Affiliation:
1. School of Nursing The University of Texas Health at San Antonio San Antonio Texas USA
2. Department of Computer Science The University of Texas San Antonio San Antonio Texas USA
3. School of Nursing The University of Texas at Austin Austin Texas USA
4. Department of Management Science and Statistics The University of Texas San Antonio San Antonio Texas USA
Abstract
AbstractBackgroundMinority populations are utilizing mobile health applications more frequently to access health information. One group that may benefit from using mHealth technology is underserved women, specifically those on community supervision.ObjectiveDiscuss methodological approaches for navigating digital health strategies to address underserved women's health disparities.Description of the innovative methodUsing an intersectional lens, we identified strategies for conducting research using digital health technology and artificial intelligence amongst the underserved, particularly those with community supervision.Description of its effectivenessWe explore (1) methodological approaches that combine traditional research methods with precision medicine, digital phenotyping, and ecological momentary assessment; (2) implications for artificial intelligence; and (3) ethical considerations with data collection, storage, and engagement.DiscussionResearchers must address gendered differences related to health, social, and economic disparities concurrently with an unwavering focus on the protection of human subjects when addressing the unique needs of underserved women while utilizing digital health methodologies.Public contributionWomen on community supervision in South Central Texas helped inform the design of JUN, the mHealth app we reported in the case exemplar. JUN is named after the Junonia shell, a native shell to South Texas, which means strength, power, and self‐sufficiency, like the participants in our preliminary studies.
Reference54 articles.
1. §6501 15 U.S.C. (1998).Children's online Privacy Protection Act of 1998.https://uscode.house.gov/view.xhtml?req=granuleid%3AUSC‐prelim‐title15‐chapter91&edition=prelim
2. mHealth Technology Use and Implications in Historically Underserved and Minority Populations in the United States: Systematic Literature Review
3. Angwin J. Larson J. Mattu S. &Kirchner L.(2016).Machinebias.ProPublica.https://www.propublica.org/article/machine‐bias‐risk‐assessments‐in‐criminal‐sentencing
4. Diversion and Alternatives to Arrest: A Qualitative Understanding of Police and Substance Users’ Perspective