Frailty and Falls Implantable System for Prediction and Prevention (FFallS)
Primary Purpose
Fall Patients, Frailty
Status
Unknown status
Phase
Not Applicable
Locations
Ireland
Study Type
Interventional
Intervention
Reveal LINQ™
Sponsored by
About this trial
This is an interventional prevention trial for Fall Patients
Eligibility Criteria
Inclusion Criteria:
- Referred to St James's due to a non-accidental fall (not a slip or trip), with a history of another non-accidental fall or syncope within the previous 3 years.
- Age ≥ 50 Years
- Participant is willing and has capacity to provide informed consent to the study
Exclusion Criteria:
- Inability or unwilling to follow or perform the study protocol requirements
- Cognitive impairment (MMSE </= 20)
- Current Pacemaker or other implanted therapy devices.
- Known intolerance to subcutaneous implantable devices or any of the Reveal LINQ™ materials. 5. Life expectancy < 12 months
Sites / Locations
- Falls and Syncope Unit (FASU), Mercer's Institute for Successful Aging (MISA), St James's Hospital, Dublin 8Recruiting
Arms of the Study
Arm 1
Arm Type
Experimental
Arm Label
Reveal LINQ
Arm Description
The Reveal LINQ™, which is a small implantable loop recorder that is used to monitor cardiac parameters at present is implanted to the participants who are have experienced non accidental falls. The Investigational Falls Prediction RAMware is software that will be downloaded on to the Reveal LINQ™ that will enable it to collect additional sensor information including accelerometer and posture count data.
Outcomes
Primary Outcome Measures
the number of falls associated with early changes in physiological parameters as recorded by the investigational Reveal LINQ™ Falls Prediction System.
Uses the Reveal LINQ™ Falls Prediction Research System to identify early changes in physiological parameters which helps to create a profile on which to predict falls, with the potential to implement a score for the risk of falling based on monitoring of frailty parameters in the elderly measured with the implantable device.
Secondary Outcome Measures
Established research of cardiac parameters of Reveal LINQ
building on established research of the cardiac parameters of the Reveal LINQ ™ to identify heart rate and rhythm disturbances in fallers and to evaluate their role in predicting a fall.
Development of Clinical risk stratification algorithm
Developing a clinical risk stratification algorithm for management, treatment and prevention of frailty and Falls.
Full Information
NCT ID
NCT04881136
First Posted
April 27, 2021
Last Updated
June 25, 2021
Sponsor
University of Dublin, Trinity College
Collaborators
Medtronic Bakken Research Center, University of Copenhagen
1. Study Identification
Unique Protocol Identification Number
NCT04881136
Brief Title
Frailty and Falls Implantable System for Prediction and Prevention
Acronym
FFallS
Official Title
Frailty and Falls Implantable System for Prediction and Prevention Investigational Study - FFallS Predictor
Study Type
Interventional
2. Study Status
Record Verification Date
June 2021
Overall Recruitment Status
Unknown status
Study Start Date
March 23, 2021 (Actual)
Primary Completion Date
June 30, 2022 (Anticipated)
Study Completion Date
June 30, 2022 (Anticipated)
3. Sponsor/Collaborators
Responsible Party, by Official Title
Principal Investigator
Name of the Sponsor
University of Dublin, Trinity College
Collaborators
Medtronic Bakken Research Center, University of Copenhagen
4. Oversight
Studies a U.S. FDA-regulated Drug Product
No
Studies a U.S. FDA-regulated Device Product
No
Data Monitoring Committee
No
5. Study Description
Brief Summary
The Falls Predictor Clinical Investigation is a research study that aims to investigate the value of an update (Falls Prediction RAMware) to an implantable cardiac monitoring device (The Reveal LINQ™) in predicting unexplained falls. The Reveal LINQ™ is an implantable cardiac monitoring system manufactured by Medtronic that has the ability to monitor heart rate, rhythm and activity and is preprogrammed to detect abnormalities. An R&D team at Medtronic has been collaborating with the study PI Prof Rose Anne Kenny on this project they are responsible for developing a software update for the Reveal LINQ™ that would enable the device to collect additional sensor data such as accelerometer (step count) and Posture change. The additional investigational fields along with the standard cardiac fields that are monitored may be useful in predicting or identifying physiological changes before a fall. The study will involve up to 30 patients, recruited and consented from recurrent non-accidental fallers referred to the Falls and Syncope Unit at St James's Hospital, Dublin.
Detailed Description
Falls are an evolving frailty state and are the most common reason for older adults to attend the Emergency Room (ER) and for admission to long term institutional care. The Irish Longitudinal Study on Ageing (TILDA) has shown that almost 40% of older adults reported at least one fall during a four year period and almost 50% had 'fear of falling', an independent risk factor for falls and loss of independence. New mechanisms for monitoring early risk factors for falls will advance prevention and management of these conditions, improving healthcare and supporting independent living.
Implantable devices are a new addition to the sensor market, and as yet have limited capabilities.
This study is focused on 'unexplained' or 'non accidental' falls- that is falls which are not clearly due to a slip or a trip. Previous research shows that a high number of these may be due to changes in heart rate and irregular heartbeats (heart rhythm). There may also be other changes associated with non accidental falls, such as activity levels i.e. how active you are in the time before a fall.
Patients under the care of FASU undergo a full clinical assessment, where the medical team aim to identify and treat factors which might contribute to falls. They often manage such falls by implanting a monitoring device which will measure heart rate and rhythm. The Reveal LINQ™ device from Medtronic™, is the implantable monitoring device which is used in FASU. There is scope to further develop implantable devices such as the Reveal LINQ™ to monitor additional physiological parameters, which may help identify fall risk factors. Medtronic in collaboration with the PI Prof Kenny have developed a RAMware update for the Reveal LINQ™ which will enable the collection of additional sensor information. The Falls Prediction RAMware is programmed externally to the Reveal LINQ™, there are no changes to the physical properties of the device.
Study Aim:
The aim of this project is to use the investigational build on previous work and use an implantable device (Reveal LINQ™) to monitor cardiac parameters, such as heart rate, rhythm and variability and to enhance the monitoring capabilities of the device with additional investigational software (Falls Predictor RAMware), creating the Reveal LINQ ™ Falls Prediction System (LINQ FP). The RAMware update will enable the Reveal LINQ™ device to collect additional sensor information including temperature, posture, accelerometer (step measure) and impedance measure (information on activity and fluid status), to identify early changes in these measures that may indicate increased risk of a fall.
Study Design:
This is a prospective, single centre, pilot feasibility study, which aims to investigate the value the Reveal LINQ ™ Falls Prediction System (LINQ FP) in predicting falls or identifying fall risk. Participants will be recruited from recurrent fallers referred to FASU for assessment. A full set of baseline assessments will be performed as necessary. Participants will have a Reveal LINQ™ Device Implanted that will be updated with the Falls Prediction RAMware. The Falls Prediction RAMware is programmed externally to the Reveal LINQ™, there are no changes to the physical properties of the device.
Participants will be followed in the study for 12 months, with in clinic follow up assessments at 3, 6, 9 and 12 months
Recurrent non-accidental fallers (n=30) over the age of 50 will be invited to participate in the investigation, provided both inclusion and exclusion criteria are met. The study will take place at St James's Hospital, in the Falls and Syncope Unit at MISA.
Clinical data collection, processing, and data analysis will be conducted on-site by the study nurse and doctor and the on-site data manager recruited to the study team. The data collected by the investigational Falls Predictor software will be transmitted via CareLink™ and will be processed and analysed by Medtronic.
6. Conditions and Keywords
Primary Disease or Condition Being Studied in the Trial, or the Focus of the Study
Fall Patients, Frailty
7. Study Design
Primary Purpose
Prevention
Study Phase
Not Applicable
Interventional Study Model
Single Group Assignment
Model Description
The study will take place at St James's Hospital, in the Falls and Syncope Unit at MISA.
Clinical data collection, processing, and data analysis will be conducted on-site by the study nurse and doctor and the on-site data manager recruited to the study team. The data collected by the investigational Falls Predictor software will be transmitted via CareLink™ and will be processed and analysed by Medtronic.
Masking
None (Open Label)
Allocation
N/A
Enrollment
30 (Anticipated)
8. Arms, Groups, and Interventions
Arm Title
Reveal LINQ
Arm Type
Experimental
Arm Description
The Reveal LINQ™, which is a small implantable loop recorder that is used to monitor cardiac parameters at present is implanted to the participants who are have experienced non accidental falls. The Investigational Falls Prediction RAMware is software that will be downloaded on to the Reveal LINQ™ that will enable it to collect additional sensor information including accelerometer and posture count data.
Intervention Type
Device
Intervention Name(s)
Reveal LINQ™
Intervention Description
The physical device is the Reveal LINQ™, which is a small implantable loop recorder that is used to monitor cardiac parameters at present. The Investigational Falls Prediction RAMware is software that will be downloaded on to the Reveal LINQ™ that will enable it to collect additional sensor information including accelerometer and posture count data that will be used for gait analysis.
Primary Outcome Measure Information:
Title
the number of falls associated with early changes in physiological parameters as recorded by the investigational Reveal LINQ™ Falls Prediction System.
Description
Uses the Reveal LINQ™ Falls Prediction Research System to identify early changes in physiological parameters which helps to create a profile on which to predict falls, with the potential to implement a score for the risk of falling based on monitoring of frailty parameters in the elderly measured with the implantable device.
Time Frame
16 months
Secondary Outcome Measure Information:
Title
Established research of cardiac parameters of Reveal LINQ
Description
building on established research of the cardiac parameters of the Reveal LINQ ™ to identify heart rate and rhythm disturbances in fallers and to evaluate their role in predicting a fall.
Time Frame
16 months
Title
Development of Clinical risk stratification algorithm
Description
Developing a clinical risk stratification algorithm for management, treatment and prevention of frailty and Falls.
Time Frame
16 months
10. Eligibility
Sex
All
Minimum Age & Unit of Time
50 Years
Accepts Healthy Volunteers
No
Eligibility Criteria
Inclusion Criteria:
Referred to St James's due to a non-accidental fall (not a slip or trip), with a history of another non-accidental fall or syncope within the previous 3 years.
Age ≥ 50 Years
Participant is willing and has capacity to provide informed consent to the study
Exclusion Criteria:
Inability or unwilling to follow or perform the study protocol requirements
Cognitive impairment (MMSE </= 20)
Current Pacemaker or other implanted therapy devices.
Known intolerance to subcutaneous implantable devices or any of the Reveal LINQ™ materials. 5. Life expectancy < 12 months
Central Contact Person:
First Name & Middle Initial & Last Name or Official Title & Degree
Sergio R Perez, M Sc
Phone
014284182
Email
PEREZSR@tcd.ie
Overall Study Officials:
First Name & Middle Initial & Last Name & Degree
Rose Anne Kenny, MD FRCP
Organizational Affiliation
University of Dublin, Trinity College
Official's Role
Principal Investigator
Facility Information:
Facility Name
Falls and Syncope Unit (FASU), Mercer's Institute for Successful Aging (MISA), St James's Hospital, Dublin 8
City
Dublin
State/Province
Leinster
ZIP/Postal Code
8
Country
Ireland
Individual Site Status
Recruiting
Facility Contact:
First Name & Middle Initial & Last Name & Degree
Sergio Perez, M Sc
Phone
014284182
Email
PEREZSR@tcd.ie
12. IPD Sharing Statement
Plan to Share IPD
No
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Frailty and Falls Implantable System for Prediction and Prevention
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