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Frailty and Falls Implantable System for Prediction and Prevention Investigational Study - FFallS Predictor
Authors not listed
University of Dublin, Trinity College · 2021
Abstract
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.
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- 2026-07-02 MST
Cite this
APA
Anonymous. (2021). Frailty and Falls Implantable System for Prediction and Prevention Investigational Study - FFallS Predictor. <em>University of Dublin, Trinity College</em>. https://clinicaltrials.gov/study/NCT04881136
Vancouver
Anonymous. Frailty and Falls Implantable System for Prediction and Prevention Investigational Study - FFallS Predictor. University of Dublin, Trinity College. 2021.
BibTeX
@misc{anon2021Frailt,
title = {Frailty and Falls Implantable System for Prediction and Prevention Investigational Study - FFallS Predictor},
author = {Anonymous},
journal = {University of Dublin, Trinity College},
year = {2021},
}
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