US2023094968A1PendingUtilityA1
Adaptive analytical behavioral and health assistant system and related method of use
Est. expiryMar 24, 2031(~4.7 yrs left)· nominal 20-yr term from priority
Inventors:Bharath Sudharsan
G06N 7/01G16H 50/20G16Z 99/00G06N 7/005
77
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Claims
Abstract
This present disclosure relates to systems and methods for providing an Adaptive Analytical Behavioral and Health Assistant. These systems and methods may include collecting one or more of patient behavior information, clinical information, or personal information; learning one or more patterns that cause an event based on the collected information and one or more pattern recognition algorithms; identifying one or more interventions to prevent the event from occurring or to facilitate the event based on the learned patterns; preparing a plan based on the collected information and the identified interventions; and/or presenting the plan to a user or executing the plan.
Claims
exact text as granted — not AI-modified1 .- 20 . (canceled)
21 . A computer-implemented method for managing a health condition of a user, the method comprising:
collecting, by one or more processors, information relating to the user; learning, by the one or more processors, one or more patterns that cause an event based on the collected information relating to the user and one or more algorithms; identifying, based on the learned patterns, one or more actions to prevent the event from occurring or to facilitate the event; generating a plan based on the collected information and the identified one or more actions; presenting the plan to the user or executing the plan; electronically sending a request for feedback from the user, including a user's subjective assessment of the plan; electronically receiving the feedback, including the user's subjective assessment of the plan, from the user in response to the request; and automatically revising the plan through machine learning, based on the received feedback to generate a revised plan, wherein automatically revising the plan to generate the revised plan includes:
identifying, one or more actions to prevent the event from occurring or to facilitate the event;
presenting the one or more actions to the user;
after presenting the one or more actions to the user, determining that the user's subjective assessment of the plan is inaccurate through use of pattern recognition from information relating to the user; and
identifying, based on user's subjective assessment of the plan being inaccurate, one or more actions, as part of the revised plan, to prevent the event from occurring or to facilitate the event.
22 . The computer-implemented method of claim 21 , wherein:
the feedback also includes behavioral user data relating to one or more user behaviors that occur after the plan is generated or presented to the user; and the revised plan includes one or more additional actions automatically selected based on the feedback.
23 . The computer-implemented method of claim 21 , wherein the feedback also includes a type of medication taken by the user, and a time at which the medication was taken.
24 . The computer-implemented method of claim 21 , wherein the feedback also includes information relating to food consumed by the user.
25 . The computer-implemented method of claim 21 , wherein the feedback also includes information relating to exercise performed by the user.
26 . The computer-implemented method of claim 21 , wherein the event is a blood glucose level of the user that is below a normal range.
27 . A computer-implemented method for managing a health condition of a user, the method comprising:
analyzing, using at least one processor, user specific data relating to a user care plan, and determining one or more patterns that cause an event based on the user specific data and one or more algorithms; electronically sending a request for feedback from the user, including a user's subjective assessment of the user care plan; electronically receiving the feedback, including the user's subjective assessment of the user care plan, from the user in response to the request; determining one or more actions based on the determined patterns and the user's subjective assessment of the user care plan; automatically generating and presenting a revised user care plan derived from one or more inferences based on machine learning using user specific data, the revised user care plan including an implementation schedule for the determined one or more actions; and presenting the revised user care plan, wherein presenting the revised user care plan includes selecting a type of electronic data to present based on a processor speed of an electronic device associated with the user and a speed of an electronic network to which the electronic device connects.
28 . The computer-implemented method of claim 27 , wherein the user's subjective assessment of the plan further includes the user's assessment of at least one of textual display of information included in the generated plan and a quantity of content delivered in connection with presentation of the generated plan.
29 . The computer-implemented method of claim 27 , wherein the feedback includes a type of medication taken by the user, and a time at which the medication was taken.
30 . The computer-implemented method of claim 27 , wherein the feedback includes information relating to food consumed by the user.
31 . The computer-implemented method of claim 27 , wherein the feedback includes information relating to exercise performed by the user.
32 . The computer-implemented method of claim 27 , wherein the user specific data comprises a blood glucose level received from a blood glucose monitor.
33 . The computer-implemented method of claim 27 , wherein the user specific data comprises user interaction data.
34 . The computer-implemented method of claim 27 , wherein the revised user care plan is presented to the user on multiple electronic devices.
35 . The computer-implemented method of claim 27 , wherein the revised user care plan comprises electronic content, wherein the electronic content includes a video tutorial.
36 . The computer-implemented method of claim 27 , further including automatically making one or more inferences based on machine learning using the user specific data, wherein automatically generating and presenting the revised user care plan also is based on the one or more inferences.
37 . The computer-implemented method of claim 27 , further including transmitting an alert related to a non-beneficial action of the user.
38 . A computer-implemented method for managing a health condition of a user, the method comprising:
collecting, by one or more processors, information relating to the user, the information including one or more of behavioral user data, clinical user data, and/or personal user data; determining, by the one or more processors, one or more patterns that cause an event; storing, through a hierarchical network of nodes, patterns; identifying, based on the determined patterns, one or more actions to prevent an event from occurring or to facilitate the event; generating a plan based on the collected information and the identified one or more actions; presenting the plan to the user or executing the plan; electronically sending a request for feedback from the user, including a user's subjective assessment of the plan; electronically receiving the feedback, including the user's subjective assessment of the plan; and generating, by machine learning, a revised plan based on the feedback, wherein revising the plan includes:
identifying, based on the feedback from the user and the determined patterns, one or more actions to prevent the event from occurring or to facilitate the event;
presenting the one or more actions to the user;
after presenting the one or more actions to the user, determining that the user's subjective assessment of the plan is inaccurate through use of pattern recognition from information relating to the user; and
identifying, based on determining that the user's subjective assessment of the plan is inaccurate, one or more actions to prevent the event from occurring or to facilitate the event.
39 . The computer-implemented method of claim 38 , wherein the one or more actions includes one or more of:
1) changing a diet of the user; 2) ordering medication; 3) contacting a doctor; 4) changing an exercise routine of the user; and 5) indicating that the user should rest.
40 . The computer-implemented method of claim 38 , wherein:
the feedback also includes behavioral user data relating to one or more user behaviors that occur after the plan is generated or presented to the user; and the revised plan includes one or more additional actions automatically selected based on the feedback.Cited by (0)
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