Remote Mobile Outpatient Monitoring in Transplant (Reboot) 2.0: Protocol for a Randomized Controlled Trial

Kevin R Murray, Farid Foroutan, Jennifer M Amadio, Juan Duero Posada, Stella Kozuszko, Joseph Duhamel, Katherine Tsang, Michael E Farkouh, Michael McDonald, Filio Billia, Edward Barber, Steven G Hershman, Mamatha Bhat, Kathryn J Tinckam, Heather J Ross, Christopher McIntosh, Yasbanoo Moayedi, Kevin R Murray, Farid Foroutan, Jennifer M Amadio, Juan Duero Posada, Stella Kozuszko, Joseph Duhamel, Katherine Tsang, Michael E Farkouh, Michael McDonald, Filio Billia, Edward Barber, Steven G Hershman, Mamatha Bhat, Kathryn J Tinckam, Heather J Ross, Christopher McIntosh, Yasbanoo Moayedi

Abstract

Background: The number of solid organ transplants in Canada has increased 33% over the past decade. Hospital readmissions are common within the first year after transplant and are linked to increased morbidity and mortality. Nearly half of these admissions to the hospital appear to be preventable. Mobile health (mHealth) technologies hold promise to reduce admission to the hospital and improve patient outcomes, as they allow real-time monitoring and timely clinical intervention.

Objective: This study aims to determine whether an innovative mHealth intervention can reduce hospital readmission and unscheduled visits to the emergency department or transplant clinic. Our second objective is to assess the use of clinical and continuous ambulatory physiologic data to develop machine learning algorithms to predict the risk of infection, organ rejection, and early mortality in adult heart, kidney, and liver transplant recipients.

Methods: Remote Mobile Outpatient Monitoring in Transplant (Reboot) 2.0 is a two-phased single-center study to be conducted at the University Health Network in Toronto, Canada. Phase one will consist of a 1-year concealed randomized controlled trial of 400 adult heart, kidney, and liver transplant recipients. Participants will be randomized to receive either personalized communication using an mHealth app in addition to standard of care phone communication (intervention group) or standard of care communication only (control group). In phase two, the prior collected data set will be used to develop machine learning algorithms to identify early markers of rejection, infection, and graft dysfunction posttransplantation. The primary outcome will be a composite of any unscheduled hospital admission, visits to the emergency department or transplant clinic, following discharge from the index admission. Secondary outcomes will include patient-reported outcomes using validated self-administered questionnaires, 1-year graft survival rate, 1-year patient survival rate, and the number of standard of care phone voice messages.

Results: At the time of this paper's completion, no results are available.

Conclusions: Building from previous work, this project will aim to leverage an innovative mHealth app to improve outcomes and reduce hospital readmission in adult solid organ transplant recipients. Additionally, the development of machine learning algorithms to better predict adverse health outcomes will allow for personalized medicine to tailor clinician-patient interactions and mitigate the health care burden of a growing patient population.

Trial registration: ClinicalTrials.gov NCT04721288; https://www.clinicaltrials.gov/ct2/show/NCT04721288.

International registered report identifier (irrid): PRR1-10.2196/26816.

Keywords: mobile health; solid organ transplant; telemonitoring, transplantation; wearable sensors.

Conflict of interest statement

Conflicts of Interest: EB is the CEO of Pattern Health. All other authors have no conflicts related to this project to disclose.

©Kevin R Murray, Farid Foroutan, Jennifer M Amadio, Juan Duero Posada, Stella Kozuszko, Joseph Duhamel, Katherine Tsang, Michael E Farkouh, Michael McDonald, Filio Billia, Edward Barber, Steven G Hershman, Mamatha Bhat, Kathryn J Tinckam, Heather J Ross, Christopher McIntosh, Yasbanoo Moayedi. Originally published in JMIR Research Protocols (https://www.researchprotocols.org), 22.10.2021.

Figures

Figure 1
Figure 1
Proposed study flowchart. UHN: University Health Network.

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Source: PubMed

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