Patents by Inventor Andrew Radtke

Andrew Radtke 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).

  • Publication number: 20220211322
    Abstract: This disclosure is directed to systems and techniques for detecting changes in patient health based upon monitoring patient sleep activities.
    Type: Application
    Filed: January 6, 2021
    Publication date: July 7, 2022
    Inventors: Bruce D. Gunderson, Andrew Radtke, Brian B. Lee
  • Patent number: 11355244
    Abstract: Techniques that include applying machine learning models to episode data, including a cardiac electrogram, stored by a medical device are disclosed. In some examples, based on the application of one or more machine learning models to the episode data, processing circuitry derives, for each of a plurality of arrhythmia type classifications, class activation data indicating varying likelihoods of the classification over a period of time associated with the episode. The processing circuitry may display a graph of the varying likelihoods of the arrhythmia type classifications over the period of time. In some examples, processing circuitry may use arrhythmia type likelihoods and depolarization likelihoods to identify depolarizations, e.g., QRS complexes, during the episode.
    Type: Grant
    Filed: July 30, 2021
    Date of Patent: June 7, 2022
    Assignee: Medtronic, Inc
    Inventors: Tarek D. Haddad, Niranjan Chakravarthy, Donald R. Musgrove, Andrew Radtke, Eduardo N. Warman, Rodolphe Katra, Lindsay A. Pedalty
  • Patent number: 11317865
    Abstract: The disclosure includes a system for sensing physiologic data. The system can include a flexible configured to wrap around a finger of a user, a first electrode coupled to the flexible strap, and a second electrode coupled to the flexible strap. The system can also include a sensor housing comprising at least one sensor configured to detect physiologic data from the finger and a data receiving module communicatively coupled to the first electrode, the second electrode, and the at least one sensor. The data receiving module can be configured to receive physiologic data from the at least one sensor.
    Type: Grant
    Filed: July 14, 2020
    Date of Patent: May 3, 2022
    Assignee: Aclaris Medical, LLC
    Inventors: Mark Bly, Andrew Radtke
  • Patent number: 11308783
    Abstract: A medical device is configured to produce an accelerometer signal and detect a patient fall from the accelerometer signal. The device generates a body posture signal and a body acceleration signal from the accelerometer signal and detects a patient fall in response to determining that the body posture signal and the body acceleration signal meet fall detection criteria. The medical device is configured to receive a truth signal from another device that is not the medical device. The truth signal may indicate that the detected patient fall is a falsely detected patient fall and, responsive to receiving the truth signal, the medical device adjusts at least one fall detection control parameter.
    Type: Grant
    Filed: May 20, 2020
    Date of Patent: April 19, 2022
    Assignee: Medtronic, Inc.
    Inventors: Michelle M. Galarneau, Brian B. Lee, Andrew Radtke, Vinod Sharma
  • Publication number: 20220023626
    Abstract: Techniques are disclosed for a multi-tier system for delivering therapy to a patient. In one example, a first device senses parametric data for a patient and determines, based on a first analysis of the parametric data, that the patient is experiencing a treatable event. In response, the first device establishes wireless communication with a second device and transmits the parametric data to the second device. The second device verifies, based on a second analysis of the parametric data, whether the patient is experiencing the treatable event. The second device selects, based on the second analysis of the parametric data, an instruction for responding to the treatable event and transmits the instruction for responding to the treatable event to the first device. In some examples, in response to receiving the instruction, the first device aborts delivery of therapy for the treatable event or proceeds with delivering therapy for the treatable event.
    Type: Application
    Filed: July 22, 2021
    Publication date: January 27, 2022
    Inventors: Tarek D. Haddad, Donald R. Musgrove, Andrew Radtke, Eric D. Corndorf, Paul J. DeGroot
  • Publication number: 20210358631
    Abstract: Techniques that include applying machine learning models to episode data, including a cardiac electrogram, stored by a medical device are disclosed. In some examples, based on the application of one or more machine learning models to the episode data, processing circuitry derives, for each of a plurality of arrhythmia type classifications, class activation data indicating varying likelihoods of the classification over a period of time associated with the episode. The processing circuitry may display a graph of the varying likelihoods of the arrhythmia type classifications over the period of time. In some examples, processing circuitry may use arrhythmia type likelihoods and depolarization likelihoods to identify depolarizations, e.g., QRS complexes, during the episode.
    Type: Application
    Filed: July 30, 2021
    Publication date: November 18, 2021
    Inventors: Tarek D. Haddad, Niranjan Chakravarthy, Donald R. Musgrove, Andrew Radtke, Eduardo N. Warman, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20210338138
    Abstract: Techniques are disclosed for explaining and visualizing an output of a machine learning system that detects cardiac arrythmia in a patient. In one example, a computing device receives cardiac electrogram data sensed by a medical device. The computing device applies a machine learning model, trained using cardiac electrogram data for a plurality of patients, to the received cardiac electrogram data to determine, based on the machine learning model, that an episode of arrhythmia has occurred in the patient and a level of confidence in the determination that the episode of arrhythmia has occurred in the patient. In response to determining that the level of confidence is greater than a predetermined threshold, the computing device displays, to a user, a portion of the cardiac electrogram data, an indication that the episode of arrhythmia has occurred, and an indication of the level of confidence that the episode of arrhythmia has occurred.
    Type: Application
    Filed: July 16, 2021
    Publication date: November 4, 2021
    Inventors: Lindsay A. Pedalty, Niranjan Chakravarthy, Rodolphe Katra, Tarek D. Haddad, Andrew Radtke, Siddharth Dani, Donald R. Musgrove
  • Publication number: 20210343416
    Abstract: Techniques are disclosed for using feature delineation to reduce the impact of machine learning cardiac arrythmia detection on power consumption of medical devices. In one example, a medical device performs feature-based delineation of cardiac electrogram data sensed from a patient to obtain cardiac features indicative of an episode of arrythmia in the patient. The medical device determines whether the cardiac features satisfy threshold criteria for application of a machine learning model for verifying the feature-based delineation of the cardiac electrogram data. In response to determining that the cardiac features satisfy the threshold criteria, the medical device applies the machine learning model to the sensed cardiac electrogram data to verify that the episode of arrhythmia has occurred or determine a classification of the episode of arrythmia.
    Type: Application
    Filed: July 16, 2021
    Publication date: November 4, 2021
    Inventors: Niranjan Chakravarthy, Siddharth Dani, Tarek D. Haddad, Donald R. Musgrove, Andrew Radtke, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20210338134
    Abstract: Techniques are disclosed for using both feature delineation and machine learning to detect cardiac arrhythmia. A computing device receives cardiac electrogram data of a patient sensed by a medical device. The computing device obtains, via feature-based delineation of the cardiac electrogram data, a first classification of arrhythmia in the patient. The computing device applies a machine learning model to the received cardiac electrogram data to obtain a second classification of arrhythmia in the patient. As one example, the computing device uses the first and second classifications to determine whether an episode of arrhythmia has occurred in the patient. As another example, the computing device uses the second classification to verify the first classification of arrhythmia in the patient. The computing device outputs a report indicating that the episode of arrhythmia has occurred and one or more cardiac features that coincide with the episode of arrhythmia.
    Type: Application
    Filed: July 12, 2021
    Publication date: November 4, 2021
    Inventors: Niranjan Chakravarthy, Siddharth Dani, Tarek D. Haddad, Donald R. Musgrove, Andrew Radtke, Eduardo N. Warman, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20210186399
    Abstract: Systems and methods for are disclosed for determining whether to output an indication of a urinary tract infection (UTI) in a patient, based on sensor data indicative of one or more common symptoms of UTIs, including, but not limited to, nocturia, fatigue or tremors; fever or chills; agitation or restlessness; lower back pain; painful urination; and presyncope or syncope.
    Type: Application
    Filed: December 19, 2019
    Publication date: June 24, 2021
    Inventors: Bruce D. Gunderson, Brian B. Lee, Andrew Radtke
  • Publication number: 20210085202
    Abstract: Techniques are disclosed for automatically calibrating a reference orientation of an implantable medical device (IMD) within a patient. In one example, sensors of an IMD sense a plurality of orientation vectors of the IMD with respect to a gravitational field. Processing circuitry of the IMD processes the plurality of orientation vectors to identify an upright vector that corresponds to an upright posture of the patient. The processing circuitry classifies the plurality of orientation vectors with respect to the upright vector to define a sagittal plane of the patient and a transverse plane of the patient. The processing circuitry determines, based on the upright vector, the sagittal plane, and the transverse plane, a reference orientation of the IMD within the patient. As the orientation of the IMD within the patient changes over time, the processing circuitry may recalibrate its reference orientation and accurately detect a posture of the patient.
    Type: Application
    Filed: June 23, 2020
    Publication date: March 25, 2021
    Inventors: Andrew Radtke, Tarek D. Haddad, Michelle M. Galarneau, Vinod Sharma, Jeffrey D. Wilkinson, Brian B. Lee, Eduardo N. Warman
  • Publication number: 20200380840
    Abstract: A medical device is configured to produce an accelerometer signal and detect a patient fall from the accelerometer signal. The device generates a body posture signal and a body acceleration signal from the accelerometer signal and detects a patient fall in response to determining that the body posture signal and the body acceleration signal meet fall detection criteria. The medical device is configured to receive a truth signal from another device that is not the medical device. The truth signal may indicate that the detected patient fall is a falsely detected patient fall and, responsive to receiving the truth signal, the medical device adjusts at least one fall detection control parameter.
    Type: Application
    Filed: May 20, 2020
    Publication date: December 3, 2020
    Inventors: Michelle M. GALARNEAU, Brian B. LEE, Andrew RADTKE, Vinod SHARMA
  • Publication number: 20200357517
    Abstract: Techniques that include applying machine learning models to episode data, including a cardiac electrogram, stored by a medical device are disclosed. In some examples, based on the application of one or more machine learning models to the episode data, processing circuitry derives, for each of a plurality of arrhythmia type classifications, class activation data indicating varying likelihoods of the classification over a period of time associated with the episode. The processing circuitry may display a graph of the varying likelihoods of the arrhythmia type classifications over the period of time. In some examples, processing circuitry may use arrhythmia type likelihoods and depolarization likelihoods to identify depolarizations, e.g., QRS complexes, during the episode.
    Type: Application
    Filed: April 10, 2020
    Publication date: November 12, 2020
    Inventors: Tarek D. Haddad, Niranjan Chakravarthy, Donald R. Musgrove, Andrew Radtke, Eduardo N. Warman, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20200357519
    Abstract: Techniques are disclosed for using feature delineation to reduce the impact of machine learning cardiac arrhythmia detection on power consumption of medical devices. In one example, a medical device performs feature-based delineation of cardiac electrogram data sensed from a patient to obtain cardiac features indicative of an episode of arrhythmia in the patient. The medical device determines whether the cardiac features satisfy threshold criteria for application of a machine learning model for verifying the feature-based delineation of the cardiac electrogram data. In response to determining that the cardiac features satisfy the threshold criteria, the medical device applies the machine learning model to the sensed cardiac electrogram data to verify that the episode of arrhythmia has occurred or determine a classification of the episode of arrhythmia.
    Type: Application
    Filed: April 17, 2020
    Publication date: November 12, 2020
    Inventors: Niranjan Chakravarthy, Siddharth Dani, Tarek D. Haddad, Donald R. Musgrove, Andrew Radtke, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20200352462
    Abstract: Techniques are disclosed for explaining and visualizing an output of a machine learning system that detects cardiac arrhythmia in a patient. In one example, a computing device receives cardiac electrogram data sensed by a medical device. The computing device applies a machine learning model, trained using cardiac electrogram data for a plurality of patients, to the received cardiac electrogram data to determine, based on the machine learning model, that an episode of arrhythmia has occurred in the patient and a level of confidence in the determination that the episode of arrhythmia has occurred in the patient. In response to determining that the level of confidence is greater than a predetermined threshold, the computing device displays, to a user, a portion of the cardiac electrogram data, an indication that the episode of arrhythmia has occurred, and an indication of the level of confidence that the episode of arrhythmia has occurred.
    Type: Application
    Filed: April 16, 2020
    Publication date: November 12, 2020
    Inventors: Lindsay A. Pedalty, Niranjan Chakravarthy, Rodolphe Katra, Tarek D. Haddad, Andrew Radtke, Siddharth Dani, Donald R. Musgrove
  • Publication number: 20200352522
    Abstract: Techniques are disclosed for monitoring a patient for the occurrence of cardiac arrhythmias. A computing system obtains a cardiac electrogram (EGM) strip for a current patient. Additionally, the computing system may apply a first cardiac rhythm classifier (CRC) with a segment of the cardiac EGM strip as input. The first CRC is trained on training cardiac EGM strips from a first population. The first CRC generates first data regarding an aspect of a cardiac rhythm of the current patient. The computing system may also apply a second CRC with the segment of the cardiac EGM strip as input. The second CRC is trained on training cardiac EGM strips from a smaller, second population. The second CRC generates second data regarding the aspect of the cardiac rhythm of the current patient. The computing system may generate output data based on the first and/or second data.
    Type: Application
    Filed: April 16, 2020
    Publication date: November 12, 2020
    Inventors: Niranjan Chakravarthy, Siddharth Dani, Tarek D. Haddad, Rodolphe Katra, Donald R. Musgrove, Lindsay A. Pedalty, Andrew Radtke
  • Publication number: 20200352466
    Abstract: Techniques are disclosed for using both feature delineation and machine learning to detect cardiac arrhythmia. A computing device receives cardiac electrogram data of a patient sensed by a medical device. The computing device obtains, via feature-based delineation of the cardiac electrogram data, a first classification of arrhythmia in the patient. The computing device applies a machine learning model to the received cardiac electrogram data to obtain a second classification of arrhythmia in the patient. As one example, the computing device uses the first and second classifications to determine whether an episode of arrhythmia has occurred in the patient. As another example, the computing device uses the second classification to verify the first classification of arrhythmia in the patient. The computing device outputs a report indicating that the episode of arrhythmia has occurred and one or more cardiac features that coincide with the episode of arrhythmia.
    Type: Application
    Filed: April 16, 2020
    Publication date: November 12, 2020
    Inventors: Niranjan Chakravarthy, Siddharth Dani, Tarek D. Haddad, Donald R. Musgrove, Andrew Radtke, Eduardo N. Warman, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20200353271
    Abstract: Techniques are disclosed for monitoring a patient for the occurrence of a cardiac arrhythmia. A computing system generates sample probability values by applying a machine learning model to sample patient data. The machine learning model determines a respective probability value that indicates a probability that the cardiac arrhythmia occurred during each respective temporal window. The computing system outputs a user interface comprising graphical data based on the sample probability values and receives, via the user interface, an indication of user input to select a probability threshold for a patient. The computing system receives patient data for the patient and applies the machine learning model to the patient data to determine a current probability value. In response to the determination that the current probability exceeds the probability threshold for the patient, the computing system generates an alert indicating the patient has likely experienced the occurrence of the cardiac arrhythmia.
    Type: Application
    Filed: April 16, 2020
    Publication date: November 12, 2020
    Inventors: Siddharth Dani, Tarek D. Haddad, Donald R. Musgrove, Andrew Radtke, Niranjan Chakravarthy, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20200357518
    Abstract: Techniques are disclosed for preparing data for use in artificial intelligence (AI)-based cardiac arrhythmia detection. In accordance with the techniques of this disclosure, a computing system may obtain a cardiac electrogram (EGM) strip that represents a waveform of a cardiac rhythm of a same patient. Additionally, the computing system may preprocess the cardiac EGM strip. The computing system may then apply a deep learning model to the preprocessed cardiac EGM strip to generate arrhythmia data indicating whether the cardiac EGM strip represents one or more occurrences of one or more cardiac arrhythmias.
    Type: Application
    Filed: April 17, 2020
    Publication date: November 12, 2020
    Inventors: Donald R. Musgrove, Niranjan Chakravarthy, Siddharth Dani, Tarek D. Haddad, Andrew Radtke, Rodolphe Katra, Lindsay A. Pedalty
  • Publication number: 20200345302
    Abstract: The disclosure includes a system for sensing physiologic data. The system can include a flexible configured to wrap around a finger of a user, a first electrode coupled to the flexible strap, and a second electrode coupled to the flexible strap. The system can also include a sensor housing comprising at least one sensor configured to detect physiologic data from the finger and a data receiving module communicatively coupled to the first electrode, the second electrode, and the at least one sensor. The data receiving module can be configured to receive physiologic data from the at least one sensor.
    Type: Application
    Filed: July 14, 2020
    Publication date: November 5, 2020
    Applicant: Aclaris Medical, LLC
    Inventors: Mark Bly, Andrew Radtke