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Treffer: Assessing Age-Friendly Community Initiatives: Developing a Novel Survey Tool for Assessment and Evaluation.

Title:
Assessing Age-Friendly Community Initiatives: Developing a Novel Survey Tool for Assessment and Evaluation.
Authors:
Source:
Gerontologist. Dec2024, Vol. 64 Issue 12, p1-11. 11p.
Geographic Terms:
Database:
Education Research Complete

Weitere Informationen

Background and Objectives Age-friendly community initiatives (AFCIs) have gained recognition as essential responses to the needs of aging populations. Despite their growing significance, there is a notable lack of effective measurement tools to assess the planning, implementation, and sustainability of AFCIs. The purpose of this study was to develop and validate a survey tool for evaluating AFCIs. Research Design and Methods A sequential exploratory mixed-method design was used in 2 phases. First, we identified key themes from interviews with AFCI leads to generate AFCI survey items and regional workshops. Then, we conducted a pilot of the survey and assessed its measurement properties. Results Thematic analysis of interviews with 68 key informants from 58 AFCIs revealed 4 main themes: AFCI priorities, enablers, challenges, and benefits. These themes, combined with feedback from AFCI stakeholders at the regional workshops and an AFCI conference, informed the development and refinement of a reliable and valid AFCI survey in 2019, supported by a high Cronbach's alpha value (α = 0.881). Steps were identified to maintain and sustain the AFCI survey over time. Discussion and Implications The survey accommodates AFCIs' diverse demographics, governance structures, and priorities with a standardized and flexible approach for effective measurement. This research contributes to the academic understanding of AFCIs and aids community leaders and policy-makers in planning, implementing, and evaluating AFCIs. [ABSTRACT FROM AUTHOR]

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