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Establishing a digital health platform in an academic medical center supporting rural communities

Published online by Cambridge University Press:  28 April 2020

Anita Walden*
Affiliation:
Department of Biomedical Informatics, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Aaron S. Kemp
Affiliation:
Department of Biomedical Informatics, University of Arkansas for Medical Sciences, Little Rock, AR, USA Psychiatry, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Linda J. Larson-Prior
Affiliation:
Department of Biomedical Informatics, University of Arkansas for Medical Sciences, Little Rock, AR, USA Psychiatry, University of Arkansas for Medical Sciences, Little Rock, AR, USA Neurology, Neurobiology & Developmental Sciences, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Thomas Kim
Affiliation:
Radiation Oncology, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Jennifer Gan
Affiliation:
Center for Health Literacy, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Hannah McCoy
Affiliation:
Institute of Digital Health and Innovation, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Nalin Payakachat
Affiliation:
College of Pharmacy, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Wendy Ward
Affiliation:
Interprofessional Faculty Development, University of Arkansas for Medical Sciences, Little Rock, AR, USA
Hari Eswaran
Affiliation:
Institute of Digital Health and Innovation, University of Arkansas for Medical Sciences, Little Rock, AR, USA
*
Address for correspondence: A. Walden, MS, Department of Biomedical Informatics, University of Arkansas for Medical Sciences, 4301 W. Markham St #782, Little Rock, AR72205, USA. Email: awalden003@gmail.com
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Abstract

The University of Arkansas for Medical Sciences (UAMS), like many rural states, faces clinical and research obstacles to which digital innovation is seen as a promising solution. To implement digital technology, a mobile health interest group was established to lay the foundation for an enterprise-wide digital health innovation platform. To create a foundation, an interprofessional team was established, and a series of formal networking events was conducted. Three online digital health training models were developed, and a full-day regional conference was held featuring nationally recognized speakers and panel discussions with clinicians, researchers, and patient advocates involved in digital health programs at UAMS. Finally, an institution-wide survey exploring the interest in and knowledge of digital health technologies was distributed. The networking events averaged 35–45 attendees. About 100 individuals attended the regional conference with positive feedback from participants. To evaluate mHealth knowledge at the institution, a survey was completed by 257 UAMS clinicians, researchers, and staff. It revealed that there are opportunities to increase training, communication, and collaboration for digital health implementation. The inclusion of the mobile health working group in the newly formed Institute for Digital Health and Innovation provides a nexus for healthcare providers and researches to facilitate translational research.

Type
Special Communications
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Association for Clinical and Translational Science 2020

Introduction

Digital health, including technologies from telehealth to wearables, is seen as an important aspect of modern healthcare [Reference Dorsey and Topol1]. This reflects an interest in decreasing costs by providing both interventional and preventative care, a shift from hospital and clinic-based care to home-based care, and the need to serve populations in areas remote from standard hospital or clinic-based care. While deployed in both urban and rural areas, these technologies may have the most significant impact in rural and medically underserved areas. Rural populations are commonly medically underserved due to rural hospital closures, few physicians, and even fewer specialists [Reference Fordyce2]. Furthermore, these populations are generally faced with barriers to access due to transportation challenges, distance from medical centers, and lack of insurance that limits their ability to access care centered in more urban areas. In the USA, residents of rural counties are more likely to exhibit poor heath behaviors (e.g., higher rates of smoking), greater all-cause morbidity and mortality, lower socioeconomic status, and lower levels of clinical care than in urban counties [Reference Anderson3]. These problems are further exacerbated by low levels of health literacy, which make it more difficult for individuals to access publicly available health information [Reference Kreps4]. The promise of digital health is in improving access to care, providing preventative healthcare to individuals with environmental, economic, and health literacy barriers to access, and improving research in new digital health technologies that can further increase the health span in a chronically underserved population. To achieve these goals, academic medical centers (AMCs) will be the bridge to the future in the digital transformation of medical practice [Reference Van der Laan and Boenink5,Reference Dzau6].

New and practical methods of real-world data collection and exchange can facilitate translational research to bridge the gap between research, clinical care, the community, and the individual patient [Reference Van der Laan and Boenink5, Reference Rubio7]. AMCs have the leadership and technical capabilities to influence and drive these changes, while serving as test beds for new innovations [Reference DePasse8, Reference Ellner9]. However, both digital health research and the integration of digital technology into the healthcare delivery system are complex, requiring skilled and experienced personnel, and the knowledge of regulatory requirements [Reference Sharma10]. To successfully evaluate and implement emerging platforms, AMCs need a visionary, structured, systematic framework [Reference Khuntia11] supported by cross-disciplinary teams that cover multiple aspects of digital health to meet institutional and areal goals. This is particularly true where the focus is on rural areas, and logistical hurdles to implementation are often extensive. Several AMCs have recognized these needs and have established digital institutes or centers that foster education, skill building, and cross-disciplinary team building to support quality care delivery solutions and research [Reference Al Kuwaiti, Al Muhanna and Al Amri12, Reference Mann13].

The University of Arkansas for Medical Sciences (UAMS), the state’s only AMC, provides health services to a rural state that ranks 47th in health status [14]. UAMS has had a strong presence in digital health since the development of a statewide telehealth program in 2003 [Reference Hall, Hall-Barrow and Garcia-Rill15Reference Lowery18]. This initial telehealth program is a statewide consultative service for family practitioners, obstetricians, neonatologists, and pediatricians with the mission to improve treatment of high-risk pregnancies through a Medicaid-funded, patient-centered approach that brings high-risk obstetrical services to rural hospitals through real-time, telehealth technologies [Reference Hall, Hall-Barrow and Garcia-Rill15, Reference Bronstein17]. This program, the Antenatal and Neonatal Guidelines, Education and Learning System (ANGELS) program, has consulted high-risk pregnant women at 44 rural sites, decreased postpartum complications, and contributed to a decrease in the 60-day infant mortality rate in Arkansas [Reference Hall, Hall-Barrow and Garcia-Rill15, Reference Lowery18]. Since then, the state has made tremendous progress in telehealth programs focused on stroke, spinal cord, and traumatic brain injury [Reference Lowery18]. In stroke, the Arkansas Stroke Assistance through Virtual Emergency Support (AR-SAVES) program is a Medicaid-funded effort that connects potential stroke victims in rural emergency departments with neurologists at urban hospitals in Arkansas [Reference Lowery18]. In 2019, these telemedicine programs were formally rolled into the Institute for Digital Health and Innovation (IDHI) (idhi.uams.edu).

As a leader in the deployment of telehealth to rural and underserved populations, to take full advantage of current digital health technologies, there was a need to incorporate new methods such as mobile technology, social media, remote-based monitoring, wearables, and other innovative solutions to improve access to care and research. To address this need, a mobile health multi-disciplinary interest group formed in 2016 that consisted primarily of UAMS clinicians and researchers. Their purpose was to identify the current use of digital technology within the institution and to establish an enterprise-wide foundation for a digital health innovation platform to implement and support digital innovations. This group pursued the goal of fostering cross-stakeholder collaboration, providing educational opportunities and supporting researchers and clinicians interested in adopting meaningful, secure, and quality digital health efforts. Early efforts led to the clear realization that researchers and clinicians often lacked the expertise to successfully implement these technologies. Barriers to development of new digital health technologies included data access, ownership of data when working with external vendors, and challenges with implementation and validation.

This paper describes the process which one AMC provided the groundwork for development of an enterprise-wide digital health innovation platform to serve researchers, clinicians, and patients in a rural state. We describe the methods and approaches used to determine the degree to which digital health technologies were needed or currently utilized at UAMS, the degree to which entrepreneurs and the UAMS community interacted to develop such technologies, and the level of interest in the clinical, technological, and research communities in the development and deployment of these technologies.

Approach

Mobile Health (mHealth) Interest Group

An initial group of four collaborators from the Departments of Biomedical Informatics, Psychiatry, the Center for Distance Health and Radiation Oncology at UAMS met to build on the success of the statewide UAMS telemedicine programs to explore the use of cutting-edge digital technologies in a rural state. The group was supported by member departments and the UAMS Translational Research Institute. The focus of the group was to develop and implement an institutional framework of collaboration, education and training, information sharing, and process development.

Interprofessional Collaboration

To establish the framework, it was important to identify, bring together, and harmonize efforts of those with an interest in using digital technology. The interest group formed an interprofessional team of clinicians, researchers, informaticists, a bioethicist, lawyers, technology investment experts, and educators from UAMS and area universities to accomplish that goal. The initial task was to identify those using or with an interest in using digital technology, foster collaboration, and provide an avenue for connecting with other technologists in the community.

Education and Outreach

Four approaches to education and outreach were implemented: (1) three networking events designed to support collaborations between community technology innovators, the UAMS technology transfer office (Bioventures), and UAMS faculty in development of digital health technologies; (2) development and deployment of three online training modules covering commercialization, design, and execution of validation studies, and relevant regulatory, legal, and security considerations; (3) a full-day regional conference featuring nationally recognized speakers and panel discussions between clinicians, researchers, and patient advocates involved in digital health programs at UAMS; and (4) an institution-wide survey on digital health technology familiarity and use.

Networking Events

To launch institutional awareness of the newly formed mobile health working group, a poster was presented at a UAMS event showcasing medical discoveries. This was followed by two formal networking events, called mHealth Mingles, that were hosted by the local office for technology transfers at UAMS (BioVentures). Brief presentations from clinicians and researchers using digital health technologies at UAMS and local technology developers seeking collaborative development or clinical validation partners provided brief presentations followed by open question periods for participants. These events provided a critically important opportunity to promote collaborative development and validation projects between UAMS clinicians or researchers and local technology developers.

Online Training Modules

Three online learning modules were developed by the mHealth working group that provided didactic content on relevant aspects of designing, developing, and validating digital health technologies and intellectual property. Working in collaborations with the UAMS Center for Distance Health (CDH) and the South Central Telehealth Resource Center, provided the resources for final deployment of these online modules, which are described below (https://learntelehealth.org/course/digital-health-training-module).

  1. 1. Commercialization as a Catalyst for Innovations in Digital Health: This training module provides healthcare entities and individuals with information on how commercialization can serve as a catalyst for digital health innovation. The target audience includes healthcare administrators, researchers, and providers. The specific learning objectives are to (A) understand the need for the healthcare industry to adapt to the changing demands of healthcare consumers by developing and/or leveraging new technologies to efficiently transform patient-centric data sources into clinically meaningful information that optimizes treatment outcomes, supports shared clinical decisions, and/or decreases costs of care; (B) recognize the potential of funding the development, validation, and clinical implementation of mobile health and wearable biomonitoring technologies using private and public sources of support for small business ventures; and (C) identify local support services to help protect intellectual property, articulate the specific use-case scenario and value proposition to relevant stakeholders, and execute well-designed validation field studies to demonstrate that value.

  2. 2. Clinical Validation and Testing in Digital Health: The purpose of this training module is to help healthcare entities and individuals using digital health and wearable technologies with validation and field testing prior to implementation in their research and clinical programs. The target audience for this module includes healthcare administration, researchers, and providers. The specific learning objectives are to (A) identify three types of measurable outcomes for evaluating clinical utility and effectiveness of digital health tools and technologies; (B) determine optimal contexts for the validation of digital health tools; and (C) distinguish relevant regulatory factors related to the clinical validation and implementation of digital health tools.

  3. 3. Regulatory Considerations in Digital Health: The purpose of this training module is to help healthcare entities and individuals using digital health and wearable technologies in their research and clinical programs to recognize the relevant regulatory and security issues that must be taken into consideration. The target audience for this module includes healthcare administration, researchers, and providers. The specific learning objectives are to (A) understand how to apply Health Insurance Portability and Accountability Act regulations to cloud technologies; (B) identify allowable prerequisites of patient health identifiers when using digital health technologies in clinical and research settings; (C) develop techniques to evaluate and apply technical, practical, and legal solutions when working with patient data in the context of digital health technology applications.

Each of the online training modules includes a brief content quiz to assess retention of the information presented.

Full-Day Digital Health Conference

A full-day Digital Health Conference was organized to share ideas and experiences pertaining to digital health innovation in research and clinical settings. Presenters included nationally recognized speakers from funding agencies (e.g., Patient-Centered Outcomes Research Institute), local experts in the use of technologies to reach rural or underserved populations, and panel discussions featuring clinicians, researchers, and patient advocates from the local community. Attendees to the Digital Health Conference completed a brief survey regarding their perceptions of the events in which they participated. An additional survey was distributed to all UAMS faculty and researchers to assess interest in and overall experience with digital health technologies.

Metrics and Outcomes

Integration of MHealth Interest Group

In 2019, UAMS created the IDHI. Creation of this Institute acknowledged the strong presence of telehealth at UAMS and pointed to the institutional commitment to expand its digital health footprint. The mHealth interest group joined the IDHI soon after its inception, where it will continue to serve the institution and community in research, education, and development of digital health technologies.

Networking Events

The two mHealth mingles attracted 35–45 attendees, including faculty and staff from across the University of Arkansas system, technology vendors from the community, city agencies, and technology incubators. The events were well received and, as hoped, resulted in a clearer understanding of the current uses of these technologies as well as areas in which clinical and research faculty and staff hoped to innovate. Evaluations indicated that attendees would like to gain greater technical assistance or expertise in the development of digital health technologies for their applications.

Online Training Modules

At present, no information on module use is available. Learning objectives are clearly stated for each module, and test questions assessing comprehension of the information provided are included. These assessments are for self-learning only and are not tracked.

Conference Survey

A conference was held to introduce the topic of Digital Health and mHealth and to provide information concerning funding opportunities, reimbursement policies, and current research taking place around campus. Patients from the community were also invited to participate to share their stories and thoughts about the use of digital health. A total of 99 individuals attended the Digital Health Conference. Attendees included researchers, clinicians, patients, study coordinators, informaticists, research assistants, and programmers. Of these, 31 completed a brief survey regarding their perceptions of each of the sessions at the conference. A total of 97% of the attendees said that the session objectives were met and 98% said that they learned something new by attending the conference. Additional comments were solicited and indicated that attendees would like to have another conference that addressed medical care more directly and felt that their participation had stimulated an interest in digital health technologies in their domains of interest. Patient attendees noted a strong interest in increased digital health solutions for rural areas, and more collaboration with the health system on approaches.

Questionnaire Assessing Digital Health Use at UAMS

After over a year of establishing the foundation for a digital health platform that would systematically assist research teams and clinician, the mHealth working group sent out a questionnaire to evaluate their progress. The Assessing Digital Health Use UAMS Questionnaire was distributed to faculty and staff across UAMS. There were 20 questions that covered use of digital health at UAMS, awareness of digital health programs and resources, and barriers to implementation and needs. Two-hundred and fifty-seven individuals responded. Almost half of respondents have utilized digital technologies (Fig. 1).

Fig. 1. Currently using digital technologies.

The majority of individuals (99%) who responded to the survey were unaware of the multi-stakeholder synergy opportunities called mHealth Mingles, and 93% were unaware of the UAMS Digital Health Conference.

Based on the responses concerning barriers to implementation and needs, many respondents were interested in information on practical approaches to implementation in rural settings as well as opportunities to collaborate (Table 1).

Table 1. Opportunities for resources and training

Discussion

Healthcare services in the USA healthcare show strong disparities in rural locations. Between 2004 and 2014, 179 rural US counties lost hospital obstetric services, resulting in increased preterm and out-of-hospital births [Reference Hung19, Reference Kozhimannil20]. The lack of obstetric services impacts over 27 million women and infants in the USA and represents significant resource and financial burdens. Arkansas addressed this problem using a telemedicine approach, developing video-based obstetrical consultations via the ANGELS program [Reference Lowery18]. The program successfully reduced 60-day infant mortality rates in the state by 0.5% between 2003 and 2004. These successes led to the establishment of the CDH in 2006, which continued to expand telehealth services to underserved populations [Reference Lowery18].

Arkansas, as a largely rural state, is a fitting location to enhance innovative and personalized remote healthcare services. With an age-adjusted stroke mortality rate of 53.7/100,000 in 2009, among the highest in the nation [Reference Brown21], in 2008 UAMS developed the AR-SAVES telestroke program. The purpose was to improve transport times to medical facilities qualified for stroke care and, as a result, to decrease time to treat. Two primary arms of the program are (1) development of telestroke centers in rural hospitals and (2) provision of information on qualified stroke centers to emergency services paramedics transporting patients [Reference Brown21Reference Brown23]. Its success is reflected in the approximately 2000 patients treated, a treatment rate increase of >30%, and improved transport times to qualified stroke centers [Reference Brown21, Reference Lowery24].

Taking advantage of the strong telehealth presence in the IDHI, the mHealth working group was formed to provide a platform for collaborations between health professionals and technology specialists to both take advantage of current mobile health technologies and create new ones. The success of these early efforts will be enhanced by the integration of the mHealth working group and the IDHI, which together will provide a platform to develop, evaluate, and deploy new mobile digital health modalities to underserved communities in the state.

Information obtained from participants in the mHealth Mingles, the mHealth Conference, and the institutional survey showed that, institution-wide, surprisingly few healthcare professionals were aware of the educational mechanisms provided to assist them in implementation and use of digital health solutions. This suggests that stronger efforts are needed to increase awareness of the need for MHealth technologies and the educational opportunities available to aid in their development. There was a strong interest in the development of new, easy-to-use, and readily available mHealth technologies, with an equally strong need to provide training platforms for their development, testing, and deployment. This is in keeping with a global assessment by the World Health Organization [Reference Kay, Santos and Takane25], where one of the four primary barriers to the use of digital health technologies was the lack technical knowledge.

The need for methods that provide high-quality health care to underserved communities while reducing overall costs is well recognized [Reference Ellner9]. Despite this clear need, and efforts by several AMCs to implement appropriate programs, such methods are not well integrated with current medical practices in the USA. As we found at our institution, the lack of a clear path to develop digital health technologies beyond telehealth was reflected in uncoordinated and siloed development largely unknown outside of the department or clinic that implemented it. This issue is one that all AMCs must tackle [Reference Mann13] if we are to realize the promise of these technologies to the health of our citizens.

The hope is that these technologies will improve education, research, and delivery of care by enabling data sharing and team-based care approaches across healthcare settings while promoting translation of technologies from bench-to-bedside. This translation will provide an opportunity to deliver health care in low-health resource settings where there is often a lack of diagnostic and monitoring technologies. These goals are needs driven and largely focused on the design of technically advanced health systems where communication of health information is frequently not considered [Reference Kreps4]. Two important aspects of communication that were not addressed in our study, but represent a critical component of the utilization of these technologies, are interprofessional education (IPE) for providers and health literacy for communities and patients. IPE is a transformative educational program that creates active learning experiences for learners from diverse health professions to learn new skills, such as digital health [Reference Lutfiyya, Brandt and Cerra26, Reference Schmitt27]. Health literacy, which requires both basic reading, writing, and numeracy skills and the ability to acquire and understand relevant health information, is an important component of the ability to make informed health-related choices [Reference Nutbeam, McGill and Premkumar28]. Low health literacy can result in more hospitalizations, poorer overall health, and increased mortality as well as increased medical costs [Reference Haun29, Reference Mackert30]. Thus, incorporation of best practices for health literacy into all digital health technologies is a critical component of their success.

The results of our work suggest that centralizing the informational, research, and practical aspects of digital health technologies is a necessary first step toward creating an environment in which innovative uses of digital health technologies can be discussed, developed, and deployed for the purpose of providing better and less expensive health care to the underserved citizens of largely rural states such as Arkansas.

Conclusion

A medical center serving a rural state leveraged its strengths in telemedicine to include mHealth technologies in the newly established IDHI. Feedback from the community showed is a need and a desire for education, training and better dissemination of information to successfully implement and manage digital health technology in health care and research. The new institute will address those needs and provide an environment to foster the use of digital health innovation supporting translational research and quality clinical care across a rural state.

Acknowledgments

The content is the responsibility of the authors and does not necessarily represent the views of the National Institutes of Health.

The project was supported by the Translational Research Institute, grant U54 TR001629 and UL1 TR003107 through the National Center for Advancing Translational Sciences of the National Institutes of Health. The project was supported by the UAMS Interprofessional Education grant, the IDHI, and the Department of Biomedical Informatics.

Disclosures

The authors have no conflicts of interest to declare.

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Fig. 1. Currently using digital technologies.

Figure 1

Table 1. Opportunities for resources and training