplary user. If a user has an initial blood chemistry represented as a vector of attributes, and assume two possible results after eating an ingredient or a portfolio of ingredients as a meal with a vector of blood chemistry attributes, then probability of state one is p for state of Blood Chemistry 1 and a probability for the state two of blood chemistry 2 is (1-p). Accordingly, the expected value of blood chemistry, as illustrated in the set of equations in 1430, is E(Bblood chemistry) equals probability p multiplied by blood chemistry state 1 plus probability (1-p) multiplied by blood chemistry state 2. The variance or sigma squared of the blood chemistry is represented in 1440.


The embodiment of the method and system in FIG. 15A represents the tradeoff between the standard deviation of blood chemistry of a meal and the expected return of the blood chemistry of a meal. Meal Mmeal is preferred by Foodies with a high term A index value to any alternative meal in quadrant IV, because the expected value of the blood chemistry of the meal is expected to be equal to or greater than any meal in quadrant IV and a standard deviation of the meal blood chemistry is smaller than any meal in that quadrant. Conversely, any meal Mmeal in quadrant I is preferable to meal Mmeal because its expected blood chemistry is higher than or equal to Mmeal and the standard deviation of the blood chemistry of the meal M is equal to or smaller than meal Mmeal. FIG. 15B represents the inequality condition. Accordingly, if the expected value of the blood chemistry of a certain meal 1 is greater than or equal to the expected value of the blood chemistry of a certain meal 2 in 1520, and the standard deviation of the blood chemistry of a certain meal 1 is less than or equal to the standard deviation of the blood chemistry of a certain meal 2 in 1520, then at least one inequality is strict which rules out inequality.


The embodiment of the method and system in FIG. 16A supposes a Foodie identifies all the meals that are equally attractive from a utility and blood chemistry perspective to meal Mmeal2, starting at point meal Mmeal1, an increase in standard deviation of the blood chemistry of the meal lowers utility and must be compensated for by an increase in the expected value of the blood chemistry. Thus meal Mmeal2 is equally desirable to the Foodie as meal Mmeal1 along the indifference curve. Foodies are equally attracted to meals with higher expected value of blood chemistry and higher standard deviation of blood chemistry as compared to meals with lower expected value of blood chemistry and lower standard deviation of blood chemistry along the indifference curve. Equally desirable meals lie on the indifference meal curve that connects all meals with the same utility value.


The embodiment of the method and system in FIG. 16B examines meals along a Foodie's indifference curve with utility values of several possible meals for a Foodie with a term A index value of 4, as shown in table 1620. The table of combinations of meals 1620 illustrates as one embodiment an expected value of blood chemistry of a meal index of 10 and a standard deviation of the blood chemistry of the meal of 20%. Accordingly the Foodie Score or utility function is therefore 10 minus 0.005 multiplied by 4 multiplied by 400, which equals 2 as a utility score. FIG. 16B also illustrates 3 additional examples of various expected values of meal blood chemistry and standard deviation of a meals blood chemistry.



FIG. 14A, FIG. 14B, FIG. 15A, FIG. 15B, FIG. 16A, and FIG. 16B discuss the blood chemistry of a meal for a particular Foodie. Such meals are composed of various types of ingredients. Foodies may eat single ingredients or meals which combine ingredients. In some embodiments, adding a certain ingredient increases the utility of a Foodie's blood chemistry, while in some embodiments adding an ingredient decreases the utility. In many contexts, “Health Food” offsets the effects of “Unhealthy Food”. In one embodiment, dark chocolate is a power source of antioxidants which raises the utility of the blood chemistry. Chocolate may raise HDL cholesterol and protect LDL Cholesterol against oxidization. Too much chocolate lowers the utility of blood chemistry as it is high in saturated fat and sugar. Excessive sugar spikes the blood glucose chemistry which contributes to calories that do not have much nutrient value for the blood chemistry utility function, which puts as risk weight gain and other health complications. In one implementation of the method and system, a Foodie may think it is counterintuitive adding a seemingly indulgent ingredient or recipe that may actually increase the blood chemistry performance, as it can reduce the build-up of unwanted attributes and reduce the risk or standard deviation of the Foodie's blood chemistry towards an unwanted outcome. Although chocolate in and of itself may have an uncertain outcome and a negative effect on blood chemistry, chocolate combined with other ingredients and recipes may have an overall benefit towards blood chemistry. The helpful effects come from a negative correlation of individual ingredients. The negative correlation has the effect of smoothing blood chemistry for a certain Foodie user.


The embodiment of the method and system in FIG. 17A examines one exemplary probability distribution of a particular ingredient affecting the blood chemistry of a Foodie or user. State 1 probability of the rapini ingredient is 0.5 in table 1710, and the expected value of the rapini ingredient is to increase the blood chemistry by 25% towards the target blood chemistry range. State 2 probability of the rapini ingredient is 0.3 in table 1710 and the expected value of the rapini ingredient is to increase the blood chemistry by 10% towards the target blood chemistry range. State 3 probability of the rapini ingredient is 0.2 in table 1710 and the expected value of the rapini ingredient is to decrease the blood chemistry by 25% towards the target blood chemistry range. Accordingly the effect on the Foodie's blood chemistry is the mean or expected return on blood chemistry of the ingredient, which is a probability weighted average of expected return on blood chemistry in all scenarios, as shown in 1720. Calling Pr(s) the probability scenario s and r(s) the blood chemistry return in scenario s, we may write the expected return E(r) of the ingredient on blood chemistry, as is done in 1720. In FIG. 17B applying the formula of expected return of rapini on blood chemistry with the three possible scenarios in 1710, the expected return of rapini on blood chemistry of the Foodie is 10.5% toward the target range in the example in 1720. The embodiment of the method and system in FIG. 17C illustrates the variance and standard deviation of rapini on blood chemistry is 357.25 for variance and 18.99% for standard deviation, shown in 1730.


Exemplary embodiments of scenario probabilities vary amongst blood types and composites, so the method and system is not limited to a single set of weights, but rather the system learns new weights using neural network probability weightings with iterative feedback from blood sampling to ascertain recursive effects of food chemistry onto blood chemistry.


In an exemplary embodiment in FIG. 18A, the blood chemistry of a vector of ingredients is the weighted average of the blood chemistry of each individual ingredient, so the expected value of the blood chemistry of the meal is the weighted average of the blood chemistry of each individual ingredient, as represented in 1810. In the exemplary two ingredient combination of rapini and chocolate in 1810, the expected value of the combined blood chemistry is 7.75% toward the target blood chemistry range. The weight of an ingredient may be represented to incorporate serving size and calorie count as part of the measure of how ingredients affect blood chemistry.


In an exemplary embodiment in FIG. 18B, the standard deviation of the blood chemistry of the combined ingredients is represented in 1820.


Because the variance is reduced in the combination since the foods were not perfectly correlated, the exemplary implementation of the method and system illustrates that a Foodie or User may be better off in their blood chemistry by adding ingredients which have a negative correlation, yet positive expected value gain, to blood chemistry because the variance of the blood chemistry has been reduced. To quantify the diversification of various food ingredients we discuss the terms of covariance and correlation. The covariance measures how much the blood chemistry of two ingredients or meals move in tandem. A positive covariance means the ingredients move together with respect to the effects on blood chemistry. A negative covariance means the ingredients move inversely with their effect on blood chemistry. To measure covariance we look at surprises of deviations to blood chemistry in each scenario. In the following implementation of the method and system as stated in 1830 of FIG. 18C, the product will be positive if the blood chemistry of the two ingredients move together across scenarios, such as if both ingredients exceed their expectations on effect on blood chemistry or both ingredients fall short together. If the ingredients effect on blood chemistry move in such a way that when Rapini has a positive effect on blood chemistry and chocolate has a negative effect on blood chemistry, then the product of the equation in 1830 would be negative. Equation 1840 in FIG. 18D is thus a good measure of how the two ingredients move together to affect blood chemistry across all scenarios, which is defined as the covariance.


In an exemplary embodiment in FIG. 19A, an easier statistic to interpret than covariance is the correlation coefficient, which scales the covariance to a value between negative 1 (perfect negative correlation) and positive 1 (perfect positive correlation). The correlation coefficient between two ingredients equals their covariance divided by the product of the standard deviations. In FIG. 19A, using the Greek letter rho, we find in equation 1910 the formula for correlation in an exemplary embodiment. The correlation equation 1910 can be written to solve for covariance or correlation. Studying equation 1910, one may observe that foods which have a perfect correlation term of 1 have their expected value of blood chemistry as just the weighted average of the any two ingredients. If the correlation term in 1910 has a negative value, then the combination of ingredients lowers the standard deviation of the combined ingredients. The mathematics of equations 1910 and 1920 of FIG. 19B show that foods can have offsetting effects which can help overall target blood chemistry readings and health. Combinations of ingredients where the ingredients are not perfectly correlated always offer a better combination to reduce blood chemistry volatility while moving more efficiently toward target ranges.


In an exemplary embodiment in FIG. 19B, the impact of the covariance of individual ingredients on blood chemistry is apparent in the formula in 1920 for blood chemistry variance.


The most fundamental decision of a Foodie is how much of each food should you eat, and how will it affect my health and blood chemistry. Therefore, one implementation of the method and system covers the blood chemistry tradeoff between combinations of ingredients, dishes, various portfolios of ingredients, recipes, meals, prepared dishes, or restaurant entrees.


In an exemplary embodiment in FIG. 19C, recalling the Foodie Score or Utility equation of a user in 1410 of FIG. 14A, the Foodie attempts to maximize his or her utility level or Foodie score by choosing the best allocation of a portfolio of ingredients or menu selection written as the equation in 1930.


Constructing the optimal portfolio of ingredients, recipe, menu, or meal is a complicated statistical task. The principle that the method and system follow is the same used to construct a simple two ingredient recipe or combination in an exemplary scenario. To understand the formula for the variance of a portfolio of ingredients more clearly, we must recall that the covariance of an ingredient with itself is the variance of that ingredient, such as written in FIG. 20A. Wing1 and Wing2 of matrix 2010 are short for the weight associated with ingredient or meal 1 and ingredient or meal 2. The matrix 2010 is simply the bordered covariance matrix of the two ingredients or meals.


In the embodiment of the method and system in FIG. 20B, the descriptive statistics for two ingredients are listed as the expected value and standard deviation, as well as covariance and correlation between the exemplary ingredients. The parameters for the joint probability distribution of returns is shown in matrix 2020 of FIG. 20B.


The embodiments of the method and system in FIG. 21A and FIG. 21B illustrate an exemplary scenario of experiment with different proportions to observe the effect on the expected blood chemistry and variance of blood chemistry. Suppose the proportion of the meal weight of rapini is changed. The effect on the blood chemistry is plotted in FIG. 21A. When the proportion of the meal that is rapini varies from a weight of zero to one, the effect on blood chemistry change toward the target goes from 13% (expected blood chemistry of chocolate) to 8% (expected blood chemistry of rapini). Of course, varying proportions of a meal also has an effect on the standard deviation of blood chemistry. FIG. 21B presents various standard deviation for various weights of rapini and chocolate, as shown in table 2120.


In the exemplary case of the meal combination blood chemistry standard deviation, when correlation rho is at 0.30, as shown in FIG. 22A, with the thick curved black line labeled rho=0.3. Note that the combined meal blood chemistry of rapini and chocolate is a minimum variance combination that has a standard deviation smaller than that of either rapini or chocolate as individual ingredients. FIG. 22A highlights the effect of ingredient combinations lowering overall standard deviation. The other three lines in FIG. 22A show how blood chemistry standard deviation varies for other values of the correlation coefficient, holding the variances of the ingredients constant. The dotted curve where rho=0 in FIG. 22A depicts the standard deviation of blood chemistry with uncorrelated ingredients. With the lower correlation between the two ingredients, combination is more effective and blood chemistry standard deviation is lower. We can see that the minimum standard deviation of the meal combination in table 2120 shows a value of 10.29% when rho=0. Finally the upside down triangular broken dotted line represents the potential case where rho=−1 and the ingredients are perfectly negatively correlated. In the rho=−1 case, the solution for the minimum variance combination is a rapini weight of 0.625 and a chocolate weight of 0.375, as shown in FIG. 22A. The method and system can combine FIG. 21A and FIG. 22A to demonstrate the relationship between the ingredients combination's level of standard deviation to blood chemistry and the expected improvement or decline in expected blood chemistry given the ingredient combination parameters as shown in 2220 of FIG. 22B.


The embodiment illustrated in FIG. 22B shows for any pair of ingredients or meals which may be illustrated for an exemplary case, but not limited to the exemplary case w(chocolate) and w(rapini), the resulting pairs of combinations from 2210, 2120, and 2110 are plotted in 2220. The solid curved line in 2220 labeled with rho=0.3 shows the combination opportunity set while correlation equals 0.3. The name opportunity set is used because it shows the combination of expected blood chemistry and standard deviation of blood chemistry of all combinations that can be constructed from the two available ingredients. The broken dotted lines show the combination opportunity set for the other values of the correlation coefficient. The line farthest to the right, which is the straight line connecting the combinations where the term rho equals one, shows there are no benefits to blood chemistry from combinations between ingredients where the correlation between the two ingredients is perfectly positive or where the term rho equals one. The opportunity set is not “pushed” to the northwest. The curved dotted line to the left of the curved solid line where the term rho equals zero shows that there are greater benefits to blood chemistry when the correlation coefficient between the two ingredients is zero than when the correlation coefficient is positive. Finally the broken line where the term rho equals negative one shows the effect of perfectly negative correlation between ingredients. The combination opportunity set is linear, but offers the perfect offset between ingredients to move toward target blood chemistry. In summary, although the expected blood chemistry of any combination of ingredients is simply the weighted average of the ingredients expected blood chemistry, this is not true for the combination of ingredients standard deviation. Potential benefits from combinations of ingredients arise when correlation is less than perfectly positive. The lower the correlation coefficient, the greater the potential benefit of combinations. In the extreme case of perfect negative correlation between ingredients, the method and system show a perfect offset to blood chemistry and we can construct a zero-variance combination of ingredients.


Suppose the exemplary case where the Foodie wishes to select the optimal combination from the opportunity set. The best combination will depend upon the Foodie's preferences and aversion to the standard deviation of ingredients. Combinations of ingredients to the northeast in FIG. 22B provide higher movements towards expected target blood chemistry, but impose greater levels of volatility of ingredients on blood chemistry. The best trade-off among these choices is a matter of personal preference. Foodies with greater desire to avoid volatility in their blood chemistry will prefer combinations of ingredients in the southwest, with lower expected movement toward target blood chemistry, but lower standard deviation of blood chemistry.


In the embodiment illustrated in FIG. 22B, most Foodies recognize the really critical decision is how to divvy up their selection amongst ingredients or meal combinations. In the embodiment of the method and system in FIG. 23A, the exemplary diagram is a graphical solution. FIG. 23A shows the opportunity set generated from the joint probability distribution of the combination of ingredients rapini and chocolate using the data from FIG. 21B. Two possible allocation lines are drawn in 2310 of FIG. 23A and labeled “Foodie allocation line”. The first Foodie allocation line (A) is drawn through the minimum variance ingredient combination point A, and which is divided as 82% rapini and 18% chocolate. The ingredient combination has an expected target blood chemistry movement of 8.9% and its standard deviation is 11.45% blood chemistry. The reward to variability ratio or slope of the Foodie allocation line combining a zero variance ingredient (which may be certain types of water) with rapini and chocolate with the aforementioned weights of 82% rapini and 18% chocolate, forms an equation listed in FIG. 23B. Accordingly the exemplary slope 2320 of Foodie Allocation Line (A) is 0.34. Considering the embodiment in FIG. 23A of Foodie allocation line (B), the ingredient combination was 70% rapini and 30% chocolate, with the expected movement towards target blood chemistry is 9.5%. Thus the reward to variability ratio or slope of Foodie allocation line(B) is 9.5 minus 5 divided by 11.7, which equals 0.38 or a steeper slope as illustrated in FIG. 23A. If the Foodie allocation line (B) has a better reward to variability ratio than the Foodie allocation line (A), then for any level of standard deviation that a Foodie is willing to bear, the expected target blood chemistry movement is higher with the combination of point B. FIG. 23B illustrates the aforementioned exemplary case, showing that Foodie allocation line (B) intersection with the opportunity set at point B is above the Foodie allocation line (A) intersection with the opportunity set point A. In this case, point B allocation combination dominates point A allocation combination. In fact, the difference between the reward to variability ratio is the difference between the two Foodie allocation line (A) and (B) slopes. The difference between the two Foodie allocation line slopes is 0.38-0.34=0.04. This means that the Foodie gets four extra basis points of expected blood chemistry movement toward the target with Foodie allocation line (B) for each percentage point increase in standard deviation of blood chemistry. If the Foodie is willing to bear a standard deviation of blood chemistry of 4%, the Foodie can achieve a 5.36% (5+4×0.34) expected blood chemistry movement to the target range along Foodie allocation line (A), and, with Foodie allocation line (B), the Foodie can achieve an expected movement of blood chemistry to the target of 6.52% (5+4×0.38). Why stop at point B? The Foodie can continue to ratchet up the Foodie allocation line until it ultimately reaches the point of tangency with the Opportunity set. This aforementioned exemplary scenario in FIG. 23A must yield the Foodie allocation line with the highest feasible reward to variability ratio.


The embodiment illustrated in exemplary scenario FIG. 24A shows the highest sloping Foodie allocation line (C) at point P intersecting with the opportunity set. Point P is the tangency combination of ingredients where the expected blood chemistry target movement is the highest relative to the opportunity set and standard deviation of ingredients or meal combinations, as shown in 2410. The optimal combination or allocation of ingredients is labeled point P. At Point P, the expected blood chemistry movement to the target is 11% while the standard deviation of point P is 14.2%. In practice, we obtain the solution to the method and system with a computer program with instructions to perform the calculations for the Foodie. The method process to obtain the solution to the problem of the optimal mix of ingredients or dish combinations of weight rapini and weight chocolate, or any other combination of ingredients, is the objective of the method and system.


There are many approaches toward optimization which are covered under method and system to optimize blood chemistry through food ingredients which may be utilized for computational efficiency, but the method and system may use as one approach of many approaches where the method finds the weights for various ingredients that result in the highest slope of the Foodie allocation line (C), as shown in 2410. In other words, the method and system may find the weights that result in the variable combination with the highest reward to variability ratio. Therefore the objective function of the method and system may maximize the slope of the Foodie allocation line for any possible combination of ingredients. Thus the objective function of the method and system may show the slope as the ratio of the expected blood chemistry of the combination of ingredients less the blood chemistry of a zero standard deviation blood chemistry ingredient (perhaps water) divided by the standard deviation of the combination of ingredients, as illustrated in FIG. 24B. For the combination of ingredients with just two ingredients, the expected blood chemistry movement toward the target and standard deviation of blood chemistry of the combination of ingredients is illustrated in FIG. 24B. When the method and system maximize the objective function, the slope of the foodie allocation line is subject to the constraint that the combination weights sum to one or one hundred percent, as shown in 2420 of FIG. 24B. In other words the weight of the rapini plus the weight of the chocolate must sum to one. Accordingly, the method and system may solve a mathematical problem formulated as shown in FIG. 25A, which is the standard problem in calculus: maximize the slope of the foodie allocation line subject to the condition that the sum of the weight of all the ingredients will sum to one.


In the embodiment case illustrated in FIG. 25B, the exemplary case may include two ingredients or meal combinations, but the system and method are able to process any amount of ingredients or meal combinations with an extension of the calculus equations of 2510 in FIG. 25A. In the exemplary case of only two ingredients, FIG. 25B illustrates the solution for the weights of the optimal blood chemistry combination of ingredients. Data from 2110, 2120, 2310, 2410, 2420, and 2510 have been substituted in to give the weights of rapini and chocolate in FIG. 25B an exemplary case. The expected blood chemistry has moved 11% toward the target blood chemistry, which incorporates the optimal weights for rapini and chocolate in this exemplary case in 2410, and where the standard deviation is 14.2% in FIG. 24A. The foodie allocation line using the optimal combination in 2510 and 2520 has a slope of 0.42=(11−5)/14.2, which is the reward to variability ratio of blood chemistry. Notice how the slope of the foodie allocation line exceeds the slope of foodie allocation line (B) and foodie allocation line (A) in FIG. 23A, as it must if it is to be the slope of the best feasible foodie allocation line. A foodie with a coefficient term A in FIG. 14A equal to 4 would then make a combination as follows in FIG. 25C. Thus the foodie would select 74.39% of her/his food allocatin in the combination of rapini and chocolate and 25.61% in water or an ingredient which has zero standard deviation to blood chemistry, as shown in 2530 of FIG. 25C. Of the 74.39% of the food ingredient selection, 40% of the 74.39% or (0.4×0.7439=0.2976) would go to rapini and 60% of 74.39% or (0.60×0.7439=0.4463) would go toward chocolate. The graphical solution of the equations in FIG. 25A, FIG. 25B and FIG. 25C is illustrated in FIG. 26A.


Once the specific two ingredient case has been explained for the method and system, generalizing the embodiment to the case of many ingredients is straightforward. The summarization of steps are outlined in FIG. 26B.


The embodiment of FIG. 27A illustrates a combination of ingredients for the optimal combination in the form of a pie chart. Before moving on it is important to understand that the two ingredients described could be meals or combinations of ingredients. Accordingly the method and system may consider the blood chemistry characteristics of single ingredients or combinations of ingredients, which can then form an ingredient as a meal, such as expected blood chemistry, variance and covariance and correlation. Accordingly there can be diversification within ingredients, as some ingredients are combinations of ingredients.


Now we can generalize the two ingredient embodiment of the method and system to the case of many ingredients alongside water or an ingredient with near zero blood chemistry variance or standard deviation. As in the case of the two ingredient embodiment, the problem is solved by the method and system in three parts. First, we identify the expected blood chemistry contribution of the ingredient and standard deviation of that ingredient contribution to blood chemistry. Second, the method and system identifies the optimal combination of ingredients by finding the combination weights that result in the steepest foodie allocation line. Last, the method and system may choose an appropriate complete combination by mixing the combination of water or a zero blood chemistry standard deviation ingredient with the combination of ingredients that carry various standard deviation and correlations. The ingredient opportunities available to the Foodie must be determined in the method and system. These ingredient opportunities are summarized by the minimum variance blood chemistry frontier of ingredients. This frontier is a graph of the lowest possible combination variances that can be attained for a given combination of expected blood chemistry contribution. Given the set of data for expected blood chemistry contribution, variances and covariances of blood chemistry, and expected covariances of blood chemistry of combinations, we can calculate the minimum blood chemistry variance combination for any targeted blood chemistry contribution. Performing such calculations for many such expected blood chemistry combinations results in a pairing between expected blood chemistry contributions and minimum variance blood chemistry contributions that offer the expected blood chemistry contributions. The plot of these expected blood chemistry contribution and standard deviation pairs are presented in FIG. 27B. Notice that all ingredients lie to the right of the frontier. This tells us that combinations that consist only of a single ingredient are inefficient relative to combinations. Adding many ingredients leads to combinations with higher expected blood chemistry contribution and lower standard deviations, shown in 2720 of FIG. 27B. All the combinations in FIG. 27B that lie on the minimum variance frontier from the global minimum variance portfolio and upward provide the best expected blood chemistry contribution and standard deviation of blood chemistry combinations and thus are candidates for the optimal combination. The part of the frontier that lies above the global minimum variance combination is called the efficient frontier. For any combination on the lower portion of the minimum variance frontier, there is a combination with the same standard deviation of blood chemistry but higher expected blood chemistry contribution positioned directly above it. Hence the bottom part of the minimum variance frontier is inefficient.


The second part of the optimization plan involves water or a zero standard deviation blood chemistry ingredient. As before, the method and system search for the foodie allocation line with the highest reward to variability ratio (that is the steepest slope) as shown in FIG. 26A. The foodie allocation line that is supported by the optimal combination point P, is, as before, the combination that is tangent to the efficient frontier. This foodie allocation line dominates all alternative feasible lines. Therefore, combination P in FIG. 26A is the optimal ingredient combination.


Finally, for the last part of the embodiment of the method and system, the Foodie choses the appropriate mix between the optimal ingredient combination and a zero blood chemistry variance ingredient which may include water. In FIG. 26A, the point where Foodie allocation line (C) has a zero standard deviation value is where the expected blood chemistry target movement is 5% or point F.


Now let us consider in the method and system each part of the combination construction problem in more detail. In the first part of the Foodie problem, the analysis of the expected blood chemistry of the ingredient, the Foodie needs, as inputs, a set of estimates of expected blood chemistry target movement for each ingredient and a set of estimates for the covariance matrix, which the method and system provide for the Foodie through the system application.


Suppose that the time period of the analysis for the combination of ingredients between blood and saliva tests was one year. Therefore all calculations and estimates pertain to a one year plan under the method and system. The database system contains the variable n ingredients, where n could be any amount of ingredients. As of now, time zero, we observed the expected blood chemistry of the ingredients such that each ingredient is given the variable label i and an index number of n at time zero. Then the system and method determine how the ingredient affects the Foodie's blood chemistry at the end of one year or time equal to one year. The covariances of the ingredients effects on blood chemistry are usually estimated from historical data for both the Foodie and from Foodie users in the database with similar characteristics. Through the method and system, the Foodie is now armed with the n estimates of the expected effect on blood chemistry of each ingredient and then the n×n estimates in the covariance matrix, in which the n diagonal elements are estimates of the variances of each ingredient. The n squared minus n equals n multiplied by the quantity of n minus 1 off diagonal elements are the estimates of the covariances between each pair of ingredient blood chemistries. We know that each covariance appears twice in the aforementioned table, so actually we have n(n−1)/2 different covariance estimates. If the Foodie user considers 50 ingredients or meal combinations, the method and system need to provide 50 estimates of expected blood chemistry results for each respective ingredient or meal combination and (50×49)/2=1,225 estimates of covariances, which is a daunting task without the assistance of the method and system computer application program. Once these estimates are compiled by the method and system, the expected blood chemistry and variance of any combination of ingredients with weights for any of the respective ingredients can be calculated by the general formulas in FIG. 28A.


The general embodiment of an exemplary case of the method and system in FIG. 28A states the expected blood chemistry toward the target blood chemistry of each ingredient and the variance of the blood chemistry of each ingredient, such that the weights of each ingredient can be calculated, as shown in 2810. While many people say “eat a wide variety of food” or “eat a balanced diet” or “don't put all your eggs in one basket”, no method or system has attempted to accurately quantify these statements in such a way that mathematics and science can be used to easily make a map for eating. The system and method have coined the phrase, as GPS is to driving, Foodie Body or the blood and saliva to food algorithms are to eating. No longer will Foodies or users guess at how nutrition is affecting their blood and overall health, as math and science will map their progress with a quantitative method and system. The principle behind the method and system is that a Foodie can quantify the set of ingredient combinations that give the highest blood chemistry result to maximize human health and productivity. Alternatively, the efficient frontier in FIG. 27B is the set of ingredient combinations that minimize the variance of blood chemistry for any target blood chemistry. The result is the most efficient method empirically and quantitatively to consume food for human health.


The points marked by rectangles in the exemplary embodiment in FIG. 28B are the result of variance—minimization calculations in the method and system. First we draw the constraint: that is, a horizontal line at the level of required expected blood chemistry target. We then look for the combination of ingredients (point P) with the lowest standard deviation that plots on the Foodie allocation line, as shown in 2820. We then discard the bottom of the minimum variance frontier below the global minimum variance combination as it is inefficient and points above the global minimum variance combination have higher blood chemistry contribution to the target, but a similar standard deviation. Restating the solution that the method and system has completed thus far, the estimate generated by the Foodie utilizing the method and system transforms ingredients and ingredient combinations into a set of expected blood chemistry statistics toward the user's blood chemistry and a covariance matrix of how the ingredients are correlated. This group of estimates shall be called the input list. This input list is then fed into the optimization system and method. Before we proceed to the second step of choosing the optimal combination of ingredients for blood or saliva chemistry, some Foodies may have additional constraints. For example, many Foodies have allergies which preclude certain food ingredient types. The list of potential constraints is large and the method and system allows for the addition of constraints in the optimization method and system. Foodie users of the system and method may tailor the efficient set of ingredients to conform to any desire of the Foodie. Of course, each constraint carries a price tag in the sense that an efficient frontier constructed subject to extra constraints may offer a reward to variability ratio inferior to that of a less constrained set. The Foodie is made aware of this cost through the system and method application and should carefully consider constraints that are not mandated by law or allergies.


Proceeding to step two in the method and system, this step introduces water or a zero variance blood chemistry ingredient that has positive blood chemistry attributes. As before, we ratchet up the Foodie allocation line by selecting different combinations of ingredients until combination P is reached, which is the tangency point of a line from point F to the efficient frontier. Ingredient combination P maximizes the reward to variability ratio, the slope of the Foodie allocation line from point F to combinations on the efficient frontier set.


The method and system embodiment of the general exemplary case may be written in one form as in FIG. 29. Vectors are used to capture variable d inputs or as many inputs as are required to weight in FIG. 29. The method and system may use other techniques to express combination blood and saliva expected target chemistry and variances, but it is convenient to handle large combinations of ingredients in matrix form in FIG. 29.


The method and system embodiment in FIG. 30, FIG. 31 and FIG. 32 illustrate one exemplary entry in the system database which measures the nutrition content and standard deviation toward blood and saliva chemistry for egg, yolk, raw, frozen or pasteurized. The method and system database for food 160 may have a mixture of United States Department of Agriculture data and proprietary food data that has higher degrees of differentiation in nutrition levels.


The method and system embodiment illustrated in FIG. 33 may be one of many distribution and education channels where a retail concept store combines a food database laboratory and a dining experience for the foodie or user. A Foodie may walk into the door 3310 of the retail experience and be given an opportunity to move into the blood laboratory 3330 where they will be given appetizers in a high tech learning center blood lab 3330. Monitor screens or projection devices, both in 2D and 3D, and mixed reality or augmented reality may project visualizations of blood chemistry interactions with food chemistry 3320. After the lab technician secures a blood and saliva sample from the foodie 3340, the user may go into the dining room 3350. In the dining room of the concept retail experience 3350, Foodie experts will assist Foodies with menu selection of blood and saliva optimized food 3360. While FIG. 33 illustrates a retail concept store for the method and system, the method and system may have many outlets such as any grocery store, restaurant, or food distribution point.


The flow chart illustrated in FIG. 34 for an exemplary scenario of the method and system, a Foodie goes to a lab or orders a self-diagnostic kit 3410. Depending on the Foodies decision 3410 the Foodie either sends in self-test to system 3420 or the lab sends in the results to the system 3430. The blood and/or saliva samples are then entered into the blood and saliva database 3440. The user or Foodie interacts with the system and method to update or select constraints and preferences in their account profile on the system 3450. The method and system recursively updates the algorithm weights and selection combination ingredients based on the optimization program from the system and method based on the foodies blood and saliva chemistry 3460. The Foodie or user then selects either pick up at a food distribution point (grocery store, convenience store, restaurant or other food distribution point) or selects delivery to a point the user desires 3470. The user or foodie may take delivery 3490 or pick up the food at a food distribution point 3480.


The aforementioned description, for purpose of explanation, has been described with reference to specific embodiments. However the illustrative discussions above are not intended to be exhaustive or to limit the invention to the precise forms disclosed. Many modifications and variations are possible in view of the above teachings. The embodiments were chosen and described in order to best explain the principles of the invention and its practical applications, to thereby enable others skilled in the art to best utilize the invention and various embodiments with various modifications as are suited to the particular use contemplated.

Claims
  • 1. A method, comprising: receiving, over one or more wired or wireless networks, consumption data from one or more user interfaces associated with a user, wherein the consumption data comprises data corresponding to a plurality of food ingredients consumed by the user;obtaining, over the one or more wired or wireless networks, one or more biological samples data from the user after the plurality of food ingredients have been consumed by the user;storing the one or more biological samples data on a first server;determining, by one or more computer processing units electronically coupled to the first server, biomarker data for the user based on the one or more biological samples data, wherein the biomarker data comprises data corresponding to one or more measurement levels of one or more biomarkers for the user;determining, by the one or more computer processing units, a plurality of expected blood chemistry values of the plurality of food ingredients for the user based on the consumption data and the biomarker data;determining, by the one or more computer processing units, a plurality of standard deviation values of the plurality of food ingredients for the user based on the consumption data, the biomarker data, and the plurality of expected blood chemistry values;determining, by the one or more computer processing units, a plurality of food combinations based on the plurality of food ingredients, wherein a respective food combination comprises two or more food ingredients of the plurality of food ingredients;training a neural network to determine a plurality of optimized weight values for the respective food combination for the user based on the plurality of expected blood chemistry values and the plurality of standard deviation values, wherein the optimized weight values correspond to neural network probability weightings with iterative feedback from the one or more biological samples data;determining, by the one or more computer processing units, a plurality of optimized food combinations based on the plurality of optimized weight values, wherein the plurality of optimized food combinations is a subset of the plurality of food combinations; andreceiving, by one or more user interfaces associated with user over the one or more wired or wireless networks, selection data from the user, wherein the selection data comprises data corresponding to a selection by the user of one or more selected food combinations from the plurality of optimized food combinations.
  • 2. The method of claim 1, wherein the one or more biological samples data comprise one or more blood samples data, one or more saliva samples data, or combinations thereof; and further comprising: providing, by the one or more computer processing units, the one or more selected food combinations to the user using one or more drones, one or more autonomous vehicles, or combinations thereof.
  • 3. The method of claim 1, wherein determining the plurality of expected blood chemistry values comprises: determining a plurality of return values of the plurality of food ingredients for the user based on the consumption data and the biomarker data, wherein a respective return value of a respective food ingredient corresponds to an increase or a decrease of the one or more measurement levels towards a target range after the respective food ingredient has been consumed by the user;determining a plurality of probability weight values for the plurality of return values based on the consumption data and the biomarker data; anddetermining the plurality of expected blood chemistry values based on the plurality of return values and the plurality of probability weight values.
  • 4. The method of claim 3, wherein determining the plurality of standard deviation values comprises determining the plurality of standard deviation values based on the plurality of expected blood chemistry values, the plurality of return values, and the plurality of probability weight values.
  • 5. The method of claim 1, wherein the respective food combination comprises a dish, a meal, a food product, or combinations thereof.
  • 6. The method of claim 1, wherein the one or more measurement levels of the one or more biomarkers comprise one or more measurement levels for complete blood count, red blood cell, white blood cell, platelets, hemoglobin, hematocrit, mean corpuscular volume, blood chemistry tests, basic metabolic panel, blood glucose, calcium, electrolytes, kidneys, blood enzyme test, troponin, creatine kinase, cholesterol, LDL cholesterol, HDL cholesterol, triglyceride, lipoprotein panel, coagulation panel, or combinations thereof.
  • 7. The method of claim 1, wherein determining the plurality of food combinations comprises: receiving nutritional data corresponding to the plurality of food ingredients; anddetermining the plurality of food combinations based on the nutritional data.
  • 8. The method of claim 1, wherein determining the plurality of food combinations comprises: receiving constraint data from the user, wherein the constraint data comprises data corresponding to one or more dietary preferences of the user;determining a plurality of constrained ingredients based on the constraint data, wherein the plurality of constrained ingredient comprises at least a subset of the plurality of food ingredients; anddetermining the plurality of food combinations based on the plurality of constrained ingredients, wherein the respective food combination comprises two or more constrained ingredients of the plurality of constrained ingredients.
  • 9. The method of claim 1, wherein the respective optimized weight value further corresponds to a serving proportion for the respective food ingredient of the respective food combination, wherein the serving proportion comprises a serving size proportion for the respective food ingredient, a calorie count proportion for the respective food ingredient, or combinations thereof.
  • 10. The method of claim 1, wherein a sum of the plurality of optimized weight values for the respective food combination is equal to one.
  • 11. The method of claim 1, wherein determining the plurality of optimized weight values comprises: determining a plurality of candidate weight values for the respective food combination;determining a plurality of combined expected values for the respective food combination for the user based on the plurality of candidate weight values and the plurality of expected blood chemistry values;determining a plurality of covariance values for the plurality of food combinations based on the plurality of expected blood chemistry values, the biomarker data, and the consumption data, wherein a respective covariance value corresponds to the respective food combination;determining a plurality of combined standard deviation values for the respective food combination based on the plurality of candidate weight values, the plurality of standard deviation values of the plurality of food ingredients, and the respective covariance value; anddetermining the plurality of optimized weight values for the respective food combination based on the plurality of combined expected values and the plurality of combined standard deviation values.
  • 12. The method of claim 11, wherein determining the plurality of optimized weight values for the respective food combination based on the plurality of combined expected values and the plurality of combined standard deviation values comprises: determining an opportunity set for the respective food combination based on the plurality of combined expected values and the plurality of combined standard deviation values;determining one or more allocation lines based on the opportunity set; anddetermining the plurality of optimized weight values for the respective food combination based on the one or more allocation lines.
  • 13. The method of claim 12, wherein: determining the one or more allocation lines comprises determining a tangent line corresponding to the opportunity set; anddetermining the plurality of optimized weight values for the respective food combination based on the one or more allocation lines comprises determining the plurality of optimized weight values for the respective food combination based on the tangent line and the opportunity set.
  • 14. The method of claim 12, wherein determining the plurality of optimized weight values for the respective food combination based on the one or more allocation lines comprises: determining one or more slope values for the one or more allocation lines based on the plurality of combined expected values, the plurality of combined standard deviation values, and an expected blood chemistry value of a zero standard deviation value food ingredient;determining a maximum slope value of the one or more slope values; anddetermining the plurality of optimized weight values for the respective food combination based on the maximum slope value, the plurality of expected blood chemistry values, the plurality of standard deviation values of the plurality of food ingredients, and the respective covariance value.
  • 15. The method of claim 1, wherein determining the plurality of optimized food combinations comprises: determining a plurality of utility values for the plurality of food combinations based on the plurality of optimized weight values and one or more utility functions, wherein the one or more utility functions correspond to one or more user preferences of the user; anddetermining the plurality of optimized food combinations based on the plurality of utility values.
  • 16. The method of claim 1, further comprising generating a display of the plurality of optimized food combinations for the user.
  • 17. A method, comprising: receiving, over one or more wired or wireless networks, consumption data from one or more user interfaces associated with a user, wherein the consumption data comprises data corresponding to a plurality of food ingredients consumed by the user;obtaining, over the one or more wired or wireless networks, one or more biological samples data from the user after the plurality of food ingredients have been consumed by the user;storing the one or more biological samples data on a first server;determining, by one or more computer processing units electronically coupled to the first server, biomarker data for the user from the one or more biological samples data, wherein the biomarker data comprises data corresponding to one or more measurement levels of one or more biomarkers for the user;determining, by the one or more computer processing units, a plurality of expected blood chemistry values of the plurality of food ingredients for the user based on the consumption data and the biomarker data;determining, by the one or more computer processing units, a plurality of standard deviation values of the plurality of food ingredients for the user based on the consumption data, the biomarker data, and the plurality of expected blood chemistry values;determining, by the one or more computer processing units, a plurality of food combinations based on the plurality of food ingredients, wherein a respective food combination comprises two or more food ingredients of the plurality of food ingredients;generating a neural network to determine a plurality of optimized weight values for the respective food combination for the user based on the plurality of expected blood chemistry values and the plurality of standard deviation values, wherein a respective optimized weight value corresponds at least partially to a neural network weighting of a respective food ingredient of the respective food combination or a serving proportion for the respective food ingredient of the respective food combination;determining, by the one or more computer processing units, a plurality of optimized food combinations based on the plurality of optimized weight values, wherein the plurality of optimized food combinations is a subset of the plurality of food combinations; andreceiving, by one or more user interfaces associated with user over the one or more wired or wireless networks, selection data from the user, wherein the selection data comprises data corresponding to a selection by the user of one or more selected food combinations from the plurality of optimized food combinations.
  • 18. The method of claim 17, further comprising: providing, by the one or more computer processing units, the one or more selected food combinations to the user using one or more drones, one or more autonomous vehicles, or combinations thereof; andwherein determining the plurality of optimized weight values comprises:determining a plurality of candidate weight values for the respective food combination;determining a plurality of combined expected values for the respective food combination for the user based on the plurality of candidate weight values and the plurality of expected blood chemistry values;determining a plurality of covariance values for the plurality of food combinations based on the plurality of expected blood chemistry values, the biomarker data, and the consumption data, wherein a respective covariance value corresponds to the respective food combination;determining a plurality of combined standard deviation values for the respective food combination based on the plurality of candidate weight values, the plurality of standard deviation values of the plurality of food ingredients, and the respective covariance value; anddetermining the plurality of optimized weight values for the respective food combination based on the plurality of combined expected values and the plurality of combined standard deviation values.
US Referenced Citations (312)
Number Name Date Kind
D209710 Bruce Dec 1967 S
4476954 Johnson et al. Oct 1984 A
D318073 Jang Jul 1991 S
5412560 Dennison May 1995 A
5604676 Penzias Feb 1997 A
5726885 Klein et al. Mar 1998 A
5751245 Klein et al. Mar 1998 A
5973619 Paredes Oct 1999 A
6175831 Weinreich et al. Jan 2001 B1
6240396 Walker et al. May 2001 B1
6285999 Page Sep 2001 B1
D453945 Shan Feb 2002 S
6356838 Paul Mar 2002 B1
D460952 Kataoka Jul 2002 S
6421606 Asai et al. Jul 2002 B1
6434530 Sloane et al. Aug 2002 B1
D468738 Lin Jan 2003 S
D469089 Lin Jan 2003 S
6609103 Kolls Aug 2003 B1
6618062 Brown et al. Sep 2003 B1
6646659 Brown et al. Nov 2003 B1
6663564 Miller-Kovach et al. Dec 2003 B2
6708879 Hunt Mar 2004 B2
6850907 Lutnick et al. Feb 2005 B2
7090638 Vidgen Aug 2006 B2
7373320 Mcdonough May 2008 B1
D590396 Lo Apr 2009 S
7584123 Karonis et al. Sep 2009 B1
7634442 Alvarado et al. Dec 2009 B2
7680690 Catalano Mar 2010 B1
7680770 Buyukkokten et al. Mar 2010 B1
7711629 Laurent et al. May 2010 B2
7747739 Bridges et al. Jun 2010 B2
7756633 Huang et al. Jul 2010 B2
7788207 Alcorn et al. Aug 2010 B2
D628171 Hakopian Nov 2010 S
7886166 Shnekendorf et al. Feb 2011 B2
D638879 Suto May 2011 S
7987110 Cases et al. Jul 2011 B2
8024234 Thomas et al. Sep 2011 B1
8065191 Senior Nov 2011 B2
D650385 Chiu Dec 2011 S
8121780 Gerdes et al. Feb 2012 B2
8249946 Froseth et al. Aug 2012 B2
8296335 Bouve et al. Oct 2012 B2
8388451 Auterio et al. Mar 2013 B2
8570244 Mukawa Oct 2013 B2
8762035 Levine et al. Jun 2014 B2
8798593 Brown et al. Aug 2014 B2
8918411 Latif et al. Dec 2014 B1
8920175 Black et al. Dec 2014 B2
8930490 Brown et al. Jan 2015 B2
8968099 Hanke et al. Mar 2015 B1
9011153 Bennett Apr 2015 B2
9020763 Faaborg et al. Apr 2015 B2
9077204 More et al. Jul 2015 B2
9092826 Deng et al. Jul 2015 B2
9159088 Dillahunt Oct 2015 B2
9213957 Stefik et al. Dec 2015 B2
9274540 Anglin et al. Mar 2016 B2
9292764 Yun et al. Mar 2016 B2
9387928 Gentry et al. Jul 2016 B1
9389090 Levine et al. Jul 2016 B1
9389094 Brenner et al. Jul 2016 B2
9410963 Martin et al. Aug 2016 B2
9436923 Sriram et al. Sep 2016 B1
D772828 Kusumoto Nov 2016 S
9528972 Minvielle Dec 2016 B2
9558515 Babu et al. Jan 2017 B2
9665983 Spivack May 2017 B2
9880577 Dyess et al. Jan 2018 B2
9952042 Abovitz et al. Apr 2018 B2
9960637 Sanders et al. May 2018 B2
9978282 Lambert et al. May 2018 B2
D832355 Castro Oct 2018 S
10262289 Vaananen Apr 2019 B2
10395332 Konrardy et al. Aug 2019 B1
10403050 Beall et al. Sep 2019 B1
10460520 Simpson et al. Oct 2019 B2
10533850 Abovitz et al. Jan 2020 B2
10586084 Burch et al. Mar 2020 B2
10685503 Ricci Jun 2020 B2
10737585 Chaudhary et al. Aug 2020 B2
D896315 Castro Sep 2020 S
10832337 Floyd et al. Nov 2020 B1
10872381 Leise et al. Dec 2020 B1
D910758 Leong Feb 2021 S
11138827 Simpson Oct 2021 B2
D938375 Zhang Dec 2021 S
11288563 Lee et al. Mar 2022 B2
11296897 Endress et al. Apr 2022 B2
11298017 Tran Apr 2022 B2
11298591 Evancha Apr 2022 B2
11555709 Simpson Jan 2023 B2
11586993 Handler et al. Feb 2023 B2
D980210 Wu Mar 2023 S
D993316 Lin Jul 2023 S
D1000137 Shuster Oct 2023 S
D1007451 Im Dec 2023 S
D1024065 Kim Apr 2024 S
20020004788 Gros et al. Jan 2002 A1
20020013718 Cornwell Jan 2002 A1
20020013761 Bundy Jan 2002 A1
20020017997 Wall Feb 2002 A1
20020065738 Riggs et al. May 2002 A1
20020065766 Brown et al. May 2002 A1
20020133456 Lancaster et al. Sep 2002 A1
20020161689 Segal Oct 2002 A1
20030055776 Samuelson Mar 2003 A1
20030191725 Ratliff et al. Oct 2003 A1
20030233311 Bramnick et al. Dec 2003 A1
20040019552 Tobin Jan 2004 A1
20040115596 Snyder et al. Jun 2004 A1
20040249742 Laurent et al. Dec 2004 A1
20040260581 Baranowski et al. Dec 2004 A1
20050021346 Nadan et al. Jan 2005 A1
20050027637 Kohler Feb 2005 A1
20050132070 Redlich et al. Jun 2005 A1
20050288974 Baranowski et al. Dec 2005 A1
20050288986 Barts et al. Dec 2005 A1
20060104224 Singh May 2006 A1
20070005224 Sutardja Jan 2007 A1
20080033833 Senior Feb 2008 A1
20080040232 Perchthaler Feb 2008 A1
20080077309 Cobbold Mar 2008 A1
20080129490 Linville et al. Jun 2008 A1
20080140557 Bowlby et al. Jun 2008 A1
20080157990 Belzer et al. Jul 2008 A1
20080195432 Fell et al. Aug 2008 A1
20080262892 Prager et al. Oct 2008 A1
20090221338 Stewart Sep 2009 A1
20090231687 Yamamoto Sep 2009 A1
20090271236 Ye et al. Oct 2009 A1
20090275002 Hoggle Nov 2009 A1
20090276154 Subramanian et al. Nov 2009 A1
20090287401 Levine et al. Nov 2009 A1
20100042421 Bai et al. Feb 2010 A1
20100081548 Labedz Apr 2010 A1
20100114790 Strimling et al. May 2010 A1
20100191834 Zampiello Jul 2010 A1
20100211441 Sprigg et al. Aug 2010 A1
20100217680 Fusz et al. Aug 2010 A1
20100228574 Mundinger et al. Sep 2010 A1
20100280748 Mundinger et al. Nov 2010 A1
20100280884 Levine et al. Nov 2010 A1
20100306078 Hwang Dec 2010 A1
20110025267 Kamen et al. Feb 2011 A1
20110059693 O'Sullivan Mar 2011 A1
20110098056 Rhoads et al. Apr 2011 A1
20110106660 Ajjarapu et al. May 2011 A1
20110202418 Kempton et al. Aug 2011 A1
20120023032 Visdomini Jan 2012 A1
20120075067 Attaluri Mar 2012 A1
20120078743 Betancourt Mar 2012 A1
20120101629 Olsen et al. Apr 2012 A1
20120158762 IwuchukWu Jun 2012 A1
20120303259 Prosser Nov 2012 A1
20120323645 Spiegel et al. Dec 2012 A1
20130024041 Golden et al. Jan 2013 A1
20130035973 Desai et al. Feb 2013 A1
20130147820 Kalai et al. Jun 2013 A1
20130173326 Anglin et al. Jul 2013 A1
20130179205 Slinin Jul 2013 A1
20130191237 Tenorio Jul 2013 A1
20130211863 White Aug 2013 A1
20130265174 Scofield et al. Oct 2013 A1
20130268325 Dembo Oct 2013 A1
20130275156 Kinkaid et al. Oct 2013 A1
20130304522 Cundle Nov 2013 A1
20130311264 Solomon et al. Nov 2013 A1
20140038781 Foley Feb 2014 A1
20140052500 Vallapuzha et al. Feb 2014 A1
20140075528 Matsuoka Mar 2014 A1
20140098009 Prest et al. Apr 2014 A1
20140229258 Seriani Apr 2014 A1
20140122190 Wolfson et al. May 2014 A1
20140129302 Amin et al. May 2014 A1
20140149157 Shaam et al. May 2014 A1
20140162598 Villa-Real Jun 2014 A1
20140220516 Marshall et al. Aug 2014 A1
20140236641 Dawkins Aug 2014 A1
20140244413 Senior Aug 2014 A1
20140310019 Blander Oct 2014 A1
20140324633 Pollak et al. Oct 2014 A1
20140349672 Kern et al. Nov 2014 A1
20150006428 Miller et al. Jan 2015 A1
20150016777 Abovitz et al. Jan 2015 A1
20150058051 Movshovich Feb 2015 A1
20150097864 Alaniz Apr 2015 A1
20150161564 Sweeney et al. Jun 2015 A1
20150178642 Abboud Jun 2015 A1
20150198459 MacNeille et al. Jul 2015 A1
20150206443 Aylesworth et al. Jul 2015 A1
20150220916 Prakash et al. Aug 2015 A1
20150241236 Slusar et al. Aug 2015 A1
20150248689 Paul et al. Sep 2015 A1
20150260474 Rublowsky et al. Sep 2015 A1
20150269865 Volach et al. Sep 2015 A1
20150324831 Barua et al. Nov 2015 A1
20150348282 Gibbon et al. Dec 2015 A1
20150371186 Podgurny et al. Dec 2015 A1
20160041628 Verma Feb 2016 A1
20160117657 Forbes, Jr. et al. Apr 2016 A1
20160117756 Carr et al. Apr 2016 A1
20160162989 Cole et al. Jun 2016 A1
20160171891 Banatwala et al. Jun 2016 A1
20160203422 Demarchi et al. Jul 2016 A1
20160224935 Burnett Aug 2016 A1
20160225115 Levy et al. Aug 2016 A1
20160307276 Young Sep 2016 A1
20160297316 Penilla et al. Oct 2016 A1
20160300296 Alonso Cembrano Oct 2016 A1
20160307288 Yehuda et al. Oct 2016 A1
20160307373 Dean et al. Oct 2016 A1
20160321609 Dube et al. Nov 2016 A1
20160349835 Shapira Dec 2016 A1
20160364679 Cao Dec 2016 A1
20170019496 Orbach Jan 2017 A1
20170039770 Lanier et al. Feb 2017 A1
20170046658 Jones et al. Feb 2017 A1
20170046664 Haldenby et al. Feb 2017 A1
20170046799 Chan et al. Feb 2017 A1
20170046806 Haldenby et al. Feb 2017 A1
20170048216 Chow et al. Feb 2017 A1
20170061509 Rosenberg et al. Mar 2017 A1
20170089710 Slusar Mar 2017 A1
20170122746 Howard et al. May 2017 A1
20170146360 Averbuch May 2017 A1
20170232300 Tran et al. Aug 2017 A1
20170243286 Castinado et al. Aug 2017 A1
20170243310 Dawkins Aug 2017 A1
20170249626 Marlatt Aug 2017 A1
20170276500 Margalit et al. Sep 2017 A1
20170293881 Narkulla Oct 2017 A1
20170293950 Rathod Oct 2017 A1
20170330274 Conant, II et al. Nov 2017 A1
20180012149 Yust Jan 2018 A1
20180013211 Ricci Jan 2018 A1
20180025417 Brathwaite et al. Jan 2018 A1
20180046431 Thagadur Shivappa et al. Feb 2018 A1
20180053226 Hutton et al. Feb 2018 A1
20180053237 Hayes et al. Feb 2018 A1
20180068355 Garry Mar 2018 A1
20180075695 Simpson Mar 2018 A1
20180095471 Allan et al. Apr 2018 A1
20180102053 Hillman et al. Apr 2018 A1
20180111494 Penilla et al. Apr 2018 A1
20180117447 Bao et al. May 2018 A1
20180121958 Aist et al. May 2018 A1
20180129276 Nguyen et al. May 2018 A1
20180140903 Poure May 2018 A1
20180143029 Nikulin et al. May 2018 A1
20180157999 Arora Jun 2018 A1
20180173742 Liu et al. Jun 2018 A1
20180173800 Chang et al. Jun 2018 A1
20180240542 Grimmer Aug 2018 A1
20180278984 Aimone et al. Sep 2018 A1
20180293638 Simpson Oct 2018 A1
20180313798 Chokshi et al. Nov 2018 A1
20180342106 Rosado Nov 2018 A1
20180348863 Aimone et al. Dec 2018 A1
20180357899 Krivacic et al. Dec 2018 A1
20180365598 Jamail Dec 2018 A1
20180365904 Holmes Dec 2018 A1
20180374268 Niles Dec 2018 A1
20190047427 Pogorelik Feb 2019 A1
20190050634 Nerayoff et al. Feb 2019 A1
20190066528 Hwang et al. Feb 2019 A1
20190102946 Spivack et al. Apr 2019 A1
20190108686 Spivack et al. Apr 2019 A1
20190139448 Marshall et al. May 2019 A1
20190143828 Sawada et al. May 2019 A1
20190146974 Chung et al. May 2019 A1
20190158603 Nelson et al. May 2019 A1
20190160958 Chaudhary et al. May 2019 A1
20190178654 Hare Jun 2019 A1
20190188450 Spivack et al. Jun 2019 A1
20190205798 Rosas-Maxemin et al. Jul 2019 A1
20190228269 Brent et al. Jul 2019 A1
20190236741 Bowman et al. Aug 2019 A1
20190236742 Tomskii et al. Aug 2019 A1
20190271553 Simpson Sep 2019 A1
20190304000 Simpson Oct 2019 A1
20190311431 Simpson Oct 2019 A1
20190318286 Simpson Oct 2019 A1
20190333166 Simpson Oct 2019 A1
20190333181 Simpson Oct 2019 A1
20190353499 Stenneth Nov 2019 A1
20200013498 Gelber Jan 2020 A1
20200027096 Cooner Jan 2020 A1
20200047055 Ward Feb 2020 A1
20200098071 Jackson Mar 2020 A1
20200125999 Simpson Apr 2020 A1
20200151816 Simpson May 2020 A1
20200156495 Lindup May 2020 A1
20200160461 Kaniki May 2020 A1
20200173808 Beaurepaire et al. Jun 2020 A1
20200317074 Miller et al. Oct 2020 A1
20200317075 Yokoyama et al. Oct 2020 A1
20200389301 Detres et al. Dec 2020 A1
20210012278 Alon et al. Jan 2021 A1
20210041258 Simpson Feb 2021 A1
20210042835 Simpson Feb 2021 A1
20210158447 Simpson May 2021 A1
20210166317 Simpson Jun 2021 A1
20210248633 Simpson Aug 2021 A1
20210318132 Simpson Oct 2021 A1
20210379447 Lee Dec 2021 A1
20220020073 Farmer Jan 2022 A1
20220100731 Tirapu Azpiroz et al. Mar 2022 A1
20220122026 Okabe et al. Apr 2022 A1
20230157579 Sato May 2023 A1
Foreign Referenced Citations (10)
Number Date Country
107341968 Nov 2017 CN
2539556 Dec 2016 GB
2003177034 Dec 2001 JP
2001041084 Jun 2001 WO
2015059691 Apr 2015 WO
2015161307 Apr 2015 WO
2018024844 Feb 2018 WO
2019134005 Jul 2019 WO
2019183468 Sep 2019 WO
2021163675 Aug 2021 WO
Non-Patent Literature Citations (50)
Entry
Netlingo, https://web.archive.org/web/20170122184857/https://www.netlingo.com/word/electronic-exchange.php,dated Oct. 22, 2017, 1 page.
Laseter, Tim, “B2B benchmark: The State of Electronic Exchanges”, Tech & Innovation, dated Oct. 1, 2001, 25 pages.
Directed Graph, https://en.wikipedia.org/wiki/Directed_graph, pp. 1-6, 2022.
About IBM Food Trust, https://www.ibm.com/downloads/cas/E9DBNDJG, pp. 1-17, 2019.
IBM Blockchain Transparent Supply, https://www.ibm.com/downloads/cas/BKQDK0M2, pp. 1-14, Aug. 2020.
Radocchia, Samantha, 3 Innovative Ways Blockchain Will Build Trust in the Food Industry, https://www.forbes.com/sites/samantharadocchia/2018/04/26/3-innovative-ways-blockchain-will-build-trust-in-the-food-industry/?sh=65bc79f42afc, Forbes, pp. 1-5, Apr. 26, 2018.
Change the World, https://fortune.com/change-the-world/2019/ibm/, Fortune Media IP Limited, pp. 1-5, 2022.
IBM Food Trust, https://www.constellationr.com/node/17601/vote/application/view/588, Constellation Research Inc., pp. 1-4, 2010-2022.
Dey, Somdip, et al., FoodSQRBlock: Digitizing Food Production and the Supply Chain with Blockchain and QR Code in the Cloud, https://www.mdpi.com/2071-1050/13/6/3486/htm, MDPI, pp. 1-27, Mar. 22, 2021.
Wyzant, https://web.archive.org/web/20190327185429/https://www.wyzant.com/hotitworks/students, Wyzant tutoring, pp. 1-13 , Mar. 27, 2019.
PCT International Search Report and Written Opinion; PCT/US2021/065855; dated Mar. 29, 2022.
PCT International Search Report and Written Opinion; PCT/US2022/012717; dated Mar. 30, 2022.
The Wayback Machine, Interest Rate Swaps, https://web.archive.org/web/20171006212154/https://global.pimco.com/en/gbl/resources/education/understanding-interest-rate-swaps, 2016, pp. 1-7.
Freight Derivatives—a Vital Tool for YOur Business, https://www.reedsmith.com/-/media/files/perspectives/2007/02/freight-derivatives--a-vital-tool-for-your-business/files/freight-derivatives--a vital-tool-for-your-business/fileattachment/etcfreightderivativesavitaltoolforyourbusiness.pdf (Year: 2007), Energy, Trade & Commodities, pp. 1-3.
Barry, Kieth, App lets drivers auction public parking spaces, Wired, Aug. 11, 2011, pp. 1-4.
Jiang, Landu, et al., Sun Chase: Energy-Efficient Route Planning for solar-powered Evs, IEEE 37th international conference on distrubuted computing systems, 2017, pp. 1-11.
PCT International Search Report and Written Opinion; PCT/US2022/027077; dated Nov. 1, 2022.
PCT International Search Report and Written Opinion; PCT/US2022/052969; dated Mar. 21, 2023.
Wei, et al. “impact of aircraft size and seat availability on airlines demand and market share in duopoly markets” Published by Elsevier, 2005, pp. 315-327.
Little, T.D., et al., On the Joys of Missing Data, Journal of pediatric psychology, 2014, pp. 151-162.
Honaker, J., et al., What to do About Missing Values in Time-Series Cross-Section Data, American Journal of Political Science, Sep. 6, 2008, pp. 561-581.
Westerhoff, Market Depth and Price Dynamics: A Note, University of Osnabrueck, Department of Economics Rolandstrasse 8, D-49069 Osnabrueck, German, Mar. 30, 2004, pp. 1-8.
PCT International Search Report and Written Opinion; PCTUS2022/051998; dated Mar. 8, 2023.
EP23153137.7 European Search Report, dated May 24, 2023, pp. 1-10.
EP20787830.7 European Search Report, dated May 12, 2023, pp. 1-10.
Zheyong, Bian, et al., “Planning the Ridesharing Route for the First-Mile Service Linking to Railway Passenger Transportation,” Joint Rail Conference, Apr. 2017, pp. 1-11.
EP23168879.7 European Search Report, dated Jul. 5, 2023, pp. 1-13.
Peters, et al.; Student Support Services for Online Learning Re-Imagined and Re-Invigorated: Then, Now and What's to Come; Contact North | Contact Nord; Sep. 2017, 17 pages.
Fleishman; Use Parking Apps to Find Lots, Garages, Valet, and Meters; Macworld; Jul. 19, 2015, 9 pages.
Borras, et al. Intelligent Tourism Reminder Systems: A Survey; Expert Systems with Applications 41; Elsevier, Jun. 9, 2014, 20 pages.
Ramasubramanian, Vasant, “Quadrasense: Immersive UAV-based cross-reality environmental sensor networks,” phD diss., Massachusetts Institute of Technology, pp. 1-75, 2015.
Zhao, et al., Incentives in Ridesharing with Deficit Control, Proceedings of the 13th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2014), May 5-9, 2014, pp. 1021-1028.
Li, Jundong, et al., “Multi-network Embedding”, pp. 1-9, 2018.
Papa, U., & Del Core, G., “Design of Sonar Sensor Model for Safe Landing of an UAV,” IEEE Metrology for Aerospace, 2015, pp. 346-350.
PCT International Search Report and Written Opinion; PCT/US2020/027543; dated Jul. 1, 2020.
PCT International Search Report and Written Opinion; PCT/US2020/023223; dated Jun. 19, 2020.
PCT International Search Report and Written Opinion; PCT/US2020/023729; dated Jun. 18, 2020.
PCT International Search Report and Written Opinion; PCT/US2020/021546; dated Jun. 8, 2020.
PCT International Search Report and Written Opinion; PCT/US2020/018012; dated Apr. 21, 2020.
PCT International Search Report and Written Opinion; PCT/US2020/012208; dated Mar. 24, 2020.
Westerman; Longitudinal Analysis of Biomarker Data from a Personalized Nutrition Platform in Healthy Subjects; Nature, Scientific Reports; vol. 8; Oct. 2, 2018 (retrieved Jun. 10, 2020). https://www.nature.com/articles/s41598-018-33008-7, 10 pages.
Ahmed, et al.; Energy Trading with Electric Vehicles in Smart Campus Parking Lots; Applied Sciences; Sep. 7, 2018, 17 pages.
Fitzsimmons; Uber Hit with Cap as New York City Takes Lead in Crackdown; New York Times; Aug. 8, 2018 (retrieved Feb. 29, 2020). https://www.wral.com/uber-hit-with-cap-as-new-york-city-takes-lead-in-crackdow/17755819/?version=amp?, 6 pages.
Soccer ball-shaped drone might be the safest flying robot yet https://mashable.com/2015/12/21/soccer-ball-drone/ ; 2015, 2 pages.
Pentland; After Decades of Doubt, Deregulation Delivers Lower Electricity Rates; Forbes; Oct. 13, 2013 (retrieved Feb. 29, 2020). https://www.forbes.com/sites/williampentland/2013/10/13/after-decades-of-doubt-deregulation-delivers-lower-electricity-prices/#201d4a9c1d13, 3 pages.
Sun, et al.; Real-Time MUAV Video Augmentation with Geo-Information for Remote Monitoring; 2013 Fifth International Conference on Geo-Information Technologies for Natural Disaster Management; pp. 114-118; IEEE; 2013.
U.S. Appl. No. 60/035,205, filed Jan. 10, 1997; Page.
Aratani, Lori, “This app wants to reward you for smart commuting choices,” The Washington Post, Aug. 18, 2018, pp. 1-3.
Speediance, All-in-One Smart Home Gym; retrieved from internet: https://www.amazon.com/Speediance-Equipment-Resistance-Training-Machine-Works/dp/B0C4KF7844/?th=1; May 8, 2023; p. 1.
Freebeat, Smart Exercise Bike; retrieved from internet: https://www.amazon.com/Resistance-Cushioned-Detection-Altorithm-Instructors/dp/BOBZKKZ6B3/7th=1, Mar. 3, 2023; p. 1.
Related Publications (1)
Number Date Country
20180293638 A1 Oct 2018 US