Veterans’ response to an automated text messaging protocol during the COVID-19 pandemic

Author:

Saleem Jason J12,Read Jacob M12,Loehr Boyd M34,Frisbee Kathleen L3,Wilck Nancy R3,Murphy John J35,Vetter Brian M3,Herout Jennifer3

Affiliation:

1. Department of Industrial Engineering, J.B. Speed School of Engineering, University of Louisville, Louisville, Kentucky, USA

2. Center for Ergonomics, University of Louisville, Louisville, Kentucky, USA

3. Office of Connected Care, Office of Health Informatics, Veterans Health Administration, Department of Veterans Affairs (VA), Washington DC, USA

4. Clinical Resource Hub for Veterans Integrated Service Network 16, Veterans Health Administration, Department of Veterans Affairs (VA), Little Rock, Arkansas, USA

5. Southeast Louisiana Veterans Health Care System, Veterans Health Administration, Department of Veterans Affairs (VA), New Orleans, Louisiana, USA

Abstract

Abstract The US Department of Veterans Affairs (VA) is using an automated short message service application named “Annie” as part of its coronavirus disease 2019 (COVID-19) response with a protocol for coronavirus precautions, which can help the veteran monitor symptoms and can advise the veteran when to contact his or her VA care team or a nurse triage line. We surveyed 1134 veterans on their use of the Annie application and coronavirus precautions protocol. Survey results support what is likely a substantial resource savings for the VA, as well as non-VA community healthcare. Moreover, the majority of veterans reported at least 1 positive sentiment (felt more connected to VA, confident, or educated and/or felt less anxious) by receiving the protocol messages. The findings from this study have implications for other healthcare systems to help manage a patient population during the coronavirus pandemic.

Funder

Department of Veterans Affairs

Veterans Health Administration

Office of Health Informatics

Human Factors Engineering

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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