WO2022265841A1 - Adjudication algorithm bypass conditions - Google Patents
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- WO2022265841A1 WO2022265841A1 PCT/US2022/031234 US2022031234W WO2022265841A1 WO 2022265841 A1 WO2022265841 A1 WO 2022265841A1 US 2022031234 W US2022031234 W US 2022031234W WO 2022265841 A1 WO2022265841 A1 WO 2022265841A1
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- A—HUMAN NECESSITIES
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- A61B5/363—Detecting tachycardia or bradycardia
Definitions
- This disclosure generally relates to medical devices and, more particularly, analysis of signals sensed by medical devices.
- Medical devices may be used to monitor physiological signals of a patient.
- some medical devices are configured to sense cardiac electrogram (EGM) signals, e.g., electrocardiogram (ECG) signals, indicative of the electrical activity of the heart via electrodes.
- Some medical devices are configured to detect occurrences of cardiac arrhythmia, often referred to as episodes, based on the cardiac EGM and, in some cases, data from additional sensors.
- Example arrhythmia types include asystole, bradycardia, ventricular tachycardia, supraventricular tachycardia, wide complex tachycardia, atrial fibrillation, atrial flutter, ventricular fibrillation, atrioventricular block, premature ventricular contractions, and premature atrial contractions.
- the medical devices may store the cardiac EGM and other data collected during a time period including an episode as episode data.
- the medical device may also store episode data for a time period in response to user input, e.g., from the patient.
- a computing system may obtain episode data from medical devices to allow a clinician or other user to review the episode.
- a clinician may diagnose a medical condition of the patient based on identified occurrences of cardiac arrhythmias within the episode.
- a clinician or other reviewer may review episode data to annotate the episodes, including determining whether arrhythmias detected by the medical device actually occurred, to prioritize the episodes and generate reports for further review by the clinician that prescribed the medical device for a patient or is otherwise responsible for the care of the particular patient.
- this disclosure describes techniques for bypassing an algorithm configured to classify episode data, including cardiac EGM data, as a true or false indication of a cardiac episode.
- the processing circuitry receives the episode data and determines to bypass the algorithm based on satisfaction of one or more bypass conditions of a set of bypass conditions. Responsive to bypassing the algorithm, the processing circuitry stores the episode data as a true indication of the cardiac episode.
- Bypassing an algorithm in this way may provide one or more advantages. For example, satisfaction of the bypass conditions may indicate that the likelihood of a cardiac episode being true is such that adjudication by the algorithm may not be necessary and/or may incorrectly the identify the episode as false.
- bypassing the algorithm in accordance with techniques of this disclosure may improve diagnosis of cardiac episodes and the quality of information provided from a medical system to caregivers.
- a method of monitoring a patient comprises: receiving, by processing circuitry of a medical device system, episode data for a cardiac episode; determining, by processing circuitry and based on satisfaction of one or more bypass conditions of a set of bypass conditions, to bypass an algorithm configured to determine a likelihood of the episode data being a false indication of the cardiac episode; and storing, by the processing circuitry and responsive to bypassing the algorithm, the episode data as a true indication of the cardiac episode.
- a medical device system comprises processing circuitry configured to: receive episode data for a cardiac episode; determine, based on satisfaction of one or more bypass conditions of a set of bypass conditions, whether to bypass an algorithm configured to determine a likelihood of the episode data being a false indication of the cardiac episode; and store, responsive to bypassing the algorithm, the episode data as a true indication of the cardiac episode.
- a computer-readable medium comprising instructions that, when executed, cause processing circuitry to: receive episode data; determine, based on satisfaction of one or more bypass conditions of a set of bypass conditions, whether to bypass an algorithm configured to determine a likelihood of the episode data being a false indication of a cardiac episode; and store, responsive to bypassing the algorithm, the episode data as a true indication of the cardiac episode.
- FIG. 1 is a conceptual drawing illustrating an example medical device system.
- FIG. 2 is a block diagram illustrating an example configuration of the implantable medical device (IMD) of FIG. 1.
- IMD implantable medical device
- FIG. 3 is a conceptual side-view diagram illustrating an example configuration of the IMD of FIGS. 1 and 2.
- FIG. 4 is a functional block diagram illustrating an example configuration of the computing system of FIG. 1.
- FIG. 5 is a flow diagram illustrating an example operation for utilizing an example medical device system.
- a variety of types of implantable and external medical devices detect arrhythmia episodes based on sensed cardiac EGMs and, in some cases, other physiological parameters.
- External devices that may be used to non-invasively sense and monitor cardiac EGMs include wearable devices with electrodes configured to contact the skin of the patient, such as patches, watches, rings, necklaces, or clothing.
- Such external devices may facilitate relatively longer-term monitoring of patients during normal daily activities, and may periodically transmit collected data, e.g., episode data for detected arrhythmia episodes, to a remote patient monitoring system (sometimes referred to herein as a “monitoring system”), such as the Medtronic CarelinkTM Network.
- a remote patient monitoring system sometimes referred to herein as a “monitoring system”
- the Medtronic CarelinkTM Network such as the Medtronic CarelinkTM Network.
- Implantable medical devices can sense and monitor cardiac EGMs, and detect arrhythmia episodes.
- Example IMDs that monitor cardiac EGMs include pacemakers and implantable cardioverter-defibrillators, which may be coupled to intravascular or extravascular leads, as well as pacemakers with housings configured for implantation within the heart, which may be leadless.
- One example of such an IMD is the Reveal LINQTM Insertable Cardiac Monitor (ICM), available from Medtronic pic, which may be inserted subcutaneously.
- ICM Reveal LINQTM Insertable Cardiac Monitor
- Such IMDs may facilitate relatively longer- term monitoring of patients during normal daily activities, and may periodically transmit collected data, e.g., episode data for detected arrhythmia episodes, to a remote patient monitoring system, such as the Medtronic CarelinkTM Network.
- episode data may include an indication of the one or more arrhythmias that the medical device detected during the episode.
- the episode data may also include data collected by the medical device during a time period including time before and after the instant the medical device determined the one or more arrhythmias to have occurred.
- the episode data may include the digitized cardiac EGM during that time period, heart rates or other parameters derived from the EGM during that time period, and any other physiological parameter data collected by the medical device during the time period.
- a remote patient monitoring system may be configured to review and annotate the episodes.
- the monitoring system may apply one or more atrial fibrillation (AF) adjudication algorithms, such as machine learning models, to the episode data to detect AF, time in AF, atrial tachycardia (AT), time in AT/AF, a pause (e.g., a prolonged R-R interval that represents the interruption in ventricular depolarization), and other types of arrythmias.
- AF atrial fibrillation
- the adjudication algorithm of the monitoring system may classify episode data as either a true or false indication of a cardiac episode. These algorithms may help reduce the amount of time physicians spend reviewing episodes, in turn allowing them to focus on treating patients. Nonetheless, in certain scenarios, it may be preferable to bypass the algorithm and instead have a physician manually review the episode data.
- This disclosure describes a medical device system that uses processing circuitry to bypass an adjudication algorithm of a monitoring system configured to classify episode data, including cardiac EGM data, as a true or false indication of a cardiac episode (e.g., AF episodes).
- the medical device system may include a medical device, such as one of the devices described above or any other type of implantable device, such as a subcutaneous cardiac monitoring device, a single chamber ICD, an extravascular ICD, a subcutaneous ICD, or any other type of device configured to classify detected cardiac episodes.
- the system may also include an external device, such as a cloud-based system that is external to the cardiac monitoring device, like Medtronic CarelinkTM Network introduced above.
- the cloud-based system may include a monitoring system.
- cardiac monitoring devices are typically battery powered and, in the case of IMDs, need to have a sufficient enough battery life to justify implantation, the devices usually have limited processing capabilities in order to limit battery drain, which may limit the complexity of the algorithms that can be implemented inside the cardiac monitoring device.
- cardiac monitoring devices can be configured to transmit data collected for suspected cardiac episodes to the external system so the external system can use advanced signal processing techniques to post process stored and transmitted data for episodes prior to review by physicians. The transmission of data may be scheduled, occur in response to an event, such as abnormal heart activity, etc. For example, a cardiac monitoring device may transmit episode data on a daily basis to the external system. Additionally or alternatively, the cardiac monitoring system may send event-responsive transmissions.
- the event may be something the cardiac monitoring device sensed (e.g., an episode that is considered severe because of type or severity in general) or a user request.
- This disclosure describes advanced signal processing techniques that may be used by the external system to post process the episodes detected by the cardiac monitoring device.
- the techniques of this disclosure will be described as being performed by an external system, it should be understood that in other implementations the described techniques may be performed by the IMD itself or a device used to facilitate communication between the IMD and the external system, e.g., a smartphone, access point, or other edge device.
- the medical device system may use processing circuitry to receive episode data.
- the processing circuitry of the medical device system may then determine whether to bypass an adjudication algorithm based on the satisfaction of one or more bypass conditions of a set of bypass conditions. Responsive to bypassing the adjudication algorithm, the processing circuitry may store the episode data as a true indication of a cardiac episode, such as an AF episode.
- the set of bypass conditions may include various bypass conditions.
- One example bypass condition may be a time period condition.
- the medical device system may determine that the episode data satisfies the time period condition when the episode data received by the processing circuitry of the medical device system is a first transmission of episode data for the cardiac episode for a time period (e.g., a month). For example, if a transmission of episode data by a medical device to the medical device system is the first transmission of episode data during a time period of a particular month (e.g., May), then the medical device system may determine that the episode data satisfies the time period condition and bypass the adjudication algorithm of the monitoring system. Accordingly, the medical device system may store the episode data in memory (e.g., of the medical device system) for a physician to review.
- memory e.g., of the medical device system
- the time period may be based on a health condition of the patient.
- Example health conditions may include congestive heart failure, hypertension, age, diabetes, prior stroke, vascular disease, gender, etc.
- the time period may be relatively short (e.g., 7 to 14 days) to potentially increase the frequency at which the medical device system bypasses the adjudication algorithm.
- the medical device system may select a predetermined length of the time period based on the health condition of the patient. Additionally or alternatively, a physician may manually define the length of the time period.
- the medical device system may not bypass the adjudication algorithm, enabling the adjudication algorithm to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the time period condition may ensure that the medical device system stores the first transmission of episode data for any given time period. This may be beneficial because the first transmission of episode data during a time period may be more relevant to a physician when treating a patient than subsequent transmissions of episode data during the same time period.
- the set of bypass conditions may additionally or alternatively include an interval condition.
- the medical device system may determine that the episode data satisfies the interval condition when the episode data received by the processing circuitry of the medical device system is a first transmission of the episode data for the cardiac episode after an elapse of a time interval (e.g., 10 days) from a previous transmission of episode data for the cardiac episode. For example, if a transmission of episode data by a medical device to the medical device system is the first transmission of episode data after an elapse of a time interval of 10 days from a previous transmission of episode data for the cardiac episode, then the medical device system may determine that the episode data satisfies the interval condition and bypass the adjudication algorithm of the monitoring system. Accordingly, the medical device system may store the episode data in memory (e.g., of the medical device system) for a physician to review.
- a time interval e.g. 10 days
- the medical device system may not bypass the adjudication algorithm, enabling the adjudication algorithm to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the interval condition may ensure that the medical device system stores a transmission of episode data that occurs at least a predetermined time interval after an immediately preceding transmission of episode data. This may be beneficial because the first transmission of episode data after an elapse of a time interval may be less likely to be a false indication of a cardiac episode, thus warranting review of the episode data by a physician.
- the set of bypass conditions may include additional bypass conditions, including, but not limited to, an implantation condition, a long-duration condition, a short duration condition, a user input condition, a frailty condition, a blood pressure condition, and/or the like.
- the set of bypass conditions may also include a very rapid rate with rate onset condition, a new onset condition, an increase in fluid retention or detection of a fall event condition, reduction in activity duration condition, etc.
- the processing circuitry of the medical device system may be configured to weigh each bypass condition of the set of bypass conditions to determine to bypass the adjudication algorithm.
- the processing circuitry may assign a weight to each bypass condition of the set of bypass conditions, and, responsive to determining that the episode data satisfies one or more of the bypass conditions, calculate an aggregate weight of the one or more bypass conditions satisfied by the episode data.
- the processing circuitry may then determine to bypass the adjudication algorithm based on whether the aggregate weight satisfies the weight threshold. For example, if the aggregate weight exceeds a weight threshold value, then the processing circuitry may bypass the adjudication algorithm, storing the episode data in memory (e.g., of the medical device system) for a physician to review.
- the processing circuitry may determine satisfaction of the one or more bypass conditions using decision trees, random forests, fuzzy logic, etc.
- a cardiac monitoring device may include application-specific processing circuitry configured to execute machine learning algorithms or other adjudication algorithms.
- a medical device e.g., an insertable cardiac monitor or other implantable medical device, may be configured to perform one or more techniques of the present disclosure alone. In such an example, however, it may be unnecessary to transmit the episode data across a network (e.g., because collecting the episode data and adjudicating the episode data may be performed by the same medical device).
- FIG. l is a conceptual drawing illustrating an example of a medical device system 2 configured to bypass an adjudication algorithm in accordance with the techniques of the disclosure.
- the example techniques may be used with an IMD 10, which may be in wireless communication with an external device 12.
- IMD 10 is implanted outside of a thoracic cavity of patient 4 (e.g., subcutaneously in the pectoral location illustrated in FIG. 1).
- IMD 10 may be positioned near the sternum near or just below the level of the heart of patient 4, e.g., at least partially within the cardiac silhouette.
- IMD 10 includes a plurality of electrodes (not shown in FIG. 1), and is configured to sense a cardiac EGM via the plurality of electrodes.
- a plurality of electrodes not shown in FIG. 1
- IMD 10 takes the form of the LINQTM ICM. Although described primarily in the context of examples in which the medical device that collects episode data takes the form of an ICM, the techniques of this disclosure may be implemented in systems including any one or more implantable or external medical devices, including monitors, pacemakers, or defibrillators.
- External device 12 is a computing device configured for wireless communication with IMD 10. External device 12 may be, as examples, a mobile telephone or other computing device of patient 4 or another user, or a computing device detected to communication with IMD 10. External device 12 may be configured to communicate with computing system 24 via network 25. In some examples, external device 12 may provide a user interface and allow a user to interact with IMD 10. Computing system 24 may comprise computing devices configured to allow a user to interact with IMD 10, or data collected from IMD, via network 25.
- External device 12 may be used to retrieve data from IMD 10 and may transmit the data to computing system 24 via network 25.
- the retrieved data may include values of physiological parameters measured by IMD 10, indications of episodes of arrhythmia or other maladies detected by IMD 10, episode data collected for episodes, and other physiological signals recorded by IMD 10.
- the episode data may include EGM segments recorded by IMD 10, e.g., due to IMD 10 determining that an episode of arrhythmia or another malady occurred during the segment, or in response to a request to record the segment from patient 4 or another user.
- computing system 24 includes one or more handheld computing devices, computer workstations, servers or other networked computing devices.
- computing system 24 may include one or more devices, including processing circuitry and storage devices, that implement a monitoring system 450.
- Computing system 24, network 25, and monitoring system 450 may be implemented by the Medtronic CarelinkTM Network or other patient monitoring system, in some examples.
- Network 25 may include one or more computing devices (not shown), such as one or more non-edge switches, routers, hubs, gateways, security devices such as firewalls, intrusion detection, and/or intrusion prevention devices, servers, computer terminals, laptops, printers, databases, wireless mobile devices such as cellular phones or personal digital assistants, wireless access points, bridges, cable modems, application accelerators, or other network devices.
- Network 25 may include one or more networks administered by service providers, and may thus form part of a large-scale public network infrastructure, e.g., the Internet.
- Network 25 may provide computing devices, such as computing system 24 and IMD 10, access to the Internet, and may provide a communication framework that allows the computing devices to communicate with one another.
- network 25 may be a private network that provides a communication framework that allows computing system 24, IMD 10, and/or external device 12 to communicate with one another but isolates one or more of computing system 24, IMD 10, or external device 12 from devices external to network 25 for security purposes.
- the communications between computing system 24, IMD 10, and external device 12 are encrypted.
- Monitoring system 450 may implement the techniques of this disclosure including applying machine learning models or other models or algorithms to episode data to detect cardiac arrhythmias.
- Monitoring system 450 may receive episode data for episodes from medical devices, including IMD 10, which may store the episode data in response to their detection of an arrhythmia and/or user input. Based on the application of one or more arrhythmia classification algorithms, monitoring system 450 may determine the likelihood that one or more arrhythmias of one or more types occurred during the episode including, in some examples, the arrhythmia identified by the medical device that stored the episode data.
- Monitoring system 450 may, for example, receive episode data, e.g., ECG data, for an episode of a patient from IMD 10. Monitoring system 450 may then apply one or more algorithms, such as a machine learning model, to classify the episode data as a true or false indication of a cardiac episode.
- Processing circuitry of medical device system 2 may be configured to perform the example techniques of this disclosure for bypassing an algorithm configured to classify episode data, including cardiac EGM data, as a true or false indication of a cardiac episode. Responsive to processing circuitry of medical device system 2 receiving episode data, the processing circuitry may determine whether to bypass the adjudication algorithm based on the satisfaction of one or more bypass conditions of a set of bypass conditions, discussed in greater detail with respect to FIG. 4. Responsive to bypassing the adjudication algorithm, the processing circuitry may store the episode data as a true indication of a cardiac episode, such as an AF episode.
- FIG. 2 is a block diagram illustrating an example configuration of IMD 10 of FIG. 1.
- IMD 10 includes processing circuitry 50 sensing circuitry 52, communication circuitry 54, memory 56, sensors 58, switching circuitry 60, and electrodes 16A, 16B (hereinafter “electrodes 16”), one or more of which may be disposed on a housing of IMD 10.
- memory 56 includes computer-readable instructions that, when executed by processing circuitry 50, cause IMD 10 and processing circuitry 50 to perform various functions attributed herein to IMD 10 and processing circuitry 50.
- Memory 56 may include any volatile, non-volatile, magnetic, optical, or electrical media, such as a random-access memory (RAM), read-only memory (ROM), non-volatile RAM (NVRAM), electrically-erasable programmable ROM (EEPROM), flash memory, or any other digital media.
- RAM random-access memory
- ROM read-only memory
- NVRAM non-volatile RAM
- EEPROM electrically-erasable programmable ROM
- flash memory or any other digital media.
- Processing circuitry 50 may include fixed function circuitry and/or programmable processing circuitry. Processing circuitry 50 may include any one or more of a microprocessor, a controller, a digital signal processor (DSP), an application specific integrated circuit (ASIC), a field-programmable gate array (FPGA), or equivalent discrete or analog logic circuitry. In some examples, processing circuitry 50 may include multiple components, such as any combination of one or more microprocessors, one or more controllers, one or more DSPs, one or more ASICs, or one or more FPGAs, as well as other discrete or integrated logic circuitry. The functions attributed to processing circuitry 50 herein may be embodied as software, firmware, hardware or any combination thereof.
- Sensing circuitry 52 may be selectively coupled to electrodes 16 A, 16B via switching circuitry 60 as controlled by processing circuitry 50. Sensing circuitry 52 may monitor signals from electrodes 16A, 16B in order to monitor electrical activity of a heart of patient 4 of FIG. 1 and produce cardiac EGM data for patient 4. In some examples, processing circuitry 50 may identify features of the sensed cardiac EGM to detect an episode of cardiac arrhythmia of patient 4. Processing circuitry 50 may store the digitized cardiac EGM and features of the EGM used to detect the arrhythmia episode in memory 56 as episode data for the detected arrhythmia episode.
- processing circuitry 50 stores one or more segments of the cardiac EGM data, features derived from the cardiac EGM data, and other episode data in response to instructions from external device 12 (e.g., when patient 4 experiences one or more symptoms of arrhythmia and inputs a command to external device 12 instructing IMD 10 to upload the data for analysis by a monitoring center or clinician).
- processing circuitry 50 transmits, via communication circuitry 54, the episode data for patient 4 to an external device, such as external device 12 of FIG. 1.
- IMD 10 sends digitized cardiac EGM and other episode data to network 25 for processing by monitoring system 450 of FIG. 1.
- Sensing circuitry 52 and/or processing circuitry 50 may be configured to detect cardiac depolarizations (e.g., P-waves of atrial depolarizations or R-waves of ventricular depolarizations) when the cardiac EGM amplitude crosses a sensing threshold.
- sensing circuitry 52 may include a rectifier, filter, amplifier, comparator, and/or analog-to-digital converter, in some examples.
- sensing circuitry 52 may output an indication to processing circuitry 50 in response to sensing of a cardiac depolarization. In this manner, processing circuitry 50 may receive detected cardiac depolarization indicators corresponding to the occurrence of detected R-waves and P-waves in the respective chambers of heart.
- Processing circuitry 50 may use the indications of detected R-waves and P-waves for determining features of the cardiac EGM including inter-depolarization intervals, heart rate, and detecting arrhythmias, such as tachyarrhythmias and asystole.
- Sensing circuitry 52 may also provide one or more digitized cardiac EGM signals to processing circuitry 50 for analysis, e.g., for use in cardiac rhythm discrimination and/or to identify and delineate features of the cardiac EGM, such as QRS amplitudes and/or width, or other morphological features.
- IMD 10 includes one or more sensors 58, such as one or more accelerometers, microphones, optical sensors, and/or pressure sensors.
- sensing circuitry 52 may include one or more filters and amplifiers for filtering and amplifying signals received from one or more of electrodes 16A, 16B and/or other sensors 58.
- sensing circuitry 52 and/or processing circuitry 50 may include a rectifier, filter and/or amplifier, a sense amplifier, comparator, and/or analog-to- digital converter.
- Processing circuitry 50 may determine values of physiological parameters of patient 4 based on signals from sensors 58, which may be used to identify arrhythmia episodes and stored as episode data in memory 56.
- Communication circuitry 54 may include any suitable hardware, firmware, software or any combination thereof for communicating with another device, such as external device 12.
- Communication circuitry 54 may be configured to communicate using any of a variety of wireless communication schemes, such as Bluetooth® or Bluetooth Low Energy®.
- communication circuitry 54 may receive downlink telemetry from, as well as send uplink telemetry to, external device 12 or another device with the aid of an internal or external antenna, e.g., antenna 26.
- processing circuitry 50 may communicate with a networked computing device via an external device (e.g., external device 12) and a computer network, such as the Medtronic CareLink® Network developed by Medtronic, pic, of Dublin, Ireland.
- the techniques for cardiac arrhythmia detection disclosed herein may be used with other types of devices.
- the techniques may be implemented with an extra-cardiac defibrillator coupled to electrodes outside of the cardiovascular system, a transcatheter pacemaker configured for implantation within the heart, such as the MicraTM transcatheter pacing system commercially available from Medtronic PLC of Dublin Ireland, an insertable cardiac monitor, such as the Reveal LINQTMICM, also commercially available from Medtronic PLC, a neurostimulator, a drug delivery device, a medical device external to patient 4, a wearable device such as a wearable cardioverter defibrillator, a fitness tracker, or other wearable device, a mobile device, such as a mobile phone, a “smart” phone, a laptop, a tablet computer, a personal digital assistant (PDA), or “smart” apparel such as “smart” glasses, a “smar
- FIG. 3 is a conceptual side-view diagram illustrating an example configuration of IMD 10.
- IMD 10 may include a leadless, subcutaneously-implantable monitoring device having a housing 14 and an insulative cover 74.
- Electrode 16A and electrode 16B may be formed or placed on an outer surface of cover 74.
- Circuitries 50-56 and 60, described above with respect to FIG. 2, may be formed or placed on an inner surface of cover 74, or within housing 14.
- antenna 26 is formed or placed on the inner surface of cover 74, but may be formed or placed on the outer surface in some examples.
- Sensors 58 may also be formed or placed on the inner or outer surface of cover 74 in some examples.
- insulative cover 74 may be positioned over an open housing 14 such that housing 14 and cover 74 enclose antenna 26, sensors 58, and circuitries 50-56 and 60, and protect the antenna and circuitries from fluids such as body fluids.
- One or more of antenna 26, sensors 58, or circuitries 50-56 may be formed on insulative cover 74, such as by using flip-chip technology.
- Insulative cover 74 may be flipped onto a housing 14. When flipped and placed onto housing 14, the components of IMD 10 formed on the inner side of insulative cover 74 may be positioned in a gap 76 defined by housing 14. Electrodes 16 may be electrically connected to switching circuitry 60 through one or more vias (not shown) formed through insulative cover 74.
- Insulative cover 74 may be formed of sapphire (i.e., corundum), glass, parylene, and/or any other suitable insulating material.
- Housing 14 may be formed from titanium or any other suitable material (e.g., a biocompatible material).
- Electrodes 16 may be formed from any of stainless steel, titanium, platinum, iridium, or alloys thereof. In addition, electrodes 16 may be coated with a material such as titanium nitride or fractal titanium nitride, although other suitable materials and coatings for such electrodes may be used.
- FIG. 4 is a block diagram illustrating an example configuration of computing system 24.
- computing system 24 includes processing circuitry 402 for executing applications 424 that include monitoring system 450 or any other applications described herein.
- Computing system 24 may be any component or system that includes processing circuitry or other suitable computing environment for executing software instructions and, for example, need not necessarily include one or more elements shown in FIG. 4 (e.g., input devices 404, communication circuitry 406, user interface devices 410, or output devices 412; and in some examples components such as storage device(s) 408 may not be co-located or in the same chassis as other components).
- computing system 24 may be a cloud computing system distributed across a plurality of devices.
- computing system 24 includes processing circuitry 402, one or more input devices 404, communication circuitry 406, one or more storage devices 408, user interface (UI) device(s) 410, and one or more output devices 412.
- Computing system 24, in some examples, further includes one or more application(s) 424 such as monitoring system 450, and operating system 416 that are executable by computing system 24.
- Each of components 402, 404, 406, 408, 410, and 412 may be coupled (physically, communicatively, and/or operatively) for inter-component communications.
- communication channels 414 may include a system bus, a network connection, an inter-process communication data structure, or any other method for communicating data.
- components 402, 404, 406, 408, 410, and 412 may be coupled by one or more communication channels 414.
- Processing circuitry 402 in one example, is configured to implement functionality and/or process instructions for execution within computing system 24.
- processing circuitry 402 may be capable of processing instructions stored in storage device 408.
- Examples of processing circuitry 402 may include any one or more of a microprocessor, a controller, a digital signal processor (DSP), an application specific integrated circuit (ASIC), a field-programmable gate array (FPGA), or equivalent discrete or integrated logic circuitry.
- DSP digital signal processor
- ASIC application specific integrated circuit
- FPGA field-programmable gate array
- One or more storage devices 408 may be configured to store information within computing device 400 during operation.
- Storage device 408, in some examples, is described as a computer-readable storage medium.
- storage device 408 is a temporary memory, meaning that a primary purpose of storage device 408 is not long term storage.
- Storage device 408, in some examples, is described as a volatile memory, meaning that storage device 408 does not maintain stored contents when the computer is turned off. Examples of volatile memories include RAM, dynamic random access memories (DRAM), static random access memories (SRAM), and other forms of volatile memories known in the art.
- storage device 408 is used to store program instructions for execution by processing circuitry 402.
- Storage device 408, in one example, is used by software or applications 424 running on computing system 24 to temporarily store information during program execution.
- Storage devices 408 may be configured to store larger amounts of information than volatile memory.
- Storage devices 408 may further be configured for long-term storage of information.
- storage devices 408 include non volatile storage elements. Examples of such non-volatile storage elements include magnetic hard discs, optical discs, floppy discs, flash memories, or forms of electrically programmable memories (EPROM) or electrically erasable and programmable memories (EEPROM).
- Computing system 24 also includes communication circuitry 406 to communicate with other devices and systems, such as IMD 10 and external device 12 of FIG. 1.
- Communication circuitry 406 may include a network interface card, such as an Ethernet card, an optical transceiver, a radio frequency transceiver, or any other type of device that can send and receive information.
- network interfaces may include 3G, 4G, 5G, and WiFi radios.
- Computing system 24, in one example also includes one or more user interface devices 410.
- User interface devices 410 are configured to receive input from a user through tactile, audio, or video feedback.
- Examples of user interface devices(s) 410 include a presence-sensitive display, a mouse, a keyboard, a voice responsive system, video camera, microphone or any other type of device for detecting a command from a user.
- a presence-sensitive display includes a touch- sensitive screen.
- One or more output devices 412 may also be included in computing system 24.
- Output devices 412 are configured to provide output to a user using tactile, audio, or video stimuli.
- Output devices 412 include a presence- sensitive display, a sound card, a video graphics adapter card, or any other type of device for converting a signal into an appropriate form understandable to humans or machines.
- Additional examples of output devices 412 include a speaker, a cathode ray tube (CRT) monitor, a liquid crystal display (LCD), or any other type of device that can generate intelligible output to a user.
- CTR cathode ray tube
- LCD liquid crystal display
- Computing system 24 may include operating system 416.
- Operating system 416 in some examples, controls the operation of components of computing system 24.
- operating system 416 facilitates the communication of one or more applications 424 and monitoring system 450 with processing circuitry 402, communication circuitry 406, storage device 408, input device 404, user interface devices 410, and output device 412.
- Applications 424 may also include program instructions and/or data that are executable by computing device 400.
- Example application(s) 424 executable by computing device 400 may include monitoring system 450.
- Other additional applications not shown may alternatively or additionally be included to provide other functionality described herein and are not depicted for the sake of simplicity.
- Computing system 24 may receive episode data for episodes stored by medical devices, such as IMD 10, via communication circuitry 406.
- Storage device 408 may store the episode data for the episodes in storage device 408.
- the episode data may have been collected by the medical devices in response to the medical devices detecting arrhythmias and/or user input directing the storage of episode data.
- Monitoring system 450 as implemented by processing circuitry 402, may review and annotate the episodes, and generate reports or other presentations of the episodes subsequent to the annotation for review by a clinician or other reviewer.
- Monitoring system 450 may utilize input devices 404, output devices 412, and/or communication circuitry 406 to display episode data, arrhythmia type classifications, and any other information described herein to users, and to receive any annotations or other input regarding the episode data from the users.
- monitoring system 450 may apply one or more adjudication algorithms 452 to episode data.
- Adjudication algorithm 452 may include, as examples, neural networks, such as deep neural networks, which may include convolutional neural networks, multi-layer perceptrons, and/or echo state networks, as examples.
- adjudication algorithm 452 represents one or more arrhythmia classification machine learning models.
- Adjudication algorithm 452 may be configured to output, for each of a plurality of arrhythmia type classifications, values indicative of the likelihood that an arrhythmia of the type occurred at any point during the episode.
- Monitoring system 450 may apply configurable thresholds (e.g., 50%, 75%, 90%, 95%, 99%) to the likelihood values to identify the episode as including one or more arrhythmia types, e.g., based on the likelihood for that classification meeting or exceeding the threshold.
- FIG. 4 illustrates an example in which monitoring system 450 applies one or more adjudication algorithms 452 as part of its algorithm to classify arrhythmias, in some examples the algorithm includes other artificial intelligence, or other models or algorithms that do not necessarily require machine learning, such as linear regression, trend analysis, decision trees, rules, or thresholds.
- processing circuitry 402 is configured to execute computer-readable instructions stored within storage devices 408 that cause processing circuitry 402 to bypass adjudication algorithm 452 configured to classify episode data as a true or false indication of a cardiac episode.
- processing circuitry 402 may, in response to receiving episode data, determine whether to bypass adjudication algorithm 452 based on the satisfaction of one or more bypass conditions of a set of bypass conditions. Responsive to bypassing adjudication algorithm 452, processing circuitry 402 may store the episode data as a true indication of a cardiac episode, such as an AF episode.
- the set of bypass conditions may include various bypass conditions.
- One example bypass condition may be a time period condition.
- Processing circuitry 402 may determine that the episode data satisfies the time period condition when the episode data received by processing circuitry 402 is a first transmission of the episode data for the cardia episode for a time period (e.g., a month).
- the time period may be based on a health condition of the patient.
- Example health conditions may include congestive heart failure, hypertension, age, diabetes, prior stroke, vascular disease, gender, etc.
- the time period may be relatively short (e.g., 7 to 14 days) to potentially increase the frequency at which the medical device system bypasses adjudication algorithm 452.
- the medical device system may select a predetermined length of the time period based on the health condition of the patient. Additionally or alternatively, a physician may manually define the length of the time period.
- processing circuitry 402 may determine that the episode data satisfies the time period condition and bypass adjudication algorithm 452. Accordingly, processing circuitry 402 may store the episode data in memory (e.g., storage devices 408) for a physician to review.
- memory e.g., storage devices 408
- processing circuitry 402 may not bypass adjudication algorithm 452, enabling adjudication algorithm 452 to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the time period condition may ensure that medical device system 2 stores the first transmission of episode data for any given time period. This may be beneficial because the first transmission of episode data during a time period may be more relevant to a physician when treating a patient than subsequent transmissions of episode data during the same time period.
- the set of bypass conditions may additionally or alternatively include an interval condition.
- Processing circuitry 402 may determine that the episode data satisfies the interval condition when the episode data received by processing circuitry 402 is a first transmission of the episode data for the cardiac episode after an elapse of a time interval (e.g., 10 days) from a previous transmission of episode data for the cardiac episode. For example, if a transmission of episode data by IMD 10 to medical device system 2 is the first transmission of episode data after an elapse of a time interval of 10 days from a previous transmission of episode data for the cardiac episode, then processing circuitry 402 may determine that the episode data satisfies the interval condition and bypass adjudication algorithm 452. Accordingly, medical device system 2 may store the episode data in memory for a physician to review.
- a time interval e.g. 10 days
- the transmission of episode data is a transmission of episode data before the elapse of the time interval (e.g., a transmission of episode data with 2 days remaining before the elapse of the time interval)
- medical device system 2 may not bypass adjudication algorithm 452, enabling adjudication algorithm 452 to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the interval condition may ensure that medical device system 2 stores a transmission of episode data that occurs at least a predetermined time interval after an immediately preceding transmission of episode data. This may be beneficial because the first transmission of episode data after an elapse of a time interval may be less likely to be a false indication of a cardiac episode, thus warranting review of the episode data by a physician.
- the set of bypass conditions may additionally or alternatively include an implantation condition.
- Processing circuitry 402 may determine that the episode data satisfies the implantation condition when the episode data received by processing circuitry 402 is one of a first N transmissions of the episode data for the cardiac episode after implantation of IMD 10 of medical device system 2. For example, if N is 10 and a transmission of episode data by IMD 10 to medical device system 2 is the fifth transmission of episode data after implantation of IMD 10, then processing circuitry 402 may determine that the episode data satisfies the implantation condition and bypass adjudication algorithm 452. Accordingly, medical device system 2 may store the episode data in memory for a physician to review.
- the transmission of episode data is the eleventh transmission of episode data after implantation of IMD 10
- medical device system 2 may not bypass adjudication algorithm 452, enabling adjudication algorithm 452 to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the implantation condition may ensure that medical device system 2 stores the first N transmissions of episode data after implantation of IMD 10. This may be beneficial because the first N transmissions of episode data after implantation of IMD 10 may be less likely to be a false indication of a cardiac episode, thus warranting review of the episode data by a physician. It should be understood that N may be any number of transmissions, such as 5, 8, 12, 20, etc.
- the set of bypass conditions may additionally or alternatively include a long duration condition.
- Processing circuitry 402 may determine that the episode data satisfies the long duration condition when a duration of the episode data received by processing circuitry 402 exceeds a long duration threshold value. For example, if the long duration threshold value is 30 minutes and the duration of the episode data received by processing circuitry 402 is 31 minutes, then processing circuitry 402 may determine that the episode data satisfies the long duration condition and bypass adjudication algorithm 452. Accordingly, medical device system 2 may store the episode data in memory for a physician to review.
- the long duration condition may ensure that medical device system 2 stores episode data with a duration equal to or greater than a long duration threshold value. This may be beneficial because episode data with a duration equal to or greater than a long duration threshold value may be less likely to be a false indication of a cardiac episode, thus warranting review of the episode data by a physician.
- the set of bypass conditions may additionally or alternatively include a short duration condition.
- Processing circuitry 402 may determine that the episode data satisfies the short duration condition when a duration of the episode data received by processing circuitry 402 is less than a short duration threshold value. For example, if the short duration threshold value is 2 seconds and the duration of the episode data received by processing circuitry 402 is 1 second, then processing circuitry 402 may determine that the episode data satisfies the short duration condition and bypass adjudication algorithm 452. Accordingly, medical device system 2 may store the episode data in memory for a physician to review.
- the short duration condition may ensure that medical device system 2 stores episode data with a duration less than a short duration threshold value.
- a physician may have specifically programmed the asystole detection interval to be relatively short (e.g., 2 seconds or less) because the physician considers episode data having such an interval to be clinically significant events, thus warranting review of the episode data by the physician.
- the set of bypass conditions may additionally or alternatively include a user input condition.
- Processing circuitry 402 may determine that the episode data satisfies the user input condition when the user provides a user input (e.g., actuation of a user interface) that causes processing circuitry 402 to bypass the algorithm for a bypass period. For example, if the user presses a button on external device 12 associated with bypassing adjudication algorithm 452, then processing circuitry 402 may determine that the user input condition is satisfied and bypass adjudication algorithm 452 for a bypass period (e.g., a predetermined range of time beginning before the user input and ending after the user input). Accordingly, medical device system 2 may store the episode data in memory for a physician to review.
- a user input e.g., actuation of a user interface
- episode data occurring within a range of time of the user input is less likely to be a false indication of a cardiac episode, thus warranting review of the episode data by the physician.
- the set of bypass conditions may additionally or alternatively include a frailty condition.
- Processing circuitry 402 may determine that the episode data satisfies the frailty condition when a transmission of episode data for the cardiac episode occurs within a time window during which the patient at least one of falls or exhibits body instability (e.g., abnormal stride patterns, imbalance after standing, increased time to transition from standing to sitting, etc.).
- An accelerometer, gyroscope, and/or the like e.g., included among sensor(s) 58 of IMD 10 or in external device 12, may be used to detect whether the patient has fallen or exhibits body instability.
- an accelerometer may be used to monitor the variability of stride duration to detect an abnormal stride pattern, body stability (e.g., balance) after standing, amount of time to transition from sitting to standing and vice versa, etc.
- processing circuitry 402 bypassing adjudication algorithm 452
- the beginning of a time window is 30 minutes before the occurrence of a fall or body instability
- the end of the time window is 30 minutes after the occurrence of a fall or body instability
- the transmission of episode data for the cardiac episode occurs 15 minutes after the occurrence of a fall (e.g., detected by an accelerometer of IMD 10)
- processing circuitry 402 may determine that the episode data satisfies the frailty condition and bypass adjudication algorithm 452.
- medical device system 2 may store the episode data in memory for a physician to review.
- processing circuitry 402 may not bypass adjudication algorithm 452, enabling adjudication algorithm 452 to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the frailty condition may ensure that medical device system 2 stores episode data that occurs within a time window during which the patient at least one of falls or exhibits body instability. This may be beneficial because the transmission of episode data within such a time window may be less likely to be a false indication of a cardiac episode, thus warranting review of the episode data by a physician.
- the set of bypass conditions may additionally or alternatively include a blood pressure condition.
- Processing circuitry 402 may determine that the episode data satisfies the blood pressure condition when a transmission of episode data for the cardiac episode occurs within a time window during which a change in blood pressure of the patient exceeds a blood pressure threshold value.
- a blood pressure threshold value For example, an optical sensor may be used to detect whether a change in blood pressure (e.g., systolic, diastolic, etc.) of the patient exceeds a blood pressure threshold value.
- processing circuitry 402 may bypass adjudication algorithm 452 based on a Pulse Transit Time (PTT), which may be correlated with blood pressure, instead of blood pressure because blood pressure may be difficult to continuously monitor (e.g., using IMD 10).
- PTT Pulse Transit Time
- processing circuitry 402 bypassing adjudication algorithm based on blood pressure
- the blood pressure threshold value is 20 millimeters of mercury (mmHg)
- the change in the systolic pressure is 40 mmHg
- the beginning of a time window is 30 minutes before the occurrence of this change in blood pressure
- the end of the time window is 30 minutes after the occurrence of change in blood pressure
- the transmission of episode data for the cardiac episode occurs 20 minutes after the occurrence of the change in blood pressure
- processing circuitry 402 may determine that the episode data satisfies the blood pressure condition and bypass adjudication algorithm 452. Accordingly, medical device system 2 may store the episode data in memory for a physician to review.
- processing circuitry 402 may not bypass adjudication algorithm 452, enabling adjudication algorithm 452 to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the blood pressure condition may ensure that medical device system 2 stores episode data that occurs within a time window during which a change in blood pressure (e.g., systolic, diastolic, etc.) of the patient exceeds a blood pressure threshold value.
- processing circuitry 402 bypassing adjudication algorithm 452 based on blood pressure may be substantially similar to examples of processing circuitry 402 bypassing adjudication algorithm 452 based on PPT due to PPT being correlated with blood pressure.
- processing circuitry 402 may be configured to weigh each bypass condition of the set of bypass conditions to determine to bypass adjudication algorithm 452.
- processing circuitry 402 may assign a weight (e.g., selected by a clinician, determined by an algorithm, such as a machine learning algorithm executed by processing circuitry 402, etc.) to each bypass condition of the set of bypass conditions, and, responsive to determining that the episode data satisfies one or more of the bypass conditions, calculate an aggregate weight of the one or more bypass conditions satisfied by the episode data. Processing circuitry 402 may then determine to bypass adjudication algorithm 452 based on the aggregate weight satisfying the weight threshold. For example, if the aggregate weight (e.g., 99%) exceeds a weight threshold value (e.g., 85%), then processing circuitry 402 may bypass adjudication algorithm 452, storing the episode data in memory for a physician to review.
- a weight e.g., selected by a clinician, determined by an algorithm, such as a machine learning algorithm executed by processing circuitry 402, etc.
- the set of bypass conditions may additionally or alternatively include an ischemic stroke condition.
- Processing circuitry 402 may determine that the episode data satisfies the ischemic stroke condition when patient has previously experienced an ischemic stroke (e.g., a stroke of known origin, a cryptogenic stroke, etc.), the occurrence of which may be indicated by a user of system via a user interface or retrieved from electronic health records, and the episode data received by processing circuitry 402 is a first transmission of the episode data for the cardiac episode after an elapse of a time interval (e.g., 15 days).
- a time interval e.g. 15 days
- processing circuitry 402 may determine that the episode data satisfies the interval condition and bypass the adjudication algorithm. Accordingly, medical device system 2 may store the episode data in memory for a physician to review. If instead the transmission of episode data by IMD 10 to medical device system 2 is not the first transmission of episode data after an elapse of the time interval of 15 days or is a transmission of episode data before the elapse of the time interval of 15 days, then processing circuitry 402 may not bypass adjudication algorithm 452, enabling adjudication algorithm 452 to determine the likelihood of the episode data being a true or false indication of a cardiac episode.
- the set of bypass conditions may additionally or alternatively include a clinician activation condition.
- Processing circuitry 402 may determine that the episode data satisfies the clinician activation condition when the clinician provides an input (e.g., actuation of a user interface) that causes processing circuitry 402 to bypass the algorithm for a bypass period.
- a clinician may program processing circuitry 402 to bypass adjudication algorithm 452 for the bypass period (e.g., the 3 days following the clinically significant event) such that any episode data transmitted during the bypass period is not adjudicated by the bypass algorithm and instead stored in memory for a physician to review.
- the clinician may program specific criteria thresholds and/or parameters for satisfying the bypass conditions and bypassing adjudication algorithm 452.
- the set of bypass conditions may additionally or alternatively include a similarity condition.
- Processing circuitry 402 may determine that the episode data satisfies the similarity condition when processing circuitry 402 determines (e.g., using a machine learning algorithm) that the similarity between the episode data and previous episode data that was adjudicated (e.g., by a clinician) to be a cardiac episode exceeds a similarity threshold.
- the bypass conditions of the set of bypass conditions may depend on the medical condition of a patient.
- the set of bypass conditions may include the time period condition, the frailty condition, and the similarity condition.
- the set of bypass conditions may include the time interval condition, the clinician activation condition, and the blood pressure condition. It should be understood that these examples are for purposes of illustration and that other sets of bypass conditions are contemplated by this disclosure.
- any of the conditions described herein may be modified by a clinician to customize the bypassing of adjudication algorithm 452.
- a clinician may select durations, intervals, thresholds, events, sensitivities, etc., to customize any of the bypass conditions to suit the preferences and/or objectives of the clinician.
- computing system 24 may store the customized programming by the clinician and automatically customize the bypass conditions (e.g., for a new patient) based on clinician feedback.
- processing circuitry 402 may transmit an indication of the one or more bypass conditions that were satisfied to the clinician.
- Processing circuitry 402 may further transmit determinations of adjudication algorithm 452 (e.g., the likelihood of the episode data being a true or false indication of a cardiac episode) regarding the episode data that satisfied the bypass conditions.
- adjudication algorithm 452 e.g., the likelihood of the episode data being a true or false indication of a cardiac episode
- the clinician may compare the clinician’s determinations regarding the episode data with those of adjudication algorithm 452 to evaluate the utility, accuracy, etc., of the one or more bypass conditions and/or adjudication algorithm.
- bypass conditions may include the following: • Bypass adjudication algorithm 452 using other conditions only if R-wave amplitude sensed by IMD 10 is above a threshold amplitude of microvolts (e.g., 300 microvolts).
- Bypass adjudication algorithm 452 or require very high confidence for a certain period before/after a medical intervention or if patient not on a medication. For example, post ablation a physician wants to know if ablation is successful and may take patient off of anti-coagulation so need very high sensitivity. Likewise a high risk (e.g., stroke) patient not on anti-coagulation needs ultra high sensitivity.
- Bypass adjudication algorithm 452 for any auto detected episode that is correlated to patient activated episode (the device definition is if the auto detection happens within 20 minutes prior to activation it is considered correlated). Prior analyses have demonstrated that correlated episodes have a high PPV to being a true auto episode.
- bypass adjudication algorithm 452 in tiered approach such that patients with a high risk of stroke (e.g., higher CHA2DS2VASC scores) are bypassed more frequently than patients with low risk of stroke (e.g., low CHA2DS2VASC scores). For example, bypass adjudication algorithm 452 every 1/30 episodes for patients with CHA2DS2VASC scores of 0-1; bypass adjudication algorithm 452 every 1/15 episodes for patients with CHA2DS2VASC scores of 2-4; do not bypass adjudication algorithm 452 for patients with CHA2DS2VASC scores >5. a.
- CHA2DS2VASC scores congestive heart failure, hypertension, age, diabetes, prior stroke/TIA, vascular disease, female gender.
- adjudication algorithm 452 could be bypassed more frequently for older patients vs. younger patients.
- Bypass adjudication algorithm 452 if AF episode corresponds temporally with a decrease in patient activity as measured by the device. This may indicate that the patient is feeling symptomatic and therefore may be more indicative of a true AF episode.
- bypass adjudication algorithm 452 for all AF episode detections.
- bypass adjudication algorithm 452 For heart failure (HF) population, bypass adjudication algorithm 452 if the patient is in high risk group (or in the few days when they first transition to high risk group). Any episode detections happening at that time may be of higher interest to clinicians. • For HF population, bypass adjudication algorithm 452 based one or more physiological parameters, such as respiration rate, fluid indicated by impedance or drop in heart rate variability (HRV), decrease in activity, new onset AF, rapid rate during AF, etc. As noted above, a clinician and/or an algorithm may customize the thresholds for any of the bypass conditions to accommodate the specific preferences of clinicians and the personalized needs of patients.
- HRV heart rate variability
- Bypass adjudication algorithm 452 for the first 3 PVC detections after a premature ventricular contraction (PVC) ablation because physicians might want to know if the patient is continuing to have PVCs after PVC ablation. Physicians may especially want to know the morphology of the PVC so that they can determine the site of origin for the PVC.
- PVC premature ventricular contraction
- Bypass adjudication algorithm 452 for the first detection of a different PVC morphology by the device (Physician may want to know if the patient has polymorphic PVCs to determine the sites of PVC origin in the heart. It is undesirable for adjudication algorithm 452 to miss one of the PVC morphologies especially if it is rare and occurs only once in a month or so)
- bypass adjudication algorithm 452 for the first 2 ventricular arrhythmia episode detections during the high risk period since HF patients are susceptible to ventricular arrhythmias which may lead to sudden cardiac arrest in these patients.
- the physician can program the threshold to bypass adjudication algorithm 452 for arrhythmia detections occurring within 2 hours of more than 10 sleep apnea episode detections if the patient has heart failure or other risk factors.
- Bypass adjudication algorithm 452 if the average ventricular (Av. V.) rate during AF > Threshold (threshold programmable by physician or a set threshold).
- Bypass adjudication algorithm 452 for as long as the patient is in high HF risk (or) Bypass adjudication algorithm 452 only for the first cardiac episode during the period when the patient is at high HF risk. Physicians may want to tune treatment for HF after a high risk alert if AF occurs in the middle of it.
- FIG. 5 is an example technique for bypassing adjudication algorithm 452 in accordance with techniques of this disclosure. Although described herein primarily in the context of examples in which adjudication algorithm 452 and bypass module 454 are implemented by computing system 24, the techniques are not so limited. In some examples, the one or both of adjudication algorithm 452 and bypass module 454 may be implemented, in whole or part, by IMD 10 and/or external device 12.
- IMD 10 may collect (e.g., via electrodes 16A, 16B) episode data indicative of electrical activity of a heart of patient 4 (502).
- processing circuitry 50 may store the digitized cardiac EGM and features of the EGM used to detect the arrhythmia episode in memory 56 as episode data for the detected arrhythmia episode.
- processing circuitry 50 stores one or more segments of the cardiac EGM data, features derived from the cardiac EGM data, and other episode data in response to instructions from external device 12 (e.g., when patient 4 experiences one or more symptoms of arrhythmia and inputs a command to external device 12 instructing IMD 10 to upload the data for analysis by a monitoring center or clinician).
- Computing system 24 may receive episode data for episodes stored by medical devices, such as IMD 10, via communication circuitry 406 (504). For example, IMD 10 sends digitized cardiac EGM and other episode data to network 25 for processing by monitoring system 450 of FIG. 1.
- processing circuitry 50 of IMD 10 transmits, via communication circuitry 54, the episode data for patient 4 to external device 12, which then transmits the episode data to computing system 24.
- the episode data may have been collected by the medical devices in response to the medical devices detecting arrhythmias and/or user input directing the storage of episode data.
- processing circuitry 402 of computing system may determine whether to bypass adjudication algorithm 452 based on the satisfaction of one or more bypass conditions of a set of bypass conditions (506). For example, responsive to one or more bypass conditions being satisfied (YES of 506), processing circuitry 402 may bypass adjudication algorithm 452, and processing circuitry 402 may store (e.g., in storage devices 408) the episode data as a true indication of a cardiac episode, such as an AF episode (508).
- processing circuitry 402 may determine that the episode data satisfies the time period condition and bypass adjudication algorithm 452. Accordingly, processing circuitry 402 may store the episode data in memory (e.g., storage devices 408) for a physician to review. In another example, if the transmission of episode data is a subsequent transmission of episode data (e.g., a second transmission of episode data) during the time period, then processing circuitry 402 may not bypass adjudication algorithm 452.
- processing circuitry 402 may be configured to weigh each bypass condition of the set of bypass conditions (e.g., time period condition, frailty condition, implantation condition, etc.) to determine to bypass adjudication algorithm 452.
- processing circuitry 402 may assign a weight to each bypass condition of the set of bypass conditions, and, responsive to determining that the episode data satisfies one or more of the bypass conditions, calculate an aggregate weight of the one or more bypass conditions satisfied by the episode data.
- Processing circuitry 402 may then determine to bypass adjudication algorithm 452 based on the aggregate weight satisfying the weight threshold. For example, if the aggregate weight (e.g., 99%) exceeds a weight threshold value (e.g., 85%), then processing circuitry 402 may bypass adjudication algorithm 452, storing the episode data in memory for a physician to review.
- a weight threshold value e.g., 85%
- processing circuitry 402 may not bypass adjudication algorithm 452, and adjudication algorithm 452 may determine the likelihood of the episode data being a true or false indication of a cardiac episode (510).
- Adjudication algorithm 452 may output, for each of a plurality of arrhythmia type classifications, values indicative of the likelihood that an arrhythmia of the type occurred at any point during the episode.
- Monitoring system 450 may apply configurable thresholds (e.g., 50%, 75%, 90%, 95%, 99%) to the likelihood values to identify the episode as including one or more arrhythmia types, e.g., based on the likelihood for that classification meeting or exceeding the threshold.
- configurable thresholds e.g., 50%, 75%, 90%, 95%, 99%
- the techniques of the disclosure include a system that comprises means to perform any method described herein.
- the techniques of the disclosure include a computer-readable medium comprising instructions that cause processing circuitry to perform any method described herein.
- the described techniques may be implemented in hardware, software, firmware, or any combination thereof. If implemented in software, the functions may be stored as one or more instructions or code on a computer-readable medium and executed by a hardware-based processing unit.
- Computer-readable media may include non-transitory computer-readable media, which corresponds to a tangible medium such as data storage media (e.g., RAM, ROM, EEPROM, flash memory, or any other medium that can be used to store desired program code in the form of instructions or data structures and that can be accessed by a computer).
- processors such as one or more digital signal processors (DSPs), general purpose microprocessors, application specific integrated circuits (ASICs), field programmable logic arrays (FPGAs), or other equivalent integrated or discrete logic circuitry.
- DSPs digital signal processors
- ASICs application specific integrated circuits
- FPGAs field programmable logic arrays
- processors may refer to any of the foregoing structure or any other physical structure suitable for implementation of the described techniques. Also, the techniques could be fully implemented in one or more circuits or logic elements.
- Example 1 A method of monitoring a patient includes receiving, by processing circuitry of a medical device system, episode data for a cardiac episode; determining, by processing circuitry and based on satisfaction of one or more bypass conditions of a set of bypass conditions, to bypass an algorithm configured to determine a likelihood of the episode data being a false indication of the cardiac episode; and storing, by the processing circuitry and responsive to bypassing the algorithm, the episode data as a true indication of the cardiac episode.
- Example 2 The method of example 1, wherein the set of bypass conditions includes a time period condition, and wherein the episode data satisfies the time period condition when the episode data received by the processing circuitry is a first transmission of episode data for the cardiac episode for a time period.
- Example 3 The method of example 2, wherein a length of the time period is based on a health condition of the patient.
- Example 4 The method of any of examples 1 through 3, wherein the set of bypass conditions includes an interval condition, and wherein the episode data satisfies the interval condition when the episode data received by the processing circuitry is a first transmission of episode data for the cardiac episode after an elapse of a time interval from a previous transmission of episode data for the cardiac episode.
- Example 5 The method of any of examples 1 through 4, wherein the set of bypass conditions includes an implantation condition, and wherein the episode data satisfies the implantation condition when the episode data received by the processing circuitry is one of a first N transmissions of episode data for the cardiac episode after implantation of an implantable medical device of the medical device system.
- Example 6 The method of example 5, wherein the first N transmissions includes a first ten transmissions of episode data for the cardiac episode after implantation of the implantable medical device.
- Example 7 The method of any of examples 1 through 6, wherein the set of bypass conditions includes a long duration condition, and wherein the episode data satisfies the long duration condition when a duration of the episode data for the cardiac episode received by the processing circuitry exceeds a long duration threshold value.
- Example 8 The method of any of examples 1 through 7, wherein the set of bypass conditions includes a short duration condition, and wherein the episode data satisfies the short duration condition when a duration of the episode data for the cardiac episode received by the processing circuitry is less than a short duration threshold value.
- Example 9 The method of any of examples 1 through 8, wherein the set of bypass conditions includes a user input condition, and wherein the episode data satisfies the user input condition when the user provides a user input that causes the processing circuitry to bypass the algorithm for a bypass period.
- Example 10 The method of any of examples 1 through 9, wherein the set of bypass conditions includes a frailty condition, and wherein the episode data satisfies the frailty condition when a transmission of episode data for the cardiac episode occurs within a time window during which the patient at least one of falls or exhibits body instability.
- Example 11 The method of any of examples 1 through 10, wherein the set of bypass conditions includes a blood pressure condition, and wherein the episode data satisfies the blood pressure condition when a transmission of episode data for the cardiac episode occurs within a time window during which a change in blood pressure of the patient exceeds a blood pressure threshold value.
- Example 12 The method of any of examples 1 through 11, wherein determining to bypass the algorithm includes: assigning a weight to each bypass condition of the set of bypass conditions, responsive to determining that the episode data satisfies one or more of the bypass conditions, calculating an aggregate weight of the one or more bypass conditions satisfied by the episode data, determining whether the aggregate weight exceeds a weight threshold value, and determining to bypass the algorithm based on the aggregate weight exceeding the weight threshold value.
- Example 13 The method of example 12, wherein the weight assigned to each bypass condition is based on a health condition of the patient.
- Example 14 The method of any of examples 1 through 13, further including storing, by the processing circuitry, an indication of why the processing circuitry determined to bypass the algorithm based on satisfaction of the one or more bypass conditions of the set of bypass conditions.
- Example 15 A medical device system includes receive episode data for a cardiac episode; determine, based on satisfaction of one or more bypass conditions of a set of bypass conditions, whether to bypass an algorithm configured to determine a likelihood of the episode data being a false indication of the cardiac episode; and store, responsive to bypassing the algorithm, the episode data as a true indication of the cardiac episode.
- Example 16 The medical device system of example 15, wherein the set of bypass conditions includes a time period condition, and wherein the episode data satisfies the time period condition when the episode data received by the processing circuitry is a first transmission of episode data for the cardia episode for a time period.
- Example 17 The medical device system of example 16, wherein a length of the time period is based on a health condition of the patient.
- Example 18 The medical device system of any of examples 15 through 17, wherein the set of bypass conditions includes an interval condition, and wherein the episode data satisfies the interval condition when the episode data received by the processing circuitry is a first transmission of episode data for the cardiac episode after an elapse of a time interval from a previous transmission of episode data for the cardiac episode.
- Example 19 The medical device system of any of examples 15 through 18, wherein the set of bypass conditions includes an implantation condition, and wherein the episode data satisfies the implantation condition when the episode data received by the processing circuitry is one of a first N transmissions of episode data for the cardiac episode after implantation of an implantable medical device of the medical device system.
- Example 20 The medical device system of example 19, wherein the first N transmissions includes a first ten transmissions of episode data for the cardiac episode after implantation of the implantable medical device.
- Example 21 The medical device system of any of examples 15 through 20, wherein the set of bypass conditions includes a long duration condition, and wherein the episode data satisfies the long duration condition when a duration of the episode data for the cardiac episode received by the processing circuitry exceeds a long duration threshold value.
- Example 22 The medical device system of any of examples 15 through 21, wherein the set of bypass conditions includes a short duration condition, and wherein the episode data satisfies the short duration condition when a duration of the episode data for the cardiac episode received by the processing circuitry is less than a short duration threshold value.
- Example 23 The medical device system of any of examples 15 through 22, wherein the set of bypass conditions includes a user input condition, and wherein the episode data satisfies the user input condition when the user provides a user input that causes the processing circuitry to bypass the algorithm for a bypass period.
- Example 24 The medical device system of any of examples 15 through 23, wherein the set of bypass conditions includes a frailty condition, and wherein the episode data satisfies the frailty condition when a transmission of episode data for the cardiac episode occurs within a time window during which the patient at least one of falls or exhibits body instability.
- Example 25 The medical device system of any of examples 15 through 24, wherein the set of bypass conditions includes a blood pressure condition, and wherein the episode data satisfies the blood pressure condition when a transmission of episode data for the cardiac episode occurs within a time window during which a change in blood pressure of the patient exceeds a blood pressure threshold value.
- Example 26 The medical device system of any of examples 15 through 25, wherein the processing circuitry is configured to determine to bypass the algorithm by: assigning a weight to each bypass condition of the set of bypass conditions, responsive to determining that the episode data satisfies one or more of the bypass conditions, calculating an aggregate weight of the one or more bypass conditions satisfied by the episode data, determining whether the aggregate weight exceeds a weight threshold value, and determining to bypass the algorithm based on the aggregate weight exceeding the weight threshold value.
- Example 27 The medical device system of example 26, wherein the weight assigned to each bypass condition is based on a health condition of the patient.
- Example 28 The medical device system of any of examples 15 through 27, wherein the processing circuitry is further configured to store an indication of why the processing circuitry determined to bypass the algorithm based on satisfaction of the one or more bypass conditions of the set of bypass conditions.
- Example 29 A computer-readable medium includes receive episode data; determine, based on satisfaction of one or more bypass conditions of a set of bypass conditions, whether to bypass an algorithm configured to determine a likelihood of the episode data being a false indication of a cardiac episode; and store, responsive to bypassing the algorithm, the episode data as a true indication of the cardiac episode.
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US20190343415A1 (en) * | 2018-05-08 | 2019-11-14 | Cardiac Pacemakers, Inc. | Systems and methods for detecting arrhythmias |
US20200345309A1 (en) * | 2019-05-02 | 2020-11-05 | Medtronic, Inc. | Identification of false asystole detection |
US20200352521A1 (en) * | 2019-05-06 | 2020-11-12 | Medtronic, Inc. | Category-based review and reporting of episode data |
US20200352466A1 (en) * | 2019-05-06 | 2020-11-12 | Medtronic, Inc. | Arrythmia detection with feature delineation and machine learning |
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US20190343415A1 (en) * | 2018-05-08 | 2019-11-14 | Cardiac Pacemakers, Inc. | Systems and methods for detecting arrhythmias |
US20200345309A1 (en) * | 2019-05-02 | 2020-11-05 | Medtronic, Inc. | Identification of false asystole detection |
US20200352521A1 (en) * | 2019-05-06 | 2020-11-12 | Medtronic, Inc. | Category-based review and reporting of episode data |
US20200352466A1 (en) * | 2019-05-06 | 2020-11-12 | Medtronic, Inc. | Arrythmia detection with feature delineation and machine learning |
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