Understanding diabetes risk in the Y Community of Greater Brisbane: Findings from a cross-sectional survey.

Lucy E Campbell,Sjaan R Gomersall, Michael Tsiamis,Ana D Goode,Genevieve N Healy

Health promotion journal of Australia : official journal of Australian Association of Health Promotion Professionals(2024)

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摘要
BACKGROUND:This cross-sectional study aimed to understand the need and desire for a diabetes prevention program within the Y (formerly YMCA: Young Men's Christian Association) of the Greater Brisbane region, Queensland, Australia. METHODS:An anonymous online survey was distributed (March-April 2023) by The Y Queensland targeting adults within the Greater Brisbane Y community. Data were collected on Y membership and branch attended, postcode, diabetes risk in the next 5 years (low, medium, or high), and interest in participation in a diabetes prevention program. Data were analysed via descriptives and cross tabulation with statistical significance considered at p < .05. RESULTS:Respondents (n = 575) were primarily female (65%), attending a Y branch located in the outer city (51%), and aged under 55 years (68%). Twenty Y sites were represented, with a mix of inner-city, outer-city, and regional areas. Overall, 46% (n = 241/530) of respondents were at high diabetes risk, with those living in relatively socio-economically disadvantaged areas more likely (p < .001) to be at high-risk (57%) than intermediate (26%) or low-risk (18%). Most (68%) respondents were interested/potentially interested in program participation; those at high risk of developing diabetes in the next 5 years were most interested (55%). CONCLUSIONS:The Y in Greater Brisbane may provide a suitable setting to host a community-based diabetes prevention program. Locations outside the inner city should be prioritised to target those who are relatively socio-economically disadvantaged to align with higher need and demand. SO WHAT?: Findings inform the implementation and prioritisation of a community-delivered diabetes prevention program.
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