Patents by Inventor Giada Acciaroli

Giada Acciaroli has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 12629059
    Abstract: Glucose level measurements of a user are obtained over time, such as from a wearable glucose monitoring device being worn by the user. These glucose level measurements can be produced substantially continuously, such that the device may be configured to produce the glucose level measurements at regular or irregular intervals of time, responsive to establishing a communicative coupling with a different device, and so forth. These glucose level measurements are analyzed to detect deviations from past glucose measurements, such as glucose measurements received earlier in the day or glucose measurements received at corresponding times of one or more preceding days. Indications of detected deviations are provided to the user or communicated elsewhere, such as to a healthcare professional.
    Type: Grant
    Filed: October 26, 2022
    Date of Patent: May 19, 2026
    Assignee: DEXCOM, INC.
    Inventors: Robert J. Dowd, Margaret A. Crawford, Mark Derdzinski, Lauren H. Jepson, Giada Acciaroli, Sarah Kate Pickus, Apurv U. Kamath
  • Publication number: 20250344967
    Abstract: Glucose measurement and glucose-impacting event prediction using a stack of machine learning models is described. A CGM platform includes stacked machine learning models, such that an output generated by one of the machine learning models can be provided as input to another one of the machine learning models. The multiple machine learning models include at least one model trained to generate a glucose measurement prediction and another model trained to generate an event prediction, for an upcoming time interval. Each of the stacked machine learning models is configured to generate its respective output when provided as input at least one of glucose measurements provided by a CGM system worn by the user or additional data describing user behavior or other aspects that impact a person's glucose in the future. Predictions may then be output, such as via communication and/or display of a notification about the corresponding prediction.
    Type: Application
    Filed: July 18, 2025
    Publication date: November 13, 2025
    Inventors: Mark Derdzinski, Joost van der Linden, Robert J. Dowd, Lauren Hruby Jepson, Giada Acciaroli
  • Patent number: 12390131
    Abstract: Glucose measurement and glucose-impacting event prediction using a stack of machine learning models is described. A CGM platform includes stacked machine learning models, such that an output generated by one of the machine learning models can be provided as input to another one of the machine learning models. The multiple machine learning models include at least one model trained to generate a glucose measurement prediction and another model trained to generate an event prediction, for an upcoming time interval. Each of the stacked machine learning models is configured to generate its respective output when provided as input at least one of glucose measurements provided by a CGM system worn by the user or additional data describing user behavior or other aspects that impact a person's glucose in the future. Predictions may then be output, such as via communication and/or display of a notification about the corresponding prediction.
    Type: Grant
    Filed: May 28, 2021
    Date of Patent: August 19, 2025
    Assignee: Dexcom, Inc.
    Inventors: Mark Derdzinski, Joost van der Linden, Robert Dowd, Lauren Hruby Jepson, Giada Acciaroli
  • Publication number: 20240194341
    Abstract: Systems, devices, and methods for determining user-specific hyperparameters for decision support models are provided.
    Type: Application
    Filed: November 7, 2023
    Publication date: June 13, 2024
    Inventors: Joost Herman VAN DER LINDEN, Mark DERDZINSKI, Margaret A. CRAWFORD, Giada ACCIAROLI, Christopher R. HANNEMANN
  • Publication number: 20240172999
    Abstract: Systems, devices, and methods for determining decision support outputs using user-specific analyte level criteria for improving patients' health outcomes are provided. In one embodiment, a non-transitory computer readable storage medium storing a program is provided, the program comprising instructions that, when executed by at least one processor of a computing device, cause the at least one processor to perform operations including receiving sensor data generated by an analyte sensor configured to monitor at least one analyte, determining at least one analyte level criteria for the user for the at least one analyte; determining, using a decision support model, at least one decision support output based on the at least one analyte level criteria, and providing the at least one decision support output to the user.
    Type: Application
    Filed: October 31, 2023
    Publication date: May 30, 2024
    Inventors: Giada ACCIAROLI, Christopher R. HANNEMANN, Mark DERDZINSKI, Margaret A. CRAWFORD, Joost Herman VAN DER LINDEN
  • Publication number: 20230135175
    Abstract: Glucose level measurements or other data regarding a user are obtained over time, such as from a wearable glucose monitoring device being worn by the user. These glucose level measurements or other data are analyzed based on various rules to determine time periods during a day of, for example, good diabetes management by the user and provide feedback indicating such to the user. Good diabetes management is identified in various manners, such as by identifying improvements in glucose measurements for a given time period over one or more previous days, identifying a time period of the day during which glucose measurements were the best, identifying sustained positive patterns (e.g., good diabetes management for a same time period in each of multiple days), and so forth.
    Type: Application
    Filed: October 26, 2022
    Publication date: May 4, 2023
    Applicant: Dexcom, Inc.
    Inventors: Lauren H. Jepson, Margaret A. Crawford, Mark Derdzinski, Robert J. Dowd, Giada Acciaroli, Sarah Kate Pickus, Apurv U. Kamath
  • Publication number: 20230138673
    Abstract: Feedback regarding diabetes management by a user is generated, such as feedback identifying improvements in glucose measurements for a given time period over previous days, feedback identifying sustained positive patterns, feedback identifying deviations in glucose measurements between time periods, feedback identifying potential behavior modification that a user could take to engage in beneficial diabetes management behavior, feedback identifying what a user's glucose would have been had the particular events or conditions not occurred or not been present, and so forth. A feedback presentation system analyzes the identified feedback and selects feedback based on various rankings, rules and conditions for display to the user. The selected feedback is provided to the user at various times, such as regular reports (e.g., daily or weekly reports), in real time (e.g., notifying the user what his glucose level would have been had he not just taken a walk), and so forth.
    Type: Application
    Filed: October 26, 2022
    Publication date: May 4, 2023
    Applicant: Dexcom, Inc.
    Inventors: Margaret A. Crawford, Mark Derdzinski, Giada Acciaroli, Robert J. Dowd, Lauren H. Jepson, Sarah Kate Pickus, Apurv U. Kamath
  • Publication number: 20230136188
    Abstract: Glucose level measurements and additional data regarding a user are obtained over time, such as from a wearable glucose monitoring device being worn by the user. This additional data identifies events or conditions that may affect glucose of the user, such as physical activity engaged in by the user. A glucose prediction system analyzes, for example, activity data of the user and determines when a bout of physical activity occurs. The glucose prediction system predicts what the glucose measurements of the user would have been had the physical activity not occurred, and takes various actions based on the predicted glucose measurements (e.g., provides feedback to the user indicating what their glucose would have been had they not engaged in the physical activity).
    Type: Application
    Filed: October 26, 2022
    Publication date: May 4, 2023
    Applicant: Dexcom, Inc.
    Inventors: Sarah Kate Pickus, Margaret A. Crawford, Mark Derdzinski, Lauren H. Jepson, Robert J. Dowd, Giada Acciaroli, Apurv U. Kamath
  • Publication number: 20230140143
    Abstract: Glucose measurements are received and features for corresponding time periods over a time window are generated, the features being values indicating whether the user has been engaging in beneficial diabetes management behaviors. Using the aggregated features patterns indicating that beneficial diabetes management behaviors are not being engaged in are identified. Potential behavior modification feedback is generated by including in the potential behavior modification feedback at least one behavior modification feedback, for each of the identified patterns, that a user could take to engage in beneficial diabetes management behavior. At least one of the potential behavior modification feedback is selected and displayed or otherwise presented to the user.
    Type: Application
    Filed: October 26, 2022
    Publication date: May 4, 2023
    Applicant: Dexcom, Inc.
    Inventors: Giada Acciaroli, Margaret A. Crawford, Mark Derdzinski, Lauren H. Jepson, Sarah Kate Pickus, Robert J. Dowd, Apurv U. Kamath
  • Publication number: 20230134919
    Abstract: Glucose level measurements of a user are obtained over time, such as from a wearable glucose monitoring device being worn by the user. These glucose level measurements can be produced substantially continuously, such that the device may be configured to produce the glucose level measurements at regular or irregular intervals of time, responsive to establishing a communicative coupling with a different device, and so forth. These glucose level measurements are analyzed to detect deviations from past glucose measurements, such as glucose measurements received earlier in the day or glucose measurements received at corresponding times of one or more preceding days. Indications of detected deviations are provided to the user or communicated elsewhere, such as to a healthcare professional.
    Type: Application
    Filed: October 26, 2022
    Publication date: May 4, 2023
    Applicant: Dexcom, Inc.
    Inventors: Robert J. Dowd, Margaret A. Crawford, Mark Derdzinski, Lauren H. Jepson, Giada Acciaroli, Sarah Kate Pickus, Apurv U. Kamath
  • Publication number: 20220202319
    Abstract: Meal and activity logging with a glucose monitoring interface is described. A glucose monitoring application is configured to display a user interface that includes a glucose graph that plots glucose measurements of a user over time. The glucose measurements, for example, may be obtained from a glucose monitoring device that collects glucose measurements of the user at predetermined intervals, e.g., every five minutes. Unlike conventional event logging approaches, the glucose monitoring application displays representations of logged events in the user interface along with the glucose graph. The logged events, for example, may include meals consumed by the user, and/or various activities performed by the user, such as exercise, meditation, sleep, and so forth. Notably, the glucose monitoring application controls the display of the event representations to be presented at positions on the glucose graph that correspond to times associated with the respective events.
    Type: Application
    Filed: December 20, 2021
    Publication date: June 30, 2022
    Applicant: DexCom, Inc.
    Inventors: Margaret A. Crawford, Linda Schertzer, Andrea J. Jackson, Douglas Scott Kanter, Giada Acciaroli, Chad Patterson, Apurv Kamath, Alexander Michael Diener, Drew Terry, Mark Derdzinski, Sarah Kate Pickus, Lauren Hruby Jepson, Adam Noar
  • Publication number: 20210378563
    Abstract: Glucose measurement and glucose-impacting event prediction using a stack of machine learning models is described. A CGM platform includes stacked machine learning models, such that an output generated by one of the machine learning models can be provided as input to another one of the machine learning models. The multiple machine learning models include at least one model trained to generate a glucose measurement prediction and another model trained to generate an event prediction, for an upcoming time interval. Each of the stacked machine learning models is configured to generate its respective output when provided as input at least one of glucose measurements provided by a CGM system worn by the user or additional data describing user behavior or other aspects that impact a person's glucose in the future. Predictions may then be output, such as via communication and/or display of a notification about the corresponding prediction.
    Type: Application
    Filed: May 28, 2021
    Publication date: December 9, 2021
    Inventors: Mark Derdzinski, Joost van der Linden, Robert Dowd, Lauren Hruby Jepson, Giada Acciaroli
  • Publication number: 20210343402
    Abstract: Hypoglycemic event prediction using machine learning is described. A CGM platform includes a machine learning model trained using historical time series glucose measurements of a user population. Once trained, the machine learning model predicts hypoglycemic events for users. When predicting hypoglycemic events, a time series of glucose measurements for a day time interval is received. The glucose measurements of this time series for the day time interval are provided by a CGM system worn by the user. The machine learning model predicts whether a hypoglycemic event will occur during a night time interval that is subsequent to the day time interval by processing the time series of glucose measurements using the trained machine learning model. The hypoglycemic event prediction is then output, such as via communication and/or display of a notification about the hypoglycemic event prediction.
    Type: Application
    Filed: December 7, 2020
    Publication date: November 4, 2021
    Inventors: Giada Acciaroli, Mark Derdzinski, Lauren Hruby Jepson, Andrew S. Parker
  • Publication number: 20210338116
    Abstract: Hypoglycemic event prediction using machine learning is described. A CGM platform includes a machine learning model trained using historical time series glucose measurements of a user population. Once trained, the machine learning model predicts hypoglycemic events for users. When predicting hypoglycemic events, a time series of glucose measurements for a day time interval is received. The glucose measurements of this time series for the day time interval are provided by a CGM system worn by the user. The machine learning model predicts whether a hypoglycemic event will occur during a night time interval that is subsequent to the day time interval by processing the time series of glucose measurements using the trained machine learning model. The hypoglycemic event prediction is then output, such as via communication and/or display of a notification about the hypoglycemic event prediction.
    Type: Application
    Filed: December 7, 2020
    Publication date: November 4, 2021
    Inventors: Giada Acciaroli, Mark Derdzinski, Lauren Hruby Jepson, Andrew S. Parker
  • Publication number: 20200237271
    Abstract: A method for monitoring a blood glucose level of a user is provided. The method includes receiving a time-varying electrical signal from an analyte sensor during a temporal phase of a monitoring session. The method includes selecting a calibration model from a plurality of calibration models, wherein the selected calibration model comprises one or more calibration model parameters. The method includes estimating at least one of the one or more calibration model parameters of the selected calibration model based on at least the time-varying electrical signal during the temporal phase of the monitoring session. The method includes estimating the blood glucose level of the user based on the selected calibration model and using the at least one estimated parameter. An apparatus and non-transitory computer readable medium having similar functionality are also provided.
    Type: Application
    Filed: January 31, 2020
    Publication date: July 30, 2020
    Inventors: Stephen J. Vanslyke, Giada Acciaroli, Martina Vettoretti, Andrea Facchinetti, Giovanni Sparacino