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Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey

BACKGROUND: Interest in and funding for digital health interventions have rapidly grown in recent years. Despite the increasing familiarity with mobile health from regulatory bodies, providers, and patients, overarching research on digital health adoption has been primarily limited to morbidity-spec...

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Autores principales: Patel, Sharvil Piyush, Sun, Elizabeth, Reinhardt, Alec, Geevarghese, Sanjaly, He, Simon, Gazmararian, Julie A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9768657/
https://www.ncbi.nlm.nih.gov/pubmed/36472905
http://dx.doi.org/10.2196/39647
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author Patel, Sharvil Piyush
Sun, Elizabeth
Reinhardt, Alec
Geevarghese, Sanjaly
He, Simon
Gazmararian, Julie A
author_facet Patel, Sharvil Piyush
Sun, Elizabeth
Reinhardt, Alec
Geevarghese, Sanjaly
He, Simon
Gazmararian, Julie A
author_sort Patel, Sharvil Piyush
collection PubMed
description BACKGROUND: Interest in and funding for digital health interventions have rapidly grown in recent years. Despite the increasing familiarity with mobile health from regulatory bodies, providers, and patients, overarching research on digital health adoption has been primarily limited to morbidity-specific and non-US samples. Consequently, there is a limited understanding of what personal factors hold statistically significant relationships with digital health uptake. Moreover, this limits digital health communities’ knowledge of equity along digital health use patterns. OBJECTIVE: This study aims to identify the social determinants of digital health tool adoption in Georgia. METHODS: Web-based survey respondents in Georgia 18 years or older were recruited from mTurk to answer primarily closed-ended questions within the following domains: participant demographics and health consumption background, telehealth, digital health education, prescription management tools, digital mental health services, and doctor finder tools. Participants spent around 15 to 20 minutes on a survey to provide demographic and personal health care consumption data. This data was analyzed with multivariate linear and logistic regressions to identify which of these determinants, if any, held statistically significant relationships with the total number of digital health tool categories adopted and which of these determinants had absolute relationships with specific categories. RESULTS: A total of 362 respondents completed the survey. Private insurance, residence in an urban area, having a primary care provider, fewer urgent emergency room (ER) visits, more ER visits leading to inpatient stays, and chronic condition presence were significantly associated with the number of digital health tool categories adopted. The separate logistic regressions exhibited substantial variability, with 3.5 statistically significant predictors per model, on average. Age, federal poverty level, number of primary care provider visits in the past 12 months, number of nonurgent ER visits in the past 12 months, number of urgent ER visits in the past 12 months, number of ER visits leading to inpatient stays in the past 12 months, race, gender, ethnicity, insurance, education, residential area, access to the internet, difficulty accessing health care, usual source of care, status of primary care provider, and status of chronic condition all had at least one statistically significant relationship with the use of a specific digital health category. CONCLUSIONS: The results demonstrate that persons who are socioeconomically disadvantaged may not adopt digital health tools at disproportionately higher rates. Instead, digital health tools may be adopted along social determinants of health, providing strong evidence for the digital health divide. The variability of digital health adoption necessitates investing in and building a common framework to increase mobile health access. With a common framework and a paradigm shift in the design, evaluation, and implementation strategies around digital health, disparities can be further mitigated and addressed. This likely will begin with a coordinated effort to determine barriers to adopting digital health solutions.
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spelling pubmed-97686572022-12-22 Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey Patel, Sharvil Piyush Sun, Elizabeth Reinhardt, Alec Geevarghese, Sanjaly He, Simon Gazmararian, Julie A JMIR Form Res Original Paper BACKGROUND: Interest in and funding for digital health interventions have rapidly grown in recent years. Despite the increasing familiarity with mobile health from regulatory bodies, providers, and patients, overarching research on digital health adoption has been primarily limited to morbidity-specific and non-US samples. Consequently, there is a limited understanding of what personal factors hold statistically significant relationships with digital health uptake. Moreover, this limits digital health communities’ knowledge of equity along digital health use patterns. OBJECTIVE: This study aims to identify the social determinants of digital health tool adoption in Georgia. METHODS: Web-based survey respondents in Georgia 18 years or older were recruited from mTurk to answer primarily closed-ended questions within the following domains: participant demographics and health consumption background, telehealth, digital health education, prescription management tools, digital mental health services, and doctor finder tools. Participants spent around 15 to 20 minutes on a survey to provide demographic and personal health care consumption data. This data was analyzed with multivariate linear and logistic regressions to identify which of these determinants, if any, held statistically significant relationships with the total number of digital health tool categories adopted and which of these determinants had absolute relationships with specific categories. RESULTS: A total of 362 respondents completed the survey. Private insurance, residence in an urban area, having a primary care provider, fewer urgent emergency room (ER) visits, more ER visits leading to inpatient stays, and chronic condition presence were significantly associated with the number of digital health tool categories adopted. The separate logistic regressions exhibited substantial variability, with 3.5 statistically significant predictors per model, on average. Age, federal poverty level, number of primary care provider visits in the past 12 months, number of nonurgent ER visits in the past 12 months, number of urgent ER visits in the past 12 months, number of ER visits leading to inpatient stays in the past 12 months, race, gender, ethnicity, insurance, education, residential area, access to the internet, difficulty accessing health care, usual source of care, status of primary care provider, and status of chronic condition all had at least one statistically significant relationship with the use of a specific digital health category. CONCLUSIONS: The results demonstrate that persons who are socioeconomically disadvantaged may not adopt digital health tools at disproportionately higher rates. Instead, digital health tools may be adopted along social determinants of health, providing strong evidence for the digital health divide. The variability of digital health adoption necessitates investing in and building a common framework to increase mobile health access. With a common framework and a paradigm shift in the design, evaluation, and implementation strategies around digital health, disparities can be further mitigated and addressed. This likely will begin with a coordinated effort to determine barriers to adopting digital health solutions. JMIR Publications 2022-12-06 /pmc/articles/PMC9768657/ /pubmed/36472905 http://dx.doi.org/10.2196/39647 Text en ©Sharvil Piyush Patel, Elizabeth Sun, Alec Reinhardt, Sanjaly Geevarghese, Simon He, Julie A Gazmararian. Originally published in JMIR Formative Research (https://formative.jmir.org), 06.12.2022. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Formative Research, is properly cited. The complete bibliographic information, a link to the original publication on https://formative.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Patel, Sharvil Piyush
Sun, Elizabeth
Reinhardt, Alec
Geevarghese, Sanjaly
He, Simon
Gazmararian, Julie A
Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey
title Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey
title_full Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey
title_fullStr Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey
title_full_unstemmed Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey
title_short Social Determinants of Digital Health Adoption: Pilot Cross-sectional Survey
title_sort social determinants of digital health adoption: pilot cross-sectional survey
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9768657/
https://www.ncbi.nlm.nih.gov/pubmed/36472905
http://dx.doi.org/10.2196/39647
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