Characterizing Technology Use and Preferences for Health Communication in South Asian Immigrants With Prediabetes or Diabetes: Cross-Sectional Descriptive Study
Lu Hu, Laura C Wyatt, Farhan Mohsin, Sahnah Lim, Jennifer Zanowiak, Shinu Mammen, Sarah Hussain, Shahmir H Ali, Deborah Onakomaiya, Hayley M Belli, Angela Aifah, Nadia S Islam

TL;DR
This study explores how South Asian immigrants with prediabetes or diabetes in NYC use technology and their preferences for health communication, finding that men and those with higher education are more likely to prefer digital tools.
Contribution
The study provides sex-specific insights into technology use and preferences for mHealth interventions among low-income South Asian immigrants with diabetes or prediabetes.
Findings
Most participants owned smartphones and preferred receiving diabetes information via text messages.
Male participants were more likely to own smartphones and use social media apps compared to females.
Preferences for mHealth interventions were associated with sex, education, employment, and device ownership.
Abstract
Type 2 diabetes disproportionately affects South Asian subgroups. Lifestyle prevention programs help prevent and manage diabetes; however, there is a need to tailor these programs for mobile health (mHealth). This study examined technology access, current use, and preferences for health communication among South Asian immigrants diagnosed with or at risk for diabetes, overall and by sex. We examined factors associated with interest in receiving diabetes information by (1) text message, (2) online (videos, voice notes, online forums), and (3) none or skipped, adjusting for sociodemographic characteristics and technology access. We used baseline data collected in 2019-2021 from two clinical trials among South Asian immigrants in New York City (NYC), with one trial focused on diabetes prevention and the other focused on diabetes management. Descriptive statistics were used to examine…
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Taxonomy
TopicsMobile Health and mHealth Applications · Health Literacy and Information Accessibility · Social Media in Health Education
