Literature DB >> 34115942

Patient Demographics and Clinic Type Are Associated With Patient Engagement Within a Remote Monitoring Program.

Elizabeth Kirkland1,2, Samuel O Schumann2, Andrew Schreiner2, Marc Heincelman3, Jingwen Zhang4, Justin Marsden4, Patrick Mauldin4, William P Moran1,2.   

Abstract

Background: Remote physiological monitoring (RPM) is accessible, convenient, relatively inexpensive, and can improve clinical outcomes. Yet, it is unclear in which clinical setting or target population RPM is maximally effective. Objective: To determine whether patients' demographic characteristics or clinical settings are associated with data transmission and engagement.
Methods: This is a prospective cohort study of adults enrolled in a diabetes RPM program for a minimum of 12 months as of April 2020. We developed a multivariable logistic regression model for engagement with age, gender, race, income, and primary care clinic type as variables and a second model to include first-order interactions for all demographic variables by time. The participants included 549 adults (mean age 53 years, 63% female, 54% Black, and 75% very low income) with baseline hemoglobin A1c ≥8.0% and enrolled in a statewide diabetes RPM program. The main measure was the transmission engagement over time, where engagement is defined as a minimum of three distinct days per week in which remote data are transmitted.
Results: Significant predictors of transmission engagement included increasing age, academic clinic type, higher annual household income, and shorter time-in-program (p < 0.001 for each). Self-identified race and gender were not significantly associated with transmission engagement (p = 0.729 and 0.237, respectively). Conclusions: RPM appears to be an accessible tool for minority racial groups and for the aging population, yet engagement is impacted by primary care location setting and socioeconomic status. These results should inform implementation of future RPM studies, guide advocacy efforts, and highlight the need to focus efforts on maintaining engagement over time.

Entities:  

Keywords:  health disparities; primary care; remote monitoring; telemedicine; underserved populations

Mesh:

Substances:

Year:  2021        PMID: 34115942      PMCID: PMC8380794          DOI: 10.1089/tmj.2020.0535

Source DB:  PubMed          Journal:  Telemed J E Health        ISSN: 1530-5627            Impact factor:   5.033


  11 in total

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2.  Utilization of Telemedicine Among Rural Medicare Beneficiaries.

Authors:  Ateev Mehrotra; Anupam B Jena; Alisa B Busch; Jeffrey Souza; Lori Uscher-Pines; Bruce E Landon
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3.  Assessing Telemedicine Unreadiness Among Older Adults in the United States During the COVID-19 Pandemic.

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4.  Clinical Effectiveness of Telemedicine in Diabetes Mellitus: A Meta-Analysis of 42 Randomized Controlled Trials.

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Journal:  Telemed J E Health       Date:  2018-08-20       Impact factor: 3.536

Review 5.  Telehealth for diabetes self-management in primary healthcare: A systematic review and meta-analysis.

Authors:  Chi F So; Joanne Wy Chung
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6.  Diabetes Management Through Remote Patient Monitoring: The Importance of Patient Activation and Engagement with the Technology.

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Journal:  Telemed J E Health       Date:  2018-10-27       Impact factor: 3.536

7.  Remote patient monitoring sustains reductions of hemoglobin A1c in underserved patients to 12 months.

Authors:  Elizabeth B Kirkland; Justin Marsden; Jingwen Zhang; Samuel O Schumann; John Bian; Patrick Mauldin; William P Moran
Journal:  Prim Care Diabetes       Date:  2021-01-25       Impact factor: 2.567

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Review 9.  How does it work? Factors involved in telemedicine home-interventions effectiveness: A review of reviews.

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10.  Hospitalization and Mortality among Black Patients and White Patients with Covid-19.

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